Learning Philosophy:
- Data Scientists Should Be More End-to-End
- Just in Time Learning
- Master Adjacent Disciplines
- T-shaped skills
- The Power of Tiny Gains
- Book: Delivering Happiness
- Book: Good to Great: Why Some Companies Make the Leap...And Others Don't
- Book: Hello, Startup: A Programmer's Guide to Building Products, Technologies, and Teams
- Book: How Google Works
- Book: Learn to Earn: A Beginner's Guide to the Basics of Investing and Business
- Book: Rework
- Book: The Airbnb Story
- Book: The Personal MBA
- Facebook: Digital marketing: get started
- Facebook: Digital marketing: go further
- Google Analytics for Beginners
- Moz: The Beginner's Guide to SEO
- Smartly: Marketing Fundamentals
- Treehouse: SEO Basics
- Udacity: App Monetization
- Udacity: App Marketing
- Udacity: How to Build a Startup
- Article: How Facebook uses super-efficient AI models to detect hate speech
- Article: Recent Advances in Google Translate
- Article: Cannes: How ML saves us $1.7M a year on document previews
- Article: Machine Learning @ Monzo in 2020
- Article: How image search works at Dropbox
- Real-world AI Case Studies
- Andrej Karpathy on AI at Tesla (Full Stack Deep Learning - August 2018)
- Jai Ranganathan at Data Science at Uber (Full Stack Deep Learning - August 2018)
- John Apostolopoulos of Cisco discusses "Machine Learning in Networking"
0:48:44
- Joaquin Candela, Director of Applied Machine Learning, Facebook in conversation with Esteban Arcaute
0:52:27
- Eric Colson, Chief Algorithms Officer, Stitch Fix
0:53:57
- Claudia Perlich, Advisor to Dstillery and Adjunct Professor NYU Stern School of Business
0:51:59
- Jeff Dean, Google Senior Fellow and SVP Google AI - Deep Learning to Solve Challenging Problems
0:58:45
- James Parr, Director of Frontier Development Lab (NASA), FDL Europe & CEO, Trillium Technologies
0:55:46
- Daphne Koller, Founder & CEO of Insitro - In Conversation with Carlos Bustamante
0:49:29
- Eric Horvitz, Microsoft Research - AI in the Open World: Advances, Aspirations, and Rough Edges
0:56:11
- Tony Jebara, Netflix - Machine Learning for Recommendation and Personalization
0:55:20
- Datacamp: Analyzing Police Activity with pandas
- Datacamp: HR Analytics in Python: Predicting Employee Churn
- Datacamp: Predicting Customer Churn in Python
- Youtube: How does YouTube recommend videos? - AI EXPLAINED!
0:33:53
- Youtube: How does Google Translate's AI work?
0:15:02
- Youtube: Data Science in Finance
0:17:52
- Youtube: The Age of AI
- How Far is Too Far? | The Age of A.I.
0:34:39
- Healed through A.I. | The Age of A.I.
0:39:55
- Using A.I. to build a better human | The Age of A.I.
0:44:27
- Love, art and stories: decoded | The Age of A.I.
0:38:57
- The 'Space Architects' of Mars | The Age of A.I.
0:30:10
- Will a robot take my job? | The Age of A.I.
0:36:14
- Saving the world one algorithm at a time | The Age of A.I.
0:46:37
- How A.I. is searching for Aliens | The Age of A.I.
0:36:12
- How Far is Too Far? | The Age of A.I.
- Youtube: Using Intent Data to Optimize the Self-Solve Experience
- Youtube: Trillions of Questions, No Easy Answers: A (home) movie about how Google Search works
- Youtube: Google Machine Learning System Design Mock Interview
- Youtube: Netflix Machine Learning Mock Interview: Type-ahead Search
- Youtube: Machine Learning design: Search engine for Q&A
- Youtube: Engineering Systems for Real-Time Predictions @DoorDash
- Youtube: How Gmail Uses Iterative Design, Machine Learning and AI to Create More Assistive Features
- Youtube: Wayfair Data Science Explains It All: Human-in-the-loop Systems
- Youtube: Leaving the lab: Building NLP applications that real people can use
- Youtube: Machine Learning at Uber (Natural Language Processing Use Cases)
- Youtube: Google Wave: Natural Language Processing
- Youtube: Natural Language Understanding in Alexa
- Youtube: The Machine Learning Behind Alexa’s AI Systems
- Youtube: Ines Montani Keynote - Applied NLP Thinking
- Youtube: Lecture 9: Lukas Biewald
- Youtube: Lecture 13: Research Directions
- Youtube: Lecture 14: Jeremy Howard
- Youtube: Lecture 15: Richard Socher
- Youtube: Machine learning across industries with Vicki Boykis
0:34:02
- Youtube: Rachael Tatman - Conversational A.I. and Linguistics
0:36:51
- Youtube: Nicolas Koumchatzky - Machine Learning in Production for Self Driving Cars
0:44:56
- Youtube: Brandon Rohrer - Machine Learning in Production for Robots
0:34:31
- Youtube: [CVPR'21 WAD] Keynote - Andrej Karpathy, Tesla
- AWS: Types of Machine Learning Solutions
- Article: Apply Machine Learning to your Business
- Article: Resilience and Vibrancy: The 2020 Data & AI Landscape
- Article: Software 2.0
- Article: Highlights from ICML 2020
- Article: A Peek at Trends in Machine Learning
- Article: How to deliver on Machine Learning projects
- Article: Data Science as a Product
- Article: Customer service is full of machine learning problems
- Article: Choosing Problems in Data Science and Machine Learning
- Article: Why finance is deploying natural language processing
- Article: The Last 5 Years In Deep Learning
- Article: Always start with a stupid model, no exceptions.
- Article: Most impactful AI trends of 2018: the rise of ML Engineering
- Article: Building machine learning products: a problem well-defined is a problem half-solved.
- Article: Simple considerations for simple people building fancy neural networks
- Article: Maximizing Business Impact with Machine Learning
- Book: AI Superpowers: China, Silicon Valley, and the New World Order
- Book: A Human's Guide to Machine Intelligence
- Book: The Future Computed
- Book: Machine Learning Yearning by Andrew Ng
- Book: Prediction Machines: The Simple Economics of Artificial Intelligence
- Book: Building Machine Learning Powered Applications: Going from Idea to Product
- Coursera: AI For Everyone
- Datacamp: Data Science for Everyone
- Datacamp: Machine Learning with the Experts: School Budgets
- Datacamp: Machine Learning for Everyone
- Datacamp: Data Science for Managers
- Facebook: Field Guide to Machine Learning
- Google: Introduction to Machine Learning Problem Framing
- Pluralsight: How to Think About Machine Learning Algorithms
- State of AI Report 2020
- Youtube: Vincent Warmerdam: The profession of solving (the wrong problem) | PyData Amsterdam 2019
- Youtube: Hugging Face, Transformers | NLP Research and Open Source | Interview with Julien Chaumond
- Youtube: Vincent Warmerdam - Playing by the Rules-Based-Systems | PyData Eindhoven 2020
- Youtube: Building intuitions before building models
- Youtube: Recent Breakthroughs in AI with Andrej Karpathy and Lex Fridman
- Article: How to Detect Bias in AI
- Netflix: Coded Bias
- Netflix: The Great Hack
- Netflix: The Social Dilemma
- Practical Data Ethics
- Lesson 1: Disinformation
- Lesson 2: Bias & Fairness
- Lesson 3: Ethical Foundations & Practical Tools
- Lesson 4: Privacy and surveillance
- Lesson 4 continued: Privacy and surveillance
- Lesson 5.1: The problem with metrics
- Lesson 5.2: Our Ecosystem, Venture Capital, & Hypergrowth
- Lesson 5.3: Losing the Forest for the Trees, guest lecture by Ali Alkhatib
- Lesson 6: Algorithmic Colonialism, and Next Steps
- Youtube: Lecture 9: Ethics (Full Stack Deep Learning - Spring 2021)
1:04:50
- Youtube: SE4AI: Ethics and Fairness
1:18:37
- Youtube: SE4AI: Security
1:18:24
- Youtube: SE4AI: Safety
1:17:37
- Docs: Beautiful Soup Documentation
- Datacamp: Importing Data in Python (Part 2)
- Datacamp: Web Scraping in Python
- Article: Create A Synthetic Image Dataset — The “What”, The “Why” and The “How”
- Article: We need Synthetic Data
- Article: Weak Supervision for Online Discussions
- Article: ML Infrastructure Tools for Data Preparation
- Article: Exploring the Role of Human Raters in Creating NLP Datasets
- Article: Inter-Annotator Agreement (IAA)
- Article: How to compute inter-rater reliability metrics (Cohen’s Kappa, Fleiss’s Kappa, Cronbach Alpha, Krippendorff Alpha, Scott’s Pi, Inter-class correlation) in Python
- Article: The Pitfalls of Inter-Rater Reliability in Data Labeling and Machine Learning
- Youtube: Snorkel: Dark Data and Machine Learning - Christopher Ré
- Youtube: Training a NER Model with Prodigy and Transfer Learning
- Youtube: Training a New Entity Type with Prodigy – annotation powered by active learning
- Youtube: ECCV 2020 WSL tutorial: 4. Human-in-the-loop annotations
- Youtube: Active Learning: Why Smart Labeling is the Future of Data Annotation | Alectio
- Youtube: Lecture 8: Data Management (Full Stack Deep Learning - Spring 2021)
0:59:42
- Youtube: Lab 6: Data Labeling (Full Stack Deep Learning - Spring 2021)
0:05:06
- Youtube: Lecture 6: Data Management
- Youtube: SE4AI: Data Quality
1:07:15
- Youtube: SE4AI: Data Programming and Intro to Big Data Processing
0:33:04
- Youtube: SE4AI: Managing and Processing Large Datasets
1:21:27
- Article: A Visual Intro to NumPy and Data Representation
- Article: Good practices with numpy random number generators
- Article: NumPy Illustrated: The Visual Guide to NumPy
- Article: NumPy Fundamentals for Data Science and Machine Learning
- Datacamp: Intro to Python for Data Science
- Pluralsight: Working with Multidimensional Data Using NumPy
- Article: Visualizing Pandas' Pivoting and Reshaping Functions
- Article: A Gentle Visual Intro to Data Analysis in Python Using Pandas
- Article: Comprehensive Guide to Grouping and Aggregating with Pandas
- Article: 8 Python Pandas Value_counts() tricks that make your work more efficient
- Datacamp: pandas Foundations
- Datacamp: Pandas Joins for Spreadsheet Users
- Datacamp: Manipulating DataFrames with pandas
- Datacamp: Merging DataFrames with pandas
- Datacamp: Data Manipulation with pandas
- Datacamp: Optimizing Python Code with pandas
- Datacamp: Streamlined Data Ingestion with pandas
- Datacamp: Analyzing Marketing Campaigns with pandas
- edX: Implementing Predictive Analytics with Spark in Azure HDInsight
- Article: Modern Pandas
- Datacamp: Spreadsheet basics
- Datacamp: Data Analysis with Spreadsheets
- Datacamp: Intermediate Spreadsheets for Data Science
- Datacamp: Pivot Tables with Spreadsheets
- Datacamp: Data Visualization in Spreadsheets
- Datacamp: Introduction to Statistics in Spreadsheets
- Datacamp: Conditional Formatting in Spreadsheets
- Datacamp: Marketing Analytics in Spreadsheets
- Datacamp: Error and Uncertainty in Spreadsheets
- edX: Analyzing and Visualizing Data with Excel
- Codecademy: SQL Track
- Datacamp: Intro to SQL for Data Science
- Datacamp: Introduction to MongoDB in Python
- Datacamp: Intermediate SQL
- Datacamp: Exploratory Data Analysis in SQL
- Datacamp: Joining Data in PostgreSQL
- Datacamp: Querying with TransactSQL
- Datacamp: Introduction to Databases in Python
- Datacamp: Reporting in SQL
- Datacamp: Applying SQL to Real-World Problems
- Datacamp: Analyzing Business Data in SQL
- Datacamp: Data-Driven Decision Making in SQL
- Datacamp: Database Design
- Udacity: SQL for Data Analysis
- Udacity: Intro to relational database
- Udacity: Database Systems Concepts & Design
- Article: Streamline your projects using Makefile
- Article: Understand Linux Load Averages and Monitor Performance of Linux
- Article: Command-line Tools can be 235x Faster than your Hadoop Cluster
- Calmcode: makefiles
- Calmcode: entr
- Codecademy: Learn the Command Line
- Datacamp: Introduction to Shell for Data Science
- Datacamp: Introduction to Bash Scripting
- Datacamp: Data Processing in Shell
- MIT: The Missing Semester of CS Education
- Lecture 1: Course Overview + The Shell (2020)
0:48:16
- Lecture 2: Shell Tools and Scripting (2020)
0:48:55
- Lecture 3: Editors (vim) (2020)
0:48:26
- Lecture 4: Data Wrangling (2020)
0:50:03
- Lecture 5: Command-line Environment (2020)
0:56:06
- Lecture 6: Version Control (git) (2020)
1:24:59
- Lecture 7: Debugging and Profiling (2020)
0:54:13
- Lecture 8: Metaprogramming (2020)
0:49:52
- Lecture 9: Security and Cryptography (2020)
1:00:59
- Lecture 10: Potpourri (2020)
0:57:54
- Lecture 11: Q&A (2020)
0:53:52
- Lecture 1: Course Overview + The Shell (2020)
- Thoughtbot: Mastering the Shell
- Thoughtbot: tmux
- Udacity: Linux Command Line Basics
- Udacity: Shell Workshop
- Udacity: Configuring Linux Web Servers
- Web Bos: Command Line Power User
- Youtube: GNU Parallel
- Article: Tips for Advanced Feature Engineering
- Article: Preparing data for a machine learning model
- Article: Feature selection for a machine learning model
- Article: Learning from imbalanced data
- Article: Hacker's Guide to Data Preparation for Machine Learning
- Article: Practical Guide to Handling Imbalanced Datasets
- Datacamp: Analyzing Social Media Data in Python
- Datacamp: Dimensionality Reduction in Python
- Datacamp: Preprocessing for Machine Learning in Python
- Datacamp: Data Types for Data Science
- Datacamp: Cleaning Data in Python
- Datacamp: Feature Engineering for Machine Learning in Python
- Datacamp: Importing & Managing Financial Data in Python
- Datacamp: Manipulating Time Series Data in Python
- Datacamp: Working with Geospatial Data in Python
- Datacamp: Analyzing IoT Data in Python
- Datacamp: Dealing with Missing Data in Python
- Datacamp: Exploratory Data Analysis in Python
- edX: Data Science Essentials
- Udacity: Creating an Analytical Dataset
- Youtube: Applied ML 2020 - 04 - Preprocessing
1:07:40
- Youtube: Applied ML 2020 - 11 - Model Inspection and Feature Selection
1:15:15
- Article: Securely storing configuration credentials in a Jupyter Notebook
- Article: Automatically Reload Modules with %autoreload
- Calmcode: ipywidgets
- Documentation: Jupyter Lab
- Pluralsight: Getting Started with Jupyter Notebook and Python
- Youtube: William Horton - A Brief History of Jupyter Notebooks
- Youtube: I Like Notebooks
- Youtube: I don't like notebooks.- Joel Grus (Allen Institute for Artificial Intelligence)
- Youtube: Ryan Herr - After model.fit, before you deploy| JupyterCon 2020
- Youtube: nbdev live coding with Hamel Husain
- Youtube: How to Use JupyterLab
- Article: Creating a Catchier Word Cloud Presentation
- Article: Effectively Using Matplotlib
- Article: Which color scale to use when visualizing data
- Datacamp: Introduction to Data Visualization with Python
- Datacamp: Introduction to Seaborn
- Datacamp: Introduction to Matplotlib
- Datacamp: Intermediate Data Visualization with Seaborn
- Datacamp: Visualizing Time Series Data in Python
- Datacamp: Improving Your Data Visualizations in Python
- Datacamp: Visualizing Geospatial Data in Python
- Datacamp: Interactive Data Visualization with Bokeh
- Youtube: Applied ML 2020 - 02 Visualization and matplotlib
1:07:30
- Paper: A Neural Probabilistic Language Model
- Paper: Efficient Estimation of Word Representations in Vector Space
- Paper: Sequence to Sequence Learning with Neural Networks
- Paper: Neural Machine Translation by Jointly Learning to Align and Translate
- Paper: Attention Is All You Need
- Paper: BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding
- Paper: XLNet: Generalized Autoregressive Pretraining for Language Understanding
- Paper: Synonyms Based Term Weighting Scheme: An Extension to TF.IDF
- Paper: RoBERTa: A Robustly Optimized BERT Pretraining Approach
- Paper: GLUE: A Multi-Task Benchmark and Analysis Platform for Natural Language Understanding
- Paper: Amazon.com Recommendations Item-to-Item Collaborative Filtering
- Paper: Collaborative Filtering for Implicit Feedback Datasets
- Paper: BPR: Bayesian Personalized Ranking from Implicit Feedback
- Paper: Factorization Machines
- Paper: Wide & Deep Learning for Recommender Systems
- Paper: Neural Factorization Machines for Sparse Predictive Analytics
- Paper: Multiword Expressions: A Pain in the Neck for NLP
- Paper: PyTorch: An Imperative Style, High-Performance Deep Learning Library
- Paper: ALBERT: A LITE BERT FOR SELF-SUPERVISED LEARNING OF LANGUAGE REPRESENTATIONS
- Paper: Self-supervised Visual Feature Learning with Deep Neural Networks: A Survey
- Paper: A Simple Framework for Contrastive Learning of Visual Representations
- Paper: Self-Supervised Learning of Pretext-Invariant Representations
- Paper: FixMatch: Simplifying Semi-Supervised Learning with Consistency and Confidence
- Paper: Self-Labelling via Simultalaneous Clustering and Representation Learning
- Paper: A survey on Semi-, Self- and Unsupervised Techniques in Image Classification
- Paper: Multi-document Summarization by using TextRank and Maximal Marginal Relevance for Text in Bahasa Indonesia
- Paper: Train Once, Test Anywhere: Zero-Shot Learning for Text Classification
- Paper: Zero-shot Text Classification With Generative Language Models
- Paper: How to Fine-Tune BERT for Text Classification?
