Пример #1
0
 def testPopPushFusionPrettyPrint(self):
     # Testing two things: That pop-push fusion does the expected thing, and that
     # push-skipping PrimOps print with exclamation marks as expected.  This test
     # is likely to be brittle, and may want to be rearranged later.
     prog = test_programs.fibonacci_program()
     fused = stack.fuse_pop_push(prog)
     self.verify_program_pretty_print(fib_fused_pretty, fused)
Пример #2
0
    def program_lowered(self, main, sig=None, backend=None):
        """Constructs a lowered `instructions.Program` for this `Context`.

    This constructs the program with `self.program(main)`, and the performs type
    inference, optimization, and lowering, to emit a result that can be executed
    (or staged) by the auto-batching VM.

    The point of having this as a method in its own right is that it caches the
    compilation on the types of the arguments.

    If either `sig` or `backend` are omitted or `None`, type inference is
    skipped.  The result is not executable, but it can be enlightening to
    inspect.

    Args:
      main: Python string name of the function that should be the entry point.
      sig: A `list` of (patterns of) `instructions.TensorType` aligned with
        the formal parameters to `main`.
      backend: Backend implementation.

    Returns:
      prog: An `instructions.Program` representing the batched computation
        defined by all the functions decorated with `batch` in this `Context` so
        far.  Suitable for execution or staging on real data by the
        auto-batching VM.
    """
        module = self.module()
        prog = module.program(main)
        if self._lowering_cache is not None:
            key, result = self._lowering_cache
            if key == (module, main, sig, backend):
                return result
            else:
                # Clear the module and compile caches as well, because of b/119122199
                self._module = None
                self._compile_cache = None
                module = self.module()
                prog = module.program(main)
        if sig is not None and backend is not None:
            typed = ab_type_inference.infer_types_from_signature(
                prog, sig, backend)
        else:
            typed = prog
        alloc = allocation_strategy.optimize(typed)
        lowered = lowering.lower_function_calls(alloc)
        result = stack.fuse_pop_push(lowered)
        self._lowering_cache = ((module, main, sig, backend), result)
        return result