DevOps.com

  • Latest
    • Articles
    • Features
    • Most Read
    • News
    • News Releases
  • Topics
    • AI
    • Continuous Delivery
    • Continuous Testing
    • Cloud
    • Culture
    • DataOps
    • DevSecOps
    • Enterprise DevOps
    • Leadership Suite
    • DevOps Practice
    • ROELBOB
    • DevOps Toolbox
    • IT as Code
  • Videos/Podcasts
    • Techstrong.tv Podcast
    • Techstrong.tv - Twitch
    • DevOps Unbound
  • Webinars
    • Upcoming
    • Calendar View
    • On-Demand Webinars
  • Library
  • Events
    • Upcoming Events
    • Calendar View
    • On-Demand Events
  • Sponsored Content
  • Related Sites
    • Techstrong Group
    • Cloud Native Now
    • Security Boulevard
    • Techstrong Research
    • DevOps Chat
    • DevOps Dozen
    • DevOps TV
    • Techstrong TV
    • Techstrong.tv Podcast
    • Techstrong.tv - Twitch
  • Media Kit
  • About
  • Sponsor
  • AI
  • Cloud
  • CI/CD
  • Continuous Testing
  • DataOps
  • DevSecOps
  • DevOps Onramp
  • Platform Engineering
  • Sustainability
  • Low-Code/No-Code
  • IT as Code
  • More
    • Application Performance Management/Monitoring
    • Culture
    • Enterprise DevOps
    • ROELBOB
Hot Topics
  • How to Build Successful DevOps Teams
  • Five Great DevOps Job Opportunities
  • Serial Entrepreneur
  • Chronosphere Adds Professional Services to Jumpstart Observability
  • Friend or Foe? ChatGPT's Impact on Open Source Software

Home » Blogs » Tabnine Extends Generative AI Alliance With Google

Tabnine Extends Generative AI Alliance With Google

Avatar photoBy: Mike Vizard on March 24, 2023 Leave a Comment

Tabnine has extended its alliance with Google Cloud to advance the adoption of generative artificial intelligence (AI) to automate the writing and testing of code.

The generative AI platform provider has already developed its own large language model that is hosted on Google Cloud. Tabnine is now also committing to leveraging the large language model that Google is developing to automate software development life cycle processes.

Cloud Native NowSponsorships Available

Brandon Jung, vice president of ecosystems for Tabnine, said it’s apparent that application development and deployment teams will be making use of multiple large language models across SDLC workflows. Not all those large language models will be developed by one single platform provider, he noted.

Rather than being dogmatic about large language models, Tabnine plans to make it possible to invoke multiple models via application programming interfaces (APIs) that are integrated with development environments, he added.

The Tabnine platform supports multiple programming languages, including Python, Java and JavaScript and is designed to be integrated with integrated development environments (IDEs) such as Visual Studio Code and Jetbrains. The company also previously integrated its code completion tool with the GitLab continuous integration/continuous delivery (CI/CD) platform. The overall goal is to make it easier for developers to automatically write code based on custom models using approved source code hosted in a secure private repository.

Generative AI creates a large language model that assesses the probability of what the next line of code will be based on what has preceded it. It’s not likely DevOps teams will be replaced as generative AI is extended across workflows, but the overall size of those teams might shrink as it becomes possible to do more with fewer people. At the same time, the barrier to DevOps adoption will also fall as AI platforms make it simpler for more organizations to embrace DevOps best practices.

The challenge will be making sure the data collected to train AI models is of a high enough quality to ensure the desired outcome. Organizations will need to find a way to apply generative AI to data models that have been validated by DevOps teams.
One way or another, it’s only a matter of time before generative AI capabilities are applied more broadly. Platforms such as OpenAI’s ChatGPT are only the tip of an iceberg that impacts almost every manual process, including software development and deployment. The issue will be determining how quickly those innovations will become practical enough to employ.

