Commit Graph

172 Commits

Author SHA1 Message Date
River Riddle 48e9ef4320 [mlir] Give each OpResult its own use list
This revision removes the multi use-list to ensure that each result gets its own. This decision was made by doing some extensive benchmarking of programs that actually use multiple results. This results in a size increase of 1-word per result >1, but the common case of 1-result remains unaffected. A side benefit is that 0-result operations now shrink by 1-word.

Differential Revision: https://reviews.llvm.org/D78701
2020-04-23 16:28:55 -07:00
River Riddle 0359b86d8b [mlir][ODS] Add support for variadic regions.
Summary: This revision adds support for marking the last region as variadic in the ODS region list with the VariadicRegion directive.

Differential Revision: https://reviews.llvm.org/D77455
2020-04-05 01:03:38 -07:00
Kazuaki Ishizaki 5aacce3db2 [mlir] NFC: Fix trivial typo
Differential Revision: https://reviews.llvm.org/D77473
2020-04-05 11:30:30 +09:00
River Riddle 79afdfab9a [mlir] Change the default of `mlir-print-op-on-diagnostic` to true
Summary: It is a very common user trap to think that the location printed along with the diagnostic is the same as the current operation that caused the error. This revision changes the behavior to always print the current operation, except for when diagnostics are being verified. This is achieved by moving the command line flags in IR/ to be options on the MLIRContext.

Differential Revision: https://reviews.llvm.org/D77095
2020-04-03 19:02:51 -07:00
Uday Bondhugula ad4b4acbb0 [MLIR][NFC] drop some unnecessary includes
Drop unnecessary includes

Differential Revision: https://reviews.llvm.org/D76898
2020-03-27 09:17:27 +05:30
River Riddle 153720a0a5 [mlir][NFC] Move the interfaces and traits for side effects out of IR/ to Interfaces/
Summary:
Interfaces/ is the designated directory for these types of interfaces, and also removes the need for including them directly in IR/.

Differential Revision: https://reviews.llvm.org/D75886
2020-03-10 12:45:45 -07:00
River Riddle f8923584da [mlir][SideEffects] Define a set of interfaces and traits for defining side effects
This revision introduces the infrastructure for defining side-effects and attaching them to operations. This infrastructure allows for defining different types of side effects, that don't interact with each other, but use the same internal mechanisms. At the base of this is an interface that allows operations to specify the different effect instances that are exhibited by a specific operation instance. An effect instance is comprised of the following:

* Effect: The specific effect being applied.
  For memory related effects this may be reading from memory, storing to memory, etc.

* Value: A specific value, either operand/result/region argument, the effect pertains to.

* Resource: This is a global entity that represents the domain within which the effect is being applied.

MLIR serves many different abstractions, which cover many different domains. Simple effects are may have very different context, for example writing to an in-memory buffer vs a database. This revision defines uses this infrastructure to define a set of initial MemoryEffects. The are effects that generally correspond to memory of some kind; Allocate, Free, Read, Write.

This set of memory effects will be used in follow revisions to generalize various parts of the compiler, and make others more powerful(e.g. DCE).

This infrastructure was originally proposed here:
https://groups.google.com/a/tensorflow.org/g/mlir/c/v2mNl4vFCUM

Differential Revision: https://reviews.llvm.org/D74439
2020-03-06 14:04:36 -08:00
River Riddle cb1777127c [mlir] Remove successor operands from the Operation class
Summary:
This revision removes all of the functionality related to successor operands on the core Operation class. This greatly simplifies a lot of handling of operands, as well as successors. For example, DialectConversion no longer needs a special "matchAndRewrite" for branching terminator operations.(Note, the existing method was also broken for operations with variadic successors!!)

This also enables terminator operations to define their own relationships with successor arguments, instead of the hardcoded "pass-through" behavior that exists today.

