Contributor’s Guide#
Pull-request guidelines#
Our code contribution guidelines closely follows the model of GitHub pull-requests. The rocBLAS repository follows a workflow which dictates a master branch where releases are cut, and a develop branch which serves as an integration branch for new code. Pull requests should:
target the develop branch for integration
ensure code builds successfully.
do not break existing test cases
new functionality will only be merged with new unit tests
new unit tests should integrate within the existing googletest framework.
tests must have good code coverage
code must also have benchmark tests, and performance must approach the compute bound limit or memory bound limit.
Coding Guidelines#
With the rocBLAS device memory allocation system, rocBLAS kernels should not call
hipMalloc()
orhipFree()
in their own code, but should use the device memory manager.hipMalloc()
andhipFree()
are synchronizing operations which should be avoided as much as possible.The device memory allocation system provides:
A
device_malloc
method for temporarily using device memory which has either been allocated before, or which is allocated on demand.A method to reuse device memory across rocBLAS calls, without allocating them and deallocating them at every call.
A method for users to query how much device memory is needed for a particular kernel call, in order for it to perform optimally.
A method for users to control how much device memory is allocated, or whether to leave it up to rocBLAS to allocate it on demand.
Extra pointers or size arguments for temporary storage should not be added to the end of public APIs, only private internal ones. Instead, implementations of the public APIs should request and obtain device memory using the rocBLAS device memory manager. rocBLAS kernels in the public API must also detect and respond to device memory size queries.
A kernel must allocate all of its device memory upfront, for use during the entirety of the kernel call. It must not allocate and deallocate device memory at different levels of kernel calls. This means that if a lower-level kernel needs device memory, it must be allocated by higher-level routines and passed down to the lower-level routines. When device memory can be shared between two or more operations, the maximum size needed by all them should be reported or allocated.
When allocating memory, it is recommended to use a variable name which implies that this is allocated workspace memory, such as
workspace
or using aw_
prefix.Details are in the Device Memory Allocation design document. Examples of how to use the device memory allocator are in TRSV and TRSM.
Logging, argument error checking and device memory allocation should only occur at the top-level kernel routines. Therefore, if one rocBLAS routine calls another, the lower-level called routine(s) should not perform logging, argument checking, or device memory allocation. This can be accomplished in one of two ways:
A. (Preferred.) Abstract out the computational part of the kernel into a separate template function (usually named
rocblas_<kernel>_template
, and call it from a higher-level template routine (usually namedrocblas_<kernel>_impl
) which does error-checking, device memory allocation, and logging, and which gets called by the C wrappers:template <...> rocblas_status rocblas_<kernel>_template(..., T* device_memory) { // Performs fast computation // No argument error checking // No logging // No device memory allocation -- any temporary device memory must be passed in through pointers // Can be called by other computational kernels // Called by rocblas_<kernel>_impl // Private internal API } template <...> rocblas_status rocblas_<kernel>_impl() { // Argument error checking // Logging // Responding to device memory size queries // Device memory allocation (through handle->device_malloc()) // Temporarily switching to host pointer mode if scalar constants are used // Calls rocblas_<kernel>_template() // Private internal API } extern "C" rocblas_status rocblas_[hsdcz]<kernel>() { // C wrapper // Calls rocblas_<kernel>_impl() // Public API }
