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Enhance the static analysis tools section with a discussion on when to use each of them. This was mainly taken from Dan Carpenter and Julia Lawall's comments on a previous documentation patch for static analysis tools. Lore: https://lore.kernel.org/linux-doc/20220329090911.GX3293@kadam/T/#mb97770c8e938095aadc3ee08f4ac7fe32ae386e6 Signed-off-by: Marcelo Schmitt <marcelo.schmitt1@gmail.com> Acked-by: David Gow <davidgow@google.com> Cc: Dan Carpenter <dan.carpenter@oracle.com> Cc: Julia Lawall <julia.lawall@inria.fr> Signed-off-by: Jonathan Corbet <corbet@lwn.net>
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181 lines
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.. SPDX-License-Identifier: GPL-2.0
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====================
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Kernel Testing Guide
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====================
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There are a number of different tools for testing the Linux kernel, so knowing
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when to use each of them can be a challenge. This document provides a rough
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overview of their differences, and how they fit together.
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Writing and Running Tests
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=========================
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The bulk of kernel tests are written using either the kselftest or KUnit
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frameworks. These both provide infrastructure to help make running tests and
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groups of tests easier, as well as providing helpers to aid in writing new
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tests.
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If you're looking to verify the behaviour of the Kernel — particularly specific
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parts of the kernel — then you'll want to use KUnit or kselftest.
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The Difference Between KUnit and kselftest
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------------------------------------------
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KUnit (Documentation/dev-tools/kunit/index.rst) is an entirely in-kernel system
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for "white box" testing: because test code is part of the kernel, it can access
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internal structures and functions which aren't exposed to userspace.
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KUnit tests therefore are best written against small, self-contained parts
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of the kernel, which can be tested in isolation. This aligns well with the
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concept of 'unit' testing.
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For example, a KUnit test might test an individual kernel function (or even a
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single codepath through a function, such as an error handling case), rather
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than a feature as a whole.
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This also makes KUnit tests very fast to build and run, allowing them to be
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run frequently as part of the development process.
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There is a KUnit test style guide which may give further pointers in
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Documentation/dev-tools/kunit/style.rst
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kselftest (Documentation/dev-tools/kselftest.rst), on the other hand, is
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largely implemented in userspace, and tests are normal userspace scripts or
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programs.
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This makes it easier to write more complicated tests, or tests which need to
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manipulate the overall system state more (e.g., spawning processes, etc.).
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However, it's not possible to call kernel functions directly from kselftest.
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This means that only kernel functionality which is exposed to userspace somehow
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(e.g. by a syscall, device, filesystem, etc.) can be tested with kselftest. To
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work around this, some tests include a companion kernel module which exposes
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more information or functionality. If a test runs mostly or entirely within the
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kernel, however, KUnit may be the more appropriate tool.
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kselftest is therefore suited well to tests of whole features, as these will
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expose an interface to userspace, which can be tested, but not implementation
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details. This aligns well with 'system' or 'end-to-end' testing.
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For example, all new system calls should be accompanied by kselftest tests.
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Code Coverage Tools
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===================
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The Linux Kernel supports two different code coverage measurement tools. These
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can be used to verify that a test is executing particular functions or lines
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of code. This is useful for determining how much of the kernel is being tested,
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and for finding corner-cases which are not covered by the appropriate test.
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Documentation/dev-tools/gcov.rst is GCC's coverage testing tool, which can be
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used with the kernel to get global or per-module coverage. Unlike KCOV, it
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does not record per-task coverage. Coverage data can be read from debugfs,
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and interpreted using the usual gcov tooling.
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Documentation/dev-tools/kcov.rst is a feature which can be built in to the
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kernel to allow capturing coverage on a per-task level. It's therefore useful
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for fuzzing and other situations where information about code executed during,
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for example, a single syscall is useful.
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Dynamic Analysis Tools
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======================
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The kernel also supports a number of dynamic analysis tools, which attempt to
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detect classes of issues when they occur in a running kernel. These typically
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each look for a different class of bugs, such as invalid memory accesses,
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concurrency issues such as data races, or other undefined behaviour like
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integer overflows.
