Corpus ID: 198953202

ServerMix: Tradeoffs and Challenges of Serverless Data Analytics

@article{Lpez2019ServerMixTA,
  title={ServerMix: Tradeoffs and Challenges of Serverless Data Analytics},
  author={Pedro Garc{\'i}a L{\'o}pez and Marc S{\'a}nchez Artigas and Simon Shillaker and Peter R. Pietzuch and David Breitgand and Gil Vernik and Pierre Sutra and Tristan Tarrant and Ana Juan Ferrer},
  journal={ArXiv},
  year={2019},
  volume={abs/1907.11465}
}
  • Pedro García López, Marc Sánchez Artigas, +6 authors Ana Juan Ferrer
  • Published in ArXiv 2019
  • Computer Science
  • Serverless computing has become very popular today since it largely simplifies cloud programming. Developers do not need to longer worry about provisioning or operating servers, and they pay only for the compute resources used when their code is run. This new cloud paradigm suits well for many applications, and researchers have already begun investigating the feasibility of serverless computing for data analytics. Unfortunately, today's serverless computing presents important limitations that… CONTINUE READING

    References

    Publications referenced by this paper.
    SHOWING 1-10 OF 29 REFERENCES

    A Case for Serverless Machine Learning

    VIEW 7 EXCERPTS
    HIGHLY INFLUENTIAL

    SAND: Towards High-Performance Serverless Computing

    VIEW 8 EXCERPTS
    HIGHLY INFLUENTIAL

    Serverless Computing: One Step Forward, Two Steps Back

    VIEW 6 EXCERPTS
    HIGHLY INFLUENTIAL

    Serverless Data Analytics with Flint

    • Youngbin Kim, Jimmy Lin
    • Computer Science
    • 2018 IEEE 11th International Conference on Cloud Computing (CLOUD)
    • 2018
    VIEW 9 EXCERPTS
    HIGHLY INFLUENTIAL

    Making Serverless Computing More Serverless

    VIEW 3 EXCERPTS
    HIGHLY INFLUENTIAL