SlideShare une entreprise Scribd logo
1  sur  40
Télécharger pour lire hors ligne
Mapping out a Research Agenda
Tao Xie
Department of Computer Science
University of Illinois at Urbana-Champaign
http://www.cs.illinois.edu/homes/taoxie/
taoxie@illinois.edu
June, 2010 (first version)
July, 2013 (last update)
http://people.engr.ncsu.edu/txie/publications/researchagenda.pdf
https://sites.google.com/site/asergrp/advice
Acknowledgment: The slides were prepared via valuable discussion, feedback
from various colleagues and students. Our research that these talk slides were
made based on has been supported in part by NSF and ARO.
Essential Skills for (PhD) Researchers
• is able to independently
– Assess
• Others’ Work (e.g., conference PC members, journal reviewers)
• Own Work
– Envision (e.g., per n years, research agenda)
– Design (e.g., per paper/project)
• Problem
• Solution
– Execute (e.g., time/risk/team management)
• Implement
• Evaluate
– Communicate
• Written
• Oral
Critical, Visionary, Creative, Strategic/Engineering, Logical… Skills
high-quality/impact
research
Brief Desirable Characteristics of
Your Paper/Project
• Two main elements
– Interesting idea(s) accompanying interesting claim(s)
– claim(s) well validated with evidence
• Then how to define “interesting”?
– Really depend on the readers’ taste but there may be
general taste for a community
• Ex: being the first in X, being non-trivial, contradicting
conventional wisdoms, …
– Can be along problem or solution space; in SE, being the
first to point out a refreshing and practical problem would
be much valued
– Uniqueness, elegance, significance?
D. Notkin: Software, Software Engineering and Software Engineering Research: Some Unconventional Thoughts.
J. Comput. Sci. Technol. 24(2): 189-197 (2009)
D. Notkin’s ICSM 2006 keynote talk.
(Broader) Impact
• There are different types of impacts: research,
industrial, societal/social, …
• Research impact, e.g., impact on research
colleagues in various forms -- citations, inspiration,
opening a new field/direction, ...
• General, fundamental, conceptual ideas (beyond a
tool, implementation, infrastructure, study..)
recent examples on QA
– Godefroid/Sen et al. DART/CUTE/Concolic testing, PLDI 05/FSE 05
– Engler et al. Coverity/Bugs as deviants, SOSP 01
– Ernst et al. Daikon/Dynamic invariant detection, ICSE 99
– Zeller. Delta debugging, FSE 99
• Overreaching contributions conveyed as insights
http://www.sigsoft.org/awards/ImpactAward.htm
http://www.sigsoft.org/awards/mostInfPapAwd.htm
http://academic.research.microsoft.com/CSDirectory/Paper_category_4.htm
Factors Affecting Choosing a
Problem/Project
• What factors affect you (not) to choose a
problem/project?
– Besides your supervisor/mentor asks you (not) to
choose it
http://www.weizmann.ac.il/mcb/UriAlon/nurturing/HowToChooseGoodProblem.pdf
Factors Affecting Choosing a
Problem/Project
• Impact/significant: Is the problem/solution
important? Are there any significant
challenges?
• Industrial impact, research impact, …
• DON’T work on a problem imagined by you but not being a
real problem
• E.g., determined based on your own experience,
observation of practice, feedback from others (e.g.,
colleagues, industrial collaborators)
• Novelty: is the problem novel? is the solution
novel?
– If a well explored or crowded space, watch out
(how much space/depth? how many people in that space?)
Factors Affecting Choosing a
Problem/Project II
• Risk: how likely the research could fail?
– reduced with significant feasibility studies and risk
management in the research development
process
– E.g., manual “mining” of bugs
• Cost: how high effort investment would be
needed?
– Sometimes being able to be reduced with using
tools and infrastructures available to us
– Need to consider evaluation cost (solutions to
some problem may be difficult to evaluate)
– But don’t shut down a direction simply due to cost
Factors Affecting Choosing a
Problem/Project III
• Better than existing approaches (in important
ways) besides new: engineering vs. science
• Competitive advantage
– “secret weapon”
– Why you/your group is the best one to pursue it?
– Ex. a specific tool/infrastructure, access to specific
data, collaborators, an insight,…
– Need to know your own strengths/weaknesses
• Underlying assumptions and principles - how do
you (systematically) choose what to pursue?
– core values that drive your research agenda in
some broad way
This slide was made based on discussion with David Notkin
Example Principles – Problem Space
• Question core assumptions or conventional
wisdoms about SE
• Play around industrial tools to address their
limitation
• Collaborate with industrial collaborators to
decide on problems of relevance to practice
• Investigate SE mining requirement and adapt or
develop mining algorithms to address them
(e.g., Suresh Thummalapenta [ICSE 09, ASE 09])
D. Notkin: Software, Software Engineering and Software Engineering Research: Some Unconventional Thoughts.
J. Comput. Sci. Technol. 24(2): 189-197 (2009)
D. Notkin’s ICSM 2006 keynote talk.
Example Principles – Solution Space
• Integration of static and dynamic analysis
• Using dynamic analysis to realize tasks
originally realized by static analysis
– Or the other way around
• Using compilers to realize tasks originally
realized by architectures
– Or the other way around
• …
Factors Affecting Choosing a
Problem/Project IV
• Intellectual curiosity
• Other benefits (including option value)
– Emerging trends or space
– Funding opportunities, e.g., security
– Infrastructure used by later research
– …
• What you are interested in, enjoy, passionate, and
believe in
• AND a personal taste
• Tradeoff among different factors
Dijkstra’s Three Golden Rules for
Successful Scientific Research
1. “Internal”: Raise your quality standards as high as
you can live with, avoid wasting your time on
routine problems, and always try to work as closely
as possible at the boundary of your abilities. Do
this, because it is the only way of discovering how
that boundary should be moved forward.
2. “External”: We all like our work to be socially
relevant and scientifically sound. If we can find a
topic satisfying both desires, we are lucky; if the
two targets are in conflict with each other, let the
requirement of scientific soundness prevail.
http://www.cs.utexas.edu/~EWD/ewd06xx/EWD637.PDF
Dijkstra’s Three Golden Rules for
Successful Scientific Research cont.
3. “Internal/ External”: Never tackle a problem of which
you can be pretty sure that (now or in the near
future) it will be tackled by others who are, in relation
to that problem, at least as competent and well-
equipped as you.
http://www.cs.utexas.edu/~EWD/ewd06xx/EWD637.PDF
Jim Gray’s Five Key Properties for
a Long-Range Research Goal
• Understandable: simple to state.
• Challenging: not obvious how to do it.
• Useful: clear benefit.
• Testable: progress and solution is testable.
• Incremental: can be broken in to smaller steps
– So that you can see intermediate progress
http://arxiv.org/ftp/cs/papers/9911/9911005.pdf
http://research.microsoft.com/pubs/68743/gray_turing_fcrc.pdf
Tony Hoare’s Criteria for a Grand
Challenge
• Fundamental
• Astonishing
• Testable
• Inspiring
• Understandable
• Useful
• Historical
http://vimeo.com/39256698
http://www.cs.yale.edu/homes/dachuan/Grand/HoareCC.pdf
The Verifying Compiler: A Grand Challenge for
Computing Research by Hoare, CACM 2003
Tony Hoare’s Criteria for a Grand
Challenge cont.
• International
• Revolutionary
• Research-directed
• Challenging
• Feasible
• Incremental
• Co-operative
http://vimeo.com/39256698
http://www.cs.yale.edu/homes/dachuan/Grand/HoareCC.pdf
The Verifying Compiler: A Grand Challenge for
Computing Research by Hoare, CACM 2003
Tony Hoare’s Criteria for a Grand
Challenge cont.
• Competitive
• Effective
• Risk-managed
http://vimeo.com/39256698
http://www.cs.yale.edu/homes/dachuan/Grand/HoareCC.pdf
The Verifying Compiler: A Grand Challenge for
Computing Research by Hoare, CACM 2003
Heilmeier's Catechism
Anyone proposing a research project or product development effort should be
able to answer
• What are you trying to do? Articulate your objectives using
absolutely no jargon.
• How is it done today, and what are the limits of current
practice?
• What's new in your approach and why do you think it will be
successful?
• Who cares?
• If you're successful, what difference will it make?
• What are the risks and the payoffs?
• How much will it cost?
• How long will it take?
• What are the midterm and final "exams" to check for success?
http://www9.georgetown.edu/faculty/yyt/bolts&nuts/TheHeilmeierCatechism.pdf
Ways of Coming Up a Problem/Project
• Know and investigate literatures and the area
• Investigate assumptions, limitations, generality,
practicality, validation of existing work
• Address issues in your own development experiences
or from other developers’
• Explore what is “hot” (pros and cons)
• See where your “hammers” could hit or be extended
• Ask “why not” on your own work or others’ work
• Understand existing patterns of thinking
– http://people.engr.ncsu.edu/txie/adviceonresearch.html
• Think more and hard, and interact with others
– Brainstorming sessions, reading groups
• …
Some points were extracted from Barbara Ryder’s slides of the same talk title
Example Techniques on
Producing Research Ideas
• Research Matrix (Charles Ling and Qiang Yang)
• Shallow/Deep Paper Categorization (Tao Xie)
• Paper Recommendation (Tao Xie)
– Students recommend/describe a paper (not read
by the advisor before) to the advisor and start
brainstorming from there
• Research Generalization (Tao Xie)
– “balloon”/ “donut” technique
Technique: Research Matrix
© Charles Ling and Qiang Yang
See Book Chapter 4.3: Crafting Your Research Future: A Guide to Successful Master's and
Ph.D. Degrees in Science & Engineering by Charles Ling and Qiang Yang
