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# Inference |
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We demonstrate how to run inference (next token prediction) with the LLaMA base model in the [`generate.py`](generate.py) script: |
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```bash |
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python generate.py --prompt "Hello, my name is" |
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``` |
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Output: |
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``` |
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Hello my name is TJ. I have a passion for the outdoors, love hiking and exploring. I also enjoy traveling and learning new things. I especially enjoy long walks, good conversation and a friendly smile. |
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``` |
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The script assumes you have downloaded and converted the weights and saved them in the `./checkpoints` folder as described [here](download_weights.md). |
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> **Note** |
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> All scripts support argument [customization](customize_paths.md) |
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With the default settings, this will run the 7B model and require ~26 GB of GPU memory (A100 GPU). |
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## Run Lit-LLaMA on consumer devices |
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On GPUs with `bfloat16` support, the `generate.py` script will automatically convert the weights and consume about ~14 GB. |
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For GPUs with less memory, or ones that don't support `bfloat16`, enable quantization (`--quantize llm.int8`): |
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```bash |
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python generate.py --quantize llm.int8 --prompt "Hello, my name is" |
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``` |
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This will consume about ~10 GB of GPU memory or ~8 GB if also using `bfloat16`. |
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See `python generate.py --help` for more options. |
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You can also use GPTQ-style int4 quantization, but this needs conversions of the weights first: |
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```bash |
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python quantize.py --checkpoint_path lit-llama.pth --tokenizer_path tokenizer.model --output_path llama-7b-gptq.4bit.pt --dtype bfloat16 --quantize gptq.int4 |
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``` |
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With the generated quantized checkpoint generation works as usual with `--quantize gptq.int4`, bringing GPU usage to about ~5GB. As only the weights of the Linear layers are quantized, it is useful to use `--dtype bfloat16` even with the quantization enabled. |
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