FOSD origami

Feature Oriented Programming or Feature Oriented Software Development (FOSD) is a general paradigm for program synthesis in software product lines. Please read the Feature Oriented Programming page that explains how an FOSD model of a domain is a tuple of 0-ary functions (called values) and a set of 1-ary (unary) functions called features. This page discusses multidimensional generalizations of FOSD models, which are important for compact specifications of complex programs.

Origami

A fundamental generalization of metamodels is origami. The essential idea is that a program's design need not be represented by a single expression; multiple expressions can be used.[1][2][3] This involves the use of multiple orthogonal GenVoca models.

Example: Let T be a tool model, which has features P (parse), H (harvest),D (doclet), and J (translate to Java). P is a value and the rest are unary-functions. A tool T1 that parses a file written in a Java dialect language and translates it to pure Java is modeled by: T1 = J•P. And a javadoc-like tool T2 parses a file in a Java dialect, harvests comments, and translates harvested comments into an HTML page is: T2 = D•H•P. So tools T1 and T2 are among the products of the product line of T.
A language model L describes a family (product line) of Java dialects. It includes the features: B (Java 1.4), G (generics), S (State machines). B is a value, and the rest are unary functions. So a dialect of Java L1 that has generics (i.e., Java 1.5) is: L1 = G•B. And a dialect of Java L2 that has language support for state machines is: L2 = S•B. So dialects L1 and L2 are among the products of the product line of L.
To describe a javadoc like tool (E) for the dialect of Java with state machines requires two expressions: one that defines the tool functionality for E (using the T model) and its Java dialect (using the L model):
  E = D•H•P    -- tool equation
  E = S•B      -- language equation
Models L and T are orthogonal GenVoca models: one expresses the feature-based structure of the E tool, and the other the feature-based structure of its input language. Note that models T and L really are abstract in the following sense: the implementation of any feature of T really depends on the tool's dialect (expressed by L), and (symmetrically) the implementation of any feature of L really depends on the tool's functionality (expressed by T). So the only way one could implement E is by knowing both T and L equations.

Let U=[U1,U2,...,Un] be a GenVoca model of n features, and W=[W1,...Wm] be a GenVoca model of m features. The relationship between two orthogonal models U and W is a matrix UW, called an Origami matrix, where each row corresponds to a feature in U and each column corresponds to a feature in W. Entry UWij is a function that implements the combination of features Ui and Wj.

Note: UW is the tensor product of U and W (i.e., UW=U×W).
    
Example. Recall models T=[P,H,D,J] and L=[B,G,S]. The Origami matrix TL is:
    
where PB is a value that implements a parser for Java, PG is a unary-function that extends a Java parser to parse generics, and PS is a unary-function that extends a Java parser to parse state machine specifications. HB is a unary-function that implements a harvester of comments on Java code. HG is a unary-function that implements a harvester of comments on generic code, and HS is a unary-function that implements a harvester of comments on state machine specifications, and so on.

To see how multiple equations are used to synthesize a program, again consider models U and W. A program F is described by two equations, one per model. We can write an equation for F in two different ways: referencing features by name or by their index position, such as:

    
—U expression of F
    
    
—W expression of F

The UW model defines how models U and W are implemented. Synthesizing program F involves projecting UW of unneeded columns and rows, and aggregating (a.k.a. tensor contraction):

    

A fundamental property of origami matrices, called orthogonality, is that the order in which dimensions are contracted does not matter. In the above equation, summing across the U dimension (index i) first or the W dimension (index j) first does not matter. Of course, orthogonality is a property that must be verified. Efficient (linear) algorithms have been developed to verify that origami matrices (or tensors/n-dimensional arrays) are orthogonal.[4] The significance of orthogonality is one of view consistency. Aggregating (contracting) along a particular dimension offers a 'view' of a program. Different views should be consistent: if one repairs the program's code in one view (or proves properties about a program in one view), the correctness of those repairs or properties should hold in all views.

In general, a product of a product line may be represented by n expressions, from n orthogonal and abstract GenVoca models G1 ... Gn. The Origami matrix (or cube or tensor) is an n-dimensional array A:

     

A product H of this product line is formed by eliminating unnecessary rows, columns, etc. from A, and aggregating (contracting) the n-cube into a scalar:

    
Example. Recall program E and model T=[P,H,D,J]. E=D•H•P=T2•T1•T0. Similarly, E's representation in model L=[B,G,S] is E=S•B=L2•L0. Synthesizing E given Origami model TL is evaluating the following expression: .

Applications

There are several of product line applications developed using Origami. Among them include:

More applications to be supplied.

See also

References

  1. "Generating Product-Lines of Product-Families" (PDF).
  2. "Refinements and Multi-Dimensional Separation of Concerns" (PDF).
  3. "Evaluating Support for Features in Advanced Modularization Technologies" (PDF).
  4. "Design and Analysis of Multidimensional Program Structures" (PDF).
This article is issued from Wikipedia. The text is licensed under Creative Commons - Attribution - Sharealike. Additional terms may apply for the media files.