http://www.amazon.com/Crafting-Your-Research-Future-Engineering/dp/1608458105
Technique:
Shallow Paper Categorization
© Tao Xie
• See Tao Xie’s research group’s shallow
paper category:
– https://sites.google.com/site/asergrp/bibli
• Categorize papers on the research topic
being focused
• Both the resulting category and the process
of collecting and categorizing papers are
valuable
Technique:
Deep Paper Categorization
© Tao Xie
• Adopted by Tao Xie’s research group
• Categorize papers on the research topic being
focused (in a deep way)
• Draw a table (rows: papers; columns:
characterization dimensions of papers)
• Compare and find gaps/correlations across papers
Example Table on Symbolic Analysis:
Technique:
“Balloon”/“Donut”
© Tao Xie• Adopted by Tao Xie’s research group
• Balloon: the process is like blowing air into a balloon
• Donut: the final outcome is like a donut shape (with the
actual realized problem/tool as the inner circle and the
applicable generalized problem/solution boundary
addressed by the approach as the outer circle)
• Process: do the following for the problem/solution space
separately
– Step 1. Describe what the exact concrete problem/solution that your
tool addresses/implements (assuming it is X)
– Step 2. Ask questions like “Why X? But not an expanded scope of
X?”
– Step 3. Expand/generalize the description by answering the
questions (sometimes you need to shrink if overgeneralize)
– Goto Step 1
Example Application of “Balloon”/“Donut”
© Tao Xie
• Final Product: Xusheng Xiao, Tao Xie, Nikolai Tillmann, and Jonathan de Halleux.
Precise Identification of Problems for Structural Test Generation. ICSE 2011
http://people.engr.ncsu.edu/txie/publications/icse11-covana.pdf
• Problem Space
– Step 1. (Inner circle) Address too many false-warning issues reported by
Pex
– Step 2. Why Pex? But not dynamic symbolic execution (DSE)?
– Step 3. Hmmm… the ideas would work for the same problem faced by
DSE too
– Step 1. Address too many false-warning issues reported by DSE
– Step 2. Why DSE? But not symbolic execution?
– Step 3. Hmmm.. the ideas would work for the same problem faced by
symbolic execution too
– ….
– Outer circle: Address too many false-warning issues reported by test-
generation tools that focus on structural coverage and analyze code for
test generation (some techniques work for random test generation too)
Example Application of “Balloon”/“Donut”
© Tao Xie
• Final Product: Xusheng Xiao, Tao Xie, Nikolai Tillmann, and Jonathan de Halleux.
Precise Identification of Problems for Structural Test Generation. ICSE 2011
http://people.engr.ncsu.edu/txie/publications/icse11-covana.pdf
• Solution Space
– Step 1. (Inner circle) Realize issue pruning based on symbolic analysis
implemented with Pex
– Step 2. Why Pex? But not dynamic symbolic execution (DSE)?
– Step 3. Hmmm… the ideas can be realized with general DSE
– Step 1. Realize issue pruning based on symbolic analysis implemented
with DSE
– Step 2. Why DSE? But not symbolic execution?
– Step 3. Hmmm … the ideas can be realized with general symbolic
execution
– ….
– Outer circle: Realize issue pruning based on dynamic data dependence
(which can be realized with many different techniques!), potentially the
approach can use static data dependence but with tradeoffs between
dynamic and static
Industrial Collaboration/Research
• Benefits
– Problems
– Infrastructures
– Evaluation testbeds
• Caveats
– Practical utilities != research (at least not always)
– Short term vs. long term
– Product groups  researchers
Big Picture and Open Mind
• Don’t narrow-mindedly and “stubbornly” stick to
your initial solution and defend it (sometimes
with weak justification)
• Step back and ask questions (to challenge)
– Ex. Why static analysis in contrast to dynamic
analysis? [Thummalapenta et al. FSE 09]
– Ex. Why frequent partial order miner in contrast to
frequent automaton miner [Acharya et al. FSE 07]
• Your initial solution faced challenges and
difficulties  Good news?!
– Opportunities for adding new techniques
Example: Alternative Pattern Mining
• (Imbalanced) alternative patterns and new
mining algorithm for them were initially proposed
• Question 1: Are these types of alternative
patterns the only types of patterns in dealing
with alternative ways of using APIs?
• Question 2: Why couldn’t existing partial order
miners or finite automaton learners to mine
alternative patterns (they do infer alternative
ways of using APIs)?
• These questions led to finer classification of
alternative patterns: balanced and imbalanced
Alattin [Thummalapenta&Xie ASE 09]
Broader View on Solution Space
• AVOID “a tendency to be too focused on implementing
a particular approach to a problem and not interested
enough in exploring a broader range of approaches
and understanding why some of them work well and
not so well.”
• Need to hold a broader view during
research/career development, and ask
questions like
– Is the current solution the only possible solution?
– What are other possible solutions?
– Can the current solution beat other possible
solutions in all aspects?
– Can the current solution be further improved with
ideas from other possible solutions? ....
Continuation in Research Agenda
• Maintain a theme and continuation (go deep)
– Ex. Focus on the same problem with (significant) improvement
of your previous solution
– Ex. Focus on a new problem with (significant) adaptation of
your previous solution
– Deep (significant) paper over shallow (insignificant) paper(s)
• Better to tell/reflect a coherent story (principle); set up
identity to be in X area
• Pros
– Reduce risk (with more certainty)
– Reduce cost (reusing infrastructure/experience)
• Cons
– Increase risk (what if a dead end?)
– Reduce novelty (tend to be incremental; watch out/avoid LPU)
Example Research Agenda on
Mining SE Data (for Tao’s ASE group) 2005-
• My PhD research was on dynamic analysis (e.g.,
testing w/ spec inference [ASE 03] and bug avoidance
w/ machine learning [ICSE 05])
• Interested in going from Dynamic to Static
– Often not scalable with dynamic analysis
• Interested in applying data mining
– Based on competitive advantage and research density,
decide to mine code bases
• Learned about Koders.com during end of 2005
– Thought: code search engine is so scalable but search
results not good enough for SE tasks, why not Searching +
Mining?
– Discussed with Jian Pei (data mining) MAPO [MSR 06]
Example Research Agenda – Cont.
• Then students drive the work and shape the
research agenda….
Mithun Acharya Suresh Thummalapenta
Xiaoyin Wang Hao Zhong
…
…
https://sites.google.com/site/asergrp/
Example Research Agenda – Cont.
• Static tracing C infrastructure (Mithun Acharya)
– API property generation [ASE 06S]
– Mining interface details [ISSRE 06]
– Mining partial orders [ESEC/FSE 07]
– Mining error-handling defects [FASE 09]
• Static searching+tracing Java infrastructure incl
partial code analysis (Suresh Thummalapenta)
– PARSEWeb: Mining method sequences [ASE 07]
– SpotWeb: Mining hotspots/coldspots [ASE 08]
– CAR-Miner: Mining sequence association rules
(exception-handling defects) [ICSE 09]
– Alattin: Mining alternative patterns (neglected
conditions) [ASE 09]
Example Research Agenda – Cont.
• Software reliability remains a focused task for mining
• Recently shift our competitive advantage/principle,
e.g., Suresh Thummalapenta’s work
– Searching+mining/adopting advanced miners [FSE 07] 
new patterns/mining algorithms [ICSE 09, ASE 09]
– Static defect detection  test generation
(partly due to new collaboration with MSR Pex) [FSE 09]
• Expand mining with our Chinese collaborators
– API mining: Hao Zhong, Lu Zhang, et al.
• MAPO - mining API sequences [ECOOP 09]
• MAM – mining API mapping [ICSE 10]
– Text mining: Xiaoyin Wang, Hao Zhong, Lu Zhang et al.
• Mining bug reports+ execution traces [ICSE 08]
• Mining API docs for properties [ASE 09, Best Paper]
Big Picture and Vision
• Step back and think about what research
problems will be most important and most
influential/significant to solve in the long term
– Long term could be the whole career
• People tend not to think about important/long
term problems
Richard Hamming “you and your research”
http://www.cs.virginia.edu/~robins/YouAndYourResearch.html
Ivan Sutherland “technology and courage”
http://labs.oracle.com/techrep/Perspectives/smli_ps-1.pdf
Less important More important
Shorter term
Longer term
This slide was made based on
discussion with David Notkin
Research Space
Talk: The Pipeline from Computing Research to Surprising Inventions by Peter Lee
http://www.youtube.com/watch?v=_kpjw9Is14Q
http://blogs.technet.com/b/inside_microsoft_research/archive/2011/12/31/microsoft-research-
redmond-year-in-review.aspx a blog post by Peter Lee
©Peter Lee
Big Picture and Vision –cont.
• If you are given 1 (4) million dollars to lead a
team of 5 (10) team members for 5 (10) years,
what would you invest them on?
More Reading
• http://www.weizmann.ac.il/mcb/UriAlon/nurturing/How
ToChooseGoodProblem.pdf
• http://www.cs.rutgers.edu/~ryder/DoingResNSEFS505
.pdf
• https://sites.google.com/site/asergrp/advice
– http://people.engr.ncsu.edu/txie/publications/writepapers.pdf
– http://people.engr.ncsu.edu/txie/advice/researchskills.pdf
– http://people.engr.ncsu.edu/txie/advice/gradstudentsurvival.p
df
– http://people.engr.ncsu.edu/txie/adviceonresearch.html
• http://calnewport.com/blog/2008/11/07/does-being-
exceptional-require-an-exceptional-amount-of-work/
More Reading
• https://sites.google.com/site/slesesymposium/slese
12.pdf by Zhendong Su
• http://avandeursen.wordpress.com/2013/07/10/rese
arch-paper-writing-recommendations/ by Arie van
Deursen
• Book: Crafting Your Research Future: A Guide to
Successful Master's and Ph.D. Degrees in Science
& Engineering by Charles Ling and Qiang Yang
– http://www.amazon.com/Crafting-Your-Research-Future-
Engineering/dp/1608458105

