Premium Torrents, No Ads, No Spam – Just Quality Content!
https://www.Torrenting.com

Kofler M. AI-Assisted Coding. A Practical Guide to Boosting Soft. Develop. 2025

Magnet download icon for Kofler M. AI-Assisted Coding. A Practical Guide to Boosting Soft. Develop. 2025 Download this torrent!

Kofler M. AI-Assisted Coding. A Practical Guide to Boosting Soft. Develop. 2025

To start this P2P download, you have to install a BitTorrent client like qBittorrent

Category: Other
Total size: 10.53 MB
Added: 3 days ago (2025-10-25 08:16:01)

Share ratio: 88 seeders, 2 leechers
Info Hash: 0CE895815BA4D50BAAFC5509AFC6CA32633A2E41
Last updated: 13 minutes ago (2025-10-29 04:46:43)

Description:

Textbook in PDF format Generative AI is transforming software development. Stay on the cutting edge with this guide to AI pair programming ! Learn how to make the most of modern tools like ChatGPT and GitHub Copilot to improve your coding. Automate refactoring, debugging, and other tedious tasks, and use techniques such as prompt engineering and retrieval-augmented generation to get the code you need. Follow practical examples that show how you can program faster, more efficiently, and with fewer errors with the help of AI. Optimize your daily development tasks with AI. Work with tools like GitHub Copilot, ChatGPT, and OpenHands to generate code, refactor programs, and debug scripts. Explore AI options for database design, unit testing, documentation, administration, and more. Hype versus Reality Learn from expert developers to understand the possibilities (and pitfalls) of AI tools. With the help of practical code examples, see how to use AI helpers correctly to their full potential. Assistants for All Tasks This guide gives you an up-to-date overview of all aspects of AI-assisted coding: GitHub Copilot autocompletions, project bootstrapping with OpenHands, debugging and refactoring, application development, and more. In the Cloud or Local ? Use OpenAI’s API to integrate AI models directly into your own scripts and automations—or use local large language models (LLMs) to work independently of cloud services