Differential Revision: https://reviews.llvm.org/D75318
2020-03-05 12:53:02 -08:00
River Riddle 621d7cca37 [mlir] Add a new BranchOpInterface to allow for opaquely interfacing with branching terminator operations.
This interface contains the necessary components to provide the same builtin behavior that terminators have. This will be used in future revisions to remove many of the hardcoded constraints placed on successors and successor operands. The interface initially contains three methods:

```c++
// Return a set of values corresponding to the operands for successor 'index', or None if the operands do not correspond to materialized values.
Optional<OperandRange> getSuccessorOperands(unsigned index);

// Return true if this terminator can have it's successor operands erased.
bool canEraseSuccessorOperand();

// Erase the operand of a successor. This is only valid to call if 'canEraseSuccessorOperand' returns true.
void eraseSuccessorOperand(unsigned succIdx, unsigned opIdx);
```

Differential Revision: https://reviews.llvm.org/D75314
2020-03-05 12:50:35 -08:00
River Riddle c0fd5e657e [mlir] Add traits for verifying the number of successors and providing relevant accessors.
This allows for simplifying OpDefGen, as well providing specializing accessors for the different successor counts. This mirrors the existing traits for operands and results.

Differential Revision: https://reviews.llvm.org/D75313
2020-03-05 12:49:59 -08:00
Lei Zhang 35b685270b [mlir] Add a signedness semantics bit to IntegerType
Thus far IntegerType has been signless: a value of IntegerType does
not have a sign intrinsically and it's up to the specific operation
to decide how to interpret those bits. For example, std.addi does
two's complement arithmetic, and std.divis/std.diviu treats the first
bit as a sign.

This design choice was made some time ago when we did't have lots
of dialects and dialects were more rigid. Today we have much more
extensible infrastructure and different dialect may want different
modelling over integer signedness. So while we can say we want
signless integers in the standard dialect, we cannot dictate for
others. Requiring each dialect to model the signedness semantics
with another set of custom types is duplicating the functionality
everywhere, considering the fundamental role integer types play.

This CL extends the IntegerType with a signedness semantics bit.
This gives each dialect an option to opt in signedness semantics
if that's what they want and helps code sharing. The parser is
modified to recognize `si[1-9][0-9]*` and `ui[1-9][0-9]*` as
signed and unsigned integer types, respectively, leaving the
original `i[1-9][0-9]*` to continue to mean no indication over
signedness semantics. All existing dialects are not affected (yet)
as this is a feature to opt in.

More discussions can be found at:

https://groups.google.com/a/tensorflow.org/d/msg/mlir/XmkV8HOPWpo/7O4X0Nb_AQAJ

Differential Revision: https://reviews.llvm.org/D72533
2020-02-21 09:16:54 -05:00
River Riddle aff4ed7326 [mlir][NFC] Update Operation::getResultTypes to use ArrayRef<Type> instead of iterator_range.
Summary: The new internal representation of operation results now allows for accessing the result types to be more efficient. Changing the API to ArrayRef is more efficient and removes the need to explicitly materialize vectors in several places.

Differential Revision: https://reviews.llvm.org/D73429
2020-01-27 19:57:48 -08:00
Mehdi Amini 308571074c Mass update the MLIR license header to mention "Part of the LLVM project"
This is an artifact from merging MLIR into LLVM, the file headers are
now aligned with the rest of the project.
2020-01-26 03:58:30 +00:00
River Riddle 2bdf33cc4c [mlir] NFC: Remove Value::operator* and Value::operator-> now that Value is properly value-typed.
Summary: These were temporary methods used to simplify the transition.

Reviewed By: antiagainst

Differential Revision: https://reviews.llvm.org/D72548
2020-01-11 08:54:39 -08:00
River Riddle fd01d8626c [mlir] Rewrite the internal representation of OpResult to be optimized for memory.
Summary:
This changes the implementation of OpResult to have some of the results be represented inline in Value, via a pointer int pair of Operation*+result number, and the rest being trailing objects on the main operation. The full details of the new representation is detailed in the proposal here:
https://groups.google.com/a/tensorflow.org/g/mlir/c/XXzzKhqqF_0/m/v6bKb08WCgAJ

The only difference between here and the above proposal is that we only steal 2-bits for the Value kind instead of 3. This means that we can only fit 2-results inline instead of 6. This allows for other users to steal the final bit for PointerUnion/etc. If necessary, we can always steal this bit back in the future to save more space if 3-6 results are common enough.

Reviewed By: jpienaar

Differential Revision: https://reviews.llvm.org/D72020
2020-01-02 14:40:09 -08:00
River Riddle 0d6ebb4f0d [mlir] Refactor operation results to use a single use list for all results of the operation.
Summary: A new class is added, IRMultiObjectWithUseList, that allows for representing an IR use list that holds multiple sub values(used in this case for OpResults). This class provides all of the same functionality as the base IRObjectWithUseList, but for specific sub-values. This saves a word per operation result and is a necessary step in optimizing the layout of operation results. For now the use list is placed on the operation itself, so zero-result operations grow by a word. When the work for optimizing layout is finished, this can be moved back to being a trailing object based on memory/runtime benchmarking.