Contenu connexe

Tendances

The Literature and Study Review and Ethical Concern
The Literature and Study  Review and Ethical ConcernThe Literature and Study  Review and Ethical Concern
The Literature and Study Review and Ethical ConcernJo Balucanag - Bitonio
 
SHS Thesis ICT- “THE IMPACT OF THE AUDIOVISUAL AIDS (MICROSOFT POWER POINT PR...
SHS Thesis ICT- “THE IMPACT OF THE AUDIOVISUAL AIDS (MICROSOFT POWER POINT PR...SHS Thesis ICT- “THE IMPACT OF THE AUDIOVISUAL AIDS (MICROSOFT POWER POINT PR...
SHS Thesis ICT- “THE IMPACT OF THE AUDIOVISUAL AIDS (MICROSOFT POWER POINT PR...JohnPhillipMedina
 
Daily Lesson Log_final.docx
Daily Lesson Log_final.docxDaily Lesson Log_final.docx
Daily Lesson Log_final.docxJAYCACHO2
 
Chapter 4, Conceptualizing A Research Study
Chapter 4, Conceptualizing A Research StudyChapter 4, Conceptualizing A Research Study
Chapter 4, Conceptualizing A Research StudyMaria Theresa Dalagan
 
Student Absenteeism Thesis by Adnan SAmi & zuhaib malik MA social work UOP
Student Absenteeism Thesis by Adnan SAmi & zuhaib malik MA social work UOPStudent Absenteeism Thesis by Adnan SAmi & zuhaib malik MA social work UOP
Student Absenteeism Thesis by Adnan SAmi & zuhaib malik MA social work UOPAdnan Sami
 
Practical Research- Chapter 1.pptx
Practical Research- Chapter 1.pptxPractical Research- Chapter 1.pptx
Practical Research- Chapter 1.pptxSheenaOcutareDellima
 
Purposes of the related literature and studies
Purposes of the related literature and studiesPurposes of the related literature and studies
Purposes of the related literature and studiesjennyl salgados
 
Six steps to help you select your research topic
Six steps to help you select your research topicSix steps to help you select your research topic
Six steps to help you select your research topicSets India
 
Research problem presentation
Research problem presentationResearch problem presentation
Research problem presentationAnamika Ramawat
 
Research Problem Identification.pptx
Research Problem Identification.pptxResearch Problem Identification.pptx
Research Problem Identification.pptxAntonetteAlbina3
 
Introduction to Capstone Project
Introduction to Capstone ProjectIntroduction to Capstone Project
Introduction to Capstone Projectschool
 
Chapter-2-Review-of-Related-Literature.ppt
Chapter-2-Review-of-Related-Literature.pptChapter-2-Review-of-Related-Literature.ppt
Chapter-2-Review-of-Related-Literature.pptEricaReque
 
4.3 the research title
4.3 the research title4.3 the research title
4.3 the research titleJoash Medina
 
Sir jun mtot dlp eapp
Sir jun mtot dlp eappSir jun mtot dlp eapp
Sir jun mtot dlp eappLeah Condina
 

Tendances (20)

The Literature and Study Review and Ethical Concern
The Literature and Study  Review and Ethical ConcernThe Literature and Study  Review and Ethical Concern
The Literature and Study Review and Ethical Concern
 
SHS Thesis ICT- “THE IMPACT OF THE AUDIOVISUAL AIDS (MICROSOFT POWER POINT PR...
SHS Thesis ICT- “THE IMPACT OF THE AUDIOVISUAL AIDS (MICROSOFT POWER POINT PR...SHS Thesis ICT- “THE IMPACT OF THE AUDIOVISUAL AIDS (MICROSOFT POWER POINT PR...
SHS Thesis ICT- “THE IMPACT OF THE AUDIOVISUAL AIDS (MICROSOFT POWER POINT PR...
 
Daily Lesson Log_final.docx
Daily Lesson Log_final.docxDaily Lesson Log_final.docx
Daily Lesson Log_final.docx
 
Practical Research 1 - Week 1
Practical Research 1 - Week 1Practical Research 1 - Week 1
Practical Research 1 - Week 1
 
Chapter 4, Conceptualizing A Research Study
Chapter 4, Conceptualizing A Research StudyChapter 4, Conceptualizing A Research Study
Chapter 4, Conceptualizing A Research Study
 
Student Absenteeism Thesis by Adnan SAmi & zuhaib malik MA social work UOP
Student Absenteeism Thesis by Adnan SAmi & zuhaib malik MA social work UOPStudent Absenteeism Thesis by Adnan SAmi & zuhaib malik MA social work UOP
Student Absenteeism Thesis by Adnan SAmi & zuhaib malik MA social work UOP
 
Practical Research- Chapter 1.pptx
Practical Research- Chapter 1.pptxPractical Research- Chapter 1.pptx
Practical Research- Chapter 1.pptx
 
Purposes of the related literature and studies
Purposes of the related literature and studiesPurposes of the related literature and studies
Purposes of the related literature and studies
 
Research gap what-why-how
Research gap what-why-howResearch gap what-why-how
Research gap what-why-how
 
Six steps to help you select your research topic
Six steps to help you select your research topicSix steps to help you select your research topic
Six steps to help you select your research topic
 
Creative Nonfiction Module 1.pdf
Creative Nonfiction Module 1.pdfCreative Nonfiction Module 1.pdf
Creative Nonfiction Module 1.pdf
 
IMRAD FORMAT
IMRAD FORMAT IMRAD FORMAT
IMRAD FORMAT
 
Research problem presentation
Research problem presentationResearch problem presentation
Research problem presentation
 
Research Problem Identification.pptx
Research Problem Identification.pptxResearch Problem Identification.pptx
Research Problem Identification.pptx
 
parts of a research paper
parts of a research paperparts of a research paper
parts of a research paper
 
Apa manual chapter 4
Apa manual chapter 4Apa manual chapter 4
Apa manual chapter 4
 
Introduction to Capstone Project
Introduction to Capstone ProjectIntroduction to Capstone Project
Introduction to Capstone Project
 
