NOTE: For the latest stable README.md ensure you are on the main
branch.
- RMM Reference Documentation: Python API reference, tutorials, and topic guides.
- librmm Reference Documentation: C/C++ CUDA library API reference.
- Getting Started: Instructions for installing RMM.
- RAPIDS Community: Get help, contribute, and collaborate.
- GitHub repository: Download the RMM source code.
- Issue tracker: Report issues or request features.
Achieving optimal performance in GPU-centric workflows frequently requires customizing how host and device memory are allocated. For example, using "pinned" host memory for asynchronous host <-> device memory transfers, or using a device memory pool sub-allocator to reduce the cost of dynamic device memory allocation.
The goal of the RAPIDS Memory Manager (RMM) is to provide:
- A common interface that allows customizing device and host memory allocation
- A collection of implementations of the interface
- A collection of data structures that use the interface for memory allocation
For information on the interface RMM provides and how to use RMM in your C++ code, see below.
For a walkthrough about the design of the RAPIDS Memory Manager, read Fast, Flexible Allocation for NVIDIA CUDA with RAPIDS Memory Manager on the NVIDIA Developer Blog.
RMM can be installed with Conda (miniconda, or the full
Anaconda distribution) from the rapidsai
channel:
conda install -c rapidsai -c conda-forge -c nvidia rmm cuda-version=12.0
We also provide nightly Conda packages built from the HEAD of our latest development branch.
Note: RMM is supported only on Linux, and only tested with Python versions 3.9 and 3.10.
Note: The RMM package from Conda requires building with GCC 9 or later. Otherwise, your application may fail to build.
See the Get RAPIDS version picker for more OS and version info.
Compiler requirements:
gcc
version 9.3+nvcc
version 11.4+cmake
version 3.26.4+
CUDA/GPU requirements:
- CUDA 11.4+. You can obtain CUDA from https://developer.nvidia.com/cuda-downloads
GPU Support:
- RMM is tested and supported only on Volta architecture and newer (Compute Capability 7.0+). It may work on earlier architectures.
Python requirements:
scikit-build-core
cuda-python
cython
For more details, see pyproject.toml
To install RMM from source, ensure the dependencies are met and follow the steps below:
- Clone the repository and submodules
$ git clone --recurse-submodules https://github.com/rapidsai/rmm.git
$ cd rmm
- Create the conda development environment
rmm_dev
# create the conda environment (assuming in base `rmm` directory)
$ conda env create --name rmm_dev --file conda/environments/all_cuda-118_arch-x86_64.yaml
# activate the environment
$ conda activate rmm_dev
- Build and install
librmm
using cmake & make. CMake depends on thenvcc
executable being on your path or defined inCUDACXX
environment variable.
$ mkdir build # make a build directory
$ cd build # enter the build directory
$ cmake .. -DCMAKE_INSTALL_PREFIX=/install/path # configure cmake ... use $CONDA_PREFIX if you're using Anaconda
$ make -j # compile the library librmm.so ... '-j' will start a parallel job using the number of physical cores available on your system
$ make install # install the library librmm.so to '/install/path'
- Building and installing
librmm
andrmm
using build.sh. Build.sh creates build dir at root of git repository. build.sh depends on thenvcc
executable being on your path or defined inCUDACXX
environment variable.
$ ./build.sh -h # Display help and exit
$ ./build.sh -n librmm # Build librmm without installing
$ ./build.sh -n rmm # Build rmm without installing
$ ./build.sh -n librmm rmm # Build librmm and rmm without installing
$ ./build.sh librmm rmm # Build and install librmm and rmm
- To run tests (Optional):
$ cd build (if you are not already in build directory)
$ make test
- Build, install, and test the
rmm
python package, in thepython
folder:
$ python -m pip install -e ./python
$ pytest -v
Done! You are ready to develop for the RMM OSS project.
RMM uses CPM.cmake to
handle third-party dependencies like spdlog, Thrust, GoogleTest,
GoogleBenchmark. In general you won't have to worry about it. If CMake
finds an appropriate version on your system, it uses it (you can
help it along by setting CMAKE_PREFIX_PATH
to point to the
installed location). Otherwise those dependencies will be downloaded as
part of the build.
