OUR DEMO CASES_

Smart software for mission-critical sectors

HIVEMIND integrates AI-driven agents into structured workflows, tackling complex software engineering tasks through intelligent command execution, adaptive batch processing, and automated input handling. Our framework ensures that every stage of development aligns with security, compliance, and efficiency standards, optimizing the entire SDLC in high-impact environments.

CITIZEN ENGAGEMENT_

Country

Romania

Lead Partner

Software Imagination & Vision SRL (SIMAVI)

The Objective

Enhancing smart city collaboration through AI-driven urban management.

The Challenge

SIMAVI develops digital platforms for community engagement but struggles with requirement collection, redundant processes, and maintaining alignment between system modules. Security and compliance with ISO/IEC 27000-series also add complexity.

The HIVEMIND Approach

  • ElicitAgent ensures requirement completeness and traceability across development stages.
  • QualityAgent maintains alignment between requirements and developed modules.
  • CodeGenAgent automates redundant processes and provides development recommendations.

Expected Impact

70% requirement completeness on first iteration
60% reduction in development time
80% accuracy in AI-driven coding advice

DISASTER RESPONSE_

Country

Turkey

Lead Partner

HAVELSAN

The Objective

Streamlining emergency response through AI-driven coordination and automation.

The Challenge

HAVELSAN develops emergency response systems but faces challenges in system design, workload estimation, and maintaining coding standards. Fast-paced development cycles lead to inefficiencies in project coordination.

The HIVEMIND Approach

  • ArchitectureAgent accelerates agile system modelling, improving documentation.
  • TaskGenAgent enhances task estimation and workload distribution based on past data.
  • CodeGenAgent ensures adherence to coding standards, reducing inconsistencies.

Expected Impact

40% time reduction in system architecture design
70% accuracy in task effort estimation
80% compliance with internal coding standards

HEALTHCARE_

Country

Turkey

Lead Partner

TIGA Healthcare Technologies

The Objective

Developing secure AI-powered software for auto-contouring organs in medical imaging.

The Challenge

TIGA specializes in AI-driven healthcare applications that must comply with strict data protection regulations. Ensuring software trustworthiness, secure-by-design principles, and compatibility with multi-architecture environments remains a key challenge.

The HIVEMIND Approach

  • ElicitAgent ensures compliance with data privacy regulations from the early stages.
  • QualityAgent maintains alignment between requirements and verification processes.
  • DeploymentAgent optimizes containerized solutions for high-performance computing clusters.

Expected Impact

95% accuracy in identifying data protection needs
90% faulty code detection within two testing iterations
95% success rate in AI-driven deployment recommendations

AUTOMATED MOBILITY_

Country

UK

Lead Partner

Queen's University Belfast (QUB)

The Objective

Ensuring reliability in perception and localization systems for autonomous vehicles.

The Challenge

Autonomous driving demands high-assurance software where safety, precision, and compliance are critical. QUB is developing an AI-powered prototype for autonomous driving, but ensuring software reliability, verification, and validation is a major bottleneck.

The HIVEMIND Approach

  • CodeGenAgent generates structured, standards-compliant code for AI-driven perception and motion planning.
  • QualityAgent & TestGenAgent automate validation & testing, detecting vulnerabilities early.
  • MaintainAgent identifies and mitigates potential system failures, ensuring long-term reliability.

Expected Impact

40% reduction in code development time
90% faulty code detection within two iterations of testing
50% reduction in time consumed by test development

MANUFACTURING_

Country

Germany

Lead Partner

Fraunhofer IWU

The Objective

Developing digital twins to enhance efficiency and energy optimization in manufacturing.

The Challenge

Fraunhofer IWU specializes in optimizing manufacturing processes through digital twins (DTs), but compatibility issues among diverse data sources cause delays in software development. Current implementations involve complex C/C++ and Python workflows, containerized with Docker in multi-architecture clusters.

The HIVEMIND Approach

  • ElicitAgent & ArchitectureAgent define system requirements and resolve compatibility issues.
  • CodeGenAgent generates code aligned with architecture, reducing misunderstandings between teams.
  • DeploymentAgent optimizes CI/CD processes, managing Docker-based solutions in multi-architecture clusters.

Expected Impact

40% reduction in development time
70% of AI-supported code aligns with system architecture
95% improvement in energy optimization recommendations

WHAT ARE YOU WAITING FOR?

Be the first to know about HIVEMIND

Funded by the European Union. Views and opinions expressed are however those of the author(s) only and do not necessarily reflect those of the European Union or HaDEA. Neither the European Union nor the granting authority can be held responsible for them.

© HIVEMIND. All rights reserved.