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  1. tensorflow/c/c_api_macros.h

    #endif  // SWIG
    
    // TF_Bool is the C API typedef for unsigned char, while TF_BOOL is
    // the datatype for boolean tensors.
    #ifndef TF_Bool
    #define TF_Bool unsigned char
    #endif  // TF_Bool
    
    // Macro used to calculate struct size for maintaining ABI stability across
    // different struct implementations.
    #ifndef TF_OFFSET_OF_END
    #define TF_OFFSET_OF_END(TYPE, MEMBER) \
      (offsetof(TYPE, MEMBER) + sizeof(((TYPE *)0)->MEMBER))
    C
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Sat May 13 04:44:45 GMT 2023
    - 1.6K bytes
    - Viewed (1)
  2. tensorflow/c/eager/gradient_checker.h

    namespace gradients {
    
    /* Returns numerical grad inside `dtheta_approx` given `forward` model and
     * parameter specified by `input_index`.
     *
     * I.e. if y = <output of the forward model> and w = inputs[input_index],
     * this will calculate dy/dw numerically.
     *
     * `use_function` indicates whether to use graph mode(true) or eager(false).
     *
     * `numerical_grad` is the pointer to the AbstractTensorHandle* which will
    C
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Fri Dec 11 02:34:32 GMT 2020
    - 1.8K bytes
    - Viewed (0)
  3. tensorflow/c/experimental/gradients/nn_grad.cc

                     absl::Span<AbstractTensorHandle*> grad_inputs) override {
        AbstractTensorHandle* upstream_grad = grad_outputs[0];
        AbstractTensorHandle* activations = forward_outputs_[0];
    
        // Calculate Grad
        std::string name = "relu_grad";
        TF_RETURN_IF_ERROR(ReluGrad(ctx, upstream_grad, activations,
                                    &grad_inputs[0], name.c_str()));
        return absl::OkStatus();
      }
    C++
    - Registered: Tue Mar 26 12:39:09 GMT 2024
    - Last Modified: Wed Feb 28 13:53:47 GMT 2024
    - 5.7K bytes
    - Viewed (0)
  4. tensorflow/c/eager/gradient_checker.cc

        TF_RETURN_IF_ERROR(
            ops::Sub(ctx, fPlus.get(), fMinus.get(), f_outputs, "sub_top"));
        AbstractTensorHandlePtr fDiff(f_outputs[0]);
    
        // Calculate using the difference quotient definition:
        // (f(theta + eps) - f(theta - eps)) / (2 * eps).
        TF_RETURN_IF_ERROR(
            ops::Div(ctx, fDiff.get(), two_eps.get(), f_outputs, "diff_quotient"));
    C++
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Thu Feb 15 09:49:45 GMT 2024
    - 7.3K bytes
    - Viewed (0)
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