Difference between revisions of "Increasing AI Intelligence"

From GISAXS
Jump to: navigation, search
(Created page with "=Reviews= * 2024-12: [https://arxiv.org/abs/2412.11936 A Survey of Mathematical Reasoning in the Era of Multimodal Large Language Model: Benchmark, Method & Challenges] =Prom...")
 
(Proactive Search)
Line 4: Line 4:
 
=Prompt Engineering=
 
=Prompt Engineering=
 
* 2024-11: [https://arxiv.org/abs/2411.05778 LLMs as Method Actors: A Model for Prompt Engineering and Architecture]
 
* 2024-11: [https://arxiv.org/abs/2411.05778 LLMs as Method Actors: A Model for Prompt Engineering and Architecture]
 +
 +
=Fine Tuning=
 +
* 2024-12: [https://arxiv.org/abs/2412.15287 Inference-Aware Fine-Tuning for Best-of-N Sampling in Large Language Models]
  
 
=Proactive Search=
 
=Proactive Search=

Revision as of 11:26, 30 December 2024

Reviews

Prompt Engineering

Fine Tuning

Proactive Search

Compute expended after training, but before inference.

Training Data (Data Refinement, Synthetic Data)

Generate consistent plans/thoughts

  • 2024-08: Mutual Reasoning Makes Smaller LLMs Stronger Problem-Solvers (code)
    • (Microsoft) rStar is a self-play mutual reasoning approach. A small model adds to MCTS using some defined reasoning heuristics. Mutually consistent trajectories can be emphasized.
  • 2024-09: Self-Harmonized Chain of Thought
    • Produce refined chain-of-thought style solutions/prompts for diverse problems. Given a large set of problems/questions, first aggregated semantically, then apply zero-shot chain-of-thought to each problem. Then cross-pollinate between proposed solutions to similar problems, looking for refined and generalize solutions.
  • 2024-11: LLMs Do Not Think Step-by-step In Implicit Reasoning
    • They argue that models trained to reproduce CoT outputs do not, internally, perform stepwise reasoning (with intermediate representations); this suggests that explicit CoT could be superior to implicit CoT.

Sampling

Automated prompt generation

Distill inference-time-compute into model

CoT reasoning model

Scaling

Inference Time Compute

Methods

Review

In context learning (ICL), search, and other inference-time methods

Inference-time Sampling

Inference-time Gradient

Self-prompting

Retrieval or Memory

In-context thought

Naive multi-LLM (verification, majority voting, best-of-N, etc.)

Multi-LLM (multiple comparisons, branching, etc.)

Iteration (e.g. neural-like layered blocks)

Iterative reasoning via graphs

Monte Carlo Tree Search (MCTS)

Other Search

Chain-of-Thought Reasoning

Scaling

Theory

Expending compute works

Compute.png

Code for Inference-time Compute

  • optillm: Inference proxy which implements state-of-the-art techniques to improve accuracy and performance of LLMs (improve reasoning over coding, logical and mathematical queries)

Memory

Tool Use

Multi-agent Effort (and Emergent Intelligence)

ML-like Optimization of LLM Setup