- Paper: Universal Sentence Encoder
- Paper: Enriching Word Vectors with Subword Information
- Paper: Beyond Accuracy: Behavioral Testing of NLP models with CheckList
- Paper: Pseudo-Label : The Simple and Efficient Semi-Supervised Learning Method for Deep Neural Networks
- Paper: Temporal Ensembling for Semi-Supervised Learning
- Paper: Boosting Self-Supervised Learning via Knowledge Transfer
- Paper: Follow-up Question Generation
- Paper: The Hardware Lottery
- Paper: Question Generation via Overgenerating Transformations and Ranking
- Paper: Good Question! Statistical Ranking for Question Generation
- Paper: Towards ML Engineering: A Brief History Of TensorFlow Extended (TFX)
- Paper: Neural Text Generation: A Practical Guide
- Paper: Pest Management In Cotton Farms: An AI-System Case Study from the Global South
- Paper: BERT2DNN: BERT Distillation with Massive Unlabeled Data for Online E-Commerce Search
- Paper: On the surprising similarities between supervised and self-supervised models
- Paper: All-but-the-Top: Simple and Effective Postprocessing for Word Representations
- Paper: Simple and Effective Dimensionality Reduction for Word Embeddings
- Paper: AutoCompete: A Framework for Machine Learning Competitions
- Paper: Cost-effective Deployment of BERT Models in Serverless Environment
- Paper: Evaluating Large Language Models Trained on Code
- Paper: What Does BERT Learn about the Structure of Language?
- Paper: What do RNN Language Models Learn about Filler–Gap Dependencies?
- Paper: Symbol Grounding and its Implications for Artificial Intelligence
- Paper: Is this a wampimuk? Cross-modal mapping between distributional semantics and the visual world
- Paper: MDETR -- Modulated Detection for End-to-End Multi-Modal Understanding
- Paper: Multimodal Pretraining Unmasked: A Meta-Analysis and a Unified Framework of Vision-and-Language BERTs
- Paper: Show and Tell: A Neural Image Caption Generator
- Paper: The Curious Case of Neural Text Degeneration
- Youtube: mixup: Beyond Empirical Risk Minimization (Paper Explained)
- 3Blue1Brown: Essence of Calculus
- The Essence of Calculus, Chapter 1
0:17:04
- The paradox of the derivative | Essence of calculus, chapter 2
0:17:57
- Derivative formulas through geometry | Essence of calculus, chapter 3
0:18:43
- Visualizing the chain rule and product rule | Essence of calculus, chapter 4
0:16:52
- What's so special about Euler's number e? | Essence of calculus, chapter 5
0:13:50
- Implicit differentiation, what's going on here? | Essence of calculus, chapter 6
0:15:33
- Limits, L'Hôpital's rule, and epsilon delta definitions | Essence of calculus, chapter 7
0:18:26
- Integration and the fundamental theorem of calculus | Essence of calculus, chapter 8
0:20:46
- What does area have to do with slope? | Essence of calculus, chapter 9
0:12:39
- Higher order derivatives | Essence of calculus, chapter 10
0:05:38
- Taylor series | Essence of calculus, chapter 11
0:22:19
- What they won't teach you in calculus
0:16:22
- The Essence of Calculus, Chapter 1
- 3Blue1Brown: Essence of linear algebra
- Vectors, what even are they? | Essence of linear algebra, chapter 1
0:09:52
- Linear combinations, span, and basis vectors | Essence of linear algebra, chapter 2
0:09:59
- Linear transformations and matrices | Essence of linear algebra, chapter 3
0:10:58
- Matrix multiplication as composition | Essence of linear algebra, chapter 4
0:10:03
- Three-dimensional linear transformations | Essence of linear algebra, chapter 5
0:04:46
- The determinant | Essence of linear algebra, chapter 6
0:10:03
- Inverse matrices, column space and null space | Essence of linear algebra, chapter 7
0:12:08
- Nonsquare matrices as transformations between dimensions | Essence of linear algebra, chapter 8
0:04:27
- Dot products and duality | Essence of linear algebra, chapter 9
0:14:11
- Cross products | Essence of linear algebra, Chapter 10
0:08:53
- Cross products in the light of linear transformations | Essence of linear algebra chapter 11
0:13:10
- Cramer's rule, explained geometrically | Essence of linear algebra, chapter 12
0:12:12
- Change of basis | Essence of linear algebra, chapter 13
0:12:50
- Eigenvectors and eigenvalues | Essence of linear algebra, chapter 14
0:17:15
- Abstract vector spaces | Essence of linear algebra, chapter 15
0:16:46
- Vectors, what even are they? | Essence of linear algebra, chapter 1
- 3Blue1Brown: Neural networks
- Article: A Visual Tour of Backpropagation
- Article: Entropy, Cross Entropy, and KL Divergence
- Article: Interview Guide to Probability Distributions
- Article: Introduction to Linear Algebra for Applied Machine Learning with Python
- Article: Entropy of a probability distribution — in layman’s terms
- Article: KL Divergence — in layman’s terms
- Article: Probability Distributions
- Article: Relearning Matrices as Linear Functions
- Article: You Could Have Come Up With Eigenvectors - Here's How
- Article: PageRank - How Eigenvectors Power the Algorithm Behind Google Search
- Article: Interactive Visualization of Why Eigenvectors Matter
- Article: Cross-Entropy and KL Divergence
- Article: Why Randomness Is Information?
- Article: Basic Probability Theory
- Article: Math You Need to Succeed In ML Interviews
- Book: Basics of Linear Algebra for Machine Learning
- Datacamp: Introduction to Statistics in Python
- Datacamp: Foundations of Probability in Python
- Datacamp: Statistical Thinking in Python (Part 1)
- Datacamp: Statistical Thinking in Python (Part 2)
- Datacamp: Statistical Simulation in Python
- edX: Essential Statistics for Data Analysis using Excel
- Computational Linear Algebra for Coders
- Khan Academy: Precalculus
- Khan Academy: Probability
- Khan Academy: Differential Calculus
- Khan Academy: Multivariable Calculus
- Khan Academy: Linear Algebra
- MIT: 18.06 Linear Algebra (Professor Strang)
- 1. The Geometry of Linear Equations
0:39:49
- 2. Elimination with Matrices.
0:47:41
- 3. Multiplication and Inverse Matrices
0:46:48
- 4. Factorization into A = LU
0:48:05
- 5. Transposes, Permutations, Spaces R^n
0:47:41
- 6. Column Space and Nullspace
0:46:01
- 9. Independence, Basis, and Dimension
0:50:14
- 10. The Four Fundamental Subspaces
0:49:20
- 11. Matrix Spaces; Rank 1; Small World Graphs
0:45:55
- 14. Orthogonal Vectors and Subspaces
0:49:47
- 15. Projections onto Subspaces
0:48:51
- 16. Projection Matrices and Least Squares
0:48:05
- 17. Orthogonal Matrices and Gram-Schmidt
0:49:09
- 21. Eigenvalues and Eigenvectors
0:51:22
- 22. Diagonalization and Powers of A
0:51:50
- 24. Markov Matrices; Fourier Series
0:51:11
- 25. Symmetric Matrices and Positive Definiteness
0:43:52
- 27. Positive Definite Matrices and Minima
0:50:40
- 29. Singular Value Decomposition
0:40:28
- 30. Linear Transformations and Their Matrices
0:49:27
- 31. Change of Basis; Image Compression
0:50:13
- 33. Left and Right Inverses; Pseudoinverse
0:41:52
- 1. The Geometry of Linear Equations
- StatQuest: Statistics Fundamentals
- StatQuest: Histograms, Clearly Explained
0:03:42
- StatQuest: What is a statistical distribution?
0:05:14
- StatQuest: The Normal Distribution, Clearly Explained!!!
0:05:12
- Statistics Fundamentals: Population Parameters
0:14:31
- Statistics Fundamentals: The Mean, Variance and Standard Deviation
0:14:22
- StatQuest: What is a statistical model?
0:03:45
- StatQuest: Sampling A Distribution
0:03:48
- Hypothesis Testing and The Null Hypothesis
0:14:40
- Alternative Hypotheses: Main Ideas!!!
0:09:49
- p-values: What they are and how to interpret them
0:11:22
- How to calculate p-values
0:25:15
- p-hacking: What it is and how to avoid it!
0:13:44
- Statistical Power, Clearly Explained!!!
0:08:19
- Power Analysis, Clearly Explained!!!
0:16:44
- Covariance and Correlation Part 1: Covariance
0:22:23
- Covariance and Correlation Part 2: Pearson's Correlation
0:19:13
- StatQuest: R-squared explained
0:11:01
- The Central Limit Theorem
0:07:35
- StatQuickie: Standard Deviation vs Standard Error
0:02:52
- StatQuest: The standard error
0:11:43
- StatQuest: Technical and Biological Replicates
0:05:27
- StatQuest - Sample Size and Effective Sample Size, Clearly Explained
0:06:32
- Bar Charts Are Better than Pie Charts
0:01:45
- StatQuest: Boxplots, Clearly Explained
0:02:33
- StatQuest: Logs (logarithms), clearly explained
0:15:37
- StatQuest: Confidence Intervals
0:06:41
- StatQuickie: Thresholds for Significance
0:06:40
- StatQuickie: Which t test to use
0:05:10
- StatQuest: One or Two Tailed P-Values
0:07:05
- The Binomial Distribution and Test, Clearly Explained!!!
0:15:46
- StatQuest: Quantiles and Percentiles, Clearly Explained!!!
0:06:30
- StatQuest: Quantile-Quantile Plots (QQ plots), Clearly Explained
0:06:55
- StatQuest: Quantile Normalization
0:04:51
- StatQuest: Probability vs Likelihood
0:05:01
- StatQuest: Maximum Likelihood, clearly explained!!!
0:06:12
- Maximum Likelihood for the Exponential Distribution, Clearly Explained! V2.0
0:09:39
- Why Dividing By N Underestimates the Variance
0:17:14
- Maximum Likelihood for the Binomial Distribution, Clearly Explained!!!
0:11:24
- Maximum Likelihood For the Normal Distribution, step-by-step!
0:19:50
- StatQuest: Odds and Log(Odds), Clearly Explained!!!
0:11:30
- StatQuest: Odds Ratios and Log(Odds Ratios), Clearly Explained!!!
0:16:20
- Live 2020-04-20!!! Expected Values
0:33:00
- StatQuest: Histograms, Clearly Explained
- Udacity: Eigenvectors and Eigenvalues
- Udacity: Linear Algebra Refresher
- Udacity: Statistics
- Udacity: Intro to Descriptive Statistics
- Udacity: Intro to Inferential Statistics
- Article: pydantic
- Article: Organizing machine learning projects: project management guidelines
- Article: Logging and Debugging in Machine Learning - How to use Python debugger and the logging module to find errors in your AI application
- Article: Best practices to write Deep Learning code: Project structure, OOP, Type checking and documentation
- Article: Configuring Google Colab Like A Pro
- Article: Stop using print, start using loguru in Python
- Article: Hypermodern Python
- Article: Hypermodern Python Chapter 2: Testing
- Article: Hypermodern Python Chapter 3: Linting
- Article: Hypermodern Python Chapter 4: Typing
- Article: Hypermodern Python Chapter 5: Documentation
- Article: Hypermodern Python Chapter 6: CI/CD
- Article: Push and pull: when and why to update your dependencies
- Article: Reproducible and upgradable Conda environments: dependency management with conda-lock
- Article: Options for packaging your Python code: Wheels, Conda, Docker, and more
- Article: Making model training scripts robust to spot interruptions
- Calmcode: logging
- Calmcode: tqdm
- Calmcode: virtualenv
- Coursera: Structuring Machine Learning Projects
- Doc: Python Lifecycle Training
- Datacamp: Introduction to Data Engineering
- Datacamp: Conda Essentials
- Datacamp: Conda for Building & Distributing Packages
- Datacamp: Software Engineering for Data Scientists in Python
- Datacamp: Designing Machine Learning Workflows in Python
- Datacamp: Object-Oriented Programming in Python
- Datacamp: Command Line Automation in Python
- Datacamp: Creating Robust Python Workflows
- Developing Python Packages
- Treehouse: Object Oriented Python
- Treehouse: Setup Local Python Environment
- Udacity: Writing READMEs
- Youtube: Lecture 1: Introduction to Deep Learning
- Youtube: Lecture 2: Setting Up Machine Learning Projects
- Youtube: Lecture 3: Introduction to the Text Recognizer Project
- Youtube: Lecture 4: Infrastructure and Tooling
- Youtube: Hydra configuration
- Youtube: Continuous integration
- Youtube: Data Engineering + ML + Software Engineering // Satish Chandra Gupta // MLOps Coffee Sessions #16
- Youtube: OO Design and Testing Patterns for Machine Learning with Chris Gerpheide
- Youtube: Tutorial: Sebastian Witowski - Modern Python Developer's Toolkit
- Youtube: Lecture 13: ML Teams (Full Stack Deep Learning - Spring 2021)
0:58:13
- Youtube: Lecture 5: ML Projects (Full Stack Deep Learning - Spring 2021)
1:13:14
- Youtube: Lecture 6: Infrastructure & Tooling (Full Stack Deep Learning - Spring 2021)
1:07:21
- Article: Mastering Git Stash Workflow
- Article: How to Become a Master of Git Tags
- Article: How to track large files in Github / Bitbucket? Git LFS to the rescue
- Article: Keep your git directory clean with
git clean
andgit trash
- Codecademy: Learn Git
- Code School: Git Real
- Datacamp: Introduction to Git for Data Science
- Thoughtbot: Mastering Git
- Udacity: GitHub & Collaboration
- Udacity: How to Use Git and GitHub
- Udacity: Version Control with Git
- Youtube: 045 Introduction to Git LFS
- Youtube: Git & Scripting
- Youtube: DVC Basics
- Article: ML Ops: Data Science Version Control
- Youtube: Data versioning in machine learning projects - Dmitry Petrov
0:34:44
- Zoom: Data versioning with DVC Part 1
- Zoom: Data versioning with DVC Part 2
- Article: Supercharge your Training with Pytorch Lightning + Weights & Biases
- Article: Storing Metadata from Machine Learning Experiments
- Youtube: Weights and Biases Tutorial
- Youtube: Integrate Weights & Biases with PyTorch
- Youtube: Log (Almost) Anything with Weights & Biases
- Youtube: Lab 5: Experiment Management (Full Stack Deep Learning - Spring 2021)
0:30:41
- Youtube: Lecture 5: Tracking Experiments
- Youtube: Weight & Biases
- Youtube: SE4AI: Versioning, Provenance, and Reproducibility
1:18:29
- Article: Evaluating a machine learning model
- Article: Validating your Machine Learning Model
- Article: Measuring Performance: AUPRC and Average Precision
- Article: Measuring Performance: AUC (AUROC)
- Article: Measuring Performance: The Confusion Matrix
- Article: Measuring Performance: Accuracy
- Article: ROC Curves: Intuition Through Visualization
- Article: Precision, Recall, Accuracy, and F1 Score for Multi-Label Classification
- Article: The Complete Guide to AUC and Average Precision: Simulations and Visualizations
- Article: Best Use of Train/Val/Test Splits, with Tips for Medical Data
- Article: The correct way to evaluate online machine learning models
- Article: Proxy Metrics
- Youtube: Accuracy as a Failure
- Youtube: Applied ML 2020 - 09 - Model Evaluation and Metrics
1:18:23
- Youtube: Machine Learning Fundamentals: Cross Validation
0:06:04
- Youtube: Machine Learning Fundamentals: The Confusion Matrix
0:07:12
- Youtube: Machine Learning Fundamentals: Sensitivity and Specificity
0:11:46
- Youtube: Machine Learning Fundamentals: Bias and Variance
0:06:36
- Youtube: ROC and AUC, Clearly Explained!
0:16:26
- Article: Naive Bayes classification
- Article: Linear regression
- Article: Polynomial regression
- Article: Logistic regression
- Article: Decision trees
- Article: K-nearest neighbors
- Article: Support Vector Machines
- Article: Random forests
- Article: Boosted trees
- Article: Hacker's Guide to Fundamental Machine Learning Algorithms with Python
- Article: Neural networks: activation functions
- Article: Neural networks: training with backpropagation
- Article: Neural Network from scratch-part 1
- Article: Neural Network from scratch-part 2
- Article: Perceptron to Deep-Neural-Network
- Article: One-vs-Rest strategy for Multi-Class Classification
- Article: Multi-class Classification — One-vs-All & One-vs-One
- Article: One-vs-Rest and One-vs-One for Multi-Class Classification
- Article: Deep Learning Algorithms - The Complete Guide
- Article: Machine Learning Techniques Primer
- AWS: Understanding Neural Networks
- Book: Grokking Deep Learning
- Book: Make Your Own Neural Network
- Coursera: Neural Networks and Deep Learning
- Datacamp: Extreme Gradient Boosting with XGBoost
- Datacamp: Ensemble Methods in Python
- StatQuest: Machine Learning
- StatQuest: Fitting a line to data, aka least squares, aka linear regression.
0:09:21
- StatQuest: Linear Models Pt.1 - Linear Regression
0:27:26
- StatQuest: StatQuest: Linear Models Pt.2 - t-tests and ANOVA
0:11:37
- StatQuest: Odds and Log(Odds), Clearly Explained!!!
0:11:30
- StatQuest: Odds Ratios and Log(Odds Ratios), Clearly Explained!!!
0:16:20
- StatQuest: Logistic Regression
0:08:47
- Logistic Regression Details Pt1: Coefficients
0:19:02
- Logistic Regression Details Pt 2: Maximum Likelihood
0:10:23
- Logistic Regression Details Pt 3: R-squared and p-value
0:15:25
- Saturated Models and Deviance
0:18:39
- Deviance Residuals
0:06:18
- Regularization Part 1: Ridge (L2) Regression
0:20:26
- Regularization Part 2: Lasso (L1) Regression
0:08:19
- Ridge vs Lasso Regression, Visualized!!!
0:09:05
- Regularization Part 3: Elastic Net Regression
0:05:19
- StatQuest: Principal Component Analysis (PCA), Step-by-Step
0:21:57
- StatQuest: PCA main ideas in only 5 minutes!!!
0:06:04
- StatQuest: PCA - Practical Tips
0:08:19
- StatQuest: PCA in Python
0:11:37
- StatQuest: Linear Discriminant Analysis (LDA) clearly explained.
0:15:12
- StatQuest: MDS and PCoA
0:08:18
- StatQuest: t-SNE, Clearly Explained
0:11:47
- StatQuest: Hierarchical Clustering
0:11:19
- StatQuest: K-means clustering
0:08:57
- StatQuest: K-nearest neighbors, Clearly Explained
0:05:30
- Naive Bayes, Clearly Explained!!!