Chapter-2-Review-of-Related-Literature.ppt
Chapter-2-Review-of-Related-Literature.pptChapter-2-Review-of-Related-Literature.ppt
Chapter-2-Review-of-Related-Literature.ppt
 
4.3 the research title
4.3 the research title4.3 the research title
4.3 the research title
 
Sir jun mtot dlp eapp
Sir jun mtot dlp eappSir jun mtot dlp eapp
Sir jun mtot dlp eapp
 

En vedette

Research proposal 1 problem statement to thesis statement
Research proposal 1   problem statement to thesis statementResearch proposal 1   problem statement to thesis statement
Research proposal 1 problem statement to thesis statementJaime Alfredo Cabrera
 
Nursing research
Nursing researchNursing research
Nursing researchJMGS4
 
Perceptual mapping
Perceptual mappingPerceptual mapping
Perceptual mappinganuragsoni21
 
The Research Proposal
The Research ProposalThe Research Proposal
The Research Proposalguest349908
 

En vedette (6)

Research proposal 1 problem statement to thesis statement
Research proposal 1   problem statement to thesis statementResearch proposal 1   problem statement to thesis statement
Research proposal 1 problem statement to thesis statement
 
Concept mapping1
Concept mapping1Concept mapping1
Concept mapping1
 
Nursing research
Nursing researchNursing research
Nursing research
 
Perceptual mapping
Perceptual mappingPerceptual mapping
Perceptual mapping
 
Nursing Research
Nursing ResearchNursing Research
Nursing Research
 
The Research Proposal
The Research ProposalThe Research Proposal
The Research Proposal
 

Similaire à Mapping out a Research Agenda

ISEC'18 Tutorial: Research Methodology on Pursuing Impact-Driven Research
ISEC'18 Tutorial: Research Methodology on Pursuing Impact-Driven ResearchISEC'18 Tutorial: Research Methodology on Pursuing Impact-Driven Research
ISEC'18 Tutorial: Research Methodology on Pursuing Impact-Driven ResearchTao Xie
 
Why and How to Get a PhD? (In software engineering)
Why and How to Get a PhD? (In software engineering)Why and How to Get a PhD? (In software engineering)
Why and How to Get a PhD? (In software engineering)Lionel Briand
 
How to Write Research Papers
How to Write Research PapersHow to Write Research Papers
How to Write Research PapersTao Xie
 
PhD-Program Preparation for Successful Post-PhD Career
PhD-Program Preparation for Successful Post-PhD CareerPhD-Program Preparation for Successful Post-PhD Career
PhD-Program Preparation for Successful Post-PhD CareerTao Xie
 
General research methodology
General research methodologyGeneral research methodology
General research methodologykhadepoonam640
 
Developing assessment center tools (case study)
Developing assessment center tools (case study)Developing assessment center tools (case study)
Developing assessment center tools (case study)Seta Wicaksana
 
Why and How to get a PhD (in Software Engineering)
Why and How to get a PhD (in Software Engineering)Why and How to get a PhD (in Software Engineering)
Why and How to get a PhD (in Software Engineering)Lionel Briand
 
Research Methodology UNIT 1.pptx
Research Methodology UNIT 1.pptxResearch Methodology UNIT 1.pptx
Research Methodology UNIT 1.pptxPallawiBulakh1
 
Ph D Process. Julie Dugdale
Ph D Process. Julie DugdalePh D Process. Julie Dugdale
Ph D Process. Julie DugdaleJulie Dugdale
 
[PPT] _ UNIT 1 _ COMPLETE.pptx
[PPT] _ UNIT 1 _ COMPLETE.pptx[PPT] _ UNIT 1 _ COMPLETE.pptx
[PPT] _ UNIT 1 _ COMPLETE.pptxSelvaraj Seerangan
 
Techniques d’etudes et de recherche
Techniques d’etudes et de rechercheTechniques d’etudes et de recherche
Techniques d’etudes et de rechercheMohamed Diallo
 
Name ID Number Section 1 SummaryAt least 250 words as counted.docx
Name ID Number Section 1 SummaryAt least 250 words as counted.docxName ID Number Section 1 SummaryAt least 250 words as counted.docx
Name ID Number Section 1 SummaryAt least 250 words as counted.docxroushhsiu
 
Denver Startup Week 2019: Choosing a Direction Learning How to Test Ideas and...
Denver Startup Week 2019: Choosing a Direction Learning How to Test Ideas and...Denver Startup Week 2019: Choosing a Direction Learning How to Test Ideas and...
Denver Startup Week 2019: Choosing a Direction Learning How to Test Ideas and...BrittanyRubinstein
 
Digital Art History: From Practice to Publication
Digital Art History: From Practice to PublicationDigital Art History: From Practice to Publication
Digital Art History: From Practice to PublicationSusan Edwards
 
6_2019_10_31!10_52_47_PM.PPT
6_2019_10_31!10_52_47_PM.PPT6_2019_10_31!10_52_47_PM.PPT
6_2019_10_31!10_52_47_PM.PPTharvinderjabbal
 
Experience sharing-of-technologist-cum-mgmt-scientist-2013
Experience sharing-of-technologist-cum-mgmt-scientist-2013Experience sharing-of-technologist-cum-mgmt-scientist-2013
Experience sharing-of-technologist-cum-mgmt-scientist-2013Sanjeev Deshmukh
 

Similaire à Mapping out a Research Agenda (20)

ISEC'18 Tutorial: Research Methodology on Pursuing Impact-Driven Research
ISEC'18 Tutorial: Research Methodology on Pursuing Impact-Driven ResearchISEC'18 Tutorial: Research Methodology on Pursuing Impact-Driven Research
ISEC'18 Tutorial: Research Methodology on Pursuing Impact-Driven Research
 
Why and How to Get a PhD? (In software engineering)
Why and How to Get a PhD? (In software engineering)Why and How to Get a PhD? (In software engineering)
Why and How to Get a PhD? (In software engineering)
 
How to Write Research Papers
How to Write Research PapersHow to Write Research Papers
How to Write Research Papers
 
PhD-Program Preparation for Successful Post-PhD Career
PhD-Program Preparation for Successful Post-PhD CareerPhD-Program Preparation for Successful Post-PhD Career
PhD-Program Preparation for Successful Post-PhD Career
 
Design Process Formatted
Design  Process FormattedDesign  Process Formatted
Design Process Formatted
 
Design Process Complete
Design  Process CompleteDesign  Process Complete
Design Process Complete
 
General research methodology
General research methodologyGeneral research methodology
General research methodology
 
Developing assessment center tools (case study)
Developing assessment center tools (case study)Developing assessment center tools (case study)
Developing assessment center tools (case study)
 
Why and How to get a PhD (in Software Engineering)
Why and How to get a PhD (in Software Engineering)Why and How to get a PhD (in Software Engineering)
Why and How to get a PhD (in Software Engineering)
 
Research Methodology UNIT 1.pptx
Research Methodology UNIT 1.pptxResearch Methodology UNIT 1.pptx
Research Methodology UNIT 1.pptx
 
Ph D Process. Julie Dugdale
Ph D Process. Julie DugdalePh D Process. Julie Dugdale
Ph D Process. Julie Dugdale
 
5.chapter 3
5.chapter 35.chapter 3
5.chapter 3
 
[PPT] _ UNIT 1 _ COMPLETE.pptx
[PPT] _ UNIT 1 _ COMPLETE.pptx[PPT] _ UNIT 1 _ COMPLETE.pptx
[PPT] _ UNIT 1 _ COMPLETE.pptx
 
Techniques d’etudes et de recherche
Techniques d’etudes et de rechercheTechniques d’etudes et de recherche
Techniques d’etudes et de recherche
 
Name ID Number Section 1 SummaryAt least 250 words as counted.docx
Name ID Number Section 1 SummaryAt least 250 words as counted.docxName ID Number Section 1 SummaryAt least 250 words as counted.docx
Name ID Number Section 1 SummaryAt least 250 words as counted.docx
 
Denver Startup Week 2019: Choosing a Direction Learning How to Test Ideas and...
Denver Startup Week 2019: Choosing a Direction Learning How to Test Ideas and...Denver Startup Week 2019: Choosing a Direction Learning How to Test Ideas and...
Denver Startup Week 2019: Choosing a Direction Learning How to Test Ideas and...
 
