API Reference¶
Module Contents¶
- class rmm.DeviceBuffer¶
Bases:
object
- Attributes:
Methods
capacity
(self)copy
(self)Returns a copy of DeviceBuffer.
copy_from_device
(self, cuda_ary, ...)Copy from a buffer on host to
self
copy_from_host
(self, ary, ...)Copy from a buffer on host to
self
copy_to_host
(self[, ary])Copy from a
DeviceBuffer
to a buffer on host.reserve
(self, size_t new_capacity, ...)resize
(self, size_t new_size, ...)to_device
(const unsigned char[, ...)Calls
to_device
function on arguments provided.tobytes
(self, Stream stream=DEFAULT_STREAM)- capacity(self) size_t ¶
- copy(self)¶
Returns a copy of DeviceBuffer.
- Returns:
- A deep copy of existing
DeviceBuffer
- A deep copy of existing
Examples
>>> import rmm >>> db = rmm.DeviceBuffer.to_device(b"abc") >>> db_copy = db.copy() >>> db.copy_to_host() array([97, 98, 99], dtype=uint8) >>> db_copy.copy_to_host() array([97, 98, 99], dtype=uint8) >>> assert db is not db_copy >>> assert db.ptr != db_copy.ptr
- copy_from_device(self, cuda_ary, Stream stream=DEFAULT_STREAM)¶
Copy from a buffer on host to
self
- Parameters:
- cuda_aryobject to copy from that has
__cuda_array_interface__
- streamCUDA stream to use for copying, default the default stream
- cuda_aryobject to copy from that has
Examples
>>> import rmm >>> db = rmm.DeviceBuffer(size=5) >>> db2 = rmm.DeviceBuffer.to_device(b"abc") >>> db.copy_from_device(db2) >>> hb = db.copy_to_host() >>> print(hb) array([97, 98, 99, 0, 0], dtype=uint8)
- copy_from_host(self, ary, Stream stream=DEFAULT_STREAM)¶
Copy from a buffer on host to
self
- Parameters:
- ary
bytes
-like buffer to copy from - streamCUDA stream to use for copying, default the default stream
- ary
Examples
>>> import rmm >>> db = rmm.DeviceBuffer(size=10) >>> hb = b"abcdef" >>> db.copy_from_host(hb) >>> hb = db.copy_to_host() >>> print(hb) array([97, 98, 99, 0, 0, 0, 0, 0, 0, 0], dtype=uint8)
- copy_to_host(self, ary=None, Stream stream=DEFAULT_STREAM)¶
Copy from a
DeviceBuffer
to a buffer on host.- Parameters:
- ary
bytes
-like buffer to write into - streamCUDA stream to use for copying, default the default stream
- ary
Examples
>>> import rmm >>> db = rmm.DeviceBuffer.to_device(b"abc") >>> hb = bytearray(db.nbytes) >>> db.copy_to_host(hb) >>> print(hb) bytearray(b'abc') >>> hb = db.copy_to_host() >>> print(hb) bytearray(b'abc')
- nbytes¶
Gets the size of the buffer in bytes.
- ptr¶
Gets a pointer to the underlying data.
- reserve(self, size_t new_capacity, Stream stream=DEFAULT_STREAM) void ¶
- resize(self, size_t new_size, Stream stream=DEFAULT_STREAM) void ¶
- size¶
Gets the size of the buffer in bytes.
- static to_device(const unsigned char[::1] b, Stream stream=DEFAULT_STREAM)¶
Calls
to_device
function on arguments provided.
- rmm.disable_logging()¶
Disable logging if it was enabled previously using rmm.initialize() or rmm.enable_logging().
- rmm.enable_logging(log_file_name=None)¶
Enable logging of run-time events for all devices.
- Parameters:
- log_file_name: str, optional
Name of the log file. If not specified, the environment variable RMM_LOG_FILE is used. A ValueError is thrown if neither is available. A separate log file is produced for each device, and the suffix “.dev{id}” is automatically added to the log file name.
