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Practical Machine Learning on Databricks

Practical Machine Learning on Databricks

By : Debu Sinha
4.4 (9)
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Practical Machine Learning on Databricks

Practical Machine Learning on Databricks

4.4 (9)
By: Debu Sinha

Overview of this book

Unleash the potential of databricks for end-to-end machine learning with this comprehensive guide, tailored for experienced data scientists and developers transitioning from DIY or other cloud platforms. Building on a strong foundation in Python, Practical Machine Learning on Databricks serves as your roadmap from development to production, covering all intermediary steps using the databricks platform. You’ll start with an overview of machine learning applications, databricks platform features, and MLflow. Next, you’ll dive into data preparation, model selection, and training essentials and discover the power of databricks feature store for precomputing feature tables. You’ll also learn to kickstart your projects using databricks AutoML and automate retraining and deployment through databricks workflows. By the end of this book, you’ll have mastered MLflow for experiment tracking, collaboration, and advanced use cases like model interpretability and governance. The book is enriched with hands-on example code at every step. While primarily focused on generally available features, the book equips you to easily adapt to future innovations in machine learning, databricks, and MLflow.
Table of Contents (16 chapters)
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1
Part 1: Introduction
4
Part 2: ML Pipeline Components and Implementation
8
Part 3: ML Governance and Deployment

Exploring experiments

As the name suggests, experiments are the central location where all the model training pertinent to business problems can be accessed. Users can define their name for the experiment or a default system-generated one and use it to train the different ML model training runs. Experiments in the Databricks UI come from integrating MLflow into the platform. We will dive deeper into MLflow in the coming chapters to understand more details; however, it’s important to get a sense of what MLflow is and some of the terminology that is MLflow-specific.

MLflow is an open source platform for managing the end-to-end ML life cycle. Here are the key components of MLflow:

  • Tracking: This allows you to track experiments to record and compare parameters and results.
  • Models: This component helps manage and deploy models from various ML libraries to a variety of model serving and inference platforms.
  • Projects: This allows you to package ML code in a reusable...
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Practical Machine Learning on Databricks
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