If you frequently start new builds from scratch, consider setting the
environment variable CPM_SOURCE_CACHE
to an external download
directory to avoid repeated downloads of the third-party dependencies.
The installed RMM library provides a set of config files that makes it easy to
integrate RMM into your own CMake project. In your CMakeLists.txt
, just add
find_package(rmm [VERSION])
# ...
target_link_libraries(<your-target> (PRIVATE|PUBLIC) rmm::rmm)
Since RMM is a header-only library, this does not actually link RMM,
but it makes the headers available and pulls in transitive dependencies.
If RMM is not installed in a default location, use
CMAKE_PREFIX_PATH
or rmm_ROOT
to point to its location.
One of RMM's dependencies is the Thrust library, so the above
automatically pulls in Thrust
by means of a dependency on the
rmm::Thrust
target. By default it uses the standard configuration of
Thrust. If you want to customize it, you can set the variables
THRUST_HOST_SYSTEM
and THRUST_DEVICE_SYSTEM
; see
Thrust's CMake documentation.
The first goal of RMM is to provide a common interface for device and host memory allocation. This allows both users and implementers of custom allocation logic to program to a single interface.
To this end, RMM defines two abstract interface classes:
rmm::mr::device_memory_resource
for device memory allocationrmm::mr::host_memory_resource
for host memory allocation
These classes are based on the
std::pmr::memory_resource
interface
class introduced in C++17 for polymorphic memory allocation.
rmm::mr::device_memory_resource
is the base class that defines the interface for allocating and
freeing device memory.
It has two key functions:
-
void* device_memory_resource::allocate(std::size_t bytes, cuda_stream_view s)
- Returns a pointer to an allocation of at least
bytes
bytes.
- Returns a pointer to an allocation of at least
-
void device_memory_resource::deallocate(void* p, std::size_t bytes, cuda_stream_view s)
- Reclaims a previous allocation of size
bytes
pointed to byp
. p
must have been returned by a previous call toallocate(bytes)
, otherwise behavior is undefined
- Reclaims a previous allocation of size
It is up to a derived class to provide implementations of these functions. See
available resources for example device_memory_resource
derived classes.
Unlike std::pmr::memory_resource
, rmm::mr::device_memory_resource
does not allow specifying an
alignment argument. All allocations are required to be aligned to at least 256B. Furthermore,
device_memory_resource
adds an additional cuda_stream_view
argument to allow specifying the stream
on which to perform the (de)allocation.
rmm::cuda_stream_view
is a simple non-owning wrapper around a CUDA cudaStream_t
. This wrapper's
purpose is to provide strong type safety for stream types. (cudaStream_t
is an alias for a pointer,
which can lead to ambiguity in APIs when it is assigned 0
.) All RMM stream-ordered APIs take a
rmm::cuda_stream_view
argument.
rmm::cuda_stream
is a simple owning wrapper around a CUDA cudaStream_t
. This class provides
RAII semantics (constructor creates the CUDA stream, destructor destroys it). An rmm::cuda_stream
can never represent the CUDA default stream or per-thread default stream; it only ever represents
a single non-default stream. rmm::cuda_stream
cannot be copied, but can be moved.
rmm::cuda_stream_pool
provides fast access to a pool of CUDA streams. This class can be used to
create a set of cuda_stream
objects whose lifetime is equal to the cuda_stream_pool
. Using the
stream pool can be faster than creating the streams on the fly. The size of the pool is configurable.
Depending on this size, multiple calls to cuda_stream_pool::get_stream()
may return instances of
rmm::cuda_stream_view
that represent identical CUDA streams.
All current device memory resources are thread safe unless documented otherwise. More specifically,
calls to memory resource allocate()
and deallocate()
methods are safe with respect to calls to
either of these functions from other threads. They are not thread safe with respect to
construction and destruction of the memory resource object.
