{AI Marketing Playbook}

Internal research · Brevis

How new AI dev tools get adopted

A study of 110 developer-facing AI products that grew from launch to wide adoption through earned, organic means: no paid spend, no borrowed fame. Built to inform how Brevis launches its AutoResearch framework and ARCA.

110qualified case studies
9categories
97%grew via open source
the pattern

Five things that actually recur

1

Open source is the distribution

97% ship the product as the open-source repo itself. The GitHub page is the landing page and the star count is the public scoreboard; brand social accounts stay small by comparison.

2

Hacker News is the most common launch venue

Show HN, Launch HN, and the organic front page are where most of these went public. Roughly two-thirds touched HN at launch, more than any other external channel.

3

Getting embedded is the biggest single breakout

The most common breakout trigger is becoming a default inside a bigger tool (distribution-by-integration, 26%), ahead of any individual launch channel. For example: built into LangChain, Ollama, or the Hugging Face ecosystem, or going OpenAI-API-compatible.

4

A hard number does the work

45% led with one verifiable performance number, such as 2x faster with 70% less VRAM. This audience reruns claims, so a checkable result carries further than a product pitch.

5

Earned, not paid

Tech press reached 71% and peer founders amplified 38%. The same named voices recur (swyx, Simon Willison, Karpathy, Andrew Ng). Paid channels are near zero.

the set

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