
Baz releases Baz Planner, which uses four specialized AI agents to analyze code at the planning stage, and extends its seed funding by $9M to $17M
THE SO WHAT
Baz pushing multi-agent code analysis into the planning phase — and raising to $17M seed — is another sign that “shift left” now includes AI reviewers, not just humans. Engineering leaders should experiment with agents at spec and design time, where catching architectural issues is cheaper than post-PR linting.
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