Note that a class thread_safe_resource_adapter
is provided which can be used to adapt a memory
resource that is not thread safe to be thread safe (as described above). This adapter is not needed
with any current RMM device memory resources.
rmm::mr::device_memory_resource
is a base class that provides stream-ordered memory allocation.
This allows optimizations such as re-using memory deallocated on the same stream without the
overhead of synchronization.
A call to device_memory_resource::allocate(bytes, stream_a)
returns a pointer that is valid to use
on stream_a
. Using the memory on a different stream (say stream_b
) is Undefined Behavior unless
the two streams are first synchronized, for example by using cudaStreamSynchronize(stream_a)
or by
recording a CUDA event on stream_a
and then calling cudaStreamWaitEvent(stream_b, event)
.
The stream specified to device_memory_resource::deallocate
should be a stream on which it is valid
to use the deallocated memory immediately for another allocation. Typically this is the stream
on which the allocation was last used before the call to deallocate
. The passed stream may be
used internally by a device_memory_resource
for managing available memory with minimal
synchronization, and it may also be synchronized at a later time, for example using a call to
cudaStreamSynchronize()
.
For this reason, it is Undefined Behavior to destroy a CUDA stream that is passed to
device_memory_resource::deallocate
. If the stream on which the allocation was last used has been
destroyed before calling deallocate
or it is known that it will be destroyed, it is likely better
to synchronize the stream (before destroying it) and then pass a different stream to deallocate
(e.g. the default stream).
Note that device memory data structures such as rmm::device_buffer
and rmm::device_uvector
follow these stream-ordered memory allocation semantics and rules.
For further information about stream-ordered memory allocation semantics, read Using the NVIDIA CUDA Stream-Ordered Memory Allocator on the NVIDIA Developer Blog.
RMM provides several device_memory_resource
derived classes to satisfy various user requirements.
For more detailed information about these resources, see their respective documentation.
Allocates and frees device memory using cudaMalloc
and cudaFree
.
Allocates and frees device memory using cudaMallocManaged
and cudaFree
.
Note that managed_memory_resource
cannot be used with NVIDIA Virtual GPU Software (vGPU, for use
with virtual machines or hypervisors) because NVIDIA CUDA Unified Memory is not supported by
NVIDIA vGPU.
A coalescing, best-fit pool sub-allocator.
A memory resource that can only allocate a single fixed size. Average allocation and deallocation cost is constant.
Configurable to use multiple upstream memory resources for allocations that fall within different
bin sizes. Often configured with multiple bins backed by fixed_size_memory_resource
s and a single
pool_memory_resource
for allocations larger than the largest bin size.
RMM users commonly need to configure a device_memory_resource
object to use for all allocations
where another resource has not explicitly been provided. A common example is configuring a
pool_memory_resource
to use for all allocations to get fast dynamic allocation.
To enable this use case, RMM provides the concept of a "default" device_memory_resource
. This
resource is used when another is not explicitly provided.
Accessing and modifying the default resource is done through two functions:
-
device_memory_resource* get_current_device_resource()
- Returns a pointer to the default resource for the current CUDA device.
- The initial default memory resource is an instance of
cuda_memory_resource
. - This function is thread safe with respect to concurrent calls to it and
set_current_device_resource()
. - For more explicit control, you can use
get_per_device_resource()
, which takes a device ID.
-
device_memory_resource* set_current_device_resource(device_memory_resource* new_mr)
- Updates the default memory resource pointer for the current CUDA device to
new_mr
- Returns the previous default resource pointer
- If
new_mr
isnullptr
, then resets the default resource tocuda_memory_resource
- This function is thread safe with respect to concurrent calls to it and
get_current_device_resource()
- For more explicit control, you can use
set_per_device_resource()
, which takes a device ID.
