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Strategies for Processing Ad Hoc Queries on Large Data Warehouses

Strategies for Processing Ad Hoc Queries on Large Data Warehouses. Kurt Stockinger CERN John Wu & Arie Shoshani Lawrence Berkeley National Lab. Outline. Motivation for designing our own software Many large scientific data warehouses need to process ad hoc queries Lack of efficient indices

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Strategies for Processing Ad Hoc Queries on Large Data Warehouses

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  1. Strategies for ProcessingAd Hoc Querieson Large Data Warehouses Kurt Stockinger CERN John Wu & Arie Shoshani Lawrence Berkeley National Lab

  2. Outline • Motivation for designing our own software • Many large scientific data warehouses need to process ad hoc queries • Lack of efficient indices • Issues to discuss • Vertical partitioning • Bitmap index • Compression – how to store the bitmaps • Persistent storage – where to store the bitmaps strategies for processing ad hoc queries

  3. Example: High-Energy Physics Experiment STAR • Current data size • 20 million collision events • each event ~10 KB in size • Production data rate • 100 million records / year • ~ 1 TB per year • Scientists may query any of the 500 or so attributes • Each query may involve conditions on 5 ~ 8 attributes • Energy > 100 & Particles > 500 & … • Near real-time evaluation desired strategies for processing ad hoc queries

  4. Many Scientific Applications Involve Large Datasets • Sloan Digital Sky Survey: http://www.sdss.org • Earth Observing System: http://eos.nasa.gov • Large Hadron Collider: http://lhc.web.cern.ch • Genomes to life: http://doegenomestolife.org • Combustion: http://scidac.psc.edu • PCMDI: http://www-pcmdi.llnl.gov strategies for processing ad hoc queries

  5. Searching and Indexing Requirements • Some common features of the large scientific datasets • Read-mostly: data warehouses • Large high-dimensional data: millions or billions of records, each record with tens or hundreds of attributes • Many queries are high-dimensional partial range queries • Most users desire to modify queries interactively • Existing database software not specialized for these tasks: slow • Need new special purpose software • BMI: bitmap index, CERN • IBIS: independent bitmap index and search, LBNL strategies for processing ad hoc queries

  6. Issues to Be Discussed • Organization of the primary data, i.e., the user data • Viewing the primary data as a 2-D table • Horizontal partition: used in transactional systems • Vertical partition: good for partial range queries • Indexing strategies: • Tree based schemes: not effective for dimensions > 10 • Bitmap index: well suited for partial range queries • Storage scheme for the index data • BMI: Store bitmaps as objects in an object-oriented database (ODBMS) • IBIS: Store bitmaps as simple files strategies for processing ad hoc queries

  7. Horizontal partitioning Data elements of a record are stored consecutively Good for accessing one record at a time Used in relational DBMS systems where records are frequently updated Typically 60~70% of bytes of each page is used Vertical partitioning All records of an attribute are stored consecutively Good for accessing multiple records by attribute selection Suitable for data warehousing systems where records are rarely modified May use 100% of bytes of each page Horizontal vs. Vertical Partitioning strategies for processing ad hoc queries

  8. Experiment with 2.2 million records of STAR data (10 attributes only) The figure on the right shows the time to search without an index Query box size is the relative volume of the hypercube formed by range conditions The disk system supports about 20 MB/s sustained reading For answering a query like “A > 5”, the time used by a relational DBMS is proportional to number of attributes in the table 500 attributes, 500 times slower Performance Advantage of Vertical Partitioning Vertical partitioning is effective for partial range queries strategies for processing ad hoc queries

  9. Brief Overview of Index Data Structures • One dimensional index data structures: • Total order for one-dimension • Hash-based: Optimized for exact match queries, e.g. E = 106 • Tree-based: Optimized for range queries, e.g. E < 106 • Most widely used: B+-tree (1972): • Multidimensional index data structures • No total order for all dimensions • Hash-based: Grid-File, Bang-File, … • Tree based: R-Trees, Pyramid-Tree, … • Bitmap Indices: Effective for data warehousing environments • Linearize to introduce total order, then use one-dimensional indices strategies for processing ad hoc queries

  10. Basic Bitmap Index a) List of attributes b) Bitmap Index (equality encoding) Bit Slice E2 encodesattributes with value 2 a) List of 12 attributes with 10 distinct attribute values, i.e attribute cardinality = 10 b) For each distinct attribute value, one bit slice is created, i.e bitmap index consists of 10 bitmaps (E0 to E9) strategies for processing ad hoc queries

  11. Pros and Cons of Bitmap Indices • Pros: • Easy to build and to maintain • Easy to identify records that satisfy a complexmulti-attribute predicate (multi-dimensional ad-hoc queries) • Very space efficient for attributes with low cardinality (number of distinct attribute values, e.g. “Yes”, “No”) • Cons: • Space inefficient for attributes with high cardinality • An effective strategy: Bitmap Compression • Other strategies: binning, encoding strategies for processing ad hoc queries

