# AI Security Research Resources ## Langchain Resources - [Tools, Learning, Notebooks, Bots, Agent examples, etc.](https://github.com/The-Art-of-Hacking/h4cker/blob/master/ai_research/LangChain/README.md) ## AI Security Best Practices and Tools - [High-Level AI Security Best Practices]() - [Homomorphic-Encryption]() - [AI Security Tools and Frameworks]() - [AI Secure Deployment Tips]() - [AI Secure Design Tips]() - [Threat Modeling]() ## AI Security Resources from Omar's Training Sessions - [Cybersecurity Learning Prompts](https://github.com/santosomar/chatgpt-cybersecurity-prompts) - [Networking Prompts](https://github.com/santosomar/chatgpt-networking-prompts) - [Programming Learning Prompts](https://github.com/santosomar/chatgpt-programming-prompts) ## AI Ethics and Privacy Resources - [AI Ethics and Privacy Resources](https://github.com/The-Art-of-Hacking/h4cker/tree/master/ai_research/ethics_privacy) ## Tools & Methods for Data Collection, Cleaning, and Analysis: - **Data Collection**: - APIs and SDKs - Wireless transmission ### Data Cleaning: 3. **Pandas**: - **Example**: Cleaning a dataset with missing values using Pandas before training a machine learning model. - **Relevant Link**: [Pandas Documentation](https://pandas.pydata.org/pandas-docs/stable/index.html) - **Usage in HAR and AI**: Pandas can be used to structure and clean sensor data, making it suitable for training AI models capable of recognizing complex patterns in human activity data. 4. **Sci-kit learn**: - **Example**: Using Sci-kit learn for feature selection and removing irrelevant features from a dataset. - **Relevant Link**: [Sci-kit learn Documentation](https://scikit-learn.org/stable/) - **Usage in HAR and AI**: Sci-kit learn offers various tools for data preprocessing, which is a vital step in preparing data for AI algorithms, enhancing the performance of the models in HAR applications. ### Data Analysis: 5. **TensorFlow**: - **Example**: Developing a deep learning model using TensorFlow to classify different activities based on sensor data. - **Relevant Link**: [TensorFlow Documentation](https://www.tensorflow.org/learn) - **Usage in HAR and AI**: TensorFlow provides a comprehensive platform for developing and training AI models capable of analyzing and recognizing patterns in human activity data. 6. **Keras**: - **Example**: Using Keras to create a convolutional neural network (CNN) for image recognition, an essential task in AI. - **Relevant Link**: [Keras Documentation](https://keras.io/getting_started/intro_to_keras_for_engineers/) - **Usage in HAR and AI**: Keras simplifies the process of building and optimizing neural networks, a crucial component in AI, to analyze human activity data more effectively and make predictions. ### Visualization and Further Analysis: 7. **Matplotlib**: - **Example**: Using Matplotlib to visualize the distribution of different activities within a dataset. - **Relevant Link**: [Matplotlib Documentation](https://matplotlib.org/stable/contents.html) - **Usage in HAR and AI**: Visualization of data is essential in AI to understand underlying patterns and trends in data, aiding in the better development and tuning of models for HAR. 8. **Seaborn**: - **Example**: Creating a heatmap using Seaborn to visualize the correlation between different features in a dataset. - **Relevant Link**: [Seaborn Documentation](https://seaborn.pydata.org/) - **Usage in HAR and AI**: Seaborn can enhance data visualization in AI, assisting in identifying relationships and patterns in data which can influence the development and performance of HAR models.