加载头像

About

MathematicsInterpretabilityPyTorch
avatar
LLMsExperimentsWriting

I study mathematics at PKU, follow large-model interpretability, and keep notes while learning how to think in public.

Hello, nice to meet you 👋
I'm Justin Wu
I work on large-model interpretability, mathematical reasoning, and evidence-driven project work.
Site Thesis

A portfolio for
interpretability and voice
mechanismsreasoningevidence narrative

Interpretability. Evidence. Reasoning.

Research Toolkit
What I Work With
Python
PyTorch
Hugging Face
Jupyter
NumPy
pandas
scikit-learn
Plotly
LaTeX
GitHub
Markdown
Docker
Linux
OpenAI
arXiv
VS Code
Python
PyTorch
Hugging Face
Jupyter
NumPy
pandas
scikit-learn
Plotly
LaTeX
GitHub
Markdown
Docker
Linux
OpenAI
arXiv
VS Code
Python
Python
PyTorch
PyTorch
Hugging Face
Hugging Face
Jupyter
Jupyter
NumPy
NumPy
pandas
pandas
scikit-learn
scikit-learn
Plotly
Plotly
LaTeX
LaTeX
GitHub
GitHub
Markdown
Markdown
Docker
Docker
Linux
Linux
OpenAI
OpenAI
arXiv
arXiv
VS Code
VS Code
...
Academic Thread
An Interpretability Story in Progress
Research focus on large-model interpretability and mathematical reasoning
Mathematics student at Peking University
CMO Gold Medal and Lingjun Linghang Scholarship
Building research taste through coursework, attribution, mechanisms, and careful baselines
Studying from Beijing
PKU year 2
Focus LLM interpretability
Home base PKU SMS
Personality
Justin Wu
ENTJ
Learn more about 16personalities at Justin Wu
Personality
Selfie
Texas Hold'em
Probability under incomplete information
Ranges, pot odds, table image, and the discipline to fold
Project Shelf
Course reports, challenges, and independent builds
Source-only schedule transfer
Grokking harness
Math text attribution
Causal Transformer
MultiagentFinal
Tuvalon agent platform
Uncle Ducky

How I Am Learning To Do Research

I am a PKU mathematics student trying to turn the behavior of large models into evidence I can actually inspect.

Right now, the question that keeps pulling me back is large-model interpretability, especially mathematical reasoning. When a model reaches an answer, what is really carrying the work: a representation, a circuit-like path, a training signal, or a shortcut that only looks convincing from the outside? I care less about making a fluent story after the fact than about finding handles that survive ablation, attribution, and patient counterexamples.

Most of my work so far is project-shaped rather than paper-shaped: course reports, challenge entries, small agent systems, and tools I built while teaching or helping others build. I keep that boundary visible because it is part of how I am learning research taste. I want this site to show the making of questions: where an idea came from, what evidence I trusted, what I had to revise, and where the claim should still stay modest.

The personal side is not decoration to me. I play Texas Hold'em for the discipline of incomplete information, travel with a camera because places change how I notice structure, and write because a good research life also needs a voice. The formal record is still at /cv/; this page is closer to the person learning how to make that record mean something.

引用到评论
随便逛逛博客分类文章标签
复制地址关闭热评深色模式轉為繁體