B. Use a
bool
template argument to specify if the kernel template should perform full functionality or not. Pass device memory pointer(s) which will be used if full functionality is turned off:template <bool full_function, ...> rocblas_status rocblas_<kernel>_template(..., T* device_memory = nullptr) { if(full_function) { // Argument error checking // Logging // Responding to device memory size queries // Device memory allocation (memory pointer assumed already allocated otherwise)* // Temporarily switching to host pointer mode if scalar constants are used* return rocblas_<kernel>_template<false, ...>(...); } // Perform fast computation // Private internal API }
*Device memory allocation, and temporarily switching pointer mode, might be difficult to enclose in an
if
statement with the RAII design, so the code might have to use recursion to call the non-fully-functional version of itself after setting these things up. That’s why method A above is preferred, but for some huge functions like GEMM, method B might be more practical to implement, since it disrupts existing code less.The pointer mode should be temporarily switched to host mode during kernels which pass constants to other kernels, so that host-side constants of
-1.0
,0.0
and1.0
can be passed to kernels likeGEMM
, without causing synchronizing host<->device memory copies. For example:// Temporarily switch to host pointer mode, saving current pointer mode, restored on return auto saved_pointer_mode = handle->push_pointer_mode(rocblas_pointer_mode_host); // Get alpha T alpha_h; if(saved_pointer_mode == rocblas_pointer_mode_host) alpha_h = *alpha; else RETURN_IF_HIP_ERROR(hipMemcpy(&alpha_h, alpha, sizeof(T), hipMemcpyDeviceToHost));
saved_pointer_mode
can be read to get the old pointer mode. If the old pointer mode was host pointer mode, then the host pointer is dereferenced to get the value of alpha. If the old pointer mode was device pointer mode, then the value ofalpha
is copied from the device to the host.After the above code switches to host pointer mode, constant values can be passed to
GEMM
or other kernels by always assuming host mode:static constexpr T negative_one = -1; static constexpr T zero = 0; static constexpr T one = 1; rocblas_internal_gemm_template( handle, transA, transB, jb, n, jb, alpha, invA, BLOCK, B, ldb, &zero, X, m);
When
saved_pointer_mode
is destroyed, the handle’s pointer mode returns to the previous pointer mode.When tests are added to
rocblas-test
androcblas-bench
, refer to this guide.The test framework is templated, and uses SFINAE (substitution failure is not an error) pattern and
std::enable_if<...>
to enable and disable certain types for certain tests.YAML files are used to describe tests as combinations of arguments. rocblas_gentest.py is used to parse the YAML files and generate tests in the form of a binary file of Arguments records.
The
rocblas-test
androcblas-bench
type dispatch file is central to all tests. Basically, rather than duplicate:if(type == rocblas_datatype_f16_r) func1<rocblas_half>(args); else if(type == rocblas_datatype_f32_r) func<float>(args); else if(type == rocblas_datatype_f64_r) func<double>(args);
etc. everywhere, it’s done only in one place, and a
template
template argument is passed to specify which action is actually taken. It’s fairly abstract, but it is powerful. There are examples of using the type dispatch in clients/gtest/*_gtest.cpp and clients/benchmarks/client.cpp.Code should not be copied-and pasted, but rather, templates, macros, SFINAE (substitution failure is not an error) pattern and CRTP (curiously recurring template pattern), etc. should be used to factor out differences in similar code.
A code should be made more generalized, rather than copied and modified, unless it is a completely different kernel function, and the old code is just being used as a start.
If a new function is similar to an existing function, then the existing function should be generalized, or the new function and existing function should be refactored and based on a third templated function or class, rather than duplicating code.
