software analytics: towards software mining that matters

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A keynote talk given at the 2013 second International Workshop on Software Mining: http://lamda.nju.edu.cn/conf/softwaremining13/speaker.html

TRANSCRIPT

Software Analytics:

Towards Software Mining

that Matters Tao Xie

University of Illinois at Urbana-Champaign http://www.cs.illinois.edu/homes/taoxie/

taoxie@illinois.edu

Should I test\review my?

©A. Hassan

©A. Hassan

©A. Hassan

©A. Hassan

Software analytics is to enable software practitioners to perform data exploration and analysis in order to obtain insightful and actionable information for data-driven tasks around software and services.

[MALETS’11 Zhang et al.]

Software Intelligence & Analytics for Software Development

http://people.engr.ncsu.edu/txie/publications/foser10-si.pdf http://thomas-zimmermann.com/publications/files/buse-foser-2010.pdf

• use Data Exploration and Analysis Mining Software Repositories (MSR)

• for Software Practitioners Beyond Software Developers

• obtain Insightful and Actionable info Need get real as well

• Analytic Techniques • Producing Impact on Practice

Look through your software data

©A. Hassan

Look through your software data

©A. Hassan

Mine through the data!

http://msrconf.org

An international effort to make software repositories actionable

http://promisedata.org ©A. Hassan

Mine through the data!

http://msrconf.org

An international effort to make software repositories actionable

http://promisedata.org ©A. Hassan

Mine through the data!

http://msrconf.org

An international effort to make software repositories actionable

http://promisedata.org

Promise Data Repository

©A. Hassan

Mining Software Repositories (MSR)

• Transforms static record-keeping repositories to active repositories

• Makes repository data actionable by uncovering hidden patterns and trends

11

Mailinglist Bugzilla Crashes

Field logs CVS/SVN

©A. Hassan

Mining Software Repositories (MSR)

• Transforms static record-keeping repositories to active repositories

• Makes repository data actionable by uncovering hidden patterns and trends

11

Mailinglist Bugzilla Crashes

Field logs CVS/SVN

©A. Hassan

12

Source Control CVS/SVN

Bugzilla Mailing lists

©A. Hassan

12

Field Logs

Source Control CVS/SVN

Bugzilla Mailing lists

Crash Repos

©A. Hassan

12

Field Logs

Source Control CVS/SVN

Bugzilla Mailing lists

Crash Repos

Historical Repositories ©A. Hassan

12

Field Logs

Source Control CVS/SVN

Bugzilla Mailing lists

Crash Repos

Historical Repositories Runtime Repos ©A. Hassan

12

Field Logs

Source Control CVS/SVN

Bugzilla Mailing lists

Crash Repos

Historical Repositories Runtime Repos

Code Repos

Sourceforge GoogleCode

©A. Hassan

Bugzilla CVS/SVN Mailinglist Crashes

MSR researchers analyze and cross-link repositories

©A. Hassan

Bugzilla CVS/SVN Mailinglist Crashes

MSR researchers analyze and cross-link repositories

fixed bug

discussions Buggy change &

Fixing change Field crashes

©A. Hassan

Bugzilla CVS/SVN Mailinglist Crashes

MSR researchers analyze and cross-link repositories

fixed bug

discussions Buggy change &

Fixing change Field crashes

New Bug Report

©A. Hassan

Bugzilla CVS/SVN Mailinglist Crashes

MSR researchers analyze and cross-link repositories

fixed bug

discussions Buggy change &

Fixing change Field crashes

Estimate fix effort Mark duplicates

Suggest experts and fix!

New Bug Report

©A. Hassan

• use Data Exploration and Analysis Mining Software Repositories (MSR)

• for Software Practitioners Beyond Software Developers

• obtain Insightful and Actionable info Need get real as well

• Analytic Techniques • Producing Impact on Practice

We continue to help practitioners (esp. developers)

©A. Hassan

©A. Hassan

©A. Hassan

©A. Hassan

©A. Hassan

©A. Hassan

©A. Hassan

©A. Hassan

©A. Hassan

©A. Hassan

Detection and Management of Code Clones

©A. Hassan

Support Logs

Source Code

©A. Hassan

©A. Hassan

• use Data Exploration and Analysis Mining Software Repositories (MSR)

