627 Commits

Author SHA1 Message Date
Alex Zinenko
ce8f10d6cb [mlir] Simplify ModuleTranslation for LLVM IR
A series of preceding patches changed the mechanism for translating MLIR to
LLVM IR to use dialect interface with delayed registration. It is no longer
necessary for specific dialects to derive from ModuleTranslation. Remove all
virtual methods from ModuleTranslation and factor out the entry point to be a
free function.

Also perform some cleanups in ModuleTranslation internals.

Depends On D96774

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D96775
2021-02-16 18:42:52 +01:00
Lei Zhang
cb1a42359b [mlir][vector] Move splitting transfer ops into a separate entry point
These patterns unrolls transfer read/write ops if the vector consumers/
producers are extract/insert slices op. Transfer ops can map to hardware
load/store functionalities, where the vector size matters for bandwidth
considerations. So these patterns should be collected separately, instead
of being generic canonicalization patterns.

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D96782
2021-02-16 10:04:34 -05:00
Lei Zhang
d8c7f442ea [mlir][vector] Add support for unrolling vector.fma
Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D96781
2021-02-16 09:56:25 -05:00
Alex Zinenko
176379e0c8 [mlir] Use the interface-based translation for LLVM "intrinsic" dialects
Port the translation of five dialects that define LLVM IR intrinsics
(LLVMAVX512, LLVMArmNeon, LLVMArmSVE, NVVM, ROCDL) to the new dialect
interface-based mechanism. This allows us to remove individual translations
that were created for each of these dialects and just use one common
MLIR-to-LLVM-IR translation that potentially supports all dialects instead,
based on what is registered and including any combination of translatable
dialects. This removal was one of the main goals of the refactoring.

To support the addition of GPU-related metadata, the translation interface is
extended with the `amendOperation` function that allows the interface
implementation to post-process any translated operation with dialect attributes
from the dialect for which the interface is implemented regardless of the
operation's dialect. This is currently applied to "kernel" functions, but can
be used to construct other metadata in dialect-specific ways without
necessarily affecting operations.

Depends On D96591, D96504

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D96592
2021-02-15 14:43:07 +01:00
Stephan Herhut
2bfe27da17 [mlir][math] Fix cmake files after dialect splitting.
This fixes some missing dependencies that broke the shared library
build.
2021-02-12 11:25:15 +01:00
Stephan Herhut
4348d8ab7f [mlir][math] Split off the math dialect.
This does not split transformations, yet. Those will be done as future clean ups.

Differential Revision: https://reviews.llvm.org/D96272
2021-02-12 10:55:12 +01:00
Aart Bik
0b1764a3d7 [mlir][sparse] sparse tensor storage implementation
This revision connects the generated sparse code with an actual
sparse storage scheme, which can be initialized from a test file.
Lacking a first-class citizen SparseTensor type (with buffer),
the storage is hidden behind an opaque pointer with some "glue"
to bring the pointer back to tensor land. Rather than generating
sparse setup code for each different annotated tensor (viz. the
"pack" methods in TACO), a single "one-size-fits-all" implementation
has been added to the runtime support library.  Many details and
abstractions need to be refined in the future, but this revision
allows full end-to-end integration testing and performance
benchmarking (with on one end, an annotated Lingalg
op and, on the other end, a JIT/AOT executable).

Reviewed By: nicolasvasilache, bixia

Differential Revision: https://reviews.llvm.org/D95847
2021-02-10 11:57:24 -08:00
Nicolas Vasilache
bb69de3f41 [mlir][Linalg] Add a vectorization pattern for linalg::PadTensorOp
The new pattern is exercised from the TestLinalgTransforms pass.

Differential Revision: https://reviews.llvm.org/D96410
2021-02-10 14:13:49 +00:00
River Riddle
6e3292b0b7 [mlir][OpFormatGen] Refactor type_ref into a more general ref directive
This allows for referencing nearly every component of an operation from within a custom directive.

It also fixes a bug with the current type_ref implementation, PR48478

Differential Revision: https://reviews.llvm.org/D96189
2021-02-09 14:33:48 -08:00
River Riddle
b9c876bd7e [mlir] Add initial support for an alias analysis framework in MLIR
This revision adds a new `AliasAnalysis` class that represents the main alias analysis interface in MLIR. The purpose of this class is not to hold the aliasing logic itself, but to provide an interface into various different alias analysis implementations. As it evolves this should allow for users to plug in specialized alias analysis implementations for their own needs, and have them immediately usable by other analyses and transformations.

