This document contains some useful information for debugging:
Please feel free to add any useful tips that one finds to this document for the benefit of all Swift developers.
Table of Contents
Often, the first step to debug a compiler problem is to re-run the compiler with a command line, which comes from a crash trace or a build log.
The script split-cmdline
in utils/dev-scripts
splits a command line into multiple lines. This is helpful to understand and edit long command lines.
The most important thing when debugging the compiler is to examine the IR. Here is how to dump the IR after the main phases of the Swift compiler (assuming you are compiling with optimizations enabled):
swiftc -dump-ast -O file.swift
swiftc -emit-silgen -O file.swift
swiftc -emit-sil -Onone file.swift
Well, this is not quite true, because the compiler is running some passes for -Onone after the mandatory passes, too. But for most purposes you will get what you want to see.
swiftc -emit-sil -O file.swift
swiftc -emit-ir -Xfrontend -disable-llvm-optzns -O file.swift
swiftc -emit-ir -O file.swift
swiftc -S -O file.swift
Compilation stops at the phase where you print the output. So if you want to print the SIL and the LLVM IR, you have to run the compiler twice. The output of all these dump options (except -dump-ast
) can be redirected with an additional -o <file>
option.
When changing the type checker and various SIL passes, one can cause a series of cascading diagnostics (errors/warnings) to be emitted. Since Swift does not by default assert when emitting such diagnostics, it becomes difficult to know where to stop in the debugger. Rather than trying to guess/check if one has an asserts swift compiler, one can use the following options to cause the diagnostic engine to assert on the first error/warning:
-Xllvm -swift-diagnostics-assert-on-error=1
-Xllvm -swift-diagnostics-assert-on-warning=1
These allow one to dump a stack trace of where the diagnostic is being emitted (if run without a debugger) or drop into the debugger if a debugger is attached.
Some diagnostics rely heavily on format string arguments, so it can be difficult to find their implementation by searching for parts of the emitted message in the codebase. To print the corresponding diagnostic name at the end of each emitted message, use the -Xfrontend -debug-diagnostic-names
argument.
To enable logging in the type checker, use the following argument: -Xfrontend -debug-constraints
. This will cause the typechecker to log its internal state as it solves constraints and present the final type checked solution, e.g.:
---Constraint solving for the expression at [test.swift:3:10 - line:3:10]--- ---Initial constraints for the given expression--- (integer_literal_expr type='$T0' location=test.swift:3:10 range=[test.swift:3:10 - line:3:10] value=0) Score: 0 0 0 0 0 0 0 0 0 0 0 0 0 Contextual Type: Int Type Variables: #0 = $T0 [inout allowed] Active Constraints: Inactive Constraints: $T0 literal conforms to ExpressibleByIntegerLiteral [[locator@0x7ffa3a865a00 [IntegerLiteral@test.swift:3:10]]]; $T0 conv Int [[locator@0x7ffa3a865a00 [IntegerLiteral@test.swift:3:10]]]; ($T0 literal=3 bindings=(subtypes of) (default from ExpressibleByIntegerLiteral) Int) Active bindings: $T0 := Int (trying $T0 := Int (found solution 0 0 0 0 0 0 0 0 0 0 0 0 0) ) ---Solution--- Fixed score: 0 0 0 0 0 0 0 0 0 0 0 0 0 Type variables: $T0 as Int Overload choices: Constraint restrictions: Disjunction choices: Conformances: At locator@0x7ffa3a865a00 [IntegerLiteral@test.swift:3:10] (normal_conformance type=Int protocol=ExpressibleByIntegerLiteral lazy (normal_conformance type=Int protocol=_ExpressibleByBuiltinIntegerLiteral lazy)) (found solution 0 0 0 0 0 0 0 0 0 0 0 0 0) ---Type-checked expression--- (call_expr implicit type='Int' location=test.swift:3:10 range=[test.swift:3:10 - line:3:10] arg_labels=_builtinIntegerLiteral: (constructor_ref_call_expr implicit type='(_MaxBuiltinIntegerType) -> Int' location=test.swift:3:10 range=[test.swift:3:10 - line:3:10] (declref_expr implicit type='(Int.Type) -> (_MaxBuiltinIntegerType) -> Int' location=test.swift:3:10 range=[test.swift:3:10 - line:3:10] decl=Swift.(file).Int.init(_builtinIntegerLiteral:) function_ref=single) (type_expr implicit type='Int.Type' location=test.swift:3:10 range=[test.swift:3:10 - line:3:10] typerepr='Int')) (tuple_expr implicit type='(_builtinIntegerLiteral: Int2048)' location=test.swift:3:10 range=[test.swift:3:10 - line:3:10] names=_builtinIntegerLiteral (integer_literal_expr type='Int2048' location=test.swift:3:10 range=[test.swift:3:10 - line:3:10] value=0)))
When using the integrated swift-repl, one can dump the same output for each expression as one evaluates the expression by enabling constraints debugging by typing :constraints debug on
:
$ swift -frontend -repl -enable-objc-interop -module-name REPL *** You are running Swift's integrated REPL, *** *** intended for compiler and stdlib *** *** development and testing purposes only. *** *** The full REPL is built as part of LLDB. *** *** Type ':help' for assistance. *** (swift) :constraints debug on
Often it is not sufficient to dump the SIL at the beginning or end of the optimization pipeline. The SILPassManager supports useful options to dump the SIL also between pass runs.