0:15:12
- Gaussian Naive Bayes, Clearly Explained!!!
0:09:41
- StatQuest: Decision Trees
0:17:22
- StatQuest: Decision Trees, Part 2 - Feature Selection and Missing Data
0:05:16
- Regression Trees, Clearly Explained!!!
0:22:33
- How to Prune Regression Trees, Clearly Explained!!!
0:16:15
- StatQuest: Random Forests Part 1 - Building, Using and Evaluating
0:09:54
- StatQuest: Random Forests Part 2: Missing data and clustering
0:11:53
- The Chain Rule
0:18:23
- Gradient Descent, Step-by-Step
0:23:54
- Stochastic Gradient Descent, Clearly Explained!!!
0:10:53
- AdaBoost, Clearly Explained
0:20:54
- Gradient Boost Part 1: Regression Main Ideas
0:15:52
- Gradient Boost Part 2: Regression Details
0:26:45
- Gradient Boost Part 3: Classification
0:17:02
- Gradient Boost Part 4: Classification Details
0:36:59
- Support Vector Machines, Clearly Explained!!!
0:20:32
- Support Vector Machines Part 2: The Polynomial Kernel
0:07:15
- Support Vector Machines Part 3: The Radial (RBF) Kernel
0:15:52
- XGBoost Part 1: Regression
0:25:46
- XGBoost Part 2: Classification
0:25:17
- XGBoost Part 3: Mathematical Details
0:27:24
- XGBoost Part 4: Crazy Cool Optimizations
0:24:27
- StatQuest: Fiitting a curve to data, aka lowess, aka loess
0:10:10
- Statistics Fundamentals: Population Parameters
0:14:31
- Principal Component Analysis (PCA) clearly explained (2015)
0:20:16
- Decision Trees in Python from Start to Finish
1:06:23
- StatQuest: Fitting a line to data, aka least squares, aka linear regression.
- Udacity: Classification Models
- Youtube: Neural Networks from Scratch in Python
- Neural Networks from Scratch - P.1 Intro and Neuron Code
0:16:59
- Neural Networks from Scratch - P.2 Coding a Layer
0:15:06
- Neural Networks from Scratch - P.3 The Dot Product
0:25:17
- Neural Networks from Scratch - P.4 Batches, Layers, and Objects
0:33:46
- Neural Networks from Scratch - P.5 Hidden Layer Activation Functions
0:40:05
- Neural Networks from Scratch - P.1 Intro and Neuron Code
- Youtube: Applied ML 2020 - 03 Supervised learning and model validation
1:12:00
- Youtube: Applied ML 2020 - 05 - Linear Models for Regression
1:06:54
- Youtube: Applied ML 2020 - 06 - Linear Models for Classification
1:07:50
- Youtube: Applied ML 2020 - 07 - Decision Trees and Random Forests
1:07:58
- Youtube: Applied ML 2020 - 08 - Gradient Boosting
1:02:12
- Youtube: Applied ML 2020 - 18 - Neural Networks
1:19:36
- Youtube: Applied ML 2020 - 12 - AutoML (plus some feature selection)
1:25:38
- Article: Deep neural networks: preventing overfitting
- Article: Normalizing your data (specifically, input and batch normalization)
- Article: Batch Normalization
- Article: Are Deep Neural Networks Dramatically Overfitted?
- Article: In-layer normalization techniques for training very deep neural networks
- Article: Label Smoothing Explained using Microsoft Excel
- Article: Uncertainty Quantification Part 4: Leveraging Dropout in Neural Networks (CNNs)
- Article: Simple Ways to Tackle Class Imbalance
- Youtube: Applied ML 2020 - 10 - Calibration, Imbalanced data
1:16:14
- Youtube: Lecture 10: Troubleshooting Deep Neural Networks
- Article: Connections: Log Likelihood, Cross Entropy, KL Divergence, Logistic Regression, and Neural Networks
- Article: MLE and MAP — in layman’s terms
- An overview of gradient descent optimization algorithms
- Article: Optimization for Deep Learning Highlights in 2017
- Article: Gradient descent
- Article: Setting the learning rate of your neural network
- Article: Cross-entropy for classification
- Article: Dismantling Neural Networks to Understand the Inner Workings with Math and Pytorch
- Datacamp: AI Fundamentals
- Datacamp: Foundations of Predictive Analytics in Python (Part 1)
- Datacamp: Foundations of Predictive Analytics in Python (Part 2)
- Elements of AI
- edX: Principles of Machine Learning
- edX: Data Science Essentials
- Fast.ai: Deep Learning for Coder (2020)
- Youtube: Deep Double Descent
- Article: Stacking made easy with Sklearn
- Article: Curve Fitting With Python
- Article: A Guide to Calibration Plots in Python
- Calmcode: human-learn
- Datacamp: Supervised Learning with scikit-learn
- Datacamp: Machine Learning with Tree-Based Models in Python
- Datacamp: Introduction to Linear Modeling in Python
- Datacamp: Linear Classifiers in Python
- Datacamp: Generalized Linear Models in Python
- Notebook: scikit-learn tips
- Pluralsight: Building Machine Learning Models in Python with scikit-learn
- Video: human learn
- Youtube: dabl: Automatic Machine Learning with a Human in the Loop
00:25:43
- Youtube: Multilabel and Multioutput Classification -Machine Learning with TensorFlow & scikit-learn on Python
- Youtube: DABL: Automatic machine learning with a human in the loop- AI Latim American SumMIT Day 1
- Coursera: Introduction to Tensorflow
- Coursera: Convolutional Neural Networks in TensorFlow
- Deeplizard: Keras - Python Deep Learning Neural Network API
- Book: Deep Learning with Python (Page: 276)
- Datacamp: Deep Learning in Python
- Datacamp: Convolutional Neural Networks for Image Processing
- Datacamp: Introduction to TensorFlow in Python
- Datacamp: Introduction to Deep Learning with Keras
- Datacamp: Advanced Deep Learning with Keras
- Google: Machine Learning Crash Course
- Pluralsight: Deep Learning with Keras
- Udacity: Intro to TensorFlow for Deep Learning
- Article: Keeping Up with PyTorch Lightning and Hydra
- Article: The One PyTorch Trick Which You Should Know
- Article: How does automatic differentiation really work?
- Article: 7 Tips To Maximize PyTorch Performance
- Article: An introduction to PyTorch Lightning with comparisons to PyTorch
- Article: Converting From Keras To PyTorch Lightning
- Article: From PyTorch to PyTorch Lightning — A gentle introduction
- Article: Introducing PyTorch Lightning Sharded: Train SOTA Models, With Half The Memory
- Article: Sharded: A New Technique To Double The Size Of PyTorch Models
- Article: Understanding Bidirectional RNN in PyTorch
- Article: A developer-friendly guide to mixed precision training with PyTorch
- Article: A developer-friendly guide to model pruning in PyTorch
- Article: A developer-friendly guide to model quantization with PyTorch
- Article: Tricks for training PyTorch models to convergence more quickly
- Article: PyTorch Lightning Bolts — From Linear, Logistic Regression on TPUs to pre-trained GANs
- Article: Scaling Logistic Regression Via Multi-GPU/TPU Training
- Article: Training Neural Nets on Larger Batches: Practical Tips for 1-GPU, Multi-GPU & Distributed setups
- Article: PyTorch Lightning 0.9 — synced BatchNorm, DataModules and final API!
- Article: PyTorch Lightning: Metrics
- Article: PyTorch Multi-GPU Metrics Library and More in PyTorch Lightning 0.8.1
- Article: Distributed model training in PyTorch using DistributedDataParallel
- Article: Distributed model training in PyTorch using DistributedDataParallel
- Article: EINSUM IS ALL YOU NEED - EINSTEIN SUMMATION IN DEEP LEARNING
- Article: Faster Deep Learning Training with PyTorch – a 2021 Guide
- Article: Fit More and Train Faster With ZeRO via DeepSpeed and FairScale
- Article: PyTorch Lightning V1.2.0- DeepSpeed, Pruning, Quantization, SWA
- Article: But what are PyTorch DataLoaders really?
- Article: Using PyTorch + NumPy? You're making a mistake.
- Article: How Wadhwani AI Uses PyTorch To Empower Cotton Farmers
- Article: Taming LSTMs: Variable-sized mini-batches and why PyTorch is good for your health
- Article: How to Build a Streaming DataLoader with PyTorch
- Article: Transform your ML-model to Pytorch with Hummingbird
- Article: PyTorch Loss Functions: The Ultimate Guide
- Article: Pad pack sequences for Pytorch batch processing with DataLoader
- Article: Model Parallelism
- Notebook: Tensor Arithmetic
- Notebook: Autograd
- Notebook: Optimization
- Notebook: Network modules
- Notebook: Datasets and Dataloaders
- Documentation: Pytorch Lightning
- Datacamp: Introduction to Deep Learning with PyTorch
- Deeplizard: Neural Network Programming - Deep Learning with PyTorch
- Udacity: Intro to Deep Learning with PyTorch
- Youtube: PyTorch Lightning 101
- Youtube: SimCLR with PyTorch Lightning
- Youtube: PyTorch Performance Tuning Guide
26:41:00
- Youtube: Skin Cancer Detection with PyTorch
- Youtube: Learn with Lightning
- Youtube: PyTorch Tutorial - RNN & LSTM & GRU - Recurrent Neural Nets
00:15:51
- Youtube: Pytorch Zero to All
- PyTorch Lecture 01: Overview
0:10:18
- PyTorch Lecture 02: Linear Model
0:12:52
- PyTorch Lecture 03: Gradient Descent
0:08:24
- PyTorch Lecture 04: Back-propagation and Autograd
0:15:25
- PyTorch Lecture 05: Linear Regression in the PyTorch way
0:11:50
- PyTorch Lecture 06: Logistic Regression
0:10:41
- PyTorch Lecture 07: Wide and Deep
0:10:37
- PyTorch Lecture 08: PyTorch DataLoader
0:06:41
- PyTorch Lecture 09: Softmax Classifier
0:18:47
- PyTorch Lecture 10: Basic CNN
0:15:52
- PyTorch Lecture 11: Advanced CNN
0:12:58
- PyTorch Lecture 12: RNN1 - Basics
0:28:47
- PyTorch Lecture 13: RNN 2 - Classification
0:17:22
- PyTorch Lecture 01: Overview
- PyTorch Developer Day 2020 | Full Livestream
- Youtube: Lightning Chat: How a Grandmaster Won a Kaggle Competition Using Pytorch Lightning
- Youtube: Production Inference Deployment with PyTorch
- Youtube: What is Automatic Differentiation?
- Youtube: JAX: accelerated machine learning research via composable function transformations in Python
- AWS: Amazon Transcribe Deep Dive: Using Feedback Loops to Improve Confidence Level of Transcription
- AWS: Build a Text Classification Model with AWS Glue and Amazon SageMaker
- AWS: Deep Dive on Amazon Rekognition: Building Computer Visions Based Smart Applications
- AWS: Hands-on Rekognition: Automated Video Editing
- AWS: Introduction to Amazon Comprehend
- AWS: Introduction to Amazon Comprehend Medical
- AWS: Introduction to Amazon Elastic Inference
- AWS: Introduction to Amazon Forecast
- AWS: Introduction to Amazon Lex
- AWS: Introduction to Amazon Personalize
- AWS: Introduction to Amazon Polly
- AWS: Introduction to Amazon SageMaker Ground Truth
- AWS: Introduction to Amazon SageMaker Neo
- AWS: Introduction to Amazon Transcribe
- AWS: Introduction to Amazon Translate
- AWS: Introduction to AWS Marketplace - Machine Learning Category
- AWS: Machine Learning Exam Basics
- AWS: Neural Machine Translation with Sockeye
- AWS: Process Model: CRISP-DM on the AWS Stack
- AWS: Satellite Image Classification in SageMaker
- Datacamp: Introduction to AWS Boto in Python
- edX: Amazon SageMaker: Simplifying Machine Learning Application Development
- Article: Decrypt Generative Adversarial Networks (GAN)
- Article: GANs in computer vision - Conditional image synthesis and 3D object generation
- Article: GANs in computer vision - Improved training with Wasserstein distance, game theory control and progressively growing schemes
- Article: GANs in computer vision - Introduction to generative learning
- Article: GANs in computer vision - self-supervised adversarial training and high-resolution image synthesis with style incorporation
- Article: GANs in computer vision - semantic image synthesis and learning a generative model from a single image
- Article: Paper Summary: DeViSE: A Deep Visual-Semantic Embedding Model
- Article: Contrastive Self-Supervised Learning
- Article: From Autoencoder to Beta-VAE
- Article: Self-Supervised Representation Learning
- Article: Self-supervised learning: The dark matter of intelligence
- Article: Understanding self-supervised and contrastive learning with "Bootstrap Your Own Latent" (BYOL)
- Article: How to Generate Images using Autoencoders
- Article: Introduction to autoencoders
- Article: Soft clustering with Gaussian mixed models (EM)
- Article: Variational autoencoders
- Article: Build a simple Image Retrieval System with an Autoencoder
- Article: Deep Inside Autoencoders
- Article: An overview of proxy-label approaches for semi-supervised learning
- Article: From Research to Production with Deep Semi-Supervised Learning
- Article: Affinity Propagation Algorithm Explained
- Article: Algorithm Breakdown: Affinity Propagation
- Article: Create, Visualize and Interpret Customer Segments
- Article: A Framework For Contrastive Self-Supervised Learning And Designing A New Approach
- Article: EfficientDet Meets Pytorch-Lightning
- Article: Principal components analysis (PCA)
- Article: RecSys 2020 - Takeaways and Notable Papers
- Article: Grouping data points with k-means clustering
- Article: A gentle introduction to HDBSCAN and density-based clustering
- Article: Deepfakes: Face synthesis with GANs and Autoencoders
- Article: The 3 Deep Learning Frameworks For End-to-End Speech Recognition That Power Your Devices
- Article: Unsupervised Learning of Visual Features by Contrasting Cluster Assignments
- Berkeley: Deep Unsupervised Learning Spring 2020
- L1 Introduction -- CS294-158-SP20 Deep Unsupervised Learning -- UC Berkeley, Spring 2020
1:10:02
- L2 Autoregressive Models -- CS294-158-SP20 Deep Unsupervised Learning -- UC Berkeley, Spring 2020
2:27:23
- L3 Flow Models -- CS294-158-SP20 Deep Unsupervised Learning -- UC Berkeley -- Spring 2020
1:56:53
- L4 Latent Variable Models (VAE) -- CS294-158-SP20 Deep Unsupervised Learning -- UC Berkeley
2:19:33
- Lecture 5 Implicit Models -- GANs Part I --- UC Berkeley, Spring 2020
2:32:32
- Lecture 6 Implicit Models / GANs part II --- CS294-158-SP20 Deep Unsupervised Learning -- Berkeley
2:09:14
- Lecture 7 Self-Supervised Learning -- UC Berkeley Spring 2020 - CS294-158 Deep Unsupervised Learning
2:20:41
- L8 Round-up of Strengths and Weaknesses of Unsupervised Learning Methods -- UC Berkeley SP20
0:41:51
- L9 Semi-Supervised Learning and Unsupervised Distribution Alignment -- CS294-158-SP20 UC Berkeley
2:16:00
- L10 Compression -- UC Berkeley, Spring 2020, CS294-158 Deep Unsupervised Learning
3:09:49
- L11 Language Models -- guest instructor: Alec Radford (OpenAI) --- Deep Unsupervised Learning SP20
2:38:19
- L12 Representation Learning for Reinforcement Learning --- CS294-158 UC Berkeley Spring 2020
2:01:56
- L1 Introduction -- CS294-158-SP20 Deep Unsupervised Learning -- UC Berkeley, Spring 2020
- Datacamp: Customer Segmentation in Python
- Datacamp: Unsupervised Learning in Python
- Deck: Demystifying Self-Supervised Learning for Visual Recognition
- DeepMind: Inefficient Data Efficiency
- Google: Clustering
- Udacity: Segmentation and Clustering
- Wandb: Unsupervised Visual Representation Learning with SwAV
- Youtube: Applied ML 2020 - 14 - Clustering and Mixture Models
1:26:33
- Youtube: Applied ML 2020 - 13 - Dimensionality reduction
1:30:34
- Youtube: BYOL: Bootstrap Your Own Latent: A New Approach to Self-Supervised Learning (Paper Explained)
- Youtube: A critical analysis of self-supervision, or what we can learn from a single image (Paper Explained)
- Youtube: Week 10 – Lecture: Self-supervised learning (SSL) in computer vision (CV)
- Youtube: CVPR 2020 Tutorial: Towards Annotation-Efficient Learning
- Youtube: Yuki Asano | Self-Supervision | Self-Labelling | Labelling Unlabelled videos | CV | CTDS.Show #81
- Youtube: Contrastive Clustering with SwAV
- Youtube: Variational Autoencoders - EXPLAINED!
0:17:36
- Youtube: OptaProAnalyticsForum– Learning to watch football: Self-supervised representations for tracking data
- Youtube: Can a Neural Net tell if an image is mirrored? – Visual Chirality
- Youtube: Deep InfoMax: Learning deep representations by mutual information estimation and maximization
- Deep Learning Lecture Summer 2020
- Deep Learning: Unsupervised Learning - Part 1
- Deep Learning: Unsupervised Learning - Part 2
- Deep Learning: Unsupervised Learning - Part 3
- Deep Learning: Unsupervised Learning - Part 4
- Deep Learning: Unsupervised Learning - Part 5
- Deep Learning: Weakly and Self-Supervised Learning - Part 1
- Deep Learning: Weakly and Self-Supervised Learning - Part 2
- Deep Learning: Weakly and Self-Supervised Learning - Part 3
- Deep Learning: Weakly and Self-Supervised Learning - Part 4
- ECCV 2020: New Frontiers for Learning with Limited Labels or Data
- Youtube: Self-Supervised Learning - What is Next? - Workshop at ECCV 2020, August 28th
- Next Challenges for Self-Supervised Learning - Aäron van den Oord
0:20:13
- Perspectives on Unsupervised Representation Learning - Paolo Favaro
0:42:41
- Learning and Transferring Visual Representations with Few Labels - Carl Doersch
0:32:53
- Self-Supervision as a Path to a Post-Dataset Era - Alexei Alyosha Efros
0:38:06
- Next Challenges for Self-Supervised Learning - Aäron van den Oord
- Youtube: Marco Cuturi - A Primer on Optimal Transport
- Youtube: Sebastian Ruder: Neural Semi-supervised Learning under Domain Shift
- Youtube: Clustering Algorithms
- Article: Fixing common Unicode mistakes with Python – after they’ve been made
- Article: 10 Popular Keyword Extraction Algorithms in Natural Language Processing
- Article: Deconstructing BERT
- Article: How To Create Data Products That Are Magical Using Sequence-to-Sequence Models
- Article: Why Rasa uses Sparse Layers in Transformers
- Article: Semantic Search On Documents
- Article: Locality-sensitive Hashing and Singular to Plural Noun Conversion
- Article: Build A Keyword Extraction API with Spacy, Flask, and FuzzyWuzzy
- Article: What is Hidden in the Hidden Markov Model?
