Comment by rspoerri
5 hours ago
how do you do 1mio context with qwen3.6 27b, that only supports 256k? and what hardware would you run that on? 2 * 3090 is afaik currently at max 256k context.
5 hours ago
how do you do 1mio context with qwen3.6 27b, that only supports 256k? and what hardware would you run that on? 2 * 3090 is afaik currently at max 256k context.
You can get all the Qwen 3.x models up to ~1 million tokens using YaRN with llama.cpp.[0]
Personally I am using `--no-context-shift` and feeding in context back in on failure at the harness level.
I have 2x1080ti + 1xTitanV that have a full 262,144 tokens context on 262,144 tokens with `-sm tensor` at 62.04 t/s which isn't so bad.
But I also have a 1x3090 running unsloth/Qwen3.6-27B-MTP-GGUF:UD-Q4_K_XL at 41.89 t/s but with only 130k context, but if you have a modular programming style both work pretty well.
But play with YaRN if you really need it.
[0]https://qwen.readthedocs.io/en/v3.0/run_locally/llama.cpp.ht...
How can you get it to run at 41 t/s? I also have a single 3090 and even with MTP can't break 20 t/s.
HEre's my setup:
(I'm not filling out 100% of the VRAM, as I have other stuff I need it for.)
(Note UPDATED config)
Ya, if you are using the CPU it may slowdown quick.
This may be a bit huge and overcomplicated, on this host I am running it on a AMD Ryzen 7 5700G so that I can use the APU to dedicate the 3090.
I am just building the container with:
And here is the logs from a 'make me a flappy bird program in python' webui prompt.
I am down to ~25.54 t/s with a 95% full context.
1 reply →
You can increase the context window beyond its max trained context using RoPE scaling[0] which will require more VRAM.
But you can increase your context window for the same VRAM by quantizing the KV cache with FP8 (double the context) or TurboQuant (more than double)[1].
0: https://medium.com/@leannetan/extending-context-length-with-...
1: https://docs.vllm.ai/en/latest/features/quantization/quantiz...
We managed to increase the ctx for whatever llm model that is GGUFED, here the experimental tests: https://www.reddit.com/r/Hugston/