• for Software Practitioners Beyond Software Developers

• obtain Insightful and Actionable info Need get real as well

• Analytic Techniques • Case Studies

Predicting Bugs • Studies have shown that most complexity metrics

correlate well with LOC! – Graves et al. 2000 on commercial systems – Herraiz et al. 2007 on open source systems

• Noteworthy findings: – Previous bugs are good predictors of future bugs – The more a file changes, the more likely it will have

bugs in it – Recent changes affect more the bug potential of a file

over older changes (weighted time damp models) – Number of developers is of little help in predicting bugs – Hard to generalize bug predictors across projects

unless in similar domains [Nagappan, Ball et al. 2006]

23

Using Imports in Eclipse to Predict Bugs

24

import org.eclipse.jdt.internal.compiler.lookup.*; import org.eclipse.jdt.internal.compiler.*; import org.eclipse.jdt.internal.compiler.ast.*; import org.eclipse.jdt.internal.compiler.util.*; ... import org.eclipse.pde.core.*; import org.eclipse.jface.wizard.*; import org.eclipse.ui.*;

14% of all files that import ui packages, had to be fixed later on.

71% of files that import compiler packages, had to be fixed later on.

[Schröter et al. 06]

25

Percentage of bug-introducing changes for eclipse

Don’t program on Fridays ;-)

[Zimmermann et al. 05]

26

Failure is a 4-letter Word

[PROMISE’11 Zeller et al.]

27

Actionable Alone is not Enough!

[PROMISE’11 Zeller et al.]

Who produces more buggy code?

©A. Hassan

Who produces more buggy code?

©A. Hassan

• use Data Exploration and Analysis Mining Software Repositories (MSR)

• for Software Practitioners Beyond Software Developers

• obtain Insightful and Actionable info Need get real as well

• Analytic Techniques • Producing Impact on Practice

Analytic Techniques in SE

• Association rules and frequent patterns • Classification • Clustering • Text mining/Natural language processing • Visualization More details are at • https://sites.google.com/site/xsoftanalytics/ 30

49

Basic mining

algorithms

Solution-Driven Problem-Driven

Advanced mining

algorithms New/adapted

mining algorithms

Where can I apply X miner? What patterns do we really need?

E.g., frequent partial order mining [ESEC/FSE 07]

E.g., association rule, frequent itemset mining… E.g., [ICSE 09], [ASE 09]

50

1 2 mining patterns

Eclipse, Linux, …

Traditional approaches

Code repositories

Mining Searching + Mining

51

1 2 mining patterns

Eclipse, Linux, …

Traditional approaches

Often lack sufficient relevant data points (Eg. API call sites)

Code repositories

Mining Searching + Mining

52

53 53

Code repositories

1 2 N …

1 2 mining patterns

searching mining patterns

Code search engine e.g., Open source code

on the web

Eclipse, Linux, …

Traditional approaches

Our new approaches

Often lack sufficient relevant data points (Eg. API call sites)

Code repositories

Mining Searching + Mining

Existing approaches produce high % of false positives One major observation: Programmers often write code in different ways for

achieving the same task Some ways are more frequent than others

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

Existing approaches produce high % of false positives One major observation: Programmers often write code in different ways for

achieving the same task Some ways are more frequent than others

Frequent ways

Infrequent ways

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

Existing approaches produce high % of false positives One major observation: Programmers often write code in different ways for

achieving the same task Some ways are more frequent than others

Frequent ways

Infrequent ways

Mined Patterns

mine patterns

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

Existing approaches produce high % of false positives One major observation: Programmers often write code in different ways for

achieving the same task Some ways are more frequent than others

Frequent ways

Infrequent ways

Mined Patterns

mine patterns detect violations

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

Existing approaches produce high % of false positives One major observation: Programmers often write code in different ways for

achieving the same task Some ways are more frequent than others

Frequent ways

Infrequent ways

Mined Patterns

mine patterns detect violations

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

58

Example: java.util.Iterator.next()

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

Java.util.Iterator.next() throws NoSuchElementException when invoked on a list without any elements

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

59

Example: java.util.Iterator.next()

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

60

Example: java.util.Iterator.next()

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

1243 code examples

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

61

Example: java.util.Iterator.next()

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

1243 code examples

Sample 1 (1218 / 1243)

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

62

Example: java.util.Iterator.next()

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

1243 code examples

Sample 1 (1218 / 1243)

Sample 2 (6/1243)

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

63

Example: java.util.Iterator.next()

