35
1 The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS Vuk Ercegovac David J. DeWitt Raghu Ramakrishnan

The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

  • Upload
    markku

  • View
    31

  • Download
    1

Embed Size (px)

DESCRIPTION

The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS. Vuk Ercegovac David J. DeWitt Raghu Ramakrishnan. Applications Combining Text and Relational Data. Query :. SELECT SCORE, P.id, FROM Products P WHERE P.type = ‘PDA’ and - PowerPoint PPT Presentation

Citation preview

Page 1: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

1

The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

Vuk Ercegovac

David J. DeWitt

Raghu Ramakrishnan

Page 2: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

2

Applications Combining Text and Relational Data

Query:

How should such an application be expected to perform?

Score P.id

0.9 123

0.87 987

0.82 246

… …

SELECT SCORE, P.id,FROM Products PWHERE P.type = ‘PDA’ and CONTAINS(P.complaint, ‘short battery life’, SCORE)ORDER BY SCORE DESC

ProductComplaints

Page 3: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

3

Possibilities for Benchmarking

Measure

WorkloadQuality

Response Time/

Throughput

Relational N/ATPC[3], AS3AP[10],

Set Query[8]

Text TREC[2], VLC2[1] FTDR[4], VLC2[1]

Relational + Text

?? TEXTURE

1. http://es.csiro.au/TRECWeb/vlc2info.html2. http://trec.nist.gov3. http://www.tpc.org4. S. DeFazio, Full-text Document Retrieval Benchmark, chapter 8. Morgan Kaufman, 2 edition, 19938. P. O’Neil. The Set Query Benchmark. The Benchmark Handbook, 199110. C. Turbyfill, C. Orji, and D. Bitton. AS3AP- a Comparative Relational Database Benchmark. IEEE Compcon, 1989.

Page 4: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

4

Contributions of TEXTURE

Design micro-benchmark to compare response time using a mixed relational + text query workload

Develop TextGen to synthetically grow a text collection given a real text collection

Evaluate TEXTURE on 3 commercial systems

Page 5: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

5

Why a Micro-benchmark Design?

A fine level of control for experiments is needed to differentiate effects due to: How text data is stored How documents are assigned a score Optimizer decisions

Page 6: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

6

Why use Synthetic Text?

Allows for systematic scale-up User’s current data set may be too small

Users may be more willing to share synthetic data

Measurements on synthetic data shown empirically by us to be close to same measurements on real data

Page 7: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

7

A Note on Quality

Measuring quality is important! Easy to quickly return poor results

We assume that the three commercial systems strive for high quality results Some participated at TREC Large overlap between result sets

Page 8: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

8

Outline

TEXTURE Components Evaluation Synthetic Text Generation

Page 9: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

9

System A

TEXTURE Components

Relational Text Attributes

DBGen TextGen

System B Response Time AResponse Time B

num_id num_u num_05 num_5 num_50 txt_short txt_long

pkey un-clustered indexes display body

QueryGen

Query 1Query 2…Query n

Query Templates

Page 10: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

10

Overview of Data

Schema based on Wisconsin Benchmark [5] Used to control relational predicate selectivity

Relational attributes populated by DBGen [6] Text attributes populated by TextGen (new)

Input: D: document collection, m: scale-up factor

Output: D’: document collection with |D| x m documents Goal: Same response times for workloads on D’ and

corresponding real collection

5. D. DeWitt. The Wisconsin Benchmark: Past, Present, and Future. The Benchmark Handbook, 1991.6. J. Gray, P. Sundaresan, S. Englert, K. Baclawski, and P. J. Weinberger. Quickly Generating Billion-record Synthetic Databases. ACM SIGMOD, 1994

Page 11: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

11

Overview of Queries

Query workloads derived from query templates with following parameters

Text expressions: Vary number of keywords, keyword selectivity, and

type of expression (i.e., phrase, Boolean, etc.) Keywords chosen from text collection

Relational expression: Vary predicate selectivity, join condition selectivity

Sort order: Choose between relational attribute or score

Retrieve ALL or TOP-K results

Page 12: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

12

Example Queries

SELECT SCORE, num_id, txt_shortFROM RWHERE NUM_5 = 3 and CONTAINS(R.txt_long, ‘foo bar’, SCORE)ORDER BY SCORE DESC

SELECT S.SCORE, S.num_id, S.txt_shortFROM R, SWHERE R.num_id = S.num_id and S.NUM_05 = 2 and CONTAINS(S.txt_long, ‘foo bar’, S.SCORE)ORDER BY S.SCORE DESC

Example of a single relation, mixed relational and text query that sorts according to a relevance score.