  12. Bitmap Compression • Advantages: • Less disk space for storing indices • Indices can be read from disk faster • More indices can be cached in memory • Possible problems: • Increases the complexity of the software • If bitmaps must be decompressed before performing Boolean operations, the decompression overhead might outweigh the advantages of compression • Use compression schemes that work directly on compressed data strategies for processing ad hoc queries

  13. Various Bitmap Compression Algorithms • Run Length Encoding (RLE): • one-sided (asymmetric) vs. two-sided (symmetric) • Gzip (Lempel-Ziv, LZ): • verbatim (uncompressed) bitmap is compressed via zlib • ExpGol: • Variablebit length encoding (RLE-bitmap is compressed) • Byte-Aligned Bitmap Compression (BBC): • Variablebyte length encoding (Oracle patent) • One-sided vs. two-sided (BBC1 vs. BBC2) • Word-Aligned Hybrid (WAH): • Fixed word based encoding strategies for processing ad hoc queries

  14. speed uncompressed WAH better BBC gzip PacBits ExpGol space Relative Strength of Different Compression Schemes strategies for processing ad hoc queries

  15. WAH Compression & Bitmap Index Implementations • Compression Schemes • Designed for reducing the CPU-complexity of logical operations when compared to BBC, 10 X speedup • However, lower compression factor, i.e. the sizes of the WAH-compressed bitmaps are some 40-60% larger than BBC-compressed bitmaps • Storage scheme • BMI: Bitmap Index implementation on top of ODBMS (CERN) • IBIS: Bitmap Index implementation based on plain files (LBL) strategies for processing ad hoc queries

  16. Test Setup • Real application data (STAR) : 2.2 million records • Synthetic dataset I: 100 million records • Synthetic dataset II: 5 million records • Only the performance of the bitwise logical operation “AND” is reported • Other logical operations such as OR, XOR, etc. show similar relative differences • Most of the benchmarks were executed on three different machines with various CPU and I/O subsystems strategies for processing ad hoc queries

  17. In Memory Logical Operation“AND” On dms, 300MHz PII On tin, 400MHz P3 On dm, 450MHz UltraSPARC WAH is always the fastest, 2X – 20X strategies for processing ad hoc queries

  18. Search Time (Including File IO) On dm, 20MB/s IO On tin, 2MB/s IO To answer the queries: read two bitmaps from files, perform one logical “AND” Unless using a very slow disk, it is worth-while to use WAH compression strategies for processing ad hoc queries

  19. With BBC, Searching Operation Spends Little Time in IO On dm, 20MB/s IO On tin, 2MB/s IO • The percentage of time spent in IO on different bitmaps • This percentage is expected to be high, but it is actually low with BBC • WAH reduce CPU time, and searching is again IO bound strategies for processing ad hoc queries

  20. Sizes of Compressed Bitmaps BBC-s: simplified (LBL)BBC-f: full (AT&T + CERN) The total size of a bitmap index compressed with WAH is typically 40-60% larger than that compressed with BBC strategies for processing ad hoc queries

  21. The figure on the right plot the maximum size of the bitmap index against the attribute cardinality of an attribute with 100 million (108) records In the worst case, the size of the compressed bitmap index is about 400 million words, 4 times the size of the primary data For most high-cardinality attributes, the compressed bitmap index size is smaller than that of a typical B-tree index(~ 3X primary data) Sizes of Compressed Bitmaps B-tree The compressed bitmap index sizes are usually smaller than B-tree strategies for processing ad hoc queries

  22. Query PerformanceIBIS vs. RDBMS • Accessing bitmaps in files (IBIS) has about the same efficiency as accessing bitmaps within an RDBMS • The DBMS tested uses a BBC compressed bitmap index similar to our BBC compressed index • Used real application data WAH compressed index is 4X more efficient than BBC compressed index strategies for processing ad hoc queries

  23. Query PerformanceFile (IBIS) vs. ODBMS (BMI) • Figures on the left time needed to process 5-dimensional queries on tin • Queries on synthetic data • IBIS with WAH uses the least amount of time • ODBMS overhead 4X • Due to file system caching, IBIS is ~10X faster on files that have been accessed before (“warm” files) a) “cold” files b) “warm” files strategies for processing ad hoc queries

  24. Conclusions • We have shown that BBC is CPU-bound rather than I/O-bound as assumed in the past • WAH is much more (10X) CPU-efficient than BBC • Building bitmap indices on top of ODBMS introduces about 4X overhead when compared to using plain files • Building bitmap indices inside DBMS (as in many commercial systems) shows higher efficiency • Processing multi-dimensional range queries is efficient with WAH compressed bitmap indices • Read-only data should be vertically partitioned strategies for processing ad hoc queries

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