4 Commits

Author SHA1 Message Date
Mircea Trofin
edf8e3ea5e [NFC][mlgo]Make the test model generator inlining-specific
When looking at building the generator for regalloc, we realized we'd
need quite a bit of custom logic, and that perhaps it'd be easier to
just have each usecase (each kind of mlgo policy) have it's own
stand-alone test generator.

This patch just consolidates the old `config.py` and
`generate_mock_model.py` into one file, and does away with
subdirectories under Analysis/models.
2021-12-22 13:38:45 -08:00
Jacob Hegna
7c8a507272 Replace python3 with %python in ML inlining tests.
Differential Revision: https://reviews.llvm.org/D104818
2021-06-23 21:14:54 +00:00
Jacob Hegna
f86d1f99b3 Remove ML inlining model artifacts.
They are not conducive to being stored in git. Instead, we autogenerate
mock model artifacts for use in tests. Production models can be
specified with the cmake flag LLVM_INLINER_MODEL_PATH.

LLVM_INLINER_MODEL_PATH has two sentinel values:
 - download, which will download the most recent compatible model.
 - autogenerate, which will autogenerate a "fake" model for testing the
 model uptake infrastructure.

Differential Revision: https://reviews.llvm.org/D104251
2021-06-21 17:38:09 +00:00
Mircea Trofin
70f8d0ac8a [llvm] Development-mode InlineAdvisor
Summary:
This is the InlineAdvisor used in 'development' mode. It enables two
scenarios:

 - loading models via a command-line parameter, thus allowing for rapid
 training iteration, where models can be used for the next exploration
 phase without requiring recompiling the compiler. This trades off some
 compilation speed for the added flexibility.

 - collecting training logs, in the form of tensorflow.SequenceExample
 protobufs. We generate these as textual protobufs, which simplifies
 generation and testing. The protobufs may then be readily consumed by a
 tensorflow-based training algorithm.

To speed up training, training logs may also be collected from the
'default' training policy. In that case, this InlineAdvisor does not
use a model.

RFC: http://lists.llvm.org/pipermail/llvm-dev/2020-April/140763.html

Reviewers: jdoerfert, davidxl

Subscribers: mgorny, hiraditya, llvm-commits

Tags: #llvm

Differential Revision: https://reviews.llvm.org/D83733
2020-07-20 11:01:56 -07:00