Reviewed By: jpienaar

Differential Revision: https://reviews.llvm.org/D71955
2019-12-30 20:50:07 -08:00
River Riddle f83a8efe87 [mlir] Merge the successor operand count into BlockOperand.
Summary: The successor operand counts are directly tied to block operands anyways, and this simplifies the trailing objects of Operation(i.e. one less computation to perform).

Reviewed By: mehdi_amini

Differential Revision: https://reviews.llvm.org/D71949
2019-12-27 20:35:31 -08:00
River Riddle e62a69561f NFC: Replace ValuePtr with Value and remove it now that Value is value-typed.
ValuePtr was a temporary typedef during the transition to a value-typed Value.

PiperOrigin-RevId: 286945714
2019-12-23 16:36:53 -08:00
River Riddle ab46543ceb Resubmit: ReImplement the Value classes as value-typed objects wrapping an internal pointer storage.
This will enable future commits to reimplement the internal implementation of OpResult without needing to change all of the existing users. This is part of a chain of commits optimizing the size of operation results.

PiperOrigin-RevId: 286930047
2019-12-23 16:05:05 -08:00
MLIR Team 268365ab01 Automated rollback of commit f603a50109
PiperOrigin-RevId: 286924059
2019-12-23 15:54:44 -08:00
River Riddle f603a50109 ReImplement the Value classes as value-typed objects wrapping an internal pointer storage.
This will enable future commits to reimplement the internal implementation of OpResult without needing to change all of the existing users. This is part of a chain of commits optimizing the size of operation results.

PiperOrigin-RevId: 286919966
2019-12-23 15:44:00 -08:00
Mehdi Amini 56222a0694 Adjust License.txt file to use the LLVM license
PiperOrigin-RevId: 286906740
2019-12-23 15:33:37 -08:00
River Riddle 35807bc4c5 NFC: Introduce new ValuePtr/ValueRef typedefs to simplify the transition to Value being value-typed.
This is an initial step to refactoring the representation of OpResult as proposed in: https://groups.google.com/a/tensorflow.org/g/mlir/c/XXzzKhqqF_0/m/v6bKb08WCgAJ

This change will make it much simpler to incrementally transition all of the existing code to use value-typed semantics.

PiperOrigin-RevId: 286844725
2019-12-22 22:00:23 -08:00
River Riddle 4562e389a4 NFC: Remove unnecessary 'llvm::' prefix from uses of llvm symbols declared in `mlir` namespace.
Aside from being cleaner, this also makes the codebase more consistent.

PiperOrigin-RevId: 286206974
2019-12-18 09:29:20 -08:00
River Riddle 9ed22ae5b8 Refactor the various operand/result/type iterators to use indexed_accessor_range.
This has several benefits:
* The implementation is much cleaner and more efficient.
* The ranges now have support for many useful operations: operator[], slice, drop_front, size, etc.
* Value ranges can now directly query a range for their types via 'getTypes()': e.g:
   void foo(Operation::operand_range operands) {
     auto operandTypes = operands.getTypes();
   }

PiperOrigin-RevId: 284834912
2019-12-10 13:21:22 -08:00
River Riddle 7be6a40ab9 Add new indexed_accessor_range_base and indexed_accessor_range classes that simplify defining index-able ranges.
Many ranges want similar functionality from a range type(e.g. slice/drop_front/operator[]/etc.), so these classes provide a generic implementation that may be used by many different types of ranges. This removes some code duplication, and also empowers many of the existing range types in MLIR(e.g. result type ranges, operand ranges, ElementsAttr ranges, etc.). This change only updates RegionRange and ValueRange, more ranges will be updated in followup commits.

PiperOrigin-RevId: 284615679
2019-12-09 12:55:40 -08:00
Jacques Pienaar 70aeb4566e Add RegionRange for when need to abstract over different region iteration
Follows ValueRange in representing a generic abstraction over the different
ways to represent a range of Regions. This wrapper is not as ValueRange and only
considers the current cases of interest: MutableArrayRef<Region> and
ArrayRef<std::unique_ptr<Region>> as occurs during op construction vs op region
querying.

