Example #1
0
def run_sequential_model(model_fn, input_shape):
    def get_input(shape):
        _input = np.random.uniform(0, 1, shape).astype(dtype="float32")
        return _input

    def save_and_reload(_model):
        with tempfile.TemporaryDirectory() as model_path:
            tf.saved_model.save(_model, model_path)
            loaded = tf.saved_model.load(model_path)
            func = loaded.signatures["serving_default"]
            frozen_func = convert_variables_to_constants_v2(func)
        return frozen_func

    def model_graph(model, input_shape):
        _input = get_input(input_shape)
        f = save_and_reload(model(input_shape))
        _output = run_tf_code(f, _input)
        gdef = f.graph.as_graph_def(add_shapes=True)
        return gdef, _input, _output

    compare_tf_tvm(*model_graph(model_fn, input_shape), runtime="vm")
Example #2
0
 def run_model_graph(TestClass):
     compare_tf_tvm(*_model_graph(TestClass), runtime="vm")
Example #3
0
 def run_func_graph(TestClass, runtime="vm"):
     compare_tf_tvm(*_function_graph(TestClass), runtime=runtime)
Example #4
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def run_model_graph(TestClass, outputs=None):
    compare_tf_tvm(*_model_graph(TestClass), runtime="vm", output_tensors=outputs)
Example #5
0
def run_func_graph(TestClass, runtime="vm", outputs=None):
    compare_tf_tvm(*_function_graph(TestClass), runtime=runtime, output_tensors=outputs)