Example of a join query, sorting according to a relevance score on S.txt_long.

Page 13: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

13

Outline

TEXTURE Components Evaluation Synthetic Text Generation

Page 14: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

14

Overview of Experiments

How is response time affected as the database grows in size?

How is response time affected by sort order and top-k optimizations?

How do the results change when input collection to TextGen differs?

Page 15: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

15

Data and Query Workloads

TextGen input is TREC AP Vol.1[1] and VLC2 [2] Output: relations w/ {1, 2.5, 5, 7.5, 10} x 84,678 tuples Corresponds to ~250 MB to 2.5 GB of text data

Text-only queries: Low (< 0.03%) vs. high selectivity (< 3%) Phrases, OR, AND

Mixed, single relation queries: Low (<0.01%) vs. high selectivity (5%) Pair with all text-only queries

Mixed, multi relation queries: 2, 3 relations, vary text attribute used, vary selectivity

Each query workload consists of 100 queries

1. http://es.csiro.au/TRECWeb/vlc2info.html2. http://trec.nist.gov

Page 16: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

16

Methodology for Evaluation

Setup database and query workloads Run workload per system multiple times

to obtain warm numbers Discard first run, report average of

remaining Repeat for all systems (A, B, C) Platform: Microsoft Windows 2003

Server, dual processor 1.8 GHz AMD, 2 GB of memory, 8 120 GB IDE drives

Page 17: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

17

Scaling: Text-Only Workloads

How does response time vary per system as the data set scales up? Query workload: low text selectivity (0.03%) Text data: synthetic based on TREC AP Vol. 1

0

10

20

30

40

50

60

1 2.5 5 7.5 10

Scale Factor

Sec

onds

System A

System BSystem C

Page 18: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

18

Mixed Text/Relational Workloads

Workload

SystemLow

A 2.8

B 30

C 2.6

High

71

140

28

Drill down on scale factor 5 (~450K tuples) Query workload Low: text selectivity (0.03%) Query workload High: text selectivity (3%)

Do the systems take advantage of relational predicate for mixed workload queries? Query workload Mix: High text, low relational selectivity (0.01%)

Seconds per system and workload (synthetic TREC)

Mix

69 (97%)

97 (69%)

21 (75%)

Page 19: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

19

Top-k vs. All Results

Compare retrieving all vs. top-k results Query workload is Mix from before

High selectivity text expression (3%) Low selectivity relational predicate (0.01%)

Workload

SystemAll Top-k

A 69 2.6

B 97 96

C 28 2.2

Seconds per system and workload (450K tuples, synthetic TREC)

Page 20: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

20

Varying Sort Order

Compare sorting by score vs. sorting by relational attribute When retrieving all, results similar to previous Results for retrieving top-k shown below

Workload

SystemScore Relational

A 2.6 2.7

B 96 715

C 2.2 2.2

Seconds per system and workload (450K tuples, synthetic TREC)

Page 21: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

21

Varying the Input Collection

What is the effect of different input text collections on response time? Query workload: low text selectivity (0.03%)

All results retrieved

Text Data: synthetic TREC and VLC2

Collection

SystemSynthetic

TREC

Synthetic

VLC2

A 2.9 1.2

B 30 3.6

C 2.5 1.6Seconds per system and collection (450K tuples)

Page 22: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

22

Outline

Benchmark Components Evaluation Synthetic Text Generation

Page 23: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

23

Synthetic Text Generation

TextGen: Input: document collection D, scale-up factor m Output: document collection D’ with |D| x m

documents Problem: Given documents D, how do we

add documents to obtain D’ ? Goal: Same response times for workloads on D’

and corresponding real collection C, |C|=|D’| Approach: Extract “features” from D and

draw |D’| samples according to features

Page 24: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

24

Document Collection Features

Features considered W(w,c) : word distribution G(n, v) : vocabulary growth U,L : number of unique, total words per

document C(w1, w2, …, wn, c) : co-occurrence of

word groups Each feature is estimated by a model

Ex. Zipf[11] or empirical distribution for W Ex. Heaps Law for G[7]

7. H. S. Heaps, Information Retrieval, Computational and Theoretical Aspects. Academic Press, 1978.11. G. Zipf. Human Behavior and the Principle of Least Effort: An Introduction to Human Ecology. Hafner Publications, 1949.

