- 5 models: SmolLM3-3B, Gemma4-E2B/E4B, Qwen3-4B, Qwen3.5-9B - TurboQuant image (FORCE_MMQ): +6-11% free speed on Turing GPUs - Bigctx profiles (-nkvo KV in RAM): 2-16x context gain - turbo2 KV: 2x smaller, benchmarked against PPL quality gate - Per-model env files with justified parameters - kv_quant_test.sh + cpu_ctx_test.sh benchmark scripts - docs/FINDINGS.md: surprises, pitfalls, recommendations - docs/ARCHITECTURE.md: compose + test script design
43 lines
1.3 KiB
Plaintext
43 lines
1.3 KiB
Plaintext
# ==============================================================================
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# Qwen3-4B-Instruct Q4_K_M — Alibaba (May 2025)
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# Architecture: Decoder-only transformer, GQA
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# - 4B params, 32 layers
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# - 32K native context (128K with YaRN)
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# Model size: ~2.4 GB Q4_K_M | Full GPU fit (ngl=99)
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# Features: thinking mode (/think /no_think), tool calling, 119 languages,
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# Apache 2.0. Strong code + reasoning. Best ecosystem (most fine-tunes).
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#
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# Download:
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# huggingface-cli download bartowski/Qwen3-4B-GGUF \
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# Qwen3-4B-Q4_K_M.gguf --local-dir ./models/
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#
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# NOTE: Verify exact filename after download:
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# ls models/Qwen3-4B*
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# ==============================================================================
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MODEL_FILE=Qwen3-4B-Q4_K_M.gguf
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# All layers fit — ~2.4 GB leaves ~1.3 GB free for KV + compute
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N_GPU_LAYERS=99
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# Benchmarked 2026-05-05 on GTX 1650 Ti (3717 MiB):
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# Max ctx=8192 (12K OOM). Full attention — all KV must fit at full ctx.
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# GGUF native limit=40960, but VRAM walls at ~8K.
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# Baseline: 181 pp / 41.6 tg t/s. At 8K ctx fa=1: 191 pp / 44.3 tg t/s (+6%).
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CTX_SIZE=16384
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THREADS=6
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THREADS_BATCH=6
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BATCH_SIZE=512
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UBATCH_SIZE=256
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CACHE_TYPE_K=q4_0
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CACHE_TYPE_V=q4_0
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# 1 parallel slot — limited VRAM at 8K ctx with 2.4GB model
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PARALLEL=1
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# fa=1 gives +6% tg speed on full-attention Qwen3
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EXTRA_ARGS=--flash-attn on --mmap
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