Commit Graph

102 Commits

Author SHA1 Message Date
Arnold Schwaighofer f9cea17f75 LoopVectorizer: integer division is not a reduction operation
Don't classify idiv/udiv as a reduction operation. Integer division is lossy.
For example : (1 / 2) * 4 != 4/2.

Example:

int a[] = { 2, 5, 2, 2}
int x = 80;

for()
  x /= a[i];

Scalar:
  x /= 2 // = 40
  x /= 5 // = 8
  x /= 2 // = 4
  x /= 2 // = 2

Vectorized:

 <80, 1> / <2,5> //= <40,0>
 <40, 0> / <2,2> //= <20,0>

 20*0 = 0

radar://13640654

llvm-svn: 179381
2013-04-12 15:15:19 +00:00
Arnold Schwaighofer df6f67ed87 LoopVectorizer: Pass OperandValueKind information to the cost model
Pass down the fact that an operand is going to be a vector of constants.

This should bring the performance of MultiSource/Benchmarks/PAQ8p/paq8p on x86
back. It had degraded to scalar performance due to my pervious shift cost change
that made all shifts expensive on x86.

radar://13576547

llvm-svn: 178809
2013-04-04 23:26:27 +00:00
Benjamin Kramer 52ceb44331 X86TTI: Add accurate costs for itofp operations, based on the actual instruction counts.
llvm-svn: 178459
2013-04-01 10:23:49 +00:00
Arnold Schwaighofer 9b55e31bcb LoopVectorizer: Insert some white space to make test case more readable
Also remove some unneeded function attributes.

llvm-svn: 177114
2013-03-14 21:31:09 +00:00
Arnold Schwaighofer 4991ce9d49 Add missing asserts flag to test - it uses debug flags
llvm-svn: 177102
2013-03-14 19:01:58 +00:00
Arnold Schwaighofer c63cf3a0ae LoopVectorize: Invert case when we use a vector cmp value to query select cost
We generate a select with a vectorized condition argument when the condition is
NOT loop invariant. Not the other way around.

llvm-svn: 177098
2013-03-14 18:54:36 +00:00
Benjamin Kramer 01b75cc0f2 Test case hygiene.
llvm-svn: 176772
2013-03-09 18:25:40 +00:00
Arnold Schwaighofer 4090b61ac3 LoopVectorizer: Ignore dbg.value instructions
We want vectorization to happen at -g. Ignore calls to the dbg.value intrinsic
and don't transfer them to the vectorized code.

radar://13378964

llvm-svn: 176768
2013-03-09 15:56:34 +00:00
Benjamin Kramer 10a74ed434 Force cpu in test.
llvm-svn: 176702
2013-03-08 17:01:18 +00:00
Benjamin Kramer 37c2d65c5a Insert the reduction start value into the first bypass block to preserve domination.
Fixes PR15344.

llvm-svn: 176701
2013-03-08 16:58:37 +00:00
Arnold Schwaighofer 20ef54f4c1 X86 cost model: Adjust cost for custom lowered vector multiplies
This matters for example in following matrix multiply:

int **mmult(int rows, int cols, int **m1, int **m2, int **m3) {
  int i, j, k, val;
  for (i=0; i<rows; i++) {
    for (j=0; j<cols; j++) {
      val = 0;
      for (k=0; k<cols; k++) {
        val += m1[i][k] * m2[k][j];
      }
      m3[i][j] = val;
    }
  }
  return(m3);
}

Taken from the test-suite benchmark Shootout.

We estimate the cost of the multiply to be 2 while we generate 9 instructions
for it and end up being quite a bit slower than the scalar version (48% on my
machine).

Also, properly differentiate between avx1 and avx2. On avx-1 we still split the
vector into 2 128bits and handle the subvector muls like above with 9
instructions.
Only on avx-2 will we have a cost of 9 for v4i64.

