1==========================
2Auto-Vectorization in LLVM
3==========================
4
5.. contents::
6   :local:
7
8LLVM has two vectorizers: The :ref:`Loop Vectorizer <loop-vectorizer>`,
9which operates on Loops, and the :ref:`SLP Vectorizer
10<slp-vectorizer>`. These vectorizers
11focus on different optimization opportunities and use different techniques.
12The SLP vectorizer merges multiple scalars that are found in the code into
13vectors while the Loop Vectorizer widens instructions in loops
14to operate on multiple consecutive iterations.
15
16Both the Loop Vectorizer and the SLP Vectorizer are enabled by default.
17
18.. _loop-vectorizer:
19
20The Loop Vectorizer
21===================
22
23Usage
24-----
25
26The Loop Vectorizer is enabled by default, but it can be disabled
27through clang using the command line flag:
28
29.. code-block:: console
30
31   $ clang ... -fno-vectorize  file.c
32
33Command line flags
34^^^^^^^^^^^^^^^^^^
35
36The loop vectorizer uses a cost model to decide on the optimal vectorization factor
37and unroll factor. However, users of the vectorizer can force the vectorizer to use
38specific values. Both 'clang' and 'opt' support the flags below.
39
40Users can control the vectorization SIMD width using the command line flag "-force-vector-width".
41
42.. code-block:: console
43
44  $ clang  -mllvm -force-vector-width=8 ...
45  $ opt -loop-vectorize -force-vector-width=8 ...
46
47Users can control the unroll factor using the command line flag "-force-vector-unroll"
48
49.. code-block:: console
50
51  $ clang  -mllvm -force-vector-unroll=2 ...
52  $ opt -loop-vectorize -force-vector-unroll=2 ...
53
54Features
55--------
56
57The LLVM Loop Vectorizer has a number of features that allow it to vectorize
58complex loops.
59
60Loops with unknown trip count
61^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
62
63The Loop Vectorizer supports loops with an unknown trip count.
64In the loop below, the iteration ``start`` and ``finish`` points are unknown,
65and the Loop Vectorizer has a mechanism to vectorize loops that do not start
66at zero. In this example, 'n' may not be a multiple of the vector width, and
67the vectorizer has to execute the last few iterations as scalar code. Keeping
68a scalar copy of the loop increases the code size.
69
70.. code-block:: c++
71
72  void bar(float *A, float* B, float K, int start, int end) {
73    for (int i = start; i < end; ++i)
74      A[i] *= B[i] + K;
75  }
76
77Runtime Checks of Pointers
78^^^^^^^^^^^^^^^^^^^^^^^^^^
79
80In the example below, if the pointers A and B point to consecutive addresses,
81then it is illegal to vectorize the code because some elements of A will be
82written before they are read from array B.
83
84Some programmers use the 'restrict' keyword to notify the compiler that the
85pointers are disjointed, but in our example, the Loop Vectorizer has no way of
86knowing that the pointers A and B are unique. The Loop Vectorizer handles this
87loop by placing code that checks, at runtime, if the arrays A and B point to
88disjointed memory locations. If arrays A and B overlap, then the scalar version
89of the loop is executed.
90
91.. code-block:: c++
92
93  void bar(float *A, float* B, float K, int n) {
94    for (int i = 0; i < n; ++i)
95      A[i] *= B[i] + K;
96  }
97
98
99Reductions
100^^^^^^^^^^
101
102In this example the ``sum`` variable is used by consecutive iterations of
103the loop. Normally, this would prevent vectorization, but the vectorizer can
104detect that 'sum' is a reduction variable. The variable 'sum' becomes a vector
105of integers, and at the end of the loop the elements of the array are added
106together to create the correct result. We support a number of different
107reduction operations, such as addition, multiplication, XOR, AND and OR.
108
109.. code-block:: c++
110
111  int foo(int *A, int *B, int n) {
112    unsigned sum = 0;
113    for (int i = 0; i < n; ++i)
114      sum += A[i] + 5;
115    return sum;
116  }
117
118We support floating point reduction operations when `-ffast-math` is used.
119
120Inductions
121^^^^^^^^^^
122
123In this example the value of the induction variable ``i`` is saved into an
124array. The Loop Vectorizer knows to vectorize induction variables.
125
126.. code-block:: c++
127
128  void bar(float *A, float* B, float K, int n) {
129    for (int i = 0; i < n; ++i)
130      A[i] = i;
131  }
132
133If Conversion
134^^^^^^^^^^^^^
135
136The Loop Vectorizer is able to "flatten" the IF statement in the code and
137generate a single stream of instructions. The Loop Vectorizer supports any
138control flow in the innermost loop. The innermost loop may contain complex
139nesting of IFs, ELSEs and even GOTOs.
140
141.. code-block:: c++
142
143  int foo(int *A, int *B, int n) {
144    unsigned sum = 0;
145    for (int i = 0; i < n; ++i)
146      if (A[i] > B[i])
147        sum += A[i] + 5;
148    return sum;
149  }
150
151Pointer Induction Variables
152^^^^^^^^^^^^^^^^^^^^^^^^^^^
153
154This example uses the "accumulate" function of the standard c++ library. This
155loop uses C++ iterators, which are pointers, and not integer indices.
156The Loop Vectorizer detects pointer induction variables and can vectorize
157this loop. This feature is important because many C++ programs use iterators.
158
159.. code-block:: c++
160
161  int baz(int *A, int n) {
162    return std::accumulate(A, A + n, 0);
163  }
164
165Reverse Iterators
166^^^^^^^^^^^^^^^^^
167
168The Loop Vectorizer can vectorize loops that count backwards.
