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/external/tensorflow/tensorflow/core/api_def/base_api/
Dapi_def_Cumsum.pbtxt21 If `True`, perform exclusive cumsum.
32 By default, this op performs an inclusive cumsum, which means that the first
36 tf.cumsum([a, b, c]) # => [a, a + b, a + b + c]
39 By setting the `exclusive` kwarg to `True`, an exclusive cumsum is
43 tf.cumsum([a, b, c], exclusive=True) # => [0, a, a + b]
46 By setting the `reverse` kwarg to `True`, the cumsum is performed in the
50 tf.cumsum([a, b, c], reverse=True) # => [a + b + c, b + c, c]
58 tf.cumsum([a, b, c], exclusive=True, reverse=True) # => [b + c, c, 0]
/external/eigen/unsupported/test/
Dcxx11_tensor_scan.cpp23 Tensor<Type, 1, DataLayout> result = tensor.cumsum(0, Exclusive); in test_1d_scan()
60 result = tensor.cumsum(0); in test_4d_scan()
66 result = tensor.cumsum(1); in test_4d_scan()
72 result = tensor.cumsum(2); in test_4d_scan()
78 result = tensor.cumsum(3); in test_4d_scan()
92 Tensor<int, 1, DataLayout> result = tensor_map.cumsum(0); in test_tensor_maps()
Dcxx11_tensor_scan_cuda.cu54 gpu_t_result.device(gpu_device) = gpu_t_input.cumsum(1); in test_cuda_cumsum()
55 t_result = t_input.cumsum(1); in test_cuda_cumsum()
/external/tensorflow/tensorflow/python/kernel_tests/
Dscan_ops_test.py57 if func == np.cumsum:
80 np_out = handle_options(np.cumsum, x, axis, exclusive, reverse)
82 tf_out = math_ops.cumsum(x, axis, exclusive, reverse).eval()
103 tf_out = math_ops.cumsum(x, axis).eval()
136 math_ops.cumsum(input_tensor, -3).eval()
140 math_ops.cumsum(input_tensor, 2).eval()
144 math_ops.cumsum(input_tensor, [0]).eval()
150 result = math_ops.cumsum(t, axis, exclusive, reverse)
Dweights_broadcast_test.py32 return np.reshape(np.cumsum(np.ones(shape), dtype=np.int32), newshape=shape)
Dfunctional_ops_test.py309 self.assertAllEqual(np.cumsum(elems), r_value[0])
310 self.assertAllEqual(np.cumsum(-elems), r_value[1])
/external/tensorflow/tensorflow/compiler/tests/
Dscan_ops_test.py57 if func == np.cumsum:
80 np_out = handle_options(np.cumsum, x, axis, exclusive, reverse)
83 tf_out = math_ops.cumsum(p, axis, exclusive, reverse).eval(
106 math_ops.cumsum(p, axis).eval(feed_dict={p: x})
139 math_ops.cumsum(input_tensor, -3).eval()
143 math_ops.cumsum(input_tensor, 2).eval()
147 math_ops.cumsum(input_tensor, [0]).eval()
/external/tensorflow/tensorflow/core/lib/histogram/
Dhistogram.cc132 double cumsum = cumsum_prev + buckets_[i]; in Percentile() local
135 if (cumsum >= threshold) { in Percentile()
138 if (cumsum == cumsum_prev) { in Percentile()
150 double weight = Remap(threshold, cumsum_prev, cumsum, lhs, rhs); in Percentile()
154 cumsum_prev = cumsum; in Percentile()
/external/bart/bart/sched/
Dfunctions.py171 series = series.cumsum()
298 running = select_window(org_series.cumsum(), window)
/external/eigen/bench/
Dsparse_setter.cpp317 for(int i = 0, cumsum = 0; i < n_row; i++){ in coo_tocsr() local
319 Bp[i] = cumsum; in coo_tocsr()
320 cumsum += temp; in coo_tocsr()
/external/trappy/tests/
Dtest_stats.py274 return series.cumsum()
303 return series.cumsum()