The SILPassManager's SIL dumping options vary along two orthogonal functional axes:
One generally always specifies an option of type 1 and optionally adds an option of type 2 to filter the output.
A short (non-exhaustive) list of type 1 options:
-Xllvm -sil-print-all
: Print functions/modules when ever a function pass modifies a function and Print the entire module (modulo filtering) if a module pass modifies a SILModule.A short (non-exhaustive) list of type 2 options:
-Xllvm -sil-print-around=$PASS_NAME
: Print a function/module before and after a function pass with name $PASS_NAME
runs on a function/module or dump a module before a module pass with name $PASS_NAME
runs on a module.
-Xllvm -sil-print-before=$PASS_NAME
: Print a function/module before a function pass with name $PASS_NAME
runs on a function/module or dump a module before a module pass with name $PASS_NAME
runs on a module. NOTE: This happens even without sil-print-all set!
-Xllvm -sil-print-after=$PASS_NAME
: Print a function/module after a function pass with name $PASS_NAME
runs on a function/module or dump a module before a module pass with name $PASS_NAME
runs on a module.
-Xllvm '-sil-print-only-function=SWIFT_MANGLED_NAME'
: When ever one would print a function/module, only print the given function.
These options together allow one to visualize how a SILFunction/SILModule is optimized by the optimizer as each optimization pass runs easily via formulations like:
swiftc -Xllvm '-sil-print-only-function=$myMainFunction' -Xllvm -sil-print-all
NOTE: This may emit a lot of text to stderr, so be sure to pipe the output to a file.
If one builds swift using ninja and wants to dump the SIL of the stdlib using some of the SIL dumping options from the previous section, one can use the following one-liner:
ninja -t commands | grep swiftc | grep Swift.o | grep " -c "
This should give one a single command line that one can use for Swift.o, perfect for applying the previous sections options to.
When debugging the Swift compiler with LLDB (or Xcode, of course), there is even a more powerful way to examine the data in the compiler, e.g. the SIL. Following LLVM‘s dump() convention, many SIL classes (as well as AST classes) provide a dump() function. You can call the dump function with LLDB’s expression --
or print
or p
command.
For example, to examine a SIL instruction:
(lldb) p Inst->dump() %12 = struct_extract %10 : $UnsafeMutablePointer<X>, #UnsafeMutablePointer._rawValue // user: %13
To dump a whole function at the beginning of a function pass:
(lldb) p getFunction()->dump()
SIL modules and even functions can get very large. Often it is more convenient to dump their contents into a file and open the file in a separate editor. This can be done with:
(lldb) p getFunction()->dump("myfunction.sil")
You can also dump the CFG (control flow graph) of a function:
(lldb) p Func->viewCFG()
This opens a preview window containing the CFG of the function. To continue debugging press -C on the LLDB prompt. Note that this only works in Xcode if the PATH variable in the scheme's environment setting contains the path to the dot tool.
swift/Basic/Debug.h includes macros to help contributors declare these methods with the proper attributes to ensure they'll be available in the debugger. In particular, if you see SWIFT_DEBUG_DUMP
in a class declaration, that class has a dump()
method you can call.
