1=====================================
2Performance Tips for Frontend Authors
3=====================================
4
5.. contents::
6   :local:
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8
9Abstract
10========
11
12The intended audience of this document is developers of language frontends
13targeting LLVM IR. This document is home to a collection of tips on how to
14generate IR that optimizes well.
15
16IR Best Practices
17=================
18
19As with any optimizer, LLVM has its strengths and weaknesses.  In some cases,
20surprisingly small changes in the source IR can have a large effect on the
21generated code.
22
23Beyond the specific items on the list below, it's worth noting that the most
24mature frontend for LLVM is Clang.  As a result, the further your IR gets from
25what Clang might emit, the less likely it is to be effectively optimized. It
26can often be useful to write a quick C program with the semantics you're trying
27to model and see what decisions Clang's IRGen makes about what IR to emit.
28Studying Clang's CodeGen directory can also be a good source of ideas.  Note
29that Clang and LLVM are explicitly version locked so you'll need to make sure
30you're using a Clang built from the same git revision or release as the LLVM
31library you're using.  As always, it's *strongly* recommended that you track
32tip of tree development, particularly during bring up of a new project.
33
34The Basics
35^^^^^^^^^^^
36
37#. Make sure that your Modules contain both a data layout specification and
38   target triple. Without these pieces, non of the target specific optimization
39   will be enabled.  This can have a major effect on the generated code quality.
40
41#. For each function or global emitted, use the most private linkage type
42   possible (private, internal or linkonce_odr preferably).  Doing so will
43   make LLVM's inter-procedural optimizations much more effective.
44
45#. Avoid high in-degree basic blocks (e.g. basic blocks with dozens or hundreds
46   of predecessors).  Among other issues, the register allocator is known to
47   perform badly with confronted with such structures.  The only exception to
48   this guidance is that a unified return block with high in-degree is fine.
49
50Use of allocas
51^^^^^^^^^^^^^^
52
53An alloca instruction can be used to represent a function scoped stack slot,
54but can also represent dynamic frame expansion.  When representing function
55scoped variables or locations, placing alloca instructions at the beginning of
56the entry block should be preferred.   In particular, place them before any
57call instructions. Call instructions might get inlined and replaced with
58multiple basic blocks. The end result is that a following alloca instruction
59would no longer be in the entry basic block afterward.
60
61The SROA (Scalar Replacement Of Aggregates) and Mem2Reg passes only attempt
62to eliminate alloca instructions that are in the entry basic block.  Given
63SSA is the canonical form expected by much of the optimizer; if allocas can
64not be eliminated by Mem2Reg or SROA, the optimizer is likely to be less
65effective than it could be.
66
67Avoid loads and stores of large aggregate type
68^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
69
70LLVM currently does not optimize well loads and stores of large :ref:`aggregate
71types <t_aggregate>` (i.e. structs and arrays).  As an alternative, consider
72loading individual fields from memory.
73
74Aggregates that are smaller than the largest (performant) load or store
75instruction supported by the targeted hardware are well supported.  These can
76be an effective way to represent collections of small packed fields.
77
78Prefer zext over sext when legal
79^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
80
81On some architectures (X86_64 is one), sign extension can involve an extra
82instruction whereas zero extension can be folded into a load.  LLVM will try to
83replace a sext with a zext when it can be proven safe, but if you have
84information in your source language about the range of an integer value, it can
85be profitable to use a zext rather than a sext.
86
87Alternatively, you can :ref:`specify the range of the value using metadata
88<range-metadata>` and LLVM can do the sext to zext conversion for you.
89
90Zext GEP indices to machine register width
91^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
92
93Internally, LLVM often promotes the width of GEP indices to machine register
94width.  When it does so, it will default to using sign extension (sext)
95operations for safety.  If your source language provides information about
96the range of the index, you may wish to manually extend indices to machine
97register width using a zext instruction.
98
99When to specify alignment
100^^^^^^^^^^^^^^^^^^^^^^^^^^
101LLVM will always generate correct code if you don’t specify alignment, but may
102generate inefficient code.  For example, if you are targeting MIPS (or older
103ARM ISAs) then the hardware does not handle unaligned loads and stores, and
104so you will enter a trap-and-emulate path if you do a load or store with
105lower-than-natural alignment.  To avoid this, LLVM will emit a slower
106sequence of loads, shifts and masks (or load-right + load-left on MIPS) for
107all cases where the load / store does not have a sufficiently high alignment
108in the IR.
