13 Commits

Author SHA1 Message Date
Kazu Hirata
4f4e2abb1a
[mlir] Migrate away from PointerUnion::{is,get} (NFC) (#122591)
Note that PointerUnion::{is,get} have been soft deprecated in
PointerUnion.h:

  // FIXME: Replace the uses of is(), get() and dyn_cast() with
  //        isa<T>, cast<T> and the llvm::dyn_cast<T>

I'm not touching PointerUnion::dyn_cast for now because it's a bit
complicated; we could blindly migrate it to dyn_cast_if_present, but
we should probably use dyn_cast when the operand is known to be
non-null.
2025-01-11 13:16:43 -08:00
donald chen
4b3f251bad
[mlir] [dataflow] unify semantics of program point (#110344)
The concept of a 'program point' in the original data flow framework is
ambiguous. It can refer to either an operation or a block itself. This
representation has different interpretations in forward and backward
data-flow analysis. In forward data-flow analysis, the program point of
an operation represents the state after the operation, while in backward
data flow analysis, it represents the state before the operation. When
using forward or backward data-flow analysis, it is crucial to carefully
handle this distinction to ensure correctness.

This patch refactors the definition of program point, unifying the
interpretation of program points in both forward and backward data-flow
analysis.

How to integrate this patch?

For dense forward data-flow analysis and other analysis (except dense
backward data-flow analysis), the program point corresponding to the
original operation can be obtained by `getProgramPointAfter(op)`, and
the program point corresponding to the original block can be obtained by
`getProgramPointBefore(block)`.

For dense backward data-flow analysis, the program point corresponding
to the original operation can be obtained by
`getProgramPointBefore(op)`, and the program point corresponding to the
original block can be obtained by `getProgramPointAfter(block)`.

NOTE: If you need to get the lattice of other data-flow analyses in
dense backward data-flow analysis, you should still use the dense
forward data-flow approach. For example, to get the Executable state of
a block in dense backward data-flow analysis and add the dependency of
the current operation, you should write:

``getOrCreateFor<Executable>(getProgramPointBefore(op),
getProgramPointBefore(block))``

In case above, we use getProgramPointBefore(op) because the analysis we
rely on is dense backward data-flow, and we use
getProgramPointBefore(block) because the lattice we query is the result
of a non-dense backward data flow computation.

related dsscussion:
https://discourse.llvm.org/t/rfc-unify-the-semantics-of-program-points/80671/8
corresponding PSA:
https://discourse.llvm.org/t/psa-program-point-semantics-change/81479
2024-10-11 21:59:05 +08:00
donald chen
b6603e1bf1
[mlir] [dataflow] Refactoring the definition of program points in data flow analysis (#105656)
This patch distinguishes between program points and lattice anchors in
data flow analysis, where lattice anchors represent locations where a
lattice can be attached, while program points denote points in program
execution.

Related discussions:
https://discourse.llvm.org/t/rfc-unify-the-semantics-of-program-points/80671/8
2024-08-25 19:21:47 +08:00
Ramkumar Ramachandra
db791b278a
mlir/LogicalResult: move into llvm (#97309)
This patch is part of a project to move the Presburger library into
LLVM.
2024-07-02 10:42:33 +01:00
Mehdi Amini
a5a908654e Apply clang-tidy fixes for misc-include-cleaner in DataFlowFramework.cpp (NFC) 2023-10-28 21:39:30 -07:00
Alex Zinenko
8a918c54bb [mlir] add backward dense dataflow analysis
This is the counterpart to the forward dense dataflow analysis and
integrates into the dataflow framework. The implementation follows the
structure of existing dataflow analyses.

Reviewed By: Mogball, phisiart

Differential Revision: https://reviews.llvm.org/D154713
2023-07-11 16:47:53 +00:00
Zhixun Tan
6a66673765 [mlir][dataflow] Unify dependency management in AnalysisState.
In the MLIR dataflow analysis framework, when an `AnalysisState` is updated, it's dependents are enqueued to be visited.

Currently, there are two ways dependents are managed:

* `AnalysisState::dependents` stores a list of dependents. `DataFlowSolver::propagateIfChanged()` reads this list and enqueues them to the worklist.

