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A Data Model to Support End-User Software Engineering

A Data Model to Support End-User Software Engineering. Christopher Scaffidi Carnegie Mellon University. Questions for the panel. Some areas where I would appreciate suggestions: What aspects of this work would be of most interest to the ICSE community (in future research papers)?

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A Data Model to Support End-User Software Engineering

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  1. A Data Model to Support End-User Software Engineering Christopher Scaffidi Carnegie Mellon University

  2. Questions for the panel Some areas where I would appreciate suggestions: • What aspects of this work would be of most interest to the ICSE community (in future research papers)? • For any potential problems that you see in the work, what solutions can you suggest?

  3. Target audience • In 2012, we project that there will be 90 millioncomputer end users (“EUs”) in American workplaces. • Of these, at least half will create spreadsheets, databases, and/or web applications. These are called end-user programmers (“EUPs”). [5] • Both EUs and EUPs will benefit from the proposed research, though the proposed research is primarily aimed at EUPs (including EUs who become EUPs because of the research). introduction ●prototype ● proposed work ● evaluation

  4. Contextual inquiry:What are the problems of EUs and EUPs? Observed 3 administrative assistants, 4 managers, and 3 webmasters/graphic designers (1-3 hrs, each) [3][9] introduction ●prototype ● proposed work ● evaluation

  5. How can EUPs validate web formsif they do not know JavaScript? Is the input valid? “EDSH 225” Is the input nearly valid? “EDXH 225” Does it just need reformatting? “Smith 225” Or is it obviously badly invalid? “Robotics Institute” introduction ●prototype ● proposed work ● evaluation

  6. Other tasks, other data, other problems • When building a staff roster by merging data sources into a single spreadsheet, one of the EUs: • Had to manually transform data to consistent format(e.g.: Put person names in Lastname, Firstname format) • Had to scrutinize data to identify questionable values that deserved double-checking(e.g.: A first name with 15 characters might be right) • Had to manually check for (near-) duplicates(e.g.: “Scaffidi, Christopher” and “Scaffidi, Chris”) • We and research collaborators identified many additional data validation and data reuse tasks that were poorly supported by existing tools. [3][7][9] introduction ●prototype ● proposed work ● evaluation

  7. Underlying problem: abstraction mismatch • Tools support strings, integers, floats, sometimes dates. • Problem domain involves higher-level categories of data: • University names “Carnegie Mellon”, “CMU” • Person names “Scaffidi, Christopher”, “Chris Scaffidi” • CMU phone numbers “8-1234”, “x8-1234” • CMU room numbers “WeH 4623”, “Wean 4623” • These data categories are: • Human-readable • Short (~ 1 input field) • Multi-format • Sometimes ambiguous / fuzzy (non-binary scale of validity) • Often particular to certain groups of people introduction ●prototype ● proposed work ● evaluation

  8. A New Direction: Create a new abstraction for each category of data • Like software “libraries,” implementations of these abstractions could be reused in many programs. • Abstractions would need to include functionality for: • Recognizing instances of the category (for automating data validation) • Transforming instances among various formats (for automating data reformatting) • Testing instances for equality (for automating removal of duplicates) introduction ●prototype ● proposed work ● evaluation

  9. A New Direction: Other requirements for abstractions • EUPs over a range of programming expertise must be able to create custom new abstractions. • Flexibility: • Abstractions must capture fuzziness when recognizing instances of the category and when testing equivalence. • EUPs must have the option of configuring abstractions to learn exceptional cases. • Sharability: • EUPs must still be able to share and find useful abstractions even as the number of abstractions grows. introduction ●prototype ● proposed work ● evaluation

  10. Thesis The proposed data model and development environment will enable end-user programmers to implement and share custom abstractions for flexibly recognizing, transforming and equivalence-testing values in categories of short, human-readable data. The model and environment will help end-user programmers to more quickly and correctly validate and reuse data than is possible through currently practiced methods. introduction ●prototype ● proposed work ● evaluation

  11. Topes • Tope = an abstraction implementation for a data category • Greek word for “place,” because each corresponds to a data category with a natural place in the problem domain • Topes in practice: • EUPs create new topes by using the basic tope editor (or by writing topes in another language, such as JavaScript) • EUPs publish topes on repositories. • Other EUs & EUPs download topes to their local cache. • Tool plug-ins let EUs & EUPs browse their local cache and associate topes with variables and input fields. • Plug-ins get topes from local cache and use them to recognize, transform, and equivalence-test data. introduction ●prototype ● proposed work ● evaluation

