Abstract
Approximate computing is increasingly used for speeding up computations and efficiently utilizing the computing resources. The idea behind approximate computing is to return an approximate answer instead of the exact answer for user queries. The trick is to choose a representative sample of the data for computing instead of using the entire data. As a result, it allows users to trade-off query accuracy for response time, enabling interactive queries over massive data by running queries on data samples and presenting results annotated with meaningful error bars. At the same time, another technique called incremental computing tries to achieve the same goals as approximate computing, i.e., speeding up job execution and utilizing resource efficiently. Incremental computing relies on the memoization of intermediate results of sub-computations and reusing these memoized results across jobs. This work makes the observation that these two computing paradigms are complementary and can be married together! The idea is quite simple: design a sampling algorithm that biases the sample selection to the memoized data items from previous runs. To realize this idea, an online stratified sampling algorithm is designed. The algorithm uses self-adjusting computation to produce an incrementally updated approximate output with bounded error. The algorithm is implemented in a data analytics system called IncApprox.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
References
Acar UA (2005) Self-adjusting computation. PhD thesis, Carnegie Mellon University
Acar UA, Cotter A, Hudson B, Türkoğlu D (2010) Dynamic well-spaced point sets. In: Proceedings of the 26th annual symposium on computational geometry (SoCG)
Agarwal S, Mozafari B, Panda A, Milner H, Madden S, Stoica I (2013) Blinkdb: queries with bounded errors and bounded response times on very large data. In: Proceedings of the ACM European conference on computer systems (EuroSys)
Al-Kateb M, Lee BS (2010) Stratified reservoir sampling over heterogeneous data streams. In: Proceedings of the 22nd international conference on scientific and statistical database management (SSDBM)
Angel S, Ballani H, Karagiannis T, O’Shea G, Thereska E (2014) End-to-end performance isolation through virtual datacenters. In: Proceedings of the USENIX conference on operating systems design and implementation (OSDI)
Bhatotia P (2015) Incremental parallel and distributed systems. PhD thesis, Max Planck Institute for Software Systems (MPI-SWS)
Bhatotia P, Wieder A, Akkus IE, Rodrigues R, Acar UA (2011a) Large-scale incremental data processing with change propagation. In: Proceedings of the conference on hot topics in cloud computing (HotCloud)
Bhatotia P, Wieder A, Rodrigues R, Acar UA, Pasquini R (2011b) Incoop: MapReduce for incremental computations. In: Proceedings of the ACM symposium on cloud computing (SoCC)
Bhatotia P, Dischinger M, Rodrigues R, Acar UA (2012a) Slider: incremental sliding-window computations for large-scale data analysis. In: Technical Report: MPI-SWS-2012-004
Bhatotia P, Rodrigues R, Verma A (2012b) Shredder: GPU-accelerated incremental storage and computation. In: Proceedings of USENIX conference on file and storage technologies (FAST)
Bhatotia P, Acar UA, Junqueira FP, Rodrigues R (2014) Slider: incremental sliding window analytics. In: Proceedings of the 15th international middleware conference (Middleware)
Bhatotia P, Fonseca P, Acar UA, Brandenburg B, Rodrigues R (2015) iThreads: a threading library for parallel incremental computation. In: Proceedings of the 20th international conference on architectural support for programming languages and operating systems (ASPLOS)
Brodal GS, Jacob R (2002) Dynamic planar convex hull. In: Proceedings of the 43rd annual IEEE symposium on foundations of computer science (FOCS)
Chiang YJ, Tamassia R (1992) Dynamic algorithms in computational geometry. In: Proceedings of the IEEE
Coles S (2001) An introduction to statistical modeling of extreme values. Springer, London/New York
Cormode G, Garofalakis M, Haas PJ, Jermaine C (2012) Synopses for massive data: samples, histograms, wavelets, sketches. Found Trends Databases 4(1–3): 1–294
Dean J, Ghemawat S (2004) MapReduce: simplified data processing on large clusters. In: Proceedings of the USENIX conference on operating systems design and implementation (OSDI)
Dziuda DM (2010) Data mining for genomics and proteomics: analysis of gene and protein expression data. Wiley, Hoboken
Efron B, Tibshirani R (1986) Bootstrap methods for standard errors, confidence intervals, and other measures of statistical accuracy. Stat Sci 1(1):54–75
Ganapathi AS (2009) Predicting and optimizing system utilization and performance via statistical machine learning. In: Technical Report No. UCB/EECS- 2009-181
Goiri I, Bianchini R, Nagarakatte S, Nguyen TD (2015) ApproxHadoop: bringing approximations to MapReduce frameworks. In: Proceedings of the twentieth international conference on architectural support for programming languages and operating systems (ASPLOS)
Gunda PK, Ravindranath L, Thekkath CA, Yu Y, Zhuang L (2010) Nectar: automatic management of data and computation in datacenters. In: Proceedings of the USENIX conference on operating systems design and implementation (OSDI)