In the meantime, it is already apparent generative AI platforms are having a significant impact on the rate at which code can be developed. Inevitably, that means the amount of code moving through DevOps pipelines at any one time should increase significantly. DevOps teams should expect generative AI technologies to be applied both before and after application code is built and deployed, noted Jung.

In the meantime, the biggest issue is, arguably, keeping up with a rate of generative AI innovation that is occurring faster than many organizations can absorb.

Recent Posts By Mike Vizard
  • Five Great DevOps Job Opportunities
  • Chronosphere Adds Professional Services to Jumpstart Observability
  • VMware Streamlines IT Management via Cloud Foundation Update
Avatar photo More from Mike Vizard
Related Posts
  • Tabnine Extends Generative AI Alliance With Google
  • Google Previews Generative AI Service to Improve Code
  • Tabnine, GitLab Build Custom Apps Faster With AI
    Related Categories
  • AI
  • Blogs
  • Continuous Delivery
  • DevOps in the Cloud
  • DevOps Practice
  • Enterprise DevOps
  • Features
  • News
    Related Topics
  • generative AI
  • Google Cloud
  • language model
  • machine learning
  • Tabnine
Show more
Show less

Filed Under: AI, Blogs, Continuous Delivery, DevOps in the Cloud, DevOps Practice, Enterprise DevOps, Features, News Tagged With: generative AI, Google Cloud, language model, machine learning, Tabnine

« A Seven Point Checklist for Getting SAST Right
Perceived Values »

Techstrong TV – Live

Click full-screen to enable volume control
Watch latest episodes and shows

Upcoming Webinars

Securing Your Software Supply Chain with JFrog and AWS
Tuesday, June 6, 2023 - 1:00 pm EDT
Maximize IT Operations Observability with IBM i Within Splunk
Wednesday, June 7, 2023 - 1:00 pm EDT
Secure Your Container Workloads in Build-Time with Snyk and AWS
Wednesday, June 7, 2023 - 3:00 pm EDT

GET THE TOP STORIES OF THE WEEK

Sponsored Content

PlatformCon 2023: This Year’s Hottest Platform Engineering Event

May 30, 2023 | Karolina Junčytė

The Google Cloud DevOps Awards: Apply Now!

January 10, 2023 | Brenna Washington

Codenotary Extends Dynamic SBOM Reach to Serverless Computing Platforms

December 9, 2022 | Mike Vizard

Why a Low-Code Platform Should Have Pro-Code Capabilities

March 24, 2021 | Andrew Manby

AWS Well-Architected Framework Elevates Agility

December 17, 2020 | JT Giri

Latest from DevOps.com

How to Build Successful DevOps Teams
June 5, 2023 | Mariusz Tomczyk
Five Great DevOps Job Opportunities
June 5, 2023 | Mike Vizard
Chronosphere Adds Professional Services to Jumpstart Observability
June 2, 2023 | Mike Vizard
Friend or Foe? ChatGPT’s Impact on Open Source Software
June 2, 2023 | Javier Perez
VMware Streamlines IT Management via Cloud Foundation Update
June 2, 2023 | Mike Vizard

TSTV Podcast

On-Demand Webinars

DevOps.com Webinar ReplaysDevOps.com Webinar Replays

Most Read on DevOps.com

No, Dev Jobs Aren’t Dead: AI Means ‘Everyone’s a Programmer’? ¦ Interesting Intel VPUs
June 1, 2023 | Richi Jennings
What Is a Cloud Operations Engineer?
May 30, 2023 | Gilad David Maayan
Forget Change, Embrace Stability
May 31, 2023 | Don Macvittie
Five Great DevOps Job Opportunities
May 30, 2023 | Mike Vizard
Revolutionizing the Nine Pillars of DevOps With AI-Engineered Tools
June 2, 2023 | Marc Hornbeek
  • Home
  • About DevOps.com
  • Meet our Authors
  • Write for DevOps.com
  • Media Kit
  • Sponsor Info
  • Copyright
  • TOS
  • Privacy Policy

Powered by Techstrong Group, Inc.

© 2023 ·Techstrong Group, Inc.All rights reserved.