This revision also adds an initial simple generic alias, LocalAliasAnalysis, that provides support for performing stateless local alias queries between values. This class is similar in scope to LLVM's BasicAA.

Differential Revision: https://reviews.llvm.org/D92343
2021-02-09 14:21:27 -08:00
River Riddle
fe7c0d90b2 [mlir][IR] Remove the concept of OperationProperties
These properties were useful for a few things before traits had a better integration story, but don't really carry their weight well these days. Most of these properties are already checked via traits in most of the code. It is better to align the system around traits, and improve the performance/cost of traits in general.

Differential Revision: https://reviews.llvm.org/D96088
2021-02-09 12:00:15 -08:00
Nicolas Vasilache
d57a305fdf [mlir][Linalg] Fix padding related bugs.
This revision fixes the fact that the padding transformation did not have enough information to set the proper type for the padding value.
Additionally, the verifier for Yield in the presence of PadTensorOp is fixed to properly report incorrect number of results or operands. Previously, the error would be silently ignored which made the core issue difficult to debug.

Differential Revision: https://reviews.llvm.org/D96264
2021-02-08 18:59:24 +00:00
Lei Zhang
7630520ae3 [mlir][vector] Add pattern to shuffle bitcast ops
These patterns move vector.bitcast ops to be before
insert ops or after extract ops where suitable.
With them, bitcast will happen on smaller vectors
and there are more chances to share extract/insert
ops.

Reviewed By: ThomasRaoux

Differential Revision: https://reviews.llvm.org/D96040
2021-02-05 17:52:49 -05:00
Lei Zhang
874ce9b80f [mlir][vector] Add patterns to cast away leading 1-dim
This patch adds patterns to use vector.shape_cast to cast
away leading 1-dimensions from a few vector operations.
It allows exposing more canonical forms of vector.transfer_read,
vector.transfer_write, vector_extract_strided_slice, and
vector.insert_strided_slice. With this, we can have more
opportunity to cancelling extract/insert ops or forwarding
write/read ops.

Reviewed By: ThomasRaoux

Differential Revision: https://reviews.llvm.org/D95873
2021-02-05 09:02:15 -05:00
Nicolas Vasilache
ef9e1e5a59 [mlir][Linalg] Add option to anchor on func name in TestLinalgCodegenStrategy 2021-02-05 11:39:48 +00:00
River Riddle
e21adfa32d [mlir] Mark LogicalResult as LLVM_NODISCARD
This makes ignoring a result explicit by the user, and helps to prevent accidental errors with dropped results. Marking LogicalResult as no discard was always the intention from the beginning, but got lost along the way.

Differential Revision: https://reviews.llvm.org/D95841
2021-02-04 15:10:10 -08:00
Nicolas Vasilache
e4a503a26d [mlir][Linalg] Introduce a ContractionOpInterface
This revision takes advantage of recent extensions to vectorization to refactor contraction detection into a bona fide Linalg interface.
The mlit-linalg-ods-gen parser is extended to support adding such interfaces.
The detection that was originally enabling vectorization is refactored to serve as both a test on a generic LinalgOp as well as to verify ops that declare to conform to that interface.

This is plugged through Linalg transforms and strategies but it quickly becomes evident that the complexity and rigidity of the C++ class based templating does not pay for itself.
Therefore, this revision changes the API for vectorization patterns to get rid of templates as much as possible.
Variadic templates are relegated to the internals of LinalgTransformationFilter as much as possible and away from the user-facing APIs.

It is expected other patterns / transformations will follow the same path and drop as much C++ templating as possible from the class definition.

