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Intro
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History
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Features
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Models
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Overrides
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Python
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Workflows
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Wine Dataset
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Setup
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Feature Engineering
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Feature Optimization
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Results
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Manual Run
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Recap
15
Introduction
16
Classification
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Case Sampling
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Feature Interactions
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Feature Modes
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Upcoming Features
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Getting Started
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Pipeline Model Instrumentation
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Pipeline Model Prediction
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Feature Engineering Pipeline
Description:
Dive deep into the AutoML Toolkit in this hour-long conference talk from Databricks. Explore how Databricks Labs is automating and accelerating feature engineering, feature importance selection, model selection and tuning, model serving/deployment, model documentation with MLflow, and inference and scoring. Learn about the toolkit's history, features, models, overrides, Python workflows, and practical applications using a wine dataset. Discover how to set up the toolkit, perform feature engineering and optimization, analyze results, and execute manual runs. Gain insights into classification, case sampling, feature interactions, and upcoming features. Understand pipeline model instrumentation, prediction, and the feature engineering pipeline to streamline your machine learning workflows and boost productivity.

AutoML Toolkit Deep Dive - Automating Feature Engineering and Model Optimization

Databricks
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