- Article: Unsupervised NER using BERT
- Article: Unsupervised creation of interpretable sentence representations
- Article: Unsupervised synonym harvesting
- Article: Zero shot NER using RoBERTA
- Article: Maximizing BERT model performance
- Article: Swiss army knife for unsupervised task solving
- Article: 10 Exciting Ideas of 2018 in NLP
- Article: 74 Summaries of Machine Learning and NLP Research
- Article: Advance BERT model via transferring knowledge from Cross-Encoders to Bi-Encoders
- Article: Learning to select data for transfer learning
- Article: T5 — a model that explores the limits of transfer learning
- Article: The State of Transfer Learning in NLP
- Article: Haystack: The State of Search in 2021
- Article: How to build a State-of-the-Art Conversational AI with Transfer Learning
- Article: Commonsense Reasoning for Natural Language Processing
- Article: Language Models
- Article: Paraphrasing
- Article: Poor man’s GPT-3: Few shot text generation with T5 Transformer
- Article: Text Generation
- Article: Controlling Text Generation with Plug and Play Language Models
- Article: What makes a good conversation?
- Article: How to steal modern NLP systems with gibberish?
- Article: Intuition & Use-Cases of Embeddings in NLP & beyond
- Article: The Illustrated BERT, ELMo, and co. (How NLP Cracked Transfer Learning)
- Article: The Illustrated GPT-2 (Visualizing Transformer Language Models)
- Article: The Illustrated Transformer
- Article: The Illustrated Word2vec
- Article: A Deep Dive into the Reformer
- Article: A Survey of Long-Term Context in Transformers
- Article: Large Memory Layers with Product Keys
- Article: Optimal Transport and the Sinkhorn Transformer
- Article: Pattern-Exploiting Training
- Article: Talking-Heads Attention
- Article: How to Apply BERT to Arabic and Other Languages
- Article: Neural Language Models as Domain-Specific Knowledge Bases
- Article: Domain-Specific BERT Models
- Article: Existing Tools for Named Entity Recognition
- Article: Smart Batching Tutorial - Speed Up BERT Training
- Article: Attention? An Other Perspective!: Part 2
- Article: Attention? An Other Perspective!: Part 3
- Article: Attention? An Other Perspective!: Part 4
- Article: Attention? An Other Perspective!: Part 5
- Article: Attention? An Other Perspective!: Part 1
- Article: Rebuilding the spellchecker, pt.4: Introduction to suggest algorithm
- Article: Rebuilding the spellchecker: Hunspell and the order of edits
- Article: Rebuilding the most popular spellchecker. Part 1
- Article: Rebuilding the spellchecker, pt.2: Just look in the dictionary, they said!
- Article: Rebuilding the spellchecker, pt.3: Lookup—compounds and solutions
- Article: Automatic Topic Labeling in 2018: History and Trends
- Article: Deep Learning for NLP Best Practices
- Article: Attention and Memory in Deep Learning and NLP
- Article: Long Short-Term Memory: From Zero to Hero with PyTorch
- Article: Ten trends in Deep learning NLP
- Article: The Illustrated Wav2vec
- Article: A Review of the Neural History of Natural Language Processing
- Article: ColumnTransformer Meets Natural Language Processing
- Article: Neural Transfer Learning for Natural Language Processing
- Article: Tracking the Progress in Natural Language Processing
- Article: Implementing Bengio’s Neural Probabilistic Language Model (NPLM) using Pytorch
- Article: Leveraging Pre-trained Language Model Checkpoints for Encoder-Decoder Models
- Article: How many data points is a prompt worth?
- Article: NLP: Pre-trained Sentiment Analysis
- Article: Transformer-based Encoder-Decoder Models
- Article: Understanding BigBird's Block Sparse Attention"
- Article: Interactive Topic Modeling with BERTopic
- Article: Understanding Climate Change Domains through Topic Modeling
- Article: When Topic Modeling is Part of the Text Pre-processing
- Article: Keyword Extraction with BERT
- Article: Topic Modeling with BERT
- Article: Question Classification using Self-Attention Transformer — Part 1.1
- Article: Question Classification using Self-Attention Transformer — Part 1
- Article: Question Classification using Self-Attention Transformer — Part 2
- Article: Question Classification using Self-Attention Transformer — Part 3
- Article: Generalized Language Models
- Article: Learning Word Embedding
- Article: Reducing Toxicity in Language Models
- Article: The Transformer Family
- Article: DialogRPT with Huggingface Transformers
- Article: Hugging Face Reads - 01/2021 - Sparsity and Pruning
- Article: Hugging Face Reads, Feb. 2021 - Long-range Transformers
- Article: Porting fairseq wmt19 translation system to transformers
- Article: On word embeddings - Part 1
- Article: On word embeddings - Part 2: Approximating the Softmax
- Article: On word embeddings - Part 3: The secret ingredients of word2vec
- Article: Word embeddings in 2017: Trends and future direction
- Article: DaCy: New Fast and Efficient State-of-the-Art in Danish NLP!
- Article: State-of-the-Art Language Models in 2020
- Article: ML and NLP Publications in 2020
- Article: Zero-Shot Learning in Modern NLP
- Article: Introduction to recurrent neural networks
- Article: Understanding LSTM Networks
- Article: Explaining RNNs without neural networks
- Article: Understanding Convolutional Neural Networks for NLP
- Article: Search (Pt 1) — A Gentle Introduction
- Article: Search (Pt 2) — A Semantic Horse Race
- Article: Search (Pt 3) — Elastic Transformers
- Article: Improved Few-Shot Text classification
- Article: Text classification from few training examples
- Article: Multi-Label Text Classification
- Article: Semantic search using BERT embeddings
- Article: What Semantic Search Can do for You
- Article: How To Create Natural Language Semantic Search For Arbitrary Objects With Deep Learning
- Article: How to Implement a Beam Search Decoder for Natural Language Processing
- Article: Creating a class-based TF-IDF with Scikit-Learn
- Article: String Matching with BERT, TF-IDF, and more!
- Article: How to Use n-gram Models to Detect Format Errors in Datasets
- Article: The Unreasonable Effectiveness of Recurrent Neural Networks
- Article: A review of BERT based models
- Article: Document clustering
- Article: Document search with fragment embeddings
- Doc: Huggingface Summary of the models
- Doc: Summary of the tokenizers
- Article: GPT-2 A nascent transfer learning method that could eliminate supervised learning in some NLP tasks
- Article: Evaluation Metrics for Language Modeling
- Article: Representation Learning and Retrieval
- Article: A survey of cross-lingual word embedding models
- Article: Unsupervised Cross-lingual Representation Learning
- Article: Spelling Correction: How to make an accurate and fast corrector
- Article: Speller100: Zero-shot spelling correction at scale for 100-plus languages
- Article: Understanding BERT’s Semantic Interpretations
- Article: Using NLP (BERT) to improve OCR accuracy
- Article: Brief review of word embedding families (2019)
- Article: Trends in input representation for state-of-art NLP models (2019)
- Article: An Overview of Multi-Task Learning in Deep Neural Networks
- Article: Multi-Task Learning Objectives for Natural Language Processing
- Article: GPU Benchmarks for Fine-Tuning BERT
- Article: Recent Advances in Language Model Fine-tuning
- Article: The Current Best of Universal Word Embeddings and Sentence Embeddings
- Article: Topic Modeling for Keyword Extraction
- Article: Understanding ARPA and Language Models
- Article: Gaussian Mixture Models for Clustering
- Article: Explain NLP models with LIME & SHAP
- Article: How to solve 90% of NLP problems: a step-by-step guide
- Article: Does GPT-2 Know Your Phone Number?
- Article: How to Outperform GPT-3 by Combining Task Descriptions With Supervised Learning
- Article: LSTM Primer With Real Life Application( DeepMind Kidney Injury Prediction )*
- Article: T5 — XLNet — a clever language modeling solution
- Article: Using an NLP Q&A System To Study Climate Hazards and Nature-Based Solutions
- Article: Hyperparameter Optimization for 🤗Transformers: A guide
- Article: How To Do Things With Words. And Counters
- Article: Automatically Summarize Trump’s State of the Union Address
- Article: Solving NER with BERT for any entity type with very little training data (compared to past approaches)
- Article: 10 Things You Need to Know About BERT and the Transformer Architecture That Are Reshaping the AI Landscape
- Article: Semantic Entailment
- Article: Shrinking fastText embeddings so that it fits Google Colab
- Article: Fuzzy Matching/Fuzzy Logic Explained
- Article: Under the Hood of RNNs
- Article: All Our N-gram are Belong to You
- Article: Perplexity Intuition (and its derivation)
- Article: Part of Speech Tagging with Hidden Markov Chain Models
- Article: NLP Year In Review
- Article: UNDERSTANDING WORD2VEC THROUGH CULTURAL DIMENSIONS
- Article: Exploring LSTMs
- Article: Aspect-Based Opinion Mining (NLP with Python)
- Article: pyLDAvis: Topic Modelling Exploration Tool That Every NLP Data Scientist Should Know
- Article: ML and NLP Research Highlights of 2020
- Article: Introducing spaCy
- Article: 3 subword algorithms help to improve your NLP model performance
- Article: Examining BERT’s raw embeddings
- Article: Making sense of LSTMs by example
- Article: The Transformer Explained
- Article: Understanding building blocks of ULMFIT
- Article: Building a sentence embedding index with fastText and BM25
- Article: The Annotated GPT-2
- Article: Key topics extraction and contextual sentiment of users reviews
- Article: Google mT5 multilingual text-to-text transformer: A Brief Paper Analysis
- Article: Building RNNs is Fun with PyTorch and Google Colab
- Article: Faster and smaller quantized NLP with Hugging Face and ONNX Runtime
- Article: Visualizing A Neural Machine Translation Model (Mechanics of Seq2seq Models With Attention)
- Article: How I Used Deep Learning To Train A Chatbot To Talk Like Me (Sorta)
- Article: Generating Questions Using Transformers
- Article: Feature-based Approach with BERT
- Article: Performers: The Kernel Trick, Random Fourier Features, and Attention
- Article: Text Similarities : Estimate the degree of similarity between two texts
- Article: NLP's ImageNet moment has arrived
- Article: Simple PyTorch Transformer Example with Greedy Decoding
- Article: Character level language model RNN
- Article: How we used Universal Sentence Encoder and FAISS to make our search 10x smarter
- Article: Adapting Text Augmentation to Industry problems
- Article: The Annotated Transformer
- Article: OpenAI's GPT-3 Language Model: A Technical Overview
- Article: NLP for Supervised Learning - A Brief Survey
- Article: The 4 Biggest Open Problems in NLP
- Article: How GPT3 Works
- Article: Why You Should Do NLP Beyond English
- Article: Breaking the spell of the spelling check
- Article: How to Write a Spelling Corrector
- Article: Spellchecking by computer
- Article: A Spellchecker Used to Be a Major Feat of Software Engineering
- Article: 1000x Faster Spelling Correction algorithm (2012)
- Article: The Pruning Radix Trie — a Radix Trie on steroids
- Article: Text Data Cleanup - Dynamic Embedding Visualisation
- Article: Rotary Embeddings: A Relative Revolution
- Article: Using embeddings to help find similar restaurants in Search
- Article: Evolution of and experiments with feed ranking at Swiggy
- Article: Personalizing Swiggy POP Recommendations
- Article: Fan(s)tastic: Search for blazing-fast results
- Article: Find My Food: Semantic Embeddings for Food Search Using Siamese Networks
- Article: Learning To Rank Restaurants
- Article: Is Word Sense Disambiguation outdated?
- Article: Named-Entity evaluation metrics based on entity-level
- Article: Comparison Of Ngram Fuzzy Matching Approaches
- Article: String similarity — the basic know your algorithms guide!
- Article: Evolution of Word to Vector
- Article: Unsupervised Auto-labeling of Websites
- Article: A friendly introduction to Recurrent Neural Networks
- Article: Introducing Translatotron: An End-to-End Speech-to-Speech Translation Model
- Book: Embeddings in Natural Language Processing
- Book: Linguistic Fundamentals for Natural Language Processing: 100 Essentials from Morphology and Syntax
- Coursera: Sequence Models
- Coursera: Natural Language Processing in TensorFlow
- CMU: Low-resource NLP Bootcamp 2020
- CMU Low resource NLP Bootcamp 2020 (1): NLP Tasks
1:46:06
- CMU Low resource NLP Bootcamp 2020 (2): Linguistics - Phonology and Morphology
1:24:08
- CMU Low resource NLP Bootcamp 2020 (3): Machine Translation
1:55:59
- CMU Low resource NLP Bootcamp 2020 (4): Linguistics - Syntax and Morphosyntax
2:00:21
- CMU Low resource NLP Bootcamp 2020 (5): Neural Representation Learning
1:19:57
- CMU Low resource NLP Bootcamp 2020 (6): Multilingual NLP
2:04:34
- CMU Low resource NLP Bootcamp 2020 (7): Speech Synthesis
2:22:14
- CMU Low resource NLP Bootcamp 2020 (1): NLP Tasks
- CMU: Neural Nets for NLP 2021
- CMU Neural Nets for NLP 2021 (1): Introduction
1:22:40
- CMU Neural Nets for NLP 2021 (2): Language Modeling, Efficiency/Training Tricks
0:58:24
- CMU Neural Nets for NLP 2021 (3): Building A Neural Network Toolkit for NLP, minnn
0:34:42
- CMU Neural Nets for NLP 2021 (4): Efficiency Tricks for Neural Nets
0:43:28
- CMU Neural Nets for NLP 2021 (5): Recurrent Neural Networks
0:38:50
- CMU Neural Nets for NLP 2021 (6): Conditioned Generation
0:45:06
- CMU Neural Nets for NLP 2021 (7): Attention
0:38:23
- CMU Neural Nets for NLP 2021 (8): Distributional Semantics and Word Vectors
0:42:44
- CMU Neural Nets for NLP 2021 (9): Sentence and Contextual Word Representations
0:50:53
- CMU Neural Nets for NLP 2021 (11): Structured Prediction with Local Independence Assumptions
0:36:43
- CMU Neural Nets for NLP 2021 (10): Debugging Neural Nets (for NLP)
0:43:58
- CMU Neural Nets for NLP 2021 (12): Model Interpretation
0:28:52
- CMU Neural Nets for NLP 2021 (13): Generating Trees and Graphs
0:41:05
- CMU Neural Nets for NLP 2021 (14): Margin-based and Reinforcement Learning for Structured Prediction
0:47:20
- CMU Neural Nets for NLP 2021 (15): Sequence-to-sequence Pre-training
0:27:22
- CMU Neural Nets for NLP 2021 (16): Machine Reading w/ Neural Nets
0:43:08
- CMU Neural Nets for NLP 2021 (17): Neural Nets + Knowledge Bases
0:44:19
- CMU Neural Nets for NLP 2021 (18): Advanced Search Algorithms
0:47:58
- CMU Neural Nets for NLP 2021 (19): Adversarial Methods
0:41:56
- CMU Neural Nets for NLP 2021 (20): Models w/ Latent Random Variables
0:41:06
- CMU Neural Nets for NLP 2021 (21): Multilingual Learning
0:33:10
- CMU Neural Nets for NLP 2021 (22): Bias in NLP
0:32:44
- CMU Neural Nets for NLP 2021 (23): Document-level Models
0:40:04
- CMU Neural Nets for NLP 2021 (1): Introduction
- CMU Multilingual NLP 2020
- CMU Multilingual NLP 2020 (1): Introduction
1:17:29
- CMU Multilingual NLP 2020 (2): Typology - The Space of Language
0:37:13
- CMU Multilingual NLP 2020 (3): Words, Parts of Speech, Morphology
0:38:58
- CMU Multilingual NLP 2020 (4): Text Classification and Sequence Labeling
0:45:56
- CMU Multilingual NLP 2020 (5): Advanced Text Classification/Labeling
0:49:40
- CMU Multilingual NLP 2020 (6): Translation, Evaluation, and Datasets
0:46:17
- CMU Multilingual NLP 2020 (7): Machine Translation/Sequence-to-sequence Models
0:43:51
- CMU Multilingual NLP 2020 (8): Data Augmentation for Machine Translation
0:24:42
- CMU Multilingual NLP 2020 (9): Language Contact and Similarity Across Languages
0:30:25
- CMU Multilingual NLP 2020 (10): Multilingual Training and Cross-lingual Transfer
0:39:58
- CMU Multilingual NLP 2020 (11): Unsupervised Translation
0:51:17
- CMU Multilingual NLP 2020 (12): Code Switching, Pidgins, and Creoles
0:46:37
- CMU Multilingual NLP 2020 (13): Speech
0:41:16
- CMU Multilingual NLP 2020 (14): Automatic Speech Recognition
0:39:33
- CMU Multilingual NLP 2020 (15): Low Resource ASR
0:43:38
- CMU Multilingual NLP 2020 (16): Text to Speech
0:39:00
- CMU Multilingual NLP 2020 (17): Morphological Analysis and Inflection
0:45:22
- CMU Multilingual NLP 2020 (18): Dependency Parsing
0:38:15
- CMU Multilingual NLP 2020 (19): Data Annotation
0:53:08
- CMU Multilingual NLP 2020 (20): Active Learning
0:28:37
- CMU Multilingual NLP 2020 (21): Information Extraction
0:41:00
- CMU Multilingual NLP 2020 (22): Multilingual NLP for Indigenous Languages
1:21:58
- CMU Multilingual NLP 2020 (23): Universal Translation at Scale
1:27:33
- CMU Multilingual NLP 2020 (1): Introduction
- CMU Advanced NLP 2021
- CMU Advanced NLP 2021 (1): Introduction to NLP
1:08:39
- CMU Advanced NLP 2021 (2): Text Classification
1:16:56
- CMU Advanced NLP 2021 (3): Language Modeling and Neural Networks
1:16:37
- CMU Advanced NLP 2021 (4): Text Classification
1:14:19
- CMU Advanced NLP 2021 (5): Recurrent Neural Networks
1:13:43
- CMU Advanced NLP 2021 (6): Conditional Generation
1:17:56
