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Data-Centric AI

We're collecting (an admittedly opinionated) list of resources and progress made in data-centric AI, with exciting directions past, present and future. This blog talks about our journey to data-centric AI and we articulate why we're excited about data as a viewpoint for AI in this blog.

While AI has been pretty focused on models, the real-world experience of those who put models into production is that the data often matters more. The goal of this repository is to consolidate this experience in a single place that can be accessed by anyone who wants to understand and contribute to this area.

We're only at the beginning, and you can help by contributing to this GitHub! Thanks to all those who have contributed so far.

How Can I Help?

If you're interested in this area and would like to hear more, join our mailing list! We'd also appreciate if you could fill out this short form to help us better understand what your interests might be.

Feedback (Interested in a class?)

We are creating a class at Stanford about data-centric AI, and we'd love your feedback. If you are interested in learning more, please fill out this form.

If you have ideas on how we can make this repository better, feel free to submit an issue with suggestions.

Contributing

We want this resource to grow with contributions from readers and data enthusiasts. If you'd like to make contributions to this Github repository, please read our contributing guidelines.

Table of Contents

  1. Background
  2. Data Programming & Weak Supervision
  3. Data Augmentation
  4. Self-Supervision
  5. The End of Modelitis
  6. Fine-Grained Evaluation
  7. Robustness
  8. Data Cleaning
  9. MLOps
  10. Data Selection
  11. Data Privacy (Under construction)
  12. Data Flow (Under construction)
  13. Multi-Task & Multi-Domain Learning (Under construction)
  14. Emerging Trends
  15. Applications
  16. Case Studies
  17. Awesome Lists

Background

Background

This area is a stub, you can help by improving it.

There's a lot of excitement around understanding how to put machine learning to work on real use-cases. Data-Centric AI embodies a particular point of view around how this progress can happen: by focusing on making it easier for practitioners to understand, program and iterate on datasets, instead of spending time on models.

Data Programming & Weak Supervision

Data Programming & Weak Supervision Area Page

Many modern machine learning systems require large, labeled datasets to be successful, but producing such datasets is time-consuming and expensive. Instead, weaker sources of supervision, such as crowdsourcing, distant supervision, and domain experts' heuristics like Hearst Patterns have been used since the 90s.

However, these were largely regarded by AI and AI/ML folks as ad hoc or isolated techniques. The effort to unify and combine these into a data centric viewpoint started in earnest with data programming, embodied in Snorkel, now an open-source project and thriving company. In the Snorkel approach, users specify multiple labeling functions that each represent a noisy estimate of the ground-truth label. Because these labeling functions vary in accuracy and coverage of the dataset, and may even be correlated, they are combined and denoised via a latent variable graphical model. The technical challenge is thus to learn accuracy and correlation parameters in this model, and to use them to infer the true label to be used for downstream tasks.

Data programming builds on a long line of work on parameter estimation in latent variable graphical models. Concretely, a generative model for the joint distribution of labeling functions and the unobserved (latent) true label is learned. This label model permits aggregation of diverse sources of signal, while allowing them to have varying accuracies and potential correlations.

An overview of the weak supervision landscape can be found in this Snorkel blog post, including how it compares to other approaches to get more labeled data and the technical modeling challenges. These Stanford CS229 lecture notes provide a theoretical summary of how graphical models are used in weak supervision.

Data Augmentation

Data Augmentation Area Page

A key challenge when training machine learning models is collecting a large, diverse dataset that sufficiently captures the variability observed in the real world. Due to the cost of collecting and labeling datasets, data augmentation has emerged as a cheap, promising alternative.

The central idea in data augmentation is to transform examples in an existing dataset to generate additional augmented examples that can then be added to the dataset. These additional examples typically increase the diversity of the data seen by the model, and provide additional supervision to the model. The foundations of data augmentation originate in tangent propagation, which introduced techniques to make a learned model invariant with respect to some transformation of the data.

Early successes in augmentation such as AlexNet focused on inducing invariances in an image classifier by generating examples that encouraged translational or rotational invariance. These successes made augmentation a de-facto part of pipelines for a wide-ranging set of tasks such as image, speech and text classification, machine translation, etc.

