I am getting the "tensorflow:Layer lstm will not use cuDNN kernels since it doesn't meet the criteria. It will use a generic GPU kernel as fallback when running on GPU." warning while training my LSTM model on Apple Silicon M2. The training is just too slow. How can I get the best out of this chip for my task?
PS: (1) I've already installed the
tensorflow-metal packages alongside the
tensorflow-deps package provided in the Apple channel of Conda.
(2) My model is not the deepest one either as it consists of one LSTM layer with 64 units, and one dense layer with 64 units.
(3) My machine's main specifications:
- macOS v13.2.1 (Ventura) (the latest stable one)
- Apple Silicon M2 (8-core CPU, 10-core GPU, and 16-core neural engine)
- 16 GB unified memory