- CMU Advanced NLP 2021 (1): Introduction to NLP
- CS685: Advanced Natural Language Processing
- UMass CS685 (Advanced NLP): Attention mechanisms
0:48:53
- UMass CS685 (Advanced NLP): Question answering
0:59:50
- UMass CS685 (Advanced NLP): Better BERTs
0:52:23
- UMass CS685 (Advanced NLP): Text generation decoding and evaluation
1:02:32
- UMass CS685 (Advanced NLP): Paraphrase generation
1:10:59
- UMass CS685 (Advanced NLP): Crowdsourced text data collection
0:58:31
- UMass CS685 (Advanced NLP): Model distillation and security threats
1:09:25
- UMass CS685 (Advanced NLP): Retrieval-augmented language models
0:52:13
- UMass CS685 (Advanced NLP): Implementing a Transformer
1:12:36
- UMass CS685 (Advanced NLP): vision + language
1:06:28
- UMass CS685 (Advanced NLP): exam review
1:24:36
- UMass CS685 (Advanced NLP): Intermediate fine-tuning
1:10:35
- UMass CS685 (Advanced NLP): ethics in NLP
0:56:57
- UMass CS685 (Advanced NLP): probe tasks
0:54:30
- UMass CS685 (Advanced NLP): semantic parsing
0:48:49
- UMass CS685 (Advanced NLP): commonsense reasoning (guest lecture by Lorraine Li)
0:58:53
- UMass CS685 (Advanced NLP): Attention mechanisms
- Datacamp: Advanced NLP with spaCy
- Datacamp: Building Chatbots in Python
- Datacamp: Clustering Methods with SciPy
- Datacamp: Feature Engineering for NLP in Python
- Datacamp: Machine Translation in Python
- Datacamp: Natural Language Processing Fundamentals in Python
- Datacamp: Natural Language Generation in Python
- Datacamp: RNN for Language Modeling
- Datacamp: Regular Expressions in Python
- Datacamp: Sentiment Analysis in Python
- Datacamp: Spoken Language Processing in Python
- Notebook: NNLM - Predict Next Word
- Notebook: Word2Vec
- Notebook: FastText Sentence Classification
- Notebook: TextCNN - Binary Sentiment Classification
- Notebook: TextRNN - Predict Next Step
- Notebook: TextLSTM - Autocomplete
- Notebook: Bi-LSTM - Predict Next Word in Long Sentence
- Notebook: SeqSeq - Change Word
- Notebook: Seq2Seq with Attention - Translate
- Notebook: Bi-LSTM with Attention - Binary Sentiment Classification
- Notebook: The Transformer - Translate
- Notebook: The Transformer - Greedy Decoder
- Notebook: BERT - NSP and MLM
- Notebook: Logistic regression-Tf-Idf baseline
- RNN and LSTM
- Spacy Tutorial
- Stanford CS224U: Natural Language Understanding | Spring 2019
- Lecture 1 – Course Overview | Stanford CS224U: Natural Language Understanding | Spring 2019
1:12:59
- Lecture 2 – Word Vectors 1 | Stanford CS224U: Natural Language Understanding | Spring 2019
1:17:10
- Lecture 3 – Word Vectors 2 | Stanford CS224U: Natural Language Understanding | Spring 2019
1:16:52
- Lecture 4 – Word Vectors 3 | Stanford CS224U: Natural Language Understanding | Spring 2019
0:38:20
- Lecture 5 – Sentiment Analysis 1 | Stanford CS224U: Natural Language Understanding | Spring 2019
1:10:44
- Lecture 6 – Sentiment Analysis 2 | Stanford CS224U: Natural Language Understanding | Spring 2019
1:03:23
- Lecture 7 – Relation Extraction | Stanford CS224U: Natural Language Understanding | Spring 2019
1:19:04
- Lecture 8 – NLI 1 | Stanford CS224U: Natural Language Understanding | Spring 2019
1:15:02
- Lecture 9 – NLI 2 | Stanford CS224U: Natural Language Understanding | Spring 2019
1:15:35
- Lecture 10 – Grounding | Stanford CS224U: Natural Language Understanding | Spring 2019
1:23:15
- Lecture 11 – Semantic Parsing | Stanford CS224U: Natural Language Understanding | Spring 2019
1:07:05
- Lecture 12 – Evaluation Methods | Stanford CS224U: Natural Language Understanding | Spring 2019
1:18:32
- Lecture 13 – Evaluation Metrics | Stanford CS224U: Natural Language Understanding | Spring 2019
1:11:32
- Lecture 14 – Contextual Vectors | Stanford CS224U: Natural Language Understanding | Spring 2019
1:14:33
- Lecture 15 – Presenting Your Work | Stanford CS224U: Natural Language Understanding | Spring 2019
1:15:11
- Lecture 1 – Course Overview | Stanford CS224U: Natural Language Understanding | Spring 2019
- Stanford CS224N: Stanford CS224N: NLP with Deep Learning | Winter 2019
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 1 – Introduction and Word Vectors
1:21:52
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 2 – Word Vectors and Word Senses
1:20:43
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 3 – Neural Networks
1:18:50
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 4 – Backpropagation
1:22:15
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 5 – Dependency Parsing
1:20:22
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 6 – Language Models and RNNs
1:08:25
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 7 – Vanishing Gradients, Fancy RNNs
1:13:23
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 8 – Translation, Seq2Seq, Attention
1:16:56
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 9 – Practical Tips for Projects
1:22:39
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 10 – Question Answering
1:21:01
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 11 – Convolutional Networks for NLP
1:20:18
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 12 – Subword Models
1:15:30
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 13 – Contextual Word Embeddings
1:20:18
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 14 – Transformers and Self-Attention
0:53:48
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 15 – Natural Language Generation
1:19:37
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 16 – Coreference Resolution
1:19:20
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 17 – Multitask Learning
1:11:54
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 18 – Constituency Parsing, TreeRNNs
1:20:37
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 19 – Bias in AI
0:56:03
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 20 – Future of NLP + Deep Learning
1:19:15
- Stanford CS224N: NLP with Deep Learning | Winter 2020 | Low Resource Machine Translation
1:15:45
- Stanford CS224N: NLP with Deep Learning | Winter 2020 | BERT and Other Pre-trained Language Models
0:54:28
- Stanford CS224N: NLP with Deep Learning | Winter 2019 | Lecture 1 – Introduction and Word Vectors
- Stanford: CS214 From Languages to Information
- 1 1 Regular Expressions 11 25
0:11:25
- 1 2 Regular Expression Substitutions
0:06:10
- 1 3 Words and Corpora
0:06:25
- 1 4 Word Tokenization
0:08:21
- 1 5 Byte Pair Encoding
0:07:38
- 1 6 Word Normalization
0:06:23
- 2 1 Defining Minimum Edit Distance 7 04
0:07:05
- 2 2 Computing Minimum Edit Distance 5 54
0:05:55
- 2 3 Backtrace for Computing Alignments 5 55
0:05:56
- 2 4 Weighted Minimum Edit Distance 2 47
0:02:48
- 2 5 Minimum Edit Distance in Computational Biology 9 29
0:09:30
- 3 1 Introduction to N grams 8 41
0:08:41
- 3 2 Estimating N gram Probabilities 9 38
0:09:38
- 3 3 Evaluation and Perplexity
0:12:37
- 3 4 Generalization and Zeros 5 15
0:05:15
- 3 5 Smoothing Add One 6 30
0:06:31
- 3 6 Interpolation 10 25
0:10:25
- 3 8 Kneser Ney Smoothing 8 59
0:08:59
- 5 1 What is Text Classification 8 12
0:08:12
- Naive Bayes Lecture 2 The Naive Bayes Classifier
0:12:24
- Naive Bayes 3 Learning in Naive Bayes
0:06:04
- Naive Bayes 4 Sentiment and Binary NB
0:08:14
- 4 5 More on Sentiment Classification
0:05:14
- 5 2 Naive Bayes Relationship to Language Modeling 4 35
0:04:36
- 5 7 Precision, Recall, and the F measure 16 16
0:16:17
- 5 8 Text Classification Evaluation 7 17
0:07:17
- Logistic Regression 1 Generative and Discriminative Classifiers
0:05:25
- Logistic Regression 2 Classification
0:07:48
- Logistic Regression 3 A Sentiment Example
0:05:09
- Logistic Regression 4 Cross Entropy Loss
0:07:59
- Logistic Regression 5 Stochastic Gradient Descent
0:09:46
- Logistic Regression 6 A worked example of gradient descent
0:05:10
- 7 1 Introduction to Information Retrieval 9 16
0:09:16
- 7 2 Term Document Incidence Matrices 8 59
0:08:59
- 7 3 The Inverted Index 10 42
0:10:43
- 7 4 Query Processing with the Inverted Index 6 43
0:06:44
- 7 5 The Boolean Retrieval Model 14 06
0:14:07
- 7 6 Phrase Queries and Positional Indexes 19 45
0:19:46
- 8 1 Introducing Ranked Retrieval 4 27
0:04:27
- 8 2 Scoring with the Jaccard Coefficient 5 06
0:05:07
- 8 3 Term Frequency Weighting 5 59
0:06:00
- 8 4 Inverse Document Frequency Weighting 10 16
0:10:17
- 8 5 TF IDF Weighting 3 42
0:03:42
- 8 6 The Vector Space Model 16 22
0:16:23
- 8 7 Calculating TF IDF Cosine Scores 12 47
0:12:48
- 8 8 Evaluating Search Engines 9 02
0:09:03
- Introduction to Named Entity Tagging
0:05:06
- Introduction to Part of Speech Tagging
0:09:03
- Vector 1 Word Meaning
0:09:09
- Vector 2 Vector Semantics
0:06:37
- Vector 3 Words and Vectors
0:05:16
- Vector 4 Cosine Similarity
0:04:23
- Vector 5 TF IDF
0:05:32
- Vector 6 Word2vec
0:07:39
- Vector 7 Learning in Word2vec
0:07:36
- Vector 8 Properties of Embeddings
0:06:08
- Neural Networks 1 Neural Units
0:05:41
- Neural Networks 2 XOR
0:07:32
- Neural Networks 3 Feedforward Neural Networks
0:08:55
- Neural Networks 4 Applying Feedforward Networks to NLP
0:07:15
- Neural Networks 5 Overview of Training
0:04:21
- Neural Networks 6 Computation Graphs and Backward Differentiation
0:10:31
- Dialog 1 Overview
0:03:11
- Dialogue 2 Human Conversation
0:10:31
- Dialogue 3 ELIZA
0:09:27
- Dialogue 4 Corpus Chatbots
0:09:35
- Dialogue 5 Frame Based Dialogue
0:07:41
- Dialogue 6 Dialogue State Architecture
0:08:58
- Dialogue 7 Dialogue State Architecture Policy and Generation
0:08:23
- Dialogue 8 Evaluation
0:04:38
- Dialogue 9 Design and Ethical Issues
0:03:29
- Recommender Systems 1 Introduction
0:06:02
- Recommender Systems 2 Content Based
0:05:50
- Recommender Systems 3 User User Collaborative Filtering
0:07:50
- Recommender Systems 4 Item Item Collaborative Filtering
0:06:52
- Recommender Systems 5 Simplified version for PA6
0:02:10
- 14 1 Anchor Text 3 39
0:03:40
- 14 2 PageRank Overview and Markov Chains 12 10
0:12:10
- 14 3 Computing PageRank 8 09
0:08:10
- Social Networks 1 Networks
0:06:58
- 1 1 Regular Expressions 11 25
- TextBlob Tutorial Series
- Natural Language Processing Tutorial With TextBlob -Tokens,Translation and Ngrams
0:11:01
- NLP Tutorial With TextBlob and Python - Parts of Speech Tagging
0:05:59
- NLP Tutorial With TextBlob & Python - Lemmatizating
0:06:32
- NLP Tutorial with TextBlob & Python - Sentiment Analysis(Polarity,Subjectivity)
0:06:31
- Building a NLP-based Flask App with TextBlob
0:37:30
- Natural Language Processing with Polyglot - Installation & Intro
0:12:49
- Natural Language Processing Tutorial With TextBlob -Tokens,Translation and Ngrams
- Youtube: fast.ai Code-First Intro to Natural Language Processing
- What is NLP? (NLP video 1)
0:22:42
- Topic Modeling with SVD & NMF (NLP video 2)
1:06:39
- Topic Modeling & SVD revisited (NLP video 3)
0:33:05
- Sentiment Classification with Naive Bayes (NLP video 4)
0:58:20
- Sentiment Classification with Naive Bayes & Logistic Regression, contd. (NLP video 5)
0:51:29
- Derivation of Naive Bayes & Numerical Stability (NLP video 6)
0:23:56
- Revisiting Naive Bayes, and Regex (NLP video 7)
0:37:33
- Intro to Language Modeling (NLP video 8)
0:40:58
- Transfer learning (NLP video 9)
1:35:16
- ULMFit for non-English Languages (NLP Video 10)
1:49:22
- Understanding RNNs (NLP video 11)
0:33:16
- Seq2Seq Translation (NLP video 12)
0:59:42
- Word embeddings quantify 100 years of gender & ethnic stereotypes-- Nikhil Garg (NLP video 13)
0:47:17
- Text generation algorithms (NLP video 14)
0:25:39
- Implementing a GRU (NLP video 15)
0:23:13
- Algorithmic Bias (NLP video 16)
1:26:17
- Introduction to the Transformer (NLP video 17)
0:22:54
- The Transformer for language translation (NLP video 18)
0:55:17
- What you need to know about Disinformation (NLP video 19)
0:51:21
- Article: Zero to Hero with fastai - Beginner
- Article: Zero to Hero with fastai - Intermediate
- What is NLP? (NLP video 1)
- NLP Course | For You
- Youtube: BERT Research Series
- YouTube: Intro to NLP with Spacy
- Talk: Practical NLP for the Real World
- YouTube: Level 3 AI Assistant Conference 2020
- Youtube: Conversation Analysis Theory in Chatbots | Michael Szul
- Youtube: Designing Practical NLP Solutions | Ines Montani
- Youtube: Effective Copywriting for Chatbots | Hans Van Dam
- Youtube: Distilling BERT | Sam Sucik
- Youtube: Transformer Policies that improve Dialogues: A Live Demo by Vincent Warmerdam
- Youtube: From Research to Production – Our Process at Rasa | Tanja Bunk
- Youtube: Keynote: Perspective on the 5 Levels of Conversational AI | Alan Nichol
- Youtube: RASA Algorithm Whiteboard
- Introducing The Algorithm Whiteboard
0:01:16
- Rasa Algorithm Whiteboard - Diet Architecture 1: How it Works
0:23:27
- Rasa Algorithm Whiteboard - Diet Architecture 2: Design Decisions
0:15:06
- Rasa Algorithm Whiteboard - Diet Architecture 3: Benchmarking
0:22:34
- Rasa Algorithm Whiteboard - Embeddings 1: Just Letters
0:13:48
- Rasa Algorithm Whiteboard - Embeddings 2: CBOW and Skip Gram
0:19:24
- Rasa Algorithm Whiteboard - Embeddings 3: GloVe
0:19:12
- Rasa Algorithm Whiteboard - Embeddings 4: Whatlies
0:14:03
- Rasa Algorithm Whiteboard - Attention 1: Self Attention
0:14:32
- Rasa Algorithm Whiteboard - Attention 2: Keys, Values, Queries
0:12:26
- Rasa Algorithm Whiteboard - Attention 3: Multi Head Attention
0:10:55
- Rasa Algorithm Whiteboard: Attention 4 - Transformers
0:14:34
- Rasa Algorithm Whiteboard - StarSpace
0:11:46
- Rasa Algorithm Whiteboard - TED Policy
0:16:10
- Rasa Algorithm Whiteboard - TED in Practice
0:14:54
- Rasa Algorithm Whiteboard - Response Selection
0:12:07
- Rasa Algorithm Whiteboard - Response Selection: Implementation
0:09:25
- Rasa Algorithm Whiteboard - Countvectors
0:13:32
- Rasa Algorithm Whiteboard - Subword Embeddings
0:11:58
- Rasa Algorithm Whiteboard - Implementation of Subword Embeddings
0:10:01
- Rasa Algorithm Whiteboard - BytePair Embeddings
0:12:44
- Introducing The Algorithm Whiteboard
- Youtube: A brief history of the Transformer architecture in NLP
- Youtube: The Transformer neural network architecture explained. “Attention is all you need” (NLP)
- Youtube: How does a Transformer architecture combine Vision and Language? ViLBERT - NLP meets Computer Vision
- Youtube: Strategies for pre-training the BERT-based Transformer architecture – language (and vision)
- Youtube: Ilya Sutskever - GPT-2
- Youtube: NLP Masterclass | Modeling Fallacies in NLP
- Youtube: What is GPT-3? Showcase, possibilities, and implications
- Youtube: TextAttack: A Framework for Data Augmentation and Adversarial Training in NLP
- Article: How the Embedding Layers in BERT Were Implemented
- Youtube: Easy Data Augmentation for Text Classification
- Youtube: Webinar: Special NLP Session with Hugging Face
- Youtube: Spacy IRL 2019
- Sebastian Ruder: Transfer Learning in Open-Source Natural Language Processing (spaCy IRL 2019)
0:31:24
- Giannis Daras: Improving sparse transformer models for efficient self-attention (spaCy IRL 2019)
0:20:13
- Peter Baumgartner: Applied NLP: Lessons from the Field (spaCy IRL 2019)
0:18:44
- Justina Petraitytė: Lessons learned in helping ship conversational AI assistants (spaCy IRL 2019)
0:23:48
- Yoav Goldberg: The missing elements in NLP (spaCy IRL 2019)
0:30:27
- Sofie Van Landeghem: Entity linking functionality in spaCy (spaCy IRL 2019)
0:20:08
- Guadalupe Romero: Rethinking rule-based lemmatization (spaCy IRL 2019)
0:14:49
- Mark Neumann: ScispaCy: A spaCy pipeline & models for scientific & biomedical text (spaCy IRL 2019)
0:18:59
- Patrick Harrison: Financial NLP at S&P Global (spaCy IRL 2019)
0:21:42
- McKenzie Marshall: NLP in Asset Management (spaCy IRL 2019)
0:20:32
- David Dodson: spaCy in the News: Quartz's NLP pipeline (spaCy IRL 2019)
0:20:56
- Matthew Honnibal & Ines Montani: spaCy and Explosion: past, present & future (spaCy IRL 2019)
0:54:13
- Sebastian Ruder: Transfer Learning in Open-Source Natural Language Processing (spaCy IRL 2019)
- Youtube: The Future of Natural Language Processing
- Youtube: Sentiment Analysis: Key Milestones, Challenges and New Directions
- Youtube: Simple and Efficient Deep Learning for Natural Language Processing, with Moshe Wasserblat, Intel AI
- Youtube: Why not solve biological problems with a Transformer? BERTology meets Biology
- Youtube: Self-attention step-by-step | How to get meaning from text
- Youtube: Chat Bot with PyTorch
- Youtube: NLP with Friends Talks
- Youtube: Insincere Question Classification with PyTorch
- Crash Course: Linguistics
- Youtube: Recent Advances in Language Pretraining and Generation
- Youtube: Talks # 3: Lorenzo Ampil - Introduction to T5 for Sentiment Span Extraction
- Youtube: Frontiers in ML: Learning from Limited Labeled Data: Challenges and Opportunities for NLP
- Youtube: DeepLearning.ai NLP talk: Chris Manning
- Youtube: DeepLearning.ai NLP talk: Oren Etzioni
- Youtube: DeepLearning.ai NLP talk: Quoc Le
- Youtube: What can MIR learn from transfer learning in NLP?