He B, Yang M, Guo Z, Chen R, Su B, Lin W, Zhou L (2010) Comet: batched stream processing for data intensive distributed computing. In: Proceedings of the ACM symposium on cloud computing (SoCC)
Hellerstein JM, Haas PJ, Wang HJ (1997) Online aggregation. In: Proceedings of the ACM SIGMOD international conference on management of data (SIGMOD)
Isard M, Budiu M, Yu Y, Birrell A, Fetterly D (2007) Dryad: distributed data-parallel programs from sequential building blocks. In: Proceedings of the ACM European conference on computer systems (EuroSys)
Kafka – A high-throughput distributed messaging system. http://kafka.apache.org. Accessed Nov 2017
Krishnan DR, Quoc DL, Bhatotia P, Fetzer C, Rodrigues R (2016) IncApprox: a data analytics system for incremental approximate computing. In: Proceedings of the 25th international conference on world wide web (WWW)
Ley-Wild R, Acar UA, Fluet M (2009) A cost semantics for self-adjusting computation. In: Proceedings of the annual ACM SIGPLAN-SIGACT symposium on principles of programming languages (POPL)
Liu S, Meeker WQ (2014) Statistical methods for estimating the minimum thickness along a pipeline. Technometrics 57(2):164–179
Logothetis D, Olston C, Reed B, Web K, Yocum K (2010) Stateful bulk processing for incremental analytics. In: Proceedings of the ACM symposium on cloud computing (SoCC)
Lohr S (2009) Sampling: design and analysis, 2nd edn. Cengage Learning, Boston
Masud MM, Woolam C, Gao J, Khan L, Han J, Hamlen KW, Oza NC (2012) Facing the reality of data stream classification: coping with scarcity of labeled data. Knowl Inf Syst 33(1):213–244
Murray DG, McSherry F, Isaacs R, Isard M, Barham P, Abadi M (2013) Naiad: a timely dataflow system. In: Proceedings of the twenty-fourth ACM symposium on operating systems principles (SOSP)
Olston C et al (2011) Nova: continuous pig/hadoop workflows. In: Proceedings of the ACM SIGMOD international conference on management of data (SIGMOD)
Peng D, Dabek F (2010) Large-scale incremental processing using distributed transactions and notifications. In: Proceedings of the USENIX conference on operating systems design and implementation (OSDI)
Popa L, Budiu M, Yu Y, Isard M (2009) DryadInc: reusing work in large-scale computations. In: Proceedings of the conference on hot topics in cloud computing (HotCloud)
Quoc DL, Martin A, Fetzer C (2013) Scalable and real-time deep packet inspection. In: Proceedings of the 2013 IEEE/ACM 6th international conference on utility and cloud computing (UCC)
Quoc DL, Yazdanov L, Fetzer C (2014) Dolen: user-side multi-cloud application monitoring. In: International conference on future internet of things and cloud (FICLOUD)
Quoc DL, D’Alessandro V, Park B, Romano L, Fetzer C (2015a) Scalable network traffic classification using distributed support vector machines. In: Proceedings of the 2015 IEEE 8th international conference on cloud computing (CLOUD)
Quoc DL, Fetzer C, Felber P, Rivière É, Schiavoni V, Sutra P (2015b) Unicrawl: a practical geographically distributed web crawler. In: Proceedings of the 2015 IEEE 8th international conference on cloud computing (CLOUD)
Quoc DL, Beck M, Bhatotia P, Chen R, Fetzer C, Strufe T (2017a) Privacy preserving stream analytics: the marriage of randomized response and approximate computing. https://arxiv.org/abs/1701.05403
Quoc DL, Beck M, Bhatotia P, Chen R, Fetzer C, Strufe T (2017b) PrivApprox: privacy-preserving stream analytics. In: Proceedings of the 2017 USENIX conference on USENIX annual technical conference (USENIX ATC)
Quoc DL, Chen R, Bhatotia P, Fetzer C, Hilt V, Strufe T (2017c) Approximate stream analytics in Apache Flink and Apache Spark streaming. CoRR, abs/1709.02946
Quoc DL, Chen R, Bhatotia P, Fetzer C, Hilt V, Strufe T (2017d) StreamApprox: approximate computing for stream analytics. In: Proceedings of the international middleware conference (Middleware)
The Apache Commons Mathematics Library. http://commons.apache.org/proper/commons-math. Accessed Nov 2017
Wieder A, Bhatotia P, Post A, Rodrigues R (2010a) Brief announcement: modelling MapReduce for optimal execution in the cloud. In: Proceedings of the 29th ACM SIGACT-SIGOPS symposium on principles of distributed computing (PODC)
Wieder A, Bhatotia P, Post A, Rodrigues R (2010b) Conductor: orchestrating the clouds. In: Proceedings of the 4th international workshop on large scale distributed systems and middleware (LADIS)
Wieder A, Bhatotia P, Post A, Rodrigues R (2012) Orchestrating the deployment of computations in the cloud with conductor. In: Proceedings of the 9th USENIX symposium on networked systems design and implementation (NSDI)
Zaharia M, Das T, Li H, Hunter T, Shenker S, Stoica I (2013) Discretized streams: fault-tolerant streaming computation at scale. In: Proceedings of the twenty-fourth ACM symposium on operating systems principles (SOSP)
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2019 Springer Nature Switzerland AG
About this entry
Cite this entry
Quoc, D.L., Krishnan, D.R., Bhatotia, P., Fetzer, C., Rodrigues, R. (2019). Incremental Approximate Computing. In: Sakr, S., Zomaya, A.Y. (eds) Encyclopedia of Big Data Technologies. Springer, Cham. https://doi.org/10.1007/978-3-319-77525-8_151
Download citation
DOI: https://doi.org/10.1007/978-3-319-77525-8_151
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-319-77524-1
Online ISBN: 978-3-319-77525-8
eBook Packages: Computer ScienceReference Module Computer Science and Engineering