To differentiate between scalars located on either the host or device memory, a special function has been created, called
load_scalar()
. If its argument is a pointer, it is dereferenced on the device. If the argument is a scalar, it is simply copied. This allows single HIP kernels to be written for both device and host memory:template <typename T, typename U> ROCBLAS_KERNEL void axpy_kernel(rocblas_int n, U alpha_device_host, const T* x, rocblas_int incx, T* y, rocblas_int incy) { auto alpha = load_scalar(alpha_device_host); ptrdiff_t tid = blockIdx.x * blockDim.x + threadIdx.x; // bound if(tid < n) y[tid * incy] += alpha * x[tid * incx]; }
Here,
alpha_device_host
can either be a pointer to device memory, or a numeric value passed directly to the kernel from the host. Theload_scalar()
function dereferences it if it’s a pointer to device memory, and simply returns its argument if it’s numerical. The kernel is called from the host in one of two ways depending on the pointer mode:if(handle->pointer_mode == rocblas_pointer_mode_device) hipLaunchKernelGGL(axpy_kernel, blocks, threads, 0, handle->get_stream(), n, alpha, x, incx, y, incy); else if(*alpha) // alpha is on host hipLaunchKernelGGL(axpy_kernel, blocks, threads, 0, handle->get_stream(), n, *alpha, x, incx, y, incy);
When the pointer mode indicates
alpha
is on the host, thealpha
pointer is dereferenced on the host and the numeric value it points to is passed to the kernel. When the pointer mode indicatesalpha
is on the device, thealpha
pointer is passed to the kernel and dereferenced by the kernel on the device. This allows a single kernel to handle both cases, eliminating duplicate code.If new arithmetic datatypes (like
rocblas_bfloat16
) are created, then unless they correspond exactly to a predefined system type, they should be wrapped into astruct
, and not simply be atypedef
to another type of the same size, so that their type is unique and can be differentiated from other types.Right now
rocblas_half
istypedef
ed touint16_t
, which unfortunately preventsrocblas_half
anduint16_t
from being differentiable. Ifrocblas_half
were simply astruct
with auint16_t
member, then it would be a distinct type.It is legal to convert a pointer to a standard-layout
class
/struct
to a pointer to its first element, and vice-versa, so the C API is unaffected by whether the type is enclosed in astruct
or not.RAII (resource acquisition is initialization) patterned classes should be used instead of explicit
new
/delete
,hipMalloc
/hipFree
,malloc
/free
, etc. RAII classes are automatically exception-safe because their destructor gets called during unwinding. They only have to be declared once to construct them, and they are automatically destroyed when they go out of scope. This is better than having to matchnew
/delete
malloc
/free
calls in the code, especially when exceptions or early returns are possible.Even if an operation does not allocate and free memory, if it represents a change in state which must be undone when a function returns, then it belongs in an RAII class. For example,
handle->push_pointer_mode()
creates an RAII object which saves the pointer mode on construction, and restores it on destruction.When writing function templates, place any non-type parameters before type parameters, i.e., leave the type parameters at the end. For example:
template <rocblas_int NB, typename T> // T is at end static rocblas_status rocblas_trtri_batched_template(rocblas_handle handle, rocblas_fill uplo, rocblas_diagonal diag, rocblas_int n, const T* A, rocblas_int lda, rocblas_int bsa, T* invA, rocblas_int ldinvA, rocblas_int bsinvA, rocblas_int batch_count, T* C_tmp) { if(!n || !batch_count) return rocblas_status_success; if(n <= NB) return rocblas_trtri_small_batched<NB>( // T is automatically deduced handle, uplo, diag, n, A, lda, bsa, invA, ldinvA, bsinvA, batch_count); else return rocblas_trtri_large_batched<NB>( // T is automatically deduced handle, uplo, diag, n, A, lda, bsa, invA, ldinvA, bsinvA, batch_count, C_tmp); }
The reason for this, is that the type template arguments can be automatically deduced from the actual function arguments, so that you don’t have to pass the types in calls to the function, as shown in the example above when calling
rocblas_trtri_small_batched
androcblas_trtri_large_batched
. They have atypename T
parameter too, but it can be automatically deduced, so it doesn’t need to be explicitly passed.When writing functions like the above which are heavily dependent on block sizes, especially if they are in header files included by other files, template parameters for block sizes are strongly preferred to
#define
macros orconstexpr
variables. For.cpp
files which are not included in other files, astatic constexpr
variable can be used. Macros should never be used for constants.Note: For constants inside of functions,
static constexpr
is preferred to justconstexpr
, so that the variables do not need to be initialized at runtime.Note: C++14 variable templates can sometimes be used to provide constants. For example:
template <typename T> static constexpr T negative_one = -1; template <typename T> static constexpr T zero = 0; template <typename T> static constexpr T one = 1;
static duration variables which aren’t constants should usually be made function-local
static
