1 / 34

Control flow & Data flow Testing

Control flow & Data flow Testing. Control flow Testing (CFT) addresses the test case coverage of “execution” or “control”paths . Data flow Testing (DFT) addresses the test case coverage of “interactions among data items .”. Some Definitions for Control Flow Testing.

shalin
Télécharger la présentation

Control flow & Data flow Testing

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Control flow & Data flow Testing • Control flow Testing (CFT) addresses the test case coverage of “execution” or “control”paths. • Data flow Testing (DFT) addresses the test case coverage of “interactions among data items.”

  2. Some Definitions for Control Flow Testing • Control flow Testing requires the conversion of • requirement’s work flow and/or functional flow(black-box testing) or • design and/or code (white-box testing) to a “control flow graph” • The following definitions apply to a control flow graph: • Node: each node represents some unit of processing • Initial/Final nodes: Initial node is where the sequence of processing starts and final node is where the sequence of processing ends • Link: each link (line between nodes x and y) represents the relation between node x and node y. • Directed link: a link showing the direction of flow with an arrow (e.g. a directed link from node x to node y implies node y is processed after the node x processing.) • Out-links/In-links: a directed link that originates from a node is an out-link ; a directed link that ends up in a node is an in-link • Decision node: A node associated with multiple out-links (e.g. binary predicate); also called a “branching” node • Junction node: A node associated with multiple in-links • Process node: A node that is neither Decision nor Junction node

  3. Control Flow Graph Example entry G1 P1 p – process node d– decision node J– junction node d1 P2 P3 j1 d2 G2 Path : starts with the entry node, follows through a number of links and nodes, and ends up in an exit node; we are interested “logical” paths. Segment : a portion of a path Loop : A path or a segment contains a loop if some node or segment is revisited d3 P4 P5 P6 j2 j3 P7 exit

  4. Linearly Independent Path • A path through the system is Linearly Independent** from other paths only if it includes some segment or edge that is not covered in the other path. S1 - The statements are represented by the rectangular and diamond blocks. - The segments between the blocks are the eedges labeled with numbered circles. 1 2 C1 Path1 : S1 – C1 – S3 Path2 : S1 – C1 – S2 – S3 OR Path1: edges (1,4) Path2: edges (1,2,3) need to run both paths? 4 S2 3 S3 - Path1 and Path2 are linearly independent because each includes some edge that is not included in the other. (note: not necessarily nodes) - Later --- Cyclomatic # gives you the number of linearly independent paths

  5. Control Flow Testing (Path Testing) • The “Basic idea”behind Control Flow Testing is to “select paths” as test cases and come up with the inputs (input values) to execute through those paths. It includes the following 4 steps: • Build the Control Flow Diagram (CFD) • Select the paths in the (CFD) to cover for the testing • Pick or develop the input values for testing the chosen paths and • Execute the test • Analyze the test results

  6. (1) BuildControl Flow Diagram • Consider the problem of deciding how many “real” roots a quadratic equation of the form ax2 + bx + c =0 has: • b2 -4ac > 0 -> 2 roots • b2 -4ac = 0 -> one root 3. b2 -4ac < 0 -> imaginary root • Pseudo code may be: • Input (a, b, c); • d = b2 -4ac ; • If (d>0) then #root = 2 ; • else if (d =0) then #root =1; • else #root = 0; • output (#root); process steps 1 & 2 d>0 T F d=0 #root = 2 T F #root = 1 #root = 0 output (#root)

  7. (2) Selecting Paths in CFD for CFT • Most of the time we would be interested in some % of path coverage. • For 100 % path coverage, we need to consider for two CFG’s: • sequential concatenation of CFG1 and CFG2 with m and n paths respectively will yield a total of (m x n) paths • nesting CFG2 in CFG1 will yield (m + n-1) paths process 1 & 2 CFG1 d>0 F T CFG2 d=0 #root = 2 T F #root = 0 #root = 1 output (#root)

  8. (3)Picking input valuesin CFD for CFT • If we were only interested in the path that generated 2 roots , then we would need to input a, b, and c such that b2 - 4ac > 0 or the (d > 0) is truepath: • (a= 1; b=3; c =1) • For the path (d > 0) is false and (d = 0) is true path, b2 - 4ac = 0: • (a =1; b=2; c=1) • For the path (d > 0) is false and (d = 0) is false path, b2 - 4ac < 0: • (a=1, b=1, c=1) process 1 & 2 d>0 T F d=0 #root = 2 T F #root = 1 #root = 0 output (#root)

