Add mddocs index (#11411)
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# LangChain API
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You may run the models using the LangChain API in `ipex-llm`.
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## Using Hugging Face `transformers` INT4 Format
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You may run any Hugging Face *Transformers* model (with INT4 optimiztions applied) using the LangChain API as follows:
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```python
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from ipex_llm.langchain.llms import TransformersLLM
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from ipex_llm.langchain.embeddings import TransformersEmbeddings
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from langchain.chains.question_answering import load_qa_chain
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embeddings = TransformersEmbeddings.from_model_id(model_id=model_path)
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ipex_llm = TransformersLLM.from_model_id(model_id=model_path, ...)
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doc_chain = load_qa_chain(ipex_llm, ...)
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output = doc_chain.run(...)
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```
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> [!TIP]
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> See the examples [here](https://github.com/intel-analytics/ipex-llm/tree/main/python/llm/example/CPU/LangChain)
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## Using Native INT4 Format
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You may also convert Hugging Face *Transformers* models into native INT4 format, and then run the converted models using the LangChain API as follows.
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> [!NOTE]
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> - Currently only llama/bloom/gptneox/starcoder model families are supported; for other models, you may use the Hugging Face ``transformers`` INT4 format as described [above](./langchain_api.md#using-hugging-face-transformers-int4-format).
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> - You may choose the corresponding API developed for specific native models to load the converted model.
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```python
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from ipex_llm.langchain.llms import LlamaLLM
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from ipex_llm.langchain.embeddings import LlamaEmbeddings
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from langchain.chains.question_answering import load_qa_chain
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# switch to GptneoxEmbeddings/BloomEmbeddings/StarcoderEmbeddings to load other models
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embeddings = LlamaEmbeddings(model_path='/path/to/converted/model.bin')
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# switch to GptneoxLLM/BloomLLM/StarcoderLLM to load other models
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ipex_llm = LlamaLLM(model_path='/path/to/converted/model.bin')
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doc_chain = load_qa_chain(ipex_llm, ...)
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doc_chain.run(...)
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```
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# Native Format
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You may also convert Hugging Face *Transformers* models into native INT4 format for maximum performance as follows.
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> [!NOTE]
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> Currently only llama/bloom/gptneox/starcoder/chatglm model families are supported; you may use the corresponding API to load the converted model. (For other models, you can use the Hugging Face ``transformers`` format as described [here](./hugging_face_format.md))
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```python
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# convert the model
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from ipex_llm import llm_convert
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ipex_llm_path = llm_convert(model='/path/to/model/',
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outfile='/path/to/output/',
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outtype='int4',
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model_family="llama")
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# load the converted model
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# switch to ChatGLMForCausalLM/GptneoxForCausalLM/BloomForCausalLM/StarcoderForCausalLM to load other models
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from ipex_llm.transformers import LlamaForCausalLM
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llm = LlamaForCausalLM.from_pretrained("/path/to/output/model.bin", native=True, ...)
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# run the converted model
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input_ids = llm.tokenize(prompt)
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output_ids = llm.generate(input_ids, ...)
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output = llm.batch_decode(output_ids)
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```
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> [!NOTE]
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> See the complete example [here](https://github.com/intel-analytics/ipex-llm/tree/main/python/llm/example/CPU/Native-Models)
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# `transformers`-style API
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You may run the LLMs using `transformers`-style API in `ipex-llm`.