- Updates the default memory resource pointer for the current CUDA device to
rmm::mr::cuda_memory_resource cuda_mr;
// Construct a resource that uses a coalescing best-fit pool allocator
// With the pool initially half of available device memory
auto initial_size = rmm::percent_of_free_device_memory(50);
rmm::mr::pool_memory_resource<rmm::mr::cuda_memory_resource> pool_mr{&cuda_mr, initial_size};
rmm::mr::set_current_device_resource(&pool_mr); // Updates the current device resource pointer to `pool_mr`
rmm::mr::device_memory_resource* mr = rmm::mr::get_current_device_resource(); // Points to `pool_mr`
A device_memory_resource
should only be used when the active CUDA device is the same device
that was active when the device_memory_resource
was created. Otherwise behavior is undefined.
If a device_memory_resource
is used with a stream associated with a different CUDA device than the
device for which the memory resource was created, behavior is undefined.
Creating a device_memory_resource
for each device requires care to set the current device before
creating each resource, and to maintain the lifetime of the resources as long as they are set as
per-device resources. Here is an example loop that creates unique_ptr
s to pool_memory_resource
objects for each device and sets them as the per-device resource for that device.
using pool_mr = rmm::mr::pool_memory_resource<rmm::mr::cuda_memory_resource>;
std::vector<unique_ptr<pool_mr>> per_device_pools;
for(int i = 0; i < N; ++i) {
cudaSetDevice(i); // set device i before creating MR
// Use a vector of unique_ptr to maintain the lifetime of the MRs
// Note: for brevity, omitting creation of upstream and computing initial_size
per_device_pools.push_back(std::make_unique<pool_mr>(upstream, initial_size));
// Set the per-device resource for device i
set_per_device_resource(cuda_device_id{i}, &per_device_pools.back());
}
Note that the CUDA device that is current when creating a device_memory_resource
must also be
current any time that device_memory_resource
is used to deallocate memory, including in a
destructor. This affects RAII classes like rmm::device_buffer
and rmm::device_uvector
. Here's an
(incorrect) example that assumes the above example loop has been run to create a
pool_memory_resource
for each device. A correct example adds a call to cudaSetDevice(0)
on the
line of the error comment.
{
RMM_CUDA_TRY(cudaSetDevice(0));
rmm::device_buffer buf_a(16);
{
RMM_CUDA_TRY(cudaSetDevice(1));
rmm::device_buffer buf_b(16);
}
// Error: when buf_a is destroyed, the current device must be 0, but it is 1
}
C++ interfaces commonly allow customizable memory allocation through an Allocator
object.
RMM provides several Allocator
and Allocator
-like classes.
A stream-ordered allocator similar to std::pmr::polymorphic_allocator
.
Unlike the standard C++ Allocator
interface, the allocate
and deallocate
functions take a cuda_stream_view
indicating the stream on which the (de)allocation occurs.
stream_allocator_adaptor
can be used to adapt a stream-ordered allocator to present a standard Allocator
interface to consumers that may not be designed to work with a stream-ordered interface.
Example:
rmm::cuda_stream stream;
rmm::mr::polymorphic_allocator<int> stream_alloc;
// Constructs an adaptor that forwards all (de)allocations to `stream_alloc` on `stream`.
auto adapted = rmm::mr::make_stream_allocator_adaptor(stream_alloc, stream);
// Allocates 100 bytes using `stream_alloc` on `stream`
auto p = adapted.allocate(100);
...
// Deallocates using `stream_alloc` on `stream`
adapted.deallocate(p,100);
thrust_allocator
is a device memory allocator that uses the strongly typed thrust::device_ptr
, making it usable with containers like thrust::device_vector
.
See below for more information on using RMM with Thrust.
An untyped, uninitialized RAII class for stream ordered device memory allocation.
cuda_stream_view s{...};
// Allocates at least 100 bytes on stream `s` using the *default* resource
rmm::device_buffer b{100,s};
void* p = b.data(); // Raw, untyped pointer to underlying device memory
kernel<<<..., s.value()>>>(b.data()); // `b` is only safe to use on `s`
rmm::mr::device_memory_resource * mr = new my_custom_resource{...};
// Allocates at least 100 bytes on stream `s` using the resource `mr`
rmm::device_buffer b2{100, s, mr};
A typed, uninitialized RAII class for allocation of a contiguous set of elements in device memory.
