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Source channel @githubtrending · Post #14909 · Jul 3

#other#agent#llm#rag Happy-LLM is a free, open-source learning project that helps you deeply understand large language models (LLMs) from basics to advanced training and applications. It teaches you key concepts like NLP, Transformer architecture, pretraining, and how to build and train your own LLaMA2 model step-by-step. You also learn practical skills like fine-tuning and using cutting-edge techniques such as Retrieval-Augmented Generation (RAG) and intelligent agents. This project is ideal if you know some Python and deep learning, and it offers both theory and hands-on code to help you master LLM development and apply it in real-world AI tasks. This can boost your skills and confidence in AI model building and research. https://github.com/datawhalechina/happy-llm

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AI & Law

@ai_and_law · Post #428 · 10/25/2024, 07:04 AM

NYDFS Issues Guidance on AI-Related Cybersecurity Risks The New York Department of Financial Services (NYDFS) released guidance highlighting the rising cybersecurity risks associated with the use of artificial intelligence by its licensees, including insurers and virtual currency businesses. The guidance focuses on threats such as AI-enabled social engineering, where deepfakes and other AI tools are used to obtain sensitive information and bypass biometric security measures. It also addresses the growing concern over AI-enhanced cyberattacks that increase the potency, scale, and speed of threats, as well as the risk of exposure or theft of vast amounts of nonpublic data. The guidance emphasizes the critical need for organizations to integrate AI-specific considerations into their existing risk assessments, third-party vendor management, and data management practices. While the NYDFS guidance is aimed at businesses under its regulation, the outlined risks and mitigation strategies are applicable to any organization navigating the complexities of AI-related cybersecurity. With the proliferation of AI technology, businesses must prioritize not only the protection of personally identifiable information but also safeguard confidential business information like trade secrets, which can have a more significant impact if compromised. The guidance reinforces the importance of robust due diligence when working with third-party vendors that use or provide AI solutions, as well as the necessity of maintaining effective data inventory and minimization practices. #Cybersecurity#AICompliance#NYDFS#RiskManagement#AIRegulation