- Youtube: The Narrated Transformer Language Model
- Youtube: spaCy v3.0: Bringing State-of-the-art NLP from Prototype to Production
00:22:40
- Youtube: Conversational AI with Transformers and Rule-Based Systems
1:53:24
- Talk: High Performance Natural Language Processing
- Talk: EmoTag1200: Understanding the Association between Emojis and Emotions
- Youtube: Research Paper Walkthrough
- Simple Unsupervised Keyphrase Extraction using Sentence Embeddings | Research Paper Walkthrough
0:21:23
- Leveraging BERT for Extractive Text Summarization on Lectures | Research Paper Walkthrough
0:20:10
- Data Augmentation Techniques for Text Classification in NLP | Research Paper Walkthrough
0:14:33
- CRIM at SemEval-2018 Task 9: A Hybrid Approach to Hypernym Discovery | Research Paper Walkthrough
0:23:47
- Data Augmentation using Pre-trained Transformer Model (BERT, GPT2, etc) | Research Paper Walkthrough
0:17:43
- A Supervised Approach to Extractive Summarisation of Scientific Papers | Research Paper Walkthrough
0:19:01
- BLEURT: Learning Robust Metrics for Text Generation | Research Paper Walkthrough
0:13:38
- DeepWalk: Online Learning of Social Representations | ML with Graphs | Research Paper Walkthrough
0:17:44
- LSBert: A Simple Framework for Lexical Simplification | Research Paper Walkthrough
0:20:27
- SpanBERT: Improving Pre-training by Representing and Predicting Spans | Research Paper Walkthrough
0:14:21
- Text Summarization of COVID-19 Medical Articles using BERT and GPT-2 | Research Paper Walkthrough
0:21:52
- Extractive & Abstractive Summarization with Transformer Language Models | Research Paper Walkthrough
0:16:58
- Unsupervised Multi-Document Summarization using Neural Document Model | Research Paper Walkthrough
0:15:11
- SummPip: Multi-Document Summarization with Sentence Graph Compression | Research Paper Walkthrough
0:16:54
- Combining BERT with Static Word Embedding for Categorizing Social Media | Research Paper Walkthrough
0:13:51
- Reformulating Unsupervised Style Transfer as Paraphrase Generation | Research Paper Walkthrough
0:19:41
- PEGASUS: Pre-training with Gap-Sentences for Abstractive Summarization | Research Paper Walkthrough
0:15:04
- Evaluation of Text Generation: A Survey | Human-Centric Evaluations | Research Paper Walkthrough
0:15:54
- TOD-BERT: Pre-trained Transformers for Task-Oriented Dialogue Systems (Research Paper Walkthrough)
0:15:25
- TextRank: Bringing Order into Texts (Research Paper Walkthrough)
0:14:34
- Node2Vec: Scalable Feature Learning for Networks | ML with Graphs (Research Paper Walkthrough)
0:14:33
- HARP: Hierarchical Representation Learning for Network | ML with Graphs (Research Paper Walkthrough)
0:15:10
- URL2Video: Automatic Video Creation From a Web Page | AI and Creativity (Research Paper Walkthrough)
0:15:21
- On Generating Extended Summaries of Long Documents (Research Paper Walkthrough)
0:14:24
- Nucleus Sampling: The Curious Case of Neural Text Degeneration (Research Paper Walkthrough)
0:12:48
- T5: Exploring Limits of Transfer Learning with Text-to-Text Transformer (Research Paper Walkthrough)
0:12:47
- DialoGPT: Generative Training for Conversational Response Generation (Research Paper Walkthrough)
0:13:17
- Hierarchical Transformers for Long Document Classification (Research Paper Walkthrough)
0:12:46
- Beyond Accuracy: Behavioral Testing of NLP Models with CheckList (Best Paper ACL 2020)
0:14:00
- Simple Unsupervised Keyphrase Extraction using Sentence Embeddings | Research Paper Walkthrough
- NLP Summit 2020
- The 2020 Trends for Applied Natural Language Processing | NLP Summit 2020
0:21:10
- NLP Industry Survey Analysis: the landscape of natural language use cases in 2020 | NLP Summit 2020
0:20:23
- Auto NLP: Pretrain, Tune & Deploy State-of-the-art Models Without Coding
0:19:57
- Proof-of-Concept Delight | NLP Summit 2020
0:16:50
- Distributed Natural Language Processing Apps for Financial Engineering | NLP Summit 2020
0:34:49
- Bleeding Edge Applications of 2020 Transformers | NLP Summit 2020
0:33:34
- How Freshworks Freddy AI leverages NLP for Ethics-First Customer Experiences | NLP Summit 2020
0:26:49
- NLP for Recruitment Automation: Building a Chatbot from the Job Description | NLP Summit 2020
0:22:31
- The 2020 Trends for Applied Natural Language Processing | NLP Summit 2020
- Youtube: Explainability for Natural Language Processing
- Youtube: Gibberish Detector
- Youtube: NLP Lecture 7 Constituency Parsing
- NLP Lecture 7 - Overview of Constituency Parsing Lecture
0:01:50
- NLP Lecture 7 - Introduction to Constituency Parsing
0:10:29
- NLP Lecture 7(a) - Context Free Grammar
0:17:03
- NLP Lecture 7(b) - Constituency Parsing
0:13:28
- NLP Lecture 7(c) - Statistical Constituency Parsing
0:09:38
- NLP Lecture 7(d) - Dependency Parsing
0:17:15
- NLP Lecture 7 - Overview of Constituency Parsing Lecture
- Youtube: LING 83 Teaching Video: Constituency Parsing
- Youtube: SpaCy for Digital Humanities with Python Tutorials
- Introduction to SpaCy and Cleaning Data (SpaCy and Python Tutorials for DH - 01)
0:06:07
- How to Install SpaCy and Models (Spacy and Python Tutorial for DH 02)
0:07:40
- How to Separate Sentences in SpaCy (SpaCy and Python Tutorials for DH - 03)
0:08:33
- Spacy and Named Entity Recognition NER (Spacy and Python Tutorial for DH 04)
0:08:32
- Finding Parts of Speech (SpaCy and Python Tutorial for DH 05)
0:02:55
- Extracting Nouns and Noun Chunks (SpaCy and Python Tutorial for DH 06)
0:05:46
- Extracting Verbs and Verb Phrases (SpaCy and Python Tutorial for DH 07)
0:08:10
- Lemmatization: Finding the Roots of Words (Spacy and Python Tutorial for DH 08)
0:04:52
- Data Visualization with DisplaCy (Spacy and Python Tutorial for DH 09)
0:09:13
- Customizing DisplaCy Render Data Visualization (Spacy and Python Tutorial for DH 10)
0:08:19
- Finding Quotes in Sentences (SpaCy and Python Tutorial for DH 11)
0:08:45
- Introduction to Named Entity Recognition (NER for DH 01)
0:16:43
- Machine Learning NER with Python and spaCy (NER for DH 03 )
0:13:36
- How to Use spaCy's EntityRuler (Named Entity Recognition for DH 04 | Part 01)
0:36:50
- How to Use spaCy to Create an NER training set (Named Entity Recognition for DH 04 | Part 02)
0:10:32
- How to Train a spaCy NER model (Named Entity Recognition for DH 04 | Part 03)
0:15:40
- Examining a spaCy Model in the Folder (Named Entity Recognition for DH 05)
0:15:06
- What are Word Vectors (Named Entity Recognition for DH 06)
0:18:49
- How to Generate Custom Word Vectors in Gensim (Named Entity Recognition for DH 07)
0:23:05
- How to Load Custom Word Vectors into spaCy Models (Named Entity Recognition for DH 08)
0:10:46
- Getting the Data for Custom Labels (Holocaust NER for DH 09.01)
0:11:00
- How to Add a Custom NER Pipe in spaCy and a Custom Label (NER for DH 09.02 )
0:07:49
- How to Training Custom Entities into spaCy Models (Named Entity Recognition for DH 09 03)
0:15:29
- How to Add and Place Pipes from other Models into a New Model (NER for DH 09 04)
0:12:24
- How to Add Custom Functions to spaCy Pipeline (NER for DH 09.05)
0:15:20
- Precision vs. Recall and Adding PERSON to Holocaust NER Pipeline (Named Entity Recognition DH 09.06)
0:26:02
- Finalizing the Holocaust NER Pipeline (Named Entity Recognition for DH 09.07)
0:14:16
- Classical Latin Named Entity Recognition (NER for DH 10.01)
0:55:30
- How to Package spaCy Models (Even with Custom Factories) (NER for DH 11)
0:15:31
- Introduction to SpaCy and Cleaning Data (SpaCy and Python Tutorials for DH - 01)
- Youtube: Billion-scale Approximate Nearest Neighbor Search
- Youtube: Data Science - Fuzzy Record Matching
- Youtube: Minimum Edit Distance Dynamic Programming
- Youtube: Cheuk Ting Ho - Fuzzy Matching Smart Way of Finding Similar Names Using Fuzzywuzzy
- Youtube: What's in a Name? Fast Fuzzy String Matching - Seth Verrinder & Kyle Putnam - Midwest.io 2015
- Youtube: Jiaqi Liu Fuzzy Search Algorithms How and When to Use Them PyCon 2017
- Youtube: 1 + 1 = 1 or Record Deduplication with Python | Flávio Juvenal @ PyBay2018
- Youtube: Mike Mull: The Art and Science of Data Matching
- Youtube: Record linkage: Join for real life by Rhydwyn Mcguire
- Youtube: Approximate nearest neighbors and vector models, introduction to Annoy
- Youtube: Librosa Audio and Music Signal Analysis in Python | SciPy 2015 | Brian McFee
- Video: Recent Advances in LM Pre-training
- Youtube: Deep Learning (for Audio) with Python
- 1- Deep Learning (for Audio) with Python: Course Overview
0:08:02
- 2- AI, machine learning and deep learning
0:31:15
- 3- Implementing an artificial neuron from scratch
0:19:05
- 4- Vector and matrix operations
0:25:51
- 5- Computation in neural networks
0:23:19
- 6- Implementing a neural network from scratch in Python
0:21:03
- 7- Training a neural network: Backward propagation and gradient descent
0:21:41
- 8- TRAINING A NEURAL NETWORK: Implementing backpropagation and gradient descent from scratch
1:03:00
- 9- How to implement a (simple) neural network with TensorFlow 2
0:24:37
- 10 - Understanding audio data for deep learning
0:32:55
- 11- Preprocessing audio data for Deep Learning
0:25:05
- 12- Music genre classification: Preparing the dataset
0:37:45
- 13- Implementing a neural network for music genre classification
0:33:25
- 14- SOLVING OVERFITTING in neural networks
0:26:29
- 15- Convolutional Neural Networks Explained Easily
0:35:23
- 16- How to Implement a CNN for Music Genre Classification
0:49:10
- 17- Recurrent Neural Networks Explained Easily
0:28:35
- 18- Long Short Term Memory (LSTM) Networks Explained Easily
0:28:08
- 19- How to Implement an RNN-LSTM Network for Music Genre Classification
0:14:29
- 1- Deep Learning (for Audio) with Python: Course Overview
- Youtube: Advanced Information Retrieval 2021 - TU Wien
- AIR - 2021 Course Introduction
0:21:39
- Crash Course IR - Fundamentals
0:46:31
- Crash Course IR - Evaluation
0:37:15
- Crash Course IR - Test Collections
0:51:12
- Word Representation Learning
0:42:02
- Sequence Modelling with CNNs and RNNs
0:55:04
- Transformer and BERT Pre-training
0:47:15
- Introduction to Neural Re-Ranking
0:59:20
- Transformer Contextualized Re-Ranking
0:49:06
- Domain Specific Applications
0:38:32
- Dense Retrieval ❤ Knowledge Distillation
0:59:28
- AIR - 2021 Course Introduction
- Youtube: Introduction to Dense Text Representation
- Youtube: Fine-tuning a large language model without your own supercomputer
- Youtube: How to build a custom spell checker using python NLP
- Youtube: Transformers 🤗 to Rule Them All? Under the Hood of the AI Recruiter Chatbot 🤖, with Keisuke Inoue
- Youtube: Artificial Intelligence and Natural Language Processing in E-Commerce by Katherine Munro | smec
- Youtube: Abhishek Thakur - Classifying Search Queries Without User Click Data
- Youtube: Chatbots Revisted | by Abhishek Thakur | Kaggle Days Warsaw
- Youtube: Abhishek Thakur - Is That a Duplicate Quora Question?
- Youtube: Design Considerations for building ML-Powered Search Applications - Mark Moyou
- Youtube: Analyze Customer Feedback in Minutes, Not Months
- Youtube: NLP in Feedback Analysis - Yue Ning
- Youtube: Productionizing an unsupervised machine learning model to understand customer feedback
- Youtube: Extracting topics from reviews using NLP - Dr. Tal Perri
- Youtube: Bringing innovation to online retail: automating customer service with NLP
- Youtube: Transform customer service with machine learning (Google Cloud Next '17)
- Youtube: Real life aspects of opinion sentiment analysis within customer reviews - Dr. Jonathan Yaniv
- Youtube: Deep Learning Methods for Emotion Detection from Text - Dr. Liron Allerhand
- Youtube: Learning How to Learn NLP : Developing Introductory Concepts Through Scaffolded Discoveries
- Youtube: What are Transformer Neural Networks?
- Youtube: Applied ML 2020 - 15 - Working with Text Data
1:27:08
- Youtube: Applied ML 2020 - 16 - Topic models for text data
1:18:34
- Youtube: Applied ML 2020 - 17 - Word vectors and document embeddings
1:03:04
- Youtube: A Briefish Introduction to Discourse Representation Theory
- Youtube: HuggingFace Crash Course - Sentiment Analysis, Model Hub, Fine Tuning
- Youtube: Huggingface Course Part 1
- Youtube: Should we care about linguistics?
- Youtube: Transformers From Scratch
- How-to Use HuggingFace's Datasets - Transformers From Scratch #1
0:14:21
- Build a Custom Transformer Tokenizer - Transformers From Scratch #2
0:14:17
- Building MLM Training Input Pipeline - Transformers From Scratch #3
0:23:11
- Training and Testing an Italian BERT - Transformers From Scratch #4
0:30:38
- How-to Use HuggingFace's Datasets - Transformers From Scratch #1
- In Search of Best Practices for NLP Projects | Ivan Bilan | PyData Pune Meetup | December 2020
0:50:00
- Youtube: Generating and Understanding Natural Language with AI (Aidan Gomez, PhD)
0:52:12
- Youtube: The giant leaps in language technology -- and who's left behind | Kalika Bali
- Youtube: ML for Audio Study Group
- CMU: MultiModal Machine Learning Fall 2020
- Lecture 1.1: Course Introduction
- Lecture 1.2: Multimodal applications and datasets
- Lecture 2.1: Basic concepts: neural networks
- Lecture 2.2: Basic concepts: network optimization
- Lecture 3.1: Visual unimodal representations
- Lecture 3.2: Language unimodal representations
- Lecture 4.1: Multimodal representation learning
- Lecture 4.2: Coordinated representations
- Lecture 5.1: Multimodal alignment
- Lecture 5.2: Alignment and representation
- Lecture 7.1: Alignment and translation
- Lecture 7.2: Probabilistic graphical models
- Lecture 8.1: Discriminative graphical models
- Lecture 8.2: Deep Generative Models
- Lecture 9.1: Reinforcement learning
- Lecture 9.2: Multimodal RL
- Lecture 10.1: Fusion and co-learning
- Lecture 10.2: New research directions
- Youtube: W&B Paper Reading Group: MDETR with author Aishwarya Kamath
- Google: Recommendation Systems
- Pluralsight: Understanding Algorithms for Recommendation Systems
- Youtube: Learning to Rank: From Theory to Production - Malvina Josephidou & Diego Ceccarelli, Bloomberg
- Youtube: Learning "Learning to Rank"
- Youtube: Learning to rank search results - Byron Voorbach & Jettro Coenradie [DevCon 2018]
- Article: Common architectures in convolutional neural networks
- Article: Convolutional neural networks
- Article: Densely Connected Convolutional Networks in Tensorflow
- Article: EfficientNet: Rethinking Model Scaling for Convolutional Neural Networks
- Article: Multimodal Neurons in Artificial Neural Networks
- Article: Understanding the receptive field of deep convolutional networks
- Article: Deep learning in medical imaging - 3D medical image segmentation with PyTorch
- Article: Intuitive Explanation of Skip Connections in Deep Learning
- Article: Localization and Object Detection with Deep Learning
- Article: Understanding coordinate systems and DICOM for deep learning medical image analysis
- Article: The 9 Deep Learning Papers You Need To Know About (Understanding CNNs Part 3)
- Article: An overview of object detection: one-stage methods
- Article: An overview of semantic image segmentation
- Article: Evaluating image segmentation models
- Article: Semantic Segmentation in the era of Neural Networks
- Article: DenseNet Architecture Explained with PyTorch Implementation from TorchVision
- Article: Group Normalization
- Article: Squeeze and Excitation Networks Explained with PyTorch Implementation
- Article: What is Focal Loss and when should you use it?
