OpenAI

Mastering OpenAI Whisper: Transcribing YouTube Videos Made Easy

Illustration depicting OpenAI Whisper transcribing a YouTube video

Unraveling Whisper: OpenAI's Premier Speech Recognition System

OpenAI Whisper emerges as OpenAI's state-of-the-art speech recognition solution, meticulously trained with 680,000 hours of web-sourced multilingual and multitask data. This extensive dataset bolsters increased resistance to accents, ambient noise, and technical jargon. Additionally, it supports transcribing in numerous languages and translating them into English. Distinct from DALLE-2 and GPT-3, Whisper is a free and open-source model. OpenAI delivers access to its models and codes, fostering the creation of valuable speech recognition applications.

Mastering YouTube Video Transcription with Whisper

Throughout this Whisper tutorial, you'll gain expertise in utilizing Whisper to transcribe a YouTube video. We'll employ the Python package Pytube to download and convert the audio into an MP4 file. Visit Pytube's repository for more information.

Step 1: Install the Pytube Library

First, install Pytube by running the following command in your terminal:

pip install pytube

Step 2: Download the YouTube Video

For this tutorial, I'll be using the "Python in 100 Seconds" video. Next, we need to import Pytube, provide the link to the YouTube video, and convert the audio to MP4:

from pytube import YouTube
video_url = 'VIDEO_URL_HERE'
video = YouTube(video_url)
audio_stream = video.streams.filter(only_audio=True).first()
audio_file = audio_stream.download(output_path='YOUR_DIRECTORY_HERE')

The output is a file named like the video title in your current directory. In our case, the file is named Python in 100 Seconds.mp4.

Step 3: Transcribing Audio to Text

Now, the next step is to convert audio into text. We can do this in three lines of code using Whisper. First, we install and import Whisper:

!pip install git+https://github.com/openai/whisper.git
import whisper

Then we load the model and finally we transcribe the audio file:

model = whisper.load_model('base')
result = model.transcribe(audio_file)
print(result['text'])

Understanding Whisper Models

We'll use the "base" model for this tutorial. You can find more information about the models here. Each one of them has tradeoffs between accuracy and speed (compute needed).

Get More from Your AI Journey

You can find the full code as Jupyter Notebook.

Your AI journey doesn't have to end here - visit our other AI tutorials to learn more! And why not test your new skills during our upcoming AI Hackathons? You will build an AI app, meet other like-minded people from all around the world, and upgrade your skills in just a couple of days. An idea worth considering!

Reading next

OpenAI Whisper tutorial with code examples for speech recognition.
A tutorial on creating OpenAI Whisper API in a Docker container.

Leave a comment

All comments are moderated before being published.

This site is protected by hCaptcha and the hCaptcha Privacy Policy and Terms of Service apply.