Distributed intelligence on the Edge-to-Cloud Continuum: A systematic literature review
Daniel Rosendo (KerData), Alexandru Costan (KerData), Patrick, Valduriez (ZENITH), Gabriel Antoniu (KerData)

TL;DR
This systematic review examines the state-of-the-art libraries, frameworks, and testbeds for machine learning and data analytics across the Edge-to-Cloud Continuum, highlighting challenges and opportunities for experimental research and reproducibility.
Contribution
It provides a comprehensive survey of existing tools, paradigms, and testbeds for learning-based analytics on the Edge-to-Cloud ecosystem, emphasizing reproducibility and performance trade-offs.
Findings
Survey of main libraries and frameworks for Edge-to-Cloud analytics.
Analysis of simulation, emulation, deployment systems, and testbeds.
Discussion on reproducibility support in current systems.
Abstract
The explosion of data volumes generated by an increasing number of applications is strongly impacting the evolution of distributed digital infrastructures for data analytics and machine learning (ML). While data analytics used to be mainly performed on cloud infrastructures, the rapid development of IoT infrastructures and the requirements for low-latency, secure processing has motivated the development of edge analytics. Today, to balance various trade-offs, ML-based analytics tends to increasingly leverage an interconnected ecosystem that allows complex applications to be executed on hybrid infrastructures where IoT Edge devices are interconnected to Cloud/HPC systems in what is called the Computing Continuum, the Digital Continuum, or the Transcontinuum.Enabling learning-based analytics on such complex infrastructures is challenging. The large scale and optimized deployment of…
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