Digital Art History: From Practice to Publication
Digital Art History: From Practice to PublicationDigital Art History: From Practice to Publication
Digital Art History: From Practice to Publication
 
6_2019_10_31!10_52_47_PM.PPT
6_2019_10_31!10_52_47_PM.PPT6_2019_10_31!10_52_47_PM.PPT
6_2019_10_31!10_52_47_PM.PPT
 
Life after-phd-10-nov
Life after-phd-10-novLife after-phd-10-nov
Life after-phd-10-nov
 
Experience sharing-of-technologist-cum-mgmt-scientist-2013
Experience sharing-of-technologist-cum-mgmt-scientist-2013Experience sharing-of-technologist-cum-mgmt-scientist-2013
Experience sharing-of-technologist-cum-mgmt-scientist-2013
 

Plus de Tao Xie

MSR 2022 Foundational Contribution Award Talk: Software Analytics: Reflection...
MSR 2022 Foundational Contribution Award Talk: Software Analytics: Reflection...MSR 2022 Foundational Contribution Award Talk: Software Analytics: Reflection...
MSR 2022 Foundational Contribution Award Talk: Software Analytics: Reflection...Tao Xie
 
DSML 2021 Keynote: Intelligent Software Engineering: Working at the Intersect...
DSML 2021 Keynote: Intelligent Software Engineering: Working at the Intersect...DSML 2021 Keynote: Intelligent Software Engineering: Working at the Intersect...
DSML 2021 Keynote: Intelligent Software Engineering: Working at the Intersect...Tao Xie
 
Intelligent Software Engineering: Synergy between AI and Software Engineering
Intelligent Software Engineering: Synergy between AI and Software EngineeringIntelligent Software Engineering: Synergy between AI and Software Engineering
Intelligent Software Engineering: Synergy between AI and Software EngineeringTao Xie
 
Diversity and Computing/Engineering: Perspectives from Allies
Diversity and Computing/Engineering: Perspectives from AlliesDiversity and Computing/Engineering: Perspectives from Allies
Diversity and Computing/Engineering: Perspectives from AlliesTao Xie
 
Intelligent Software Engineering: Synergy between AI and Software Engineering...
Intelligent Software Engineering: Synergy between AI and Software Engineering...Intelligent Software Engineering: Synergy between AI and Software Engineering...
Intelligent Software Engineering: Synergy between AI and Software Engineering...Tao Xie
 
MSRA 2018: Intelligent Software Engineering: Synergy between AI and Software ...
MSRA 2018: Intelligent Software Engineering: Synergy between AI and Software ...MSRA 2018: Intelligent Software Engineering: Synergy between AI and Software ...
MSRA 2018: Intelligent Software Engineering: Synergy between AI and Software ...Tao Xie
 
SETTA'18 Keynote: Intelligent Software Engineering: Synergy between AI and So...
SETTA'18 Keynote: Intelligent Software Engineering: Synergy between AI and So...SETTA'18 Keynote: Intelligent Software Engineering: Synergy between AI and So...
SETTA'18 Keynote: Intelligent Software Engineering: Synergy between AI and So...Tao Xie
 
ISEC'18 Keynote: Intelligent Software Engineering: Synergy between AI and Sof...
ISEC'18 Keynote: Intelligent Software Engineering: Synergy between AI and Sof...ISEC'18 Keynote: Intelligent Software Engineering: Synergy between AI and Sof...
ISEC'18 Keynote: Intelligent Software Engineering: Synergy between AI and Sof...Tao Xie
 
Intelligent Software Engineering: Synergy between AI and Software Engineering
Intelligent Software Engineering: Synergy between AI and Software EngineeringIntelligent Software Engineering: Synergy between AI and Software Engineering
Intelligent Software Engineering: Synergy between AI and Software EngineeringTao Xie
 
Software Analytics: Data Analytics for Software Engineering and Security
Software Analytics: Data Analytics for Software Engineering and SecuritySoftware Analytics: Data Analytics for Software Engineering and Security
Software Analytics: Data Analytics for Software Engineering and SecurityTao Xie
 
Planning and Executing Practice-Impactful Research
Planning and Executing Practice-Impactful ResearchPlanning and Executing Practice-Impactful Research
Planning and Executing Practice-Impactful ResearchTao Xie
 
Software Analytics: Data Analytics for Software Engineering
Software Analytics: Data Analytics for Software EngineeringSoftware Analytics: Data Analytics for Software Engineering
Software Analytics: Data Analytics for Software EngineeringTao Xie
 
Transferring Software Testing Tools to Practice (AST 2017 Keynote)
Transferring Software Testing Tools to Practice (AST 2017 Keynote)Transferring Software Testing Tools to Practice (AST 2017 Keynote)
Transferring Software Testing Tools to Practice (AST 2017 Keynote)Tao Xie
 
Transferring Software Testing Tools to Practice
Transferring Software Testing Tools to PracticeTransferring Software Testing Tools to Practice
Transferring Software Testing Tools to PracticeTao Xie
 
Advances in Unit Testing: Theory and Practice
Advances in Unit Testing: Theory and PracticeAdvances in Unit Testing: Theory and Practice
Advances in Unit Testing: Theory and PracticeTao Xie
 
Common Technical Writing Issues
Common Technical Writing IssuesCommon Technical Writing Issues
Common Technical Writing IssuesTao Xie
 
HotSoS16 Tutorial "Text Analytics for Security" by Tao Xie and William Enck
HotSoS16 Tutorial "Text Analytics for Security" by Tao Xie and William EnckHotSoS16 Tutorial "Text Analytics for Security" by Tao Xie and William Enck
HotSoS16 Tutorial "Text Analytics for Security" by Tao Xie and William EnckTao Xie
 
Transferring Software Testing and Analytics Tools to Practice
Transferring Software Testing and Analytics Tools to PracticeTransferring Software Testing and Analytics Tools to Practice
Transferring Software Testing and Analytics Tools to PracticeTao Xie
 
User Expectations in Mobile App Security
User Expectations in Mobile App SecurityUser Expectations in Mobile App Security
User Expectations in Mobile App SecurityTao Xie
 
Impact-Driven Research on Software Engineering Tooling
Impact-Driven Research on Software Engineering ToolingImpact-Driven Research on Software Engineering Tooling
Impact-Driven Research on Software Engineering ToolingTao Xie
 

Plus de Tao Xie (20)

MSR 2022 Foundational Contribution Award Talk: Software Analytics: Reflection...
MSR 2022 Foundational Contribution Award Talk: Software Analytics: Reflection...MSR 2022 Foundational Contribution Award Talk: Software Analytics: Reflection...
MSR 2022 Foundational Contribution Award Talk: Software Analytics: Reflection...
 
DSML 2021 Keynote: Intelligent Software Engineering: Working at the Intersect...
DSML 2021 Keynote: Intelligent Software Engineering: Working at the Intersect...DSML 2021 Keynote: Intelligent Software Engineering: Working at the Intersect...
DSML 2021 Keynote: Intelligent Software Engineering: Working at the Intersect...
 
Intelligent Software Engineering: Synergy between AI and Software Engineering
Intelligent Software Engineering: Synergy between AI and Software EngineeringIntelligent Software Engineering: Synergy between AI and Software Engineering
Intelligent Software Engineering: Synergy between AI and Software Engineering
 
Diversity and Computing/Engineering: Perspectives from Allies
Diversity and Computing/Engineering: Perspectives from AlliesDiversity and Computing/Engineering: Perspectives from Allies
Diversity and Computing/Engineering: Perspectives from Allies
 
Intelligent Software Engineering: Synergy between AI and Software Engineering...
Intelligent Software Engineering: Synergy between AI and Software Engineering...Intelligent Software Engineering: Synergy between AI and Software Engineering...
Intelligent Software Engineering: Synergy between AI and Software Engineering...
 
MSRA 2018: Intelligent Software Engineering: Synergy between AI and Software ...
MSRA 2018: Intelligent Software Engineering: Synergy between AI and Software ...MSRA 2018: Intelligent Software Engineering: Synergy between AI and Software ...
MSRA 2018: Intelligent Software Engineering: Synergy between AI and Software ...
 
SETTA'18 Keynote: Intelligent Software Engineering: Synergy between AI and So...
SETTA'18 Keynote: Intelligent Software Engineering: Synergy between AI and So...SETTA'18 Keynote: Intelligent Software Engineering: Synergy between AI and So...
SETTA'18 Keynote: Intelligent Software Engineering: Synergy between AI and So...
 
ISEC'18 Keynote: Intelligent Software Engineering: Synergy between AI and Sof...
ISEC'18 Keynote: Intelligent Software Engineering: Synergy between AI and Sof...ISEC'18 Keynote: Intelligent Software Engineering: Synergy between AI and Sof...
ISEC'18 Keynote: Intelligent Software Engineering: Synergy between AI and Sof...
 