Differential revision: https://reviews.llvm.org/D95973
2021-02-04 16:53:24 +00:00
Alex Zinenko
5b91060dcc [mlir] Apply source materialization in case of transitive conversion
In dialect conversion infrastructure, source materialization applies as part of
the finalization procedure to results of the newly produced operations that
replace previously existing values with values having a different type.
However, such operations may be created to replace operations created in other
patterns. At this point, it is possible that the results of the _original_
operation are still in use and have mismatching types, but the results of the
_intermediate_ operation that performed the type change are not in use leading
to the absence of source materialization. For example,

  %0 = dialect.produce : !dialect.A
  dialect.use %0 : !dialect.A

can be replaced with

  %0 = dialect.other : !dialect.A
  %1 = dialect.produce : !dialect.A  // replaced, scheduled for removal
  dialect.use %1 : !dialect.A

and then with

  %0 = dialect.final : !dialect.B
  %1 = dialect.other : !dialect.A    // replaced, scheduled for removal
  %2 = dialect.produce : !dialect.A  // replaced, scheduled for removal
  dialect.use %2 : !dialect.A

in the same rewriting, but only the %1->%0 replacement is currently considered.

Change the logic in dialect conversion to look up all values that were replaced
by the given value and performing source materialization if any of those values
is still in use with mismatching types. This is performed by computing the
inverse value replacement mapping. This arguably expensive manipulation is
performed only if there were some type-changing replacements. An alternative
could be to consider all replaced operations and not only those that resulted
in type changes, but it would harm pattern-level composability: the pattern
that performed the non-type-changing replacement would have to be made aware of
the type converter in order to call the materialization hook.

Reviewed By: rriddle

Differential Revision: https://reviews.llvm.org/D95626
2021-02-04 11:15:11 +01:00
Nicolas Vasilache
f245b7ad36 [mlir][Linalg] Generalize the definition of a Linalg contraction.
This revision defines a Linalg contraction in general terms:

  1. Has 2 input and 1 output shapes.
  2. Has at least one reduction dimension.
  3. Has only projected permutation indexing maps.
  4. its body computes `u5(u1(c) + u2(u3(a) * u4(b)))` on some field
    (AddOpType, MulOpType), where u1, u2, u3, u4 and u5 represent scalar unary
    operations that may change the type (e.g. for mixed-precision).

As a consequence, when vectorization of such an op occurs, the only special
behavior is that the (unique) MulOpType is vectorized into a
`vector.contract`. All other ops are handled in a generic fashion.

 In the future, we may wish to allow more input arguments and elementwise and
 constant operations that do not involve the reduction dimension(s).

A test is added to demonstrate the proper vectorization of matmul_i8_i8_i32.

Differential revision: https://reviews.llvm.org/D95939
2021-02-04 07:50:44 +00:00
Mehdi Amini
a1d5bdf819 Make the folder more robust against op fold() methods that generate a type mismatch
We could extend this with an interface to allow dialect to perform a type
conversion, but that would make the folder creating operation which isn't
the case at the moment, and isn't necessarily always desirable.

Reviewed By: rriddle

Differential Revision: https://reviews.llvm.org/D95991
2021-02-04 01:58:56 +00:00
Vladislav Vinogradov
7cc7998497 [mlir] Allow to use constant lambda as callbacks for TypeConverter
Reviewed By: rriddle

Differential Revision: https://reviews.llvm.org/D95787
2021-02-02 18:26:45 +00:00
Lei Zhang
b24e3cc542 [mlir] Put template specialization in the same namespace
This should address GCC 5 failure due to specialization of
runStrategy in different namespace.
2021-02-02 10:05:32 -05:00
Nicolas Vasilache
8fce22888b [mlir][Linalg] Fix and properly test CodegenStrategy API
Fix a bug that was introduced where calling the codegen strategy with actual concrete C++ Op types did not trigger the expected behavior.
Also introduce a test for the behavior that was missing.

Differential Revision: https://reviews.llvm.org/D95863
2021-02-02 13:01:12 +00:00
Alex Zinenko
0409eb2874 [mlir] Keep track of region signature conversions as argument replacements
In dialect conversion, signature conversions essentially perform block argument
replacement and are added to the general value remapping. However, the replaced
values were not tracked, so if a signature conversion was rolled back, the
construction of operand lists for the following patterns could have obtained
block arguments from the mapping and give them to the pattern leading to
use-after-free. Keep track of signature conversions similarly to normal block
argument replacement, and erase such replacements from the general mapping when
the conversion is rolled back.