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

1243 code examples

Sample 1 (1218 / 1243)

Sample 2 (6/1243)

Mined Pattern from existing approaches:

“boolean check on return of Iterator.hasNext before Iterator.next” S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

64

Example: java.util.Iterator.next()

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

1243 code examples

Sample 1 (1218 / 1243)

Sample 2 (6/1243)

Mined Pattern from existing approaches:

“boolean check on return of Iterator.hasNext before Iterator.next” S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

65

Example: java.util.Iterator.next()

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

1243 code examples

Sample 1 (1218 / 1243)

Sample 2 (6/1243)

Mined Pattern from existing approaches:

“boolean check on return of Iterator.hasNext before Iterator.next” S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

Example: java.util.Iterator.next()

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

Example: java.util.Iterator.next()

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

Example: java.util.Iterator.next()

Require more general patterns (alternative patterns): P1 or P2

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

Example: java.util.Iterator.next()

Require more general patterns (alternative patterns): P1 or P2

P1 : boolean check on return of Iterator.hasNext before Iterator.next

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

Example: java.util.Iterator.next()

Require more general patterns (alternative patterns): P1 or P2

P1 : boolean check on return of Iterator.hasNext before Iterator.next

P2 : boolean check on return of ArrayList.size before Iterator.next

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

Example: java.util.Iterator.next()

Require more general patterns (alternative patterns): P1 or P2

P1 : boolean check on return of Iterator.hasNext before Iterator.next

P2 : boolean check on return of ArrayList.size before Iterator.next Cannot be mined by existing approaches, since alternative P2 is infrequent

PrintEntries1(ArrayList<string> entries) { … Iterator it = entries.iterator(); if(it.hasNext()) { string last = (string) it.next(); } … }

Code Sample 1

PrintEntries2(ArrayList<string> entries) { … if(entries.size() > 0) { Iterator it = entries.iterator(); string last = (string) it.next(); } … }

Code Sample 2

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

72

Our Solution: ImMiner Algorithm

Mines alternative patterns of the form P1 or P2

Based on the observation that infrequent alternatives such as P2 are frequent among code examples that do not support P1

[ASE 09]

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

73

Our Solution: ImMiner Algorithm

Mines alternative patterns of the form P1 or P2

Based on the observation that infrequent alternatives such as P2 are frequent among code examples that do not support P1

1243 code examples

Sample 1 (1218 / 1243)

Sample 2 (6/1243)

[ASE 09]

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

74

Our Solution: ImMiner Algorithm

Mines alternative patterns of the form P1 or P2

Based on the observation that infrequent alternatives such as P2 are frequent among code examples that do not support P1

1243 code examples

Sample 1 (1218 / 1243)

Sample 2 (6/1243)

P2 is infrequent among entire 1243 code examples

[ASE 09]

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

75

Our Solution: ImMiner Algorithm

Mines alternative patterns of the form P1 or P2

Based on the observation that infrequent alternatives such as P2 are frequent among code examples that do not support P1

1243 code examples

Sample 1 (1218 / 1243)

Sample 2 (6/1243)

P2 is frequent among code examples not supporting P1

[ASE 09]

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

76

Alternative Patterns

ImMiner mines three kinds of alternative patterns of the general form “P1 or P2”

Balanced: all alternatives (both P1 and P2) are frequent Imbalanced: some alternatives (P1) are frequent and

others are infrequent (P2). Represented as “P1 or P^2”

Single: only one alternative

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

ImMiner Algorithm

Uses frequent-itemset mining [Burdick et al. ICDE 01] iteratively An input database with the following APIs for Iterator.next()

Input database Mapping of IDs to APIs

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

ImMiner Algorithm: Frequent Alternatives

Input database

Frequent itemset mining

(min_sup 0.5)

Frequent item: 1 P1: boolean-check on the return of Iterator.hasNext()

before Iterator.next() S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

79

ImMiner: Infrequent Alternatives of P1

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

80

ImMiner: Infrequent Alternatives of P1 Split input database into two databases: Positive and Negative

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

81

ImMiner: Infrequent Alternatives of P1

Positive database (PSD)

Split input database into two databases: Positive and Negative

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

82

ImMiner: Infrequent Alternatives of P1

Positive database (PSD)

Negative database (NSD)

Split input database into two databases: Positive and Negative

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

83

ImMiner: Infrequent Alternatives of P1

Positive database (PSD)

