Demo, data and code to train an assistant-style large language model with ~800k GPT-3.5-Turbo Generations based on LLaMa
![gpt4all-lora-demo](https://user-images.githubusercontent.com/13879686/228352356-de66ca7a-df70-474e-b929-2e3656165051.gif) Run on M1 Mac (not sped up!) # Try it yourself Download the CPU quantized gpt4all model checkpoint: [gpt4all-lora-quantized.bin](https://the-eye.eu/public/AI/models/nomic-ai/gpt4all/gpt4all-lora-quantized.bin) - [[Torrent-Magnet]](magnet:?xt=urn:btih:EE5150157050CB5D1979669A1EA14FC2C4C3692E&dn=gpt4all-lora-quantized.bin&tr=udp%3a%2f%2ftracker.openbittorrent.com%3a80%2fannounce&tr=udp%3a%2f%2ftracker.opentrackr.org%3a1337%2fannounce) Clone this repository down and place the quantized model in the `chat` directory and start chatting by running: - `cd chat;./gpt4all-lora-quantized-OSX-m1` on M1 Mac/OSX - `cd chat;./gpt4all-lora-quantized-linux-x86` on Linux - `cd chat;./gpt4all-lora-quantized-win64.exe` on Windows (PowerShell) - `cd chat;./gpt4all-lora-quantized-OSX-intel` on Intel Mac/OSX To compile for custom hardware, see our fork of the [Alpaca C++](https://github.com/zanussbaum/gpt4all.cpp) repo. ----------- [Secret Unfiltered Checkpoint](https://the-eye.eu/public/AI/models/nomic-ai/gpt4all/gpt4all-lora-unfiltered-quantized.bin) - [[Torrent]](https://the-eye.eu/public/AI/models/nomic-ai/gpt4all/gpt4all-lora-unfiltered-quantized.bin.torrent) This model had all refusal to answer responses removed from training. Try it with: - `cd chat;./gpt4all-lora-quantized-OSX-m1 -m gpt4all-lora-unfiltered-quantized.bin` ----------- Note: the full model on GPU (16GB of RAM required) performs much better in our qualitative evaluations. # Python Client ## CPU Interface To get running using the python client with the CPU interface, first install the [nomic client](https://github.com/nomic-ai/nomic) using `pip install nomic` Then, you can use the following script to interact with GPU4All: ``` from nomic import GPT4All m = GPT4All() m.connect() m.prompt('write me a story about a lonely computer') ``` ## GPU Interface There are two ways to get up and running with this model on GPU. The setup here is slightly more involved than the CPU model. 1. clone the nomic client [repo](https://github.com/nomic-ai/nomic) and run `pip install .[GPT4All]` in the home dir. 2. run `pip install nomic` and install the additional deps from the wheels built [here](https://github.com/nomic-ai/nomic/tree/main/bin) Once this is done, you can run the model on GPU with a script like the following: ``` from nomic import GPT4AllGPU m = GPT4AllGPU(LLAMA_PATH) config = {'num_beams': 2, 'min_new_tokens': 10, 'max_length': 100, 'repetition_penalty': 2.0} out = m.generate('write me a story about a lonely computer', config) print(out) ``` Where LLAMA_PATH is the path to a Huggingface Automodel compliant LLAMA model. Nomic is unable to distribute this file at this time. We are working on a GPT4All that does not have this limitation right now. You can pass any of the [huggingface generation config params](https://huggingface.co/docs/transformers/main_classes/text_generation#transformers.GenerationConfig) in the config. # Roadmap ## Short Term - (IN PROGRESS) Train a GPT4All model based on GPTJ to alleviate llama distribution issues. - (IN PROGRESS) Create improved CPU and GPU interfaces for this model. - (NOT STARTED) Integrate llama.cpp bindings - (NOT STARTED) Create a good conversational chat interface for the model. - (NOT STARTED) Allow users to opt in and submit their chats for subsequent training runs ## Medium Term - (NOT STARTED) Integrate GPT4All with [Atlas](https://atlas.nomic.ai) to allow for document retrieval. - BLOCKED by GPT4All based on GPTJ - (NOT STARTED) Integrate GPT4All with Langchain. - (NOT STARTED) Build easy custom training scripts to allow users to fine tune models. ## Long Term - (NOT STARTED) Allow anyone to curate training data for subsequent GPT4All releases using Atlas. - (IN PROGRESS) Democratize AI. # Reproducibility Trained LoRa Weights: - gpt4all-lora (four full epochs of training): https://huggingface.co/nomic-ai/gpt4all-lora - gpt4all-lora-epoch-2 (three full epochs of training) https://huggingface.co/nomic-ai/gpt4all-lora-epoch-2 Raw Data: - [Training Data Without P3](https://huggingface.co/datasets/nomic-ai/gpt4all_prompt_generations) - Explorer: https://atlas.nomic.ai/map/gpt4all_data_clean_without_p3 - [Full Dataset with P3](https://s3.amazonaws.com/static.nomic.ai/gpt4all/2022_03_27/gpt4all_curated_data_full_2022_03_27.tar.gz) - Explorer: https://atlas.nomic.ai/map/gpt4all_data_clean We are not distributing a LLaMa 7B checkpoint. You can reproduce our trained model by doing the following: ## Setup Clone the repo `git clone --recurse-submodules https://github.com/nomic-ai/gpt4all.git` `git submodule configure && git submodule update` Setup the environment ``` python -m pip install -r requirements.txt cd transformers pip install -e . cd ../peft pip install -e . ``` ## Training ```bash accelerate launch --dynamo_backend=inductor --num_processes=8 --num_machines=1 --machine_rank=0 --deepspeed_multinode_launcher standard --mixed_precision=bf16 --use_deepspeed --deepspeed_config_file=configs/deepspeed/ds_config.json train.py --config configs/train/finetune-7b.yaml ``` ## Generate ```bash python generate.py --config configs/generate/generate.yaml --prompt "Write a script to reverse a string in Python" ``` # Sample Generations ### Provide instructions for the given exercise. Leg Raises >Leg Raises >1. Stand with your feet shoulder-width apart and your knees slightly bent. >2. Raise your arms straight out in front of you. >3. Slowly bend your knees and raise your heels off the ground. >4. Hold this position for a count of 3, then slowly lower your heels back to the ground. >5. Repeat the exercise 10 times. >6. Do not let your knees go beyond your toes. >7. Keep your back straight and your abdominal muscles engaged. >8. Do not let your hips sag or your back arch. >9. Keep your arms straight and your elbows locked. >10. Do not let your head drop or your shoulders rise. >11. Breathe normally throughout the exercise. >12. Rest for 30 seconds before repeating the exercise. >13. Gradually increase the number of repetitions as you become stronger. ### A color description has been provided. Find the CSS code associated with that color. A light red color with a medium light shade of pink >The CSS code associated with the color provided is: #FF6347 ### Come up with an interesting idea for a new movie plot. Your plot should be described with a title and a summary. >1. The title of your movie plot should be "The Last Stand". 2. The summary of your movie plot should be: A group of mercenaries are hired to protect a small town from a dangerous criminal who is on the run. However, the town's sheriff is not willing to let them take over and decides to take matters into his own hands. ### Reverse a string in python. > In Python, you can reverse a list or tuple by using the reversed() function on it. Here's an example of how to use this method with strings: > ```python > my_string = "Hello World" # Define your original string here > reversed_str = my_string[::-1] # Use a slice and negative index for reverse order > print(reversed_str) # Output will be reversed version of the inputted string. ### List 10 dogs. >1. Labrador Retriever >2. Golden Retriever >3. Beagle >4. Poodle >5. German Shepherd >6. Bulldog >7. Rottweiler >8. Boxer >9. Shih Tzu >10. Pug ### Write me a poem about the fall of Julius Ceasar into a ceasar salad in iambic pentameter. >The fall of Julius Ceasar into a ceasar salad >In iambic pentameter, >The mighty Roman emperor >Fell into a salad of lettuce and croutons, >His empire crumbling around him, >As he was devoured by the hungry diners. >The once mighty emperor >Was now just a salad topping, >His legacy reduced to a mere garnish, >As he was consumed by the masses. >The fall of Julius Ceasar into a ceasar salad, >In iambic pentameter, >Was a tragic end to a great man, >Who had once ruled the world with an iron fist. >But now, he was just a salad topping, >His legacy reduced to a mere garnish, >As he was consumed by the masses. ### What is a three word topic describing the following keywords: baseball, football, soccer: >Sports, athletics, games ## Citation If you utilize this reposistory, models or data in a downstream project, please consider citing it with: ``` @misc{gpt4all, author = {Yuvanesh Anand and Zach Nussbaum and Brandon Duderstadt and Benjamin Schmidt and Andriy Mulyar}, title = {GPT4All: Training an Assistant-style Chatbot with Large Scale Data Distillation from GPT-3.5-Turbo}, year = {2023}, publisher = {GitHub}, journal = {GitHub repository}, howpublished = {\url{https://github.com/nomic-ai/gpt4all}}, } ```