Can you describe the process how I can determine when I should be using Vulkan Compute over SIMD and vice versa? Vulkan Compute have some major advantages when it come to parallelizing large workload significantly larger than SIMD, but at the cost of requiring GPU compatible with Vulkan. Whereas SIMD utilize a set of instructions in CPU to compute a fairly large dataset efficiently and that many modern CPU have different level supports for SIMD operations particularly the AVX2.

Please and thank you.
Determining when to use Vulkan Compute over SIMD (Single Instruction, Multiple Data) and vice versa is based on several factors as follows:

1. Compatibility: Vulkan Compute requires a compatible GPU that supports Vulkan API, while SIMD operations can be supported on modern CPUs with different levels of support for optimizations, such as AVX2.

2. Workload size: Vulkan Compute is suitable for parallelizing large workloads that involve complex calculations and data manipulation, whereas SIMD optimizations are useful for processing a large dataset relatively efficiently.

3. Performance: The performance of Vulkan Compute is significantly better than SIMD operations for large-scale parallel processing. SIMD is generally faster for smaller datasets.

4. Usage: Vulkan Compute is primarily used for advanced graphics rendering and game development, while SIMD optimizations are used for a wide range of applications such as data analysis, multimedia processing, machine learning, and scientific simulations.

5. Development and coding: Vulkan Compute requires specialized coding skills and expertise in GPU programming, while SIMD optimizations can be implemented using standard CPU programming languages like C++, Python, and Java.

In summary, Vulkan Compute is a powerful solution for large-scale parallel processing on compatible GPUs. SIMD optimizations, on the other hand, are suitable for smaller datasets and can be used on modern CPUs to accelerate calculations and data manipulation. As such, choosing which approach to use largely depends on the size and complexity of the workload, the performance requirements, and compatibility considerations.