Negative database (NSD)

Split input database into two databases: Positive and Negative

Mine patterns that are frequent in NSD and are infrequent in PSD Reason: Only such patterns serve as alternatives for P1

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

84

ImMiner: Infrequent Alternatives of P1

Positive database (PSD)

Negative database (NSD)

Split input database into two databases: Positive and Negative

Mine patterns that are frequent in NSD and are infrequent in PSD Reason: Only such patterns serve as alternatives for P1

Alternative Pattern : P2 “const check on the return of ArrayList.size() before Iterator.next()” Alattin applies ImMiner algorithm to detect neglected conditions

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

Neglected Conditions

Neglected conditions refer to Missing conditions that check the arguments or receiver of the API call before the API call Missing conditions that check the return or receiver of the API call after the API call

One primary reason for many fatal issues security or buffer-overflow vulnerabilities [Chang et al. ISSTA 07]

S.Thummalapenta and T. Xie. Alattin: Mining Alternative Patterns for Detecting Neglected Conditions. ASE 2009.

• use Data Exploration and Analysis Mining Software Repositories (MSR)

• for Software Practitioners Beyond Software Developers

• obtain Insightful and Actionable info Need get real as well

• Analytic Techniques • Producing Impact on Practice

Machine Learning that Matters

http://arxiv.org/ftp/arxiv/papers/1206/1206.4656.pdf

[ICML’12 Wagstaff]

• Hyper-Focus on Benchmark Data Sets

• Hyper-Focus on Abstract Metrics

• Lack of Follow-Through

http://arxiv.org/ftp/arxiv/papers/1206/1206.4656.pdf

[ICML’12 Wagstaff]

• Meaningful Evaluation Methods

• Involvement of the World Outside ML

• Eyes on the Prize

http://arxiv.org/ftp/arxiv/papers/1206/1206.4656.pdf

[ICML’12 Wagstaff]

MSRA Software Analytics Group

Utilize data-driven approach to help create highly performing, user friendly, and efficiently developed and operated software and services.

Contact: Dongmei Zhang (dongmeiz@microsoft.com)

http://research.microsoft.com/groups/sa/

MSRA Software Analytics Group

Utilize data-driven approach to help create highly performing, user friendly, and efficiently developed and operated software and services.

Software Development

Process

Software Systems

Software Users

Research Topics

Contact: Dongmei Zhang (dongmeiz@microsoft.com)

http://research.microsoft.com/groups/sa/

MSRA Software Analytics Group

Utilize data-driven approach to help create highly performing, user friendly, and efficiently developed and operated software and services.

Software Development

Process

Software Systems

Software Users

Information Visualization

Analysis Algorithms

Large-scale Computing

Research Topics Technology Pillars

Contact: Dongmei Zhang (dongmeiz@microsoft.com)

http://research.microsoft.com/groups/sa/

MSRA Software Analytics Group

Utilize data-driven approach to help create highly performing, user friendly, and efficiently developed and operated software and services.

Software Development

Process

Software Systems

Software Users

Information Visualization

Analysis Algorithms

Large-scale Computing

Research Topics Technology Pillars

Contact: Dongmei Zhang (dongmeiz@microsoft.com)

http://research.microsoft.com/groups/sa/

MSRA Software Analytics Group

Utilize data-driven approach to help create highly performing, user friendly, and efficiently developed and operated software and services.

Software Development

Process

Software Systems

Software Users

Information Visualization

Analysis Algorithms

Large-scale Computing

Research Topics Technology Pillars

Vertical

Horizontal

Contact: Dongmei Zhang (dongmeiz@microsoft.com)

http://research.microsoft.com/groups/sa/

Software Analytics in Practice

Adoption Challenges for Software Analytics

Must show value before data quality

improves

Correlation vs. Causation

ICSE Papers: Industry vs. Academia

Source© Carlo Ghezzi

ICSE Papers: Industry vs. Academia

Source© Carlo Ghezzi

OSDI 2008 26% vs. xSE ?% Developers, Programmers, Architects Among All Attendees

ICSE Papers: Industry vs. Academia

Source© Carlo Ghezzi

OSDI 2008 26% vs. xSE ?% Developers, Programmers, Architects Among All Attendees

ICSM 11 Keynote ICSE 09 Keynote

MSR 12 Keynote MSR 11 Keynote

SCAM 12 Keynote

"Are Automated Debugging [Research] Techniques Actually Helping Programmers?"

