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DocuNet

DocuNet is a decentralized AI subnet on Bittensor enabling competitive document intelligence. Miners extract structured data, validators verify accuracy, and rewards align with real enterprise demand.

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Description

DocuNet — Enterprise-Grade Document Intelligence Subnet on Bittensor

Overview

DocuNet is a decentralized AI subnet built on Bittensor that creates a competitive marketplace for enterprise document intelligence. It enables miners to extract structured data from complex business documents while validators verify accuracy through sampling-based adjudication. Rewards are distributed based on verified performance, aligning economic incentives with measurable intelligence.

DocuNet transforms enterprise document automation budgets into on-chain economic demand, creating a sustainable intelligence market within the Bittensor ecosystem.


Problem

Enterprises across finance, insurance, legal, and accounting sectors process millions of documents annually — invoices, contracts, claims, compliance forms, and KYC records.

Current solutions suffe

  • High error rates (5–20

  • Expensive

  • Vendor loc

  • Lack of transparent performance benchmarking

  • Limited incentive for continuous quality improvement

Traditional AI APIs operate as black boxes. There is no open competition that continuously rewards the most accurate models in a trust-minimized environment.

This creates inefficiency, high operational costs, and stagnation in model performance.

Solution

DocuNet introduces a decentralized competitive framework for document intelligence.

Core Idea

  • Miners compete to extract structured data from documents.

  • Validators verify outputs through randomized sampling.

  • Rewards are distributed proportionally to verified accuracy.

  • Stake and reputation mechanisms discourage low-quality participation.

The system produces a measurable stream of intelligence, not just AI output.


How It Works

1. Miner Role

Miners receive document inputs and return structured outputs in standardized JSON format:

  • Extracted fields (invoice number, total amount, due date, policy ID, etc.)

  • Confidence scores

  • Optional metadata

Miners can use any internal model architecture (OCR, LLM, layout-aware transformers), creating open competition.

2. Validator Role

Validators perform randomized sampling and verification against ground truth or adjudicated references.

They compute:

  • Verified Accuracy

  • Field-level precision

  • Confidence calibration error

  • Latency metrics

Validators are also incentivized, and dishonest behavior can be penalized.

3. Incentive Mechanism

At each epoch, subnet emissions are distributed using a performance-weighted scoring model:

Score_i =
0.7 × VerifiedAccuracy

  • 0.2 × NormalizedThroughput

  • 0.1 × Reputation

Rewards are proportional to relative performance within the subnet.

This ensures:

  • Accuracy dominates incentives

  • Speed matters but does not override quality

  • Long-term consistent performance is rewarded


Anti-Exploitation Design

DocuNet integrates multiple defensive layers:

  • Minimum stake requirement to reduce Sybil attacks

  • Progressive sampling for suspicious miners

  • Reputation decay for inconsistent accuracy

  • Cross-validation to prevent validator collusion

  • Confidence calibration penalties for overconfident false outputs

This creates a game-theoretically stable competitive environment.


Proof of Intelligence

Each epoch produces a verifiable time-series of miner performance:

  • Verified accuracy

  • Sample count

  • Calibration error

  • Uptime

This creates a transparent intelligence benchmark, aligning directly with Bittensor’s vision of measurable AI competition.


Market Opportunity

Enterprise document automation represents a multi-billion dollar global market, particularly in:

  • Insurance claim processing

  • Accounts payable automation

  • Legal contract parsing

  • Financial compliance (KYC / AML)

DocuNet offers:

  • Competitive performance optimization

  • Reduced vendor dependency

  • Transparent benchmarking

  • Economic alignment between users and intelligence providers

Enterprise payments can flow into subnet treasury, converting real-world automation budgets into sustainable on-chain incentive loops.


Why Bittensor

Bittensor is uniquely positioned to host DocuNet because:

  • It provides a decentralized emission model

  • It enables competitive AI markets

  • It aligns incentives between intelligence producers and validators

  • It supports measurable performance scoring

DocuNet exemplifies Bittensor’s core thesis: intelligence as a market.


