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honglu2875/README.md

I currently work with poolside on a variety of stuff. In the free time, I also do some hobby projects.

============

Some things I have written or participated in the past:

Aria

https://github.com/EleutherAI/aria Wanna make some music?

Thing

https://github.com/honglu2875/thing Catch your tensors quietly in your running codes and send them to your python console for inspection.

Mistral model in JAX

https://github.com/honglu2875/mistral_jax You know what it is if you are familiar with OSS LLM ;)

YaRN, a context length extension of RoPE

Together with Bowen, Jeff and Enrico, we posted a preprint regarding how to extend the context window of models using RoPE embedding (such as Llama families). Enrico trained a few amazing models such as this Llama-2 128k-context. It is quite amazing. I tried to feed it with the whole Pride and Prejudice and did manual Q&A of the novel. It did great! Bowen tried Sherlock Holmes. It wasn't perfect but it was definitely working!

Our research (i.e, hacky) implementation: https://github.com/jquesnelle/yarn.

an IR that generates pytorch and JAX codes (WIP)

Tired of jumping back and forth between PyTorch and JAX? I'm making an amateur shot here by starting with an Intermediate Representation as a graph and performs codegen on PyTorch and JAX. Still a lot of things to sort out but a basic version is starting to work... Still not usable (will remove it once I'm happy by myself)

LLM foundation model at Multi Tech Inc.

(models and codes are not available for now)

Trained multiple 3B-13B foundation model using various datasets totalling 1.5 trillion tokens. Focused on the ability of code synthesis and financial document generation/retrieval. Long context length (8192). FSDP with 640 A-100.

OpenELM (Evolution through Large Models)

https://github.com/CarperAI/OpenELM

This is a work in progress with Carper AI to replicate the paper Evolution through Large Models in open-source domain.

ELM makes use of LLM's capacity for code generations and mutations to perform evolution methods such as MAP-Elites. In turn, it uses the generated data and RL finetuning to further align LLM with the given task. We have implemented the evolution and LM pipelines except for the RL finetuning components. We use models finetuned on Github commits, and we will also gradually release them.

Architext

https://github.com/CarperAI/ArchitextRL

Helping with the integration of Architext with ELM.

Architext is a Carper AI project that makes use of Language models to generate presentations of architecture designs.

Reinforcement learning of Hironaka's polyhedra game

https://github.com/honglu2875/hironaka

Human intuition favors spaces that are locally modelled by products of coordinate lines (locally $\mathbb R^n$). They are called smooth spaces, manifolds, locally Euclidean spaces, etc. depending on your math background. But there are many other spaces that cannot be described like that, and we call them singularities. A common way to handle them is to convert singularities back to the smooth points: resolution of singularities. The existence of resolution of singularites in characteristic $0$ was a Fields medal result by Hironaka, as this process has been deeply weaved into algebraic geometry and influenced other branches of geometry.

An old but overlooked angle about this is that: Resolving singularities can be a Markov Decision Process. With the rise of modern deep reinforcement learning, we present the repo that implements multiple deep RL methods (gym+stablebaseline3; DQN with PyTorch DDP + MAP-Elites; AlphaZero using JAX) applied on resolution of singularities.

some side projects

https://github.com/honglu2875/fmlang_env (planned to do "RL with interpreter feedback")

https://github.com/honglu2875/Bookit-proof-of-concept.git (was learning Kotlin with a hands-on project)

Pinned Loading

  1. hironaka hironaka Public

    A utility package for Hironaka game of local resolution of singularities

    Python 6 2

  2. hironaka-experiments hironaka-experiments Public

    Document the experiments of hironaka project

    Python

  3. CarperAI/OpenELM CarperAI/OpenELM Public

    Evolution Through Large Models

    Python 703 87

  4. DLR-RM/stable-baselines3 DLR-RM/stable-baselines3 Public

    PyTorch version of Stable Baselines, reliable implementations of reinforcement learning algorithms.

    Python 9.4k 1.7k