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* [Hugging Face `transformers` Format](./hugging_face_format.md)
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* [Native Format](./native_format.md)
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docs/mddocs/README.md
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docs/mddocs/README.md
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# IPEX-LLM Documentation
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## Table of Contents
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- [LLM in 5 minutes](./Overview/llm.md)
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- [Installation](./Overview/install.md)
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- [CPU](./Overview/install_cpu.md)
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- [GPU](./Overview/install_gpu.md)
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- [Docker Guides](./DockerGuides/)
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- [Overview of IPEX-LLM Containers for Intel GPU](./DockerGuides/docker_windows_gpu.md)
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- [Python Inference using IPEX-LLM on Intel GPU](./DockerGuides/docker_pytorch_inference_gpu.md)
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- [Run/Develop PyTorch in VSCode with Docker on Intel GPU](./DockerGuides/docker_run_pytorch_inference_in_vscode.md)
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- [Run llama.cpp/Ollama/Open-WebUI on an Intel GPU via Docker](./DockerGuides/docker_cpp_xpu_quickstart.md)
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- [FastChat Serving with IPEX-LLM on Intel GPUs via docker](./DockerGuides/fastchat_docker_quickstart.md)
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- [vLLM Serving with IPEX-LLM on Intel GPUs via Docker](./DockerGuides/vllm_docker_quickstart.md)
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- [vLLM Serving with IPEX-LLM on Intel CPU via Docker](./DockerGuides/vllm_cpu_docker_quickstart.md)
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- [Quickstart](https://github.com/intel-analytics/ipex-llm/tree/main/docs/mddocs/Quickstart/)
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- [`bigdl-llm` Migration Guide](./Quickstart/bigdl_llm_migration.md)
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- [Install IPEX-LLM on Linux with Intel GPU](./Quickstart/install_linux_gpu.md)
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- [Install IPEX-LLM on Windows with Intel GPU](./Quickstart/install_windows_gpu.md)
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- [Run Local RAG using Langchain-Chatchat on Intel CPU and GPU](./Quickstart/chatchat_quickstart.md)
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- [Run Text Generation WebUI on Intel GPU](./Quickstart/webui_quickstart.md)
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- [Run Open WebUI with Intel GPU](./Quickstart/open_webui_with_ollama_quickstart.md)
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- [Run PrivateGPT with IPEX-LLM on Intel GPU](./Quickstart/privateGPT_quickstart.md)
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- [Run Coding Copilot in VSCode with Intel GPU](./Quickstart/continue_quickstart.md)
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- [Run Dify on Intel GPU](./Quickstart/dify_quickstart.md)
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- [Run Performance Benchmarking with IPEX-LLM](./Quickstart/benchmark_quickstart.md)
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- [Run llama.cpp with IPEX-LLM on Intel GPU](./Quickstart/llama_cpp_quickstart.md)
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- [Run Ollama with IPEX-LLM on Intel GPU](./Quickstart/ollama_quickstart.md)
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- [Run Llama 3 on Intel GPU using llama.cpp and ollama with IPEX-LLM](./Quickstart/llama3_llamacpp_ollama_quickstart.md)
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- [Serving using IPEX-LLM and FastChat](./Quickstart/fastchat_quickstart.md)
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- [Serving using IPEX-LLM and vLLM on Intel GPU](./Quickstart/vLLM_quickstart.md)
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- [Finetune LLM with Axolotl on Intel GPU](./Quickstart/axolotl_quickstart.md)
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- [Run IPEX-LLM serving on Multiple Intel GPUs using DeepSpeed AutoTP and FastApi](./Quickstart/deepspeed_autotp_fastapi_quickstart.md)
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- [Run RAGFlow with IPEX-LLM on Intel GPU](./Quickstart/ragflow_quickstart.md)
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- [Key Features](./Overview/KeyFeatures/)
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- [PyTorch API](./Overview/KeyFeatures/optimize_model.md)
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- [`transformers`-style API](./Overview/KeyFeatures/hugging_face_format.md)
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- [GPU Supports](./Overview/KeyFeatures/gpu_supports.md)
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- [Inference on GPU](./Overview/KeyFeatures/inference_on_gpu.md)
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- [Finetune (QLoRA)](./Overview/KeyFeatures/finetune.md)
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- [Multi Intel GPUs selection](./Overview/KeyFeatures/multi_gpus_selection.md)
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- [Examples](../../python/llm/example/)
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- [CPU](../../python/llm/example/CPU/)
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- [GPU](../../python/llm/example/GPU/)
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- [API Reference](./PythonAPI/)
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- [IPEX-LLM PyTorch API](./PythonAPI/optimize.md)
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- [IPEX-LLM `transformers`-style API](./PythonAPI/transformers.md)
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- [FQA](./Overview/FAQ/faq.md)
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