GPU vs CPU is a huge topic of discussion and as @Nicol Bolas points out the question is looking for a general solution where a multitude of factors will impact the result.
When considering performance nothing beats profiling. Humans are notoriously bad at predicting the performance implications of their applications. If during development you notice that you are suddenly GPU bound then you may want to offload some of the work to the CPU. On the other hand if you are CPU bound you may have the option of offloading more work to the GPU even if that work has nothing to do with graphics. More than likely you will want to start off by giving the GPU what you can (especially if it is graphics related anyway) to free up your CPU cycles.
You can read a bit more about profiling GPUs on NVIDIA and AMD developer websites or by searching for GPU profiling tutorials/blog posts such as this.
GPGPU has become a major topic of discussion in the world of parallel programming as GPUs were designed with parallelism in mind. It is also not uncommon to add multiple GPUs to a system using technologies such as SLI to further parallelize the processing. This is one of the principles of @Patashu's comment to favor parallel processing for the GPU. If your interested in learning more you can dig into two of the more popular GPU based parallel programming platforms OpenCL and CUDA.
The topic is also discussed a bit more in the following posts:
It would also be a good idea to read up on the GPU gems series among other publications. You will likely find results others have had with splitting up the workload.