variables, rather than namespace or class static variables. This is to avoid the static initialization order fiasco. For example:static auto& get_table() { // Placed inside function to avoid dependency on initialization order static std::unordered_map<std::string, size_t>* table = test_cleanup::allocate(&table); return *table; }
This is sometimes called the singleton pattern. A
static
variable is made local to a function rather than a namespace or class, and it gets initialized the first time the function is called. A reference to thestatic
variable is returned from the function, and the function is used everywhere access to the variable is needed. In the case of multithreaded programs, the C++11 and later standards guarantee that there won’t be any race conditions. It is preferred to initialize function-localstatic
variables than it is to explicitly callstd::call_once
. For example:void my_func() { static int dummy = (func_to_call_once(), 0); }
This is much simpler and faster than explicitly calling
std::call_once
, since the compiler has special ways of optimizingstatic
initialization. The first timemy_func()
is called, it will callfunc_to_call_once()
once in a thread-safe way. After that, there is almost no overhead in later calls tomy_func()
.Functions are preferred to macros. Functions or functors inside of
class
/struct
templates can be used when partial template specializations are needed.When C preprocessor macros are needed (such as if they contain a
return
statement to return from the calling function), if the macro’s definition contains more than one simple expression, then it should be wrapped in ado { } while(0)
, without a terminating semicolon. This is to allow them to be used insideif
statements. For example:#define RETURN_ZERO_DEVICE_MEMORY_SIZE_IF_QUERIED(h) \ do \ { \ if((h)->is_device_memory_size_query()) \ return rocblas_status_size_unchanged; \ } while(0)
The
do { } while(0)
allows the macro expansion to be a single statement which can be terminated with a semicolon, and which can be used anywhere a regular function call can be used.For most template functions which are used in other compilation units, it is preferred that they be put in header files, rather than
.cpp
files, because putting them in.cpp
files requires explicit instantiation of them for all possible arguments, and there are less opportunities for inlining and interprocedural optimization.The C++ standard explicitly says that unused templates can be omitted from the output, so including unused templates in a header file does not increase the size of the program, since only the used ones are in the final output.
For template functions which are only used in one
.cpp
file, they can be placed in the.cpp
file.Templates, like inline functions, are granted an exception to the one definition rule (ODR) as long as the sequence of tokens in each compilation unit is identical.
Functions and namespace-scope variables which are not a part of the public interface of rocBLAS, should either be marked static, be placed in an unnamed namespace, or be placed in
namespace rocblas
. For example:namespace { // Private internal implementation } // namespace extern "C" { // Public C interfaces } // extern "C"
However, unnamed namespaces should not be used in header files. If it is absolutely necessary to mark a function or variable as private to a compilation unit but defined in a header file, it should be declared
static
,constexpr
and/orinline
(constexpr
impliesstatic
for non-template variables andinline
for functions).Even though rocBLAS goes into a shared library which exports a limited number of symbols, this is still a good idea, to decrease the chances of name collisions inside of rocBLAS.
std::string
should only be used for strings which can grow, or which must be dynamically allocated as read-write strings. For simple static strings, strings returned from functions likegetenv()
, or strings which are initialized once and then used read-only,const char*
should be used to refer to the string or pass it as an argument.std::string
involves dynamic memory allocation and copying of temporaries, which can be slow.std::string_view
is supposed to help alleviate that, which became available in C++17.const char*
can be used for read-only views of strings, in the interest of efficiency.For code brevity and readability, when converting to numeric types, uniform initialization or function-style casts are preferred to
static_cast<>()
or C-style casts. For example,T{x}
orT(x)
is preferred tostatic_cast<T>(x)
or(T)x
.T{x}
differs fromT(x)
in that narrowing conversions, which reduce the precision of an integer or floating-point, are not allowed.When writing general containers or templates which can accept arbitrary types as parameters, not just numeric types, then the specific cast (
static_cast
,const_cast
,reinterpret_cast
) should be used, to avoid surprises.But when converting to numeric types, which have very well-understood behavior and are side-effect free,
type{x}
ortype(x)
are more compact and clearer thanstatic_cast<type>(x)
. For pointers, C-style casts are okay, such as(T*)A
.For BLAS2 functions and BLAS1 functions with two vectors, the
incx
and/orincy
arguments can be negative, which means the vector is treated backwards from the end. A simple trick to handle this, is to adjust the pointer to the end of the vector if the increment is negative, as in:if(incx < 0) x -= ptrdiff_t(incx) * (n - 1); if(incy < 0) y -= ptrdiff_t(incy) * (n - 1);
After that adjustment, the code does not need to treat negative increments any differently than positive ones.
