@agent_wrapper: This is a very cool launch from @databricks! Meta-harnesses are going to become common-place @aoagents was built and la…
Summary
Databricks launched Omnigent, a meta-harness for combining, controlling, and sharing AI agents, validating the meta-harness approach.
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This is a very cool launch from @databricks!
Meta-harnesses are going to become common-place @aoagents was built and launched as a meta harness 4 months ago
Now we have direct validation from a centi-billion company following along on the same path :)
I’m hiring for Growth / GTM / Engineering roles to take @aoagents to the next level
The world is catching up with us and we need to keep moving faster
Databricks (@databricks): Introducing 𝗢𝗺𝗻𝗶𝗴𝗲𝗻𝘁, a meta-harness to combine, control, and share your agents.
The best teams already mix models and harnesses and design loops that drive teams of agents. No single harness can keep up with that alone. So we built the layer above — we call it a
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