The choice of transformations used in augmentation is an important consideration, since it dictates the invariances learned by the model, and its behavior when encountering a diversity of test examples. While heuristic augmentations have remained popular, it is important to be able to control and program the augmentation pipeline more carefully. TANDA initiated a study of the problem of programming augmentation pipelines by composing a selection of data transformations. This area has since seen rapid growth with both deeper theoretical understanding and practical implementations such as AutoAugment. A nascent line of work has leveraged conditional generative models to learn--rather than specify--these transformations, further extending this programming paradigm.

Self-Supervision

Self-Supervision Area Page

The need for large, labeled datasets has motivated methods to pre-train latent representations of the input space using unlabeled data and use the resulting knowledge-rich representations in downstream tasks. As the representations allow for knowledge transfer to downstream tasks, these tasks require less labeled data. This paradigm, called "self-supervision", has revolutionized how we train (and pre-train) models. These models, which are recently termed "foundation models" by the Stanford initiative around understanding self-supervised ecosystems, has shifted focus away from hand-labeled data towards understanding what data to fed to these models.

As self-supervised data is often curated from large, public data sources (e.g., Wikipedia), it can contain popularity bias where the long tail of rare things are not well represented in the training data. As Orr et. al. show, some popular models (e.g., BERT) rely on context memorization and struggle to resolve this long tail as they are incapable of seeing a rare thing enough times to memorize the diverse set of patterns associated with it. The long tail problem even propagates to downstream tasks, like retrieval tasks from AmbER. One exciting future direction that lies at the intersection of AI and years of research from the data management community to address the long tail is through the integration of structured knowledge into the model. Structured knowledge is the core idea behind the tail success of Bootleg, a system for Named Entity Disambiguation.

The End of Modelitis

The End of Modelitis Area Page

Historically, the "kid in a candy shop" moment for ML researchers is building and tweaking models using tools like PyTorch or Jax. New models were coming out each day and these customize model architectures and finely-tuned parameters were beating state-of-the-art results. This modelitis craze, however, is coming to an end.

Recently, researchers have realized two things: (1) more gains are coming from deeply understanding the data rather than model tweaking (see all the exciting work in Data Augmentation), and (2) custom models are difficult to maintain and extend in a production environment. This resulted in model building platforms like Ludwig and Overton that enforced commoditized architectures, and moved towards ML systems that can be created declaratively Molino and Ré 2021. And they showed these commoditiy models were even better than their tuned predecessors! This result was further supported by Kaplan et al that showed the architecture matters less than the data.

This trend, which we are calling the End of Modelitis, is moving towards a data-centric view of model construction. The question is shifting from “how to construct the best model” to “how do you feed a model.”

Evaluation

Evaluation Area Page

Model evaluation is a crucial part of the model development process in machine learning. The goal of evaluation is to understand the quality of a model, and anticipate if it will perform well in the future.

While evaluation is a classical problem in machine learning, data-centric AI approaches have catalyzed a shift towards fine-grained evaluation: moving beyond standard measures of average performance such as accuracy and F1 scores, to measuring performance on particular populations of interest. This enables a more granular understanding of model performance, and gives users a clearer idea of model capabilities. This shift is complementary to a growing interest in understanding model robustness, since access to fine-grained evaluation permits an enhanced ability to build more robust models.

Approaches to fine-grained evaluation include measuring performance on critical data subsets called slices, invariance or sensitivity to data transformations, and resistance to adversarial perturbations. While most evaluation is user-specified, an important line of work found that models often underperform on hidden strata that are missed by model builders in evaluation, which can have profound consequences on our ability to deploy and use models. This motivates future work in automatically discovering these hidden strata, or more generally, finding all possible failure modes of a model by analyzing datasets and models systematically in conjunction.

Another important facet of fine-grained evaluation is data and model monitoring in order to anticipate, measure and mitigate degradations in performance due to distribution shift. This includes identifying and isolating data points that may be considered outliers, estimating performance on unlabeled data that is streaming to a deployed model, and generating rich summaries of how the data distribution may be shifting over time.

Robustness

Robustness Area Page

One standard assumption for successfully deploying machine learning models is that test time distributions are similar to those encountered and well-represented during training. In reality however, this assumption rarely holds: seldom do we expect to deploy models in settings that exactly match their training distributions. Training models robust to distribution shifts is then another core challenge to improve machine learning in the wild, which we argue can be addressed under a data-centric paradigm.

