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error dump :
/tmpfs/venv/lib/python3.9/site-packages/keras/src/utils/traceback_utils.py:122: in error_handler raise e.with_traceback(filtered_tb) from None _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ self = iterator = data_batch = {'bounding_boxes': {'boxes': , 'cla...s_tensor_29218>}, 'images': } def _symbolic_build(self, iterator=None, data_batch=None): model_unbuilt = not all(layer.built for layer in self._flatten_layers()) compile_metrics_unbuilt = ( self._compile_metrics is not None and not self._compile_metrics.built ) compile_loss_unbuilt = ( self._compile_loss is not None and not self._compile_loss.built ) optimizer_unbuilt = ( self.optimizer is not None and not self.optimizer.built ) if model_unbuilt or compile_metrics_unbuilt or compile_loss_unbuilt: # Create symbolic tensors matching an input batch. def to_symbolic_input(v): if v is None: return None return backend.KerasTensor( v.shape, backend.standardize_dtype(v.dtype) ) if data_batch is None: for _, data in iterator.enumerate_epoch(): data_batch = data[0] break data_batch = tree.map_structure(to_symbolic_input, data_batch) ( x, y, sample_weight, ) = data_adapter_utils.unpack_x_y_sample_weight(data_batch) # Build all model state with `backend.compute_output_spec`. try: y_pred = backend.compute_output_spec(self, x, training=False) except Exception as e: > raise RuntimeError( "Unable to automatically build the model. " "Please build it yourself before calling " "fit/evaluate/predict. " "A model is 'built' when its variables have " "been created and its `self.built` attribute " "is True. Usually, calling the model on a batch " "of data is the right way to build it.\n" "Exception encountered:\n" f"'{e}'" ) E RuntimeError: Unable to automatically build the model. Please build it yourself before calling fit/evaluate/predict. A model is 'built' when its variables have been created and its `self.built` attribute is True. Usually, calling the model on a batch of data is the right way to build it. E Exception encountered: E 'Exception encountered when calling RetinaNet.call(). E E Invalid input shape for input Tracedwith. Expected shape (None, None, None, 3), but input has incompatible shape (5, 3, 4) E E Arguments received by RetinaNet.call(): E • inputs={'bounding_boxes': {'boxes': 'jnp.ndarray(shape=(5, 3, 4), dtype=float32)', 'classes': 'jnp.ndarray(shape=(5, 3), dtype=float32)', 'num_dets': 'jnp.ndarray(shape=(5,), dtype=float32)'}, 'images': 'jnp.ndarray(shape=(5, 512, 512, 3), dtype=float32)'} E • training=False E • mask={'bounding_boxes': {'boxes': 'None', 'classes': 'None', 'num_dets': 'None'}, 'images': 'None'}
The text was updated successfully, but these errors were encountered:
sachinprasadhs
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error dump :
The text was updated successfully, but these errors were encountered: