f6614155e4
* talk-llama: add optional wake-word detection from command * talk-llama: add optional audio confirmation before generating answer * talk-llama: fix small formatting issue in output * talk-llama.cpp: fix Windows build |
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.. | ||
prompts | ||
.gitignore | ||
CMakeLists.txt | ||
eleven-labs.py | ||
llama.cpp | ||
llama.h | ||
README.md | ||
speak | ||
speak.bat | ||
speak.ps1 | ||
talk-llama.cpp | ||
unicode.h |
talk-llama
Talk with an LLaMA AI in your terminal
Latest perf as of 2 Nov 2023 using Whisper Medium + LLaMA v2 13B Q8_0 on M2 Ultra:
https://github.com/ggerganov/whisper.cpp/assets/1991296/d97a3788-bf2a-4756-9a43-60c6b391649e
Previous demo running on CPUs
Building
The talk-llama
tool depends on SDL2 library to capture audio from the microphone. You can build it like this:
# Install SDL2 on Linux
sudo apt-get install libsdl2-dev
# Install SDL2 on Mac OS
brew install sdl2
# Build the "talk-llama" executable
make talk-llama
# Run it
./talk-llama -mw ./models/ggml-small.en.bin -ml ../llama.cpp/models/llama-13b/ggml-model-q4_0.gguf -p "Georgi" -t 8
- The
-mw
argument specifies the Whisper model that you would like to use. Recommendedbase
orsmall
for real-time experience - The
-ml
argument specifies the LLaMA model that you would like to use. Read the instructions in https://github.com/ggerganov/llama.cpp for information about how to obtain aggml
compatible LLaMA model
Session
The talk-llama
tool supports session management to enable more coherent and continuous conversations. By maintaining context from previous interactions, it can better understand and respond to user requests in a more natural way.
To enable session support, use the --session FILE
command line option when running the program. The talk-llama
model state will be saved to the specified file after each interaction. If the file does not exist, it will be created. If the file exists, the model state will be loaded from it, allowing you to resume a previous session.
This feature is especially helpful for maintaining context in long conversations or when interacting with the AI assistant across multiple sessions. It ensures that the assistant remembers the previous interactions and can provide more relevant and contextual responses.
Example usage:
./talk-llama --session ./my-session-file -mw ./models/ggml-small.en.bin -ml ../llama.cpp/models/llama-13b/ggml-model-q4_0.gguf -p "Georgi" -t 8
TTS
For best experience, this example needs a TTS tool to convert the generated text responses to voice.
You can use any TTS engine that you would like - simply edit the speak script to your needs.
By default, it is configured to use MacOS's say
or Windows SpeechSynthesizer, but you can use whatever you wish.
Discussion
If you have any feedback, please let "us" know in the following discussion: https://github.com/ggerganov/whisper.cpp/discussions/672?converting=1