- Article: Object Detection for Dummies Part 1: Gradient Vector, HOG, and SS
- Article: Object Detection for Dummies Part 2: CNN, DPM and Overfeat
- Article: Object Detection for Dummies Part 3: R-CNN Family
- Article: A Short Introduction to Generative Adversarial Networks
- Article: Semi-supervised Learning with GANs
- Article: Human Pose Estimation
- Article: How to extract Key-Value pairs from Documents using deep learning
- Article: Building an image search service from scratch
- Article: Breaking Linear Classifiers on ImageNet
- Article: Essential Pil (Pillow) Image Tutorial (for Machine Learning People)
- Article: A Brief History of CNNs in Image Segmentation: From R-CNN to Mask R-CNN
- Article: YOLO - You only look once (Single shot detectors)
- Article: NonCompositional
- Article: Part 1: Deep Representations, a way towards neural style transfer
- Article: Looking Inside The Blackbox — How To Trick A Neural Network
- Article: A gentle introduction to OCR
- Article: ECCV 2020: Some Highlights
- AWS: Semantic Segmentation Explained
- Book: Deep Learning for Computer Vision with Python
- Book: Practical Python and OpenCV
- Coursera: Convolutional Neural Networks
- Datacamp: Image Processing in Python
- Google: ML Practicum: Image Classification
- Stanford: CS231N Winter 2016
- CS231n Winter 2016: Lecture 1: Introduction and Historical Context
1:19:08
- CS231n Winter 2016: Lecture 2: Data-driven approach, kNN, Linear Classification 1
0:57:28
- CS231n Winter 2016: Lecture 3: Linear Classification 2, Optimization
1:11:23
- CS231n Winter 2016: Lecture 4: Backpropagation, Neural Networks 1
1:19:38
- CS231n Winter 2016: Lecture 5: Neural Networks Part 2
1:18:37
- CS231n Winter 2016: Lecture 6: Neural Networks Part 3 / Intro to ConvNets
1:09:35
- CS231n Winter 2016: Lecture 7: Convolutional Neural Networks
1:19:01
- CS231n Winter 2016: Lecture 8: Localization and Detection
1:04:57
- CS231n Winter 2016: Lecture 9: Visualization, Deep Dream, Neural Style, Adversarial Examples
1:18:20
- CS231n Winter 2016: Lecture 10: Recurrent Neural Networks, Image Captioning, LSTM
1:09:54
- CS231n Winter 2016: Lecture 11: ConvNets in practice
1:15:03
- CS231n Winter 2016: Lecture 12: Deep Learning libraries
1:21:06
- CS231n Winter 2016: Lecture 14: Videos and Unsupervised Learning
1:17:36
- CS231n Winter 2016: Lecture 13: Segmentation, soft attention, spatial transformers
1:10:59
- CS231n Winter 2016: Lecture 15: Invited Talk by Jeff Dean
1:14:49
- CS231n Winter 2016: Lecture 1: Introduction and Historical Context
- Youtube: Autoencoders - EXPLAINED
0:10:53
- Youtube: Building an Image Captioner with Neural Networks
0:12:54
- Youtube: Convolution Neural Networks - EXPLAINED
0:19:20
- Youtube: Depthwise Separable Convolution - A FASTER CONVOLUTION!
0:12:43
- Youtube: Generative Adversarial Networks - FUTURISTIC & FUN AI !
0:14:20
- Youtube: How Convolution Works
- Youtube: Mask Region based Convolution Neural Networks - EXPLAINED!
0:09:34
- Youtube: Sound play with Convolution Neural Networks
0:11:57
- Youtube: The Evolution of Convolution Neural Networks
0:24:02
- Youtube: An Image is Worth 16x16 Words: Transformers for Image Recognition at Scale (Paper Explained)
- Youtube: Deep Residual Learning for Image Recognition (Paper Explained)
- Youtube: Evolution of Face Generation | Evolution of GANs
0:12:23
- Youtube: ConvNets Scaled Efficiently
0:13:19
- Youtube: Implementing ResNet from scratch
- Youtube: DETR: End-to-End Object Detection with Transformers (Paper Explained)
- Youtube: Unpaired Image-Image Translation using CycleGANs
0:16:22
- Youtube: Formula Indexing, Search, and Entry in the MathSeer Project
0:52:07
- Youtube: What's new in computer vision | July Queensland AI
1:21:33
- Datacamp: Machine Learning for Finance in Python
- Datacamp: Introduction to Time Series Analysis in Python
- Datacamp: Machine Learning for Time Series Data in Python
- Datacamp: Intro to Portfolio Risk Management in Python
- Datacamp: Financial Forecasting in Python
- Datacamp: Predicting CTR with Machine Learning in Python
- Datacamp: Intro to Financial Concepts using Python
- Datacamp: Fraud Detection in Python
- Datacamp: Forecasting Using ARIMA Models in Python
- Datacamp: Introduction to Portfolio Analysis in Python
- Datacamp: Credit Risk Modeling in Python
- Datacamp: Machine Learning for Marketing in Python
- Udacity: Machine Learning for Trading
- Udacity: Time Series Forecasting
- Youtube: Applied ML 2020 - 21 - Time Series and Forecasting
1:12:36
- DeepLizard: Reinforcement Learning - Goal Oriented Intelligence
- Reinforcement Learning Series Intro - Syllabus Overview
0:05:51
- Markov Decision Processes (MDPs) - Structuring a Reinforcement Learning Problem
0:06:34
- Expected Return - What Drives a Reinforcement Learning Agent in an MDP
0:06:47
- Policies and Value Functions - Good Actions for a Reinforcement Learning Agent
0:06:52
- What do Reinforcement Learning Algorithms Learn - Optimal Policies
0:06:21
- Q-Learning Explained - A Reinforcement Learning Technique
0:08:37
- Exploration vs. Exploitation - Learning the Optimal Reinforcement Learning Policy
0:10:06
- OpenAI Gym and Python for Q-learning - Reinforcement Learning Code Project
0:07:52
- Train Q-learning Agent with Python - Reinforcement Learning Code Project
0:08:59
- Watch Q-learning Agent Play Game with Python - Reinforcement Learning Code Project
0:07:22
- Deep Q-Learning - Combining Neural Networks and Reinforcement Learning
0:10:50
- Replay Memory Explained - Experience for Deep Q-Network Training
0:06:21
- Training a Deep Q-Network - Reinforcement Learning
0:09:07
- Training a Deep Q-Network with Fixed Q-targets - Reinforcement Learning
0:07:35
- Deep Q-Network Code Project Intro - Reinforcement Learning
0:06:26
- Build Deep Q-Network - Reinforcement Learning Code Project
0:16:51
- Deep Q-Network Image Processing and Environment Management - Reinforcement Learning Code Project
0:21:53
- Deep Q-Network Training Code - Reinforcement Learning Code Project
0:19:46
- Reinforcement Learning Series Intro - Syllabus Overview
- A recipe for training neural networks
- Article: Hyperparameter tuning for machine learning models
- Article: Hacker's Guide to Hyperparameter Tuning
- Article: Environment and Distribution Shift
- Coursera: Improving Deep Neural Networks: Hyperparameter tuning, Regularization and Optimization
- Datacamp: Model Validation in Python
- Datacamp: Hyperparameter Tuning in Python
- Google: Testing and Debugging
- Troubleshooting Deep Neural Networks
- Youtube: How do GPUs speed up Neural Network training?
0:08:19
- Youtube: Why use GPU with Neural Networks?
0:09:43
- Youtube: Auto-Tuning Hyperparameters with Optuna and PyTorch
- Article: Model Interpretation Frameworks
- Article: How to leverage Explainable Machine Learning
- Article: TracIn — A Simple Method to Estimate Training Data Influence
- Article: How to Explain the Prediction of a Machine Learning Model?
- NeurIPS 2020: Tutorial on Explaining ML Predictions: State-of-the-art, Challenges, and Opportunities
- Youtube: Jay Alammar - Take A Look Inside Language Models With Ecco
- Youtube: How do we check if a neural network has learned a specific phenomenon?
- Youtube: What is Adversarial Machine Learning and what to do about it? – Adversarial example compilation
- Youtube: SE4AI: Explainability and Interpretability (Part 1)
1:17:45
- Youtube: SE4AI: Explainability and Interpretability (Part 2)
1:21:50
- Article: A Survey of Methods for Model Compression in NLP
- Article: Why you should convert your NLP pipelines to ONNX
- Article: Neural Network Pruning
- Article: FasterAI
- Article: Is the future of Neural Networks Sparse? An Introduction (1/N)
- Article: Sparse Neural Networks (2/N): Understanding GPU Performance.
- Article: Block Sparse Matrices for Smaller and Faster Language Models
- Article: Plunging Into Model Pruning in Deep Learning
- Article: How to accelerate and compress neural networks with quantization
- Article: Scaling up BERT-like model Inference on modern CPU - Part 1
- Article: Effective testing for machine learning systems
- Article: Unit Testing for Data Scientists
- Article: Testing in Production, the safe way
- Article: How to cheat at unit tests with pytest and Black
- Article: 4 Lesser-Known Yet Awesome Tips for Pytest
- Article: How to Unit Test Deep Learning: Tests in TensorFlow, mocking and test coverage
- Article: Test-Driven Machine Learning Development (Deployment Series: Guide 07)
- Datacamp: Unit Testing for Data Science in Python
- Pluralsight: Test-driven Development: The Big Picture
- Test Driven Development with Python
- Thoughtbot: Fundamentals of TDD
- Udacity: Software Analysis & Testing
- Udacity: Software Testing
- Udacity: Software Debugging
- Youtube: Beyond Accuracy: Behavioral Testing of NLP Models with CheckList | AISC
- Youtube: Lecture 10: ML Testing & Explainability (Full Stack Deep Learning - Spring 2021)
1:41:12
- Youtube: Lab 8: Testing and Continuous Integration (Full Stack Deep Learning - Spring 2021)
0:13:26
- Article: Architecting a Machine Learning Pipeline
- Article: Combining rule engines and machine learning
- Article: Deploying Machine Learning Models: A Checklist
- Article: Getting machine learning to production
- Article: How to build scalable Machine Learning systems — Part 1/2
- Article: How to properly ship and deploy your machine learning model
- Article: How to put machine learning models into production
- Article: Key Concepts for Deploying Machine Learning Models to Mobile
- Article: Machine Learning to Production
- Article: Machine learning is going real-time
- Article: ML Infrastructure Tools for Model Building
- Article: ML Infrastructure Tools for Production (Part 1)
- Article: ML Infrastructure Tools for Production
- Article: How to Deploy a Machine Learning Model
- Article: Building a feature store
- Article: Model artifacts: the war stories
- Article: Machine learning system design
- Article: What is ML model governance?
- Article: Building scalable and efficient ML Pipelines
- Article: What are common dataset challenges at scale?
- Article: How to technically distinguish among data projects?
- Article: Securing ML applications
- Article: Data Pipelines — Agile considerations
- Article: Data Lineage — An Operational perspective
- Article: The Ultimate Guide to Model Retraining
- Book: Machine Learning Systems Design
- Doc: Lecture 3: Data engineering
- Datacamp: Data Engineering for Everyone
- Youtube: Applied ML in Production
- Youtube: SE4AI: Software Architecture of AI-Enabled Systems
1:14:24
- Youtube: SE4AI: Invited Talk Molham Aref "Business Systems with Machine Learning"
0:47:53
- Youtube: MLOps #4: Shubhi Jain - Building an ML Platform @SurveyMonkey
0:55:42
- Youtube: MLOps Meetup #6: Mid-Scale Production Feature Engineering with Dr. Venkata Pingali
1:01:35
- Youtube: MLOps meetup #5 High Stakes ML with Flavio CLesio
0:55:27
- Youtube: MLOps meetup #7 Alex Spanos // TrueLayer 's MLOps Pipeline
0:56:17
- Youtube: #11 Machine Learning at scale in Mercado Libre with Carlos de la Torre
0:59:28
- Youtube: MLOps #14: Kubeflow vs MLflow with Byron Allen
0:54:57
- Youtube: MLOps #15 - Scaling Human in the Loop Machine Learning with Robert Munro
0:55:04
- Youtube: MLOps #18 // Nubank - Running a fintech on ML
0:53:19
- Youtube: Feature Stores: An essential part of the ML stack to build great data / Kevin Stumpf - CTO at Tecton
1:05:46
- Youtube: MLOps #31 Path to Production and Monetizing Machine Learning // Vin Vashishta - Data Scientist
0:56:35
- Youtube: MLOps #35: Streaming Machine Learning with Apache Kafka and Tiered Storage // Kai Waehner, Confluent
0:52:50
- Youtube: Luigi in Production // MLOps Coffee Sessions #18 // Luigi Patruno ML in Production
0:47:23
- Youtube: The Current MLOps Landscape // Nathan Benaich & Timothy Chen // MLOps Meetup #43
0:58:31
- Youtube: MLSys Seminars Fall 2020
- Stanford MLSys Seminar Episode 0: ML + Systems
0:11:49
- Stanford MLSys Seminar Episode 1: Marco Tulio Ribeiro
1:00:38
- Stanford MLSys Seminar Episode 2: Matei Zaharia
0:59:44
- Stanford MLSys Seminar Episode 3: Virginia Smith
1:00:55
- Stanford MLSys Seminar Episode 4: Alex Ratner
1:13:34
- Stanford MLSys Seminar Episode 5: Chip Huyen
1:06:44
- Stanford MLSys Seminar Episode 0: ML + Systems
- Youtube: Xavier Amatriain on Practical Deep Learning Systems (Full Stack Deep Learning - November 2019)
- Article: Decoding Netflix: Metaflow
- Youtube: Avoid cascading failures in a distributed system
- Youtube: How databases scale writes: The power of the log
- Youtube: How to avoid a single point of failure in distributed systems
- Youtube: How to start with distributed systems? Beginner's guide to scaling systems.
- Youtube: What is Distributed Caching? Explained with Redis!
- Youtube: Why do Databases fail? AntiPatterns to avoid!
- Youtube: A friendly introduction to System Design
- Youtube: Designing Instagram: System Design of News Feed
- Youtube: Introduction to NoSQL databases
- Youtube: System Design Basics: Horizontal vs. Vertical Scaling
- Youtube: What is an API and how do you design it?
- Youtube: Service discovery and heartbeats in micro-services
- Youtube: System Design: Tinder as a microservice architecture
- Youtube: What is Load Balancing?
- Youtube: What is a microservice architecture and it's advantages?
- Youtube: What is Consistent Hashing and Where is it used?
- Youtube: What is a Message Queue and Where is it used?
- Youtube: 5 Tips for System Design Interviews
- Youtube: Whatsapp System Design: Chat Messaging Systems for Interviews
- Youtube: Capacity Estimation: How much data does YouTube store daily?
- Youtube: What is Database Sharding?
- Youtube: How Netflix onboards new content: Video Processing at scale
- Youtube: What is the Publisher Subscriber Model?
- Youtube: Distributed Consensus and Data Replication strategies on the server
- Youtube: System design : Design Autocomplete or Typeahead Suggestions for Google search
- Youtube: Relational database index vs. NoSQL index
- Youtube: What's an Event Driven System?
- Youtube: Distributed Consensus and Data Replication strategies on the server
- Youtube: What is an API and how do you design it?
- Youtube: What is Distributed Caching? Explained with Redis!
- Youtube: Service discovery and heartbeats in micro-services
- Youtube: Relational database index vs. NoSQL index
- Youtube: How Netflix onboards new content: Video Processing at scale
- Youtube: How to start with distributed systems? Beginner's guide to scaling systems.
- Youtube: Capacity Estimation: How much data does YouTube store daily?
- Youtube: How databases scale writes: The power of the log
- Youtube: System design : Design Autocomplete or Typeahead Suggestions for Google search
- Youtube: Human-Centric Machine Learning Infrastructure @Netflix
- Article: The implications of pickling ML models
- Article: Deploy a Keras Deep Learning Project to Production with Flask
- Article: Deploy BERT for Sentiment Analysis as REST API using PyTorch, Transformers by Hugging Face and FastAPI
- Article: Microservice in Python using FastAPI
- Article: Selecting gunicorn worker types for different python web applications.
- Article: Better performance by optimizing Gunicorn config
- Article: Exponential Backoff And Jitter
- Article: How to Serve Models
- Article: MLOps concepts for busy engineers: model serving
- Article: MLOps concepts for busy engineers: model serving
- Article: Understanding TensorFlow Serving
- Article: Serving models using Tensorflow Serving and Docker
- Article: Batch Inference vs Online Inference
- Article: Online batching with Spell serving
- Article: Machine Learning System Design: Real-time processing
- Article: Machine Learning System Design: Models-as-a-service
- Article: What Does it Mean to Deploy a Machine Learning Model? (Deployment Series: Guide 01)
- Article: Software Interfaces for Machine Learning Deployment (Deployment Series: Guide 02)
- Article: Batch Inference for Machine Learning Deployment (Deployment Series: Guide 03)
- Article: The Challenges of Online Inference (Deployment Series: Guide 04)
- Article: Online Inference for ML Deployment (Deployment Series: Guide 05)
- Article: Model Registries for ML Deployment (Deployment Series: Guide 06)
- Video: You trained a machine learning model. Now what?
- Article: How Data Leakage Impacts Machine Learning Models
- Article: 5 Challenges to Running Machine Learning Systems in Production
- Article: Enabling Machine-Learning-as-a-Service Through Privacy Preserving Machine Learning
- Article: Shadow mode deployments
- Cortex Blog
- Server-side batching: Scaling inference throughput in machine learning
- How we served 1,000 models on GPUs for $0.47
- Designing a machine learning platform for both data scientists and engineers
- How to serve batch predictions with TensorFlow Serving
- How to deploy Transformer models for language tasks
- How we scale machine learning model deployment on Kubernetes
- Why we built a serverless machine learning platform—instead of using AWS Lambda
- Why we don’t deploy machine learning models with Flask
- How to deploy machine learning models from a notebook to production
- A/B testing machine learning models in production
- How to deploy 1,000 models on one CPU with TensorFlow Serving
- How to reduce the cost of machine learning inference
- Improve NLP inference throughput 40x with ONNX and Hugging Face
- How to deploy PyTorch Lightning models to production
- Django Best Practices
- Udacity: Authentication & Authorization: OAuth
- Udacity: HTTP & Web Servers
- Udacity: Designing RESTful APIs
- Udacity: Client-Server Communication
- Youtube: PyConBY 2020: Sebastian Ramirez - Serve ML models easily with FastAPI
- Youtube: FastAPI from the ground up
- Youtube: Python pydantic Introduction – Give your data classes super powers
- Youtube: PyData Vancouver meetup: cortex.dev : Serving machine learning models in production
- Youtube: Lecture 11A: Deploying ML Models (Full Stack Deep Learning - Spring 2021)
0:53:25
- Youtube: Hands-on serving models using KFserving // Theofilos Papapanagiotou // MLOps Meetup #40
0:57:40
- Youtube: Shawn Scully: Production and Beyond: Deploying and Managing Machine Learning Models
- Article: Celery Execution Pools: What is it all about?
