Tensors and Operations

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This is an introductory TensorFlow tutorial shows how to:

  • Import the required package
  • Create and use tensors
  • Use GPU acceleration
  • Demonstrate tf.data.Dataset
from __future__ import absolute_import, division, print_function

!pip install -q tensorflow-gpu==2.0.0-beta1

Import TensorFlow

To get started, import the tensorflow module. As of TensorFlow 2.0, eager execution is turned on by default. This enables a more interactive frontend to TensorFlow, the details of which we will discuss much later.

import tensorflow as tf


A Tensor is a multi-dimensional array. Similar to NumPy ndarray objects, tf.Tensor objects have a data type and a shape. Additionally, tf.Tensors can reside in accelerator memory (like a GPU). TensorFlow offers a rich library of operations (tf.add, tf.matmul, tf.linalg.inv etc.) that consume and produce tf.Tensors. These operations automatically convert native Python types, for example:

print(tf.add(1, 2))
print(tf.add([1, 2], [3, 4]))
print(tf.reduce_sum([1, 2, 3]))

# Operator overloading is also supported
print(tf.square(2) + tf.square(3))
tf.Tensor(3, shape=(), dtype=int32)
tf.Tensor([4 6], shape=(2,), dtype=int32)
tf.Tensor(25, shape=(), dtype=int32)
tf.Tensor(6, shape=(), dtype=int32)
tf.Tensor(13, shape=(), dtype=int32)

Each tf.Tensor has a shape and a datatype:

x = tf.matmul([[1]], [[2, 3]])
tf.Tensor([[2 3]], shape=(1, 2), dtype=int32)
(1, 2)
<dtype: 'int32'>

The most obvious differences between NumPy arrays and tf.Tensors are:

  1. Tensors can be backed by accelerator memory (like GPU, TPU).
  2. Tensors are immutable.

NumPy Compatibility

Converting between a TensorFlow tf.Tensors and a NumPy ndarray is easy:

  • TensorFlow operations automatically convert NumPy ndarrays to Tensors.
  • NumPy operations automatically convert Tensors to NumPy ndarrays.

Tensors are explicitly converted to NumPy ndarrays using their .numpy() method. These conversions are typically cheap since the array and tf.Tensor share the underlying memory representation, if possible. However, sharing the underlying representation isn't always possible since the tf.Tensor may be hosted in GPU memory while NumPy arrays are always backed by host memory, and the conversion involves a copy from GPU to host memory.

import numpy as np

ndarray = np.ones([3, 3])

print("TensorFlow operations convert numpy arrays to Tensors automatically")
tensor = tf.multiply(ndarray, 42)

print("And NumPy operations convert Tensors to numpy arrays automatically")
print(np.add(tensor, 1))

print("The .numpy() method explicitly converts a Tensor to a numpy array")
TensorFlow operations convert numpy arrays to Tensors automatically
[[42. 42. 42.]
 [42. 42. 42.]
 [42. 42. 42.]], shape=(3, 3), dtype=float64)
And NumPy operations convert Tensors to numpy arrays automatically
[[43. 43. 43.]
 [43. 43. 43.]
 [43. 43. 43.]]
The .numpy() method explicitly converts a Tensor to a numpy array
[[42. 42. 42.]
 [42. 42. 42.]
 [42. 42. 42.]]

GPU acceleration

Many TensorFlow operations are accelerated using the GPU for computation. Without any annotations, TensorFlow automatically decides whether to use the GPU or CPU for an operation—copying the tensor between CPU and GPU memory, if necessary. Tensors produced by an operation are typically backed by the memory of the device on which the operation executed, for example:

x = tf.random.uniform([3, 3])

print("Is there a GPU available: "),

print("Is the Tensor on GPU #0:  "),
Is there a GPU available: 
Is the Tensor on GPU #0:  

Device Names

The Tensor.device property provides a fully qualified string name of the device hosting the contents of the tensor. This name encodes many details, such as an identifier of the network address of the host on which this program is executing and the device within that host. This is required for distributed execution of a TensorFlow program. The string ends with GPU:<N> if the tensor is placed on the N-th GPU on the host.

Explicit Device Placement

In TensorFlow, placement refers to how individual operations are assigned (placed on) a device for execution. As mentioned, when there is no explicit guidance provided, TensorFlow automatically decides which device to execute an operation and copies tensors to that device, if needed. However, TensorFlow operations can be explicitly placed on specific devices using the tf.device context manager, for example:

import time

def time_matmul(x):
  start = time.time()
  for loop in range(10):
    tf.matmul(x, x)

  result = time.time()-start

  print("10 loops: {:0.2f}ms".format(1000*result))

# Force execution on CPU
print("On CPU:")
with tf.device("CPU:0"):
  x = tf.random.uniform([1000, 1000])
  assert x.device.endswith("CPU:0")

# Force execution on GPU #0 if available
if tf.test.is_gpu_available():
  print("On GPU:")
  with tf.device("GPU:0"): # Or GPU:1 for the 2nd GPU, GPU:2 for the 3rd etc.
    x = tf.random.uniform([1000, 1000])
    assert x.device.endswith("GPU:0")
10 loops: 107.55ms
10 loops: 336.94ms


This section uses the tf.data.Dataset API to build a pipeline for feeding data to your model. The tf.data.Dataset API is used to build performant, complex input pipelines from simple, re-usable pieces that will feed your model's training or evaluation loops.

Create a source Dataset

Create a source dataset using one of the factory functions like Dataset.from_tensors, Dataset.from_tensor_slices, or using objects that read from files like TextLineDataset or TFRecordDataset. See the TensorFlow Dataset guide for more information.

ds_tensors = tf.data.Dataset.from_tensor_slices([1, 2, 3, 4, 5, 6])

# Create a CSV file
import tempfile
_, filename = tempfile.mkstemp()

with open(filename, 'w') as f:
  f.write("""Line 1
Line 2
Line 3

ds_file = tf.data.TextLineDataset(filename)

Apply transformations

Use the transformations functions like map, batch, and shuffle to apply transformations to dataset records.

ds_tensors = ds_tensors.map(tf.square).shuffle(2).batch(2)

ds_file = ds_file.batch(2)


tf.data.Dataset objects support iteration to loop over records:

print('Elements of ds_tensors:')
for x in ds_tensors:

print('\nElements in ds_file:')
for x in ds_file:
Elements of ds_tensors:
tf.Tensor([4 1], shape=(2,), dtype=int32)
tf.Tensor([16  9], shape=(2,), dtype=int32)
tf.Tensor([25 36], shape=(2,), dtype=int32)

Elements in ds_file:
tf.Tensor([b'Line 1' b'Line 2'], shape=(2,), dtype=string)
tf.Tensor([b'Line 3' b'  '], shape=(2,), dtype=string)