  9. (3) Picking input valuesin CFD for CFT (cont.) p1 • If we want to cover 100% paths, then we need to cover (m x n) pathsfor sequential concatenation. • In this case, it is 2 x 2 = 4 paths of (TT, TF, FT, and FF). • Suppose: c1 is (x> 0) and c2 is (x < 100)then: 1. X= 5 => c1 is T & c2 is T 2. X = -1 => c1 is F and c2 is T 3. X = 105 => c1 is T and c2 is F 4. But it is impossible to get c1 and c2 to be F and F because c1 is false => (x ≤ 0) & c2 is false => (x ≥100). (x ≤ 0) ∩ (x ≥100) = θ. (p5 is “extraneous” function?) c1 T F p2 p3 c2 T F p4 p5 p6

  10. # of Paths in CFT • Note that with (m x n) paths as the result of sequential concatenation of two graphs, g1 with m paths and g2 with n paths, there may be a lot of paths to test: e.g. (medium sized software program) concatenating: g1 with m = 8 paths (i.e. 8 “cases”) and g2 with n = 9 paths (i.e. 9 “cases”)will result in 72 potential paths. That is a lot of potential paths to test! • If we want to do a little less --- cover 75% of the paths ---- would that be ok? • Is there any way to do a little less and still feel “comfortable”?

  11. Statement Coverage Testing in Path Testing p1 • In Statement Testing we are interested in the coverage of statements. • Note that we can cover all the statements with only 2 paths out of a total of 4 paths: • Path1: p1-c1-p2-c2-p5-p6 • Path2: p1-c1-p3-c2-p4-p6 • In general, we can cover all statementswith less than or equal to the total number of paths. c1 T F p2 p3 c2 T F p4 p5 p6

  12. A Little “Less” Coverage with Statement Coverage • We are a “quality” conscious organization. While we can not test all the possible paths in our software, we cover 100% of the statements in our tests. Trust us! --- Every statement in our software is executed and tested before we release it!!

  13. Branch Coverage Testing in Path Testing p1 • In Branch Coverage Testing we are interested in the coverage of all the “branches” coming out of the decision control. • Again Notethat we can cover all the Branches with only 2 paths out of a total of 4 paths: • Path1: p1-c1-p2-c2-p5-p6 • Path2: p1-c1-p3-c2-p4-p6 • In general, we can cover all branches with less than or equal to the total number of paths. c1 T F p2 p3 c2 T F p4 p5 p6

  14. BothStatement Coverage & Branch Coverage • We are a “quality” conscious organization. While we can not test all the possible paths in our software, we cover 100% of the statementsand branches in our tests. Trust us! --- Every statement and branch in our software is executed and tested before we release it!!

  15. McCabe’s Cyclomatic Complexity # • Recall McCabe’s complexity number used to measure structural complexity --- • Given a structure with n binary decisions, the cyclomatic complexity number is (n + 1) • It turn out the “maximum” number of paths you need to cover (a)all the statements and/or (b)all branches in the software structure with n binary decisions is n+1, which is the cyclomatic complexity number.

  16. More on Linearly Independent Paths • In discussing dimensionality, we talks about orthogonal vectors (or “basis” of vector space) . • (e.g.) Two dimensional space has two orthogonal vector from which all the other vectors in two dimension can be obtained via “linearcombination” of these 2 vectors: • [1,0] • [0,1] e.g. [2,4] = 2[1,0] + 4[0,1] [2,4] [1,0] [0,1]

  17. More on Linearly Independent Paths • A set of paths is considered to be a Linearly Independent Set if every path may be constructed as a “linear combination” of paths from the linearly independent set. For example: We already know: a) there are a total of 22=4 logical paths. b) 1 path (path4) will cover all statements c) 2 paths will cover all branches. d) 2 branches +1 = 3linearly independent paths. C1 2 1 S1 1 2 3 4 5 6 3 We pick: path1, path2 and path3 as the Linearly Independent Set 1 path1 1 1 C2 5 path2 1 1 4 path3 1 1 1 S2 path4 1 1 1 1 6 path 4 = path3 + path1 – path2 = (0,1,1,1,0,0)+(1,0,0,0,1,1)- (1,0,0,1,0,0) = (1,1,1,1,1,1) - (1,0,0,1,0,0) = (0,1,1,0,1,1)