- Article: Distill: Why do we need Flask, Celery, and Redis? (with McDonalds in Between)
- Article: Celery: an overview of the architecture and how it works
- Article: Unit Testing Celery Tasks
- Article: Testing Celery Chains
- Article: Task Routing in Celery
- Article: Dynamic Task Routing in Celery
- Article: Dockerize a Celery app with Django and RabbitMQ
- Article: How to call a Celery task from another app
- Article: Distributed Monte Carlo with Celery chords
- Article: An incredibly simple no-frills Celery setup
- Article: 3 Strategies to Customise Celery logging handlers
- Article: Celery task exceptions and automatic retries
- Article: Concurrency and Parallelism
- Article: Celery, docker and the missing startup banner
- Article: Monitoring a Dockerized Celery Cluster with Flower
- Article: Quick Guide: Custom Celery Task Logger
- Article: Celery on Docker: From the Ground up
- Article: Auto-reload Celery on code changes
- Article: How To Pass Environment Info During Docker Builds
- Article: Pass Docker Environment Variables During The Image Build
- Article: Setting Default Docker Environment Variables During Image Build
- Article: Docker Explained Visually, For Non-Technical Folks
- Article: Tensorflow in Docker
- Article: Enough Docker to be Dangerous
- Article: How Docker Can Help You Become A More Effective Data Scientist
- Article: Deploying conda environments in (Docker) containers - how to do it right
- Article: Configuring Gunicorn for Docker
- Article: How to scale services using Docker Compose
- Article: A Beginner-Friendly Introduction to Containers, VMs and Docker
- Article: Smaller Docker images with Conda
- Pluralsight: Docker and Containers: The Big Picture
- Article: Docker for Machine Learning – Part I
- Article: Docker for Machine Learning – Part II
- Article: Docker for Machine Learning – Part III
- Article: Using Docker to Generate Machine Learning Predictions in Real Time
- Article: Connection refused? Docker networking and how it impacts your image
- Article: Faster or slower: the basics of Docker build caching
- Article: Where’s your code? Debugging ImportError and ModuleNotFoundErrors in your Docker image
- Article: A tableau of crimes and misfortunes: the ever-useful docker history
- Article: Broken by default: why you should avoid most Dockerfile examples
- Article: A review of the official Dockerfile best practices: good, bad, and insecure
- Article: The best Docker base image for your Python application (February 2021)
- Article: A deep dive into the official Docker image for Python
- Article: Using Alpine can make Python Docker builds 50× slower
- Article: Building on solid ground: ensuring reproducible Docker builds for Python
- Article: Installing system packages in Docker with minimal bloat
- Article: Less capabilities, more security: minimizing privilege escalation in Docker
- Article: Avoiding insecure images from Docker build caching
- Article: Build secrets in Docker and Compose, the secure way
- Article: Security scanners for Python and Docker: from code to dependencies
- Article: The high cost of slow Docker builds
- Article: Faster Docker builds with pipenv, poetry, or pip-tools
- Article: Elegantly activating a virtualenv in a Dockerfile
- Article: Poetry vs. Docker caching: Fight!
- Article: Speed up pip downloads in Docker with BuildKit’s new caching
- Article: Multi-stage builds #1: Smaller images for compiled code
- Article: Multi-stage builds #2: Python specifics—virtualenv, –user, and other methods
- Article: Multi-stage builds #3: Why your build is surprisingly slow, and how to speed it up
- Article: Configuring Gunicorn for Docker
- Article: Activating a Conda environment in your Dockerfile
- Article: Shrink your Conda Docker images with conda-pack
- Article: What’s running in production? Making your Docker images identifiable
- Article: Your Docker build needs a smoke test
- Article: Docker BuildKit: faster builds, new features, and now it’s stable
- Article: Docker vs. Singularity for data processing: UIDs and filesystem access
- Article: Where’s that log file? Debugging failed Docker builds
- Article: An Introduction to Kubernetes for Data Scientists
- Article: How to Use Kubernetes Pods for Machine Learning
- Article: Kubernetes Jobs for Machine Learning
- Article: Kubernetes CronJobs for Machine Learning
- Article: Kubernetes Deployments for Machine Learning
- Article: Kubernetes Services for Machine Learning
- “Let’s use Kubernetes!” Now you have 8 problems
- Article: Kubernetes for Python Developers: Part 1
- Doc: Environment variables in Compose
- Pluralsight: Docker and Kubernetes: The Big Picture
- Udacity: Scalable Microservices with Kubernetes
- Youtube: Docker
- Youtube: Why Your Web Server Should Log to Stdout (Especially with Docker)
- Article: A deep dive into AWS spot instance interruptions
- Article: Getting started with large-scale ETL jobs using Dask and AWS EMR
- Datacamp: Cloud Computing for Everyone
- Pluralsight: AWS Developer: The Big Picture
- Pluralsight: AWS Networking Deep Dive: Virtual Private Cloud (VPC)
- Pluralsight: AWS VPC Operations
- Pluralsight: Building Applications Using Elastic Beanstalk
- Udemy: AWS Concepts
- Udemy: AWS Certified Developer - Associate 2018
- Whitepaper: Architecting for the Cloud AWS Best Practices
- Whitepaper: AWS Well-Architected Framework
- Whitepaper: AWS Security Best Practices
- Whitepaper: Blue/Green Deployments on AWS
- Whitepaper: Microservices on AWS
- Whitepaper: Optimizing Enterprise Economics with Serverless Architectures
- Whitepaper: Practicing Continuous Integration and Continuous Delivery on AWS
- Whitepaper: Running Containerized Microservices on AWS
- Udemy: Serverless Concepts
- Whitepaper: Serverless Architectures with AWS Lambda
- Youtube: Deploying a machine learning model to the cloud using AWS Lambda
- Article: Production Machine Learning Monitoring: Outliers, Drift, Explainers & Statistical Performance
- Article: How to Monitor Models
- Article: The Playbook to Monitor Your Model’s Performance in Production
- Article: Monitoring your Machine Learning Model
- Article: Preventing model drift with continuous monitoring and deployment using Github Actions and Algorithmia Insights
- Article: Continuous monitoring for data projects
- Article: Lessons Learned from 15 Years of Monitoring Machine Learning in Production
- Article: Why is it Important to Monitor Machine Learning Models?
- Article: Using Statistical Distances for Machine Learning Observability
- Article: The Model’s Shipped; What Could Possibly go Wrong?
- Article: Quality assurance in data science
- Youtube: Instrumentation, Observability & Monitoring of Machine Learning Models
- Article: Incident Management in Machine Learning Systems
- Article: ML Infrastructure Tools — ML Observability
- Youtube: MLOps #24 Monitoring the ML stack // Lina Weichbrodt
0:55:32
- Youtube: Josh Wills: Visibility and Monitoring for Machine Learning Models
- Youtube: Lecture 11B: Monitoring ML Models (Full Stack Deep Learning - Spring 2021)
0:36:55
- Youtube: OpML '20 - How ML Breaks: A Decade of Outages for One Large ML Pipeline
- Youtube: MLOps #28 ML Observability // Aparna Dhinakaran - Chief Product Officer at Arize AI
0:55:04
- Youtube: MLOps #29 Continuous Evaluation & Model Experimentation // Danny Ma - Founder of Sydney Data Science
1:00:46
- Youtube: SE4AI: Quality Assessment in Production
1:18:45
- Youtube: SE4AI: Infrastructure Quality, Deployment and Operations
1:04:54
- Article: Multi-Armed Bandit (MAB) – A/B Testing Sans Regret
- Article: When to Run Bandit Tests Instead of A/B/n Tests
- Article: A/B Testing Machine Learning Models (Deployment Series: Guide 08)
- Datacamp: Customer Analytics & A/B Testing in Python
- Udacity: A/B Testing
- Udacity: A/B Testing for Business Analysts
- Youtube: Hypothesis testing with Applications in Data Science
0:10:33
- Article: A reverse chronology of some Python features
- Article: No Really, Python's Pathlib is Great
- Article: When to switch to Python 3.9
- Article: A deep dive on Python type hints
- Article: I wish I knew these things when I learned Python
- Article: Python Concurrency: The Tricky Bits
- Article: The Complete Python Development Guide
- Article: Speeding Up Python with Concurrency, Parallelism, and asyncio
- Article: Speed Up Your Python Program With Concurrency
- Article: A Python prompt into a running process: debugging with Manhole
- Regex For Noobs (like me!) - An Illustrated Guide
- Book: A Byte of Python
- Book: Learn Python The Hard way
- Book: Python 201
- Book: The Python 3 Standard Library By Example
- Book: Writing Idiomatic Python 3
- Calmcode: ray
- Codecademy: Learn Python
- Cognitiveclass.ai: Python for Data Science
- Datacamp: Python for R Users
- Datacamp: Python for Spreadsheet Users
- Datacamp: Importing Data in Python (Part 1)
- Datacamp: Intermediate Python for Data Science
- Datacamp: Python Data Science Toolbox (Part 1)
- Datacamp: Python Data Science Toolbox (Part 2)
- Datacamp: Intro to Python for Finance
- Datacamp: Writing Efficient Python Code
- Datacamp: Writing Functions in Python
- Datacamp: Working with Dates and Times in Python
- edX: Introduction to Python for Data Science
- edX: Programming with Python for Data Science
- Google's Python Class
- Treehouse: Python Basics
- TheNewBoston: Python Programming Tutorials
- Youtube: Python 3 Programming Tutorial - Regular Expressions / Regex with re
- Youtube: Python Tutorial: re Module - How to Write and Match Regular Expressions (Regex)
- Youtube: Python Concurrency and Multithreading
- Youtube: Aaron Richter- Parallel Processing in Python| PyData Global 2020
- Youtube: The Clean Architecture in Python
- Book: Refactoring UI
- Codecademy: Learn HTML
- Codecademy: Learn SASS
- Codecademy: Make a website
- Codecademy: Learn ReactJS: Part I
- Codecademy: Learn ReactJS: Part II
- Codecademy: Learn JavaScript
- Codecademy: Jquery Track
- Codecademy: Learn Ruby
- Code School: Fundamentals of Design
- Code School: Blasting Off with Bootstrap
- (ES6) - Beau teaches JavaScript
- Pluralsight: UX Fundamentals
- Pluralsight: HTML, CSS, and JavaScript: The Big Picture
- Pluralsight: CSS Positioning
- Pluralsight: Introduction to CSS
- Pluralsight: CSS: Specificity, the Box Model, and Best Practices
- Pluralsight: CSS: Using Flexbox for Layout
- Pluralsight: Using The Chrome Developer Tools
- Thoughtbot: Design for Developers
- Treehouse: HTML
- Treehouse: Javascript Booleans
- Udacity: ES6 - JavaScript Improved
- Udacity: Intro to Javascript
- Udacity: Object Oriented JS 1
- Udacity: Object Oriented JS 2
- Udemy: Understanding Typescript
- Article: Asymptotic Analysis Explained with Pokémon: A Deep Dive into Complexity Analysis
- Book: Grokking Algorithms
- Codecademy: Big O
- Crashcourse: Computer Science
- Khan Academy: Data Structures
- Udacity: Intro to Algorithms
- Udacity: Intro to Computer Science
- Udacity: Intro to Theoretical Computer Science
- Udacity: Programming Languages
- Udacity: Networking for Web Developers
- Pluralsight: Security Awareness: Basic Concepts and Terminology
- Pluralsight: Secure Software Development
- Pluralsight: Clean Architecture: Patterns, Practices, and Principles
- Thoughtbot: Software Development Process
- Thoughtbot: Refactoring
- Udacity: Design of Computer Programs
- Udacity: Product Design
- Udacity: Rapid Prototyping
- Udacity: Software Development Process
- Article: Work remotely with PyCharm, TensorFlow and SSH
- Article: Python remote debugging with PyCharm, CUDA, and Conda
- Article: How To Use Visual Studio Code for Remote Development via the Remote-SSH Plugin
- Article: Docker as Remote Interpreter for PyCharm Professional
- Youtube: Getting Started with Python in Visual Studio Code
- Youtube: VSCode Keyboard Shortcuts For Productivity
- Youtube: Getting Started with Jupyter Notebooks in VS Code
- Youtube: Notebooks in VS Code Are Getting Revamped!
- Youtube: Getting Started with PyTorch in VS Code
- Youtube: What every GitHub user should know about VS Code - GitHub Satellite 2020
- VS Code and GitHub
- Visual Studio Code Crash Course
- Google: Technical Writing
- Book: Emotional Intelligence
- Book: How to Win Friends & Influence People
- Book: Influence: The Psychology of Persuasion
- Book: Leaders Eat Last: Why Some Teams Pull Together and Others Don't
- Book: Multipliers: How the Best Leaders Make Everyone Smarter
- Book: Soft Skills: The software developer's life manual
- Book: The New One Minute Manager
- Calmcode: Remote Work
- Youtube: Building a psychologically safe workplace | Amy Edmondson | TEDxHGSE
- Youtube: A short introduction to LaTeX and Overleaf
- Article: What You Need to Know Before Considering a PhD
- Article: Advice to aspiring data scientists: start a blog
- Article: Systems Design Interview Guide
- Article: A Guide to Cold Emailing
- Article: Uber Data Science Interview
- Article: Google Data Science Interview
- Article: Facebook Data Science Interview
- Article: Acing the Data Science Interview — Part 1
- Article: Acing the Data Science Interview — Part 2
- Article: Amazon Data Science Interview
- Article: Microsoft Data Science Interview
- Article: Microsoft Data Science Interview
- Article: Apple AI Interview Questions — Acing the AI Interview
- Article: Salesforce Data Science Interview— Acing the AI Interview
- Article: LinkedIn Data Science Interview
- Article: Netflix Data Science Interview
- Article: Walmart Data Science Interview
- Article: Twitter Data Science Interview
- Article: Ebay Data Science Interview
- Article: Zillow Data Science Interview
- Article: Intel Data Science Interview
- Article: Adobe Data Science Interview
- Article: Tesla Data Science Interview
- Article: IBM Data Science Interview
- Article: Top Data Science Interview Questions & Answers
- Article: Top Data Science Interview Questions & Answers — Part 2
- Article: Top Data Science Interview Questions & Answers — Part 3
- Article: Data Science Interview Questions and Solutions — Linear and Logistic regression
- Article: Capital One Data Science Interview
- Article: Paypal Data Science Interview
- Article: Airbnb Data Science Interview
- Article: Spotify Data Science Interview Questions
- Article: Yelp Data Science Interview
- Article: Twitch Data Science Interview
- Article: Oracle Data Science Interview
- Article: Citrix Data Science Interview
- Article: Quora Data Science Interview
- Article: Splunk Data Science Interview
- Article: JP Morgan Data Science Interview
- Article: Stripe Data Science Interview Questions
- Article: Box Data Science Interview
- Article: Instacart Data Science Interview Questions
- Article: Square Data Science Interview
- Article: AmEx Data Science Interview
- Article: Citibank Data Science Interview
- Article: Sprint Data Science Interview
- Article: Dropbox Data Science Interview
- Article: Booking.com Data Science Interview
- Article: Lyft Data Science Interview
- Article: Expedia Data Science Interview
- Article: Shopify Data Science Interview Questions
- Article: Goldman Sachs Data Science Interviews
- Article: Workday Data Science Interviews
- Article: Acing Data Science Interviews
- Article: Analysis of Data Science Interview Questions
- Article: Visa Data Science Interviews
- Article: Data Science Quiz— Part 1
- Book: Machine Learning Interviews
- Datacamp: Preparing for Statistics Interview Questions in Python
- Datacamp: Practicing Machine Learning Interview Questions in Python
- Datacamp: Kaggle Competition
- Udacity: Optimize your GitHub
- Udacity: Strengthen Your LinkedIn Network & Brand
- Udacity: Data Science Interview Prep
- Udacity: Full-Stack Interview Prep
- Udacity: Refresh Your Resume
- Udacity: Craft Your Cover Letter
- Udacity: Technical Interview
- Youtube: Panel Discussion: Do I need a PhD to work in ML? (Full Stack Deep Learning - Spring 2021)
- Youtube: The Importance of Writing in a Tech Career - Eugene Yan
- Youtube: How to prepare for Machine Learning interviews- Part 1 | Applied AI Course
- Youtube: How to prepare for Machine Learning interviews- Part 2 | Applied AI Course
- Youtube: Guest Lecture - Chip Huyen - Machine Learning Interviews - Full Stack Deep Learning
- Youtube: Tutorial: Technical Blogging for Python Programmers
- Book: Atomic Habits
- Book: Deep Work
- Book: Outliers: The Story of Success
- Book: Platform: The Art and Science of Personal Branding
- Book: Rich Dad Poor Dad
- Book: The Power of Broke
- Book: The 10X Rule
- Book: The Millionaire Fastlane
- Book: The Subtle Art of Not Giving a F**k
- Calmcode: Pomodoro
- Youtube: Why specializing early doesn't always mean career success | David Epstein
- Youtube: Chamath Palihapitiya, Founder and CEO Social Capital, on Money as an Instrument of Change
- Youtube: How to Build a Personal Monopoly with Jack Butcher
- Youtube: How to Use Twitter
- Youtube: A. Jesse Jiryu Davis - Write an Excellent Programming Blog - PyCon 2016
- Youtube: The Great ML Stagnation (Mark Saroufim and Dr. Mathew Salvaris)
- Youtube: What Machine Learning Can Teach Us About Life: 7 Lessons - Talk Python Live Stream
- Youtube: Ross Tuck - Things I Believe Now That I'm Old at Laracon EU 2014
- Youtube: "How to teach programming (and other things)?" by Felienne Hermans
0:52:08
- Youtube: The secrets of learning a new language | Lýdia Machová