Qriton

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mariusdima
Project Owner

Qriton

Expert Rating

n/a
  • Proposal for BGI Nexus 1
  • Funding Request $50,000 USD
  • Funding Pools Beneficial AI Solutions
  • Total 4 Milestones

Overview

Qriton is an advanced, adaptive monitoring platform designed for modern industrial environments. Inspired by cellular intelligence, it dynamically adjusts to sensor data and employs cutting-edge fault detection techniques, including Hopfield networks, real-time configuration, and AI-driven explanations. Built for both human operators and machine-to-machine (M2M) interactions, Qriton ensures reliable decision-making, predictive maintenance, and real-time fault analysis at scale.

Proposal Description

How Our Project Will Contribute To The Growth Of The Decentralized AI Platform

Qriton is delivering a universal, cell‑inspired monitoring platform that dynamically adapts to sensor data, employing advanced fault detection and integrated AI explanations to optimize industrial performance and reduce environmental impact. Its scalable architecture and real‑time capabilities enable seamless integration with decentralized ecosystems, fostering ethical, sustainable, and community‑driven innovation in line with BGI’s vision for a compassionate and abundant future.

Our Team

Lead by data-driven IT engineer & entrepreneur with over 20 years of experience in machine reasoning, manufacturing systems, and IoT. Developed from scrach production ready platforms that integrated Cognitive AI and IoT into industrial applications. Implemented several cognitive interaction scenarios to enhance the industrial and other enteprise business processes. Passionate about leveraging technology to drive innovation and efficiency.

AI services (New or Existing)

Qriton AI Fault Detection & Adaptive Monitoring

Type

New AI service

Purpose

Real-time fault detection, predictive maintenance, and adaptive system optimization for industrial environments. Qriton dynamically adjusts monitoring thresholds based on real-time conditions, ensuring optimal performance with minimal manual intervention. By leveraging explainable AI, we offer clear diagnostics and root cause analysis, empowering operators to make informed decisions.

AI inputs

Real-time industrial sensor data (temperature, vibration, pressure, etc.), machine status logs, historical fault records, and operational parameters.

AI outputs

Anomaly detection alerts, predictive maintenance insights, dynamic threshold adjustments, AI-generated fault explanations, and recommendations for corrective actions.

The core problem we are aiming to solve

Qriton addresses the challenge of unplanned industrial downtime, inefficient resource utilization, and lack of real-time operational insights. Traditional monitoring systems struggle with adapting to dynamic industrial conditions, leading to delays in fault detection, increased energy waste, and costly maintenance disruptions. By leveraging adaptive AI-driven monitoring, real-time fault detection, and explainable AI diagnostics, Qriton empowers industries to optimize operations, reduce downtime, and enhance safety, ensuring efficient, sustainable, and resilient industrial processes.

Our specific solution to this problem

Qriton continuously adapts to real-time data, using AI to detect issues early and provide clear insights. By automatically adjusting to changing conditions, Qriton ensures that machines and systems operate at their best. Its built-in analytics make it easy to track performance, predict maintenance needs, and prevent costly breakdowns. Instant alerts with AI-driven explanations help teams respond quickly and make informed decisions. Designed to scale, Qriton works seamlessly with both human operators and automated systems, making it a future-ready solution for industrial environments. Unlike traditional monitoring tools that react too late, Qriton takes a proactive approach—keeping businesses ahead of problems and ensuring smooth, reliable operations.

Needed resources

We need to invest in security certification and performance validation across a broader range of real-world industrial environments. This includes conducting rigorous security audits to ensure compliance with industry standards, optimizing system performance under different operational conditions, and integrating additional scalability features. Expanding real-world testing across diverse use cases will help fine-tune adaptability, ensuring reliability and efficiency in large-scale deployments. Additionally, funding will support infrastructure scaling, user experience enhancements, and further AI model refinement to meet the demands of enterprise adoption.

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Proposal Video

Placeholder for Spotlight Day Pitch-presentations. Video's will be added by the DF team when available.

  • Total Milestones

    4

  • Total Budget

    $50,000 USD

  • Last Updated

    24 Feb 2025

Milestone 1 - Security Certification & Performance Validation

Description

Comprehensive security audits and performance validation tests. This includes penetration testing, compliance assessments with industry security standards (ISO 27001, NIST, etc.), and performance benchmarking under real-world industrial conditions. The milestone also covers scalability testing to verify the system's ability to handle increased sensor data loads and multiple operational environments.

Deliverables

Security audit reports with identified risks and mitigation strategies. Compliance assessment with key security standards. Performance benchmark results under multiple industrial scenarios. Optimization of the system based on security and performance findings.

Budget

$20,000 USD

Success Criterion

Achieved security certification requirements and demonstrates reliable performance in diverse industrial environments with validated reports.

Milestone 2 - AI Model Refinement & Optimization

Description

We will extend Qriton’s AI models generation to enhance fault detection accuracy, anomaly prediction, and dynamic threshold adjustments. This phase focuses on improving AI interpretability and reducing false positives while increasing adaptability across different industries.

Deliverables

Adaptable AI models with improved accuracy and efficiency. Enhanced anomaly detection algorithms and predictive maintenance models. AI explainability improvements for better fault diagnosis.

Budget

$15,000 USD

Success Criterion

Model accuracy validated through real-world test cases, reducing false alarms and increasing predictive maintenance effectiveness.

Milestone 3 - Industrial Pilot Deployment & Feedback

Description

Deploy Qriton in selected industrial environments for pilot testing. The goal is to gather real-world feedback, assess user experience, and fine-tune the platform for full-scale enterprise adoption.

Deliverables

Deployment in at least two industrial sites for real-world testing. Feedback reports from industry operators and decision-makers. Iterative improvements based on pilot feedback.

Budget

$10,000 USD

Success Criterion

Qriton is operational in pilot environments with positive feedback and data-driven improvements implemented.

Milestone 4 - Enterprise-Ready Release & Marketplace Integration

Description

Finalize Qriton as an enterprise-ready AI monitoring platform and integrate it into the SingularityNET AI marketplace for decentralized adoption. This milestone ensures the platform is production-ready and accessible to businesses seeking AI-powered industrial monitoring solutions.

Deliverables

Finalized enterprise-ready Qriton version. Integration with SingularityNET’s AI marketplace for broader adoption. Documentation and onboarding materials for industrial users.

Budget

$5,000 USD

Success Criterion

Listed on the SingularityNET marketplace and ready for enterprise adoption, with full documentation and onboarding support.

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