TFLearn can be defined as a modular and transparent deep learning aspect used in TensorFlow framework. The main motive of TFLearn is to provide a higher level API to TensorFlow for facilitating and showing up new experiments.
Consider the following important features of TFLearn −
- TFLearn is easy to use and understand.
- It includes easy concepts to build highly modular network layers, optimizers and various metrics embedded within them.
- It includes full transparency with TensorFlow work system.
- It includes powerful helper functions to train the built in tensors which accept multiple inputs, outputs and optimizers.
- It includes easy and beautiful graph visualization.
- The graph visualization includes various details of weights, gradients and activations.
Install TFLearn by executing the following command −
pip install tflearn
Upon execution of the above code, the following output will be generated −

The following illustration shows the implementation of TFLearn with Random Forest classifier −
from __future__ import division, print_function, absolute_import
#TFLearn module implementation
import tflearn
from tflearn.estimators import RandomForestClassifier
# Data loading and pre-processing with respect to dataset
import tflearn.datasets.mnist as mnist
X, Y, testX, testY = mnist.load_data(one_hot = False)
m = RandomForestClassifier(n_estimators = 100, max_nodes = 1000)
m.fit(X, Y, batch_size = 10000, display_step = 10)
print("Compute the accuracy on train data:")
print(m.evaluate(X, Y, tflearn.accuracy_op))
print("Compute the accuracy on test set:")
print(m.evaluate(testX, testY, tflearn.accuracy_op))
print("Digits for test images id 0 to 5:")
print(m.predict(testX[:5]))
print("True digits:")
print(testY[:5])
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