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  • Tensorflow Eager execution and interface

    Lecture note 4: Eager execution and interface

    Eager execution

    Eager execution is (1) a NumPy-like library for numerical computation with support for GPU acceleration and automatic differentiation, and (2) a flexible platform for machine learning research and experimentation. It's available as tf.contrib.eager, starting with version 1.50 of TensorFlow.

    • Motivation:
      • TensorFlow today: Construct a graph and execute it.
        • This is declarative programming. Its benefits include performance and easy translation to other platforms; drawbacks include that declarative programming is non-Pythonic and difficult to debug.
      • What if you could execute operations directly?
        • Eager execution offers just that: it is an imperative front-end to TensorFlow.
    • Key advantages: Eager execution …
      • is compatible with Python debugging tools
        • pdb.set_trace() to your heart's content!
      • provides immediate error reporting
      • permits use of Python data structures
        • e.g., for structured input
      • enables you to use and differentiate through Python control flow
    • Enabling eager execution requires two lines of code

      import tensorflow as tf

      import tensorflow.contrib.eager as tfe

      tfe.enable_eager_execution() # Call this at program start-up

        and lets you write code that you can easily execute in a REPL, like this

     

    x = [[2.]] # No need for placeholders!

    m = tf.matmul(x, x)

     

    print(m) # No sessions!

    # tf.Tensor([[4.]], shape=(1, 1), dtype=float32)

    For more details, check out lecture slides 04.

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  • 原文地址:https://www.cnblogs.com/kexinxin/p/10162829.html
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