109
110The alignment is used to guarantee the alignment on allocas and globals,
111though in most cases this is unnecessary (most targets have a sufficiently
112high default alignment that they’ll be fine).  It is also used to provide a
113contract to the back end saying ‘either this load/store has this alignment, or
114it is undefined behavior’.  This means that the back end is free to emit
115instructions that rely on that alignment (and mid-level optimizers are free to
116perform transforms that require that alignment).  For x86, it doesn’t make
117much difference, as almost all instructions are alignment-independent.  For
118MIPS, it can make a big difference.
119
120Note that if your loads and stores are atomic, the backend will be unable to
121lower an under aligned access into a sequence of natively aligned accesses.
122As a result, alignment is mandatory for atomic loads and stores.
123
124Other Things to Consider
125^^^^^^^^^^^^^^^^^^^^^^^^
126
127#. Use ptrtoint/inttoptr sparingly (they interfere with pointer aliasing
128   analysis), prefer GEPs
129
130#. Prefer globals over inttoptr of a constant address - this gives you
131   dereferencability information.  In MCJIT, use getSymbolAddress to provide
132   actual address.
133
134#. Be wary of ordered and atomic memory operations.  They are hard to optimize
135   and may not be well optimized by the current optimizer.  Depending on your
136   source language, you may consider using fences instead.
137
138#. If calling a function which is known to throw an exception (unwind), use
139   an invoke with a normal destination which contains an unreachable
140   instruction.  This form conveys to the optimizer that the call returns
141   abnormally.  For an invoke which neither returns normally or requires unwind
142   code in the current function, you can use a noreturn call instruction if
143   desired.  This is generally not required because the optimizer will convert
144   an invoke with an unreachable unwind destination to a call instruction.
145
146#. Use profile metadata to indicate statically known cold paths, even if
147   dynamic profiling information is not available.  This can make a large
148   difference in code placement and thus the performance of tight loops.
149
150#. When generating code for loops, try to avoid terminating the header block of
151   the loop earlier than necessary.  If the terminator of the loop header
152   block is a loop exiting conditional branch, the effectiveness of LICM will
153   be limited for loads not in the header.  (This is due to the fact that LLVM
154   may not know such a load is safe to speculatively execute and thus can't
155   lift an otherwise loop invariant load unless it can prove the exiting
156   condition is not taken.)  It can be profitable, in some cases, to emit such
157   instructions into the header even if they are not used along a rarely
158   executed path that exits the loop.  This guidance specifically does not
159   apply if the condition which terminates the loop header is itself invariant,
160   or can be easily discharged by inspecting the loop index variables.
161
162#. In hot loops, consider duplicating instructions from small basic blocks
163   which end in highly predictable terminators into their successor blocks.
164   If a hot successor block contains instructions which can be vectorized
165   with the duplicated ones, this can provide a noticeable throughput
166   improvement.  Note that this is not always profitable and does involve a
167   potentially large increase in code size.
168
169#. When checking a value against a constant, emit the check using a consistent
170   comparison type.  The GVN pass *will* optimize redundant equalities even if
171   the type of comparison is inverted, but GVN only runs late in the pipeline.
172   As a result, you may miss the opportunity to run other important
173   optimizations.
174
175#. Avoid using arithmetic intrinsics unless you are *required* by your source
176   language specification to emit a particular code sequence.  The optimizer
177   is quite good at reasoning about general control flow and arithmetic, it is
178   not anywhere near as strong at reasoning about the various intrinsics.  If
179   profitable for code generation purposes, the optimizer will likely form the
180   intrinsics itself late in the optimization pipeline.  It is *very* rarely
181   profitable to emit these directly in the language frontend.  This item
182   explicitly includes the use of the :ref:`overflow intrinsics <int_overflow>`.
183
184#. Avoid using the :ref:`assume intrinsic <int_assume>` until you've
185   established that a) there's no other way to express the given fact and b)
186   that fact is critical for optimization purposes.  Assumes are a great
187   prototyping mechanism, but they can have negative effects on both compile
188   time and optimization effectiveness.  The former is fixable with enough
189   effort, but the later is fairly fundamental to their designed purpose.