/external/tensorflow/tensorflow/contrib/coder/python/ops/
Dcoder_ops_test.py39 cdf = math_ops.cumsum(histogram, exclusive=False)
/external/tensorflow/tensorflow/contrib/sparsemax/python/ops/
Dsparsemax.py58 z_cumsum = math_ops.cumsum(z_sorted, axis=1)
/external/tensorflow/tensorflow/contrib/learn/python/learn/learn_io/
Ddask_io.py43 divisions = np.cumsum(lengths).tolist()
/external/tensorflow/tensorflow/contrib/coder/kernels/
Drange_coder_ops_test.cc201 histogram_tensor.flat_inner_dims<int32, 2>().cumsum(1); in BuildCdf()
423 cdf.flat<int32>() = h.cumsum(0); in CreateRangeEncodeFullBroadcastGraph()
463 cdf = h.cumsum(0); in CreateRangeDecodeFullBroadcastGraph()
/external/tensorflow/tensorflow/contrib/metrics/python/ops/
Dmetric_ops.py1090 array_ops.pad(math_ops.cumsum(counts), paddings=[[1, 0]]), dtypes.int32)
1094 array_ops.pad(math_ops.cumsum(ordered_labels), paddings=[[1, 0]]),
1276 cum_weight_totals_for_true = math_ops.cumsum(weight_totals_for_true,
1278 cum_weight_totals_for_false = math_ops.cumsum(weight_totals_for_false,
1639 tp = math_ops.cumsum(tp_buckets_v, reverse=True, name='tp')
1640 fp = math_ops.cumsum(fp_buckets_v, reverse=True, name='fp')
/external/trappy/doc/
DInteractivePlotter.ipynb120 "df = pd.DataFrame(numpy.random.randn(1000, 2), columns=columns).cumsum()\n",
150 …f1 = pd.DataFrame(numpy.random.randn(df_len, 3), columns=columns, index=range(df_len)).cumsum()\n",
151 …ame(numpy.random.randn(df_len, 3), columns=columns, index=(numpy.arange(0.5, df_len, 1))).cumsum()"
/external/tensorflow/tensorflow/contrib/layers/python/ops/
Dsparse_ops.py166 math_ops.cumsum(binary_indicators, axis=-1), "row_index_indicators")
/external/tensorflow/tensorflow/contrib/seq2seq/python/ops/
Dattention_wrapper.py600 return math_ops.exp(math_ops.cumsum(
670 attention = p_choose_i*cumprod_1mp_choose_i*math_ops.cumsum(
676 p_choose_i *= math_ops.cumsum(previous_attention, axis=1)
/external/tensorflow/tensorflow/contrib/image/python/kernel_tests/
Dsegmentation_test.py178 positive_id_start_per_image = np.cumsum(num_ids_per_image)
/external/tensorflow/tensorflow/contrib/bayesflow/python/ops/
Dmcmc_diagnostics_impl.py173 mask = math_ops.cumsum(mask, axis=0)
/external/tensorflow/tensorflow/contrib/coder/
DREADME.md54 cdf = tf.cumsum(histogram, exclusive=False)
/external/toolchain-utils/cros_utils/
Dstats.py323 cumhist = cumsum(hist) # make cumulative histogram
485 cumhist = cumsum(copy.deepcopy(h))
503 cumhist = cumsum(copy.deepcopy(h))
561 cumhist = cumsum(copy.deepcopy(h))
1991 cumsum = Dispatch((lcumsum, (ListType, TupleType)),) variable
2179 cumhist = N.cumsum(hist) # make cumulative histogram
2609 cumhist = cumsum(h * 1)
2626 cumhist = cumsum(h * 1)
2680 cumhist = cumsum(h * 1)
4499 cumsum = Dispatch((lcumsum, (ListType, TupleType)), (acumsum, (N.ndarray,))) variable
/external/tensorflow/tensorflow/docs_src/api_guides/python/
Dmath_ops.md151 * @{tf.cumsum}
/external/tensorflow/tensorflow/contrib/sparsemax/python/kernel_tests/
Dsparsemax_loss_test.py42 z_cumsum = np.cumsum(z_sorted, axis=1)

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