Simba: Efficient In-Memory Spatial Analytics

@inproceedings{Xie2016SimbaEI,
  title={Simba: Efficient In-Memory Spatial Analytics},
  author={Dong Xie and Feifei Li and Bin Yao and Gefei Li and Liang Zhou and Minyi Guo},
  booktitle={SIGMOD Conference},
  year={2016}
}
Large spatial data becomes ubiquitous. As a result, it is critical to provide fast, scalable, and high-throughput spatial queries and analytics for numerous applications in location-based services (LBS). Traditional spatial databases and spatial analytics systems are disk-based and optimized for IO efficiency. But increasingly, data are stored and processed in memory to achieve low latency, and CPU time becomes the new bottleneck. We present the Simba (Spatial In-Memory Big data Analytics… CONTINUE READING
Highly Influential
This paper has highly influenced 10 other papers. REVIEW HIGHLY INFLUENTIAL CITATIONS
Highly Cited
This paper has 63 citations. REVIEW CITATIONS
43 Citations
11 References
Similar Papers

Citations

Publications citing this paper.
Showing 1-10 of 43 extracted citations

64 Citations

02040201620172018
Citations per Year
Semantic Scholar estimates that this publication has 64 citations based on the available data.

See our FAQ for additional information.

References

Publications referenced by this paper.
Showing 1-10 of 11 references

Ronquest. Geomesa: a distributed architecture for spatio-temporal fusion

  • J. N. Hughes, A. Annex, C. N. Eichelberger, A. Fox, A. Hulbert
  • In SPIE Defense+ Security,
  • 2015
Highly Influential
9 Excerpts

Similar Papers

Loading similar papers…