169
170.. code-block:: c++
171
172  int foo(int *A, int *B, int n) {
173    for (int i = n; i > 0; --i)
174      A[i] +=1;
175  }
176
177Scatter / Gather
178^^^^^^^^^^^^^^^^
179
180The Loop Vectorizer can vectorize code that becomes a sequence of scalar instructions
181that scatter/gathers memory.
182
183.. code-block:: c++
184
185  int foo(int *A, int *B, int n, int k) {
186    for (int i = 0; i < n; ++i)
187      A[i*7] += B[i*k];
188  }
189
190Vectorization of Mixed Types
191^^^^^^^^^^^^^^^^^^^^^^^^^^^^
192
193The Loop Vectorizer can vectorize programs with mixed types. The Vectorizer
194cost model can estimate the cost of the type conversion and decide if
195vectorization is profitable.
196
197.. code-block:: c++
198
199  int foo(int *A, char *B, int n, int k) {
200    for (int i = 0; i < n; ++i)
201      A[i] += 4 * B[i];
202  }
203
204Global Structures Alias Analysis
205^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
206
207Access to global structures can also be vectorized, with alias analysis being
208used to make sure accesses don't alias. Run-time checks can also be added on
209pointer access to structure members.
210
211Many variations are supported, but some that rely on undefined behaviour being
212ignored (as other compilers do) are still being left un-vectorized.
213
214.. code-block:: c++
215
216  struct { int A[100], K, B[100]; } Foo;
217
218  int foo() {
219    for (int i = 0; i < 100; ++i)
220      Foo.A[i] = Foo.B[i] + 100;
221  }
222
223Vectorization of function calls
224^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
225
226The Loop Vectorize can vectorize intrinsic math functions.
227See the table below for a list of these functions.
228
229+-----+-----+---------+
230| pow | exp |  exp2   |
231+-----+-----+---------+
232| sin | cos |  sqrt   |
233+-----+-----+---------+
234| log |log2 |  log10  |
235+-----+-----+---------+
236|fabs |floor|  ceil   |
237+-----+-----+---------+
238|fma  |trunc|nearbyint|
239+-----+-----+---------+
240|     |     | fmuladd |
241+-----+-----+---------+
242
243The loop vectorizer knows about special instructions on the target and will
244vectorize a loop containing a function call that maps to the instructions. For
245example, the loop below will be vectorized on Intel x86 if the SSE4.1 roundps
246instruction is available.
247
248.. code-block:: c++
249
250  void foo(float *f) {
251    for (int i = 0; i != 1024; ++i)
252      f[i] = floorf(f[i]);
253  }
254
255Partial unrolling during vectorization
256^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
257
258Modern processors feature multiple execution units, and only programs that contain a
259high degree of parallelism can fully utilize the entire width of the machine.
260The Loop Vectorizer increases the instruction level parallelism (ILP) by
261performing partial-unrolling of loops.
262
263In the example below the entire array is accumulated into the variable 'sum'.
264This is inefficient because only a single execution port can be used by the processor.
265By unrolling the code the Loop Vectorizer allows two or more execution ports
266to be used simultaneously.
267
268.. code-block:: c++
269
270  int foo(int *A, int *B, int n) {
271    unsigned sum = 0;
272    for (int i = 0; i < n; ++i)
273        sum += A[i];
274    return sum;
275  }
276
277The Loop Vectorizer uses a cost model to decide when it is profitable to unroll loops.
278The decision to unroll the loop depends on the register pressure and the generated code size.
279
280Performance
281-----------
282
283This section shows the the execution time of Clang on a simple benchmark:
284`gcc-loops <http://llvm.org/viewvc/llvm-project/test-suite/trunk/SingleSource/UnitTests/Vectorizer/>`_.
285This benchmarks is a collection of loops from the GCC autovectorization
286`page <http://gcc.gnu.org/projects/tree-ssa/vectorization.html>`_ by Dorit Nuzman.
287
288The chart below compares GCC-4.7, ICC-13, and Clang-SVN with and without loop vectorization at -O3, tuned for "corei7-avx", running on a Sandybridge iMac.
289The Y-axis shows the time in msec. Lower is better. The last column shows the geomean of all the kernels.
290
291.. image:: gcc-loops.png
292
293And Linpack-pc with the same configuration. Result is Mflops, higher is better.
294
295.. image:: linpack-pc.png
296
297.. _slp-vectorizer:
298
299The SLP Vectorizer
300==================
301
302Details
303-------
304
305The goal of SLP vectorization (a.k.a. superword-level parallelism) is
306to combine similar independent instructions
307into vector instructions. Memory accesses, arithmetic operations, comparison
308operations, PHI-nodes, can all be vectorized using this technique.
309
310For example, the following function performs very similar operations on its
311inputs (a1, b1) and (a2, b2). The basic-block vectorizer may combine these
312into vector operations.
313
314.. code-block:: c++
315
316  void foo(int a1, int a2, int b1, int b2, int *A) {
317    A[0] = a1*(a1 + b1)/b1 + 50*b1/a1;
318    A[1] = a2*(a2 + b2)/b2 + 50*b2/a2;
319  }
320
321The SLP-vectorizer processes the code bottom-up, across basic blocks, in search of scalars to combine.
322
323Usage
324------
325
326The SLP Vectorizer is enabled by default, but it can be disabled
327through clang using the command line flag:
328
329.. code-block:: console
330
331   $ clang -fno-slp-vectorize file.c
332
333LLVM has a second basic block vectorization phase
334which is more compile-time intensive (The BB vectorizer). This optimization
335can be enabled through clang using the command line flag:
336
337.. code-block:: console
338
339   $ clang -fslp-vectorize-aggressive file.c
340
341