Echo is live.
Our prediction intelligence system is now running in production, turning uncertainty into measurable outcomes.
Prediction should be general, evaluable, trainable, and profitable. Echo is how we get there.
Developer API coming soon. Stay tuned.
UniPat AI
33 posts
Joined January 2026
- Replying to @UniPat_AI[10/10] We think the next frontier for AI is not just understanding the world. 🌍 It’s reasoning about how the world changes. 🔄🤖 Let the world hear the echo of intelligence in prediction. 📣 🌐 Website: echo.unipat.ai 📝 Blog: unipat.ai/blog/Echo
- Replying to @UniPat_AI[9/10] Echo outperforms the human market: 🧠⚔️📊 🏛️ 63.2% in Politics & Governance 📅 59.3% on 7+ day horizons 🌫️ 57.9% when the market is uncertain
- Replying to @UniPat_AI[8/10] EchoZ API delivers calibrated probabilities, evidence, counterfactual analysis, and monitoring recommendations. 📡 Built to capture alpha. In the last two weeks, 4 of 5 OpenClaw bots using our API profited on Polymarket. 📈 Join the waitlist: echo.unipat.ai/apply
- Replying to @UniPat_AI[7/10] The lead is robust. 📈🛡️ Across the full σ sensitivity sweep, EchoZ stays #1. The benchmark is also designed to remain stable under: 🔄 missing submissions 🧊 cold starts 🌊 changing model pools
- Replying to @UniPat_AI[6/10] On the March 2026 Echo leaderboard, EchoZ-1.0 ranks #1 with 1034.2 Elo — ahead of Gemini-3.1-Pro, Claude-Opus-4.6, Grok-4.1-Fast, and GPT-5.2.
- Replying to @UniPat_AI[5/10] Trainable At the core is EchoZ-1.0 — the first LLM trained end-to-end under the Train-on-Future paradigm. 🚀 The core mechanisms include: 🧪 Dynamic Question Synthesis 🔍 Rubric Search 🗺️ MapReduce Agent Architecture
- Replying to @UniPat_AI[4/10] We rethought prediction evaluation. 📊 Prediction gets easier as new information arrives, so comparing models at different timestamps is noisy. Echo evaluates models in pairwise battles, aligned on the same question at the same prediction time. 🎯⏱️
- Replying to @UniPat_AI[3/10] Echo has 3 layers🧩: — a dynamic evaluation engine — a Train-on-Future post-training paradigm — an AI-native prediction API
- Replying to @UniPat_AI[2/10] Humans have always predicted — from farming to markets to elections. In modern prediction markets, this instinct becomes a recursive, collective intelligence that reflects both social meaning and economic value. AI can empower this. 🤖 This is what we aim to do.
- Today we’re introducing Echo — our full-stack prediction intelligence system, which turns uncertainty🔮 into profit📈. We Make Prediction General, Evaluable, Trainable and Profitable. 🌐Website:
- Replying to @UniPat_AI[9/9] Next step: towards “AI executes science.” Research-grade reasoning in a 30B model, competitive with frontier systems at a fraction of params.💥 🔗 GitHub: github.com/UniPat-AI/UniS… 📝 Blog: unipat.ai/blog/UniScient…
- Replying to @UniPat_AI[8/9] Critical: big performance gains persist even WITHOUT tool access. Not just better retrieval — intrinsic scientific reasoning was genuinely enhanced through training.🚀










