Faster and More Energy Efficient Machine Learning for Embedded Systems
EmbeDL is a software toolkit that accelerates the optimization of deep learning models for embedded systems, reducing development time from months to weeks while meeting specific hardware requirements.
Projectdetails
Introduction
EmbeDL is a Software Development Kit installed on premises to optimize complex DL models on embedded hardware systems. It empowers product manufacturers by providing them with the entire toolchain and services necessary to accelerate their AI-driven system development and launch into production. What is currently taking months, years, or abandoned R&D can now be done in weeks.
Features
Using the EmbeDL platform, the product development team can:
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Automatically optimize a DL model for specific hardware while meeting energy consumption, hardware cost, and other requirements, by pruning/compressing a state-of-the-art model in a hardware and requirements-aware fashion or searching automatically for the optimal model.
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Automatically evaluate hardware for its model (currently existing as an internal tool to be developed into a full-fledged product), by a combination of predictive methods and hardware-in-the-loop.
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Accelerate the development cycle with easy-to-use and highly automated tools.
Financiële details & Tijdlijn
Financiële details
Subsidiebedrag | € 2.499.999 |
Totale projectbegroting | € 3.640.830 |
Tijdlijn
Startdatum | 1-4-2023 |
Einddatum | 30-9-2025 |
Subsidiejaar | 2023 |
Partners & Locaties
Projectpartners
- EMBEDL ABpenvoerder
Land(en)
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