/AI_chatbot_LlamaGPTJ-chat

Simple chat program for LLaMa, GPT-J, and MPT models.

Primary LanguageC++MIT LicenseMIT

CMake

LlamaGPTJ-chat

Simple command line chat program for GPT-J, LLaMA and MPT models written in C++. Based on llama.cpp and uses gpt4all-backend for full compatibility.

LlamaGPTJ-chat demo

Warning Very early progress, might have bugs

Table of contents

Installation

Since the program is made using c++ it should build and run on most Linux, MacOS and Windows systems. The Releases link has ready-made binaries. AVX2 is faster and works on most newer computers. If you run the program, it will check and print if your computer has AVX2 support.

Download

git clone --recurse-submodules https://github.com/kuvaus/LlamaGPTJ-chat
cd LlamaGPTJ-chat

You need to also download a model file, see supported models for details and links.

Build

Since the program is made using c++ it should build and run on most Linux, MacOS and Windows systems. On most systems, you only need this to build:

mkdir build
cd build
cmake ..
cmake --build . --parallel

Note

If you have an old processor, you can turn AVX2 instructions OFF in the build step with -DAVX2=OFF flag.

If you have a new processor, you can turn AVX512 instructions ON in the build step with -DAVX512=ON flag.

On old macOS, set -DBUILD_UNIVERSAL=OFF to make the build x86 only instead of the universal Intel/ARM64 binary. On really old macOS, set -DOLD_MACOS=ON. This disables /save and /load but compiles on old Xcode.

On Windows you can now use Visual Studio (MSVC) or MinGW. If you want MinGW build instead, set -G "MinGW Makefiles".

On ARM64 Linux there are no ready-made binaries, but you can now build it from source.

Usage

After compiling, the binary is located at:

build/bin/chat

But you're free to move it anywhere. Simple command for 4 threads to get started:

./chat -m "/path/to/modelfile/ggml-vicuna-13b-1.1-q4_2.bin" -t 4

or

./chat -m "/path/to/modelfile/ggml-gpt4all-j-v1.3-groovy.bin" -t 4

Happy chatting!

GPT-J, LLaMA, and MPT models

Current backend supports the GPT-J, LLaMA and MPT models.

GPT-J model

You need to download a GPT-J model first. Here are direct links to models:

They're around 3.8 Gb each. The chat program stores the model in RAM on runtime so you need enough memory to run. You can get more details on GPT-J models from gpt4all.io or nomic-ai/gpt4all github.

LLaMA model

Alternatively you need to download a LLaMA model first. The original weights are for research purposes and you can apply for access here. Below are direct links to derived models:

The LLaMA models are quite large: the 7B parameter versions are around 4.2 Gb and 13B parameter 8.2 Gb each. The chat program stores the model in RAM on runtime so you need enough memory to run. You can get more details on LLaMA models from the whitepaper or META AI website.

MPT model

You can also download and use an MPT model instead. Here are direct links to MPT-7B models:

They're around 4.9 Gb each. The chat program stores the model in RAM on runtime so you need enough memory to run. You can get more details on MPT models from MosaicML website or mosaicml/llm-foundry github.

Detailed command list

You can view the help and full parameter list with: ./chat -h

usage: ./bin/chat [options]

A simple chat program for GPT-J, LLaMA, and MPT models.
You can set specific initial prompt with the -p flag.
Runs default in interactive and continuous mode.
Type '/reset' to reset the chat context.
Type '/save','/load' to save network state into a binary file.
Type '/save NAME','/load NAME' to rename saves. Default: --save_name NAME.
Type '/help' to show this help dialog.
Type 'quit', 'exit' or, 'Ctrl+C' to quit.

