llm-translator
Translate Markdown files from one language to another using OpenAI's API while retaining original formatting. This Jupyter notebook tokenizes input text, splits into chunks, translates with OpenAI, and reconstructs output to preserve Markdown structure. Useful for localizing documentation, articles,
Details
- Author
- richawo
- Category
- Code & Development
- Platform
- GitHub
- Framework
- openai
- Language
- jupyter notebook
- Stars
- 23
- First indexed
- 2026-05-15
- Last active
- 2023-10-15
- Directory sync
- 2026-05-15
Overview
Translate Markdown files from one language to another using OpenAI's API while retaining original formatting. This Jupyter notebook tokenizes input text, splits into chunks, translates with OpenAI, and reconstructs output to preserve Markdown structure. Useful for localizing documentation, articles,
Quick start
git
git clone https://github.com/richawo/llm-translatorSnippet generated from the published metadata; check the source page for full setup, configuration, and prerequisites.
What llm-translator can do
Frequently asked questions
What is llm-translator?
How do I install llm-translator?
Is llm-translator open source?
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Source & freshness
Profile data for llm-translator is sourced from GitHub, published by richawo.
Last scraped: · First indexed:
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