The compiler provides a way to debug and profile on SIL level. To enable SIL debugging add the front-end option -gsil together with -g. Example:
swiftc -g -Xfrontend -gsil -O test.swift -o a.out
This writes the SIL after optimizations into a file and generates debug info for it. In the debugger and profiler you can then see the SIL code instead of the Swift source code. For details see the SILDebugInfoGenerator pass.
To enable SIL debugging and profiling for the Swift standard library, use the build-script-impl option --build-sil-debugging-stdlib
.
ViewCFG (./utils/viewcfg
) is a script that parses a textual CFG (e.g. a llvm or sil function) and displays a .dot file of the CFG. Since the parsing is done using regular expressions (i.e. ignoring language semantics), ViewCFG can:
The script assumes that the relevant text is passed in via stdin and uses open to display the .dot file.
Additional, both emacs and vim integration is provided. For vim integration add the following commands to your .vimrc:
com! -nargs=? Funccfg silent ?{$?,/^}/w !viewcfg <args> com! -range -nargs=? Viewcfg silent <line1>,<line2>w !viewcfg <args>
This will add:
:Funccfg displays the CFG of the current SIL/LLVM function. :<range>Viewcfg displays the sub-CFG of the selected range.
For emacs users, we provide in sil-mode (./utils/sil-mode.el
) the function:
sil-mode-display-function-cfg
To use this feature, placed the point in the sil function that you want viewcfg to graph and then run sil-mode-display-function-cfg
. This will cause viewcfg to be invoked with the sil function body. Note, sil-mode-display-function-cfg
does not take any arguments.
NOTE viewcfg must be in the $PATH for viewcfg to work.
NOTE Since we use open, .dot files should be associated with the Graphviz app for viewcfg to work.
There is another useful script to view the CFG of a disassembled function: ./utils/dev-scripts/blockifyasm
. It splits a disassembled function up into basic blocks which can then be used with viewcfg:
(lldb) disassemble <copy-paste output to file.s> $ blockifyasm < file.s | viewcfg
LLDB has very powerful breakpoints, which can be utilized in many ways to debug the compiler and Swift executables. The examples in this section show the LLDB command lines. In Xcode you can set the breakpoint properties by clicking ‘Edit breakpoint’.
Let's start with a simple example: sometimes you see a function in the SIL output and you want to know where the function was created in the compiler. In this case you can set a conditional breakpoint in SILFunction constructor and check for the function name in the breakpoint condition:
(lldb) br set -c 'hasName("_TFC3nix1Xd")' -f SILFunction.cpp -l 91
Sometimes you may want to know which optimization inserts, removes or moves a certain instruction. To find out, set a breakpoint in ilist_traits<SILInstruction>::addNodeToList
or ilist_traits<SILInstruction>::removeNodeFromList
, which are defined in SILInstruction.cpp
. The following command sets a breakpoint which stops if a strong_retain
instruction is removed:
(lldb) br set -c 'I->getKind() == ValueKind::StrongRetainInst' -f SILInstruction.cpp -l 63
The condition can be made more precise e.g. by also testing in which function this happens:
(lldb) br set -c 'I->getKind() == ValueKind::StrongRetainInst && I->getFunction()->hasName("_TFC3nix1Xd")' -f SILInstruction.cpp -l 63
Let‘s assume the breakpoint hits somewhere in the middle of compiling a large file. This is the point where the problem appears. But often you want to break a little bit earlier, e.g. at the entrance of the optimization’s run
function.
To achieve this, set another breakpoint and add breakpoint commands:
(lldb) br set -n GlobalARCOpts::run Breakpoint 2 (lldb) br com add 2 > p int $n = $n + 1 > c > DONE
Run the program (this can take quite a bit longer than before). When the first breakpoint hits see what value $n has:
(lldb) p $n (int) $n = 5
Now remove the breakpoint commands from the second breakpoint (or create a new one) and set the ignore count to $n minus one:
(lldb) br delete 2 (lldb) br set -i 4 -n GlobalARCOpts::run
Run your program again and the breakpoint hits just before the first breakpoint.
