The agricultural sector today

1,4 M ETP

 are employed in agriculture, forestry, fishing and agri-food in 2022, representing approximately 5% of total employment

390 000

farms in metropolitan France

21%

of the increase in land area under organic farming between 2019 and 2023

18%

reduction of total agricultural emissions between 1990 and 2023

Reinventing agriculture

Implementing a patient-centered care experience

Citizens are increasingly aware of the origin and impact of food products. Thanks to digital tools (traceability apps, informative QR codes, participatory platforms), they can learn and take conscious action. We promote transparency by allowing consumers to discover agricultural practices (organic, agroecological), support committed producers, and make informed choices, strengthening the link between agricultural production and public trust.


Improving the employee experience through digital technology and AI

Farmers, technicians, and cooperatives are facing increasing complexity (climate, regulations, market). Digital technology and AI help optimize planting, anticipate climate risks (water stress, pests), and manage farms using mobile tools, drones, and IoT sensors. By automating routine tasks, these technologies free up time for professionals to focus on innovation, diversification, or the ecological transition.


Promoting the effectiveness of integrated care

Sustainable agriculture requires a holistic approach: optimized irrigation, crop rotation, short supply chains, and synergies between stakeholders. We offer collaborative cloud and IoT platforms to integrate weather, soil, market, and logistics data. By connecting farms, collection centers, and consumers, we increase efficiency, reduce waste, and support resilience to the effects of climate change.

Topics addressed

  • Data Warehouse Remediation (flows, errors, management, roadmap)

    Diagnosis and stabilization of troubled Data platforms (Data Factory, Power BI).

  • Migration of Big Data platforms (HDP to CDP, cost reduction)

    Cost reduction and performance improvement on critical platforms.


  • Implementation of large-scale data and analytics platforms (e.g., Linky)

    Design of robust and scalable infrastructures for big data.


  • Deployment of AI models in industrial or regulated environments (healthcare, energy, transport)

    AI applied to predictive maintenance, anomaly detection, clinical diagnostics.

  • Data governance for AI projects (quality, compliance, annotation)

    Structuring datasets, putting them under control for AI use cases.

  • Backend architecture redesign / product scale-up (healthcare, mobility, IoT)

    Technical overhaul, scalability, regulatory compliance, sustainable UX/UI.


  • Creation of CE and HDS compliant DTx (Digital Therapeutics) solutions

    Reimbursable health applications and development under QARA constraints.

  • Cloud and platform cost optimization (FinOps, observability)

    Consulting on reducing cloud expenses through optimized architecture and monitoring.

  • DevOps support and security (CI/CD, vault, encryption)

    Secure industrialization of software deployments and pipelines.

  • AI governance (roles, committee, compliance, project management)

    Structuring organizations to frame AI uses over the long term.