* `AnalysisState::onUpdate()` allows custom logic to enqueue more to the worklist. This is called by `DataFlowSolver::propagateIfChanged()`.

This cleanup diff consolidates the two into `AnalysisState::onUpdate()`. This way, `DataFlowSolver` does not need to know the detail about `AnalysisState::dependents`, and the logic of dependency management is entirely handled by `AnalysisState`.

Reviewed By: Mogball

Differential Revision: https://reviews.llvm.org/D154170
2023-07-03 12:20:52 -07:00
Tres Popp
68f58812e3 [mlir] Move casting calls from methods to function calls
The MLIR classes Type/Attribute/Operation/Op/Value support
cast/dyn_cast/isa/dyn_cast_or_null functionality through llvm's doCast
functionality in addition to defining methods with the same name.
This change begins the migration of uses of the method to the
corresponding function call as has been decided as more consistent.

Note that there still exist classes that only define methods directly,
such as AffineExpr, and this does not include work currently to support
a functional cast/isa call.

Context:
- https://mlir.llvm.org/deprecation/ at "Use the free function variants
  for dyn_cast/cast/isa/…"
- Original discussion at https://discourse.llvm.org/t/preferred-casting-style-going-forward/68443

Implementation:
This patch updates all remaining uses of the deprecated functionality in
mlir/. This was done with clang-tidy as described below and further
modifications to GPUBase.td and OpenMPOpsInterfaces.td.

Steps are described per line, as comments are removed by git:
0. Retrieve the change from the following to build clang-tidy with an
   additional check:
   main...tpopp:llvm-project:tidy-cast-check
1. Build clang-tidy
2. Run clang-tidy over your entire codebase while disabling all checks
   and enabling the one relevant one. Run on all header files also.
3. Delete .inc files that were also modified, so the next build rebuilds
   them to a pure state.

```
ninja -C $BUILD_DIR clang-tidy

run-clang-tidy -clang-tidy-binary=$BUILD_DIR/bin/clang-tidy -checks='-*,misc-cast-functions'\
               -header-filter=mlir/ mlir/* -fix

rm -rf $BUILD_DIR/tools/mlir/**/*.inc
```

Differential Revision: https://reviews.llvm.org/D151542
2023-05-26 10:29:55 +02:00
Benjamin Kramer
9fa59e7643 [mlir] Use C++17 structured bindings instead of std::tie where applicable. NFCI 2022-08-09 13:34:17 +02:00
Mogball
ab701975e7 [mlir] Swap integer range inference to the new framework
Integer range inference has been swapped to the new framework. The integer value range lattices automatically updates the corresponding constant value on update.

Depends on D127173

Reviewed By: krzysz00, rriddle

Differential Revision: https://reviews.llvm.org/D128866
2022-07-07 20:28:13 -07:00
Mogball
ead75d9434 (Reland)[mlir] Add a generic data-flow analysis framework
Removes one element of the pointer union to make it work on 32-bit
systems.

This patch introduces a generic data-flow analysis framework to MLIR. The framework implements a fixed-point iteration algorithm and a dependency graph between lattice states and analysis. Lattice states and points are fully extensible to support highly-customizable analyses.

Reviewed By: phisiart, rriddle

Differential Revision: https://reviews.llvm.org/D126751
2022-06-14 21:33:05 +00:00
Frederik Gossen
a6fa12ab3b Revert "[mlir] Add a generic data-flow analysis framework"
This reverts commit 9dea11728340e54e1fde76320b61a559148c8a3e.
The PointerUnion assumes 3 available bits, which is not the case on 32-bit
machines.
2022-06-14 17:14:27 -04:00
Mogball
9dea117283 [mlir] Add a generic data-flow analysis framework
This patch introduces a generic data-flow analysis framework to MLIR. The framework implements a fixed-point iteration algorithm and a dependency graph between lattice states and analysis. Lattice states and points are fully extensible to support highly-customizable analyses.

Reviewed By: phisiart, rriddle

Differential Revision: https://reviews.llvm.org/D126751
2022-06-14 16:54:15 +00:00