- Популярные видео
- Авто
- Видео-блоги
- ДТП, аварии
- Для маленьких
- Еда, напитки
- Животные
- Закон и право
- Знаменитости
- Игры
- Искусство
- Комедии
- Красота, мода
- Кулинария, рецепты
- Люди
- Мото
- Музыка
- Мультфильмы
- Наука, технологии
- Новости
- Образование
- Политика
- Праздники
- Приколы
- Природа
- Происшествия
- Путешествия
- Развлечения
- Ржач
- Семья
- Сериалы
- Спорт
- Стиль жизни
- ТВ передачи
- Танцы
- Технологии
- Товары
- Ужасы
- Фильмы
- Шоу-бизнес
- Юмор
Ensemble Consensus Reasoning with Gemini 3 | Intent Drift Radar Demo
🚨 The Problem
Long-running AI agents fail when user intent changes gradually.
The agent keeps executing the original plan — causing wrong actions, wasted effort, and broken trust.
Intent Drift Radar solves this by turning intent change into a deterministic, auditable signal.
🧠 What This Demo Shows
Temporal intent reasoning over a 5-day signal timeline
Deterministic drift decisions (not chat output)
Machine-readable drift signatures for agent orchestration
Evidence traceability — every decision links back to specific days
Interactive auditability via timeline ↔ evidence highlighting
🔥 Killer Feature: Ensemble Consensus Reasoning
This demo highlights ensemble consensus reasoning, a feature rarely seen even in production systems:
Runs 3 parallel Gemini 3 analyses (low / medium / high thinking)
Computes majority-vote consensus
Aggregates evidence by agreement level:
3/3 agreement
2/3 agreement
1/3 disagreement
Exposes where models agree and disagree, transparently
➡️ 3 models → 1 decision, with full explainability.
🧩 Why This Matters for AI Agents
With Intent Drift Radar, downstream agents can:
Pause execution
Re-plan workflows
Ask clarifying questions
Escalate to a human
—all based on evidence-backed intent change, not guesswork.
This is infrastructure for the next generation of long-horizon AI agents.
🏗️ Tech Stack (Production-Grade)
Model: Gemini 3 (primary + automatic fallback)
Backend: FastAPI (Python)
Frontend: React + TypeScript
Infra: Google Cloud Run + Terraform
Reliability: Timeouts, retries, structured validation, ensemble degradation
Output Guarantees: 5-layer schema enforcement + post-processing guardrails
🔗 Links
🌐 Live Demo (No Login): https://intent-drift-radar-2jxc3vgkpa-nw.a.run.app
📦 GitHub: https://github.com/prabhakaran-jm/intent-drift-radar
🧪 Ensemble API: /api/analyze/ensemble
🏆 Hackathon Context
Built for the Gemini 3 Hackathon to demonstrate what’s possible on top of Gemini —
not just what Gemini can say, but how it can power reliable decision systems.
Видео Ensemble Consensus Reasoning with Gemini 3 | Intent Drift Radar Demo канала Infinite Cloud Learning
Long-running AI agents fail when user intent changes gradually.
The agent keeps executing the original plan — causing wrong actions, wasted effort, and broken trust.
Intent Drift Radar solves this by turning intent change into a deterministic, auditable signal.
🧠 What This Demo Shows
Temporal intent reasoning over a 5-day signal timeline
Deterministic drift decisions (not chat output)
Machine-readable drift signatures for agent orchestration
Evidence traceability — every decision links back to specific days
Interactive auditability via timeline ↔ evidence highlighting
🔥 Killer Feature: Ensemble Consensus Reasoning
This demo highlights ensemble consensus reasoning, a feature rarely seen even in production systems:
Runs 3 parallel Gemini 3 analyses (low / medium / high thinking)
Computes majority-vote consensus
Aggregates evidence by agreement level:
3/3 agreement
2/3 agreement
1/3 disagreement
Exposes where models agree and disagree, transparently
➡️ 3 models → 1 decision, with full explainability.
🧩 Why This Matters for AI Agents
With Intent Drift Radar, downstream agents can:
Pause execution
Re-plan workflows
Ask clarifying questions
Escalate to a human
—all based on evidence-backed intent change, not guesswork.
This is infrastructure for the next generation of long-horizon AI agents.
🏗️ Tech Stack (Production-Grade)
Model: Gemini 3 (primary + automatic fallback)
Backend: FastAPI (Python)
Frontend: React + TypeScript
Infra: Google Cloud Run + Terraform
Reliability: Timeouts, retries, structured validation, ensemble degradation
Output Guarantees: 5-layer schema enforcement + post-processing guardrails
🔗 Links
🌐 Live Demo (No Login): https://intent-drift-radar-2jxc3vgkpa-nw.a.run.app
📦 GitHub: https://github.com/prabhakaran-jm/intent-drift-radar
🧪 Ensemble API: /api/analyze/ensemble
🏆 Hackathon Context
Built for the Gemini 3 Hackathon to demonstrate what’s possible on top of Gemini —
not just what Gemini can say, but how it can power reliable decision systems.
Видео Ensemble Consensus Reasoning with Gemini 3 | Intent Drift Radar Demo канала Infinite Cloud Learning
Комментарии отсутствуют
Информация о видео
30 января 2026 г. 2:49:20
00:02:45
Другие видео канала




















