I am have implemented a rather complex new Op in Tensorflow with a GPU CUDA kernel. This Op requires a lot of dynamic memory allocation of variables which are not tensors and are deallocated after the op is done, more specifically it involves using a hash table.

Right now I am using cudaMalloc() and cudaFree() but I have noticed Tensorflow has its own type called Eigen::GPUDevice which has the ability to allocate and deallocate memory on the GPU.

My questions:

  1. Is it best practice to use Eigen::GPUDevice to manage GPU memory;
  2. By using Eigen::GPUDevice instead of the CUDA API I am "automatically" enabling multi-GPU support since different GPUDevices can be passed to the Op;
  3. Should I extend this idea to the CPU kernel and see if there is a CPUDevice type which also manages the memory instead of using C++ syntax (i.e. auto var = new int[100]; delete[] var)

2 Answers 2


The is no direct public guideline for this issue. I usually just let the TensorFlow allocate this information by

template<typename Device, typename Dtype>
class MyOp: public OpKernel {
  explicit MyOp(OpKernelConstruction *context) :
    // ...

  void Compute(OpKernelContext *context) override
    Tensor* tmp_var = nullptr;
    Tensor* output = nullptr;

    TensorShape some_shape, some_shape2;

    // temparily use this space
    OP_REQUIRES_OK(ctx, ctx->allocate_temp(DT_FLOAT, some_shape, &tmp_var));
    // allocate memory for output tensor
    OP_REQUIRES_OK(ctx, ctx->allocate_output(0, some_shape2, &output));
  1. whatever needs memory, should be allocated by the TensorFlow context and not by custom cudaMalloc or new type[num] calls.
  2. the context should provide the information for the Allocator
  3. see below

Consider, for the sake of simplicity just adding two matrices (full example). TensorFlow-Operations usually contain the following structure:

Op description having REGISTER_OP, which is responsible for shape-checking, and setting the output shape (example)

OpKernel responsible for allocating memory, getting pointer to the inputs and setup stuff, (see above or this )

Functor for the implementation itself, like

Tensor* output = nullptr;
Tensor* tmp_var = nullptr;
OP_REQUIRES_OK(ctx, ctx->allocate_output(0, output_shape, &output));
OP_REQUIRES_OK(ctx, ctx->allocate_temp(0, some_shape, &tmp_var));
// the function does not need to care about the memory allocation as everything is already setup at this point
::tensorflow::functor::MyFunctor<Device, Dtype>()(ctx, inputA, inputB, tmp_var, output);

You are just left by implementing

    // gpu version
    template <typename Dtype>
    struct MyFunctor<GPUDevice, Dtype> {
      void operator ()(::tensorflow::OpKernelContext* ctx,...)

    // cpu version
    template <typename Dtype>
    struct MyFunctor<CPUDevice, Dtype> {
      void operator ()(::tensorflow::OpKernelContext* ctx,...)


  • allocate_persistent: use this if you need your data between Op invocations like one-time index structures.[example]
  • allocate_temp just tmp memory which will be not retained at the end of the Compute method lifetime. [example]

But I highly recommend reading the comment in the source-code here and then decided depending on your use case.

  • Thanks for the answer and all the examples. Can you comment on why you use allocate_temp() instead of allocate_persistent() as suggested by mrry's answer? Feb 5, 2018 at 20:09
  • 1
    It depends on your use case and if you are willing to free memory. See the comments in the TensorFlow repo. I suggest to use allocate_output in the kernel if the Op is stateless (which most Ops are). GPU memory is a rare resource (for most people), so I usually free my stuff.
    – Patwie
    Feb 6, 2018 at 12:42
  • Sorry to bother again, but I have some followup questions that you might be able to help with. 1. How do you go about allocating a user defined C++ types in this manner? For example an array of structs. 2. How about static memory e.g. int a[3] = {1,2,3}, should I be concerned about this? Feb 7, 2018 at 15:00
  • 1
    I do not allocate structs this way. But I would probably serialize the stuff into byte-arrays. The last example is placed on the stack, so there should be usually no problems.
    – Patwie
    Feb 7, 2018 at 15:54

The best practice is to use the OpKernelContext::allocate_persistent() method to allocate memory, in the form of a tensorflow::Tensor, that outlives a single call to OpKernel::Compute(). It uses the appropriate Allocator* for the device, so if the kernel runs on a GPU device, it will allocate GPU memory for that particular device, and if it runs on a CPU device it will allocate CPU memory.

  • Thanks for the answer. Perhaps I am over-reaching, but can you give a brief comment on static memory allocation (compile time)? For example, declaration of static shape arrays inside CUDA kernels, will this cause issues in a multi-GPU scenario? Feb 5, 2018 at 20:07

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