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1
Introduction
2
Background
3
Time Series
4
Ray
5
Core Parts
6
ML Framework
7
Software Stack
8
Training Workflow
9
Recipe
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New Project
11
Reference Use Case
12
Project Background
13
Project Example
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Real Case
15
Summary
16
Future work
Description:
Explore scalable AutoML techniques for time series forecasting using Ray in this 22-minute conference talk from OpML '20. Dive into the development of an easy-to-use toolkit that leverages machine learning and deep learning methods to outperform traditional forecasting approaches. Learn how the speakers built an AutoML toolkit on top of Ray, automating feature generation, selection, model selection, and hyper-parameter tuning in a distributed manner. Gain insights into real-world applications, including network quality analysis, log analysis for data center operations, and predictive maintenance. Discover the toolkit's architecture, core components, ML framework, and software stack. Follow the training workflow and examine a reference use case with project background and examples. Conclude with a summary of key takeaways and future work in the field of AutoML for time series forecasting.

Scalable AutoML for Time Series Forecasting Using Ray

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