Note: ArrayRef<std::unique_ptr<Region>> allows for unset regions, so this range
returns a pointer to a Region instead of a Region.
PiperOrigin-RevId: 284563229
2019-12-09 08:57:56 -08:00
River Riddle d6ee6a0310 Update the builder API to take ValueRange instead of ArrayRef<Value *>
This allows for users to provide operand_range and result_range in builder.create<> calls, instead of requiring an explicit copy into a separate data structure like SmallVector/std::vector.

PiperOrigin-RevId: 284360710
2019-12-07 10:35:41 -08:00
River Riddle 9d1a0c72b4 Add a new ValueRange class.
This class represents a generic abstraction over the different ways to represent a range of Values: ArrayRef<Value *>, operand_range, result_range. This class will allow for removing the many instances of explicit SmallVector<Value *, N> construction. It has the same memory cost as ArrayRef, and only suffers cost from indexing(if+elsing the different underlying representations).

This change only updates a few of the existing usages, with more to be changed in followups; e.g. 'build' API.

PiperOrigin-RevId: 284307996
2019-12-06 20:07:23 -08:00
Kazuaki Ishizaki 84a6182ddd minor spelling tweaks
Closes tensorflow/mlir#290

COPYBARA_INTEGRATE_REVIEW=https://github.com/tensorflow/mlir/pull/290 from kiszk:spelling_tweaks_201912 9d9afd16a723dd65754a04698b3976f150a6054a
PiperOrigin-RevId: 284169681
2019-12-06 05:59:30 -08:00
River Riddle d9da8b647a Optimize operation ordering to support non-congruent indices.
This change adds support for non-congruent indices in the operation ordering within a basic block. This effect of this is that insertions are less likely to cause an invalidation of the ordering within a block. This has a big effect on modules that have very large basic blocks.

PiperOrigin-RevId: 283858136
2019-12-04 16:10:13 -08:00
Sean Silva 67515e8d7a Verifier: Better error message in case of successor operand mismatch.
In particular, print the successor number in the diagnostic.

PiperOrigin-RevId: 283585084
2019-12-03 11:24:31 -08:00
Jacques Pienaar 52a7415178 Fix redundant convert and use NamedAttributeList as value
* Had leftover call that would result in converting to dictionary attr before
  being implicitedly converted back to NamedAttributeList;
* NamedAttributeList is value typed, so don't use const reference;

PiperOrigin-RevId: 283072576
2019-11-29 10:26:56 -08:00
Jacques Pienaar f27ceb7261 Add create method that takes equivalent of OperationState with NamedAttributeList
This method is close to creating an OperationState first and then unpacking it
but avoids creating the OperationState and takes a NamedAttributeList for
attributes rather than array of NamedAttribute (to enable reusing an already
created NamedAttributeList).

Reuse this new method via create that takes OperationState. I'll update inferReturnTypes in follow up to also take NamedAttributeList and so a build method that uses both inferReturnTypes and create can reuse the same list.

PiperOrigin-RevId: 282651642
2019-11-26 15:30:35 -08:00
Lei Zhang 13c6e419ca Add support for AttrSizedOperandSegments/AttrSizedResultSegments
Certain operations can have multiple variadic operands and their size
relationship is not always known statically. For such cases, we need
a per-op-instance specification to divide the operands into logical
groups or segments. This can be modeled by attributes.

This CL introduces C++ trait AttrSizedOperandSegments for operands and
AttrSizedResultSegments for results. The C++ trait just guarantees
such size attribute has the correct type (1D vector) and values
(non-negative), etc. It serves as the basis for ODS sugaring that
with ODS argument declarations we can further verify the number of
elements match the number of ODS-declared operands and we can generate
handy getter methods.

PiperOrigin-RevId: 282467075
2019-11-25 17:26:50 -08:00
Sean Silva e4f83c6c26 Add multi-level DCE pass.
This is a simple multi-level DCE pass that operates pretty generically on
the IR. Its key feature compared to the existing peephole dead op folding
that happens during canonicalization is being able to delete recursively
dead cycles of the use-def graph, including block arguments.

PiperOrigin-RevId: 281568202
2019-11-20 12:55:10 -08:00
River Riddle 626e1fd95e Add an option to print an operation if a diagnostic is emitted on it
It is often helpful to inspect the operation that the error/warning/remark/etc. originated from, especially in the context of debugging or in the case of a verifier failure. This change adds an option 'mlir-print-op-on-diagnostic' that attaches the operation as a note to any diagnostic that is emitted on it via Operation::emit(Error|Warning|Remark). In the case of an error, the operation is printed in the generic form.