  12. Related Work: Existing approaches do not meet the requirements. • Regexps / grammars / data detectors recognize data but do not specify how to transform data • Types: • A value is or is not a valid instance of a type (non-fuzzy) • If invalid at compilation, values cannot become valid at runtime • Typed languagesare probably difficult for EUPs who are uncomfortable with untyped scripting languages. • Research on units (e.g.: Slate) and constraint systems (e.g.: Cues) typically only apply to numeric data in certain applications (e.g.: spreadsheets). • And none of these has built-in support for helping users decide which abstractions to trust, so sharing is impeded. introduction ● prototype ● proposed work ● evaluation

  13. Outline • Introduction • Related work • Prototype • Proposed work • Evaluation How could flexible formats be expressed? introduction ● prototype● proposed work ● evaluation

  14. Sample task: web form validationThe painful old way • Drag widgets and validator onto page, select a regexp, customize if desired. introduction ● prototype● proposed work ● evaluation

  15. Sample task: web form validationResults of the painful old way • Invalid inputs cause a hard-coded message to appear. Oops, forgot to enter a message at design-time. • For valid inputs, no error message appears. Hm, didn’t realize the area code was optional. What if I want to allow campus phone numbers? introduction ● prototype● proposed work ● evaluation

  16. Sample task: web form validationThe wonderful new way • Drag widgets and validator onto page, select a format, customize if desired. introduction ● prototype● proposed work ● evaluation

  17. Sample task: web form validationCreating this format took 55 seconds introduction ● prototype● proposed work ● evaluation

  18. Sample task: web form validationResults of the new way • Invalid inputs cause a targeted message to appear. • Inputs that violate an always or never constraint cannot be submitted to the server. • Inputs that violate an oftenconstraint cause a warning, which the application user can override. introduction ● prototype● proposed work ● evaluation

  19. Prototype implementationSystem block diagram Microsoft Excel Plug-in Microsoft Visual Studio.NET Web application Plug-in Validator Spreadsheet Format editor Parser introduction ● prototype● proposed work ● evaluation

  20. Expressiveness evaluation • Four administrative assistants’ use of a web browser was logged for three weeks, resulting in nearly 6000 sample data values that they typed into web forms. • Not logged verbatim: characters were generalized • Eg: Cscaffid0@gmail.com  Aa{7}0@a{5}.a{3} • We manually grouped values into 19 semantic families (eg: email address) based on widget’s HTML name and words visually nearby to the widgets • Created and tested formats for 14 families (4250 values) • Omitted: username/passwords and long blocks of “text” • Inference & testing features were not used during format creation introduction ● prototype● proposed work ● evaluation

  21. Expressiveness evaluation results • 9 families needed 1 format each; 5 needed 2 formats each • The only error attributable to editor expressiveness: • 1 of the 4250test values had a trailing period on a street type (in an address line) • This particular version of the editor had no way to say that a part could contain a period but only at the end • After support for multiple formats is added, then the editor as a whole will be evaluated for usability. [6] introduction ● prototype● proposed work ● evaluation

  22. Outline • Introduction • Related work • Prototype • Proposed work • Evaluation Generalizing the prototype: A lightweight data model + A development environment to help EUPs create, share and use topes introduction ● prototype ● proposed work ● evaluation

  23. Proposed data model • 1 tope implementation contains executable functions: • 1 isa:string[0,1] function per format, for recognizing instances of the format • 0 or 1 eqc:string x string[0,1] function per format, for testing equivalence of two values in a format(default is a binary test for being exactly identical) • 0 or more trf:stringstring function linking formats, for transforming values form one format to another • A lightweight data model… • Only contains 3 kinds of functions (isa/eqc/trf) • These correspond to the operations that people had to keep performing manually in our studies. introduction ● prototype ● proposed work ● evaluation

  24. Example topeNotional representation • An example tope for CMU room numbers • 3 isa functions, up to 3 eqc functions, 4 trf functions • A tope’s eqc and trf functions can be omitted if desired Formal building name& room number Elliot Dunlap Smith Hall 225 Building abbreviation& room number EDSH 225 Colloquial building name& room number Smith 225 introduction ● prototype ● proposed work ● evaluation

