The key measures of a test include coverage and quality.
Test coverage is the measurement of testing completeness, and it's based on the coverage of testing expressed by the
coverage of test requirements and test cases or by the coverage of executed code.
Quality is a measure of the reliability, stability, and performance of the target-of-test (system or
application-under-test). Quality is based on evaluating test results and analyzing change requests (defects) identified
during testing.
Coverage metrics provide answers to the question: "How complete is the testing?" The most commonly-used measures of
coverage are based on the coverage of software requirements and source code. Basically, test coverage is any measure of
completeness with respect to either a requirement (requirement-based), or the code's design and implementation criteria
(code-based), such as verifying use cases (requirement-based) or executing all lines of code (code-based).
Any systematic testing task is based on at least one test coverage strategy. The coverage strategy guides the design of
test cases by stating the general purpose of the testing. The statement of coverage strategy can be as simple as
verifying all performance.
A requirements-based coverage strategy might be sufficient for yielding a quantifiable measure of testing completeness
if the requirements are completely cataloged. For example, if all performance test requirements have been identified,
then the test results can be referenced to get measures; for example, 75% of the performance test requirements have
been verified.
If code-based coverage is applied, test strategies are formulated in terms of how much of the source code has been
executed by tests. This type of test coverage strategy is very important for safety-critical systems.
Both measures can be derived manually (using the equations given in the next two headings) or may be calculated using
test automation tools.
Requirements-based test coverage, measured several times during the test lifecycle, identifies the test coverage at a
milestone in the testing lifecycle, such as the planned, implemented, executed, and successful test coverage.
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Test coverage is calculated using the following equation:
Test Coverage = T(p,i,x,s) / RfT
Where:
T is the number of Tests (planned, implemented, executed, or successful), expressed as test procedures or test
cases.
RfT is the total number of Requirements for Test.
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In the Plan Test task, the test coverage is calculated to determine the planned test coverage in the following
manner:
Test Coverage (planned) = Tp / RfT
Where:
Tp is the number of planned Tests, expressed as test procedures or test cases.
RfT is the total number of Requirements for Test.
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In the Implement Test task, as test procedures are being implemented (as test scripts) test coverage is calculated
using the following equation:
Test Coverage (implemented) = Ti / RfT
here:
Ti is the number of Tests implemented, expressed by the number of test procedures or test
cases for which there are corresponding test scripts.
RfT is the total number of Requirements for Test.
Successful Test Coverage (executed) = Ts / RfT
Where:
Ts is the number of Tests executed, expressed as test procedures or test cases that
completed successfully, without defects.
RfT is the total number of Requirements for Test.
Turning the above ratios into percentages allows for the following statement of requirements-based test coverage:
x% of test cases (T(p,i,x,s) in the above equations) have been covered with a success rate of
y%
This meaningful statement of test coverage can be matched against a defined success criteria. If the criteria have not
been met, then the statement provides a basis for predicting how much testing effort remains.
Code-based test coverage measures how much code has been executed during the test, compared to how much code is left to
execute. Code coverage can be based on control flows (statement, branch, or paths) or data flows.
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In control-flow coverage, the aim is to test lines of code, branch conditions, paths through the code, or other
elements of the software's flow of control.
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In data-flow coverage, the aim is to test that data states remain valid through the operation of the software; for
example, that a data element is defined before it's used.
Code-based test coverage is calculated by the following equation:
Test Coverage = Ie / TIic
Where:
Ie is the number of items executed, expressed as code statements, code branches, code paths,
data state decision points, or data element names.
TIic is the total number of items in the code.
Turning this ratio into a percentage allows the following statement of code-based test coverage:
x% of test cases (I in the above equation) have been covered with a success rate of y%
This meaningful statement of test coverage can be matched against a defined success criteria. If the criteria have not
been met, then the statement provides a basis for predicting how much testing effort remains.
