AI has moved very quickly from experimentation to production. A few years ago, many organizations were still asking whether AI could improve their products or internal workflows. Today, the question is different: how can teams ship AI-enabled software safely, reliably, and responsibly? That shift matters because AI is no longer just a research project or a boardroom talking point. It is being added to customer support platforms, fraud detection systems, developer tools, compliance workflows, cloud operations, marketing engines, and enterprise applications. The opportunity is real, but so is the risk. Traditional software usually behaves in predictable ways. If the logic is written correctly, the same input should produce the same output. AI systems are different. A generative AI feature may produce useful answers one moment and questionable answers the next. A model can hallucinate, misread context, expose sensitive information, or make recommendations that sound confident but are wr...
Atlassian today extended the scope of tasks that artificial intelligence (AI) can automate directly from its Jira project management software, including assigning work to an AI coding agent. Initially, Jira integration with AI coding tools includes Claude Code from Anthropic, Cursor, and GitHub Copilot, with support for Codex from OpenAI forthcoming. Software engineering teams can also leverage the DX AI cost management report tool to unify spend and token data across third-party tools like Claude, Cursor, and GitHub Copilot and Jira projects. Additionally, Atlassian is embedding a Jira Coding Agent in every paid plan that makes use of the context provided by Jira to convert items into ready-to-review pull requests without requiring developers to set up a local application development environment. At the same time, Jira Planner can now pull from a codebase, Jira and the Confluence wiki tool to define requirements and generate a structured technical specification that either an AI age...