Verifier as moat
2 items · chronological order
Courts Are Swamped With AI-Powered Do-It-Yourself Lawsuits
Bloomberg's DIY-lawsuit lede buries the structural point: pro se employment filings grew 49% YoY (4,100 → 6,400) while attorney-led grew 15%, and Nippon Life burned ~$300K defending one ChatGPT-assisted plaintiff trying to reopen a settled case. That's the actual story — AI didn't make plaintiffs smarter, it flipped the litigation cost asymmetry. Volume markets with high cost-to-respond just became permanently uneconomic for defendants, and the unoccupied product surface is defense-side: adversarial-output verification (sanctions-detection, AI-authorship forensics, response-cost triage) — EvalRig-adjacent, opposite end of the market from Harvey.
Courts Are Swamped With AI-Powered Do-It-Yourself Lawsuits
Pro se employment filings grew 49% year-over-year (4,100 to 6,400) while attorney-led filings grew 15% — and Nippon Life burned roughly $300K defending one ChatGPT-assisted plaintiff trying to reopen a settled case. AI didn't make those plaintiffs more legally sophisticated; it flipped the cost asymmetry so that filing is nearly free and response is not. That's the same structural gap the BBC piece exposes in information distribution and Co-Scientist exposes in research: generation costs collapsed, verification costs didn't move. The unoccupied product surface here sits on the defense side, sanctions detection, AI-authorship forensics, response-cost triage, and it's the same category as the verifier corpus DeepMind built, just at the opposite end of the market from Harvey. Volume markets with high cost-to-respond are permanently changed; the firms that figure out verification tooling own the economics of what comes next.