commit | 4322d36a2d6d9fca16a661019b8c5dac0c1e81ec | [log] [tgz] |
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author | Matthew Bentham <matthew.bentham@arm.com> | Mon Oct 29 17:39:49 2018 +0000 |
committer | Matthew Bentham <matthew.bentham@arm.com> | Mon Oct 29 17:41:53 2018 +0000 |
tree | 72fdebd79624f268707cc640d1f153b5d2341bd1 | |
parent | 382a91d5029e83002bda4ab006f9c73340d679fe [diff] |
IVGCVSW-2029 Tweak results handling for batch size 2 test When looking for the top probability, use the 'first' result not the 'second'. This avoids an issue where for batched tests the classification index was reported wrongly. Still doesn't correctly handle multiple results with the exact probabibility, or batched testing, but it's slightly more correct than before. Change-Id: I57d33552754667613e222d9d2037e12c87a96854
For more information about Arm NN, see: https://developer.arm.com/products/processors/machine-learning/arm-nn
There is a getting started guide here using TensorFlow: https://developer.arm.com/technologies/machine-learning-on-arm/developer-material/how-to-guides/configuring-the-arm-nn-sdk-build-environment-for-tensorflow
There is a getting started guide here using TensorFlow Lite: TensorFlow Lite Support
There is a getting started guide here using Caffe: https://developer.arm.com/technologies/machine-learning-on-arm/developer-material/how-to-guides/configuring-the-arm-nn-sdk-build-environment-for-caffe
There is a getting started guide here using ONNX: ONNX Support
There is a guide for backend development: Backend development guide
Arm tests the build system of Arm NN with the following build environments:
Arm NN is written using portable C++14 and the build system uses CMake so it is possible to build for a wide variety of target platforms, from a wide variety of host environments.
The armnn/tests directory contains tests used during ArmNN development. Many of them depend on third-party IP, model protobufs and image files not distributed with ArmNN. The dependencies of some of the tests are available freely on the Internet, for those who wish to experiment.
The ‘ExecuteNetwork’ program, in armnn/tests/ExecuteNetwork, has no additional dependencies beyond those required by ArmNN and the model parsers. It takes any model and any input tensor, and simply prints out the output tensor. Run with no arguments to see command-line help.
The ‘armnn/samples’ directory contains SimpleSample.cpp. A very basic example of the ArmNN SDK API in use.
Arm NN is provided under the MIT license. See LICENSE for more information. Contributions to this project are accepted under the same license.
Individual files contain the following tag instead of the full license text.
SPDX-License-Identifier: MIT
This enables machine processing of license information based on the SPDX License Identifiers that are available here: http://spdx.org/licenses/