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Primitives for Workload Summarization and Implications for SQL

Primitives for Workload Summarization and Implications for SQL. Prasanna Ganesan* Stanford University Surajit Chaudhuri Vivek Narasayya Microsoft Research *Work done at Microsoft Research. Motivation. Workload: Set of SQL Statements Many tasks exploit workload information

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Primitives for Workload Summarization and Implications for SQL

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  1. Primitives for Workload Summarization and Implications for SQL Prasanna Ganesan* Stanford University Surajit Chaudhuri Vivek Narasayya Microsoft Research *Work done at Microsoft Research

  2. Motivation • Workload: Set of SQL Statements • Many tasks exploit workload information • DB Admin, Index Tuning, Statistics building, Approximate Query Processing • DBMS profilers produce large workloads (+additional info) • Most tasks need small workloads • Goal: Summarization - Find a “representative” subset of a given, large workload. • Sometimes a weighted subset

  3. Why Not Random Sampling? • One Size does not fit all • Different definitions of “representative subset” • Random sampling may lose valuable info • Ignores additional info associated with statements • Shown to work poorly, e.g., for Index Selection [chaudhuri02] • May oversample queries on some tables, while ignoring less frequent queries on other tables

  4. Our Solution • Treat input as a relation • Each SQL statement (+associated info) is a tuple • Extend SQL with new language primitives • Allow declarative specification of desired subset • Usable on arbitrary relations, not just workloads • Implement extensions inside query engine • Why? Primitives appear widely applicable • Other implementation options available

  5. The Architecture SELECT *, DOMSUM(Count) FROM WkldTbl DOMINATE WITH PARTITIONING BY FromTables, JoinConds, WhereCols (SLAVE.GroupByCols  MASTER.GroupByCols) AND (SLAVE.OrderByCols PREFIX MASTER.OrderByCols) REPRESENT WITH PARTITIONING BY FromTables, JoinConds, WhereCols MAXIMIZING SUM(DOM_Count) GLOBAL CONSTRAINT Count(*) ≤ 200 LOCAL CONSTRAINT Count(*) ≥ int(200*LOCAL.Count(*)/GLOBAL.Count(*)) ExecutionEngine Summary Application

  6. Outline • New Primitives for Summarization (Subsetting) • Dominance • Representation • Implementing summarization primitives in SQL • Experiments

  7. Dominance • Idea: Filter and aggregate using a partial order on tuples • Specify condition for one tuple to dominate another • Transitive condition • Encapsulates application knowledge • Output: Keep throwing away tuples that are dominated • Retain aggregate info about dominated tuples

  8. A Graphical Representation Vendor Quality Price 6 Buono 75 25 3 2 3 2 Cattivo 50 50

  9. Applying Dominance to Workloads • Example: Index Selection • An index useful for Q1 likely to be useful for Q2 Q2 Q1 SELECT ... FROM R GROUP BY A, B, C SELECT … FROM R GROUP BY A, B dominates MASTER.FromTables=SLAVE.FromTables AND MASTER.GroupByCols  SLAVE.GroupByCols AND MASTER.OrderByCols PREFIX SLAVE.OrderByCols

  10. Outline • New Primitives for Summarization (Subsetting) • Dominance • Representation • Implementing Summarization Primitives in SQL • Experiments

  11. Representation • Dominance only gets us so far • Need a “lossier” way to select a subset • Idea: Pick a subset that solves a Linear Program • Optimize some criterion • Satisfy lots of constraints • Support concept of partitioning

  12. Details • Partition tuples by a set of attributes • Criterion: Maximize/Minimize Aggregate • E.g., Minimize Count(*) • Global Constraints • E.g., Sum(B) in chosen subset > 60% Sum(B) in input • Local Constraints - apply to each partition • E.g., Sum(B) in chosen subset > 40% Sum(B) in that partition

  13. An Index Selection Example • Partition by Tables, Join Conditions and attributes in WHERE clause • Criterion: Maximize Sum(ExecutionCost) • Need best “coverage” • Global Constraint: Count(*) ≤ 200 • Local Constraint: Proportionate representation • A partition with 20% of input should have 20% of output • Count(*) ≥int(200*LOCAL.Count(*)/GLOBAL.Count(*))

  14. Putting it all together • Apply dominance criterion (as earlier). • Apply representation (as earlier, but maximize SUM(DOM_Count) ). • Weight each tuple by the number of tuples it dominates. SELECT SqlString, DOMSUM(Count) FROM WkldTbl DOMINATE WITH PARTITIONING BY FromTables, JoinConds, WhereCols (SLAVE.GroupByCols  MASTER.GroupByCols) AND (SLAVE.OrderByCols PREFIX MASTER.OrderByCols) REPRESENT WITH PARTITIONING BY FromTables, JoinConds, WhereCols MAXIMIZING SUM(DOM_Count) GLOBAL CONSTRAINT Count(*) ≤ 200 LOCAL CONSTRAINT Count(*) ≥ int(200*LOCAL.Count(*)/GLOBAL.Count(*))

  15. Outline • New Primitives for Summarization (Subsetting) • Dominance • Representation • Implementing Summarization Primitives in SQL • Experiments

  16. Implementing Summarization Primitives in SQL • Assume set and sequence support in SQL • The mills of the standards bodies… • Partitioning useful for both primitives • Hashing, Sort-based, Index-based… • Implementing Dominance • Naïve O(n2) algorithm • Techniques from group-wise processing • Leverage Skyline optimizations

  17. Representation • Implementing directly is LP-hard • Many queries are much simpler • Fall into one of two special cases • Other queries are handled by a simple heuristic • User-guided search • Implement as multiple operators

  18. User-Guided Search • Scan tuples in a specific order • User-specified, or heuristically chosen • Will always minimize/maximize Count(*) • Use ordering to transform other objectives • Slightly different algorithms for the two cases

  19. A Minimization Example F E Satisfied D C Output B A Violated

  20. Two Special Cases • Maximize SUM(Attr) • All constraints are on Count(*) • Use partitioning and sort-order access • Minimize Count(*) • Single constraint: Again easily solved • More special cases also solvable • Multiple constraints: Approximation algorithm

  21. Experiments • Evaluate utility for index selection • Compare to sophisticated Wkld. Compression [chaudhuri02] • Clusters using a complex distance function • Simple query as described earlier • Constrained to output same number of statements as Workload Compression • Orders of magnitude faster • TPC-H 1GB database • Multiple synthetic workloads introduced in [chaudhuri02]

  22. Experiments (Contd.) Tuning Wizard Workload Compress Evaluate Total Estimated Cost

  23. Comparing Estimated Costs

  24. Conclusion • Our contributions • Summarization can be expressed declaratively • Introduction of new operators for summarization • Discussion of SQL implementation • The Future • An automatic monitoring and tuning infrastructure? • More workload-sensitive tasks?

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