buzz
openai-whisper-cpu
Our great sponsors
buzz | openai-whisper-cpu | |
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21 | 5 | |
9,869 | 221 | |
- | - | |
8.5 | 10.0 | |
17 days ago | over 1 year ago | |
Python | Jupyter Notebook | |
MIT License | MIT License |
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Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.
buzz
- Buzz: Transcribe and translate audio offline on your personal computer
- MacWhisper: Transcribe audio files on your Mac
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Build Personal ChatGPT Using Your Data
Easiest 1-click way to install and use Stable Diffusion on your computer."
https://github.com/easydiffusion/easydiffusion
And while Whisper is OpenAI, it is trivial to use locally and extremely usefull
https://github.com/chidiwilliams/buzz
- automated transcription software that is HIPAA compliant?
- Question: Does anyone know of an AI or ChatGPT tool to create automatic SRT caption files by uploading a video?
- Brauchbare Speech-to-Text Lösungen für Windows?
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I've pretty much had it with Premiere.
Install this for Resolve
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As a Foreign student, I record letures alot so I can review it anytime. Thanks to Obsidian Audio Player its feels so effortless to review those records.
Just use this one: https://github.com/chidiwilliams/buzz
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Whispers AI Modular Future
What utilities related to Whisper do you wish existed? What have you had to build yourself?
On the end user application side, I wish there was something that let me pick a podcast of my choosing, get it fully transcribed, and get an embeddings search plus answer q&a on top of that podcast or set of chosen podcasts. I've seen ones for specific podcasts, but I'd like one where I can choose the podcast. (Probably won't build it)
Also on the end user side, I wish there was an Otter alternative (still paid $30/mo, but unlimited minutes per month) that had longer transcription limits. (Started building this, not much interest from users though)
Things I've seen on the dev tool side:
Gladia (API call version of Whisper)
Whisper.cpp
Whisper webservice (https://github.com/ahmetoner/whisper-asr-webservice) - via this thread
Live microphone demo (not real time, it still does it in chunks) https://github.com/mallorbc/whisper_mic
Streamlit UI https://github.com/hayabhay/whisper-ui
Whisper playground https://github.com/saharmor/whisper-playground
Real time whisper https://github.com/shirayu/whispering
Whisper as a service https://github.com/schibsted/WAAS
Improved timestamps and speaker identification https://github.com/m-bain/whisperX
MacWhisper https://goodsnooze.gumroad.com/l/macwhisper
Crossplatform desktop Whisper that supports semi-realtime https://github.com/chidiwilliams/buzz
- Any suggestions for easy ways to add subtitles to YouTube videos?
openai-whisper-cpu
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How to run Llama 13B with a 6GB graphics card
I feel the same.
For example some stats from Whisper [0] (audio transcoding) show the following for the medium model (see other models in the link):
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GPU medium fp32 Linear 1.7s
CPU medium fp32 nn.Linear 60.7
CPU medium qint8 (quant) nn.Linear 23.1
---
So the same model runs 35.7 times faster on GPU, and compared to an CPU-optimized model still 13.6.
I was expecting around an order or magnitude of improvement. Then again, I do not know if in the case of this article the entire model was in the GPU, or just a fraction of it (22 layers), which might explain the result.
[0] https://github.com/MiscellaneousStuff/openai-whisper-cpu
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Whispers AI Modular Future
According to https://github.com/MiscellaneousStuff/openai-whisper-cpu the medium model needs 1.7 seconds to transcribe 30 seconds of audio when run on a GPU.
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[P] Transcribe any podcast episode in just 1 minute with optimized OpenAI/whisper
There is a very simple method built-in to PyTorch which can give you over 3x speed improvement for the large model, which you could also combine with the method proposed in this post. https://github.com/MiscellaneousStuff/openai-whisper-cpu
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[D] How to get the fastest PyTorch inference and what is the "best" model serving framework?
For CPU inference, model quantization is a very easy to apply method with great average speedups which is already built-in to PyTorch. For example, I applied dynamic quantization to the OpenAI Whisper model (speech recognition) across a range of model sizes (ranging from tiny which had 39M params to large which had 1.5B params). Refer to the below table for performance increases:
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[P] OpenAI Whisper - 3x CPU Inference Speedup
GitHub
What are some alternatives?
whisper - Robust Speech Recognition via Large-Scale Weak Supervision
llama-cpp-python - Python bindings for llama.cpp
StoryToolkitAI - An editing tool that uses AI to transcribe, understand content and search for anything in your footage, integrated with ChatGPT and other AI models
intel-extension-for-pytorch - A Python package for extending the official PyTorch that can easily obtain performance on Intel platform
audapolis - an editor for spoken-word audio with automatic transcription
whisperX - WhisperX: Automatic Speech Recognition with Word-level Timestamps (& Diarization)
whisper-diarization - Automatic Speech Recognition with Speaker Diarization based on OpenAI Whisper
FlexGen - Running large language models on a single GPU for throughput-oriented scenarios.
text-to-speech-ubuntu - 🙊 Setup "selectable" text to speech / TTS on Ubuntu Linux 24.04 22.04 22.10 23.04 23.10 . Ideal for speed reading, programming, editing and writing.
kernl - Kernl lets you run PyTorch transformer models several times faster on GPU with a single line of code, and is designed to be easily hackable.
opentts - Open Text to Speech Server
BentoML - The most flexible way to serve AI/ML models in production - Build Model Inference Service, LLM APIs, Inference Graph/Pipelines, Compound AI systems, Multi-Modal, RAG as a Service, and more!