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On the role of Interactivity and Data Placement in Big Data Analytics Srini Parthasarathy OSU
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The Data Deluge: Data Data Everywhere 22
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600$ to buy a disk drive that can store all of the worlds music 3 [McKinsey Global Institute Special Report, June 11] Data Storage is Cheap
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Data does not exist in isolation. 4
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Data almost always exists in connection with other data – integral part of the value proposition. 5
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6 Social networks Protein InteractionsInternet VLSI networks Data dependencies Neighborhood graphs
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7 Big Data Problem: All this data is only useful if we can scalably extract useful knowledge from such complex data
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THIS TALK THE ROLE OF DATA PLACEMENT IN BIG DATA SYSTEMS THE ROLE OF VISUALIZATION AND INTERACTION IN BIG DATA ANALYSIS
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GLOBAL GRAPHS
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What? – System for deploying applications processing complex data Why? – Seeks balance between high productivity and high performance How? – Built on top of PNLs GlobalArrays – Trees (GlobalTrees, GlobalForests) – Relational Arrays (ArrayDB-GA) – Graphs (GlobalGraphs) Data Placement is key to high performance
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Importance of Data Placement Locality – Placing related items close to each other so they may be processed together Mitigating Impact of Data Skew – Reducing load imbalance in a parallel setting – Reducing variance in partition samples Generating Stratified Samples – Improving interactive performance
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Key Ideas Pivotization – Convert data with complex structure into sets – Each element of set captures features of local topology Hashing into Strata: Hash related sets into similar bins – Can employ a sketch-clustering algorithm Partitioning: Place Strata into partitions for Locality Mitigating Data Skew Samples
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SKETCHSORT or SKETCHCLUSTER S-1 : S-4 (Δ1, SK-1) (Δ5, SK-5) (Δ12,SK-12) (Δ25,SK-25) : S-5 : S-128 : PARTITIONING & REPLICATION P-1 : P-2 S-4 S-7 S-8 S-12 : S-128 P-3 : P-8 S-3 S-4 S-9 S-12 : S- 127 PIVOT TRANSFORMATIONS A B C L E A B C L E F........ Δ1 Δ25 DATA ( Δ ) A B C A F C A E C A F L B E F A E L A B L A B C A E C A E L A B L........ (PS-1) (PS-25) PIVOT SETS (PS) MINWISE HASHING on PIVOT SETS {1050, 2020, 3130,1800} (SK-1) {1050, 2020, 7225, 2020} (SK-25)............ SKETCHES(SK) Strata (S)
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Frequent Tree Mining Our proposed approaches shows 100X gains
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WebGraph Compression Linear Scaleup with no loss in compression ratio
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PRISM-HD - PRobing the Intrinsic Structure and Makeup of High-dimensional Data HD
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Visualization and Interactivity are key to discovery 17
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PRISM-HD What? – A novel mechanism for exploring complex data Why? – User is often overwhelmed with characteristics of data – Befuddled on where to start How? – Given, similarity measure-of-interest – Compute similarity graph at threshold (t) Key: Graphs are dimensionless – Provide user graph visualization cues User determines next threshold and repeats HD
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HIGH THRESHOLD MODERATE THRESHOLD LOW THRESHOLD
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Benefits of Knowledge Caching HD
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Benefits of Incremental Processing on Twitter Incremental estimates on Twitter t 1 = 0.95 HD
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PRISM-HD and Global Graphs in Context: Leveraging Social Media in Emergency Response HD
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Concluding Remarks Data is everywhere Data is fraught with complexities – Dimensionality, dynamics, structure, massive… Both data placement and data interactivity have an important role to play in big data analytics – PRISM-HD and GlobalGraphs can help! HD
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Thanks for your attention Contact: srini@cse.ohio-state.edu Mining Simulation Data Medical Image Analysis Protein Interaction Network (yeast) Acknowledgements: Various NSF, NIH, DOE and industry grants
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