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--- |
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license: openrail |
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language: |
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- en |
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pipeline_tag: text-generation |
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library_name: transformers |
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--- |
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## Original model card |
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Buy me a coffee if you like this project ;) |
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<a href="https://www.buymeacoffee.com/s3nh"><img src="https://www.buymeacoffee.com/assets/img/guidelines/download-assets-sm-1.svg" alt=""></a> |
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#### Description |
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GGML Format model files for [This project](togethercomputer/LLaMA-2-7B-32K). |
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### inference |
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```python |
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import ctransformers |
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from ctransformers import AutoModelForCausalLM |
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model = AutoModelForCausalLM.from_pretrained(output_dir, ggml_file, |
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gpu_layers=32, model_type="llama") |
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manual_input: str = "Tell me about your last dream, please." |
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llm(manual_input, |
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max_new_tokens=256, |
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temperature=0.9, |
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top_p= 0.7) |
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``` |
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# Original model card |
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## Model Description |
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LLaMA-2-7B-32K is an open-source, long context language model developed by Together, fine-tuned from Meta's original Llama-2 7B model. |
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This model represents our efforts to contribute to the rapid progress of the open-source ecosystem for large language models. |
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The model has been extended to a context length of 32K with position interpolation, |
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allowing applications on multi-document QA, long text summarization, etc. |
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## What's new? |
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This model introduces several improvements and new features: |
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1. **Extended Context:** The model has been trained to handle context lengths up to 32K, which is a significant improvement over the previous versions. |
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2. **Pre-training and Instruction Tuning:** We have shared our data recipe, which consists of a mixture of pre-training and instruction tuning data. |
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3. **Fine-tuning Examples:** We provide examples of how to fine-tune the model for specific applications, including book summarization and long context question and answering. |
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4. **Software Support:** We have updated both the inference and training stack to allow efficient inference and fine-tuning for 32K context. |
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## Model Architecture |
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The model follows the architecture of Llama-2-7B and extends it to handle a longer context. It leverages the recently released FlashAttention-2 and a range of other optimizations to improve the speed and efficiency of inference and training. |
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## Training and Fine-tuning |
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The model has been trained using a mixture of pre-training and instruction tuning data. |
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- In the first training phase of continued pre-training, our data mixture contains 25% RedPajama Book, 25% RedPajama ArXiv (including abstracts), 25% other data from RedPajama, and 25% from the UL2 Oscar Data, which is a part of OIG (Open-Instruction-Generalist), asking the model to fill in missing chunks, or complete the text. |
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To enhance the long-context ability, we exclude data shorter than 2K word. The inclusion of UL2 Oscar Data is effective in compelling the model to read and utilize long-range context. |
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- We then fine-tune the model to focus on its few shot capacity under long context, including 20% Natural Instructions (NI), 20% Public Pool of Prompts (P3), 20% the Pile. We decontaminated all data against HELM core scenarios . We teach the model to leverage the in-context examples by packing examples into one 32K-token sequence. To maintain the knowledge learned from the first piece of data, we incorporate 20% RedPajama-Data Book and 20% RedPajama-Data ArXiv. |
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Next, we provide examples of how to fine-tune the model for specific applications. |
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The example datasets are placed in [togethercomputer/Long-Data-Collections](https://huggingface.co/datasets/togethercomputer/Long-Data-Collections) |
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You can use the [OpenChatKit](https://github.com/togethercomputer/OpenChatKit) to fine-tune your own 32K model over LLaMA-2-7B-32K. |
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Please refer to [OpenChatKit](https://github.com/togethercomputer/OpenChatKit) for step-by-step illustrations. |
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1. Long Context QA. |
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We take as an example the multi-document question answering task from the paper “Lost in the Middle: How Language Models Use Long Contexts”. The input for the model consists of (i) a question that requires an answer and (ii) k documents, which are passages extracted from Wikipedia. Notably, only one of these documents contains the answer to the question, while the remaining k − 1 documents, termed as "distractor" documents, do not. To successfully perform this task, the model must identify and utilize the document containing the answer from its input context. |
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With OCK, simply run the following command to fine-tune: |
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``` |
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bash training/finetune_llama-2-7b-32k-mqa.sh |
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``` |
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2. Summarization. |
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Another example is BookSum, a unique dataset designed to address the challenges of long-form narrative summarization. This dataset features source documents from the literature domain, including novels, plays, and stories, and offers human-written, highly abstractive summaries. We here focus on chapter-level data. BookSum poses a unique set of challenges, necessitating that the model comprehensively read through each chapter. |
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With OCK, simply run the following command to fine-tune: |
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``` |
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bash training/finetune_llama-2-7b-32k-booksum.sh |
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``` |
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## Inference |
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You can use the [Together API](https://together.ai/blog/api-announcement) to try out LLaMA-2-7B-32K for inference. |
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The updated inference stack allows for efficient inference. |
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To run the model locally, we strongly recommend to install Flash Attention V2, which is necessary to obtain the best performance: |
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``` |
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# Please update the path of `CUDA_HOME` |
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export CUDA_HOME=/usr/local/cuda-11.8 |
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pip install transformers==4.31.0 |
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pip install sentencepiece |
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pip install ninja |
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pip install flash-attn --no-build-isolation |
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pip install git+https://github.com/HazyResearch/flash-attention.git#subdirectory=csrc/rotary |
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``` |
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You can use this model directly from the Hugging Face Model Hub or fine-tune it on your own data using the OpenChatKit. |
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```python |
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from transformers import AutoTokenizer, AutoModelForCausalLM |
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tokenizer = AutoTokenizer.from_pretrained("togethercomputer/LLaMA-2-7B-32K") |
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model = AutoModelForCausalLM.from_pretrained("togethercomputer/LLaMA-2-7B-32K", trust_remote_code=True, torch_dtype=torch.float16) |
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input_context = "Your text here" |
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input_ids = tokenizer.encode(input_context, return_tensors="pt") |
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output = model.generate(input_ids, max_length=128, temperature=0.7) |
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output_text = tokenizer.decode(output[0], skip_special_tokens=True) |
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print(output_text) |
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``` |
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Alternatively, you can set `trust_remote_code=False` if you prefer not to use flash attention. |
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## Limitations and Bias |
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As with all language models, LLaMA-2-7B-32K may generate incorrect or biased content. It's important to keep this in mind when using the model. |
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## Community |
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Join us on [Together Discord](https://discord.gg/6ZVDU8tTD4) |