options:
  -h, --help            show this help message and exit
  -v, --version         show version and license information
  --run-once            disable continuous mode
  --no-interactive      disable interactive mode altogether (uses given prompt only)
  --no-animation        disable chat animation
  --no-saves            disable '/save','/load' functionality
  -s SEED, --seed SEED  RNG seed for --random-prompt (default: -1)
  -t N, --threads    N  number of threads to use during computation (default: 4)
  -p PROMPT, --prompt PROMPT
                        prompt to start generation with (default: empty)
  --random-prompt       start with a randomized prompt.
  -n N, --n_predict  N  number of tokens to predict (default: 200)
  --top_k            N  top-k sampling (default: 40)
  --top_p            N  top-p sampling (default: 0.9)
  --temp             N  temperature (default: 0.9)
  --n_ctx            N  number of tokens in context window (default: 0)
  -b N, --batch_size N  batch size for prompt processing (default: 20)
  --repeat_penalty   N  repeat_penalty (default: 1.1)
  --repeat_last_n    N  last n tokens to penalize  (default: 64)
  --context_erase    N  percent of context to erase  (default: 0.8)
  --b_token             optional beginning wrap token for response (default: empty)
  --e_token             optional end wrap token for response (default: empty)
  -j,   --load_json FNAME
                        load options instead from json at FNAME (default: empty/no)
  --load_template   FNAME
                        load prompt template from a txt file at FNAME (default: empty/no)
  --save_log        FNAME
                        save chat log to a file at FNAME (default: empty/no)
  --load_log        FNAME
                        load chat log from a file at FNAME (default: empty/no)
  --save_dir        DIR
                        directory for saves (default: ./saves)
  --save_name       NAME
                        save/load model state binary at save_dir/NAME.bin (current: model_state)
                        context is saved to save_dir/NAME.ctx (current: model_state)
  -m FNAME, --model FNAME
                        model path (current: ./models/ggml-vicuna-13b-1.1-q4_2.bin)

Useful features

Here are some handy features and details on how to achieve them using command line options.

Save/load chat log and read output from other apps

By default, the program prints the chat to standard (stdout) output, so if you're including the program into your app, it only needs to read stdout. You can also save the whole chat log to a text file with --save_log option. There's an elementary way to remember your past conversation by simply loading the saved chat log with --load_log option when you start a new session.

Run the program once without user interaction

If you only need the program to run once without any user interactions, one way is to set prompt with -p "prompt" and using --no-interactive and --no-animation flags. The program will read the prompt, print the answer, and close.

Add AI personalities and characters

If you want a personality for your AI, you can change prompt_template_sample.txt and use --load_template to load the modified file. The only constant is that your input during chat will be put on the %1 line. Instructions, prompt, response, and everything else can be replaced any way you want. Having different personality_template.txt files is an easy way to add different AI characters. With some models, giving both AI and user names instead of Prompt: and Response:, can make the conversation flow more naturally as the AI tries to mimic a conversation between two people.

Ability to reset chat context

You can reset the chat at any time during chatting by typing /reset in the input field. This will clear the AI's memory of past conversations, logits, and tokens. You can then start the chat from a blank slate without having to reload the whole model again.

Load all parameters using JSON

You can also fetch parameters from a json file with --load_json "/path/to/file.json" flag. Different models might perform better or worse with different input parameters so using json files is a handy way to store and load all the settings at once. The JSON file loader is designed to be simple in order to prevent any external dependencies, and as a result, the JSON file must follow a specific format. Here is a simple example:

{"top_p": 1.0, "top_k": 50400, "temp": 0.9, "n_batch": 9}

This is useful when you want to store different temperature and sampling settings.

And a more detailed one:

{
"top_p": 1.0,
"top_k": 50400,
"temp": 0.9,
"n_batch": 20,
"threads": 12,
"prompt": "Once upon a time",
"load_template": "/path/to/prompt_template_sample.txt",
"model": "/path/to/ggml-gpt4all-j-v1.3-groovy.bin",
"no-interactive": "true"
}

This one loads the prompt from the json, uses a specific template, and runs the program once in no-interactive mode so user does not have to press any input.

License

This project is licensed under the MIT License