Reviewed By: rriddle

Differential Revision: https://reviews.llvm.org/D95688
2021-02-02 10:38:31 +01:00
Hanhan Wang
b3f611bfe7 [mlir][Linalg] Replace SimplePad with PadTensor in hoist-padding
This is the last revision to migrate using SimplePadOp to PadTensorOp, and the
SimplePadOp is removed in the patch. Update a bit in SliceAnalysis because the
PadTensorOp takes a region different from SimplePadOp. This is not covered by
LinalgOp because it is not a structured op.

Also, remove a duplicated comment from cpp file, which is already described in a
header file. And update the pseudo-mlir in the comment.

This is as same as D95615 but fixing one dep in CMakeLists.txt

Different from D95671, the fix was applied to run target.

Reviewed By: mravishankar

Differential Revision: https://reviews.llvm.org/D95785
2021-02-01 11:38:43 -08:00
Tres Popp
2790cbedd0 Revert "[mlir][Linalg] Replace SimplePad with PadTensor in hoist-padding"
This reverts commit d9b953d84b332a8c4751fcbf8178e32818dc718b.

This commit resulted in build bot failures and the author is away from a
computer, so I am reverting on their behalf until they have a chance to
look into this.
2021-02-01 09:43:55 +01:00
Hanhan Wang
d9b953d84b [mlir][Linalg] Replace SimplePad with PadTensor in hoist-padding
This is the last revision to migrate using SimplePadOp to PadTensorOp, and the
SimplePadOp is removed in the patch. Update a bit in SliceAnalysis because the
PadTensorOp takes a region different from SimplePadOp. This is not covered by
LinalgOp because it is not a structured op.

Also, remove a duplicated comment from cpp file, which is already described in a
header file. And update the pseudo-mlir in the comment.

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D95671
2021-02-01 00:02:37 -08:00
MaheshRavishankar
98835e3d98 [mlir][Linalg] Enable TileAndFusePattern to work with tensors.
Differential Revision: https://reviews.llvm.org/D94531
2021-01-28 14:13:01 -08:00
Hanhan Wang
2c7cc5fd20 Revert "[mlir][Linalg] Replace SimplePad with PadTensor in hoist-padding"
This reverts commit 1e790b745d7e3b0c79deec2de202a4de7e7a66c3.

Differential Revision: https://reviews.llvm.org/D95636
2021-01-28 11:25:02 -08:00
Hanhan Wang
1e790b745d [mlir][Linalg] Replace SimplePad with PadTensor in hoist-padding
This is the last revision to migrate using SimplePadOp to PadTensorOp, and the
SimplePadOp is removed in the patch. Update a bit in SliceAnalysis because the
PadTensorOp takes a region different from SimplePadOp. This is not covered by
LinalgOp because it is not a structured op.

Also, remove a duplicated comment from cpp file, which is already described in a
header file. And update the pseudo-mlir in the comment.

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D95615
2021-01-28 11:09:57 -08:00
Nicolas Vasilache
299cc5da6d [mlir][Linalg] Further improve codegen strategy and add a linalg.matmul_i8_i8_i32
This revision adds a layer of SFINAE to the composable codegen strategy so it does
not have to require statically defined ops but instead can also be used with OpInterfaces, Operation* and an op name string.

A linalg.matmul_i8_i8_i32 is added to the .tc spec to demonstrate how all this works end to end.

Differential Revision: https://reviews.llvm.org/D95600
2021-01-28 13:02:42 +00:00
Nicolas Vasilache
d0c9fb1b8e [mlir][Linalg] Improve codegen strategy
This revision improves the usage of the codegen strategy by adding a few flags that
make it easier to control for the CLI.
Usage of ModuleOp is replaced by FuncOp as this created issues in multi-threaded mode.

A simple benchmarking capability is added for linalg.matmul as well as linalg.matmul_column_major.
This latter op is also added to linalg.

Now obsolete linalg integration tests that also take too long are deleted.

Correctness checks are still missing at this point.

Differential revision: https://reviews.llvm.org/D95531
2021-01-28 10:59:16 +00:00
Nicolas Vasilache
dbf9bedf40 [mlir][Linalg] Add a hoistPaddingOnTensors transformation
This transformation anchors on a padding op whose result is only used as an input
to a Linalg op and pulls it out of a given number of loops.
The result is a packing of padded tailes of ops that is amortized just before
the outermost loop from which the pad operation is hoisted.