Here, we broadly categorize attempts to improve robustness to distribution shifts as those addressing (1) subpopulation shift or hidden stratification, (2) domain shift, and (3) shifts from adversarial perturbations.

Under subpopulation shift, training and test-time distributions differ in how well-represented each subpopulation or “data group” is. If certain subpopulations are underrepresented in the training data, then even if these distributions are encountered during training, standard empirical risk minimization (ERM) and “learning from statistical averages” can result in models that only perform well on the overrepresented subpopulations.

  • One initial real world problem under subpopulation shift came with training models on datasets that exhibit spurious correlations. If a majority of groups exhibit relations between certain features and the target of interest, but these dependencies do not hold for all data, then models may learn non-robust dependencies relying on these “spurious” correlations. If these groups are known, Group DRO can prevent this by focusing optimization on worst-group error.
  • Another instantiation comes from hidden stratification, where datapoints belonging to the same labeled classes can actually vary in their feature distributions quite a bit. With GEORGE, we learned that despite not being able to generalize to unseen data under all groups, deep neural networks trained with ERM can actually learn separable representations for different groups that share the same label.

Both Group DRO and GEORGE introduced approaches to handle subpopulation shift under real-world instantiations. These methods have inspired additional work related to upsampling estimated groups (LfF, JTT) and using contrastive learning to learn group-invariant representations (CNC - link coming soon).

Beyond subpopulation shift, robustness also features domain shift and adversarial perturbations. Under domain shift, we model test-time data as coming from a completely different domain from the training data. Under distribution shift with adversarial perturbations, test-time data may exhibit corruptions or imperceptible differences in input feature space that prevent trained ERM models from strongly generalizing to the test-time distributions. These important sections are are still stubs. Please add your contributions!

Data Cleaning

Data Cleaning Area Page

Another way to improve data quality for ML/AI applications is via data cleaning. There is a diverse range of exciting work along this line to jointly understand data cleaning and machine learning.

MLOps

MLOps Area Page

The central role of data makes the development and deployment of ML/AI applications an human-in-the-loop process. This is a complex process in which human engineers could make mistakes, require guidance, or need to be warned when something unexpected happens. The goal of MLOps is to provide principled ways for lifecycle management, monitoring, and validation.

Researchers have started tackling these challenges by developing new techniques and building systems such as TFX, Ease.ML or Overton designed to handle the entire lifecycle of a machine learning model both during development and in production. These systems typically consist of distinct components in charge of handling specific stages (e.g., pre- or post-training) or aspects (e.g., monitoring or debugging) of MLOps.

Data Selection

Data Selection Area Page

Massive amounts of data enabled many of the successes of deep learning, but this big data brings its own problems. Working with massive datasets is cumbersome and expensive in terms of both computational resources and labeling. Data selection methods, such as active learning and core-set selection, can mitigate the pains of big data by selecting the most valuable examples to label or train on.

While data selection has been a long-standing area in AI/ML, the scale and skew of modern, industrial datasets have pushed the field to more accurately value data and improve the scalability of selection methods. Recent works, such as (Sener & Savarese and Ghorbani et al.), take a more data-centric approach towards quantifying the contribution of each training example by focusing on diversity and representativeness rather than solely relying on model uncertainty. To help these methods scale, approaches, like SVP and SEALS, present straightforward ways to reduce computational costs by up to three orders of magnitude, enabling web-scale active learning and data selection more broadly.

These advances in label and computational efficiency make data selection applicable to modern datasets, allowing AI/ML to take a more data-centric view focused on quality rather than quantity.

Data Privacy (Under Construction)

Data Privacy Area Page

This description is a stub, you can help by improving it.

Data Flow (Under Construction)

Data Flow Area Page

This area is a stub, you can help by improving it.

Multi-Task & Multi-Domain Learning (Under Construction)

Multi-Task & Multi-Domain Learning Area Page

This area is a stub, you can help by improving it.

Emerging Trends

Emerging Trends Area Page

Data-centric AI is still growing, and we want to capture emerging trends as they arise. Some new areas we think are forming involve interactive machine learning, massice scale models, and observational ML. Take a look at the area page.

Applications

Applications Area Page

Data-centric approaches have had a wide-ranging impact wherever machine learning is used and deployed, whether in academia, industry or other organizations. Impact spans modalities such as structured data, text, images, videos, graphs and others, while areas include text and image processing, medical imaging, computational biology, autonomous driving, etc.

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