示例#1
0
文件: metrics.py 项目: PAIR-code/lit
    def run_with_metadata(self,
                          indexed_inputs: Sequence[IndexedInput],
                          model: lit_model.Model,
                          dataset: lit_dataset.IndexedDataset,
                          model_outputs: Optional[List[JsonDict]] = None,
                          config: Optional[JsonDict] = None) -> List[JsonDict]:
        if model_outputs is None:
            model_outputs = list(model.predict_with_metadata(indexed_inputs))

        # TODO(lit-team): pre-compute this mapping in constructor?
        # This would require passing a model name to this function so we can
        # reference a pre-computed list.
        spec = model.spec()
        field_map = map_pred_keys(dataset.spec(), spec.output,
                                  self.is_compatible)
        ret = []
        for pred_key, label_key in field_map.items():
            # Extract fields
            labels = [ex['data'][label_key] for ex in indexed_inputs]
            preds = [mo[pred_key] for mo in model_outputs]
            indices = [ex['id'] for ex in indexed_inputs]
            metas = [ex.get('meta', {}) for ex in indexed_inputs]
            # Compute metrics, as dict(str -> float)
            metrics = self.compute_with_metadata(
                labels,
                preds,
                label_spec=dataset.spec()[label_key],
                pred_spec=spec.output[pred_key],
                indices=indices,
                metas=metas,
                config=config.get(pred_key) if config else None)
            # NaN is not a valid JSON value, so replace with None which will be
            # serialized as null.
            # TODO(lit-team): move this logic into serialize.py somewhere instead?
            metrics = {
                k: (v if not np.isnan(v) else None)
                for k, v in metrics.items()
            }
            # Format for frontend.
            ret.append({
                'pred_key': pred_key,
                'label_key': label_key,
                'metrics': metrics
            })
        return ret
示例#2
0
文件: metrics.py 项目: PAIR-code/lit
 def run(self,
         inputs: List[JsonDict],
         model: lit_model.Model,
         dataset: lit_dataset.Dataset,
         model_outputs: Optional[List[JsonDict]] = None,
         config: Optional[JsonDict] = None):
     # Get margin for each input for each pred key and add them to a config dict
     # to pass to the wrapped metrics.
     field_map = map_pred_keys(dataset.spec(),
                               model.spec().output, self.is_compatible)
     margin_config = {}
     for pred_key in field_map:
         field_config = config.get(pred_key) if config else None
         margins = [
             get_margin_for_input(field_config, inp) for inp in inputs
         ]
         margin_config[pred_key] = margins
     return self._metrics.run(inputs, model, dataset, model_outputs,
                              margin_config)
示例#3
0
文件: metrics.py 项目: PAIR-code/lit
    def run(self,
            inputs: List[JsonDict],
            model: lit_model.Model,
            dataset: lit_dataset.Dataset,
            model_outputs: Optional[List[JsonDict]] = None,
            config: Optional[JsonDict] = None):
        if model_outputs is None:
            model_outputs = list(model.predict(inputs))

        spec = model.spec()
        field_map = map_pred_keys(dataset.spec(), spec.output,
                                  self.is_compatible)
        ret = []
        for pred_key, label_key in field_map.items():
            # Extract fields
            labels = [ex[label_key] for ex in inputs]
            preds = [mo[pred_key] for mo in model_outputs]
            # Compute metrics, as dict(str -> float)
            metrics = self.compute(
                labels,
                preds,
                label_spec=dataset.spec()[label_key],
                pred_spec=spec.output[pred_key],
                config=config.get(pred_key) if config else None)
            # NaN is not a valid JSON value, so replace with None which will be
            # serialized as null.
            # TODO(lit-team): move this logic into serialize.py somewhere instead?
            metrics = {
                k: (v if not np.isnan(v) else None)
                for k, v in metrics.items()
            }
            # Format for frontend.
            ret.append({
                'pred_key': pred_key,
                'label_key': label_key,
                'metrics': metrics
            })
        return ret