  25. Proposed development environmentFunctional decomposition diagram Development Environment Repository Software Plug-Ins Basic Topes Editor Publishing Tools Search Tools EUPs implement topes in basic topes editor (or JavaScript), then publish in repositories. Other EUs and EUPs search for topes, download them, then use them through plug-ins. introduction ● prototype ● proposed work ● evaluation

  26. Proposed development environmentEnhanced basic topes editor Development Environment Repository Software Plug-Ins Basic Topes Editor Publishing Tools Search Tools introduction ● prototype ● proposed work ● evaluation

  27. Proposed workEnhancing the basic topes editor • Extend isa support • Improve error message generation • Add trf support • EUPs will specify a series of steps: • Select a part, select an operator • Operators: permutation, lookup, arithmetic, capitalization • Add (regression) testing features to facilitate consistency • Add eqc support • For each part, EUPs will specify a comparison operator, returning value in [0,1], and these will be multiplied. • Operators: exactly identical, case-insensitive comparison, ~arithmetic distance, ~edit distance introduction ● prototype ● proposed work ● evaluation

  28. Proposed development environmentPublishing tools Development Environment Repository Software Plug-Ins Basic Topes Editor Publishing Tools Search Tools introduction ● prototype ● proposed work ● evaluation

  29. Proposed WorkPublishing topes in repositories • Clients will have a list of “known” repository servers • Generally pre-configured to include a global server at CMU • Organizations will configure clients to include the organizational server • EUs and EUPs will be able to add new servers to their list • To support publishing/searching, the repository will house meta-information about topes, including… • a human-visible non-unique name & description • an internally-used globally unique id (guid) based on the tope’s URL in the repository introduction ● prototype ● proposed work ● evaluation

  30. Proposed development environmentSearch tools Development Environment Repository Software Plug-Ins Basic Topes Editor Publishing Tools Search Tools Normalization introduction ● prototype ● proposed work ● evaluation

  31. Proposed workSearching for relevant topes • Search by keyword: • Search tope name and description • And match based on words that are visually near to topes • Search by groups of people: • Within an organization, or by author’s email domain • Within spaces that are “group-private” • Search by groups of topes: • “If you liked this tope, you may also like XYZ” • Similar to Amazon.com’s product recommendations • Search by example: • “Find me a tope that recognizes 412-555-1212” • For efficiency, filter based on “signature” (\d{3}-\d{3}-\d{4}) introduction ● prototype ● proposed work ● evaluation

  32. Proposed workSearching for trustworthy topes introduction ● prototype ● proposed work ● evaluation

  33. Proposed development environmentEnhanced plug-ins Development Environment Repository Software Plug-Ins Basic Topes Editor Publishing Tools Search Tools introduction ● prototype ● proposed work ● evaluation

  34. Proposed workEnhancing plug-ins • Target tools • Microsoft Excel • Microsoft Visual Studio.NET • Robofox • Operations supported • Assertions run isa on selected cells • Transformation run trf on selected cells • De-duplication run eqc on selected cells, cluster the cells • Each will support basic editor topes & JavaScript topes introduction ● prototype ● proposed work ● evaluation

  35. Proposed workRecognizing exceptions in plug-ins • Tope creators might overlook values. • From the standpoint of a tope format, these “normal” values are exceptional cases that need to be tolerated. • Simple approach: Record a whitelist of exceptions • More sophisticated: For each format, record exceptions, infer a format (new isa function), and average this function’s score with the raw function’s score • Exceptional values can be incorporated into the tope in the local cache and/or, at EUP’s discretion, propagated to the repository of the tope’s master copy introduction ● prototype ● proposed work ● evaluation

  36. Outline • Introduction • Related work • Prototype • Proposed work • Evaluation Examples Experiments Field testing introduction ● prototype ● proposed work ● evaluation

  37. Evaluation Expressiveness – Identify test tasks based on previous studies; create topes for data involved in those tasks Creation of topes by EUPs – Controlled experiment in which students & staff create topes Usefulness for tasks – Controlled experiment in which students & staff use topes to perform the test tasks Flexibility of topes – Test the topes created by participants on test data drawn from EUSES spreadsheet corpus Sharability of topes – Field testing in which several dozen students & staff will install and use the environment introduction●prototype ● proposed work ● evaluation

