A distributed data-mining software platform for extreme data across the compute continuum

HORIZON.2.4HORIZON-RIAID: 101093110
EC Contribution
€49,979
Consortium Size
12 orgs
Summary

Data has become one of the most valuable assets, driving the digital transformation across many sectors. Current data mining solutions are optimized to deal with specific data requirements, but fail to cope as the data characteristics become extreme. There is therefore an urgent need for novel and holistic approaches to enable the development, deployment and efficient execution of data mining workflows across a heterogeneous, secure and energy-efficient compute continuum, while fulfilling the diverse extreme data characteristics. To fill this technological gap, EXTRACT will deliver a data-driven open-source software platform integrating the most relevant technologies, to facilitate the development of trustworthy, accurate, fair and green data mining workflows able to generate high-quality actionable knowledge. The EXTRACT platform will improve the complete lifecycle of extreme data mining workflows, significantly enhancing performance, energy-efficiency, scalability and security, while fulfilling the extreme data characteristics in a holistic way. Moreover, multiple computing technologies, from edge to cloud to HPC, will be integrated into a unified and secure compute continuum. Specifically, the platform will feature enhanced data infrastructures and AI & big-data frameworks, novel data-driven orchestration and distributed monitoring mechanisms, a unified continuum abstraction and cybersecurity and digital privacy across all software layers. The EXTRACT platform will be validated in two real-world use-cases with different extreme data requirements: 1) a Personalized Evacuation Route service, integrating data from the European data sources, Copernicus and Galileo, with 5G localization signals and smart city IoT sensors for civilian-centric crisis management; and 2) Transient Astrophysics with a SKA pathfinder, processing extreme data from 2000 radio-telescopes for the real-time assessment of solar activity, generating knowledge for further scientific exploitation.

Consortium (12)

Project Results (19)

Source: CORDIS, the EU research results database.

Publications (6)
Corrigendum to “MLLess: Achieving Cost Efficiency in Serverless Machine Learning Training
Journal of Parallel and Distributed Computing· 2024DOI
Pablo Gimeno Sarroca, Marc Sánchez-Artigas
Semantic Segmentation of Solar Radio Spikes at Low Frequencies
The Open Journal of Astrophysics· 2024DOI
Pearse C Murphy, Stéphane Aicardi, Baptiste Cecconi, Carine Briand, Thibault Peccoux
Glider: Serverless Ephemeral Stateful Near-Data Computation
Middleware '23: Proceedings of the 24th International Middleware Conference· 2023DOI
Daniel Barcelona-Pons, Pedro García-López, and Bernard Metzler.
Is Performance of Object Storage Predictable for Serverless I/O Workloads? A Comparative Study
Cloud-Edge Continuum Workshop 2023 (IEEE 31st International Conference on Network Protocols· 2023DOI
G. Eizaguirre and M. Sanchez-Artigas
Multi-party Computation for Privacy and Security in Machine Learning: a Practical Review
2023 IEEE International Conference on Cyber Security and Resilience (CSR)· 2023DOI
Alessandro Bellini, Emanuele Bellini, Massimo Bertini, Doaa Almhaithawi, Stefano Cuomo
Scaling a Variant Calling Genomics Pipeline with FaaS
9th International Workshop on Serverless Computing· 2023DOI
Aitor Arjona, Arnau Gabriel-Atienza, Sara Lanuza-Orna, Xavier Roca-Canals, Ayman Bourramouss, Tyler K. Chafin, Lucio Marcello, Paolo Ribeca, and Pedro García-López
Deliverables (12)
Other Results (1)
Periodic Reporting for period 1 - EXTRACT (A distributed data-mining software platform for extreme data across the compute continuum)