DARPA Issues Cyber Challenge to Find and Fix Security Vulns with AI

DARPA Challenges AI to Uncover and Resolve Cyber Vulnerabilities

Introduction:

Artificial intelligence and cybersecurity are two of the most pressing issues facing technology today. In an effort to combat the growing threat of cybercriminals, the Defense Advanced Research Projects Agency (DARPA) and Open Source Security Foundation (OpenSSF) have announced the AI Cyber Challenge (AIxCC). This two-year competition aims to develop AI systems that can automatically detect and fix security vulnerabilities in software. With a prize pool of $18.5 million and access to AI technology from industry leaders such as OpenAI, Google, and Microsoft, the AIxCC offers a unique opportunity for innovators to make a significant impact on the security of our digital infrastructure. Interested participants can register with DARPA, and selected teams will compete in semifinal and final events held at DEF CON in Las Vegas. Don’t miss your chance to be part of the solution – visit www.aicyberchallenge.com for more information.

Full Article: DARPA Challenges AI to Uncover and Resolve Cyber Vulnerabilities

DARPA and OpenSSF Announce $18.5 Million AI Cyber Challenge to Boost Software Security

In an effort to combat the endless onslaught of security vulnerabilities exploited by cybercriminals, the Defense Advanced Research Projects Agency (DARPA) and the Open Source Security Foundation (OpenSSF) have unveiled the AI Cyber Challenge (AIxCC). This two-year competition aims to develop artificial intelligence capable of automatically detecting and repairing security vulnerabilities in software.

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The AIxCC competition offers a staggering $18.5 million in prize money and grants access to AI technology from industry giants OpenAI, Anthropic, Google, and Microsoft. With open source software being a critical component of the nation’s infrastructure, OpenSSF General Manager Omkhar Arasaratnam emphasizes the importance of securing the open source software supply chain.

The AIxCC competition consists of two tracks: an open track and a funded track. Those interested in participating in the open track can register with DARPA starting in November. Additionally, DARPA will select seven small businesses to compete in the funded track, with registration opening on August 17.

The competition comprises two phases: the semifinal competition and the final competition. Both events will take place at DEF CON in Las Vegas in 2024 and 2025, respectively. Up to 20 teams will be chosen for the semifinals, while up to five teams will move on to the finals.

For more information and to register, visit the official AI Cyber Challenge website at www.aicyberchallenge.com.

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Summary: DARPA Challenges AI to Uncover and Resolve Cyber Vulnerabilities

The Defense Advanced Research Projects Agency (DARPA) and Open Source Security Foundation (OpenSSF) have announced the AI Cyber Challenge (AIxCC), a two-year competition aimed at building artificial intelligence that can automatically detect and fix security vulnerabilities in software. With a prize money of $18.5 million and access to AI technology from OpenAI, Anthropic, Google, and Microsoft, the competition aims to address the never-ending supply of security vulnerabilities that cybercriminals exploit. The competition will be held in two phases at DEF CON in Las Vegas in 2024 and 2025, with registration opening in November for the open track and on August 17 for businesses interested in receiving funding to compete in the funded track.

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