This is your work, valued

MA, USA

Ziming Liu

Elite
@KindXiaoming

Assistant Professor @ Tsinghua CollegeAI. Previously, Postdoc @ Stanford University, PhD @ MIT, BS @ Peking University

pykan. Kolmogorov Arnold Networks

16k

grow-crystals. Getting crystal-like representations with harmonic loss

195

BIMT. Brain-Inspired Modular Training (BIMT), a method for making neural networks more modular and interpretable.

177

Omnigrok. Omnigrok: Grokking Beyond Algorithmic Data

65

newton-kepler. Understand what physics/algorithms do transformers learn internally when trained on planetary motion

43

physics_of_skill_learning. We study toy models of skill learning.

34

schrodinger-pca. Schrodinger Principal Component Analysis

23

aipoincare. Counting the number of conservation laws from trajectory data

22

NNPhD-github. Code for "Machine-Learning Non-Conservative Dynamics for New-Physics Detection" (arXiv: 2106.00026)

14

KindXiaoming.github.io. website

11

QHMC. Quantum-inspired Hamiltonian Monte Carlo code

11

sid. discovering interpretable conservation laws from differential equations

9

aipoincare_2.0. AI Poincare 2.0

8

entropy-estimator. Jupyter Notebook

4

ml_hiddensym. Machine Learning hidden symmetries

4

modded-nanogpt. NanoGPT (124M) in 3 minutes

3

adam. analyze optimizer properties

3

stanford-tensorflow-tutorials. This repository contains code examples for the Stanford's course: TensorFlow for Deep Learning Research.

3

scaling-law-general. Jupyter Notebook

1

models. Models and examples built with TensorFlow

1

spatial_transformer_networks. Implementation of spatial transformer networks in keras 2.0 using tensorflow 1.0 as backend.

1

Expectation_Maximization. expectation maximization

1

Scaling-law-kerr. Jupyter Notebook

1

relu_network. Jupyter Notebook

1