12 Commits

Author SHA1 Message Date
Oql
63796374c1 [docs]: fix and add MiniMax-M2 tutorial images. (#1752) 2025-12-25 20:14:35 +08:00
ErvinXie
d8046e1bb4 Kt minimax (#1742)
[feat]: fp8 kernel and kt-cli support
2025-12-24 15:39:44 +08:00
Jiaqi Liao
57d14d22bc Refactor: restructure repository to focus on kt-kernel and KT-SFT modulesq recon (#1581)
* refactor: move legacy code to archive/ directory

  - Moved ktransformers, csrc, third_party, merge_tensors to archive/
  - Moved build scripts and configurations to archive/
  - Kept kt-kernel, KT-SFT, doc, and README files in root
  - Preserved complete git history for all moved files

* refactor: restructure repository to focus on kt-kernel and KT-SFT modules

* fix README

* fix README

* fix README

* fix README

* docs: add performance benchmarks to kt-kernel section

Add comprehensive performance data for kt-kernel to match KT-SFT's presentation:
- AMX kernel optimization: 21.3 TFLOPS (3.9× faster than PyTorch)
- Prefill phase: up to 20× speedup vs baseline
- Decode phase: up to 4× speedup
- NUMA optimization: up to 63% throughput improvement
- Multi-GPU (8×L20): 227.85 tokens/s total throughput with DeepSeek-R1 FP8

Source: https://lmsys.org/blog/2025-10-22-KTransformers/

This provides users with concrete performance metrics for both core modules,
making it easier to understand the capabilities of each component.

* refactor: improve kt-kernel performance data with specific hardware and models

Replace generic performance descriptions with concrete benchmarks:
- Specify exact hardware: 8×L20 GPU + Xeon Gold 6454S, Single/Dual-socket Xeon + AMX
- Include specific models: DeepSeek-R1-0528 (FP8), DeepSeek-V3 (671B)
- Show detailed metrics: total throughput, output throughput, concurrency details
- Match KT-SFT presentation style for consistency

This provides users with actionable performance data they can use to evaluate
hardware requirements and expected performance for their use cases.

* fix README

* docs: clean up performance table and improve formatting

* add pic for README

* refactor: simplify .gitmodules and backup legacy submodules

- Remove 7 legacy submodules from root .gitmodules (archive/third_party/*)
- Keep only 2 active submodules for kt-kernel (llama.cpp, pybind11)
- Backup complete .gitmodules to archive/.gitmodules
- Add documentation in archive/README.md for researchers who need legacy submodules

This reduces initial clone size by ~500MB and avoids downloading unused dependencies.

* refactor: move doc/ back to root directory

Keep documentation in root for easier access and maintenance.

* refactor: consolidate all images to doc/assets/

- Move kt-kernel/assets/heterogeneous_computing.png to doc/assets/
- Remove KT-SFT/assets/ (images already in doc/assets/)
- Update KT-SFT/README.md image references to ../doc/assets/
- Eliminates ~7.9MB image duplication
- Centralizes all documentation assets in one location

* fix pic path for README
2025-11-10 17:42:26 +08:00
JimmyPeilinLi
7b6ccc3f57 add the docs and update README for KSFT 2025-11-04 05:51:48 +00:00
qiyuxinlin
be4b27e841 update doc 2025-04-28 18:24:15 +00:00
Azure
ef89b1520b * Reorganize documentation/README
* Consolidate the installation section, as it's currently too cluttered
    * Move the Multi-GPU section to the top-level structure
    * Add a **detailed** tutorial on registering extra GPU memory with Marlin
2025-02-14 19:58:26 +00:00
Azure
4f4ed36442 Revert "[update] Reorganize documentation/README" 2025-02-15 03:43:48 +08:00
Azure
823b25eec9 Reorganize documentation/README 2025-02-14 19:08:17 +00:00
Azure
1b1f417267 Fix incorrect image content in the document 2025-02-14 09:04:22 +00:00
chenxl
4d1d561d28 [feature] release 0.1.3 2024-08-28 16:11:43 +00:00
TangJingqi
de3faaf55d Update readme; add pipeline tutorial; add detailed inject tutorial 2024-08-15 20:42:54 +08:00
chenxl
18c42e67df Initial commit 2024-07-27 16:06:58 +08:00