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MVP Investment

$10K - $14K
6-10 weeks
Engineering
$8,000
GPU Compute
$800
LLM API Credits
$500
SaaS Stack
$300
Domain & Legal
$100

6mo ROI

1-2x

3yr ROI

10-25x

Automation tools have long sales cycles but high retention. Expect $5K MRR by 6mo, accelerating to $500K+ ARR at 3yr as enterprises adopt.

Talent Scout

Y

Yangbin Yu

Tencent Hunyuan

M

Mingyu Yang

Tencent Hunyuan

J

Junyou Li

Tencent Hunyuan

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Founder's Pitch

"ProAct enables AI agents to excel in long-horizon planning with enhanced lookahead reasoning and stable decision-making."

AgentsScore: 8View PDF ↗

Commercial Viability Breakdown

0-10 scale

High Potential

2/4 signals

5

Quick Build

4/4 signals

10

Series A Potential

4/4 signals

10

Sources used for this analysis

arXiv Paper

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Analysis model: GPT-4o · Last scored: 2/5/2026

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Why It Matters

ProAct addresses the core challenge of compounding errors in long-horizon planning for AI agents in interactive environments, enabling more accurate and efficient decision-making.

Product Angle

ProAct could be productized as a middleware solution for AI developers, offering a modular system to enhance agents in gaming, autonomous robotics, and virtual simulations.

Disruption

ProAct can replace existing less efficient planning methods in AI by offering robust solutions for agents to reason over long horizons, surpassing current state-of-the-art models.

Product Opportunity

The market for enhanced AI decision-making tools is significant, particularly in sectors like gaming, autonomous vehicles, and smart robotics where long-horizon planning enhances performance. Companies in these sectors would pay for improved AI capabilities to optimize performance and user experience.

Use Case Idea

Integrate ProAct into educational platforms to create intelligent tutors that effectively plan and adjust to student learning paths, enhancing personalized education.

Science

ProAct enhances LLM agents' decision-making using a two-stage process. Stage one, GLAD, distills environment-based search trees into concise reasoning chains for the agent, avoiding the need for complex search during inference. Stage two uses MC-Critic to refine decision accuracy by providing low-variance value estimates via lightweight rollouts, stabilizing policy optimization in RL algorithms.

Method & Eval

ProAct was tested in stochastic and deterministic environments such as 2048 and Sokoban, showing improved planning accuracy. A 4B parameter model trained with ProAct outperformed all open-source baselines and was on par with closed-source state-of-the-art models.

Caveats

Scaling to more complex environments might introduce unforeseen challenges, and the dependency on quality of the initial environment data for training could limit its effectiveness.

Author Intelligence

Yangbin Yu

LEAD
Tencent Hunyuan

Mingyu Yang

LEAD
Tencent Hunyuan

Junyou Li

Tencent Hunyuan