@yacinelearning: if you are interested in learning about the infra behind auto-research this 1h30min interview with the paradigma folks …
Summary
Interview discussing infrastructure for auto-research using DAGs, including how agents can execute DAGs and how to build large public DAGs.
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Cached at: 05/26/26, 09:07 AM
if you are interested in learning about the infra behind auto-research this 1h30min interview with the paradigma folks is for you
in it we look at:
- why dag are great research substrate
- how to let agents run that dag
- ways to make big public dag
- how to avoid bad bad dag https://t.co/y8wDehUjoo
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