Although evaluating test coverage provides a measure of the extent of completeness of the testing effort, evaluating
defects discovered during testing provides the best indication of the software quality as it has been experienced. This
perception of quality can be used to reason about the general quality of the software system as a whole. Perceived
Software Quality is a measure of how well the software meets the requirements levied on it, therefore, in this context,
defects are considered as a type of change request in which the target-of-test failed to meet the software
requirements.
Defect evaluation could be based on methods that range from simple defect counts to rigorous statistical modeling.
Rigorous evaluation uses assumptions about the arrival or discovery rates of defects during the testing process. A
common model assumes that the rate follows a Poisson distribution. The actual data about defect rates are then fit to
the model. The resulting evaluation estimates the current software reliability and predicts how the reliability will
grow if testing and defect removal continue. This evaluation is described as software-reliability growth modeling and
it's an area of active study. Due to the lack of tool support for this type of evaluation, you want to carefully
balance the cost of using this approach with the benefits gained.
Defects analysis involves analyzing the distribution of defects over the values of one or more of the attributes
associated with a defect. Defect analysis provides an indication of the reliability of the software.
In defect analysis, four main defect attributes are commonly analyzed:
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Status - the current state of the defect (open, being fixed, closed, and so forth).
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Priority - the relative importance of this defect being addressed and resolved.
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Severity - the relative impact of this defect to the user, an organization, third parties, and so on.
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Source - where and what is the originating fault that results in this defect or what component will be fixed
to eliminate this defect.
Defect counts can be reported as a function of time, creating a Defect Trend diagram or report. They can also be
reported in a Defect Density Report as a function of one or more defect attributes, like severity or status. These
types of analysis provide a perspective on the trends or on the distribution of defects that reveal the software's
reliability.
For example, it's expected that defect discovery rates will eventually diminish as the testing and fixing progresses.
A defect or poor quality threshold can be established at which point the software quality will be unacceptable. Defect
counts can also be reported based on the origin in the Implementation model, allowing for detection of "weak modules",
"hot spots", and parts of the software that keep being fixed again and again, which indicates more fundamental design
flaws.
Only confirmed defects are included in an analysis of this kind. Not all reported defects denote an actual flaw; some
might be enhancement requests outside of the project's scope, or may describe a defect that's already been reported.
However, it's valuable to look at and analyze why many defects, which are either duplicates or not confirmed defects,
are being reported.
The Rational Unified Process recommends defect evaluation based on multiple reporting categories, as follows:
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Defect Distribution (Density) Reports allow defect counts to be shown as a function of one or two defect
attributes.
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Defect Age Reports are a special type of defect distribution report. Defect age reports show how long a defect has
been in a particular state, such as Open. In any age category, defects can also be sorted by another attribute,
such as Owner.
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Defect Trend Reports show defect counts, by status (new, open, or closed), as a function of time. The trend reports
can be cumulative or non-cumulative.
Many of these reports are valuable in assessing software quality. They are most useful when analyzed in conjunction
with Test results and progress reports that show the results of the tests conducted over a number of iterations and
test cycles for the application-under-test. The usual test criteria include a statement about the tolerable numbers of
open defects in particular categories, such as severity class, which is easily checked with an evaluation of defect
distribution. By sorting or grouping this distribution by test motivators, the evaluation can be focused on important
areas of concern.
Normally tool support is required to effectively produce reports of this kind.
Defect status versus priority
Give each defect a priority. It's usually practical and sufficient to have four levels of priority, such as:
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Urgent priority (resolve immediately)
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High priority
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Normal priority
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Low priority
Note: Criteria for a successful test could be expressed in terms of how the distribution of defects over these
priority levels should look. For example, successful test criteria might be "no Priority 1 defects and fewer than five
Priority 2 defects are open". A defect distribution diagram, such as the following, should be generated.
It's clear that the criteria has not been met. This diagram needs to include a filter to show only open defects, as
required by the test criteria.
Defect status versus severity
Defect Severity Reports show how many defects there are for each severity class; for example, fatal error, major
function not performed, minor annoyance.
