Skip to content

Commit 00b24dc

Browse files
committed
Add the schedule and links for case study causal-machine-learning#1
1 parent 1380dad commit 00b24dc

File tree

4 files changed

+13
-1
lines changed

4 files changed

+13
-1
lines changed

images/causalml_logo.png

35.8 KB
Loading

images/econml_logo.jpeg

27.9 KB
Loading

images/newtons_cradle.jpeg

40.9 KB
Loading

index.html

+13-1
Original file line numberDiff line numberDiff line change
@@ -6,6 +6,18 @@
66

77
# **Causal Inference and Machine Learning in Practice with EconML and CausalML**: Industrial Use Cases at Microsoft, TripAdvisor, Uber
88

9+
## **Schedule**
10+
11+
### Time
12+
13+
* 4:00 AM - 7:00 AM August 15, 2021 [SGT](https://www.timeanddate.com/worldclock/converter.html?iso=20210814T200000&p1=236&p2=tz_pt&p3=tz_et)
14+
* 4:00 PM - 7:00 PM August 14, 2021 [EDT](https://www.timeanddate.com/worldclock/converter.html?iso=20210814T200000&p1=236&p2=tz_pt&p3=tz_et)
15+
* 1:00 PM - 4:00 PM August 14, 2021 [PDT](https://www.timeanddate.com/worldclock/converter.html?iso=20210814T200000&p1=236&p2=tz_pt&p3=tz_et)
16+
17+
### Live Zoom Link
18+
19+
To be shared within the KDD 21 Virtual Platform during the conference.
20+
921
## **Abstract**
1022

1123
In recent years, both academic research and industry applications see an increased effort in using machine learning methods to measure granular causal effects and design optimal policies based on these causal estimates. Open source packages such as [CausalML](https://github.com/uber/causalml) and [EconML](https://github.com/microsoft/econml) provide a unified interface for applied researchers and industry practitioners with a variety of machine learning methods for causal inference. The tutorial will cover the topics including conditional treatment effect estimators by meta-learners and tree-based algorithms, model validations and sensitivity analysis, optimization algorithms including policy leaner and cost optimization. In addition, the tutorial will demonstrate the production of these algorithms in industry use cases.
@@ -22,7 +34,7 @@
2234
| **Introduction to Causal Inference** | 20 minutes | | |
2335
| **Case Studies Part 1 by CausalML** | | | |
2436
| Introduction to CausalML| 15 minutes | | |
25-
| Case Study #1: Causal Impact Analysis with Observational Data: CeViChE at Uber | 30 minutes | | |
37+
| Case Study #1: Causal Impact Analysis with Observational Data: CeViChE at Uber | 30 minutes | [Slides](https://docs.google.com/presentation/d/1FvRtis2fm4c2R7XmRKWMTtZaZjUObW1fGxpNmapmjKI/edit)| [Notebook](https://colab.research.google.com/drive/1ySwg9BIYWS5oLQ5haorMyiIbyiCJ431J?usp=sharing) |
2638
| Case Study #2: Targeting Optimization: Bidder at Uber | 30 minutes | | |
2739
| **Case Studies Part 2 by EconML** | | | |
2840
| Introduction to EconML| 15 minutes | | |

0 commit comments

Comments
 (0)