Differential revision: https://reviews.llvm.org/D95243
2021-01-25 12:41:18 +00:00
Nicolas Vasilache
3747eb9c85 [mlir][Linalg] Add a padding option to Linalg tiling
This revision allows the base Linalg tiling pattern to optionally require padding to
a constant bounding shape.
When requested, a simple analysis is performed, similar to buffer promotion.
A temporary `linalg.simple_pad` op is added to model padding for the purpose of
connecting the dots. This will be replaced by a more fleshed out `linalg.pad_tensor`
op when it is available.
In the meantime, this temporary op serves the purpose of exhibiting the necessary
properties required from a more fleshed out pad op, to compose with transformations
properly.

Reviewed By: ftynse

Differential Revision: https://reviews.llvm.org/D95149
2021-01-25 09:17:30 +00:00
River Riddle
29d420e0bf [mlir][OpFormatGen] Add support for anchoring optional groups with types
This revision adds support for using either operand or result types to anchor an optional group. It also removes the arbitrary restriction that type directives must refer to variables in the same group, which is overly limiting for a declarative format syntax.

Fixes PR#48784

Differential Revision: https://reviews.llvm.org/D95109
2021-01-22 12:07:27 -08:00
MaheshRavishankar
01defcc8d7 [mlir][Linalg] Extend tile+fuse to work on Linalg operation on tensors.
Differential Revision: https://reviews.llvm.org/D93086
2021-01-22 11:33:35 -08:00
Aart Bik
b5c542d64b [mlir][sparse] add narrower choices for pointers/indices
Use cases with 16- or even 8-bit pointer/index structures have been identified.

Reviewed By: penpornk

Differential Revision: https://reviews.llvm.org/D95015
2021-01-19 20:20:38 -08:00
Eric Christopher
22eb1cf89f Remove unused functions. 2021-01-19 14:44:34 -08:00
Nicolas Vasilache
93a873dfc9 [mlir][Affine] Revisit and simplify composeAffineMapAndOperands.
In prehistorical times, AffineApplyOp was allowed to produce multiple values.
This allowed the creation of intricate SSA use-def chains.
AffineApplyNormalizer was originally introduced as a means of reusing the AffineMap::compose method to write SSA use-def chains.
Unfortunately, symbols that were produced by an AffineApplyOp needed to be promoted to dims and reordered for the mathematical composition to be valid.

Since then, single result AffineApplyOp became the law of the land but the original assumptions were not revisited.

This revision revisits these assumptions and retires AffineApplyNormalizer.

Differential Revision: https://reviews.llvm.org/D94920
2021-01-19 13:52:07 +00:00
River Riddle
c8fb6ee341 [mlir][PatternRewriter] Add a new hook to selectively replace uses of an operation
This revision adds a new `replaceOpWithIf` hook that replaces uses of an operation that satisfy a given functor. If all uses are replaced, the operation gets erased in a similar manner to `replaceOp`. DialectConversion support will be added in a followup as this requires adjusting how replacements are tracked there.

Differential Revision: https://reviews.llvm.org/D94632
2021-01-14 11:58:21 -08:00
River Riddle
00a61b327d [mlir][ODS] Add new RangedTypesMatchWith operation predicate
This is a variant of TypesMatchWith that provides support for variadic arguments. This is necessary because ranges generally can't use the default operator== comparators for checking equality.

Differential Revision: https://reviews.llvm.org/D94574
2021-01-14 11:35:49 -08:00
Aart Bik
f4f158b2f8 [mlir][sparse] add vectorization strategies to sparse compiler
Similar to the parallelization strategies, the vectorization strategies
provide control on what loops should be vectorize. Unlike the parallel
strategies, only innermost loops are considered, but including reductions,
with the control of vectorizing dense loops only or dense and sparse loops.

The vectorized loops are always controlled by a vector mask to avoid
overrunning the iterations, but subsequent vector operation folding removes
redundant masks and replaces the operations with more efficient counterparts.
Similarly, we will rely on subsequent loop optimizations to further optimize
masking, e.g. using an unconditional full vector loop and scalar cleanup loop.