• 50 years of automated debugging research – N papers only 5 evaluated with actual programmers

” [ISSTA11 Parnin&Orso]

Are Regression Testing [Research] Techniques Actually Helping Industry?

• Likely most studied testing problems – N papers

” [STVR11 Yoo&Harman]

Are [Some] Failure-Proneness Prediction [Research] Techniques Actually Helping?

• Empirical software engineering (on prediction) – N papers

[PROMISE11 Zeller et al.]

A Researcher's Observation in HCI Research Community • “When will this community wake up and

understand that they are going to run out any work on creating new systems (rather than small pieces of systems) and cede that important endeavor to industry?”

• “We are our own worst enemies. I think we have been blinded by the perception that "true scientific" research is only found in controlled experiments and nice statistics.”

“I give up on CHI/UIST” by James Landay http://dubfuture.blogspot.com/2009/11/i-give-up-on-chiuist.html Source©J. Landay

A Researcher's Observation in HCI Research Community • “When will this community wake up and

understand that they are going to run out any work on creating new systems (rather than small pieces of systems) and cede that important endeavor to industry?”

• “We are our own worst enemies. I think we have been blinded by the perception that "true scientific" research is only found in controlled experiments and nice statistics.”

Does our research community

have similar issues??

“I give up on CHI/UIST” by James Landay http://dubfuture.blogspot.com/2009/11/i-give-up-on-chiuist.html Source©J. Landay

MS Academic Search: “Pointer Analysis”

“Pointer Analysis: Haven’t We Solved This Problem Yet?” [Hind PASTE’01]

58

“During the past 21 years, over 75 papers and 9 Ph.D. theses have been published on pointer analysis. Given the tones of work on this topic one may wonder, “Haven't we solved this problem yet?'' With input from many researchers in the field, this paper describes issues related to pointer analysis and remaining open problems.”

Michael Hind. Pointer analysis: haven't we solved this problem yet?. In Proc. ACM SIGPLAN-SIGSOFT Workshop on Program Analysis for Software Tools and Engineering (PASTE 2001)

Source©M. Hind

“Pointer Analysis: Haven’t We Solved This Problem Yet?” [Hind PASTE’01]

59

Section 4.3 Designing an Analysis for a Client’s Needs

“Barbara Ryder expands on this topic: “… We can all write an unbounded number of papers that compare different pointer analysis approximations in the abstract. However, this does not accomplish the key goal, which is to design and engineer pointer analyses that are useful for solving real software problems for realistic programs.”

Michael Hind. Pointer analysis: haven't we solved this problem yet?. In Proc. ACM SIGPLAN-SIGSOFT Workshop on Program Analysis for Software Tools and Engineering (PASTE 2001)

Source©M. Hind&B. Ryder

MS Academic Search: “Clone Detection”

MS Academic Search: “Clone Detection”

Typically focus/evaluate on intermediate steps (e.g., clone detection) instead of ultimate tasks (e.g., bug detection or refactoring), even when the field already grows mature with n years of efforts on

intermediate steps

Some Success Stories of Applying Clone Detection [Focus on Ultimate Tasks]

61

Zhenmin Li, Shan Lu, Suvda Myagmar, and Yuanyuan Zhou. CP-Miner: a tool for finding copy-paste and related bugs in operating system code. In Proc. OSDI 2004.

MSRA XIAO

Yingnong Dang, Dongmei Zhang, Song Ge, Chengyun Chu, Yingjun Qiu, and Tao Xie. XIAO: Tuning Code Clones at Hands of Engineers in Practice. In Proc. ACSAC 2012,

http://patterninsight.com/

http://www.blackducksoftware.com/

http://research.microsoft.com/en-us/groups/sa/

Suggested Actions Tech Adoption

• Get research problems from real practice • Get feedback from real practice • Collaborate across disciplines • Collaborate with industry

•Software Analytics Data Exploration and Analysis For Software Practitioners Obtain Insightful and Actionable info With Analytic Techniques

• Producing Impact on Practice

Acknowledgments • Microsoft Research Asia Software Analytics

Group • Ahmed Hassan, Lin Tan, Jian Pei • Many other colleagues

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•Software Analytics Data Exploration and Analysis For Software Practitioners Obtain Insightful and Actionable info With Analytic Techniques

• Producing Impact on Practice

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