TensorFlow Eager: A Multi-Stage, Python-Embedded DSL for Machine Learning

27 Feb 2019Akshay AgrawalAkshay Naresh ModiAlexandre PassosAllen LavoieAshish AgarwalAsim ShankarIgor GanichevJosh LevenbergMingsheng HongRajat MongaShanqing Cai

TensorFlow Eager is a multi-stage, Python-embedded domain-specific language for hardware-accelerated machine learning, suitable for both interactive research and production. TensorFlow, which TensorFlow Eager extends, requires users to represent computations as dataflow graphs; this permits compiler optimizations and simplifies deployment but hinders rapid prototyping and run-time dynamism... (read more)

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