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Results 1 - 4 of 4 for Franke (0.46 sec)

  1. tensorflow/c/c_api_experimental.cc

      const auto& shape = reader->GetVariableToShapeMap().at(name);
      int rank = shape.dims();
      if (num_dims != rank) {
        status->status = InvalidArgument("Expected rank is ", num_dims,
                                         " but actual rank is ", rank);
        return;
      }
      for (int i = 0; i < num_dims; i++) {
        dims[i] = shape.dim_size(i);
      }
    }
    
    C++
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Mon Apr 15 03:35:10 GMT 2024
    - 29.4K bytes
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  2. tensorflow/c/c_api.cc

      }
    
      tensorflow::shape_inference::ShapeHandle shape = ic->output(output.index);
    
      int rank = -1;
      if (ic->RankKnown(shape)) {
        rank = ic->Rank(shape);
      }
    
      if (num_dims != rank) {
        status->status = InvalidArgument("Expected rank is ", num_dims,
                                         " but actual rank is ", rank);
        return;
      }
    
      if (num_dims == 0) {
        // Output shape is a scalar.
    C++
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Mon Apr 15 03:35:10 GMT 2024
    - 102.3K bytes
    - Viewed (0)
  3. configure.py

          looping.
      """
      default = environ_cp.get(var_name) or var_default
      full_query = '%s [Default is %s]: ' % (
          ask_for_var,
          default,
      )
    
      for _ in range(n_ask_attempts):
        val = get_from_env_or_user_or_default(environ_cp, var_name, full_query,
                                              default)
        if check_success(val):
          break
        if not suppress_default_error:
    Python
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Mon Apr 15 18:25:36 GMT 2024
    - 53.8K bytes
    - Viewed (0)
  4. RELEASE.md

            `DynamicUpdateSlice`.
        *   Enabled a new MLIR-based dynamic range quantization backend by default
            *   The new backend is used for post-training int8 dynamic range
                quantization and post-training float16 quantization.
            *   Set `experimental_new_dynamic_range_quantizer` in
                tf.lite.TFLiteConverter to False to disable this change
    Plain Text
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Mon Apr 29 19:17:57 GMT 2024
    - 727.7K bytes
    - Viewed (8)
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