Our achievements in health

By David Walter November 6, 2025
Project Context Michelin aimed to develop a new generation of digital services based on data from connected tires. The goal was to deliver added value to truck fleet managers and maintenance centers worldwide. The challenge lay in the collection, processing, and supervision of massive sensor data, while ensuring robustness, scalability, and relevance of analytics. Objectives The main objective was to establish a technical and architectural framework to: Efficiently collect and process data from connected tires Monitor data flows and measure the impact of business use cases Create a Big Data platform ready to evolve with growing data volumes Mission Duration A long-term engagement , combining initial architectural study, implementation of monitoring systems, and ongoing support. Implementation Agaetis leveraged its Data and Cloud expertise to: Initial architecture study: Define technological and structural choices Platform monitoring: Implement monitoring principles to ensure robustness and availability Load analysis: Evaluate the impacts of various business use cases Big Data framework definition: Integrate best practices to accelerate implementation Data Science work: Perform domain-specific analysis and develop new indicators and services Results Achieved New digital services: Creation of innovative solutions for fleet managers Robust and scalable platform: A Big Data environment ready to handle massive data volumes Operational optimization: Improved traceability and KPI tracking Enhanced innovation: Data transformed into strategic levers for Michelin Key Success Factors Agaetis’ expertise in Big Data and IoT data processing End-to-end methodology: From architecture to Data Science Immersion in the client’s business environment Proactive supervision ensuring robustness and reliability  And You? Are you wondering about: Leveraging data from your connected equipment ? Creating new digital services based on Data? Implementing a robust and scalable Big Data architecture ? 👉 Contact our experts to transform your IoT data into innovative, value-generating services.
By David Walter November 6, 2025
Project Context France’s first research foundation dedicated to innovation in pain management aimed to launch a market-ready application resulting from its clinical research and development program. The goal was to transform the app into a Digital Therapeutic (DTx) reimbursed by the national health insurance system. Objectives The organization focuses on driving healthcare innovation through extensive collaborations with hospitals, research institutes, universities, and technology companies. The main challenges included: Transforming an application into a Digital Therapeutic (DTx) reimbursed by the national health system. Managing the transition of patients to this new platform. Preparing a new data warehouse to support scientific research. Mission Duration 3 collaborators over 3 years Methodology Agaetis provided its expertise through targeted and structured actions: Audit of existing systems: Evaluation of current infrastructure to identify needs and areas for improvement. Decision support for partner selection: Assistance in choosing competent and reliable technology partners. Technology advisory: Guidance on application architecture, security, and scalability to ensure long-term viability. Results Achieved Development of an application supporting patients in chronic pain management, progressing toward recognition as a reimbursable DTx. Rigorous technical assessment and selection of strategic partners. Adherence to roadmap milestones , ensuring steady progress and alignment with expectations. This project highlights how Agaetis leverages its technological and strategic expertise to transform challenges into innovative, effective solutions — creating tangible value for clients in the healthcare sector.
By David Walter November 6, 2025
Context The topic of artificial intelligence is a major issue for an insurance and digital services group. The 2024 edition of a trade fair dedicated to local authorities, sponsored by the company, will focus on AI serving humanity . The company’s clients are already asking about its positioning regarding AI, and it aims to demonstrate its concrete commitment to this path. Proposal Support in developing an AI strategy and translating it into a 2- to 3-year roadmap , including the implementation of three proof-of-concept (POC) projects. Conclusion The POCs aim to demonstrate the practical capabilities of AI to improve support services, provide regulatory assistance, and facilitate multilingual communication. By assisting the company in defining and implementing its AI strategy, these POCs will showcase its commitment to innovation and continuous improvement of its services. 1. POC #1: Omnichannel Orchestrator for User Support Objective: Reduce employee workload and improve service quality. Solution: An omnichannel orchestrator that routes user requests to the best resolution channel. Technology Partner: A conversational orchestration solution provider. Timeline: 4 to 6 weeks. Budget: 12 to 15 joint workdays. Stakeholders: Support manager, customer relations expert, partner technical expert. 2. POC #2: AI Assistant for Urban Planning Objective: Provide additional regulatory assistance to municipal services. Solution: A chatbot based on a multi-source knowledge base, answering urban planning questions. Technology Partner: A specialized AI integrator. Timeline: 4 weeks. Budget: To be defined with partners. Stakeholders: Urban planning managers, AI experts, data scientists.  3. POC #3: Multilingual Chatbot for Local Authorities Objective: Facilitate communication between citizens and local administrations in multiple languages. Solution: A chatbot powered by public information from a website and other sources, supporting 3 to 4 languages. Technology Partner: A specialized AI integrator. Timeline: 4 weeks. Budget: To be defined with partners. Stakeholders: Web and business managers, AI experts, data scientists.
Logo Kubernetes et concept d'orchestration de conteneurs pour stratégie Cloud Native
By David Walter November 6, 2025
Adoptez Kubernetes pour transformer votre stratégie applicative. Guide complet sur l'orchestration de conteneurs : gagnez en scalabilité, résilience et automatisez vos déploiements avec K8s.