Performance testing of deep learning solutions

Evaluation service for deep learning algorithms focused on performance assessment and suitability for deployment on embedded devices.

Interested in this service? Contact us at olivares@uco.es 

Overview

This service evaluates the performance of deep learning algorithms to determine their efficiency and feasibility for migration to embedded devices. By leveraging high-performance computing (HPC) and GPU resources, this testing helps developers understand how well their algorithms perform in terms of speed, accuracy, and resource consumption. The service is particularly beneficial for applications in food processing, such as beekeeping and pollen counting, where real-time data processing is essential.

More about the service

Discover more about our service, including how it can benefit you, the delivery process, and the options for customisation tailored to your specific needs!

This service enables developers to optimise deep learning models for performance, particularly for applications that require deployment on resource-constrained embedded devices. It supports clients in identifying potential bottlenecks and improving model accuracy and speed, which are crucial for effective food processing applications.

The service is conducted in Spain and involves performance testing on HPC and GPU platforms. Outputs include performance metrics, resource usage reports, and recommendations for model optimisation. Clients should provide deep learning models ready for evaluation and specify target metrics.

Customisation options include targeted metrics (e.g., inference speed, accuracy) and specific hardware requirements. Clients may also specify performance thresholds related to their intended use cases, such as processing pollen data in real time.
Location
Remote
Spain
Type of Sector
Arable farming
Food processing
Greenhouse
Horticulture
Livestock farming
Tree Crops
Viticulture
Type of service
Performance evaluation
Accepted type of products
Data
Software or AI model