AI coding assistants can generate pull requests faster than most teams can review them, and that mismatch is creating a new kind of bottleneck across engineering organizations. The volume of AI-generated code is growing rapidly, but without a reliable way to validate that code against real production environments, teams are left choosing between slowing down to manually review everything or accepting the risk of pushing untested changes forward. Alan Shimel speaks with Sumeet Vaidya, CEO and co-founder of Crafting.dev, about the emerging concept of closed-loop autonomous development. The idea is straightforward: rather than treating AI agents as tools that hand off code for humans to verify, give those agents the ability to test their own output against live dependencies and real infrastructure before a human ever needs to get involved. The conversation explores what it takes to make that work in practice. Traditional sandboxing approaches struggle to replicate the complexity of...
A survey of 712 IT professionals finds that programming languages and frameworks (49%), followed closely by databases and data technologies (46%), DevOps/GitOps/DevSecOps tooling (39%) and cloud and container technologies (38%) are the areas where open source software is most widely adopted. Conducted in collaboration with the Open Source Initiative (OSI) consortium and the Eclipse Foundation, the survey also finds nearly half (49%) of respondents reporting they have increased use of open source software in the last year, with 21% describing that increase as significant. Nearly half (49%), however, said usage of open source software remained the same in the last year. Not surprisingly, the primary reason cited for adopting open source software was reduced costs derived from no licensing fee (62%), followed by avoiding vendor lock-in (55%). Despite that level of adoption, roughly a third of respondents also noted they still struggle with Security updates and patches (39%), instal...