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Some of these tools are listed below:
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* kmemleak detects possible memory leaks. See
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Documentation/dev-tools/kmemleak.rst
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* KASAN detects invalid memory accesses such as out-of-bounds and
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use-after-free errors. See Documentation/dev-tools/kasan.rst
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* UBSAN detects behaviour that is undefined by the C standard, like integer
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overflows. See Documentation/dev-tools/ubsan.rst
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* KCSAN detects data races. See Documentation/dev-tools/kcsan.rst
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* KFENCE is a low-overhead detector of memory issues, which is much faster than
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KASAN and can be used in production. See Documentation/dev-tools/kfence.rst
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* lockdep is a locking correctness validator. See
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Documentation/locking/lockdep-design.rst
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* There are several other pieces of debug instrumentation in the kernel, many
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of which can be found in lib/Kconfig.debug
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These tools tend to test the kernel as a whole, and do not "pass" like
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kselftest or KUnit tests. They can be combined with KUnit or kselftest by
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running tests on a kernel with these tools enabled: you can then be sure
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that none of these errors are occurring during the test.
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Some of these tools integrate with KUnit or kselftest and will
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automatically fail tests if an issue is detected.
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Static Analysis Tools
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=====================
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In addition to testing a running kernel, one can also analyze kernel source code
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directly (**at compile time**) using **static analysis** tools. The tools
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commonly used in the kernel allow one to inspect the whole source tree or just
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specific files within it. They make it easier to detect and fix problems during
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the development process.
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Sparse can help test the kernel by performing type-checking, lock checking,
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value range checking, in addition to reporting various errors and warnings while
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examining the code. See the Documentation/dev-tools/sparse.rst documentation
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page for details on how to use it.
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Smatch extends Sparse and provides additional checks for programming logic
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mistakes such as missing breaks in switch statements, unused return values on
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error checking, forgetting to set an error code in the return of an error path,
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etc. Smatch also has tests against more serious issues such as integer
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overflows, null pointer dereferences, and memory leaks. See the project page at
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http://smatch.sourceforge.net/.
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Coccinelle is another static analyzer at our disposal. Coccinelle is often used
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to aid refactoring and collateral evolution of source code, but it can also help
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to avoid certain bugs that occur in common code patterns. The types of tests
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available include API tests, tests for correct usage of kernel iterators, checks
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for the soundness of free operations, analysis of locking behavior, and further
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tests known to help keep consistent kernel usage. See the
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Documentation/dev-tools/coccinelle.rst documentation page for details.
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Beware, though, that static analysis tools suffer from **false positives**.
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Errors and warns need to be evaluated carefully before attempting to fix them.
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When to use Sparse and Smatch
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-----------------------------
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Sparse does type checking, such as verifying that annotated variables do not
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cause endianness bugs, detecting places that use ``__user`` pointers improperly,
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and analyzing the compatibility of symbol initializers.
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Smatch does flow analysis and, if allowed to build the function database, it
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also does cross function analysis. Smatch tries to answer questions like where
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is this buffer allocated? How big is it? Can this index be controlled by the
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user? Is this variable larger than that variable?
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It's generally easier to write checks in Smatch than it is to write checks in
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Sparse. Nevertheless, there are some overlaps between Sparse and Smatch checks.
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Strong points of Smatch and Coccinelle
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--------------------------------------
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Coccinelle is probably the easiest for writing checks. It works before the
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pre-processor so it's easier to check for bugs in macros using Coccinelle.
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Coccinelle also creates patches for you, which no other tool does.
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For example, with Coccinelle you can do a mass conversion from
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``kmalloc(x * size, GFP_KERNEL)`` to ``kmalloc_array(x, size, GFP_KERNEL)``, and
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that's really useful. If you just created a Smatch warning and try to push the
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work of converting on to the maintainers they would be annoyed. You'd have to
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argue about each warning if can really overflow or not.
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Coccinelle does no analysis of variable values, which is the strong point of
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Smatch. On the other hand, Coccinelle allows you to do simple things in a simple
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way.
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