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AI performance evaluation based on testing datasets

Virtual
Pricing/Discount Options: Call #2
Unique Identifier: db0c01ad-4f15-475f-a863-f18489eef454

Service Description

To ensure that their solution works accordingly regarding a task, AI provider have to evaluate their system using a specific dataset. The performance obtained on this dataset helps to prove the adequate performance of their AI solution. However, the evaluation process can be often quite hard for an AI provider to do properly: the evaluation dataset needs to be correctly qualified, and the creation of the evaluation protocol as well as the analysis of the results are not easy tasks.

This service allows AI provider to benefit of the LNE expertise with a full evaluation of their AI system: using an evaluation dataset created for the test or provided by a partner of the TEF project, an assessment of the performance of the AI system is done, and an analysis of its behavior provided. This work also includes a quality assessment of the evaluation dataset. The scope of the analysis of the evaluation results can include robustness and resilience evaluation, depending of the needs of the SMEs.

With this service, the customer will have a full assessment of its solution, allowing them to answer the accuracy requirements of the AI regulation, while also having a full report following all transparency and reproductibility requirements. This service generally takes around 2 months, depending of the needs of the customers.

Offerings: Model & Algorithm (Development, Optimization & Evaluation, etc.)
Provider Logo

Provider & Contact

Provider Country France
Published Email guillaume.bernard@lne.fr
Billing: per AI functionnality
Full Price €20.000-40.000 EUR
Reduced Price €6000-12000 EUR
Pricing Detail

These prices are only tentative and will be further discussed with the SME or startup depending on their needs and the scope of the evaluation.

Operational Details

Service Standards to be defined (see "Method reference")
  • to be defined (see "Method reference")