Note: Some blocked matrix-vector algorithms which call other BLAS kernels may not work if this simple transformation is used; see TRSV for an example, and how it’s handled there.
For reduction operations, the file reduction.h has been created to systematize reductions and perform their device kernels in one place. This works for
amax
,amin
,asum
,nrm2
, and (partially)dot
andgemv
.rocblas_reduction_kernel
is a generalized kernel which takes 3 functors as template arguments:One to fetch values (such as fetching a complex value and taking the sum of the squares of its real and imaginary parts before reducing it)
One to reduce values (such as to compute a sum or maximum)
One to finalize the reduction (such as taking the square root of a sum of squares)
There is a
default_value()
function which returns the default value for a reduction. The default value is the value of the reduction when the size is 0, and reducing a value with thedefault_value()
does not change the value of the reduction.When type punning is needed,
union
should be used instead of pointer-casting, which violates strict aliasing. For example:// zero extend lower 16 bits of bfloat16 to convert to IEEE float explicit __host__ __device__ operator float() const { union { uint32_t int32; float fp32; } u = {uint32_t(data) << 16}; return u.fp32; // Legal in C, nonstandard extension in C++ }
This violates the strict aliasing rule of C and C++:
// zero extend lower 16 bits of bfloat16 to convert to IEEE float explicit __host__ __device__ operator float() const { uint32_t int32 = uint32_t(data) << 16; return *(float *) &int32; // Violates strict aliasing rule in both C and C++ }
The only 100% standard C++ way to do it, is to use
memcpy()
, but this should not be required as long as GCC or Clang are used:// zero extend lower 16 bits of bfloat16 to convert to IEEE float explicit __host__ __device__ operator float() const { uint32_t int32 = uint32_t(data) << 16; float fp32; static_assert(sizeof(int32) == sizeof(fp32), "Different sizes"); memcpy(&fp32, &int32, sizeof(fp32)); return fp32; }
<type_traits>
classes which return Boolean values can be converted tobool
in Boolean contexts. Hence many traits can be tested by simply creating an instance of them with{}
. However, for type_traits accessors such as ::value or ::type, these can be replaced by suffixes added in C++17 such as is_same_v and enable_if_t:template<typename T, typename = typename std::enable_if_t<std::is_same_v<T, float> || std::is_same_v<T, double>>> void function(T x) { }
For other traits created with the
{}
syntax the resulting temporary objects can be explicitly converted tobool
, which is what occurs when an object appears in a conditional expression (if
,while
,for
,&&
,||
,!