Another method for accomplishing the same task is to set the ignore count of the breakpoint to a large number, i.e.:
(lldb) br set -i 9999999 -n GlobalARCOpts::run
Then whenever the debugger stops next time (due to hitting another breakpoint/crash/assert) you can list the current breakpoints:
(lldb) br list 1: name = 'GlobalARCOpts::run', locations = 1, resolved = 1, hit count = 85 Options: ignore: 1 enabled
which will then show you the number of times that each breakpoint was hit. In this case, we know that GlobalARCOpts::run
was hit 85 times. So, now we know to ignore swift_getGenericMetadata 84 times, i.e.:
(lldb) br set -i 84 -n GlobalARCOpts::run
A final trick is that one can use the -R option to stop at a relative assembly address in lldb. Specifically, lldb resolves the breakpoint normally and then just adds the argument -R to the address. So for instance, if I want to stop at the address at +38 in the function with the name ‘foo’, I would write:
(lldb) br set -R 38 -n foo
Then lldb would add 38 to the offset of foo and break there. This is really useful in contexts where one wants to set a breakpoint at an assembly address that is stable across multiple different invocations of lldb.
LLDB has powerful capabilities of scripting in Python among other languages. An often overlooked, but very useful technique is the -s command to lldb. This essentially acts as a pseudo-stdin of commands that lldb will read commands from. Each time lldb hits a stopping point (i.e. a breakpoint or a crash/assert), it will run the earliest command that has not been run yet. As an example of this consider the following script (which without any loss of generality will be called test.lldb):
env DYLD_INSERT_LIBRARIES=/usr/lib/libgmalloc.dylib break set -n swift_getGenericMetadata break mod 1 -i 83 process launch -- --stdlib-unittest-in-process --stdlib-unittest-filter "DefaultedForwardMutableCollection<OpaqueValue<Int>>.Type.subscript(_: Range)/Set/semantics" break set -l 224 c expr pattern->CreateFunction break set -a $0 c dis -f
TODO: Change this example to apply to the Swift compiler instead of to the stdlib unittests.
Then by running lldb test -s test.lldb
, lldb will:
Using LLDB scripts can enable one to use complex debugger workflows without needing to retype the various commands perfectly every time.
If you've ever found yourself repeatedly entering a complex sequence of commands within a debug session, consider using custom lldb commands. Custom commands are a handy way to automate debugging tasks.
For example, say we need a command that prints the contents of the register rax
and then steps to the next instruction. Here's how to define that command within a debug session:
(lldb) script Python Interactive Interpreter. To exit, type 'quit()', 'exit()' or Ctrl-D. >>> def custom_step(): ... print "rax =", lldb.frame.FindRegister("rax") ... lldb.thread.StepInstruction(True) ... >>> ^D
You can call this function using the script
command, or via an alias:
(lldb) script custom_step() rax = ... <debugger steps to the next instruction> (lldb) command alias cs script custom_step() (lldb) cs rax = ... <debugger steps to the next instruction>
Printing registers and single-stepping are by no means the only things you can do with custom commands. The LLDB Python API surfaces a lot of useful functionality, such as arbitrary expression evaluation.
There are some pre-defined custom commands which can be especially useful while debugging the swift compiler. These commands live in swift/utils/lldb/lldbToolBox.py
. There is a wrapper script available in SWIFT_BINARY_DIR/bin/lldb-with-tools
which launches lldb with those commands loaded.
A command named sequence
is included in lldbToolBox. sequence
runs multiple semicolon separated commands together as one command. This can be used to define custom commands using just other lldb commands. For example, custom_step()
function defined above could be defined as:
(lldb) command alias cs sequence p/x $rax; stepi
Similar to SIL, one can configure LLVM to dump the llvm-ir at various points in the pipeline. Here is a quick summary of the various options:
-Xllvm -print-before=$PASS_ID
: Print the LLVM IR before a specified LLVM pass runs.-Xllvm -print-before-all
: Print the LLVM IR before each pass runs.-Xllvm -print-after-all
: Print the LLVM IR after each pass runs.-Xllvm -filter-print-funcs=$FUNC_NAME_1,$FUNC_NAME_2,...,$FUNC_NAME_N
: When printing IR for functions for print-[before|after]-all options, Only print the IR for functions whose name is in this comma separated list.If a compiled executable is crashing when built with optimizations, but not crashing when built with -Onone, it's most likely one of the SIL optimizations which causes the miscompile.