Similar to a thrust::device_vector
, but as an optimization, does not default initialize the
contained elements. This optimization restricts the types T
to trivially copyable types.
cuda_stream_view s{...};
// Allocates uninitialized storage for 100 `int32_t` elements on stream `s` using the
// default resource
rmm::device_uvector<int32_t> v(100, s);
// Initializes the elements to 0
thrust::uninitialized_fill(thrust::cuda::par.on(s.value()), v.begin(), v.end(), int32_t{0});
rmm::mr::device_memory_resource * mr = new my_custom_resource{...};
// Allocates uninitialized storage for 100 `int32_t` elements on stream `s` using the resource `mr`
rmm::device_uvector<int32_t> v2{100, s, mr};
A typed, RAII class for allocation of a single element in device memory.
This is similar to a device_uvector
with a single element, but provides convenience functions like
modifying the value in device memory from the host, or retrieving the value from device to host.
cuda_stream_view s{...};
// Allocates uninitialized storage for a single `int32_t` in device memory
rmm::device_scalar<int32_t> a{s};
a.set_value(42, s); // Updates the value in device memory to `42` on stream `s`
kernel<<<...,s.value()>>>(a.data()); // Pass raw pointer to underlying element in device memory
int32_t v = a.value(s); // Retrieves the value from device to host on stream `s`
rmm::mr::host_memory_resource
is the base class that defines the interface for allocating and
freeing host memory.
Similar to device_memory_resource
, it has two key functions for (de)allocation:
-
void* host_memory_resource::allocate(std::size_t bytes, std::size_t alignment)
- Returns a pointer to an allocation of at least
bytes
bytes aligned to the specifiedalignment
- Returns a pointer to an allocation of at least
-
void host_memory_resource::deallocate(void* p, std::size_t bytes, std::size_t alignment)
- Reclaims a previous allocation of size
bytes
pointed to byp
.
- Reclaims a previous allocation of size
Unlike device_memory_resource
, the host_memory_resource
interface and behavior is identical to
std::pmr::memory_resource
.
Uses the global operator new
and operator delete
to allocate host memory.
Allocates "pinned" host memory using cuda(Malloc/Free)Host
.
RMM does not currently provide any data structures that interface with host_memory_resource
.
In the future, RMM will provide a similar host-side structure like device_buffer
and an allocator
that can be used with STL containers.
RAPIDS and other CUDA libraries make heavy use of Thrust. Thrust uses CUDA device memory in two situations:
- As the backing store for
thrust::device_vector
, and - As temporary storage inside some algorithms, such as
thrust::sort
.
RMM provides rmm::mr::thrust_allocator
as a conforming Thrust allocator that uses
device_memory_resource
s.
To instruct a Thrust algorithm to use rmm::mr::thrust_allocator
to allocate temporary storage, you
can use the custom Thrust CUDA device execution policy: rmm::exec_policy(stream)
.
thrust::sort(rmm::exec_policy(stream, ...);
The first stream
argument is the stream
to use for rmm::mr::thrust_allocator
.
The second stream
argument is what should be used to execute the Thrust algorithm.
These two arguments must be identical.
RMM includes two forms of logging. Memory event logging and debug logging.
Memory event logging writes details of every allocation or deallocation to a CSV (comma-separated
value) file. In C++, Memory Event Logging is enabled by using the logging_resource_adaptor
as a
wrapper around any other device_memory_resource
object.
Each row in the log represents either an allocation or a deallocation. The columns of the file are "Thread, Time, Action, Pointer, Size, Stream".
The CSV output files of the logging_resource_adaptor
can be used as input to REPLAY_BENCHMARK
,
which is available when building RMM from source, in the gbenchmarks
folder in the build directory.
This log replayer can be useful for profiling and debugging allocator issues.