,? :
, etc.).rocblas_cout
androcblas_cerr
should be used instead ofstd::cout
,std::cerr
,stdout
orstderr
, androcblas_internal_ostream
should be used instead ofstd::ostream
,std::ofstream
orstd::ostringstream
.In
rocblas-bench
androcblas-test
,std::cout
,std::cerr
,printf
,fprintf
,stdout
,stderr
,puts()
,fputs()
, and other symbols are “poisoned”, to remind you to userocblas_cout
,rocblas_cerr
, androcblas_internal_ostream
instead.rocblas_cout
androcblas_cerr
are instances ofrocblas_internal_ostream
which output to standard output and standard error, but in a way that prevents interlacing of different threads’ output.rocblas_internal_ostream
provides standardized thread-safe formatted output for rocBLAS datatypes. It can be constructed in 3 ways: - By default, in which case it behaves like astd::ostringstream
- With a file descriptor number, in which case the file descriptor isdup()``ed and the same file it points to is outputted to - With a string, in which case a new file is opened for writing, with file creation, truncation and appending enabled (``O_WRONLY | O_CREAT | O_TRUNC | O_APPEND | O_CLOEXEC
)std::endl
orstd::flush
should be used at the end of an output sequence when an atomic flush of the output is needed (atomic meaning that multiple threads can be writing to the same file, but that their flushes will be atomic). Until then, the output will accumulate in therocblas_internal_ostream
and will not be flushed until eitherrocblas_internal_ostream::flush()
is called,std::endl
orstd::flush
is outputted, or therocblas_internal_ostream
is destroyed.The
rocblas_internal_ostream::yaml_on
androcblas_internal_ostream::yaml_off
IO modifiers enable or disable YAML formatting, for when outputting abitrary types as YAML source code. For example, to output akey: value
pair as YAML source code, you would use:os << key << ": " << rocblas_internal_ostream::yaml_on << value << rocblas_internal_ostream::yaml_off;
The
key
is outputted normally as a bare string, but thevalue
uses YAML metacharacters and lexical syntax to output the value, so that when it’s read in as YAML, it has the type and value ofvalue
.C++ templates, including variadic templates, are preferred to macros or runtime interpreting of values, although it is understood that sometimes macros are necessary.
For example, when creating a class which models zero or more rocBLAS kernel arguments, it is preferable to use:
template<rocblas_argument... Args> class ArgumentModel { public: void func() { for(auto arg: { Args... }) { //do something with argument arg } } }; ArgumentModel<e_A, e_B>{}.func();
instead of:
class ArgumentModel { std::vector<rocblas_argument> args; public: ArgumentModel(const std::vector<rocblas_argument>& args): args(args) { } void func() { for(auto arg: args) { //do something with argument arg } } }; ArgumentModel model({e_A, e_B}); model.func();
The former denotes the rocBLAS arguments as a list which is passed as a variadic template argument, and whose properties are known and can be optimized at compile-time, and which can be passed on as arguments to other templates, while the latter requires creating a dynamically-allocated runtime object which must be interpreted at runtime, such as by using
switch
statements on the arguments. Theswitch
statement will need to list out and handle every possible argument, while the template solution simply passes the argument as another template argument, and hence can be resolved at compile-time.Automatically-generated files should always go into
build/
directories, and should not go into source directories (even if marked.gitignore
). The CMake philosophy is such that you can create anybuild/
directory, runcmake
from there, and then have a self-contained build environment which will not touch any files outside of it.The
library/include
subdirectory of rocBLAS, to be distinguished from thelibrary/src/include
subdirectory, shall consist only of C-compatible header files for public rocBLAS APIs. It should not include internal APIs, even if they are used in other projects, e.g., rocSOLVER, and the headers must be compilable with a C compiler, and must use.h
extensions.Macro parameters should only be evaluated once when practical, and should be parenthesized if there is a chance of ambiguous precedence. They should be stored in a local temporary variable if needed more than once.
Macros which expand to code with local variables, should use double-underscore suffixes in the local variable names, to prevent their conflict with variables passed in macro parameters. However, if they are in a completely separate block scope than the macro parameter is expanded in, or if they are only passed to another macro/function, then they do not need to use trailing underscores.
#define CHECK_DEVICE_ALLOCATION(ERROR) \ do \ { \ /* Use error__ in case ERROR contains "error" */ \ hipError_t error__ = (ERROR); \ if(error__ != hipSuccess) \ { \ if(error__ == hipErrorOutOfMemory) \ SUCCEED() << LIMITED_MEMORY_STRING; \ else \ FAIL() << hipGetErrorString(error__); \ return; \ } \ } while(0)
The ERROR
macro parameter is evaluated only once, and is stored in the temporary variable error__
, for use multiple times later.
The ERROR
macro parameter is parenthesized when initializing error__
, to avoid ambiguous precedence, such as if ERROR
contains a comma expression.