Currently there is no tool to automatically identify the bad optimization, but it's quite easy to do this manually:
a. Add the compiler option -Xllvm -sil-opt-pass-count=<n>
, where <n>
is the number of optimizations to run.
b. Bisect: find n where the executable crashes, but does not crash with n-1. First just try n = 10, 100, 1000, 10000, etc. to find an upper bound). Then can either bisect the invocation by hand or place the invocation into a script and use ./llvm-project/llvm/utils/bisect
to automatically bisect based on the scripts error code. Example invocation:
bisect --start=0 --end=10000 ./invoke_swift_passing_N.sh "%(count)s"
c. Once one finds n
, Add another option -Xllvm -sil-print-pass-name
. The output can be large, so it's best to redirect stderr to a file (2> output
). In the output search for the last pass before stage Address Lowering
. It should be the Run #<n-1>
. This line tells you the name of the bad optimization pass and on which function it run.
a. Add the compiler options -Xllvm -sil-print-all -Xllvm -sil-print-only-function='<function>'
where <function>
is the function name (including the preceding $
). For example: -Xllvm -sil-print-all -Xllvm -sil-print-only-function='$s4test6testityS2iF'
. Again, the output can be large, so it‘s best to redirect stderr to a file. b. From the output, copy the SIL of the function before the bad run into a separate file and the SIL after the bad run into a file. c. Compare both SIL files and try to figure out what the optimization pass did wrong. To simplify the comparison, it’s sometimes helpful to replace all SIL values (e.g. %27
) with a constant string (e.g. %x
).
git-bisect
is a useful tool for finding where a regression was introduced. Sadly git-bisect
does not handle long lived branches and will in fact choose commits from upstream branches that may be missing important content from the downstream branch. As an example, consider a situation where one has the following straw man commit flow graph:
github/master -> github/tensorflow
In this case if one attempts to use git-bisect
on github/tensorflow, git-bisect
will sometimes choose commits from github/master resulting in one being unable to compile/test specific tensorflow code that has not been upstreamed yet. Even worse, what if we are trying to bisect in between two that were branched from github/tensorflow and have had subsequent commits cherry-picked on top. Without any loss of generality, lets call those two tags tag-tensorflow-bad
and tag-tensorflow-good
. Since both of these tags have had commits cherry-picked on top, they are technically not even on the github/tensorflow branch, but rather in a certain sense are a tag of a feature branch from master/tensorflow. So, git-bisect
doesn't even have a clear history to bisect on in multiple ways.
With those constraints in mind, we can bisect! We just need to be careful how we do it. Lets assume that we have a test script called test.sh
that indicates error by the error code. With that in hand, we need to compute the least common ancestor of the good/bad commits. This is traditionally called the “merge base” of the commits. We can compute this as so:
TAG_MERGE_BASE=$(git merge-base tags/tag-tensorflow-bad tags/tag-tensorflow-good)
Given that both tags were taken from the feature branch, the reader can prove to themselves that this commit is guaranteed to be on github/tensorflow
and not github/master
since all commits from github/master
are forwarded using git merges.
Then lets assume that we checked out $TAG_MERGE_BASE
and then ran test.sh
and did not hit any error. Ok, we can not bisect. Sadly, as mentioned above if we run git-bisect in between $TAG_MERGE_BASE
and tags/tag-tensorflow-bad
, git-bisect
will sometimes choose commits from github/master
which would cause test.sh
to fail if we are testing tensorflow specific code! To work around this problem, we need to start our bisect and then tell git-bisect
to ignore those commits by using the skip sub command:
git bisect start tags/tag-tensorflow-bad $TAG_MERGE_BASE for rev in $(git rev-list $TAG_MERGE_BASE..tags/tag-tensorflow-bad --merges --first-parent); do git rev-list $rev^2 --not $rev^ done | xargs git bisect skip
Once this has been done, one uses git-bisect
normally. One thing to be aware of is that git-bisect
will return a good/bad commits on the feature branch and if one of those commits is a merge from the upstream branch, one will need to analyze the range of commits from upstream for the bad commit afterwards. The commit range in the merge should be relatively small though compared with the large git history one just bisected.