  18. Other Sets of Linearly Independent Paths 1 2 3 4 5 6 1 path1 1 1 path2 1 1 path3 1 1 1 path4 1 1 1 1 • Consider the set of linearly independent paths: 1, 2 & 4 instead. • Can we get Path3 = (0,1,1,1,0,0)? • Consider path3 = path2 + path4 – path1 • = (1,0,0,1,0,0,)+(0,1,1,0,1,1) – (1,0,0,0,1,1) = (0,1,1,1,0,0) • Consider another set of linearly independent paths: 2, 3 & 4 instead. • Can we get Path 1 = (1,0,0,0,1,1))? • Consider path1 = path2 + path4 – path3 • = (1,0,0,1,0,0,)+(0,1,1,0,1,1) – (0,1,1,1,0,0) = (1,0,0,0,1,1)

  19. More on Linearly Independent Paths We already know: a) there are a total of 22=4 logical paths. b) 1 path (path4) will cover all statements c) 2 paths will cover all branches. d) 2 branches +1 = 3 linearly independent paths. C1 2 1 1 2 3 4 5 6 S1 1 path1 1 1 3 path2 1 1 C2 5 path3 1 1 1 4 path4 1 1 1 1 S2 6 Note : Although path1 and path3 are linearly independent, they do NOT form a Linearly Independent Set because no linear combination of path1 and path3 can get , say, path4.

  20. How many “combinations” are there ? • For this example of: • 4 total paths • 3 linearly independent paths • How many combinations of linearly independent paths are there? • From combinatorics we know that if we want to pick 3 items at a time from 4 items, there are 4!/[3!*(4-3)!] = 4 combinatorics. • We tried 3 of the 4 potential linearly independent paths combinations. You try the fourth combination which is ---?

  21. An Algorithm to Find the “Basis” Set • Select a baseline path, an arbitrary, normal execution path that contains as many decisions as possible. • Retrace the baseline path and “flip” each of the decision encountered; each flip creates a new path. Continue until all the decisions are flipped • The basis set is composed of all the paths generated from steps 1 and 2 above Cyclomatic # = 2+ 1 = 3; So there are 3 linearly independent paths C1 2 1 S1 1. pick baseline path P1: C1 –S1- C2 – S2: <0,1,1,0,1,1> 2. flip C1 P2 : C1 – C2 – S2 : <1,0,0,0.1,1> 3. flip C2 P3: C1 - C2 : <1,0,0,1,0,0> 3 C2 5 4 Can we get the 4th path : C1 – S1 – C2 : <0,1,1,1,0,0> from the above basis set? How about : (P1 + P3) – P2 ? (P1 + P3) – P2 = (<0,1,1,0,1,1> + <1,0,0,1,0,0>) - <1,0,0,0,1,1> = <1,1,1,1,1,1> - <1,0,0,0,1,1> = <0,1,1,1,0,0> = P4 <------ the 4th path S2 6

  22. CFT Testing with “loop” Structure p1 • CFT testing with a loop structure has 2 main components: • A body of statements (P2) that is executed repeatedly • A control statement (c1) that determine whether if the body of statements should be executed and thus serve as entrance and exit criteria. c1 p3 p2

  23. Loop Structure Testing • For each loop, we would want to test the following 7 situations: • Bypass the loop (never enter the loop) • Enter the loop once • Enter the loop twice • Enter the loop some “typical” number • Enter the loop (max-1) times • Enter the loop (max) times • Enter the loop (max + 1) times <----- may not be able to do We can shrink the test cases to 5 if we skip cases 3 and 5 above.

  24. CFT Path Testing with Loops • Number of paths in CFT testing was a concern as the program logic increased. • (m x n) paths increased as either m and/or n increased in concatenation • (m + n -1) paths increased as either m and/or n increased in nesting • If we include the “loop” structure and count each execution through the loop as a path, then the number of paths can increase dramatically, especially with nested loops.

  25. Nested “loop” Structure Example p1 • For nested loop, for each iteration of the outer loop, we have some iterations of the inner loop: • Inner loop may have m iteration • Outer loop may have n iterations • Thus there may be as much as [ mx (n2 +n)/2] possible execution paths! • This is much larger than (m x n) or (m + n -1) as m and n increases. c1 p3 Outer loop p2 p 21 C21 Inner loop p 22

  26. “Extreme” Loop Structure Situation • For a nested loop structure, consider that the inner loop may have m iterations. The outer loop may have 0, ----, n iterations depending on the outer “control” statement. Thus we have : 0xm + 1xm------- + nxmpossible number of paths OR m x ∑ i = m x [(n2 + n )/2]possible paths i= n i=0 This is a HUGE number to deal with if the outer iterations, n, is large!