Notes
Note that if you use the environment variable CUDA_VISIBLE_DEVICES with logging enabled, the suffix may not be what you expect. For example, if you set CUDA_VISIBLE_DEVICES=1, the log file produced will still have suffix 0. Similarly, if you set CUDA_VISIBLE_DEVICES=1,0 and use devices 0 and 1, the log file with suffix 0 will correspond to the GPU with device ID 1. Use rmm.get_log_filenames() to get the log file names corresponding to each device.
- rmm.flush_logger()¶
Flush the debug logger. This will cause any buffered log messages to be written to the log file.
Debug logging prints messages to a log file. See Debug Logging for more information.
See also
set_flush_level
Set the flush level for the debug logger.
get_flush_level
Get the current debug logging flush level.
Examples
>>> import rmm >>> rmm.flush_logger() # flush the logger
- rmm.get_flush_level()¶
Get the current debug logging flush level for the RMM logger. Messages of this level or higher will automatically flush to the file.
Debug logging prints messages to a log file. See Debug Logging for more information.
- Returns:
- logging_level
The current flush level, an instance of the
logging_level
enum.
See also
set_flush_level
Set the flush level for the logger.
flush_logger
Flush the logger.
Examples
>>> import rmm >>> rmm.flush_level() # get current flush level <logging_level.INFO: 2>
- rmm.get_log_filenames()¶
Returns the log filename (or None if not writing logs) for each device in use.
Examples
>>> import rmm >>> rmm.reinitialize(devices=[0, 1], logging=True, log_file_name="rmm.log") >>> rmm.get_log_filenames() {0: '/home/user/workspace/rapids/rmm/python/rmm.dev0.log', 1: '/home/user/workspace/rapids/rmm/python/rmm.dev1.log'}
- rmm.get_logging_level()¶
Get the current debug logging level.
Debug logging prints messages to a log file. See Debug Logging for more information.
- Returns:
- levellogging_level
The current debug logging level, an instance of the
logging_level
enum.
See also
set_logging_level
Set the debug logging level.
Examples
>>> import rmm >>> rmm.get_logging_level() # get current logging level <logging_level.INFO: 2>
- rmm.is_initialized()¶
Returns True if RMM has been initialized, False otherwise.
- class rmm.logging_level(value)¶
Bases:
IntFlag
The debug logging level for RMM.
Debug logging prints messages to a log file. See Debug Logging for more information.
Valid levels, in decreasing order of verbosity, are TRACE, DEBUG, INFO, WARN, ERR, CRITICAL, and OFF. Default is INFO.
See also
set_logging_level
Set the debug logging level
get_logging_level
Get the current debug logging level
Examples
>>> import rmm >>> rmm.logging_level.DEBUG <logging_level.DEBUG: 1> >>> rmm.logging_level.DEBUG.value 1 >>> rmm.logging_level.DEBUG.name 'DEBUG'
- CRITICAL = 5¶
- DEBUG = 1¶
- ERR = 4¶
- INFO = 2¶
- OFF = 6¶
- TRACE = 0¶
- WARN = 3¶
- rmm.register_reinitialize_hook(func, *args, **kwargs)¶
Add a function to the list of functions (“hooks”) that will be called before
reinitialize()
.A user or library may register hooks to perform any necessary cleanup before RMM is reinitialized. For example, a library with an internal cache of objects that use device memory allocated by RMM can register a hook to release those references before RMM is reinitialized, thus ensuring that the relevant device memory resource can be deallocated.
Hooks are called in the reverse order they are registered. This is useful, for example, when a library registers multiple hooks and needs them to run in a specific order for cleanup to be safe. Hooks cannot rely on being registered in a particular order relative to hooks registered by other packages, since that is determined by package import ordering.
- Parameters:
- funccallable
Function to be called before
reinitialize()
- args, kwargs
Positional and keyword arguments to be passed to func
- rmm.reinitialize(pool_allocator=False, managed_memory=False, initial_pool_size=None, maximum_pool_size=None, devices=0, logging=False, log_file_name=None)¶
Finalizes and then initializes RMM using the options passed. Using memory from a previous initialization of RMM is undefined behavior and should be avoided.
- Parameters:
- pool_allocatorbool, default False
If True, use a pool allocation strategy which can greatly improve performance.