There is functionality provided in ./swift/utils/bug_reducer/bug_reducer.py for reducing SIL test cases by:
For more information and a high level example, see: ./swift/utils/bug_reducer/README.md.
One can use the previous tips for debugging the Swift compiler with Swift executables as well. Here are some additional useful techniques that one can use in Swift executables.
One problem that often comes up when debugging Swift code in LLDB is that LLDB shows the demangled name instead of the mangled name. This can lead to mistakes where due to the length of the mangled names one will look at the wrong function. Using the following command, one can find the mangled name of the function in the current frame:
(lldb) image lookup -va $pc Address: CollectionType3[0x0000000100004db0] (CollectionType3.__TEXT.__text + 16000) Summary: CollectionType3`ext.CollectionType3.CollectionType3.MutableCollectionType2<A where A: CollectionType3.MutableCollectionType2>.(subscript.materializeForSet : (Swift.Range<A.Index>) -> Swift.MutableSlice<A>).(closure #1) Module: file = "/Volumes/Files/work/solon/build/build-swift/validation-test-macosx-x86_64/stdlib/Output/CollectionType.swift.gyb.tmp/CollectionType3", arch = "x86_64" Symbol: id = {0x0000008c}, range = [0x0000000100004db0-0x00000001000056f0), name="ext.CollectionType3.CollectionType3.MutableCollectionType2<A where A: CollectionType3.MutableCollectionType2>.(subscript.materializeForSet : (Swift.Range<A.Index>) -> Swift.MutableSlice<A>).(closure #1)", mangled="_TFFeRq_15CollectionType322MutableCollectionType2_S_S0_m9subscriptFGVs5Rangeqq_s16MutableIndexable5Index_GVs12MutableSliceq__U_FTBpRBBRQPS0_MS4__T_"
One can perform manual symbolication of a crash log or an executable using LLDB without running the actual executable. For a detailed guide on how to do this, see: https://lldb.llvm.org/symbolication.html.
The malloc_history
tool (macOS only) shows the history of malloc
and free
calls for a particular pointer. To enable malloc_history, you must run the target process with the environment variable MallocStackLogging=1. Then you can see the allocation history of any pointer:
malloc_history YourProcessName 0x12345678
By default, this will show a compact call stack representation for each event that puts everything on a single line. For a more readable but larger representation, pass -callTree.
This works even when you have the process paused in the debugger!
The leaks
tool (macOS only) can do more than just find leaks. You can use its pointer tracing engine to show you where a particular block is referenced:
leaks YourProcessName --trace=0x12345678
Like malloc_history, this works even when you're in the middle of debugging the process.
Sometimes you just want to know some basic info about the region of memory an address is in. The memory region
lldb command will print out basic info about the region containing a pointer, such as its permissions and whether it's stack, heap, or a loaded image.
lldb comes with a heap script that offers powerful tools to search for pointers:
(lldb) p (id)[NSApplication sharedApplication] (id) $0 = 0x00007fc50f904ba0 (lldb) script import lldb.macosx.heap "crashlog" and "save_crashlog" command installed, use the "--help" option for detailed help "malloc_info", "ptr_refs", "cstr_refs", "find_variable", and "objc_refs" commands have been installed, use the "--help" options on these commands for detailed help. (lldb) ptr_refs 0x00007fc50f904ba0 0x0000600003a49580: malloc( 48) -> 0x600003a49560 + 32 0x0000600003a6cfe0: malloc( 48) -> 0x600003a6cfc0 + 32 0x0000600001f80190: malloc( 112) -> 0x600001f80150 + 64 NSMenuItem55 bytes after NSMenuItem 0x0000600001f80270: malloc( 112) -> 0x600001f80230 + 64 NSMenuItem55 bytes after NSMenuItem 0x0000600001f80350: malloc( 112) -> 0x600001f80310 + 64 NSMenuItem55 bytes after NSMenuItem ...