I changed the test case in test/Transforms/LoopVectorize/X86/avx1.ll to use an
add instead of a mul because with a mul we now no longer vectorize. I did
verify that the mul would be indeed more expensive when vectorized with 3
kernels:

for (i ...)
   r += a[i] * 3;
for (i ...)
  m1[i] = m1[i] * 3; // This matches the test case in avx1.ll
and a matrix multiply.

In each case the vectorized version was considerably slower.

radar://13304919

llvm-svn: 176403
2013-03-02 04:02:52 +00:00
Nadav Rotem 739e37a0d2 PR14448 - prevent the loop vectorizer from vectorizing the same loop twice.
The LoopVectorizer often runs multiple times on the same function due to inlining.
When this happens the loop vectorizer often vectorizes the same loops multiple times, increasing code size and adding unneeded branches.
With this patch, the vectorizer during vectorization puts metadata on scalar loops and marks them as 'already vectorized' so that it knows to ignore them when it sees them a second time.

PR14448.

llvm-svn: 176399
2013-03-02 01:33:49 +00:00
Benjamin Kramer 12f98fae98 LoopVectorize: Don't hang forever if a PHI only has skipped PHI uses.
Fixes PR15384.

llvm-svn: 176366
2013-03-01 19:07:31 +00:00
Benjamin Kramer dc145816fd LoopVectorize: Vectorize math builtin calls.
This properly asks TargetLibraryInfo if a call is available and if it is, it
can be translated into the corresponding LLVM builtin. We don't vectorize sqrt()
yet because I'm not sure about the semantics for negative numbers. The other
intrinsic should be exact equivalents to the libm functions.

Differential Revision: http://llvm-reviews.chandlerc.com/D465

llvm-svn: 176188
2013-02-27 15:24:19 +00:00
Renato Golin 0890ace58a Some more tests for the global structure vectorizer
llvm-svn: 175964
2013-02-23 12:48:30 +00:00
Renato Golin adc1b07002 More tests to global struct vectorizer
llvm-svn: 175898
2013-02-22 16:18:31 +00:00
Renato Golin cf928cb53f Allow GlobalValues to vectorize with AliasAnalysis
Storing the load/store instructions with the values
and inspect them using Alias Analysis to make sure
they don't alias, since the GEP pointer operand doesn't
take the offset into account.

Trying hard to not add any extra cost to loads and stores
that don't overlap on global values, AA is *only* calculated
if all of the previous attempts failed.

Using biggest vector register size as the stride for the
vectorization access, as we're being conservative and
the cost model (which calculates the real vectorization
factor) is only run after the legalization phase.

We might re-think this relationship in the future, but
for now, I'd rather be safe than sorry.

llvm-svn: 175818
2013-02-21 22:39:03 +00:00
Pekka Jaaskelainen 62848c9c24 Forgot to 'svn add' the LoopVectorizer tests for the new parallel loop metadata, sorry.
llvm-svn: 175311
2013-02-15 21:50:19 +00:00
NAKAMURA Takumi 7ec43d9b37 Formatting.
llvm-svn: 174380
2013-02-05 15:32:16 +00:00
NAKAMURA Takumi 6635fe56d3 llvm/test/Transforms/LoopVectorize/X86/vector_ptr_load_store.ll: "-debug" requires +Asserts.
llvm-svn: 174379
2013-02-05 15:32:10 +00:00
Arnold Schwaighofer 22174f5d5a Loop Vectorizer: Handle pointer stores/loads in getWidestType()
In the loop vectorizer cost model, we used to ignore stores/loads of a pointer
type when computing the widest type within a loop. This meant that if we had
only stores/loads of pointers in a loop we would return a widest type of 8bits
(instead of 32 or 64 bit) and therefore a vector factor that was too big.

Now, if we see a consecutive store/load of pointers we use the size of a pointer
(from data layout).

