What are False Positives?
Globalyzer scans the source code to detect candidate issues based on rules. Given some code, a rule may detect a candidate issue. In one context, that candidate issue may need to be corrected when in another context, the same issue may not need any work and is a false positive.
Let's look at a couple of lines of Java code which creates a date string based on a hard coded date format using
SimpleDateFormat formatter = new SimpleDateFormat("MM/dd/yy"); String dateString = formatter.format(new Date());
Using the default Java rule set, this code will raise i18n issues. If the
dateString variable is user facing, this code is indeed an issue to be fixed (for more information, check your rule set help pages).
However, if the
dateString variable is used for internal purposes, such as in a support log file, it should not be modified and is a false positive.
This section describes different ways to handle false positives.
Since Rules are what detect or filter out issues, the most common way to handle particular programming styles is to modify the rule set applied to scan a project's code.
Let's look at a string detected by Globalyzer:
SpecialTB.write("New user created");
Globalyzer identifies the string
New user created as a candidate embedded string which should be moved out of the code and into a resource file. However, let's assume the developer knows that SpecialTB.write() is a method that writes some logging information into a database for potential debugging purposes. The Rule Set needs to be modified based on that knowledge so that this particular line and all other strings passed to this call will be filtered out, i.e. will not be detected as a candidate issue. In this instance, a String Method Filter would be created as shown below:
Note: for the Java Rule Set only, we support Class or Variable Types, so you can filter strings when passed as a parameter to a particular object/method.
Any Globalyzer scan using this updated rule set will henceforth filter out the embedded string issue. Workbench instances and the nightly builds for instance would now filter out the issue.
You can also create and try new rules from the Globalyzer Workbench, and push the new rules to the server. To do so, right mouse click on an issue and select the Add Rule Sets Filters/Detection ... to show the dialog box.
Please visit the False Positive Filtering page for a detailed guide on creating false-positive filtering rules.
Globalyzer Comment Tags
When you want to filter out a specific item in the code, one way is to add a Globalyzer comment on the offending line. This is for a specific item and only this one. If more code is written in the same way and Globalyzer should not detect the issue, a Rule Set modification may be better.
Let's look at a simple line of code where Globalyzer detects a candidate issue, here another embedded string:
String marker = "Marker 15";
By adding the
//$NON-NLS-L$ comment at the end of the line, Globalyzer will now ignore the issue:
String marker = "Marker 15"; //$NON-NLS-L$
Since the code is pushed to the source control system, the next time a Workbench user or a script gets the latest code, Globalyzer will ignore the issue.
The default list of Globalyzer Tags is:
$NON-NLS-L$: Ignores any issue on the line
$NON-NLS-[number]$: Ignores one particular issue on the line. For instance $NON-NLS-2$ ignores the second issue on the line
GLOBALYZER_TODO: Indicates something to be done in i18n. It overrides/detects the line and sets a TODO status to it.
GLOBALYZER_IGNORE_NEXT_LINE: Ignores any issue on the line after this comment
GLOBALYZER_START_IGNORE: Ignores a block of issues until the GLOBALYZER_END_IGNORE tag comment
GLOBALYZER_END_IGNORE: Stops ignoring a block of issues, working with GLOBALYZER_START_IGNORE
Globalyzer Workbench Prediction
Predictions are used to differentiate true issues from false positive ones.
When using the Globalyzer Workbench, you may want to change the prediction of some issues locally to your instance of the Workbench.
This will update the database tracking issues on your system; It does not affect what other users or system detect.
This helps organize the issues locally quickly, for instance when externalizing strings with the Workbench. You can mark the prediction of issues as
TRUE(T) if you
know the issue is a true positive,
FALSE(F) if you know the issue is a false positive, or
PENDING(P) if you are unsure but you want to indicate
that the issue needs further evaluation.
To change the prediction of an issue, select it, click the right mouse button, and click on the menu item. In the example below, the prediction of the issue will be 'F' locally.
Note: After marking predictions, you can export a Prediction Report with the markings (or you can export your entire Globalyzer project with the result data). Any user or system can then import the Prediction Report (or import the entire Globalyzer project) and it will set the result data prediction in the local database where the import happened.
The Dashboard shows the latest scan typically run on code in the repository. One can manage issues in the Dashboard. When logged in, a user can act on an issue: comment, assign, or set it to False Positive. The issue will not show up after the next update to the Dashboard.
That status is only in the Dashboard and does not affect issues found in the Workbench.
False positives stick around as the file changes. Below are screenshots of a false positive issue which has persisted for 2 years (as of March 2016). The lines surrounding and including this issue have changed since it was first reported.
The issue above was 2 years old as of March 2016. The line just below it was changed a year after it was first detected.
Additionally, the line itself was changed a few months later. The commit in question can be found here. See lines 268 - 270.
False Positives Synchronization between Workbench and Dashboard
False positive issues can be identified in the Globalyzer Workbench or on the Lingoport Dashboard. This section discusses how to synchronize one with the other.
In the Workbench, you designate an issue as a False Positive by marking its prediction
After marking issues
False, you then export a Prediction Report. This saves the markings to a file that other Workbenches can import
and that Lite can use when generating reports displayed on the Dashboard. The Dashboard knows to ignore issues with
those issues won't appear on the Dashboard.
So false positive information moving from the Workbench to the Dashboard is fairly seamless, and uses the Prediction Report. No special explicit connection between the
Workbench and Dashboard is necessary.
Going the other direction, from the Dashboard to the Workbench, does require an explicit connection between the Workbench and the Dashboard. On the Dashboard, you can set issues to False Positive and you can reopen issues that once were False Positive and make them active again. Reflecting these Dashboard changes back to the Workbench requires first setting up a connection between the Workbench and the Dashboard:
1.Connecting to Lingoport Dashboard
In the Workbench, click on the Window menu and choose Preferences from the dropdown menu. Select Globalyzer=>Lingoport Dashboard Settings.
Specify the Server URL. Then, there are two ways to login. The default setting is use a Username/Password. If you want to login with a token, check "Use token to login". Click the Apply button to apply your settings and the Globalyzer Workbench will try to establish a connection to the Lingoport Dashboard with your credentials.
2. Set Dashboard Project Key for Workbench project
Click on the Project menu and choose Manage Globalyzer Projects from the dropdown menu. Select the Globalyzer Project you want to synchronize, then modify the Project Key at Dashboard value. Please note that you should enter the Project Key here instead of the Project Name; you can find the Project Key on the Dashboard.
Once the connection is established, the Workbench can synchronize against the Dashboard by either selecting the Project menu or by right-clicking in Scan Results and then selecting Reload Dashboard False Positives.
This action will identify all the False Positives on the Dashboard and update your Scan Results accordingly. False Positive issues from the Dashboard will be
DFP prediction values in the Workbench.
Confirmation information is written to the Workbench Console.
Feedback to Lingoport
For issues you strongly believe are incorrectly detected in the default rule set, feel free to select those lines, press the right mouse button, and select "Report as False Positive". This will send an email with the lines of code and the issues that you feel should not be detected.
This will help Lingoport refine the default rule set for future releases.