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# tf.linalg.normalize

Normalizes `tensor` along dimension `axis` using specified norm.

This uses `tf.linalg.norm` to compute the norm along `axis`.

This function can compute several different vector norms (the 1-norm, the Euclidean or 2-norm, the inf-norm, and in general the p-norm for p > 0) and matrix norms (Frobenius, 1-norm, 2-norm and inf-norm).

`tensor` `Tensor` of types `float32`, `float64`, `complex64`, `complex128`
`ord` Order of the norm. Supported values are `'fro'`, `'euclidean'`, `1`, `2`, `np.inf` and any positive real number yielding the corresponding p-norm. Default is `'euclidean'` which is equivalent to Frobenius norm if `tensor` is a matrix and equivalent to 2-norm for vectors. Some restrictions apply: a) The Frobenius norm `'fro'` is not defined for vectors, b) If axis is a 2-tuple (matrix norm), only `'euclidean'`, '`fro'`, `1`, `2`, `np.inf` are supported. See the description of `axis` on how to compute norms for a batch of vectors or matrices stored in a tensor.
`axis` If `axis` is `None` (the default), the input is considered a vector and a single vector norm is computed over the entire set of values in the tensor, i.e. `norm(tensor, ord=ord)` is equivalent to `norm(reshape(tensor, [-1]), ord=ord)`. If `axis` is a Python integer, the input is considered a batch of vectors, and `axis` determines the axis in `tensor` over which to compute vector norms. If `axis` is a 2-tuple of Python integers it is considered a batch of matrices and `axis` determines the axes in `tensor` over which to compute a matrix norm. Negative indices are supported. Example: If you are passing a tensor that can be either a matrix or a batch of matrices at runtime, pass `axis=[-2,-1]` instead of `axis=None` to make sure that matrix norms are computed.
`name` The name of the op.

`normalized` A normalized `Tensor` with the same shape as `tensor`.
`norm` The computed norms with the same shape and dtype `tensor` but the final axis is 1 instead. Same as running `tf.cast(tf.linalg.norm(tensor, ord, axis keepdims=True), tensor.dtype)`.

`ValueError` If `ord` or `axis` is invalid.

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