190
191
192Describing Language Specific Properties
193=======================================
194
195When translating a source language to LLVM, finding ways to express concepts
196and guarantees available in your source language which are not natively
197provided by LLVM IR will greatly improve LLVM's ability to optimize your code.
198As an example, C/C++'s ability to mark every add as "no signed wrap (nsw)" goes
199a long way to assisting the optimizer in reasoning about loop induction
200variables and thus generating more optimal code for loops.
201
202The LLVM LangRef includes a number of mechanisms for annotating the IR with
203additional semantic information.  It is *strongly* recommended that you become
204highly familiar with this document.  The list below is intended to highlight a
205couple of items of particular interest, but is by no means exhaustive.
206
207Restricted Operation Semantics
208^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
209#. Add nsw/nuw flags as appropriate.  Reasoning about overflow is
210   generally hard for an optimizer so providing these facts from the frontend
211   can be very impactful.
212
213#. Use fast-math flags on floating point operations if legal.  If you don't
214   need strict IEEE floating point semantics, there are a number of additional
215   optimizations that can be performed.  This can be highly impactful for
216   floating point intensive computations.
217
218Describing Aliasing Properties
219^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
220
221#. Add noalias/align/dereferenceable/nonnull to function arguments and return
222   values as appropriate
223
224#. Use pointer aliasing metadata, especially tbaa metadata, to communicate
225   otherwise-non-deducible pointer aliasing facts
226
227#. Use inbounds on geps.  This can help to disambiguate some aliasing queries.
228
229Undefined Values
230^^^^^^^^^^^^^^^^
231
232#. Use poison values instead of undef values whenever possible.
233
234#. Tag function parameters with the noundef attribute whenever possible.
235
236Modeling Memory Effects
237^^^^^^^^^^^^^^^^^^^^^^^^
238
239#. Mark functions as readnone/readonly/argmemonly or noreturn/nounwind when
240   known.  The optimizer will try to infer these flags, but may not always be
241   able to.  Manual annotations are particularly important for external
242   functions that the optimizer can not analyze.
243
244#. Use the lifetime.start/lifetime.end and invariant.start/invariant.end
245   intrinsics where possible.  Common profitable uses are for stack like data
246   structures (thus allowing dead store elimination) and for describing
247   life times of allocas (thus allowing smaller stack sizes).
248
249#. Mark invariant locations using !invariant.load and TBAA's constant flags
250
251Pass Ordering
252^^^^^^^^^^^^^
253
254One of the most common mistakes made by new language frontend projects is to
255use the existing -O2 or -O3 pass pipelines as is.  These pass pipelines make a
256good starting point for an optimizing compiler for any language, but they have
257been carefully tuned for C and C++, not your target language.  You will almost
258certainly need to use a custom pass order to achieve optimal performance.  A
259couple specific suggestions:
260
261#. For languages with numerous rarely executed guard conditions (e.g. null
262   checks, type checks, range checks) consider adding an extra execution or
263   two of LoopUnswitch and LICM to your pass order.  The standard pass order,
264   which is tuned for C and C++ applications, may not be sufficient to remove
265   all dischargeable checks from loops.
266
267#. If your language uses range checks, consider using the IRCE pass.  It is not
268   currently part of the standard pass order.
269
270#. A useful sanity check to run is to run your optimized IR back through the
271   -O2 pipeline again.  If you see noticeable improvement in the resulting IR,
272   you likely need to adjust your pass order.
273
274
275I Still Can't Find What I'm Looking For
276^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
277
278If you didn't find what you were looking for above, consider proposing a piece
279of metadata which provides the optimization hint you need.  Such extensions are
280relatively common and are generally well received by the community.  You will
281need to ensure that your proposal is sufficiently general so that it benefits
282others if you wish to contribute it upstream.
283
284You should also consider describing the problem you're facing on `Discourse
285<https://discourse.llvm.org>`_ and asking for advice.
286It's entirely possible someone has encountered your problem before and can
287give good advice.  If there are multiple interested parties, that also
288increases the chances that a metadata extension would be well received by the
289community as a whole.
290
291Adding to this document
292=======================
293
294If you run across a case that you feel deserves to be covered here, please send
295a patch to `llvm-commits
296<http://lists.llvm.org/mailman/listinfo/llvm-commits>`_ for review.
297
298If you have questions on these items, please ask them on `Discourse
299<https://discourse.llvm.org>`_.  The more relevant
300context you are able to give to your question, the more likely it is to be
301answered.
302