  38. Referenced papers Conference papers [1] C. Scaffidi. Unsupervised Inference of Data Formats in Human-Readable Notation. Proceedings of 9th International Conference on Enterprise Integration Systems (ICEIS'07), 2007, to appear. [2] C. Scaffidi, K. Bierhoff, E. Chang, M. Felker, H. Ng, C. Jin. Red Opal: Product-Feature Scoring from Reviews. Proceedings of 8th ACM Conference on Electronic Commerce (ACMEC'07), 2007, to appear [3] C. Scaffidi, A. Cypher, S. Elbaum, A. Koesnandar, and B. Myers. Scenario-Based Requirements for Web Macro Tools. Submitted for publication, 2007. [4] C. Scaffidi, A. Ko, B. Myers, M. Shaw. Dimensions Characterizing Programming Feature Usage by Information Workers. VL/HCC'06: Proceedings of the 2006 IEEE Symposium on Visual Languages and Human-Centric Computing, pp. 59-62, 2006. [5] C. Scaffidi, M. Shaw, and B. Myers. Estimating the Numbers of End Users and End User Programmers. VL/HCC'05: Proceedings of the 2005 IEEE Symposium on Visual Languages and Human-Centric Computing, pp. 207-214, 2005. Other papers [6] C. Scaffidi, B. Myers, M. Shaw. The Topes Format Editor and Parser, Technical Report CMU-ISRI-07-104, School of Computer Science, Carnegie Mellon University, Pittsburgh, PA, May 2007. [7] C. Scaffidi, B. Myers, and M. Shaw. Trial By Water: Creating Hurricane Katrina "Person Locator" Web Sites. In Leadership at a Distance: Research in Technologically-Supported Work (S. Weisband, ed), Lawrence Erlbaum, pp. 209-222, 2007. [8] C. Scaffidi, M. Shaw. Toward a Calculus of Confidence. First International Workshop on the Economics of Software and Computation, co-located with ICSE'07, 2007, to appear. [9] C. Scaffidi, M. Shaw, B. Myers. Games Programs Play: Obstacles to Data Reuse, 2nd Workshop on End User Software Engineering (WEUSE), 2006. introduction ● prototype ● proposed work ● evaluation

  39. Thank You… • …to the symposium committee/panel for the opportunity to present • …to many people for helpful suggestions • …to NSF and EUSES for funding (ITR-0325273 and CCF-0438929) introduction ● prototype ● proposed work ● evaluation

  40. Questions for the panel Some areas where I would appreciate suggestions: • What aspects of this work would be of most interest to the ICSE community (in future research papers)? • For any potential problems that you see in the work, what solutions can you suggest? introduction ● prototype ● proposed work ● evaluation

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  42. Survey of EUPs:Better data-manipulation features needed • Asked 831 information workers about use of 23 features in 5 tools (eg: creating spreadsheet macros, database stored procedures, and web forms) [4][9] • The most widely used features were related to manipulating linked structures of data (eg: database tables) rather than imperative or macro programming • Yet respondents complained about these features: • “Not always easy to move sturctured [sic] data or text” • “Not always integrated a lot of data manipulation redundant” • “Information entered inconsistently into database fields by different people leaves a lot of database cleaning” introduction ● prototype ● proposed work ● evaluation

  43. Interviews of web site creators:Confirmation of specific problems • Interviewed 6 people involved in creating “person locator” web sites after Hurricane Katrina [7][9] • Many omitted data validation on web forms • Hard to detect that “12 Years old” is an invalid street address (what would the regexp look like?) • “Aggregator” sites were built to scrape and consolidate data from numerous person locator sites. • Hard to transform data into a single consistent format • Hard to identify probable duplicates in the merged data set introduction ● prototype ● proposed work ● evaluation

  44. Sample task: validating person namesCustomizing constraints in our prototype • User can add/edit constraints introduction ● prototype● proposed work ● evaluation

  45. Benefits of the format editor • Exotic regexp notation is replaced with sentence-like screen prompts. • Soft constraints (“often”) are supported. • Negation constraints (“never”) are supported. • In terms of expressiveness, Augmented context-free grammars > context-free grammars > regexps But is the expressiveness adequate for common data? introduction ● prototype● proposed work ● evaluation

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