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Update for 1.4.2rc1 (#2441)
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update for release 1.4.2rc1
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yunchu authored Aug 21, 2023
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12 changes: 11 additions & 1 deletion CHANGELOG.md
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All notable changes to this project will be documented in this file.

## \[v1.4.2\]

### Enhancements

- Add model category attributes to model template (<https://github.com/openvinotoolkit/training_extensions/pull/2439>)

### Bug fixes

- Add workaround for the incorrect meta info M-RCNN (used for XAI) (<https://github.com/openvinotoolkit/training_extensions/pull/2437>)

## \[v1.4.1\]

### Enhancements
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- Enhance `find` command to find configurations of supported tasks / algorithms / models / backbones
- Introduce `build` command to customize task or model configurations in isolated workspace
- Auto-config feature to automatically select the right algorithm and default model for the `train` & `build` command by detecting the task type of given input dataset
- Improve [documentation](https://openvinotoolkit.github.io/training_extensions/1.4.1/guide/get_started/introduction.html)
- Improve [documentation](https://openvinotoolkit.github.io/training_extensions/1.0.0/guide/get_started/introduction.html)
- Improve training performance by introducing enhanced loss for the few-shot transfer

### Bug fixes
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14 changes: 7 additions & 7 deletions README.md
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---

[Key Features](#key-features)
[Installation](https://openvinotoolkit.github.io/training_extensions/1.4.1/guide/get_started/installation.html)
[Documentation](https://openvinotoolkit.github.io/training_extensions/1.4.1/index.html)
[Installation](https://openvinotoolkit.github.io/training_extensions/1.4.2/guide/get_started/installation.html)
[Documentation](https://openvinotoolkit.github.io/training_extensions/1.4.2/index.html)
[License](#license)

[![PyPI](https://img.shields.io/pypi/v/otx)](https://pypi.org/project/otx)
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- **Action recognition** including action classification and detection
- **Anomaly recognition** tasks including anomaly classification, detection and segmentation

OpenVINO™ Training Extensions supports the [following learning methods](https://openvinotoolkit.github.io/training_extensions/1.4.1/guide/explanation/algorithms/index.html):
OpenVINO™ Training Extensions supports the [following learning methods](https://openvinotoolkit.github.io/training_extensions/1.4.2/guide/explanation/algorithms/index.html):

- **Supervised**, incremental training, which includes class incremental scenario and contrastive learning for classification and semantic segmentation tasks
- **Semi-supervised learning**
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- **Distributed training** to accelerate the training process when you have multiple GPUs
- **Half-precision training** to save GPUs memory and use larger batch sizes
- Integrated, efficient [hyper-parameter optimization module (HPO)](https://openvinotoolkit.github.io/training_extensions/1.4.1/guide/explanation/additional_features/hpo.html). Through dataset proxy and built-in hyper-parameter optimizer, you can get much faster hyper-parameter optimization compared to other off-the-shelf tools. The hyperparameter optimization is dynamically scheduled based on your resource budget.
- Integrated, efficient [hyper-parameter optimization module (HPO)](https://openvinotoolkit.github.io/training_extensions/1.4.2/guide/explanation/additional_features/hpo.html). Through dataset proxy and built-in hyper-parameter optimizer, you can get much faster hyper-parameter optimization compared to other off-the-shelf tools. The hyperparameter optimization is dynamically scheduled based on your resource budget.
- OpenVINO™ Training Extensions uses [Datumaro](https://openvinotoolkit.github.io/datumaro/v1.4.1/index.html) as the backend to hadle datasets. Thanks to that, OpenVINO™ Training Extensions supports the most common academic field dataset formats for each task. We constantly working to extend supported formats to give more freedom of datasets format choice.
- [Auto-configuration functionality](https://openvinotoolkit.github.io/training_extensions/1.4.1/guide/explanation/additional_features/auto_configuration.html). OpenVINO™ Training Extensions analyzes provided dataset and selects the proper task and model template to provide the best accuracy/speed trade-off. It will also make a random auto-split of your dataset if there is no validation set provided.
- [Auto-configuration functionality](https://openvinotoolkit.github.io/training_extensions/1.4.2/guide/explanation/additional_features/auto_configuration.html). OpenVINO™ Training Extensions analyzes provided dataset and selects the proper task and model template to provide the best accuracy/speed trade-off. It will also make a random auto-split of your dataset if there is no validation set provided.

---

## Getting Started

### Installation

Please refer to the [installation guide](https://openvinotoolkit.github.io/training_extensions/1.4.1/guide/get_started/installation.html).
Please refer to the [installation guide](https://openvinotoolkit.github.io/training_extensions/1.4.2/guide/get_started/installation.html).

Note: Python 3.8 and 3.9 were tested, along with Ubuntu 18.04 and 20.04.

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- `otx demo` allows one to apply a trained model on the custom data or the online footage from a web camera and see how it will work in a real-life scenario.
- `otx explain` runs explain algorithm on the provided data and outputs images with the saliency maps to show how your model makes predictions.

You can find more details with examples in the [CLI command intro](https://openvinotoolkit.github.io/training_extensions/1.4.1/guide/get_started/cli_commands.html).
You can find more details with examples in the [CLI command intro](https://openvinotoolkit.github.io/training_extensions/1.4.2/guide/get_started/cli_commands.html).

---

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project = 'OpenVINO™ Training Extensions'
copyright = '2023, OpenVINO™ Training Extensions Contributors'
author = 'OpenVINO™ Training Extensions Contributors'
release = '1.4.1'
release = '1.4.2'

# -- General configuration --------------------------------------------------- #

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2 changes: 1 addition & 1 deletion src/otx/__init__.py
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# Copyright (C) 2021-2023 Intel Corporation
# SPDX-License-Identifier: Apache-2.0

__version__ = "1.4.1"
__version__ = "1.4.2rc1"
# NOTE: Sync w/ src/otx/api/usecases/exportable_code/demo/requirements.txt on release
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openvino==2023.0
openvino-model-api==0.1.3
otx==1.4.1
otx==1.4.2rc1
numpy>=1.21.0,<=1.23.5 # np.bool was removed in 1.24.0 which was used in openvino runtime

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