コード例 #1
0
    def predict(self, params, logits, context, target=None):
        context = jnp.expand_dims(jnp.expand_dims(jnp.expand_dims(context,
                                                                  axis=1),
                                                  axis=1),
                                  axis=1)
        context_bias = params.get('context_bias', 0.0)
        context_index = (params['context_maps'] *
                         context).sum(axis=-1) > context_bias

        context_map_values = jnp.asarray(
            [[[[1 << n for n in range(self.context_map_size)]]]])
        context_index = jnp.where(context_index, context_map_values, 0)
        context_index = context_index.sum(axis=-1, keepdims=True)

        batch_size = logits.shape[0]
        class_neuron_index = jnp.asarray([[[[c, n] for n in range(self.size)]
                                           for c in range(self.num_classes)]])
        class_neuron_index = jnp.tile(class_neuron_index,
                                      reps=(batch_size, 1, 1, 1))
        context_index = jnp.concatenate([class_neuron_index, context_index],
                                        axis=-1)

        dims = lax.GatherDimensionNumbers(offset_dims=(3, ),
                                          collapsed_slice_dims=(0, 1, 2),
                                          start_index_map=(0, 1, 2))
        weights = lax.gather(operand=params['weights'],
                             start_indices=context_index,
                             dimension_numbers=dims,
                             slice_sizes=(1, 1, 1,
                                          self.input_size + int(self.bias)))

        if self.bias:
            bias = jnp.tile(params['bias'], reps=(batch_size, 1, 1))
            logits = jnp.concatenate([logits, bias], axis=-1)
        logits = jnp.expand_dims(logits, axis=-1)

        output_logits = jnp.matmul(weights, logits)
        output_logits = jnp.clip(output_logits,
                                 a_min=jsp.special.logit(self.pred_clipping),
                                 a_max=jsp.special.logit(1.0 -
                                                         self.pred_clipping))

        if target is None:
            return jnp.squeeze(output_logits, axis=-1)

        else:
            logits = jnp.expand_dims(jnp.squeeze(logits, axis=-1), axis=-2)
            output_preds = jnn.sigmoid(output_logits)
            target = jnp.expand_dims(jnp.expand_dims(target, axis=-1), axis=-1)
            params['lr_step'], learning_rate = self.learning_rate.value(
                params['lr_step'])
            delta = learning_rate * (target - output_preds) * logits

            dims = lax.ScatterDimensionNumbers(
                update_window_dims=(3, ),
                inserted_window_dims=(0, 1, 2),
                scatter_dims_to_operand_dims=(0, 1, 2))

            if self.weight_clipping is None:
                params['weights'] = lax.scatter_add(
                    operand=params['weights'],
                    scatter_indices=context_index,
                    updates=delta,
                    dimension_numbers=dims)
            else:
                weights = jnp.clip(weights + delta,
                                   a_min=-self.weight_clipping,
                                   a_max=self.weight_clipping)
                params['weights'] = lax.scatter(operand=params['weights'],
                                                scatter_indices=context_index,
                                                updates=weights,
                                                dimension_numbers=dims)

            return params, jnp.squeeze(output_logits, axis=-1)
コード例 #2
0
ファイル: primitive_harness.py プロジェクト: hieuza/jax
            StaticArg(axis)])
  for indices in [
    # Ensure each set of indices has a distinct shape
    np.array(2, dtype=np.int32),
    np.array([2], dtype=np.int32),
    np.array([2, 4], dtype=np.int32),
    np.array([[2, 4], [5, 6]], dtype=np.int32),
    np.array([0, 1, 10], dtype=np.int32),  # Index out of bounds
    np.array([0, 1, 2, -1], dtype=np.int32),  # Index out of bounds
  ]
  for axis in [0, 1, 2]] +

  # Directly from lax.gather in lax_test.py.
  [Harness(
    f"_shape={shape}_idxs_shape={idxs.shape}_dnums={dnums}_slice_sizes={slice_sizes}",
    lambda op, idxs, dnums, slice_sizes: lax.gather(op, idxs, dimension_numbers=dnums, slice_sizes=slice_sizes),
    [RandArg(shape, np.float32),
     idxs, StaticArg(dnums), StaticArg(slice_sizes)])
    for shape, idxs, dnums, slice_sizes in [
    ((5,), np.array([[0], [2]]), lax.GatherDimensionNumbers(
      offset_dims=(), collapsed_slice_dims=(0,), start_index_map=(0,)),
     (1,)),
    ((10,), np.array([[0], [0], [0]]), lax.GatherDimensionNumbers(
      offset_dims=(1,), collapsed_slice_dims=(), start_index_map=(0,)),
     (2,)),
    ((10, 5,), np.array([[0], [2], [1]]), lax.GatherDimensionNumbers(
      offset_dims=(1,), collapsed_slice_dims=(0,), start_index_map=(0,)),
     (1, 3)),
    ((10, 5), np.array([[0, 2], [1, 0]]), lax.GatherDimensionNumbers(
      offset_dims=(1,), collapsed_slice_dims=(0,), start_index_map=(0, 1)),
     (1, 3)),
コード例 #3
0
shape = (5, 4, 3)

x = randn(*shape)

z = choice(shape[-1], size=shape[:-1])

y = x[np.arange(shape[0])[:, None], np.arange(shape[1]), z, ]

print("Correct answer")
print(y)

print("Wrong shapes")
print(
    gather(x, z[:, :, None], GatherDimensionNumbers((
        0,
        2,
    ), (1, ), (2, )), (1, 1, 1)).shape)
print(
    gather(x, z[:, :, None], GatherDimensionNumbers((
        0,
        1,
    ), (2, ), (2, )), (1, 1, 1)).shape)

print("Right shape and answer with gather:")
print(
    gather(x, z[:, :, None], GatherDimensionNumbers((2, ), (
        0,
        1,
    ), (2, )), (1, 1, 1)).squeeze(-1), )

print("Totally wrong answer with incorrect indexing")