- managed_memorybool, default False
If True, use managed memory for device memory allocation
- initial_pool_sizeint, default None
When pool_allocator is True, this indicates the initial pool size in bytes. By default, 1/2 of the total GPU memory is used. When pool_allocator is False, this argument is ignored if provided.
- maximum_pool_sizeint, default None
When pool_allocator is True, this indicates the maximum pool size in bytes. By default, the total available memory on the GPU is used. When pool_allocator is False, this argument is ignored if provided.
- devicesint or List[int], default 0
GPU device IDs to register. By default registers only GPU 0.
- loggingbool, default False
If True, enable run-time logging of all memory events (alloc, free, realloc). This has a significant performance impact.
- log_file_namestr
Name of the log file. If not specified, the environment variable
RMM_LOG_FILE
is used. AValueError
is thrown if neither is available. A separate log file is produced for each device, and the suffix “.dev{id}” is automatically added to the log file name.
Notes
Note that if you use the environment variable
CUDA_VISIBLE_DEVICES
with logging enabled, the suffix may not be what you expect. For example, if you setCUDA_VISIBLE_DEVICES=1
, the log file produced will still have suffix0
. Similarly, if you setCUDA_VISIBLE_DEVICES=1,0
and use devices 0 and 1, the log file with suffix0
will correspond to the GPU with device ID1
. Use rmm.get_log_filenames() to get the log file names corresponding to each device.
- rmm.set_flush_level(level)¶
Set the flush level for the debug logger. Messages of this level or higher will automatically flush to the file.
Debug logging prints messages to a log file. See Debug Logging for more information.
- Parameters:
- levellogging_level
The debug logging level. Valid values are instances of the
logging_level
enum.
- Raises:
- TypeError
If the logging level is not an instance of the
logging_level
enum.
See also
get_flush_level
Get the current debug logging flush level.
flush_logger
Flush the logger.
Examples
>>> import rmm >>> rmm.flush_on(rmm.logging_level.WARN) # set flush level to warn
- rmm.set_logging_level(level)¶
Set the debug logging level.
Debug logging prints messages to a log file. See Debug Logging for more information.
- Parameters:
- levellogging_level
The debug logging level. Valid values are instances of the
logging_level
enum.
- Raises:
- TypeError
If the logging level is not an instance of the
logging_level
enum.
See also
get_logging_level
Get the current debug logging level.
Examples
>>> import rmm >>> rmm.set_logging_level(rmm.logging_level.WARN) # set logging level to warn
- rmm.should_log(level)¶
Check if a message at the given level would be logged.
A message at the given level would be logged if the current debug logging level is set to a level that is at least as verbose than the given level, and the RMM module is compiled for a logging level at least as verbose. If these conditions are not both met, this function will return false.
Debug logging prints messages to a log file. See Debug Logging for more information.
- Parameters:
- levellogging_level
The debug logging level. Valid values are instances of the
logging_level
enum.
- Returns:
- should_logbool
True if a message at the given level would be logged, False otherwise.
- Raises:
- TypeError
If the logging level is not an instance of the
logging_level
enum.
- rmm.unregister_reinitialize_hook(func)¶
Remove func from list of hooks that will be called before
reinitialize()
.If func was registered more than once, every instance of it will be removed from the list of hooks.
Memory Resources¶
- class rmm.mr.BinningMemoryResource(DeviceMemoryResource upstream_mr, int8_t min_size_exponent=-1, int8_t max_size_exponent=-1)¶
Bases:
UpstreamResourceAdaptor
Allocates memory from a set of specified “bin” sizes based on a specified allocation size.
If min_size_exponent and max_size_exponent are specified, initializes with one or more FixedSizeMemoryResource bins in the range
[2**min_size_exponent, 2**max_size_exponent]
.Call
add_bin()
to add additional bin allocators.- Parameters:
- upstream_mrDeviceMemoryResource
The memory resource to use for allocations larger than any of the bins.
- min_size_exponentsize_t
The base-2 exponent of the minimum size FixedSizeMemoryResource bin to create.
- max_size_exponentsize_t
The base-2 exponent of the maximum size FixedSizeMemoryResource bin to create.
