5

Smarter, more efficient coding: GitHub Copilot goes beyond Codex with improved A...

 1 year ago
source link: https://github.blog/2023-07-28-smarter-more-efficient-coding-github-copilot-goes-beyond-codex-with-improved-ai-model/
Go to the source link to view the article. You can view the picture content, updated content and better typesetting reading experience. If the link is broken, please click the button below to view the snapshot at that time.
neoserver,ios ssh client

The magic of GitHub Copilot just got even better with an improved AI model and enhanced contextual filtering. These improvements give developers more tailored code suggestions that better align with their specific needs, and are available for both GitHub Copilot for Individuals and GitHub Copilot for Business.

Read on to learn more about these exciting updates and how they can help you take your coding skills to the next level.

Improved AI model goes beyond Codex for even faster suggestions

The improved AI model behind GitHub Copilot goes beyond the previous OpenAI Codex model, offering even faster code suggestions to developers. It was developed through a collaboration between OpenAI, Microsoft Azure AI, and GitHub, and offers a 13% latency improvement over the previous model.

This means that GitHub Copilot generates code suggestions for developers faster than ever, which promises to drive a substantial increase in overall productivity.

Enhanced Contextual Filtering for more tailored code suggestions

In addition to the improved AI model, we’ve implemented more sophisticated context filtering that takes into account a wider range of a developer’s context and usage patterns. With the update, GitHub Copilot filters prompts and suggestions more intelligently, so developers get more relevant code completions for their specific coding tasks.

This has resulted in a +6% relative improvement in code acceptance rate, allowing developers to focus even more on the creative aspects of their work rather than getting bogged down in tedious coding tasks. The productivity gain also allows developers to tackle more ambitious projects and bring their ideas to life more quickly.

Unlock new levels of productivity and satisfaction with GitHub Copilot

The improved AI model and the new context filtering offer 13% latency improvement and 6% relative improvement in code acceptance rate, building upon the productivity gains developers have come to expect while using GitHub Copilot. With these improvements, developers can expect to stay in the flow and work more efficiently than ever, leading to faster innovation with better code. They’ll also find more satisfaction with their work, given research that shows minimizing disruptions and staying in the flow have a tangible impact on developer happiness.

At GitHub, we’re committed to continuing to improve the developer experience with GitHub Copilot. We have some exciting plans in the works and will continue to share news on our blog and Changelog. Whether you’re a seasoned pro or just starting out, GitHub Copilot can help you take your coding skills to the next level–and we can’t wait to see what you’ll build with it!

The GitHub Insider Newsletter

Discover tips, technical guides, and best practices in our monthly newsletter for developers.

Subscribe

More on AI

How to get AI regulation right for open source

How to get AI regulation right for open source

Sharing our coalition paper to inform the final negotiation of the EU AI Act.

Release Radar · Spring 2023 Edition

It's been a while since we've published our Release Radar. You can blame IRL conferences coming back, getting influenza, and being struck down by the weather. But those are just…

The economic impact of the AI-powered developer lifecycle and lessons from GitHub Copilot

Today at Collision Conference we unveiled breaking new research on the economic and productivity impact of generative AI–powered developer tools. The research found that the increase in developer productivity due to AI could boost global GDP by over $1.5 trillion.

More on GitHub Copilot

Introducing code referencing for GitHub Copilot

Introducing code referencing for GitHub Copilot

Today, we’re announcing a private beta of GitHub Copilot with code referencing that includes a filter to detect code suggestions matching public code on GitHub.

How to build a GPT-3 App with Nextjs, React, and GitHub Copilot

In this step-by-step tutorial, you will learn how to use GitHub Copilot to build an application with OpenAI’s gpt-3.5-turbo model.

How to responsibly adopt GitHub Copilot with the GitHub Copilot Trust Center

We’re launching the GitHub Copilot Trust Center to provide transparency about how GitHub Copilot works and help organizations innovate responsibly with generative AI.


About Joyk


Aggregate valuable and interesting links.
Joyk means Joy of geeK