- 18 Mar, 2025 1 commit
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Dmitry Tokarev authored
Co-authored-by:Anant Sharma <anants@nvidia.com>
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- 15 Mar, 2025 1 commit
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Graham King authored
``` dynamo-run in=batch:prompts.jsonl out=mistralrs ~/llm_models/Llama-3.2-3B-Instruct/ ``` The file has genai format, one entry per line: ``` {"text": "the prompt"} {"text": ..etc ``` The prompt is evaluated and the output written to `output.jsonl` in the same folder as the input. At the end of the run various statistics are printed: > Ran 5 files in 8s 679ms. Tokens in: 40 (5/s). Tokens out: 346 (43/s) This is also helpful for pushing load into the system and stressing the various components. Not intended for performance measurement, it's a batch inference tool.
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- 13 Mar, 2025 2 commits
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Dmitry Tokarev authored
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Graham King authored
- Any engine can take the name of a Hugging Face repository. It will be downloaded before calling the engine. - The default engine (previously always mistralrs) depends on what is compiled in. - Text can be piped in and will result in a single run of the model. All of those together mean if you build with `--features vllm` you can do this and it will download the model and run it with vllm, answer your question, and exit: ``` echo "What is the capital of Costa Rica?" | dynamo-run Qwen/Qwen2.5-3B-Instruct ``` Co-authored-by:Ryan McCormick <rmccormick@nvidia.com>
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- 12 Mar, 2025 1 commit
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Graham King authored
Command line arguments are passed to the python engine like this: ``` dynamo-run out=pystr:my_python_engine.py -- -n 42 --custom-arg Orange --yes ``` The python engine receives the arguments in `sys.argv`. The argument list will include some standard ones as well as anything after the `--`. This input: ``` dynamo-run out=pystr:my_engine.py /opt/models/Llama-3.2-3B-Instruct/ --model-name llama_3.2 --tensor-parallel-size 4 -- -n 1 ``` is read like this: ``` async def generate(request): .. as before .. if __name__ == "__main__": print(f"MAIN: {sys.argv}") ``` and produces this output: ``` MAIN: ['my_engine.py', '--model-path', '/opt/models/Llama-3.2-3B-Instruct/', '--model-name', 'llama3.2', '--http-port', '8080', '--tensor-parallel-size', '4', '--base-gpu-id', '0', '--num-nodes', '1', '--node-rank', '0', '-n', '1'] ``` This allows quick iteration on the engine setup. Note how the `-n` `1` is included. Flags `--leader-addr` and `--model-config` will also be added if provided to `dynamo-run`.
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- 11 Mar, 2025 3 commits
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Ryan McCormick authored
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Graham King authored
In https://github.com/ai-dynamo/dynamo/pull/89 `dynamo-run` was moved into a workspace. That means it builds in that workspace, so into `launch/target` not `launch/dynamo-run/target`. Update docs to match.
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Graham King authored
- Latest from repo, many improvements - Support most of the OpenAI request features (temperature, top_p, etc) - Download models from Hugging Face if necessary
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- 10 Mar, 2025 2 commits
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Ryan McCormick authored
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Graham King authored
For the `echo` and `pystr` engines we previously required the user to pass `--model-name <x>` so we would have a name for the model. If the input is HTTP we do need this to match on the users' JSON request. If the input is Text we don't need a name. So if the input is Text and we don't already have a name for the model, give it one.
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- 08 Mar, 2025 1 commit
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Neelay Shah authored
Co-authored-by:Biswa Panda <biswa.panda@gmail.com>
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- 07 Mar, 2025 2 commits
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Graham King authored
Instead of using `out=pystr:<my.py>` we can now do this: ``` dynemo-run out=pytok:/home/graham/my_python_engine.py --model-path <hf-repo-checkout> ``` That engine will receive and respond with tokens. Here's an example engine file: ``` import asyncio async def generate(request): yield {"token_ids":[791]} await asyncio.sleep(0.1) yield {"token_ids":[6864]} await asyncio.sleep(0.1) yield {"token_ids":[315]} await asyncio.sleep(0.1) yield {"token_ids":[9822]} await asyncio.sleep(0.1) yield {"token_ids":[374]} await asyncio.sleep(0.1) yield {"token_ids":[12366]} await asyncio.sleep(0.1) yield {"token_ids":[13]} ``` Also reduce duplication by making the bindings engine use the llm lib engine. -
Graham King authored
