Text to speech (book to audiobook)
Ever wished you could enjoy your favorite books without sacrificing precious reading time? Many of us face this dilemma. We have books we want to read, but life gets in the way.
Here are a few common challenges:
- Listening to audiobooks is a convenient alternative for busy schedules.
- Reading often requires dedicated attention and a stationary position, making multitasking difficult.
- Purchasing both text and audio versions can be expensive, and audio-only versions aren't always ideal.
Fortunately, a simple coding solution exists to convert your existing ebooks into audiobooks for free.
The Solution: gTTS
The Python library gTTS
provides a straightforward way to generate speech from text.
What is gTTS?
gTTS
leverages Google Translate's Text-to-Speech API. It's a versatile tool supporting multiple languages and MP3 output, making it perfect for audiobooks, automated messages, and accessibility applications.
Key gTTS Features:
- Multilingual Support: Convert text to speech in numerous languages, including English, Spanish, French, and many more.
-
Regional Accents: Fine-tune the accent by specifying the top-level domain (TLD) like
.com
,.co.uk
, or.co.in
. -
Adjustable Speed: The
slow
parameter lets you control the speech rate for improved comprehension.
Example: Text-to-Speech Conversion
Here's a simple code snippet:
from gtts import gTTS # Text to convert text = "Hello, welcome to the world of text-to-speech!" # Create gTTS object speech = gTTS(text=text, lang='en', tld='com', slow=False) # Save as MP3 speech.save("output.mp3") print("Audio file 'output.mp3' created successfully.")
Simplified Solution: A Ready-Made Repo
For added convenience, I've created a repository to streamline the conversion of .epub
and .fb2
files into MP3 audiobooks using text-to-speech.
Start enjoying your ebooks in audio format today!
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