This problem occured in SingleSource/Benchmarks/Shootout-C++/hash.cpp (reduced
test case is the first test in vector_ptr_load_store.ll).

radar://13139343

llvm-svn: 174377
2013-02-05 15:08:02 +00:00
Pekka Jaaskelainen 995a3e731d Made the min-trip-count-switch test X86-specific to avoid
breakage with builds without X86-support.

llvm-svn: 174052
2013-01-31 10:33:22 +00:00
Renato Golin 5e9d55eca0 Adding simple cast cost to ARM
Changing ARMBaseTargetMachine to return ARMTargetLowering intead of
the generic one (similar to x86 code).

Tests showing which instructions were added to cast when necessary
or cost zero when not. Downcast to 16 bits are not lowered in NEON,
so costs are not there yet.

llvm-svn: 173849
2013-01-29 23:31:38 +00:00
Pekka Jaaskelainen f50ab84bb1 LoopVectorize: convert TinyTripCountVectorThreshold constant
to a command line switch.

llvm-svn: 173837
2013-01-29 21:42:08 +00:00
Nadav Rotem ab3e698ee9 Add support for reverse pointer induction variables. These are loops that contain pointers that count backwards.
For example, this is the hot loop in BZIP:

  do {
    m = *--p;
    *p = ( ... );
  } while (--n);

llvm-svn: 173219
2013-01-23 01:35:00 +00:00
Nadav Rotem c42f90b1f4 LoopVectorizer: Implement a new heuristics for selecting the unroll factor.
We ignore the cpu frontend and focus on pipeline utilization. We do this because we
don't have a good way to estimate the loop body size at the IR level.

llvm-svn: 172964
2013-01-20 05:24:29 +00:00
Nadav Rotem 2169dbed2c Change the cpu type in the test.
llvm-svn: 172963
2013-01-20 05:20:56 +00:00
Benjamin Kramer d455ed85d1 LoopVectorizer: Emit memory checks into their own basic block.
This separates the check for "too few elements to run the vector loop" from the
"memory overlap" check, giving a lot nicer code and allowing to skip the memory
checks when we're not going to execute the vector code anyways. We still leave
the decision of whether to emit the memory checks as branches or setccs, but it
seems to be doing a good job. If ugly code pops up we may want to emit them as
separate blocks too. Small speedup on MultiSource/Benchmarks/MallocBench/espresso.

Most of this is legwork to allow multiple bypass blocks while updating PHIs,
dominators and loop info.

llvm-svn: 172902
2013-01-19 13:57:58 +00:00
Benjamin Kramer b7050f0a7c Move test that depends on the x86 target into a target-specific directory.
Should fix the arm buildbot (which only builds the arm target).

llvm-svn: 172611
2013-01-16 13:25:56 +00:00
Nadav Rotem 40e45eeae2 Fix PR14547. Handle induction variables of small sizes smaller than i32 (i8 and i16).
llvm-svn: 172348
2013-01-13 07:56:29 +00:00
Nadav Rotem e55aa3c848 ARM Cost Model: Modify the target independent cost model to ask
the target if it supports the different CAST types. We didn't do this
on X86 because of the different register sizes and types, but on ARM
this makes sense.

llvm-svn: 172245
2013-01-11 19:54:13 +00:00
Nadav Rotem 853fe0acb9 ARM Cost Model: We need to detect the max bitwidth of types in the loop in order to select the max vectorization factor.
We don't have a detailed analysis on which values are vectorized and which stay scalars in the vectorized loop so we use
another method. We look at reduction variables, loads and stores, which are the only ways to get information in and out
of loop iterations. If the data types are extended and truncated then the cost model will catch the cost of the vector
zext/sext/trunc operations.