The current strategy already demonstrates a nice interaction between the
sparse compiler and all prior optimizations that went into the vector dialect.

Ongoing discussion at:
https://llvm.discourse.group/t/mlir-support-for-sparse-tensors/2020/10

Reviewed By: penpornk

Differential Revision: https://reviews.llvm.org/D94551
2021-01-13 11:55:23 -08:00
Nicolas Vasilache
80f0785488 [mlir][Linalg] NFC - Refactor fusion APIs
This revision uniformizes fusion APIs to allow passing OpOperand, OpResult and adds a finer level of control fusion.

Differential Revision: https://reviews.llvm.org/D94493
2021-01-12 14:27:15 +00:00
River Riddle
948be58258 [mlir][TypeDefGen] Add support for adding builders when generating a TypeDef
This allows for specifying additional get/getChecked methods that should be generated on the type, and acts similarly to how OpBuilders work. TypeBuilders have two additional components though:
* InferredContextParam
  - Bit indicating that the context parameter of a get method is inferred from one of the builder parameters
* checkedBody
  - A code block representing the body of the equivalent getChecked method.

Differential Revision: https://reviews.llvm.org/D94274
2021-01-11 12:06:22 -08:00
Aart Bik
a57def30f5 [mlir][vector] generalized masked l/s and compressed l/s with indices
Adding the ability to index the base address brings these operations closer
to the transfer read and write semantics (with lowering advantages), ensures
more consistent use in vector MLIR code (easier to read), and reduces the
amount of code duplication to lower memrefs into base addresses considerably
(making codegen less error-prone).

Reviewed By: ThomasRaoux

Differential Revision: https://reviews.llvm.org/D94278
2021-01-08 13:59:34 -08:00
Alex Zinenko
2230bf99c7 [mlir] replace LLVMIntegerType with built-in integer type
The LLVM dialect type system has been closed until now, i.e. did not support
types from other dialects inside containers. While this has had obvious
benefits of deriving from a common base class, it has led to some simple types
being almost identical with the built-in types, namely integer and floating
point types. This in turn has led to a lot of larger-scale complexity: simple
types must still be converted, numerous operations that correspond to LLVM IR
intrinsics are replicated to produce versions operating on either LLVM dialect
or built-in types leading to quasi-duplicate dialects, lowering to the LLVM
dialect is essentially required to be one-shot because of type conversion, etc.
In this light, it is reasonable to trade off some local complexity in the
internal implementation of LLVM dialect types for removing larger-scale system
complexity. Previous commits to the LLVM dialect type system have adapted the
API to support types from other dialects.

Replace LLVMIntegerType with the built-in IntegerType plus additional checks
that such types are signless (these are isolated in a utility function that
replaced `isa<LLVMType>` and in the parser). Temporarily keep the possibility
to parse `!llvm.i32` as a synonym for `i32`, but add a deprecation notice.

Reviewed By: mehdi_amini, silvas, antiagainst

Differential Revision: https://reviews.llvm.org/D94178
2021-01-07 19:48:31 +01:00
River Riddle
41d919aa29 [mlir][TypeDefGen] Remove the need to define parser/printer for singleton types
This allows for singleton types without an explicit parser/printer to simply use
the mnemonic as the assembly format, removing the need for these types to provide the parser/printer
fields.

Differential Revision: https://reviews.llvm.org/D94194
2021-01-06 15:00:14 -08:00
Thomas Raoux
efd05040e1 [mlir] Add hoisting transformation for transfer ops on tensor
Add same hoisting transformation existing for transfer ops on buffers for
transfer_ops on tensor. The logic is significantly different so this is done as
a separate transformation and it is expect that user would know which
transformation to use based on the flow.

Differential Revision: https://reviews.llvm.org/D94115
2021-01-06 14:23:59 -08:00
Thomas Raoux
f9190c8681 [mlir][vector] Support unrolling for transfer ops using tensors
Differential Revision: https://reviews.llvm.org/D93904
2021-01-06 13:28:04 -08:00
Christian Sigg
badc7606b0 [mlir] Remove a number of methods from mlir::OpState that just forward to mlir::Operation. All call sites have been converted in previous changes. 2021-01-06 21:36:38 +01:00