- Attributes:
bin_mrs
BinningMemoryResource.bin_mrs: list Get the list of binned memory resources.
- upstream_mr
Methods
add_bin
(self, size_t allocation_size, ...)Adds a bin of the specified maximum allocation size to this memory resource.
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.get_upstream
(self)- add_bin(self, size_t allocation_size, DeviceMemoryResource bin_resource=None)¶
Adds a bin of the specified maximum allocation size to this memory resource. If specified, uses bin_resource for allocation for this bin. If not specified, creates and uses a FixedSizeMemoryResource for allocation for this bin.
Allocations smaller than allocation_size and larger than the next smaller bin size will use this fixed-size memory resource.
- Parameters:
- allocation_sizesize_t
The maximum allocation size in bytes for the created bin
- bin_resourceDeviceMemoryResource
The resource to use for this bin (optional)
- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- bin_mrs¶
BinningMemoryResource.bin_mrs: list Get the list of binned memory resources.
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- get_upstream(self) DeviceMemoryResource ¶
- upstream_mr¶
- class rmm.mr.CallbackMemoryResource(allocate_func, deallocate_func)¶
Bases:
DeviceMemoryResource
A memory resource that uses the user-provided callables to do memory allocation and deallocation.
CallbackMemoryResource
should really only be used for debugging memory issues, as there is a significant performance penalty associated with using a Python function for each memory allocation and deallocation.- Parameters:
- allocate_func: callable
The allocation function must accept a single integer argument, representing the number of bytes to allocate, and return an integer representing the pointer to the allocated memory.
- deallocate_func: callable
The deallocation function must accept two arguments, an integer representing the pointer to the memory to free, and a second integer representing the number of bytes to free.
Examples
>>> import rmm >>> base_mr = rmm.mr.CudaMemoryResource() >>> def allocate_func(size): ... print(f"Allocating {size} bytes") ... return base_mr.allocate(size) ... >>> def deallocate_func(ptr, size): ... print(f"Deallocating {size} bytes") ... return base_mr.deallocate(ptr, size) ... >>> rmm.mr.set_current_device_resource( rmm.mr.CallbackMemoryResource(allocate_func, deallocate_func) ) >>> dbuf = rmm.DeviceBuffer(size=256) Allocating 256 bytes >>> del dbuf Deallocating 256 bytes
Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- class rmm.mr.CudaAsyncMemoryResource¶
Bases:
DeviceMemoryResource
Memory resource that uses
cudaMallocAsync
/cudaFreeAsync
for allocation/deallocation.- Parameters:
- initial_pool_sizeint, optional
Initial pool size in bytes. By default, half the available memory on the device is used.
- release_threshold: int, optional
Release threshold in bytes. If the pool size grows beyond this value, unused memory held by the pool will be released at the next synchronization point.
- enable_ipc: bool, optional
If True, enables export of POSIX file descriptor handles for the memory allocated by this resource so that it can be used with CUDA IPC.
Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- class rmm.mr.CudaMemoryResource¶
Bases:
DeviceMemoryResource
Memory resource that uses
cudaMalloc
/cudaFree
for allocation/deallocation.Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- class rmm.mr.DeviceMemoryResource¶
Bases:
object
Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- class rmm.mr.FailureCallbackResourceAdaptor(DeviceMemoryResource upstream_mr, callback)¶
Bases:
UpstreamResourceAdaptor
Memory resource that call callback when memory allocation fails.
- Parameters:
- upstreamDeviceMemoryResource
The upstream memory resource.
- callbackcallable
Function called when memory allocation fails.
- Attributes:
- upstream_mr
Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.get_upstream
(self)- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- get_upstream(self) DeviceMemoryResource ¶
- upstream_mr¶
- class rmm.mr.FixedSizeMemoryResource(DeviceMemoryResource upstream_mr, size_t block_size=0x100000, size_t blocks_to_preallocate=128)¶
Bases:
UpstreamResourceAdaptor
Memory resource which allocates memory blocks of a single fixed size.
- Parameters:
- upstream_mrDeviceMemoryResource
The DeviceMemoryResource from which to allocate blocks for the pool.
