* Update version of third-party dependence pillow from more than 6.2.0 to more than 7.2.0. ([!329](https://gitee.com/mindspore/mindarmour/pulls/329))
* Update version of third-party dependence pillow from more than or equal to 6.2.0 to more than or equal to 7.2.0. ([!329](https://gitee.com/mindspore/mindarmour/pulls/329))
### Contributors
@@ -22,314 +20,4 @@ Thanks goes to these wonderful people:
Liu Zhidan, Zhang Shukun, Jin Xiulang, Liu Liu.
# MindArmour 1.6.0
## MindArmour 1.6.0 Release Notes
### Major Features and Improvements
#### Reliability
* [BETA] Data Drift Detection for Image Data
* [BETA] Model Fault Injection
### Bug fixes
### Contributors
Thanks goes to these wonderful people:
Wu Xiaoyu,Feng Zhenye, Liu Zhidan, Jin Xiulang, Liu Luobin, Liu Liu, Zhang Shukun
# MindArmour 1.5.0
## MindArmour 1.5.0 Release Notes
### Major Features and Improvements
#### Reliability
* [BETA] Reconstruct AI Fuzz and Neuron Coverage Metrics
### Bug fixes
### Contributors
Thanks goes to these wonderful people:
Wu Xiaoyu,Liu Zhidan, Jin Xiulang, Liu Luobin, Liu Liu
# MindArmour 1.3.0-rc1
## MindArmour 1.3.0 Release Notes
### Major Features and Improvements
#### Privacy
* [STABLE] Data Drift Detection for Time Series Data
### Bug fixes
* [BUGFIX] Optimization of API description.
### Contributors
Thanks goes to these wonderful people:
Wu Xiaoyu,Liu Zhidan, Jin Xiulang, Liu Luobin, Liu Liu
* [STABLE] Model Inversion. Reverse analysis technology of privacy information
### API Change
#### Backwards Incompatible Change
##### C++ API
[Modify] ...
[Add] ...
[Delete] ...
##### Java API
[Add] ...
#### Deprecations
##### C++ API
##### Java API
### Bug fixes
[BUGFIX] ...
### Contributors
Thanks goes to these wonderful people:
han.yin
# MindArmour 1.1.0 Release Notes
## MindArmour
### Major Features and Improvements
* [STABLE] Attack capability of the Object Detection models.
* Some white-box adversarial attacks, such as [iterative] gradient method and DeepFool now can be applied to Object Detection models.
* Some black-box adversarial attacks, such as PSO and Genetic Attack now can be applied to Object Detection models.
### Backwards Incompatible Change
#### Python API
#### C++ API
### Deprecations
#### Python API
#### C++ API
### New Features
#### Python API
#### C++ API
### Improvements
#### Python API
#### C++ API
### Bug fixes
#### Python API
#### C++ API
## Contributors
Thanks goes to these wonderful people:
Xiulang Jin, Zhidan Liu, Luobin Liu and Liu Liu.
Contributions of any kind are welcome!
# Release 1.0.0
## Major Features and Improvements
### Differential privacy model training
* Privacy leakage evaluation.
* Parameter verification enhancement.
* Support parallel computing.
### Model robustness evaluation
* Fuzzing based Adversarial Robustness testing.
* Parameter verification enhancement.
### Other
* Api & Directory Structure
* Adjusted the directory structure based on different features.
* Optimize the structure of examples.
## Bugfixes
## Contributors
Thanks goes to these wonderful people:
Liu Liu, Xiulang Jin, Zhidan Liu and Luobin Liu.
Contributions of any kind are welcome!
# Release 0.7.0-beta
## Major Features and Improvements
### Differential privacy model training
* Privacy leakage evaluation.
* Using Membership inference to evaluate the effectiveness of privacy-preserving techniques for AI.
### Model robustness evaluation
* Fuzzing based Adversarial Robustness testing.
* Coverage-guided test set generation.
## Bugfixes
## Contributors
Thanks goes to these wonderful people:
Liu Liu, Xiulang Jin, Zhidan Liu, Luobin Liu and Huanhuan Zheng.
Contributions of any kind are welcome!
# Release 0.6.0-beta
## Major Features and Improvements
### Differential privacy model training
* Optimizers with differential privacy
* Differential privacy model training now supports some new policies.
* Adaptive Norm policy is supported.
* Adaptive Noise policy with exponential decrease is supported.
* Differential Privacy Training Monitor
* A new monitor is supported using zCDP as its asymptotic budget estimator.
## Bugfixes
## Contributors
Thanks goes to these wonderful people:
Liu Liu, Huanhuan Zheng, XiuLang jin, Zhidan liu.
Contributions of any kind are welcome.
# Release 0.5.0-beta
## Major Features and Improvements
### Differential privacy model training
* Optimizers with differential privacy
* Differential privacy model training now supports both Pynative mode and graph mode.
* Graph mode is recommended for its performance.
## Bugfixes
## Contributors
Thanks goes to these wonderful people:
Liu Liu, Huanhuan Zheng, Xiulang Jin, Zhidan Liu.
Contributions of any kind are welcome!
# Release 0.3.0-alpha
## Major Features and Improvements
### Differential Privacy Model Training
Differential Privacy is coming! By using Differential-Privacy-Optimizers, one can still train a model as usual, while the trained model preserved the privacy of training dataset, satisfying the definition of
differential privacy with proper budget.
* Optimizers with Differential Privacy([PR23](https://gitee.com/mindspore/mindarmour/pulls/23), [PR24](https://gitee.com/mindspore/mindarmour/pulls/24))
* Some common optimizers now have a differential privacy version (SGD/Adam). We are adding more.
* Automatically and adaptively add Gaussian Noise during training to achieve Differential Privacy.
* Automatically stop training when Differential Privacy Budget exceeds.