Defect status versus location in the Implementation model
Defect Source Reports show distribution of defects on elements in the Implementation model.
Defect Age Analysis provides good feedback on the effectiveness of the testing and the defect removal tasks. For
example, if the majority of older, unresolved defects are in a pending-validation state, it probably means that not
enough resources are applied to the retesting effort.
Defect Trend Reports identify defect rates and provide a particularly good view of the state of the testing. Defect
trends follow a fairly predictable pattern in a testing cycle. Early in the cycle, the defect rates rise quickly, then
they reach a peak, and decrease at a slower rate over time.
To find problems, the project schedule can be reviewed in light of this trend. For example, if the defect rates are
still rising in the third week of a four-week test cycle, the project is clearly not on schedule.
This simple trend analysis assumes that defects are being fixed promptly and that the fixes are being tested in
subsequent builds, so that the rate of closing defects should follow the same profile as the rate of finding defects.
When this does not happen, it indicates a problem with the defect-resolution process; the defect fixing resources or
the resources to retest and validate fixes could be inadequate.
The trend reflected in this report shows that new defects are discovered and opened quickly at the beginning of the
project, and that they decrease over time. The trend for open defects is similar to that for new defects, but lags
slightly behind. The trend for closing defects increases over time as open defects are fixed and verified. These trends
depict a successful effort.
If your trends deviate dramatically from these, they may indicate a problem and identify when additional resources need
to be applied to specific areas of development or testing.
When combined with the measures of test coverage, the defect analysis provides a very good assessment on which to base
the test completion criteria.
Several measures are used for assessing the performance behaviors of the target-of-test and for focusing on capturing
data related to behaviors such as response time, timing profiles, execution flow, operational reliability, and limits.
Primarily, these measures are assessed in the Evaluate Test task, however, there are performance measures that are used
during the Execute Test task to evaluate test progress and status.
The primary performance measures include:
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Dynamic Monitoring - real-time capture and display of the status and state of each test script being
executed during the test execution.
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Response Time and Throughput Reports - measurement of the response times and throughput of the
target-of-test for specified actors and use cases.
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Percentile Reports - percentile measurement and calculation of the data collected values.
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Comparison Reports - differences or trends between two (or more) sets of data representing different test
executions.
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Trace Reports - details of the messages and conversations between the actor (test script) and the
target-of-test.
Dynamic monitoring provides real-time display and reporting during test execution, typically in the form of a histogram
or a graph. The report monitors or assesses performance test execution by displaying the current state, status, and
progress of the test scripts.
For example, in the preceding histogram, there are 80 test scripts executing the same use case. In this graph, 14 test
scripts are in the Idle state, 12 in the Query, 34 in SQL Execution, 4 in SQL Connect, and 16 in the Other state. As
the test progresses, you would expect to see the number of scripts in each state change. The displayed output would be
typical of a test execution that is executing normally and is in the middle of its execution. However, if test scripts
remain in one state or do not show changes during test execution, this could indicate a problem with the test
execution, or the need to implement or evaluate other performance measures.
Response Time and Throughput Reports, as their name implies, measure and calculate the performance behaviors related to
time and throughput (number of transactions processed). Typically, these reports are displayed as a graph with response
time (or number of transactions) on the "y" axis and events on the "x" axis.
It's often valuable to calculate and display statistical information, such as the mean and standard deviation of the
data values in addition to showing the actual performance behaviors.
Percentile Reports provide another statistical calculation of performance by displaying population percentile values
for data types collected.
It's important to compare the results of one performance test execution with that of another, so you can evaluate the
impact of changes made between test executions on the performance behaviors. Use Comparison Reports to display the
difference between two sets of data (each representing different test executions) or trends between many executions of
test.
When performance behaviors are unacceptable or when performance monitoring indicates possible bottlenecks (such as when
test scripts remain in a given state for exceedingly long periods), trace reporting could be the most valuable report.
Trace and Profile Reports display lower-level information. This information includes the messages between the actor and
the target-of-test, execution flow, data access, and the function and system calls.
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