- block_sizeint, optional
The size of blocks to allocate (default is 1MiB).
- blocks_to_preallocateint, optional
The number of blocks to allocate to initialize the pool.
Notes
Supports only allocations of size smaller than the configured block_size.
- Attributes:
- upstream_mr
Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.get_upstream
(self)- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- get_upstream(self) DeviceMemoryResource ¶
- upstream_mr¶
- class rmm.mr.LimitingResourceAdaptor(DeviceMemoryResource upstream_mr, size_t allocation_limit)¶
Bases:
UpstreamResourceAdaptor
Memory resource that limits the total allocation amount possible performed by an upstream memory resource.
- Parameters:
- upstream_mrDeviceMemoryResource
The upstream memory resource.
- allocation_limitsize_t
Maximum memory allowed for this allocator.
- Attributes:
- upstream_mr
Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.get_allocated_bytes
(self)Query the number of bytes that have been allocated.
get_allocation_limit
(self)Query the maximum number of bytes that this allocator is allowed to allocate.
get_upstream
(self)- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- get_allocated_bytes(self) size_t ¶
Query the number of bytes that have been allocated. Note that this can not be used to know how large of an allocation is possible due to both possible fragmentation and also internal page sizes and alignment that is not tracked by this allocator.
- get_allocation_limit(self) size_t ¶
Query the maximum number of bytes that this allocator is allowed to allocate. This is the limit on the allocator and not a representation of the underlying device. The device may not be able to support this limit.
- get_upstream(self) DeviceMemoryResource ¶
- upstream_mr¶
- class rmm.mr.LoggingResourceAdaptor(DeviceMemoryResource upstream_mr, log_file_name=None)¶
Bases:
UpstreamResourceAdaptor
Memory resource that logs information about allocations/deallocations performed by an upstream memory resource.
- Parameters:
- upstreamDeviceMemoryResource
The upstream memory resource.
- log_file_namestr
Path to the file to which logs are written.
- Attributes:
- upstream_mr
Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.flush
(self)get_file_name
(self)get_upstream
(self)- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- flush(self)¶
- get_file_name(self)¶
- get_upstream(self) DeviceMemoryResource ¶
- upstream_mr¶
- class rmm.mr.ManagedMemoryResource¶
Bases:
DeviceMemoryResource
Memory resource that uses
cudaMallocManaged
/cudaFree
for allocation/deallocation.Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- class rmm.mr.PoolMemoryResource(DeviceMemoryResource upstream_mr, initial_pool_size=None, maximum_pool_size=None)¶
Bases:
UpstreamResourceAdaptor
Coalescing best-fit suballocator which uses a pool of memory allocated from an upstream memory resource.
- Parameters:
- upstream_mrDeviceMemoryResource
The DeviceMemoryResource from which to allocate blocks for the pool.
- initial_pool_sizeint, optional
Initial pool size in bytes. By default, half the available memory on the device is used.
- maximum_pool_sizeint, optional
Maximum size in bytes, that the pool can grow to.
- Attributes:
- upstream_mr
Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.get_upstream
(self)pool_size
(self)- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- get_upstream(self) DeviceMemoryResource ¶
- pool_size(self)¶
- upstream_mr¶
- class rmm.mr.StatisticsResourceAdaptor(DeviceMemoryResource upstream_mr)¶
Bases:
UpstreamResourceAdaptor
Memory resource that tracks the current, peak and total allocations/deallocations performed by an upstream memory resource. Includes the ability to query these statistics at any time.
- Parameters:
- upstreamDeviceMemoryResource
The upstream memory resource.
- Attributes:
allocation_counts
StatisticsResourceAdaptor.allocation_counts: dict
- upstream_mr
Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.get_upstream
(self)- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- allocation_counts¶
StatisticsResourceAdaptor.allocation_counts: dict
Gets the current, peak, and total allocated bytes and number of allocations.
The dictionary keys are
current_bytes
,current_count
,peak_bytes
,peak_count
,total_bytes
, andtotal_count
.- Returns:
dict: Dictionary containing allocation counts and bytes.