Page 25: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

25

Process to Generate D’

Pre-process: estimate features Depends on model used for feature

Generate |D’| documents Generate each document by sampling W

according to U and L Grow vocabulary according to G

Post-process: Swap words between documents in order to satisfy co-occurrence of word groups C

Page 26: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

26

Feature-Model Combinations

Considered 3 instances of TextGen, each a combination of features/models

Feature

TextGenW

(Word distr.)

G(Vocab)

L(Length)

U(Unique)

C(co-occur.)

Synthetic1 Zipf

Heaps Average

N/A

Synthetic2Empirical Average

N/A

Synthetic3 Empirical

Page 27: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

27

Which TextGen is a Good Generator?

Goal: response time measured on synthetic (S) and real (D) should be similar across systems

Does the use of randomized words in D’ affect response time accuracy?

How does the choice of features and models effect response time accuracy as the data set scales?

Page 28: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

28

Use of Random Words

Words are strings composed of a random permutation of letters

Random words are useful for: Vocabulary growth Sharing text collections

Do randomized words affect measured response times? What is the affect on stemming, compression, and

other text processing components?

Page 29: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

29

Effect of Randomized Words

Experiment: create two TEXTURE databases and compare across systems Database AP based on TREC AP Vol. 1 Database R-AP: randomize each word in AP Query workload: low & high selectivity keywords

Result: response times differ on average by < 1%, not exceeding 4.4%

Conclusion: using random words is reasonable for measuring response time

Page 30: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

30

Effect of Features and Models

Experiment: compare response times over same sized synthetic (S) and real (D) collections Sample s documents of D Use TextGen to produce S at several scale factors

|S| = 10, 25, 50, 75, and 100% of |D|

Compare response time across systems Must repeat for each type of text-only query

workload Used as framework for picking features/models

Page 31: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

31

TextGen Evaluation Results

How does response time measured on real data compare to the synthetic TextGen collections?

Query workload: low selectivity text only query (0.03%) Graph is for System A

Similar results obtained for other systems

0

0.2

0.4

0.6

0.8

1

1.2

1.4

1.6

10 25 50 75 100

Scale Factor (%)

Ela

psed

Tim

e (s

econ

ds)

Real Collection

Synthetic-1

Synthetic-2

Synthetic-3

Page 32: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

32

Future Work

How should quality measurements be incorporated?

Extend the workload to include updates

Allow correlations between attributes when generating database

Page 33: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

33

Conclusion

We propose TEXTURE to fill the gap seen by applications that use mixed relational and text queries

We can scale-up a text collection through synthetic text generation in such a way that response time is accurately reflected

Results of evaluation illustrate significant differences between current commercial relational systems

Page 34: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

34

References

1. http://es.csiro.au/TRECWeb/vlc2info.html2. http://trec.nist.gov3. http://www.tpc.org4. S. DeFazio, Full-text Document Retrieval Benchmark, chapter 8. Morgan

Kaufman, 2 edition, 19935. D. DeWitt. The Wisconsin Benchmark: Past, Present, and Future. The

Benchmark Handbook, 1991.6. J. Gray, P. Sundaresan, S. Englert, K. Baclawski, and P. J. Weinberger.

Quickly Generating Billion-record Synthetic Databases. ACM SIGMOD, 19947. H. S. Heaps, Information Retrieval, Computational and Theoretical Aspects.

Academic Press, 1978.8. P. O’Neil. The Set Query Benchmark. The Benchmark Handbook, 19919. K. A. Shoens, A. Tomasic, H. Garcia-Molina. Synthetic Workload Performance

Analysis of Incremental Updates. In Research and Development in Information Retrieval, 1994.

10. C. Turbyfill, C. Orji, and D. Bitton. AS3AP- a Comparative Relational Database Benchmark. IEEE Compcon, 1989.

11. G. Zipf. Human Behavior and the Principle of Least Effort: An Introduction to Human Ecology. Hafner Publications, 1949.

Page 35: The TEXTURE Benchmark: Measuring Performance of Text Queries on a Relational DBMS

35

Questions?