Intelligent Software Engineering: Synergy between AI and Software Engineering
Intelligent Software Engineering: Synergy between AI and Software EngineeringIntelligent Software Engineering: Synergy between AI and Software Engineering
Intelligent Software Engineering: Synergy between AI and Software Engineering
 
Software Analytics: Data Analytics for Software Engineering and Security
Software Analytics: Data Analytics for Software Engineering and SecuritySoftware Analytics: Data Analytics for Software Engineering and Security
Software Analytics: Data Analytics for Software Engineering and Security
 
Planning and Executing Practice-Impactful Research
Planning and Executing Practice-Impactful ResearchPlanning and Executing Practice-Impactful Research
Planning and Executing Practice-Impactful Research
 
Software Analytics: Data Analytics for Software Engineering
Software Analytics: Data Analytics for Software EngineeringSoftware Analytics: Data Analytics for Software Engineering
Software Analytics: Data Analytics for Software Engineering
 
Transferring Software Testing Tools to Practice (AST 2017 Keynote)
Transferring Software Testing Tools to Practice (AST 2017 Keynote)Transferring Software Testing Tools to Practice (AST 2017 Keynote)
Transferring Software Testing Tools to Practice (AST 2017 Keynote)
 
Transferring Software Testing Tools to Practice
Transferring Software Testing Tools to PracticeTransferring Software Testing Tools to Practice
Transferring Software Testing Tools to Practice
 
Advances in Unit Testing: Theory and Practice
Advances in Unit Testing: Theory and PracticeAdvances in Unit Testing: Theory and Practice
Advances in Unit Testing: Theory and Practice
 
Common Technical Writing Issues
Common Technical Writing IssuesCommon Technical Writing Issues
Common Technical Writing Issues
 
HotSoS16 Tutorial "Text Analytics for Security" by Tao Xie and William Enck
HotSoS16 Tutorial "Text Analytics for Security" by Tao Xie and William EnckHotSoS16 Tutorial "Text Analytics for Security" by Tao Xie and William Enck
HotSoS16 Tutorial "Text Analytics for Security" by Tao Xie and William Enck
 
Transferring Software Testing and Analytics Tools to Practice
Transferring Software Testing and Analytics Tools to PracticeTransferring Software Testing and Analytics Tools to Practice
Transferring Software Testing and Analytics Tools to Practice
 
User Expectations in Mobile App Security
User Expectations in Mobile App SecurityUser Expectations in Mobile App Security
User Expectations in Mobile App Security
 
Impact-Driven Research on Software Engineering Tooling
Impact-Driven Research on Software Engineering ToolingImpact-Driven Research on Software Engineering Tooling
Impact-Driven Research on Software Engineering Tooling
 

Dernier

Introduction to Nonprofit Accounting: The Basics
Introduction to Nonprofit Accounting: The BasicsIntroduction to Nonprofit Accounting: The Basics
Introduction to Nonprofit Accounting: The BasicsTechSoup
 
How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17Celine George
 
On National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan FellowsOn National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan FellowsMebane Rash
 
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...pradhanghanshyam7136
 
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...ZurliaSoop
 
Sociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning ExhibitSociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning Exhibitjbellavia9
 
Fostering Friendships - Enhancing Social Bonds in the Classroom
Fostering Friendships - Enhancing Social Bonds  in the ClassroomFostering Friendships - Enhancing Social Bonds  in the Classroom
Fostering Friendships - Enhancing Social Bonds in the ClassroomPooky Knightsmith
 
ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.MaryamAhmad92
 
Unit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxUnit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxVishalSingh1417
 
Mixin Classes in Odoo 17 How to Extend Models Using Mixin Classes
Mixin Classes in Odoo 17  How to Extend Models Using Mixin ClassesMixin Classes in Odoo 17  How to Extend Models Using Mixin Classes
Mixin Classes in Odoo 17 How to Extend Models Using Mixin ClassesCeline George
 
How to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POSHow to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POSCeline George
 
FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024Elizabeth Walsh
 
Unit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptxUnit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptxVishalSingh1417
 
Google Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptxGoogle Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptxDr. Sarita Anand
 
The basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxThe basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxheathfieldcps1
 
Graduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - EnglishGraduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - Englishneillewis46
 
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptxSKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptxAmanpreet Kaur
 
Key note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfKey note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfAdmir Softic
 
ICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxAreebaZafar22
 
Dyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptxDyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptxcallscotland1987
 

Dernier (20)

Introduction to Nonprofit Accounting: The Basics
Introduction to Nonprofit Accounting: The BasicsIntroduction to Nonprofit Accounting: The Basics
Introduction to Nonprofit Accounting: The Basics
 
How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17
 
On National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan FellowsOn National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan Fellows
 
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
 
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
 
Sociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning ExhibitSociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning Exhibit
 
Fostering Friendships - Enhancing Social Bonds in the Classroom
Fostering Friendships - Enhancing Social Bonds  in the ClassroomFostering Friendships - Enhancing Social Bonds  in the Classroom
Fostering Friendships - Enhancing Social Bonds in the Classroom
 
ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.
 
Unit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxUnit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptx
 
Mixin Classes in Odoo 17 How to Extend Models Using Mixin Classes
Mixin Classes in Odoo 17  How to Extend Models Using Mixin ClassesMixin Classes in Odoo 17  How to Extend Models Using Mixin Classes
Mixin Classes in Odoo 17 How to Extend Models Using Mixin Classes
 
How to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POSHow to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POS
 
FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024
 
Unit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptxUnit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptx
 
Google Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptxGoogle Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptx
 
The basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxThe basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptx
 
Graduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - EnglishGraduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - English
 
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptxSKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
 
Key note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfKey note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdf
 
ICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptx
 
Dyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptxDyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptx
 