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- get_upstream(self) DeviceMemoryResource ¶
- upstream_mr¶
- class rmm.mr.TrackingResourceAdaptor(DeviceMemoryResource upstream_mr, bool capture_stacks=False)¶
Bases:
UpstreamResourceAdaptor
Memory resource that logs tracks allocations/deallocations performed by an upstream memory resource. Includes the ability to query all outstanding allocations with the stack trace, if desired.
- Parameters:
- upstreamDeviceMemoryResource
The upstream memory resource.
- capture_stacksbool
Whether or not to capture the stack trace with each allocation.
- Attributes:
- upstream_mr
Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.get_allocated_bytes
(self)Query the number of bytes that have been allocated.
Returns a string containing information about the current outstanding allocations.
get_upstream
(self)Logs the output of get_outstanding_allocations_str to the current RMM log file if enabled.
- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- get_allocated_bytes(self) size_t ¶
Query the number of bytes that have been allocated. Note that this can not be used to know how large of an allocation is possible due to both possible fragmentation and also internal page sizes and alignment that is not tracked by this allocator.
- get_outstanding_allocations_str(self) str ¶
Returns a string containing information about the current outstanding allocations. For each allocation, the address, size and optional stack trace are shown.
- get_upstream(self) DeviceMemoryResource ¶
- log_outstanding_allocations(self)¶
Logs the output of get_outstanding_allocations_str to the current RMM log file if enabled.
- upstream_mr¶
- class rmm.mr.UpstreamResourceAdaptor¶
Bases:
DeviceMemoryResource
Parent class for all memory resources that track an upstream.
Upstream resource tracking requires maintaining a reference to the upstream mr so that it is kept alive and may be accessed by any downstream resource adaptors.
- Attributes:
- upstream_mr
Methods
allocate
(self, size_t nbytes)Allocate
nbytes
bytes of memory.deallocate
(self, uintptr_t ptr, size_t nbytes)Deallocate memory pointed to by
ptr
of sizenbytes
.get_upstream
(self)- allocate(self, size_t nbytes)¶
Allocate
nbytes
bytes of memory.- Parameters:
- nbytessize_t
The size of the allocation in bytes
- deallocate(self, uintptr_t ptr, size_t nbytes)¶
Deallocate memory pointed to by
ptr
of sizenbytes
.- Parameters:
- ptruintptr_t
Pointer to be deallocated
- nbytessize_t
Size of the allocation in bytes
- get_upstream(self) DeviceMemoryResource ¶
- upstream_mr¶
- rmm.mr.disable_logging()¶
Disable logging if it was enabled previously using rmm.initialize() or rmm.enable_logging().
- rmm.mr.enable_logging(log_file_name=None)¶
Enable logging of run-time events for all devices.
- Parameters:
- log_file_name: str, optional
Name of the log file. If not specified, the environment variable RMM_LOG_FILE is used. A ValueError is thrown if neither is available. A separate log file is produced for each device, and the suffix “.dev{id}” is automatically added to the log file name.
Notes
Note that if you use the environment variable CUDA_VISIBLE_DEVICES with logging enabled, the suffix may not be what you expect. For example, if you set CUDA_VISIBLE_DEVICES=1, the log file produced will still have suffix 0. Similarly, if you set CUDA_VISIBLE_DEVICES=1,0 and use devices 0 and 1, the log file with suffix 0 will correspond to the GPU with device ID 1. Use rmm.get_log_filenames() to get the log file names corresponding to each device.
- rmm.mr.get_current_device_resource() DeviceMemoryResource ¶
Get the memory resource used for RMM device allocations on the current device.
If the returned memory resource is used when a different device is the active CUDA device, behavior is undefined.
- rmm.mr.get_current_device_resource_type()¶
Get the memory resource type used for RMM device allocations on the current device.
- rmm.mr.get_log_filenames()¶
Returns the log filename (or None if not writing logs) for each device in use.
Examples
>>> import rmm >>> rmm.reinitialize(devices=[0, 1], logging=True, log_file_name="rmm.log") >>> rmm.get_log_filenames() {0: '/home/user/workspace/rapids/rmm/python/rmm.dev0.log', 1: '/home/user/workspace/rapids/rmm/python/rmm.dev1.log'}
- rmm.mr.get_per_device_resource(int device)¶
Get the default memory resource for the specified device.
