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docs/大语言与深度生成模型/CS194.en.md
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docs/大语言与深度生成模型/CS194.en.md
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# UC Berkeley CS 194/294-267: Understanding Large Language Models: Foundations and Safety
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## Course Introduction
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- **University**: UC Berkeley
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- **Prerequisites**: CS 182/282A Deep Neural Networks or equivalent, with hands-on deep learning experience.
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- **Course Difficulty**: 🌟🌟🌟🌟🌟🌟
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- **Course Website**: [Understanding Large Language Models](http://rdi.berkeley.edu/understanding_llms/s24)
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"Understanding Large Language Models: Foundations and Safety" is a Spring 2024 course at UC Berkeley, co-taught by **Professor Dawn Song** and **Dan Hendrycks**, with **Yu Gai** as the GSI. This course explores the foundational principles, interpretability, scaling laws, and risks associated with large language models (LLMs) such as ChatGPT.
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The course provides a rigorous introduction to LLMs, discussing their emergence, limitations, and potential risks, as well as methods for safer and more beneficial applications. Topics covered include:
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- Foundations of LLMs
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- Interpretability
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- Scaling laws
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- Adversarial robustness
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- AI alignment and governance
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- Privacy, watermarking, and Trojans
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- Agency, emergence, reasoning, and mathematics
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- Evaluation and benchmarking
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docs/大语言与深度生成模型/CS194.md
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# UC Berkeley CS 194/294-267: Understanding Large Language Models: Foundations and Safety
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## 课程简介
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- **所属大学**:UC Berkeley
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- **先修要求**:CS 182/282A 深度神经网络课程或等效课程,并具有深度学习的实际操作经验。
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- **课程难度**:🌟🌟🌟🌟🌟🌟
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- **课程网站**:<http://rdi.berkeley.edu/understanding_llms/s24>
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《理解大型语言模型:基础与安全》是 UC Berkeley 在 2024 年春季开设的一门课程,由 **Dawn Song 教授** 和 **Dan Hendrycks** 联合授课,助教为 **Yu Gai**。本课程重点探讨大型语言模型(如 ChatGPT)的基础原理、可解释性、扩展定律以及相关风险。
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课程内容包括:
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- 大型语言模型的基础
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- 可解释性
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- 扩展定律
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- 对抗鲁棒性
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- 人工智能对齐与治理
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- 隐私、水印与木马
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- 代理性、涌现性、推理与数学
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- 评估与基准测试
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# Harvard's CS50: Introduction to AI with Python
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## Descriptions
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- Offered by: Harvard University
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- Prerequisites: Basic knowledge of probability theory and Python
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- Programming Languages: Python
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- Difficulty: 🌟🌟🌟
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- Class Hour: 30
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A very basic introductory AI course, what makes it stand out is the 12 well-designed programming assignments, all of which will use the learned knowledge to implement a simple game AI, such as using reinforcement learning to play Nim game, using max-min search with alpha-beta pruning to sweep mines, and so on. It's perfect for newbies to get started or bigwigs to relax.
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## Course Resources
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- Course Website: <https://cs50.harvard.edu/ai/2020/>
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- Recordings: <https://cs50.harvard.edu/ai/2020/>
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- Textbooks: No textbook is needed in this course.
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- Assignments: <https://cs50.harvard.edu/ai/2020/> with 12 programming labs of high quality mentioned above.
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## Personal Resources
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All the resources and assignments used by @PKUFlyingPig in this course are maintained in [PKUFlyingPig/cs50_ai - GitHub](https://github.com/PKUFlyingPig/cs50_ai).
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# CS324 - Large Language Models
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## 课程简介
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- 所属大学:Stanford
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- 先修要求:深度学习
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- 编程语言:Python
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- 课程难度:🌟🌟🌟🌟🌟
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- 预计学时:30 小时
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一门非常基础的 AI 入门课,让人眼前一亮的是 12 个设计精巧的编程作业,都会用学到的 AI 知识去实现一个简易的游戏 AI,比如用强化学习训练一个 Nim 游戏的 AI,用 alpha-beta 剪枝去扫雷等等,非常适合新手入门或者大佬休闲。
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## 课程资源
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- 课程网站:<https://stanford-cs324.github.io/winter2022/>
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