Mapping out a Research Agenda

  • 1. Mapping out a Research Agenda Tao Xie Department of Computer Science University of Illinois at Urbana-Champaign http://www.cs.illinois.edu/homes/taoxie/ taoxie@illinois.edu June, 2010 (first version) July, 2013 (last update) http://people.engr.ncsu.edu/txie/publications/researchagenda.pdf https://sites.google.com/site/asergrp/advice Acknowledgment: The slides were prepared via valuable discussion, feedback from various colleagues and students. Our research that these talk slides were made based on has been supported in part by NSF and ARO.
  • 2. Essential Skills for (PhD) Researchers • is able to independently – Assess • Others’ Work (e.g., conference PC members, journal reviewers) • Own Work – Envision (e.g., per n years, research agenda) – Design (e.g., per paper/project) • Problem • Solution – Execute (e.g., time/risk/team management) • Implement • Evaluate – Communicate • Written • Oral Critical, Visionary, Creative, Strategic/Engineering, Logical… Skills high-quality/impact research
  • 3. Brief Desirable Characteristics of Your Paper/Project • Two main elements – Interesting idea(s) accompanying interesting claim(s) – claim(s) well validated with evidence • Then how to define “interesting”? – Really depend on the readers’ taste but there may be general taste for a community • Ex: being the first in X, being non-trivial, contradicting conventional wisdoms, … – Can be along problem or solution space; in SE, being the first to point out a refreshing and practical problem would be much valued – Uniqueness, elegance, significance? D. Notkin: Software, Software Engineering and Software Engineering Research: Some Unconventional Thoughts. J. Comput. Sci. Technol. 24(2): 189-197 (2009) D. Notkin’s ICSM 2006 keynote talk.
  • 4. (Broader) Impact • There are different types of impacts: research, industrial, societal/social, … • Research impact, e.g., impact on research colleagues in various forms -- citations, inspiration, opening a new field/direction, ... • General, fundamental, conceptual ideas (beyond a tool, implementation, infrastructure, study..) recent examples on QA – Godefroid/Sen et al. DART/CUTE/Concolic testing, PLDI 05/FSE 05 – Engler et al. Coverity/Bugs as deviants, SOSP 01 – Ernst et al. Daikon/Dynamic invariant detection, ICSE 99 – Zeller. Delta debugging, FSE 99 • Overreaching contributions conveyed as insights http://www.sigsoft.org/awards/ImpactAward.htm http://www.sigsoft.org/awards/mostInfPapAwd.htm http://academic.research.microsoft.com/CSDirectory/Paper_category_4.htm
  • 5. Factors Affecting Choosing a Problem/Project • What factors affect you (not) to choose a problem/project? – Besides your supervisor/mentor asks you (not) to choose it http://www.weizmann.ac.il/mcb/UriAlon/nurturing/HowToChooseGoodProblem.pdf
  • 6. Factors Affecting Choosing a Problem/Project • Impact/significant: Is the problem/solution important? Are there any significant challenges? • Industrial impact, research impact, … • DON’T work on a problem imagined by you but not being a real problem • E.g., determined based on your own experience, observation of practice, feedback from others (e.g., colleagues, industrial collaborators) • Novelty: is the problem novel? is the solution novel? – If a well explored or crowded space, watch out (how much space/depth? how many people in that space?)
  • 7. Factors Affecting Choosing a Problem/Project II • Risk: how likely the research could fail? – reduced with significant feasibility studies and risk management in the research development process – E.g., manual “mining” of bugs • Cost: how high effort investment would be needed? – Sometimes being able to be reduced with using tools and infrastructures available to us – Need to consider evaluation cost (solutions to some problem may be difficult to evaluate) – But don’t shut down a direction simply due to cost
  • 8. Factors Affecting Choosing a Problem/Project III • Better than existing approaches (in important ways) besides new: engineering vs. science • Competitive advantage – “secret weapon” – Why you/your group is the best one to pursue it? – Ex. a specific tool/infrastructure, access to specific data, collaborators, an insight,… – Need to know your own strengths/weaknesses • Underlying assumptions and principles - how do you (systematically) choose what to pursue? – core values that drive your research agenda in some broad way This slide was made based on discussion with David Notkin
  • 9. Example Principles – Problem Space • Question core assumptions or conventional wisdoms about SE • Play around industrial tools to address their limitation • Collaborate with industrial collaborators to decide on problems of relevance to practice • Investigate SE mining requirement and adapt or develop mining algorithms to address them (e.g., Suresh Thummalapenta [ICSE 09, ASE 09]) D. Notkin: Software, Software Engineering and Software Engineering Research: Some Unconventional Thoughts. J. Comput. Sci. Technol. 24(2): 189-197 (2009) D. Notkin’s ICSM 2006 keynote talk.
  • 10. Example Principles – Solution Space • Integration of static and dynamic analysis • Using dynamic analysis to realize tasks originally realized by static analysis – Or the other way around • Using compilers to realize tasks originally realized by architectures – Or the other way around • …
  • 11. Factors Affecting Choosing a Problem/Project IV • Intellectual curiosity • Other benefits (including option value) – Emerging trends or space – Funding opportunities, e.g., security – Infrastructure used by later research – … • What you are interested in, enjoy, passionate, and believe in • AND a personal taste • Tradeoff among different factors
  • 12. Dijkstra’s Three Golden Rules for Successful Scientific Research 1. “Internal”: Raise your quality standards as high as you can live with, avoid wasting your time on routine problems, and always try to work as closely as possible at the boundary of your abilities. Do this, because it is the only way of discovering how that boundary should be moved forward. 2. “External”: We all like our work to be socially relevant and scientifically sound. If we can find a topic satisfying both desires, we are lucky; if the two targets are in conflict with each other, let the requirement of scientific soundness prevail. http://www.cs.utexas.edu/~EWD/ewd06xx/EWD637.PDF
  • 13. Dijkstra’s Three Golden Rules for Successful Scientific Research cont. 3. “Internal/ External”: Never tackle a problem of which you can be pretty sure that (now or in the near future) it will be tackled by others who are, in relation to that problem, at least as competent and well- equipped as you. http://www.cs.utexas.edu/~EWD/ewd06xx/EWD637.PDF
  • 14. Jim Gray’s Five Key Properties for a Long-Range Research Goal • Understandable: simple to state. • Challenging: not obvious how to do it. • Useful: clear benefit. • Testable: progress and solution is testable. • Incremental: can be broken in to smaller steps – So that you can see intermediate progress http://arxiv.org/ftp/cs/papers/9911/9911005.pdf http://research.microsoft.com/pubs/68743/gray_turing_fcrc.pdf
  • 15. Tony Hoare’s Criteria for a Grand Challenge • Fundamental • Astonishing • Testable • Inspiring • Understandable • Useful • Historical http://vimeo.com/39256698 http://www.cs.yale.edu/homes/dachuan/Grand/HoareCC.pdf The Verifying Compiler: A Grand Challenge for Computing Research by Hoare, CACM 2003
  • 16. Tony Hoare’s Criteria for a Grand Challenge cont. • International • Revolutionary • Research-directed • Challenging • Feasible • Incremental • Co-operative http://vimeo.com/39256698 http://www.cs.yale.edu/homes/dachuan/Grand/HoareCC.pdf The Verifying Compiler: A Grand Challenge for Computing Research by Hoare, CACM 2003
  • 17. Tony Hoare’s Criteria for a Grand Challenge cont. • Competitive • Effective • Risk-managed http://vimeo.com/39256698 http://www.cs.yale.edu/homes/dachuan/Grand/HoareCC.pdf The Verifying Compiler: A Grand Challenge for Computing Research by Hoare, CACM 2003
  • 18. Heilmeier's Catechism Anyone proposing a research project or product development effort should be able to answer • What are you trying to do? Articulate your objectives using absolutely no jargon. • How is it done today, and what are the limits of current practice? • What's new in your approach and why do you think it will be successful? • Who cares? • If you're successful, what difference will it make? • What are the risks and the payoffs? • How much will it cost? • How long will it take? • What are the midterm and final "exams" to check for success? http://www9.georgetown.edu/faculty/yyt/bolts&nuts/TheHeilmeierCatechism.pdf
  • 19. Ways of Coming Up a Problem/Project • Know and investigate literatures and the area • Investigate assumptions, limitations, generality, practicality, validation of existing work • Address issues in your own development experiences or from other developers’ • Explore what is “hot” (pros and cons) • See where your “hammers” could hit or be extended • Ask “why not” on your own work or others’ work • Understand existing patterns of thinking – http://people.engr.ncsu.edu/txie/adviceonresearch.html • Think more and hard, and interact with others – Brainstorming sessions, reading groups • … Some points were extracted from Barbara Ryder’s slides of the same talk title
  • 20. Example Techniques on Producing Research Ideas • Research Matrix (Charles Ling and Qiang Yang) • Shallow/Deep Paper Categorization (Tao Xie) • Paper Recommendation (Tao Xie) – Students recommend/describe a paper (not read by the advisor before) to the advisor and start brainstorming from there • Research Generalization (Tao Xie) – “balloon”/ “donut” technique
  • 21. Technique: Research Matrix © Charles Ling and Qiang Yang See Book Chapter 4.3: Crafting Your Research Future: A Guide to Successful Master's and Ph.D. Degrees in Science & Engineering by Charles Ling and Qiang Yang http://www.amazon.com/Crafting-Your-Research-Future-Engineering/dp/1608458105
  • 22. Technique: Shallow Paper Categorization © Tao Xie • See Tao Xie’s research group’s shallow paper category: – https://sites.google.com/site/asergrp/bibli • Categorize papers on the research topic being focused • Both the resulting category and the process of collecting and categorizing papers are valuable
  • 23. Technique: Deep Paper Categorization © Tao Xie • Adopted by Tao Xie’s research group • Categorize papers on the research topic being focused (in a deep way) • Draw a table (rows: papers; columns: characterization dimensions of papers) • Compare and find gaps/correlations across papers Example Table on Symbolic Analysis:
