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Make typesetting LaTeX as fast as handwriting through snippets, text expansion, and editor enhancements
OmX - Oh My codeX: Your codex is not alone. Add hooks, agent teams, HUDs, and so much more.
Orchestrate coding agents remotely from your phone, desktop and CLI
This tutorial is a basic guide to understanding the Zig-Zag Sampling method. This document is released with the aim of diffusion and share of knowledge.
LaTeX style file for the Journal of Machine Learning Research
Optax is a gradient processing and optimization library for JAX.
code for "Adjoint Sampling: Highly Scalable Diffusion Samplers via Adjoint Matching"
code for adjoint-based diffusion samplers
Convert Machine Learning Code Between Frameworks
Code for "A-NICE-MC: Adversarial Training for MCMC"
Tutorials and sampling algorithm comparisons
Performance testing tools for use with CmdStan
LaTeX support for Typst, powered by Rust and WASM. https://mitex-rs.github.io/mitex/
Curated list of awesome advice, tips, and resources to prepare for PhD/grad school.
A LaTeX template for NUS Masters/PhD theses
LaTeX template for Ph.D theis of NUS, mainly for Faculty of Science
A LaTeX template for thesis of the National University of Singapore (NUS)
MrBayes is a program for Bayesian inference and model choice across a wide range of phylogenetic and evolutionary models. For documentation and downloading the program, please see the home page:
Bayesian Evolutionary Analysis Sampling Trees
The Python ensemble sampling toolkit for affine-invariant MCMC
Beginner, advanced, expert level Rust training material
🔬 Harness Vibe Research with Self-evolving AI Scientists
Sub-millisecond VM sandboxes for AI agents via copy-on-write forking