llvm-svn: 172178
2013-01-11 07:11:59 +00:00
Nadav Rotem 6eae65cfac LoopVectorizer: Fix a bug in the vectorization of BinaryOperators. The BinaryOperator can be folded to an Undef, and we don't want to set NSW flags to undef vals.
PR14878

llvm-svn: 172079
2013-01-10 17:34:39 +00:00
Nadav Rotem b1791a75cd ARM Cost model: Use the size of vector registers and widest vectorizable instruction to determine the max vectorization factor.
llvm-svn: 172010
2013-01-09 22:29:00 +00:00
Nadav Rotem 4c66f87e8e ARM Cost Model: Add a basic vectorization unrolling test.
llvm-svn: 171931
2013-01-09 01:29:07 +00:00
Nadav Rotem 30a65bc39e Remove the -licm pass from the loop vectorizer test because the loop vectorizer does it now.
llvm-svn: 171930
2013-01-09 01:20:59 +00:00
Nadav Rotem b696c36fcd Cost Model: Move the 'max unroll factor' variable to the TTI and add initial Cost Model support on ARM.
llvm-svn: 171928
2013-01-09 01:15:42 +00:00
Nadav Rotem 5a197c06f3 LoopVectorizer: Add support for floating point reductions
llvm-svn: 171812
2013-01-07 23:13:00 +00:00
Nadav Rotem c60d7d96f5 LoopVectorizer: When we vectorizer and widen loops we process many elements at once. This is a good thing, except for
small loops. On small loops post-loop that handles scalars (and runs slower) can take more time to execute than the
rest of the loop. This patch disables widening of loops with a small static trip count.

llvm-svn: 171798
2013-01-07 21:54:51 +00:00
Nadav Rotem f19d515316 Fix a typo. Remove the duplicated test.
llvm-svn: 171584
2013-01-05 01:17:46 +00:00
Nadav Rotem e9f5bfd5e9 iLoopVectorize: Non commutative operators can be used as reduction variables as long as the reduction chain is used in the LHS.
PR14803.

llvm-svn: 171583
2013-01-05 01:15:47 +00:00
Nadav Rotem 6d9dafe3ff Force a fixed unroll count on the target independent tests.
This should fix clang-native-arm-cortex-a9. Thanks Renato.

llvm-svn: 171582
2013-01-05 00:58:48 +00:00
Paul Redmond 874f01e956 Do not vectorize loops with subtraction reductions
Since subtraction does not commute the loop vectorizer incorrectly vectorizes
reductions such as x = A[i] - x.

Disabling for now.

llvm-svn: 171537
2013-01-04 22:10:16 +00:00
Nadav Rotem e1d5c4b8b9 LoopVectorizer:
1. Add code to estimate register pressure.
2. Add code to select the unroll factor based on register pressure.
3. Add bits to TargetTransformInfo to provide the number of registers.

llvm-svn: 171469
2013-01-04 17:48:25 +00:00
Nadav Rotem d554a517c0 LoopVectorizer: Test the unrolling flag.
llvm-svn: 171446
2013-01-03 01:47:31 +00:00
Nadav Rotem 4897392360 Avoid vectorization when the function has the "noimplicitflot" attribute.
llvm-svn: 171429
2013-01-02 23:54:43 +00:00
Nadav Rotem 0b37f14371 LoopVectorizer: Fix a bug in the code that updates the loop exiting block.
LCSSA PHIs may have undef values. The vectorizer updates values that are used by outside users such as PHIs.
The bug happened because undefs are not loop values. This patch handles these PHIs.

PR14725

llvm-svn: 171251
2012-12-30 07:47:00 +00:00
Nadav Rotem 5350cd314b If all of the write objects are identified then we can vectorize the loop even if the read objects are unidentified.
PR14719.

llvm-svn: 171124
2012-12-26 23:30:53 +00:00
Nadav Rotem 3f7c4f36ba LoopVectorizer: Optimize the vectorization of consecutive memory access when the iteration step is -1
llvm-svn: 171114
2012-12-26 19:08:17 +00:00
Hal Finkel b44f890133 LoopVectorize: Enable vectorization of the fmuladd intrinsic
llvm-svn: 171076
2012-12-25 23:21:29 +00:00