mirror of
https://github.com/kvcache-ai/ktransformers.git
synced 2026-05-05 15:40:13 +00:00
* 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
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1.3 KiB
YAML
73 lines
No EOL
1.3 KiB
YAML
log:
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dir: "logs"
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file: "lexllama.log"
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#log level: debug, info, warn, error, crit
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level: "debug"
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backup_count: -1
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server:
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ip: 0.0.0.0
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port: 10002
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db:
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type: "sqllite"
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database: "server.db"
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host: "./"
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pool_size: 10
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user:
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secret_key: "981f1dd2a44e27d68759d0252a486568ed43480b4e616a26e3af3709c3a7ce73"
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algorithm: "HS256"
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model:
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# type: transformers
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type: balance_serve
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# type: ktransformers
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name: DeepSeek-Coder-V2-Instruct
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path: deepseek-ai/DeepSeek-V2-Lite-Chat
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gguf_path: /mnt/data/models/Smallthinker-21B
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device: cuda:0
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cache_lens: 16384
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max_new_tokens: 500
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web:
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mount: False
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open_cross_domain: True
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ext:
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cpu_infer: 10
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long_context:
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max_seq_len: 32000
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block_size: 128
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local_windows_len: 4096
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second_select_num: 32
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anchor_type: DYNAMIC
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kv_type: FP16
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dense_layer_num: 2
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anchor_num: 1
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preselect_block: True
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head_select_mode: SHARED
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preselect_block_count: 32
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layer_step: 1
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token_step:
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local_chat:
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prompt_file: ""
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async_server:
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sched_strategy: "FCFS"
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sched_port: 56441
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sched_metrics_port: 54321
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kvc2_metrics_port: 54391
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max_batch_size: 4 # decode count + prefill count, in one mini batch
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attn:
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page_size: 256
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chunk_size: 256
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kvc2:
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gpu_only: true
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utilization_percentage: 1.0
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cpu_memory_size_GB: 500
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disk_path: /home/wjh/kvc |