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# TensorFlow Lite operators that the Arm NN SDK supports

This reference guide provides a list of TensorFlow Lite operators the Arm NN SDK currently supports.

The Arm NN SDK TensorFlow Lite parser currently only supports uint8.

## Fully supported

The Arm NN SDK TensorFlow Lite parser currently supports the following operators:

* ADD

* AVERAGE_POOL_2D, Supported Fused Activation: RELU , RELU6 , TANH, NONE

* BATCH_TO_SPACE

* CONCATENATION, Supported Fused Activation: RELU , RELU6 , TANH, NONE

* CONV_2D, Supported Fused Activation: RELU , RELU6 , TANH, NONE

* DEPTHWISE_CONV_2D, Supported Fused Activation: RELU , RELU6 , TANH, NONE

* FULLY_CONNECTED, Supported Fused Activation: RELU , RELU6 , TANH, NONE

* LOGISTIC

* MAX_POOL_2D, Supported Fused Activation: RELU , RELU6 , TANH, NONE

* MAXIMUM

* MEAN

* MINIMUM

* MUL

* PAD

* RELU

* RELU6

* RESHAPE

* RESIZE_BILINEAR

* SOFTMAX

* SPACE_TO_BATCH

* SQUEEZE

* STRIDED_SLICE

* SUB

## Tested networks

Arm tested these operators with the following TensorFlow Lite neural network:

* [Quantized MobileNet](http://download.tensorflow.org/models/mobilenet_v1_2018_02_22/mobilenet_v1_1.0_224_quant.tgz)

More machine learning operators will be supported in future releases.