klotz: llm*

Bookmarks on this page are managed by an admin user.

0 bookmark(s) - Sort by: Date / Title ↑ / - Bookmarks from other users for this tag

  1. - Three Emergent Abilities for LLMs are In-Context Learning (ICL), Instruction Following & Step-By-Step Reasoning (CoT).
    - Key Practices related to LLMs are: Scaling, Training, Ability Eliciting, Alignment Tuning, Tools.
    - Adaption Of LLMs include: Instruction Tuning, Alignment Tuning, Memory-Efficient Model Adaptation, etc.
    - Prompt Engineering: In-Context Learning, Chain-Of-Thought, Planning.
    - ICL Prompt Engineering Implementations: KATE, EPR, SG-ICL, APE, Structured Prompting, GlobalE & LocalE.
    - CoT Prompt Engineering Implementations: Complex CoT, Auto-CoT, Selection-Inference, Self-consistency, DIVERSE, Rationale-augmented ensembles.
    - Planning Prompt Engineering Implementations: Least-to-most prompting, DECOMP, PS, Faithful CoT, PAL, HuggingGPT, AdaPlanner, TIP, RAP, ChatCoT, ReAct, Reflexion, Tree of Thoughts.
    2023-12-14 Tags: , by klotz
  2. The authors map the landscape of frameworks for abstracting interactions with and between large language models, and suggest two systems of organization for reasoning about the various approaches to, and philosophies of, LLM abstraction.
    2024-01-20 Tags: , , , , , by klotz
  3. free and paid courses available for learning about Artificial Intelligence (AI). It mentions courses from NVIDIA, Google Cloud Skills Boost program, Amazon's training center, OpenAI's partner DeepLearning.ai, edX, and Microsoft.
    2024-04-14 Tags: , , by klotz

Top of the page

First / Previous / Next / Last / Page 2 of 0 SemanticScuttle - klotz.me: Tags: llm

About - Propulsed by SemanticScuttle