I've just found that PyTorch docs expose something that is called Torch Scripts. However, I do not know:
- When they should be used?
- How they should be used?
- What are their benefits?
Torch Script is a way to create serializable and optimizable models from PyTorch code. Any code written in Torch Script can be saved from your Python process and loaded in a process where there is no Python dependency.
The above quote is actually true both of scripting and tracing. So
Regarding Torch Script specifically, in comparison to tracing, it is a subset of Python, specified in detail here, which, when adhered to, can be compiled by PyTorch. It is more laborious to write Torch Script modules instead of tracing regular
nn.Module subclasses, but it allows for some extra features over tracing, most notably flow control like
if statements or
for loops. Tracing treats such flow control as "constant" - in other words, if you have an
if model.training clause in your module and trace it with
training=True, it will always behave this way, even if you change the
training variable to
False later on.
To answer your first question, you need to use
jit if you want to deploy your models outside Python and otherwise you should use
jit if you want to gain some execution performance at the price of extra development effort (as not every model can be straightforwardly made compliant with
jit). In particular, you should use Torch Script if your code cannot be
jited with tracing alone because it relies on some features such as
if statements. For maximum ergonomy, you probably want to mix the two on a case-by-case basis.
Finally, for how they should be used, please refer to all the documentation and tutorial links.