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  1. README.md

    the Machine Intelligence team at Google Brain to conduct research in machine
    learning and neural networks. However, the framework is versatile enough to be
    used in other areas as well.
    
    TensorFlow provides stable [Python](https://www.tensorflow.org/api_docs/python)
    and [C++](https://www.tensorflow.org/api_docs/cc) APIs, as well as a
    non-guaranteed backward compatible API for
    Plain Text
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  2. tensorflow/c/eager/tape.h

      // Looks up the ID of a Gradient.
      virtual int64_t TensorId(Gradient* tensor) const = 0;
    
      // Converts a Gradient to a TapeTensor.
      virtual TapeTensor TapeTensorFromGradient(Gradient* gradient) const = 0;
    
      // Marks the following gradient as a result so it's not consumed by backward
      // functions.
      virtual void MarkAsResult(Gradient* gradient) const = 0;
    
      // Deletes the input tensor.
    C
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Tue Apr 02 12:40:29 GMT 2024
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  3. tensorflow/c/eager/gradients.h

      // earlier call to `GradientTape::Watch` or being an output of an op with
      // watched inputs.
      void Watch(const AbstractTensorHandle*);
      // Records an operation with given inputs and outputs
      // on the tape and marks all its outputs as watched if at
      // least one input of the op is watched and has a trainable dtype.
      // op_name is optional and is used for debugging only.
      void RecordOperation(absl::Span<AbstractTensorHandle* const> inputs,
    C
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  4. SECURITY.md

    `SavedModel`) and executes them in parallel on available executors. Running
    TensorFlow in a multitenant design mixes the risks described above with the
    inherent ones from multitenant configurations. The primary areas of concern are
    tenant isolation, resource allocation, model sharing and hardware attacks.
    
    ### Tenant isolation
    
    Since any tenants or users providing models, graphs or checkpoints can execute
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  5. LICENSE

          with Licensor regarding such Contributions.
    
       6. Trademarks. This License does not grant permission to use the trade
          names, trademarks, service marks, or product names of the Licensor,
          except as required for reasonable and customary use in describing the
          origin of the Work and reproducing the content of the NOTICE file.
    
    Plain Text
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    - Last Modified: Mon Nov 29 17:31:56 GMT 2021
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  6. RELEASE.md

    Chollet, Frederic Bastien, Fredrik Knutsson, Gabriele Macchi, Gaurav Shukla,
    Gauri1 Deshpande, geetachavan1, Georgiy Manuilov, H, Hengwen Tong, Henri
    Woodcock, Hiran Sarkar, Ilya Arzhannikov, Janghoo Lee, jdematos, Jens Meder,
    Jerry Shih, jgehw, Jim Fisher, Jingbei Li, Jiri Podivin, Joachim Gehweiler,
    Johannes Lade, Jonas I. Liechti, Jonas Liechti, Jonas Ohlsson, Jonathan
    Plain Text
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Mon Apr 29 19:17:57 GMT 2024
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