  • 24. Technique: “Balloon”/“Donut” © Tao Xie• Adopted by Tao Xie’s research group • Balloon: the process is like blowing air into a balloon • Donut: the final outcome is like a donut shape (with the actual realized problem/tool as the inner circle and the applicable generalized problem/solution boundary addressed by the approach as the outer circle) • Process: do the following for the problem/solution space separately – Step 1. Describe what the exact concrete problem/solution that your tool addresses/implements (assuming it is X) – Step 2. Ask questions like “Why X? But not an expanded scope of X?” – Step 3. Expand/generalize the description by answering the questions (sometimes you need to shrink if overgeneralize) – Goto Step 1
  • 25. Example Application of “Balloon”/“Donut” © Tao Xie • Final Product: Xusheng Xiao, Tao Xie, Nikolai Tillmann, and Jonathan de Halleux. Precise Identification of Problems for Structural Test Generation. ICSE 2011 http://people.engr.ncsu.edu/txie/publications/icse11-covana.pdf • Problem Space – Step 1. (Inner circle) Address too many false-warning issues reported by Pex – Step 2. Why Pex? But not dynamic symbolic execution (DSE)? – Step 3. Hmmm… the ideas would work for the same problem faced by DSE too – Step 1. Address too many false-warning issues reported by DSE – Step 2. Why DSE? But not symbolic execution? – Step 3. Hmmm.. the ideas would work for the same problem faced by symbolic execution too – …. – Outer circle: Address too many false-warning issues reported by test- generation tools that focus on structural coverage and analyze code for test generation (some techniques work for random test generation too)
  • 26. Example Application of “Balloon”/“Donut” © Tao Xie • Final Product: Xusheng Xiao, Tao Xie, Nikolai Tillmann, and Jonathan de Halleux. Precise Identification of Problems for Structural Test Generation. ICSE 2011 http://people.engr.ncsu.edu/txie/publications/icse11-covana.pdf • Solution Space – Step 1. (Inner circle) Realize issue pruning based on symbolic analysis implemented with Pex – Step 2. Why Pex? But not dynamic symbolic execution (DSE)? – Step 3. Hmmm… the ideas can be realized with general DSE – Step 1. Realize issue pruning based on symbolic analysis implemented with DSE – Step 2. Why DSE? But not symbolic execution? – Step 3. Hmmm … the ideas can be realized with general symbolic execution – …. – Outer circle: Realize issue pruning based on dynamic data dependence (which can be realized with many different techniques!), potentially the approach can use static data dependence but with tradeoffs between dynamic and static
  • 27. Industrial Collaboration/Research • Benefits – Problems – Infrastructures – Evaluation testbeds • Caveats – Practical utilities != research (at least not always) – Short term vs. long term – Product groups  researchers
  • 28. Big Picture and Open Mind • Don’t narrow-mindedly and “stubbornly” stick to your initial solution and defend it (sometimes with weak justification) • Step back and ask questions (to challenge) – Ex. Why static analysis in contrast to dynamic analysis? [Thummalapenta et al. FSE 09] – Ex. Why frequent partial order miner in contrast to frequent automaton miner [Acharya et al. FSE 07] • Your initial solution faced challenges and difficulties  Good news?! – Opportunities for adding new techniques
  • 29. Example: Alternative Pattern Mining • (Imbalanced) alternative patterns and new mining algorithm for them were initially proposed • Question 1: Are these types of alternative patterns the only types of patterns in dealing with alternative ways of using APIs? • Question 2: Why couldn’t existing partial order miners or finite automaton learners to mine alternative patterns (they do infer alternative ways of using APIs)? • These questions led to finer classification of alternative patterns: balanced and imbalanced Alattin [Thummalapenta&Xie ASE 09]
  • 30. Broader View on Solution Space • AVOID “a tendency to be too focused on implementing a particular approach to a problem and not interested enough in exploring a broader range of approaches and understanding why some of them work well and not so well.” • Need to hold a broader view during research/career development, and ask questions like – Is the current solution the only possible solution? – What are other possible solutions? – Can the current solution beat other possible solutions in all aspects? – Can the current solution be further improved with ideas from other possible solutions? ....
  • 31. Continuation in Research Agenda • Maintain a theme and continuation (go deep) – Ex. Focus on the same problem with (significant) improvement of your previous solution – Ex. Focus on a new problem with (significant) adaptation of your previous solution – Deep (significant) paper over shallow (insignificant) paper(s) • Better to tell/reflect a coherent story (principle); set up identity to be in X area • Pros – Reduce risk (with more certainty) – Reduce cost (reusing infrastructure/experience) • Cons – Increase risk (what if a dead end?) – Reduce novelty (tend to be incremental; watch out/avoid LPU)
  • 32. Example Research Agenda on Mining SE Data (for Tao’s ASE group) 2005- • My PhD research was on dynamic analysis (e.g., testing w/ spec inference [ASE 03] and bug avoidance w/ machine learning [ICSE 05]) • Interested in going from Dynamic to Static – Often not scalable with dynamic analysis • Interested in applying data mining – Based on competitive advantage and research density, decide to mine code bases • Learned about Koders.com during end of 2005 – Thought: code search engine is so scalable but search results not good enough for SE tasks, why not Searching + Mining? – Discussed with Jian Pei (data mining) MAPO [MSR 06]
  • 33. Example Research Agenda – Cont. • Then students drive the work and shape the research agenda…. Mithun Acharya Suresh Thummalapenta Xiaoyin Wang Hao Zhong … … https://sites.google.com/site/asergrp/
  • 34. Example Research Agenda – Cont. • Static tracing C infrastructure (Mithun Acharya) – API property generation [ASE 06S] – Mining interface details [ISSRE 06] – Mining partial orders [ESEC/FSE 07] – Mining error-handling defects [FASE 09] • Static searching+tracing Java infrastructure incl partial code analysis (Suresh Thummalapenta) – PARSEWeb: Mining method sequences [ASE 07] – SpotWeb: Mining hotspots/coldspots [ASE 08] – CAR-Miner: Mining sequence association rules (exception-handling defects) [ICSE 09] – Alattin: Mining alternative patterns (neglected conditions) [ASE 09]
  • 35. Example Research Agenda – Cont. • Software reliability remains a focused task for mining • Recently shift our competitive advantage/principle, e.g., Suresh Thummalapenta’s work – Searching+mining/adopting advanced miners [FSE 07]  new patterns/mining algorithms [ICSE 09, ASE 09] – Static defect detection  test generation (partly due to new collaboration with MSR Pex) [FSE 09] • Expand mining with our Chinese collaborators – API mining: Hao Zhong, Lu Zhang, et al. • MAPO - mining API sequences [ECOOP 09] • MAM – mining API mapping [ICSE 10] – Text mining: Xiaoyin Wang, Hao Zhong, Lu Zhang et al. • Mining bug reports+ execution traces [ICSE 08] • Mining API docs for properties [ASE 09, Best Paper]
  • 36. Big Picture and Vision • Step back and think about what research problems will be most important and most influential/significant to solve in the long term – Long term could be the whole career • People tend not to think about important/long term problems Richard Hamming “you and your research” http://www.cs.virginia.edu/~robins/YouAndYourResearch.html Ivan Sutherland “technology and courage” http://labs.oracle.com/techrep/Perspectives/smli_ps-1.pdf Less important More important Shorter term Longer term This slide was made based on discussion with David Notkin
  • 37. Research Space Talk: The Pipeline from Computing Research to Surprising Inventions by Peter Lee http://www.youtube.com/watch?v=_kpjw9Is14Q http://blogs.technet.com/b/inside_microsoft_research/archive/2011/12/31/microsoft-research- redmond-year-in-review.aspx a blog post by Peter Lee ©Peter Lee
  • 38. Big Picture and Vision –cont. • If you are given 1 (4) million dollars to lead a team of 5 (10) team members for 5 (10) years, what would you invest them on?
  • 39. More Reading • http://www.weizmann.ac.il/mcb/UriAlon/nurturing/How ToChooseGoodProblem.pdf • http://www.cs.rutgers.edu/~ryder/DoingResNSEFS505 .pdf • https://sites.google.com/site/asergrp/advice – http://people.engr.ncsu.edu/txie/publications/writepapers.pdf – http://people.engr.ncsu.edu/txie/advice/researchskills.pdf – http://people.engr.ncsu.edu/txie/advice/gradstudentsurvival.p df – http://people.engr.ncsu.edu/txie/adviceonresearch.html • http://calnewport.com/blog/2008/11/07/does-being- exceptional-require-an-exceptional-amount-of-work/
  • 40. More Reading • https://sites.google.com/site/slesesymposium/slese 12.pdf by Zhendong Su • http://avandeursen.wordpress.com/2013/07/10/rese arch-paper-writing-recommendations/ by Arie van Deursen • Book: Crafting Your Research Future: A Guide to Successful Master's and Ph.D. Degrees in Science & Engineering by Charles Ling and Qiang Yang – http://www.amazon.com/Crafting-Your-Research-Future- Engineering/dp/1608458105

Notes de l'éditeur

  1. Note that infrastructure indeed may be difficult to be published. Discuss the funding review guideline for NSF CRI (Computing Research Infrastructure) You could clearly state the insight that your paper conveys explaining why the approach would work, like rationale but beyond and more generalized than rationale shall be over-reaching and can inspire readers to apply the insights to another different problem You could state your insight in intro like "Our insight is ...." can be immediately before or after the introduction of our new approach; you can also optionally additionally state the insight in the conclusion and/or abstract
  2. In terms of evaluation, mention the example idea of using queuing network to model workflow of software development. Counterexample: a student shuts out a direction due to cost or difficult to do evaluation In creative thinking, don’t think about these other constraints
  3. Infrastructure used by later research, e.g. PARSEWeb work Don’t stay away all the time from important, high-impact problems that may have high cost or be difficult to evaluate