The error__
variable name is used, to prevent it from conflicting with variables passed in the ERROR
macro parameter, such as error
.
Do not use variable-length arrays (VLA), which allocate on the stack, for arrays of unknown size.
Ti* hostA[batch_count]; Ti* hostB[batch_count]; To* hostC[batch_count]; To* hostD[batch_count]; func(hostA, hostB, hostC, hostD);
Instead, allocate on the heap, using smart pointers to avoid memory leaks:
auto hostA = std::make_unique<Ti*[]>(batch_count); auto hostB = std::make_unique<Ti*[]>(batch_count); auto hostC = std::make_unique<To*[]>(batch_count); auto hostD = std::make_unique<To*[]>(batch_count); func(&hostA[0], &hostB[0], &hostC[0], &hostD[0]);
Do not define unnamed (anonymous) namespaces in header files (for explanation see DCL59-CPP)
If the reason for using an unnamed namespace in a header file is to prevent multiple definitions, keep in mind that the following are allowed to be defined in multiple compilation units, such as if they all come from the same header file, as long as they are defined with identical token sequences in each compilation unit:
classes
typedefs
or type aliases
enums
template
functions
inline
functions
constexpr
functions (impliesinline
)
inline
orconstexpr
variables or variabletemplate``s (only for C++17 or later, although some C++14 compilers treat ``constexpr
variables asinline
)
If functions defined in header files are declared template
, then multiple instantiations with the same template
arguments are automatically merged, something which cannot happen if the template
functions are declared static
, or appear in unnamed namespaces, in which case the instantiations are local to each compilation unit, and are not combined.
If a function defined in a header file at namespace
scope (outside of a class
) contains static
_local variables which are expected to be singletons holding state throughout the entire library, then the function cannot be marked static
or be part of an unnamed namespace
, because then each compilation unit will have its own separate copy of that function and its local static
variables. (static
member functions of classes always have external linkage, and it is okay to define static
class
member functions in-place inside of header files, because all in-place static
member function definitions, including their static
local variables, will be automatically merged.)
Guidelines:
Do not use unnamed
namespaces
inside of header files.Use either
template
orinline
(or both) for functions defined outside of classes in header files.Do not declare namespace-scope (not
class
-scope) functionsstatic
inside of header files unless there is a very good reason, that the function does not have any non-const
static
local variables, and that it is acceptable that each compilation unit will have its own independent definition of the function and itsstatic
local variables. (static
class
member functions defined in header files are okay.)Use
static
forconstexpr
template
variables until C++17, after whichconstexpr
variables becomeinline
variables, and thus can be defined in multiple compilation units. It is okay if theconstexpr
variables remainstatic
in C++17; it just means there might be a little bit of redundancy between compilation units.
Format#
C and C++ code is formatted using clang-format
. To run clang-format
use the version in the /opt/rocm/llvm/bin
directory. Please do not use your
system’s built-in clang-format
, as this may be an older version that
will result in different results.
To format a file, use:
/opt/rocm/llvm/bin/clang-format -style=file -i <path-to-source-file>
To format all files, run the following script in rocBLAS directory:
#!/bin/bash
git ls-files -z *.cc *.cpp *.h *.hpp *.cl *.h.in *.hpp.in *.cpp.in | xargs -0 /opt/rocm/llvm/bin/clang-format -style=file -i
Also, githooks can be installed to format the code per-commit:
./.githooks/install
Static Code Analysis#
cppcheck
is an open-source static analysis tool. This project uses this tool for performing static code analysis.
Users can use the following command to run cppcheck locally to generate the report for all files.
$ cd rocBLAS-internal
$ cppcheck --enable=all --inconclusive --library=googletest --inline-suppr -i./build --suppressions-list=./CppCheckSuppressions.txt --template="{file}:{line}: {severity}: {id} :{message}" . 2> cppcheck_report.txt
Also, githooks can be installed to perform static analysis on new/modified files using pre-commit:
./.githooks/install
For more information on the command line options, refer to the cppcheck manual on the web.