Ask HN: What makes early-stage AI accelerators useful (and what doesn't)?
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Hi HN — we recently launched the Berkeley Xcelerator (https://rdi.berkeley.edu/xcelerator), a non-dilutive accelerator program run by Berkeley RDI (https://rdi.berkeley.edu/) for pre-seed and seed-stage teams building in AI and agentic AI. We’d love to get some feedback from the community!

Over the past three years, Berkeley Xcelerator has supported 110+ teams across AI, cybersecurity, and decentralized technologies, whose founders have gone on to raise $650M+ in follow-on funding, spanning 100+ countries.

Some concrete details about the Xcelerator itself:

- The program is non-dilutive (no equity taken)

- Open to pre-seed and seed-stage AI / agentic AI startups

- No UC Berkeley affiliation required

- Selected teams receive support through Berkeley RDI’s research community and ecosystem partners

- Enablement includes cloud, GPU, and API credits from industry partners (including Google Cloud, Google DeepMind, OpenAI, and Nebius, with more to be announced)

- The program culminates in a Demo Day at the Agentic AI Summit (Aug 1–2, 2026) at UC Berkeley, where we are expecting 5,000+ in-person attendees

Here’s what we’d really like input on:

- If you’ve built or joined an early AI startup, what actually helped you most early on?

- If you’ve done an accelerator, what helped and what was a waste of time?

- For technically deep projects (infra, agentic systems, safety-sensitive work), what kinds of feedback or structure mattered most before product-market fit?

If you’d like to apply to the Berkeley Xcelerator, applications are open through the end of February. (https://forms.gle/KjHiLAHstAvfHdBf7)

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