The following C++ example creates a logging version of a cuda_memory_resource
that outputs the log
to the file "logs/test1.csv".
std::string filename{"logs/test1.csv"};
rmm::mr::cuda_memory_resource upstream;
rmm::mr::logging_resource_adaptor<rmm::mr::cuda_memory_resource> log_mr{&upstream, filename};
If a file name is not specified, the environment variable RMM_LOG_FILE
is queried for the file
name. If RMM_LOG_FILE
is not set, then an exception is thrown by the logging_resource_adaptor
constructor.
In Python, memory event logging is enabled when the logging
parameter of rmm.reinitialize()
is
set to True
. The log file name can be set using the log_file_name
parameter. See
help(rmm.reinitialize)
for full details.
RMM includes a debug logger which can be enabled to log trace and debug information to a file. This
information can show when errors occur, when additional memory is allocated from upstream resources,
etc. The default log file is rmm_log.txt
in the current working directory, but the environment
variable RMM_DEBUG_LOG_FILE
can be set to specify the path and file name.
There is a CMake configuration variable RMM_LOGGING_LEVEL
, which can be set to enable compilation
of more detailed logging. The default is INFO
. Available levels are TRACE
, DEBUG
, INFO
,
WARN
, ERROR
, CRITICAL
and OFF
.
The log relies on the spdlog library.
Note that to see logging below the INFO
level, the application must also set the logging level at
run time. C++ applications must must call rmm::logger().set_level()
, for example to enable all
levels of logging down to TRACE
, call rmm::logger().set_level(spdlog::level::trace)
(and compile
librmm with -DRMM_LOGGING_LEVEL=TRACE
). Python applications must call rmm.set_logging_level()
,
for example to enable all levels of logging down to TRACE
, call rmm.set_logging_level("trace")
(and compile the RMM Python module with -DRMM_LOGGING_LEVEL=TRACE
).
Note that debug logging is different from the CSV memory allocation logging provided by
rmm::mr::logging_resource_adapter
. The latter is for logging a history of allocation /
deallocation actions which can be useful for replay with RMM's replay benchmark.
Memory allocations taken from a memory resource that allocates a pool of memory (such as
pool_memory_resource
and arena_memory_resource
) are part of the same low-level CUDA memory
allocation. Therefore, out-of-bounds or misaligned accesses to these allocations are not likely to
be detected by CUDA tools such as
CUDA Compute Sanitizer memcheck.
Exceptions to this are cuda_memory_resource
, which wraps cudaMalloc
, and
cuda_async_memory_resource
, which uses cudaMallocAsync
with CUDA's built-in memory pool
functionality (CUDA 11.2 or later required). Illegal memory accesses to memory allocated by these
resources are detectable with Compute Sanitizer Memcheck.
It may be possible in the future to add support for memory bounds checking with other memory resources using NVTX APIs.
There are two ways to use RMM in Python code:
- Using the
rmm.DeviceBuffer
API to explicitly create and manage device memory allocations - Transparently via external libraries such as CuPy and Numba
RMM provides a MemoryResource
abstraction to control how device
memory is allocated in both the above uses.
A DeviceBuffer represents an untyped, uninitialized device memory allocation. DeviceBuffers can be created by providing the size of the allocation in bytes:
>>> import rmm
>>> buf = rmm.DeviceBuffer(size=100)
The size of the allocation and the memory address associated with it
can be accessed via the .size
and .ptr
attributes respectively:
>>> buf.size
100
>>> buf.ptr
140202544726016
DeviceBuffers can also be created by copying data from host memory:
>>> import rmm
>>> import numpy as np
>>> a = np.array([1, 2, 3], dtype='float64')
>>> buf = rmm.DeviceBuffer.to_device(a.tobytes())
>>> buf.size
24
Conversely, the data underlying a DeviceBuffer can be copied to the host:
>>> np.frombuffer(buf.tobytes())
array([1., 2., 3.])
MemoryResource
objects are used to configure how device memory allocations are made by
RMM.
By default if a MemoryResource
is not set explicitly, RMM uses the CudaMemoryResource
, which
uses cudaMalloc
for allocating device memory.
rmm.reinitialize()
provides an easy way to initialize RMM with specific memory resource options
across multiple devices. See help(rmm.reinitialize)
for full details.
