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rocm-systems/docs/markdown/hip_bugs.md
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pensun 79978182f9 Add pseudo code example for hip_bugs.md
Change-Id: Ia2af8e6165faeb3fbb81428e20d4dc5b19b2fa9e
2017-02-08 16:20:01 -06:00

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# HIP Bugs
<!-- toc -->
- [Errors related to undefined reference to `__hcLaunchKernel__***__grid_launch_parm**](#errors-related-to-undefined-reference-to-hclaunchkernel__grid_launch_parm)
- [Application hangs after a hipLaunchKernel call](#what-if-i-see-application-hangs-after-a-hiplaunchkernel-call)
<!-- tocstop -->
### Errors related to undefined reference to `__hcLaunchKernel__***__grid_launch_parm**
Some common code practices may lead to hipcc generating a error with the form :
undefined reference to `__hcLaunchKernel__ZN15vecAddNamespace6vecAddIidEEv16grid_launch_parmPT0_S3_S3_T_
To workaround, try:
- Avoid calling hcLaunchKernel from a function with the __host__ attribute
__host__ MyFunc(…) {
hipLaunchKernel(myKernel, …)
- Avoid use of static with kernel definition:
static __global__ MyKernel
- Avoid defining kernels in anonymous namespace
namespace {
__global__ MyKernel …
- Avoid calling member functions
### What if I see application hangs after a hipLaunchKernel call?
If hipLaunchKernel takes parameters that request explicitly memcpy, then it will cause application hang.
Reason is that the hipLaunchKernel macro locks the stream.
If kernel paramters are actually function calls which invoke other hip apis (i.e. memcpy) to the same stream, then deadlock occurs.
To workaround, try:
Move the function calls so they occur outside the hipLaunchKernel macro, store results in temps, then use the tems inside the kernel.
```
// Example pseudo code causing system hang:
// "bottom[0]->gpu_data()" calls hipMemcpy() implicitly and using the same stream, cause deadlock condition.
hipLaunchKernel(HIP_KERNEL_NAME(LRNComputeDiff),dim3(CAFFE_GET_BLOCKS(n_threads)), dim3(CAFFE_HIP_NUM_THREADS), 0, 0, n_threads,
bottom[0]->gpu_data());
// Move "gpu_data()" ouside of hipLaunchKernel to avoid hang.
auto bot_gpu_data = bottom[0]->gpu_data();
hipLaunchKernel( LRNComputeDiff, dim3(CAFFE_GET_BLOCKS(n_threads)), dim3(CAFFE_HIP_NUM_THREADS), 0, 0, n_threads,
bot_gpu_data);
```