PiperOrigin-RevId: 280021438
2019-11-12 11:59:19 -08:00
Sean Silva f6188b5b07 Replace some remnant uses of "inst" with "op".
PiperOrigin-RevId: 278961676
2019-11-06 16:09:23 -08:00
River Riddle 8fa9d82606 NFC: Rename parseOptionalAttributeDict -> parseOptionalAttrDict to match the name of the print method.
PiperOrigin-RevId: 278696668
2019-11-05 13:32:47 -08:00
Smit Hinsu 85b46314c0 Allow dynamic but ranked types in ops with SameOperandsAndResultShape and SameOperandsAndResultType traits
Currently SameOperandsAndResultShape trait allows operands to have tensor<*xf32> and tensor<2xf32> but doesn't allow tensor<?xf32> and tensor<10xf32>.

Also, use the updated shape compatibility helper function in TensorCastOp::areCastCompatible method.

PiperOrigin-RevId: 273658336
2019-10-08 19:37:11 -07:00
Geoffrey Martin-Noble 18db4ce493 Allow element type traits to operate on scalars
This allows confirming that a scalar argument has the same element type as a shaped one. It's easy to validate a type is shaped on its own if that's desirable, so this shouldn't make that use case harder. This matches the behavior of other traits that operate on element type (e.g. AllElementTypesMatch). Also this makes the code simpler because now we just use getElementTypeOrSelf.

Verified that all uses in core already check the type is shaped in another way.

PiperOrigin-RevId: 273068507
2019-10-05 10:06:06 -07:00
Christian Sigg 496f4590a1 Generalize parse/printBinaryOp to parse/printOneResultOp.
PiperOrigin-RevId: 272722539
2019-10-03 13:00:12 -07:00
Christian Sigg 8503ffbe3a Add verification error message for ops that require at least one operand or result.
PiperOrigin-RevId: 272153634
2019-10-01 00:57:18 -07:00
Jacques Pienaar c57f202c8c Switch explicit create methods to match generated build's order
The generated build methods have result type before the arguments (operands and attributes, which are also now adjacent in the explicit create method). This also results in changing the create method's ordering to match most build method's ordering.

PiperOrigin-RevId: 271755054
2019-09-28 09:35:58 -07:00
River Riddle 3a643de92b NFC: Pass OpAsmPrinter by reference instead of by pointer.
MLIR follows the LLVM style of pass-by-reference.

PiperOrigin-RevId: 270401378
2019-09-20 20:43:35 -07:00
River Riddle 729727ebc7 NFC: Pass OperationState by reference instead of by pointer.
MLIR follows the LLVM convention of passing by reference instead of by pointer.

PiperOrigin-RevId: 270396945
2019-09-20 19:47:32 -07:00
River Riddle 2797517ecf NFC: Pass OpAsmParser by reference instead of by pointer.
MLIR follows the LLVM style of pass-by-reference.

PiperOrigin-RevId: 270315612
2019-09-20 11:37:21 -07:00
River Riddle 35df51086a Fix nested dominance relationship between parent results and child operations.
This modifies DominanceInfo::properlyDominates(Value *value, Operation *op) to return false if the value is defined by a parent operation of 'op'. This prevents using values defined by the parent operation from within any child regions.

PiperOrigin-RevId: 269934920
2019-09-18 18:23:41 -07:00
Jacques Pienaar 2660623a88 Add pass generate per block in a function a GraphViz Dot graph with ops as nodes
* Add GraphTraits that treat a block as a graph, Operation* as node and use-relationship for edges;
  - Just basic graph output;
* Add use iterator to iterate over all uses of an Operation;
* Add testing pass to generate op graph;

This does not support arbitrary operations other than function nor nested regions yet.

PiperOrigin-RevId: 268121782
2019-09-09 18:12:41 -07:00
River Riddle 4bfae66d70 Refactor the 'walk' methods for operations.
This change refactors and cleans up the implementation of the operation walk methods. After this refactoring is that the explicit template parameter for the operation type is no longer needed for the explicit op walks. For example:

    op->walk<AffineForOp>([](AffineForOp op) { ... });

is now accomplished via:

    op->walk([](AffineForOp op) { ... });

PiperOrigin-RevId: 266209552
2019-08-29 13:04:50 -07:00