Supported Python features in CUDA Python¶
This page lists the Python features supported in the CUDA Python. This includes
all kernel and device functions compiled with @cuda.jit
and other higher
level Numba decorators that targets the CUDA GPU.
Language¶
Execution Model¶
CUDA Python maps directly to the single-instruction multiple-thread execution (SIMT) model of CUDA. Each instruction is implicitly executed by multiple threads in parallel. With this execution model, array expressions are less useful because we don’t want multiple threads to perform the same task. Instead, we want threads to perform a task in a cooperative fashion.
For details please consult the CUDA Programming Guide.
Constructs¶
The following Python constructs are not supported:
Exception handling (
try .. except
,try .. finally
)Context management (the
with
statement)Comprehensions (either list, dict, set or generator comprehensions)
Generator (any
yield
statements)
The raise
statement is supported.
The assert
statement is supported, but only has an effect when
debug=True
is passed to the numba.cuda.jit()
decorator. This is
similar to the behavior of the assert
keyword in CUDA C/C++, which is
ignored unless compiling with device debug turned on.
Printing of strings, integers, and floats is supported, but printing is an
asynchronous operation - in order to ensure that all output is printed after a
kernel launch, it is necessary to call numba.cuda.synchronize()
. Eliding
the call to synchronize
is acceptable, but output from a kernel may appear
during other later driver operations (e.g. subsequent kernel launches, memory
transfers, etc.), or fail to appear before the program execution completes.
Built-in types¶
The following built-in types support are inherited from CPU nopython mode.
int
float
complex
bool
None
tuple
Built-in functions¶
The following built-in functions are supported:
Standard library modules¶
Numpy support¶
Due to the CUDA programming model, dynamic memory allocation inside a kernel is inefficient and is often not needed. Numba disallows any memory allocating features. This disables a large number of NumPy APIs. For best performance, users should write code such that each thread is dealing with a single element at a time.
Supported numpy features:
accessing ndarray attributes .shape, .strides, .ndim, .size, etc..
scalar ufuncs that have equivalents in the math module; i.e.
np.sin(x[0])
, where x is a 1D array.indexing and slicing works.
Unsupported numpy features:
array creation APIs.
array methods.
functions that returns a new array.