Catalogue of Services

Are you looking for a service to validate, test or evaluate your agrifood product? 
Explore our Catalogue to find the perfect service tailored to your needs! 

Need help to choose a service?

Contact us

AGRIFood Catalogue services
  • 233 results found
Benchmarking & Testing Suite for Edge Hardware Systems
Lukasiewicz Poznanski Instytut Technologiczny
Location
Poland
Arable farming
Food processing
Greenhouse
Horticulture
Livestock farming
Tree Crops
Viticulture

The Benchmarking & Testing Suite for Edge Hardware Systems delivers a set of tests designed to evaluate the performance, reliability, and functionality of edge hardware and its components under various operational conditions. 

The tests can be compared to specific industry standards or the performance of other solutions available on the market. Examples of tests offered as part of the service: 

- Environmental tests: Assessing devices' resistance to extreme conditions, such as temperature, humidity, and vibrations. 

- Signal tests: Evaluating devices using GNSS signal generators, testing their resilience to interference or false signals. 

- Network tests: Evaluate device performance within a prototype 5G network infrastructure.

 - Functional tests: Assessing the capability of devices, such as remote PTZ (pan, tilt, zoom) cameras, to perform operational tasks in field conditions. 

- Integration tests: Examining the cooperation of edge devices with sensors, AI systems, and their responses to data input failures. - Accuracy tests: Measuring the precision of sensors and control systems. Test results can be compared to specified standards or the performance of competitive solutions, enabling customers to better understand their devices' capabilities.

Collection of test data
Desk assessment
Performance evaluation
Test design
Test execution
Test setup
Calibration and Optimisation of Technological Quality Measurement Methods for Cereal Grain
ARVALIS
Location
France
Arable farming

Our service provides access to grain samples and comprehensive technological quality analysis conducted at Arvalis facilities, enabling the development of AI-powered grain analysis solutions. Clients can work with well-documented samples from one or multiple species, enriched with detailed metadata such as variety, harvest year, and collection location crucial for training and validating AI models. Beyond sample selection and preparation, our experts assist in choosing, testing, and validating analytical methods, covering rheological properties (Alvéolab), breadmaking tests, and protein content measurement (Infratec, Dumas). These high-quality datasets, combined with access to Arvalis facilities and controlled testing environments, provide an ideal foundation for developing machine learning algorithms that enhance grain quality prediction, automate classification, and optimise processing parameters. With our service, clients can accelerate the development, validation, and deployment of AI-driven grain analysis tools, ensuring they meet industry standards and deliver precise, reproducible results. Our expertise in analytical methods allows customers to refine their models, improve prediction accuracy, and scale AI solutions for real-world agricultural applications.

Collection of test data
Desk assessment
Performance evaluation
Provision of datasets
Test design
Test execution
Test setup
Certification of Artificial Intelligence Management System (AIMS) of ISO/IEC 42001
Laboratoire National de Métrologie et d’Essais - LNE
Location
At user's premises
Arable farming
Food processing
Greenhouse
Horticulture
Livestock farming
Tree Crops
Viticulture

The ISO/IEC 42001 is a global standard that provides a robust framework and structure within which AI systems can be developed, deployed and used responsibly. It sets out requirements and recommendations for establishing, implementing, maintaining and continuously improving an AI management system within the context of an organisation. Key controls included in the standard are risk management, AI impact assessment, system lifecycle management, performance optimisation, and supplier management. Its aim is to help organisations: Develop or use AI responsibly, Meet applicable regulatory requirements, and * Meet stakeholders' obligations and expectations. In this way, it provides concrete support to companies in optimising the use of AI by guaranteeing a level of control and confidence in the systems developed. Customers concerned: consulting firms; solution or application developers; integrators; companies integrating AI solutions purchased on the market or developed in-house into your offerings; competent authorities (decision-makers, regulators). Webinar: https://www.lne.fr/fr/webinars/iso-42001-certification-ia-lne-s Technical documentation (FR): https://www.lne.fr/sites/default/files/bloc-telecharger/FTC-ISO-42001-LNE.pdf

Certification
Conformity assessment
Desk assessment
LCA assessment
Collection of test data during digital testing
Politecnico di Milano (POLIMI)
Location
Italy
Remote
Arable farming
Food processing
Greenhouse
Horticulture
Livestock farming
Tree Crops
Viticulture

One of the key activities during digital testing is the collection of data concerning the progression and the final outcome of the tests. Such data enable the evaluation of system performance by the customer or – if needed – by AgrifoodTEF (via Service S00184). This service manages the collection of data relevant to performance evaluation produced during the tests by both the system under test and the computational environment where the tests take place. 

Examples of collected data comprise information produced within a virtual environment to simulate sensor data collection in a physical environment; statistics about AI model performance in the test and deployment phase (e.g., occupied memory, number of trainable parameters, training/optimisation loss, etc.); specific labels and annotations to use as ground truth for evaluating the system; and system output when subjected to a range of test conditions. The minimum set of data to be collected is defined by the evaluation metrics that the user chose (either on their own or with AgrifoodTEF support, via Service S00178) to process them; generally, a larger set of data wrt the minimum is selected by AgrifoodTEF together with the customer to provide a richer view of the system’s performance and to enable the application of other metrics in the future, if needed. As an output of the service, in addition to the raw data, we also provide the customer with documentation describing logged features and conditions of the testing environment at the time of testing, as well as any parameter values, variation ranges and specifics required for reproducibility purposes.

Collection of test data