GitHub – Karpathy/LLM101n: LLM101n: Let's Build a Storyteller
The GitHub repository "LLM101n: Let's build a Storyteller" offers a course on creating a Storyteller AI Large Language Model using Python, C, and CUDA. It caters to beginners, covering language modeling, deployment, programming, data types, deep learning, and neural nets. Additional chapters and appendices are available for further exploration.
Read original articleThe GitHub repository "LLM101n: Let's build a Storyteller" hosts a course centered around creating a Storyteller AI Large Language Model (LLM) using Python, C, and CUDA. The course is designed for individuals with limited computer science background and covers topics such as language modeling, deployment, programming languages, data types, deep learning frameworks, and neural net architecture. It includes chapters on various aspects of building the LLM and provides appendices for additional information. If you are interested in delving into this course or accessing particular chapters, feel free to reach out for more details.
Related
We no longer use LangChain for building our AI agents
Octomind switched from LangChain due to its inflexibility and excessive abstractions, opting for modular building blocks instead. This change simplified their codebase, increased productivity, and emphasized the importance of well-designed abstractions in AI development.
Artificial Intelligence: A Modern Approach, 4th ed
The book "Artificial Intelligence: A Modern Approach" by Stuart Russell and Peter Norvig is a widely adopted textbook covering various AI topics, including agents, problem-solving, machine learning, ethics, and practical applications.
SceneCraft: An LLM Agent for Synthesizing 3D Scenes as Blender Code
SceneCraft is an advanced Large Language Model (LLM) Agent converting text to 3D scenes in Blender. It excels in spatial planning, asset arrangement, and scene refinement, surpassing other LLM agents in performance and human feedback.
Lessons About the Human Mind from Artificial Intelligence
In 2022, a Google engineer claimed AI chatbot LaMDA was self-aware, but further scrutiny revealed it mimicked human-like responses without true understanding. This incident underscores AI limitations in comprehension and originality.
Francois Chollet – LLMs won't lead to AGI – $1M Prize to find solution [video]
The video discusses limitations of large language models in AI, emphasizing genuine understanding and problem-solving skills. A prize incentivizes AI systems showcasing these abilities. Adaptability and knowledge acquisition are highlighted as crucial for true intelligence.
https://deepdreams.stavros.io/
Mine includes the source.
I can’t keep motivated by myself. A group would be really fun. We could discuss each video and keep a timeline.
Related
We no longer use LangChain for building our AI agents
Octomind switched from LangChain due to its inflexibility and excessive abstractions, opting for modular building blocks instead. This change simplified their codebase, increased productivity, and emphasized the importance of well-designed abstractions in AI development.
Artificial Intelligence: A Modern Approach, 4th ed
The book "Artificial Intelligence: A Modern Approach" by Stuart Russell and Peter Norvig is a widely adopted textbook covering various AI topics, including agents, problem-solving, machine learning, ethics, and practical applications.
SceneCraft: An LLM Agent for Synthesizing 3D Scenes as Blender Code
SceneCraft is an advanced Large Language Model (LLM) Agent converting text to 3D scenes in Blender. It excels in spatial planning, asset arrangement, and scene refinement, surpassing other LLM agents in performance and human feedback.
Lessons About the Human Mind from Artificial Intelligence
In 2022, a Google engineer claimed AI chatbot LaMDA was self-aware, but further scrutiny revealed it mimicked human-like responses without true understanding. This incident underscores AI limitations in comprehension and originality.
Francois Chollet – LLMs won't lead to AGI – $1M Prize to find solution [video]
The video discusses limitations of large language models in AI, emphasizing genuine understanding and problem-solving skills. A prize incentivizes AI systems showcasing these abilities. Adaptability and knowledge acquisition are highlighted as crucial for true intelligence.