For lower-level control, the rmm.mr.set_current_device_resource()
function can be
used to set a different MemoryResource for the current CUDA device. For
example, enabling the ManagedMemoryResource
tells RMM to use
cudaMallocManaged
instead of cudaMalloc
for allocating memory:
>>> import rmm
>>> rmm.mr.set_current_device_resource(rmm.mr.ManagedMemoryResource())
⚠️ The default resource must be set for any device before allocating any device memory on that device. Setting or changing the resource after device allocations have been made can lead to unexpected behaviour or crashes. See Multiple Devices
As another example, PoolMemoryResource
allows you to allocate a
large "pool" of device memory up-front. Subsequent allocations will
draw from this pool of already allocated memory. The example
below shows how to construct a PoolMemoryResource with an initial size
of 1 GiB and a maximum size of 4 GiB. The pool uses
CudaMemoryResource
as its underlying ("upstream") memory resource:
>>> import rmm
>>> pool = rmm.mr.PoolMemoryResource(
... rmm.mr.CudaMemoryResource(),
... initial_pool_size=2**30,
... maximum_pool_size=2**32
... )
>>> rmm.mr.set_current_device_resource(pool)
Other MemoryResources include:
FixedSizeMemoryResource
for allocating fixed blocks of memoryBinningMemoryResource
for allocating blocks within specified "bin" sizes from different memory resources
MemoryResources are highly configurable and can be composed together in different ways.
See help(rmm.mr)
for more information.
You can configure CuPy to use RMM for memory
allocations by setting the CuPy CUDA allocator to
rmm_cupy_allocator
:
>>> from rmm.allocators.cupy import rmm_cupy_allocator
>>> import cupy
>>> cupy.cuda.set_allocator(rmm_cupy_allocator)
Note: This only configures CuPy to use the current RMM resource for allocations. It does not initialize nor change the current resource, e.g., enabling a memory pool. See here for more information on changing the current memory resource.
You can configure Numba to use RMM for memory allocations using the Numba EMM Plugin.
This can be done in two ways:
- Setting the environment variable
NUMBA_CUDA_MEMORY_MANAGER
:
$ NUMBA_CUDA_MEMORY_MANAGER=rmm.allocators.numba python (args)
- Using the
set_memory_manager()
function provided by Numba:
>>> from numba import cuda
>>> from rmm.allocators.numba import RMMNumbaManager
>>> cuda.set_memory_manager(RMMNumbaManager)
Note: This only configures Numba to use the current RMM resource for allocations. It does not initialize nor change the current resource, e.g., enabling a memory pool. See here for more information on changing the current memory resource.
PyTorch can use RMM for memory allocation. For example, to configure PyTorch to use an RMM-managed pool:
import rmm
from rmm.allocators.torch import rmm_torch_allocator
import torch
rmm.reinitialize(pool_allocator=True)
torch.cuda.memory.change_current_allocator(rmm_torch_allocator)
PyTorch and RMM will now share the same memory pool.
You can, of course, use a custom memory resource with PyTorch as well:
import rmm
from rmm.allocators.torch import rmm_torch_allocator
import torch
# note that you can configure PyTorch to use RMM either before or
# after changing RMM's memory resource. PyTorch will use whatever
# memory resource is configured to be the "current" memory resource at
# the time of allocation.
torch.cuda.change_current_allocator(rmm_torch_allocator)
# configure RMM to use a managed memory resource, wrapped with a
# statistics resource adaptor that can report information about the
# amount of memory allocated:
mr = rmm.mr.StatisticsResourceAdaptor(rmm.mr.ManagedMemoryResource())
rmm.mr.set_current_device_resource(mr)
x = torch.tensor([1, 2]).cuda()
# the memory resource reports information about PyTorch allocations:
mr.allocation_counts
Out[6]:
{'current_bytes': 16,
'current_count': 1,
'peak_bytes': 16,
'peak_count': 1,
'total_bytes': 16,
'total_count': 1}