If the returned memory resource is used when a different device is the active CUDA device, behavior is undefined.
- Parameters:
- deviceint
The ID of the device for which to get the memory resource.
- rmm.mr.get_per_device_resource_type(int device)¶
Get the memory resource type used for RMM device allocations on the specified device.
- Parameters:
- deviceint
The device ID
- rmm.mr.is_initialized()¶
Check whether RMM is initialized
- rmm.mr.set_current_device_resource(DeviceMemoryResource mr)¶
Set the default memory resource for the current device.
- Parameters:
- mrDeviceMemoryResource
The memory resource to set. Must have been created while the current device is the active CUDA device.
- rmm.mr.set_per_device_resource(int device, DeviceMemoryResource mr)¶
Set the default memory resource for the specified device.
- Parameters:
- deviceint
The ID of the device for which to get the memory resource.
- mrDeviceMemoryResource
The memory resource to set. Must have been created while device was the active CUDA device.
Memory Allocators¶
- rmm.allocators.cupy.rmm_cupy_allocator(nbytes)¶
A CuPy allocator that makes use of RMM.
Examples
>>> from rmm.allocators.cupy import rmm_cupy_allocator >>> import cupy >>> cupy.cuda.set_allocator(rmm_cupy_allocator)
- class rmm.allocators.numba.RMMNumbaManager(*args, **kwargs)¶
Bases:
HostOnlyCUDAMemoryManager
External Memory Management Plugin implementation for Numba. Provides on-device allocation only.
See https://numba.readthedocs.io/en/stable/cuda/external-memory.html for details of the interface being implemented here.
- Attributes:
interface_version
Returns an integer specifying the version of the EMM Plugin interface supported by the plugin implementation.
Methods
Returns a context manager that disables cleanup of mapped or pinned host memory in the current context whilst it is active.
get_ipc_handle
(memory)Get an IPC handle for the MemoryPointer memory with offset modified by the RMM memory pool.
Returns
(free, total)
memory in bytes in the context.Perform any initialization required for the EMM plugin instance to be ready to use.
memalloc
(size)Allocate an on-device array from the RMM pool.
memhostalloc
(size[, mapped, portable, wc])Implements the allocation of pinned host memory.
mempin
(owner, pointer, size[, mapped])Implements the pinning of host memory.
reset
()Clears up all host memory (mapped and/or pinned) in the current context.
memallocmanaged
- defer_cleanup()¶
Returns a context manager that disables cleanup of mapped or pinned host memory in the current context whilst it is active.
EMM Plugins that override this method must obtain the context manager from this method before yielding to ensure that cleanup of host allocations is also deferred.
- get_ipc_handle(memory)¶
Get an IPC handle for the MemoryPointer memory with offset modified by the RMM memory pool.
- get_memory_info()¶
Returns
(free, total)
memory in bytes in the context.This implementation raises NotImplementedError because the allocation will be performed using rmm’s currently set default mr, which may be a pool allocator.
- initialize()¶
Perform any initialization required for the EMM plugin instance to be ready to use.
- Returns:
None
- property interface_version¶
Returns an integer specifying the version of the EMM Plugin interface supported by the plugin implementation. Should always return 1 for implementations of this version of the specification.
- memalloc(size)¶
Allocate an on-device array from the RMM pool.
- memallocmanaged(size, attach_global)¶
- memhostalloc(size, mapped=False, portable=False, wc=False)¶
Implements the allocation of pinned host memory.
It is recommended that this method is not overridden by EMM Plugin implementations - instead, use the
numba.cuda.BaseCUDAMemoryManager
.
- mempin(owner, pointer, size, mapped=False)¶
Implements the pinning of host memory.
It is recommended that this method is not overridden by EMM Plugin implementations - instead, use the
numba.cuda.BaseCUDAMemoryManager
.
- reset()¶
Clears up all host memory (mapped and/or pinned) in the current context.
EMM Plugins that override this method must call
super().reset()
to ensure that host allocations are also cleaned up.