A security issue involving AI coding platform Lovable allowed users to access other users’ project data, including source code, database credentials, AI chat histories, and customer data, according to reports and user disclosures.
The issue was publicly highlighted after a user demonstrated that a free account could access data across projects created before November 2025.
Lovable initially stated there was no data breach, describing the behavior as expected for public projects, but later acknowledged a backend error that temporarily enabled access to AI chat data. The company updated its visibility and permission settings following the incident and said the issue had been addressed.
The incident involved exposure of project-level data within the platform environment and did not include confirmation of broader system compromise. Reporting indicates the issue remained unresolved for a period of time after being reported before changes were implemented.
Ryan McCurdy, VP of Marketing, Liquibase had this to say:
“This incident is a reminder that the risk in AI-generated development is not just bad code. It is bad control design. When application creation speeds up, permissions, secrets exposure, and database access paths can become part of the attack surface just as quickly. If teams do not put governed change, least-privilege access, and clear separation between public artifacts and sensitive backend context in place, AI can amplify operational risk faster than traditional review processes can catch it.”
John Carberry, Solution Sleuth, Xcape, Inc. adds this comment:
“The Lovable data exposure incident highlights a catastrophic failure in the fundamental security architecture of AI-powered “vibe coding” platforms. By failing to implement basic ownership validation on API endpoints, a textbook Broken Object Level Authorization (BOLA) flaw. Lovable allowed any user to traverse project IDs and scrape the source code, database credentials, and AI chat histories of others.
“For security leaders, the primary risk is a silent supply chain compromise: while Lovable claims no “breach” of its own servers, the exposure of third-party secrets like Stripe and Supabase keys means the applications built on the platform are now effectively backdoored.
“Technically, the crisis was compounded by a February 2026 backend regression that re-opened access to sensitive chats and a response cycle that spent 48 days ignoring a bug bounty report. Organizations must treat AI-generated code with extreme caution, ensuring that “vibe coding” speed doesn’t bypass mandatory secret scanning, environment variable isolation, and the hard-won security logic of the last twenty years.
“Lovable proved that while AI can write your code, it can’t write your common sense, especially when “public by default” includes your Stripe secret keys.”
Hannah Perez, Director of Marketing, Suzu Labs followed up with this:
“As we move toward AI-generated software, the ‘shared responsibility model’ is becoming dangerously blurred. Users expected a private sandbox for innovation, but instead found a communal space with paper thin walls.
“Lovable’s eventual pivot is welcome, but the delay between the initial report and the actual fix suggests that AI startups are currently outpacing their own security protocols, which is as expected for most. In the rush to ‘vibe code,’ fundamental safety is being treated as a post-launch patch rather than a requirement. For this industry to mature, ‘Secure by Default‘ must be the non-negotiable standard for any platform handling sensitive IP and source code.”
Vishal Agarwal, CTO, Averlon provided this comment:
“It’s one thing to have access to the sauce. It’s another to have access to its recipe. With inadvertent leakage of chat history, attackers gain access to reconnaissance information that can be leveraged to target the organization more precisely.
“What makes sophisticated attackers dangerous isn’t just their technical capability, it’s their detailed understanding of the target’s systems. Exposing chat history and source code together hands that understanding directly to an attacker.”
This highlights the fact that AI has to be part of your security planning. Otherwise really bad things will happen. And this is a case in point.
KAYAK Launches Ask AI
Posted in Commentary with tags KAYAK on April 24, 2026 by itnerdKAYAK today introduced Ask AI, a new conversational travel planning experience designed to help travellers search, compare, and book trips more easily, as interest surges ahead of this summer’s World Cup.
Building on KAYAK’s mission to make travel search more personalized and conversational, Ask AI is an industry first that lets travellers start planning their trip in a chat—while flight, hotel and rental car results update live alongside the conversation, combining the ease of AI with the power of a traditional results page.
Launching just as travel interest ramps up around the World Cup, Ask AI arrives at a time when travelers are planning more complex, multi-city trips. KAYAK data already shows a 12 per cent increase in flight searches to Canadian host cities, including Toronto seeing a 19 per cent increase and Vancouver seeing a 5 per cent increase compared to last summer, with prices and availability expected to shift quickly in the months ahead.
Plan Your Trip with Ask AI
Whether you’re travelling to one match or several, Ask AI helps you move from inspiration to booking in one continuous experience. Search for hotels near a stadium, compare flights between host cities, or build your full itinerary—all without switching tabs.
With Ask AI, travellers can:
No restarting searches or juggling tabs—just a faster, more intuitive way to plan and book travel.
Tracking World Cup Travel Trends in Real Time
KAYAK is also launching a new dashboard to track how fans are planning trips around the World Cup. Powered by KAYAK’s search and pricing data, it highlights rising travel interest, shifting prices, and the destinations seeing the biggest spikes in interest.
Early trends show:
Together, Ask AI and the World Cup Trends Dashboard help travelers plan and compare trips with real-time data, making it easier to make informed decisions as prices and interest change.
Methodology
Based on flight and hotel searches made on KAYAK in the period between 12.5.2025 and 4.12.2026 for travel between 6.10.2026 and 7.20.2026. They were compared to searches made in the period between 12.5.2024 and 4.12.2025 with the travel period between 6.10.2025 and 7.20.2025. Percentages for changes in searches and pricing are approximate.
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