lldb's x
command is cryptic but extremely useful for printing out memory contents. Example:
(lldb) x/5a `(Class)objc_getClass("NSString")` 0x7fff83f6d660: 0x00007fff83f709f0 (void *)0x00007fff8c6550f0: NSObject 0x7fff83f6d668: 0x00007fff8c655118 (void *)0x00007fff8c6550f0: NSObject 0x7fff83f6d670: 0x000060000089c500 -> 0x00007fff2d49c550 "_getCString:maxLength:encoding:" 0x7fff83f6d678: 0x000580100000000f 0x7fff83f6d680: 0x000060000348e784
Let's unpack the command a bit. The 5
says that we want to print five entries. a
means to print them as addresses, which gives you some automatic symbol lookups and pointer chasing as we see here. Finally, we give it the address. The backticks around the expression tells it to evaluate that expression and use the result as the address. Another example:
(lldb) x/10xb 0x000060000089c500 0x60000089c500: 0x50 0xc5 0x49 0x2d 0xff 0x7f 0x00 0x00 0x60000089c508: 0x77 0x63
Here, x
means to print the values as hex, and b
means to print byte by byte. The following specifiers are available:
Sometimes one needs to be able to while debugging actually debug LLDB and its interaction with Swift itself. Some examples of problems where this can come up are:
To gain further insight into these sorts of failures, we use LLDB log categories. LLDB log categories provide introspection by causing LLDB to dump verbose information relevant to the category into the log as it works. The two log channels that are useful for debugging Swift issues are the “types” and “expression” log channels.
For more details about any of the information below, please run:
(lldb) help log enable
The “types” log reports on LLDB's process of constructing SwiftASTContexts and errors that may occur. The two main tasks here are:
Constructing the SwiftASTContext for a specific single Swift module. This is used to implement frame local variable dumping via the lldb frame variable
command, as well as the Xcode locals view. On failure, local variables will not have types.
Building a SwiftASTContext in which to run Swift expressions using the “expression” command. Upon failure, one will see an error like: “Shared Swift state for has developed fatal errors and is being discarded.”
These errors can be debugged by turning on the types log:
(lldb) log enable -f /tmp/lldb-types-log.txt lldb types
That will write the types log to the file passed to the -f option.
NOTE Module loading can happen as a side-effect of other operations in lldb (e.g. the “file” command). To be sure that one has enabled logging before /any/ module loading has occurred, place the command into either:
~/.lldbinit $PWD/.lldbinit
This will ensure that the type import command is run before /any/ modules are imported.
The “expression” log reports on the process of wrapping, parsing, SILGen'ing, JITing, and inserting an expression into the current Swift module. Since this can only be triggered by the user manually evaluating expression, this can be turned on at any point before evaluating an expression. To enable expression logging, first run:
(lldb) log enable -f /tmp/lldb-expr-log.txt lldb expression
and then evaluate the expression. The expression log dumps, in order, the following non-exhaustive list of state:
NOTE LLDB runs a handful of preparatory expressions that it uses to set up for running Swift expressions. These can make the expression logs hard to read especially if one evaluates multiple expressions with the logging enabled. In such a situation, run all expressions before the bad expression, turn on the logging, and only then run the bad expression.
Note, you can also turn on more than one log at a time as well, e.x.:
(lldb) log enable -f /tmp/lldb-types-log.txt lldb types expression
clang-tidy
to run the Static AnalyzerRecent versions of LLVM package the tool clang-tidy
. This can be used in combination with a json compilation database to run static analyzer checks as well as cleanups/modernizations on a code-base. Swift's cmake invocation by default creates one of these json databases at the root path of the swift host build, for example on macOS:
$PATH_TO_BUILD/swift-macosx-x86_64/compile_commands.json
Using this file, one invokes clang-tidy
on a specific file in the codebase as follows:
clang-tidy -p=$PATH_TO_BUILD/swift-macosx-x86_64/compile_commands.json $FULL_PATH_TO_FILE
One can also use shell regex to visit multiple files in the same directory. Example:
clang-tidy -p=$PATH_TO_BUILD/swift-macosx-x86_64/compile_commands.json $FULL_PATH_TO_DIR/*.cpp