Roadmap

Phase 1 — Ideathon

  • Scoring simulation engine

  • Miner competition modeling

  • Economic design documentation

Phase 2 — Testnet Deployment

  • Subnet implementation using Bittensor template

  • Basic miner & validator nodes

  • Live scoring dashboard

Phase 3 — Enterprise Pilot

  • Small-scale invoice automation pilot

  • SLA-based accuracy thresholds

  • Revenue-to-subnet treasury integration


Vision

DocuNet aims to become the standard decentralized benchmark for enterprise document intelligence.

Instead of trusting opaque AI APIs, businesses will access a competitive intelligence market where accuracy is continuously measured, incentivized, and improved.

This is not just another AI service.

It is a measurable, economically aligned intelligence layer for real-world business infrastructure.

Progress During Hackathon

<p>During the Ideathon phase, we focused on building a solid economic and technical foundation for DocuNet rather than only conceptual design.</p><h2>1. Incentive Mechanism Design</h2><p>We developed and refined a performance-based reward model where emissions are allocated according to:</p><ul><li><p>Verified accuracy</p></li><li><p>Normalized throughput</p></li><li><p>Reputation score</p></li></ul><p>We simulated multiple miner scenarios to test:</p><ul><li><p>High-accuracy / low-speed miners</p></li><li><p>High-speed / low-accuracy miners</p></li><li><p>Malicious actors attempting random outputs</p></li></ul><p>The simulation confirmed that the weighting system strongly favors sustained accuracy over short-term gaming behavior.</p><h2>2. Attack &amp; Game-Theory Analysis</h2><p>We analyzed potential attack vectors, including:</p><ul><li><p>Sybil attacks</p></li><li><p>Validator collusion</p></li><li><p>Confidence inflation</p></li><li><p>Low-effort spam miners</p></li></ul><p>Mitigation mechanisms were designed, including:</p><ul><li><p>Minimum stake requirements</p></li><li><p>Progressive sampling</p></li><li><p>Reputation decay</p></li><li><p>Cross-validator auditing</p></li></ul><p>This ensures long-term economic stability of the subnet.</p><h2>3. Subnet Architecture Planning</h2><p>We mapped the full technical architecture using:</p><ul><li><p>Bittensor subnet template (Python-based)</p></li><li><p>Miner and validator role separation</p></li><li><p>JSON schema for structured extraction outputs</p></li><li><p>Epoch-based scoring logic</p></li></ul><p>We also defined clear API specifications for miner input/output standardization.</p><h2>4. Proof-of-Intelligence Framework</h2><p>We designed a measurable scoring system that produces a time-series performance stream per miner, including:</p><ul><li><p>Verified accuracy</p></li><li><p>Calibration error</p></li><li><p>Sample size</p></li><li><p>Latency</p></li></ul><p>This aligns with Bittensor’s core philosophy of measurable intelligence markets.</p><h2>5. Roadmap Validation</h2><p>We created a realistic deployment roadmap:</p><ul><li><p>Simulation environment for scoring logic</p></li><li><p>Testnet deployment plan</p></li><li><p>Initial enterprise pilot use case (invoice processing)</p></li></ul><p>The focus during the Ideathon was ensuring that DocuNet is economically viable, technically implementable, and aligned with real-world demand.</p>

Tech Stack

Web3
Python
Next
Bittensor
PyTorch

Fundraising Status

<h1>Fundraising Status</h1><p>DocuNet is currently in the ideation and technical design phase and has not raised external capital.</p><p>At this stage, the project is bootstrapped and focused on validating:</p><ul><li><p>Incentive mechanism robustness</p></li><li><p>Subnet architecture feasibility</p></li><li><p>Market applicability in enterprise document automation</p></li></ul><p>Our immediate priority is to complete simulation testing and testnet deployment before pursuing formal fundraising.</p><h2>Future Funding Strategy</h2><p>Following successful testnet validation, we plan to explore:</p><ul><li><p>Strategic ecosystem grants within the Bittensor community</p></li><li><p>Early-stage Web3 infrastructure investors</p></li><li><p>Enterprise pilot partnerships to validate revenue flow</p></li></ul><p>We believe fundraising should follow demonstrated technical viability and measurable performance, rather than precede it.</p><p>Our long-term vision is to create a sustainable intelligence market driven by real enterprise demand, minimizing reliance on speculative capital.</p>

Team LeaderMMaulana Adib
Sector
InfraAIOther

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