Computes a 1-D convolution given 3-D input and filter tensors.
tf.nn.conv1d(
    input, filters, stride, padding, data_format='NWC', dilations=None,
    name=None
)
Given an input tensor of shape
  batch_shape + [in_width, in_channels]
if data_format is "NWC", or
  batch_shape + [in_channels, in_width]
if data_format is "NCW",
and a filter / kernel tensor of shape
[filter_width, in_channels, out_channels], this op reshapes
the arguments to pass them to conv2d to perform the equivalent
convolution operation.
Internally, this op reshapes the input tensors and invokes tf.nn.conv2d.
For example, if data_format does not start with "NC", a tensor of shape
  batch_shape + [in_width, in_channels]
is reshaped to
  batch_shape + [1, in_width, in_channels],
and the filter is reshaped to
  [1, filter_width, in_channels, out_channels].
The result is then reshaped back to
  batch_shape + [out_width, out_channels]
(where out_width is a function of the stride and padding as in conv2d) and
returned to the caller.
Args | 
input
 | 
A Tensor of rank at least 3. Must be of type float16, float32, or
float64.
 | 
filters
 | 
A Tensor of rank at least 3.  Must have the same type as input.
 | 
stride
 | 
An int or list of ints that has length 1 or 3.  The number of
entries by which the filter is moved right at each step.
 | 
padding
 | 
'SAME' or 'VALID'
 | 
data_format
 | 
An optional string from "NWC", "NCW".  Defaults to "NWC",
the data is stored in the order of
batch_shape + [in_width, in_channels].  The "NCW" format stores data
as batch_shape + [in_channels, in_width].
 | 
dilations
 | 
An int or list of ints that has length 1 or 3 which
defaults to 1. The dilation factor for each dimension of input. If set to
k > 1, there will be k-1 skipped cells between each filter element on that
dimension. Dilations in the batch and depth dimensions must be 1.
 | 
name
 | 
A name for the operation (optional).
 | 
Returns | 
A Tensor.  Has the same type as input.
 | 
Raises | 
ValueError
 | 
if data_format is invalid.
 |