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Intro
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Big data and ML infra are similar
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Speaker background
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Why invest in ML infra?
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Case study: Building a new TF runtime
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ML program as a computational graph
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An example ML program
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Lifetime of an ML program
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Vectorized normalization
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A slight digression on Eager execution
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ML infra and SQL query processing
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(Random) scan-based access patterns
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Beyond pure dataflow
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ML and DB terminology mapping
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Recall graph processing workflow
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Expressing input pipelines
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Decoupled API and execution
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Challenge: Randomized transformations
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Graph rewrites
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Cost model and data stats
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Constraint propagation
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Storage/access optimizations
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Push vs pull based execution
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Distributed and parallel execution
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ML infra is like data infra, with new twists
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Let's collaborate
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Explore the intricacies of building machine learning infrastructure in this 43-minute video from the Inside TensorFlow series. Join Software Engineer Mingsheng Hong as he delves into research and engineering challenges in ML infrastructure development. Discover the similarities between big data and ML infrastructure, understand the importance of investing in ML infrastructure, and examine a case study on building a new TensorFlow runtime. Learn about ML programs as computational graphs, vectorized normalization, and Eager execution. Compare ML infrastructure to SQL query processing, explore input pipelines, and understand graph processing workflows. Dive into topics such as graph rewrites, cost models, data statistics, constraint propagation, and storage/access optimizations. Gain insights into distributed and parallel execution, and recognize how ML infrastructure relates to data infrastructure with unique twists. Access additional resources through provided links and consider potential collaborations in this field. Read more

Inside TensorFlow- Building ML Infra

TensorFlow
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