Memory Management

Buffers

To avoid passing around raw data pointers with varying and non-obvious lifetime rules, Arrow provides a generic abstraction called arrow::Buffer. A Buffer encapsulates a pointer and data size, and generally also ties its lifetime to that of an underlying provider (in other words, a Buffer should always point to valid memory till its destruction). Buffers are untyped: they simply denote a physical memory area regardless of its intended meaning or interpretation.

Buffers may be allocated by Arrow itself , or by third-party routines. For example, it is possible to pass the data of a Python bytestring as a Arrow buffer, keeping the Python object alive as necessary.

In addition, buffers come in various flavours: mutable or not, resizable or not. Generally, you will hold a mutable buffer when building up a piece of data, then it will be frozen as an immutable container such as an array.

Note

Some buffers may point to non-CPU memory, such as GPU-backed memory provided by a CUDA context. If you’re writing a GPU-aware application, you will need to be careful not to interpret a GPU memory pointer as a CPU-reachable pointer, or vice-versa.

Accessing Buffer Memory

Buffers provide fast access to the underlying memory using the size() and data() accessors (or mutable_data() for writable access to a mutable buffer).

Slicing

It is possible to make zero-copy slices of buffers, to obtain a buffer referring to some contiguous subset of the underlying data. This is done by calling the arrow::SliceBuffer() and arrow::SliceMutableBuffer() functions.

Allocating a Buffer

You can allocate a buffer yourself by calling one of the arrow::AllocateBuffer() or arrow::AllocateResizableBuffer() overloads:

arrow::Result<std::unique_ptr<Buffer>> maybe_buffer = arrow::AllocateBuffer(4096);
if (!maybe_buffer.ok()) {
   // ... handle allocation error
}

std::shared_ptr<arrow::Buffer> buffer = *std::move(maybe_buffer);
uint8_t* buffer_data = buffer->mutable_data();
memcpy(buffer_data, "hello world", 11);

Allocating a buffer this way ensures it is 64-bytes aligned and padded as recommended by the Arrow memory specification.

Building a Buffer

You can also allocate and build a Buffer incrementally, using the arrow::BufferBuilder API:

BufferBuilder builder;
builder.Resize(11);
builder.Append("hello ", 6);
builder.Append("world", 5);

std::shared_ptr<arrow::Buffer> buffer;
if (!builder.Finish(&buffer).ok()) {
   // ... handle buffer allocation error
}

Memory Pools

When allocating a Buffer using the Arrow C++ API, the buffer’s underlying memory is allocated by a arrow::MemoryPool instance. Usually this will be the process-wide default memory pool, but many Arrow APIs allow you to pass another MemoryPool instance for their internal allocations.

Memory pools are used for large long-lived data such as array buffers. Other data, such as small C++ objects and temporary workspaces, usually goes through the regular C++ allocators.

Default Memory Pool

Depending on how Arrow was compiled, the default memory pool may use the standard C malloc allocator, or a jemalloc heap.

STL Integration

If you wish to use a Arrow memory pool to allocate the data of STL containers, you can do so using the arrow::stl::allocator wrapper.

Conversely, you can also use a STL allocator to allocate Arrow memory, using the arrow::stl::STLMemoryPool class. However, this may be less performant, as STL allocators don’t provide a resizing operation.

Devices

Many Arrow applications only access host (CPU) memory. However, in some cases it is desirable to handle on-device memory (such as on-board memory on a GPU) as well as host memory.

Arrow represents the CPU and other devices using the arrow::Device abstraction. The associated class arrow::MemoryManager specifies how to allocate on a given device. Each device has a default memory manager, but additional instances may be constructed (for example, wrapping a custom arrow::MemoryPool the CPU). arrow::MemoryManager instances which specify how to allocate memory on a given device (for example, using a particular arrow::MemoryPool on the CPU).

Device-Agnostic Programming

If you receive a Buffer from third-party code, you can query whether it is CPU-readable by calling its is_cpu() method.

You can also view the Buffer on a given device, in a generic way, by calling arrow::Buffer::View() or arrow::Buffer::ViewOrCopy(). This will be a no-operation if the source and destination devices are identical. Otherwise, a device-dependent mechanism will attempt to construct a memory address for the destination device that gives access to the buffer contents. Actual device-to-device transfer may happen lazily, when reading the buffer contents.

Similarly, if you want to do I/O on a buffer without assuming a CPU-readable buffer, you can call arrow::Buffer::GetReader() and arrow::Buffer::GetWriter().

For example, to get an on-CPU view or copy of an arbitrary buffer, you can simply do:

std::shared_ptr<arrow::Buffer> arbitrary_buffer = ... ;
std::shared_ptr<arrow::Buffer> cpu_buffer = arrow::Buffer::ViewOrCopy(
   arbitrary_buffer, arrow::default_cpu_memory_manager());