  27. More “reasonable” loop testing • Clearly we can not test nested loop structures thinking about all possible paths! • If we use the 7 possible test cases for a loop structure as a guideline, then 2 nested loops would need 7 x 7 = 49 test cases. • In general, this would still be big for multiple nested loops: 7n for (n) nested loops.

  28. 4. Analyze Test resultsin CFD for CFT (cont.) • Analysis of test results for CFT is basically a case of analyzing the satisfaction of test “coverage” of control paths. • As the previous cases show, 100% of “possible paths” coverage may not be attainable ---- nor reasonable • Otherwise, analysis is similar in all types of testing.

  29. Test Case Coverage • For us, test case coverage is a key issue in determining when to stop testing. We stop testing when our tests have covered all that wewant to cover. Ask: • Are there gapsand redundancies? • Have we covered all the relevant situations? We will use the Triangle Problem as an example to look at these questions

  30. Previous Sample Triangle Psuedo-code 1. Program Triangle 2. Dim a, b,c As Integer 3. Dim IsTriangle As Boolean 4. Output ( “enter a,b, and c integers”) 5. Input (a,b,c) 6. Output (“side 1 is”, a) 7. Output (“side 2 is”, b) 8. Output (”side 3 is”, c) 9. If (a<b+c) AND (b<a+c) And (c<b+a) 10. then Is_Triangle = True 11. else Is_Triangle = False 12. endif 13. If Is_Triangle 14. then if (a=b) AND (b=c) 15. then Output (“equilateral”) 16. else if (a NE b) AND (a NE b) AND (b NE c) 17. then Output ( “Scalene”) 18. else Output (“Isosceles”) 19. endif 20. endif 21. else Output (“not a triangle”) 22. endif 23. end Triangle2

  31. Condensation Graph from pseudo code Statements coverage - 4 paths Branch (DD-path) coverage - 4 paths Cyclomatic # = 4+1 = 5 - 5 lin. Ind paths All combinations - 8 paths first 1- 8 9 10 11 Is_Triangle= True Is_Triangle = False 12 Triangle ~Triangle 13 14 21 16 15 Not triangle equilateral 17 18 scalene isosceles 19 20 22 Last

  32. All Combination paths ? • Let’s look at the all 8 combination paths • P1: < 8,9,10,12,13,14,15,20,22> (Equilateral) • P2: <8,9,10,12,13,14,16,17,19,20,22> (Scalene) • P3: <8,9,10,12,13,14,16,18,19,20,22> (Isosceles) • P4: <8,9,10,12,13,21,22> (not possible) • P5: <8,9,11,12,13,14,15,20,22> (not possible) • P6: <8,9,11,12,13,14,16,17,19,20,22> (not possible) • P7: < 8,9,11,12,13,14,16,18,19,20,22> (not possible) • P8: <8,9,11,12,13,21,22> (Not a triangle) - So, there are 4 decision-decision (dd) paths (branch testing) that make sense. - These are P1, P2, P3, and P8. - We should at least test these four paths.

  33. Compare against Boundary Value Test(15 test cases for Triangle problem ) Remember the boundary: 1 ≤ TriangleSide ≤ 200 Test case a b c expected output paths 1 100 100 1 Isosceles P3 2 100 100 2 Isosceles P3 3 100 100 100 Equilateral P1 4 100 100 199 Isosceles P3 5 100 100 200 Not Triangle P8 6 100 1 100 Isosceles P3 7 100 2 100 Isosceles P3 8 100 100 100 Equilateral P1 9 100 199 100 Isosceles P3 10 100 200 100 Not Triangle P8 11 1 100 100 Isosceles P3 12 2 100 100 Isosceles P3 13 100 100 100 Equilateral P1 14 199 100 100 Isosceles P3 15 200 100 100 Not Triangle P8 Let’s analyze this table in more detail --- next chart

  34. Comparison Summary • Potential “Gap” exist in the Boundary ValueTest. When we look at the equivalence classes (or logic table) of the outputs, we see that Scalene triangle is not covered. • Path P2 is not covered with the 15 Boundary Value test cases! • There are, however, lots of “Duplications” • P3 is covered 9 times (Isosceles triangle) • P1 is covered 3 times (Equilateral) • P8 is covered 3 times (Not Triangle) Clearly, boundary value –functional testing is not enough here ; is it possible that it is also not as efficient in this case?

More Related