1. Create `my_engine.py` ``` import asyncio async def generate(request): yield {"id":"1","choices":[{"index":0,"delta":{"content":"The","role":"assistant"}}],"created":1841762283,"model":"Llama-3.2-1B-Instruct","system_fingerprint":"local","object":"chat.completion.chunk"} await asyncio.sleep(0.1) yield {"id":"1","choices":[{"index":0,"delta":{"content":" capital","role":"assistant"}}],"created":1841762283,"model":"Llama-3.2-1B-Instruct","system_fingerprint":"local","object":"chat.completion.chunk"} await asyncio.sleep(0.1) yield {"id":"1","choices":[{"index":0,"delta":{"content":" of","role":"assistant"}}],"created":1841762283,"model":"Llama-3.2-1B-Instruct","system_fingerprint":"local","object":"chat.completion.chunk"} await asyncio.sleep(0.1) yield {"id":"1","choices":[{"index":0,"delta":{"content":" France","role":"assistant"}}],"created":1841762283,"model":"Llama-3.2-1B-Instruct","system_fingerprint":"local","object":"chat.completion.chunk"} await asyncio.sleep(0.1) yield {"id":"1","choices":[{"index":0,"delta":{"content":" is","role":"assistant"}}],"created":1841762283,"model":"Llama-3.2-1B-Instruct","system_fingerprint":"local","object":"chat.completion.chunk"} await asyncio.sleep(0.1) yield {"id":"1","choices":[{"index":0,"delta":{"content":" Paris","role":"assistant"}}],"created":1841762283,"model":"Llama-3.2-1B-Instruct","system_fingerprint":"local","object":"chat.completion.chunk"} await asyncio.sleep(0.1) yield {"id":"1","choices":[{"index":0,"delta":{"content":".","role":"assistant"}}],"created":1841762283,"model":"Llama-3.2-1B-Instruct","system_fingerprint":"local","object":"chat.completion.chunk"} await asyncio.sleep(0.1) yield {"id":"1","choices":[{"index":0,"delta":{"content":"","role":"assistant"},"finish_reason":"stop"}],"created":1841762283,"model":"Llama-3.2-1B-Instruct","system_fingerprint":"local","object":"chat.completion.chunk"} ``` 2. Build ``` cargo build --release --feature python ``` 3. Run ``` dynemo-run out=pystr:my_engine.py --name test ``` And here's a distributed system, with your engine: - Node 1: `dynemo-run in=http out=dyn://test` - Node 2: `dynemo-run in=dyn://test out=pystr:my_engine.py`
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- 05 Mar, 2025 2 commits
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Graham King authored
Fixes a panic.
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Graham King authored
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- 04 Mar, 2025 1 commit
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Graham King authored
Needs more testing but good enough for now. I get the same results with this as with `vllm serve`.
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- 28 Feb, 2025 2 commits
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Graham King authored
Engine, `tio` support and docs. Proof of concept / experimental.
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Graham King authored
triton-distributed-llm component and support in tio
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- 27 Feb, 2025 1 commit
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Graham King authored
Docs in README
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- 25 Feb, 2025 2 commits
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Graham King authored
- Setup venv ``` uv venv source .venv/bin/activate uv pip install pip uv pip install sgl-kernel --force-reinstall --no-deps uv pip install "sglang[all]==0.4.2" --find-links https://flashinfer.ai/whl/cu124/torch2.4/flashinfer/ ``` - Build: `cargo build --release --features sglang` - Run single node (make sure you're in the venv): `./tio out=sglang ~/llm_models/my_model` - Run Deepseek multi-gpu / multi-node: Node 1: ``` tio in=http out=sglang --model-path ~/llm_models/DeepSeek-R1-Distill-Llama-70B/ --tensor-parallel-size 8 --num-nodes 2 --node-rank 0 --dist-init-addr 10.217.98.122:9876 ``` Node 2: ``` tio in=none out=sglang --model-path ~/llm_models/DeepSeek-R1-Distill-Llama-70B/ --tensor-parallel-size 8 --num-nodes 2 --node-rank 1 --dist-init-addr 10.217.98.122:9876 ```
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Neelay Shah authored
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- 21 Feb, 2025 2 commits
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Graham King authored
Add support in tio for distributed components and discovery. Node 1: ``` tio in=http out=tdr://ns/backend/mistralrs ``` Node 2: ``` tio in=tdr://ns/backend/mistralrs out=mistralrs ~/llm_models/Llama-3.2-3B-Instruct ``` This will use etcd to auto-discover the model and NATS to talk to it. You can run multiple workers on the same endpoint and it will pick one at random each time. The `ns/backend/mistralrs` are purely symbolic, pick anything as long as it has three parts, and it matches the other node.
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Ryan Olson authored
Signed-off-by:
Ryan Olson <ryanolson@users.noreply.github.com> Co-authored-by:
Ryan McCormick <rmccormick@nvidia.com>
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- 20 Feb, 2025 1 commit
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Graham King authored
You can now run an HF repo directly: ``` tio ~/llm_models/Llama-3.2-1B-Instruct/ ``` or a GGUF ``` tio ~/llm_models/Llama-3.2-1B-Instruct-Q4_K_M.gguf ``` Also cleanup kv_router so I can merge.
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- 14 Feb, 2025 1 commit
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Graham King authored
This allows us to run a real model. Build: ``` cargo build --release --features mistralrs,cuda ``` Run: ``` ./target/release/tio in=text out=mistralrs --model-path Llama-3.2-1B-Instruct-Q4_K_M.gguf ``` Why [mistral.rs](https://github.com/EricLBuehler/mistral.rs)? - It has no dependencies. You don't need a container or a virtual env to get started. - It supports CUDA, Metal (MacOS) and CPU-only. Everyone can join the AI revolution. - It starts fast and serves fast (with CUDA). That makes it fun to experiment with. - It runs many models, not just Mistral, that's just it's name.
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