Gahow Wang b4bb426d48 docs: run v6 — FineWeb-edu graduation (val 3.07, new distribution)
第一版脱离 TinyStories:纯 FineWeb-edu 真实网页文本(2.255B 语料),架构同
v4/v5(dim768/18L, core 127.43M),8 卡 DDP bf16,2.29B tok/1.02ep,~1.9h
@218K tok/s。train 11.03→3.14,best/final FineWeb val 3.0652。

方法论:FineWeb val(3.07) 与 v0–v5 的 TinyStories val(~1.1) 不可比——真实
网页熵高,~3.0 是预期非回退;判据是采样质量 + transfer eval。

- 新增 docs/runs/06-v6-fineweb-edu-dim768.md:数据管线(scripts/fineweb_to_txt.py)
  / 架构(同 v4/v5,隔离数据变量) / 超参 / 结果(val 单调降无走平=未饱和) /
  方法论说明 / transfer eval(v6→TinyStories val 2.75 vs v5 native 1.11,纯通用
  数据对窄分布有代价) / v5-vs-v6 同提示词采样对比(v6 写真实说明文 vs v5 一律
  掉进小故事)
- README 对比表加 v6 行(val 单独标注分布) + 换轴说明 + v7 提案
- evolution.md scaling 表 v6 行定稿 + 数据轴 TinyStories→FineWeb-edu 毕业说明

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-16 22:21:43 +08:00
2026-06-15 17:14:56 +08:00

xtrain

A from-scratch Rust + CUDA LLM training engine — the sibling of xserv (the inference side). GPU-first.

The goal is to learn the full training-systems stack by hand: autograd / backward passes / optimizers (AdamW) / the training loop / distributed logic. Heavy lifting is borrowed where it makes sense (GEMM → cuBLAS after a hand-written version, multi-GPU comms → NCCL, tokenizer → reused from xserv), but the core is written from scratch. The target architecture is a tiny modern transformer (RoPE + RMSNorm + SwiGLU, ~130M params) whose forward aligns with xserv's Qwen3, so the backward passes map one-to-one onto xserv's existing forward kernels and trained weights can flow back into xserv.

Status

Bootstrapping (P0). This repo currently contains only the project skeleton and a working Rust↔CUDA build chain, verified by a trivial vector-add CUDA kernel.

Layout

xtrain/
├── Cargo.toml              # workspace
├── csrc/                   # CUDA sources (.cu)
│   └── test/vecadd.cu      # trivial element-wise vector-add (smoke test)
└── crates/
    └── xtrain-cuda/        # CUDA Runtime FFI + build.rs (nvcc → sm_120)
        ├── build.rs        # compiles csrc/*.cu via the `cc` crate, links cudart
        ├── src/            # ffi / error / device / memory
        └── tests/          # vecadd smoke test

The build mirrors xserv's approach: build.rs invokes nvcc (via the cc crate) to compile csrc/*.cu targeting sm_120 (RTX 5090) and links them into the Rust crate over hand-written extern "C" FFI.

Building & testing

CUDA compilation and execution happen on a GPU box (dash5, 8× RTX 5090, sm_120):

export PATH=/usr/local/cuda/bin:$HOME/.cargo/bin:$PATH
cargo build
cargo test -p xtrain-cuda -- --nocapture   # runs the vecadd smoke test

On a machine without nvcc/GPU, build.rs detects the missing toolchain, skips CUDA compilation, and sets a no_cuda cfg — so host-side cargo check still works (the GPU smoke test is compiled out).

Description
No description provided
Readme 3.1 MiB
Languages
Rust 87.6%
Cuda 8.7%
Python 2.2%
Shell 1.5%