1<!--===- docs/DoConcurrent.md 2 3 Part of the LLVM Project, under the Apache License v2.0 with LLVM Exceptions. 4 See https://llvm.org/LICENSE.txt for license information. 5 SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception 6 7--> 8 9# `DO CONCURRENT` isn't necessarily concurrent 10 11```{contents} 12--- 13local: 14--- 15``` 16 17A variant form of Fortran's primary looping construct was 18added to the Fortran 2008 language standard with the apparent 19intent of enabling more effective automatic parallel execution of code 20written in the standard language without the use of 21non-standard directives. 22Spelled `DO CONCURRENT`, the construct takes a rectilinear iteration 23space specification like `FORALL` and allows us to write 24a multidimensional loop nest construct with a single `DO CONCURRENT` 25statement and a single terminating `END DO` statement. 26 27Within the body of a `DO CONCURRENT` loop the program must respect 28a long list of restrictions on its use of Fortran language features. 29Actions that obviously can't be executed in parallel or that 30don't allow all iterations to execute are prohibited. 31These include: 32* Control flow statements that would prevent the loop nest from 33 executing all its iterations: `RETURN`, `EXIT`, and any 34 `GOTO` or `CYCLE` that leaves the construct. 35* Image control statements: `STOP`, `SYNC`, `LOCK`/`UNLOCK`, `EVENT`, 36 and `ALLOCATE`/`DEALLOCATE` of a coarray. 37* Calling a procedure that is not `PURE`. 38* Deallocation of any polymorphic entity, as that could cause 39 an impure FINAL subroutine to be called. 40* Messing with the IEEE floating-point control and status flags. 41* Accepting some restrictions on data flow between iterations 42 (i.e., none) and on liveness of modified objects after the loop. 43 (The details are spelled out later.) 44 45In return for accepting these restrictions, a `DO CONCURRENT` might 46compile into code that exploits the parallel features of the target 47machine to run the iterations of the `DO CONCURRENT` construct. 48One needn't necessarily require OpenACC or OpenMP directives. 49 50But it turns out that these rules, though *necessary* for safe parallel 51execution, are not *sufficient*. 52One may write conforming `DO CONCURRENT` constructs that cannot 53be safely parallelized by a compiler; worse, one may write conforming 54`DO CONCURRENT` constructs whose parallelizability a compiler cannot 55determine even in principle -- forcing a conforming compiler to 56assume the worst and generate sequential code. 57 58## Localization 59 60The Fortran language standard does not actually define `DO CONCURRENT` as a 61concurrent construct, or even as a construct that imposes sufficient 62requirements on the programmer to allow for parallel execution. 63`DO CONCURRENT` is instead defined as executing the iterations 64of the loop in some arbitrary order (see subclause 11.1.7.4.3 paragraph 3). 65 66A `DO CONCURRENT` construct cannot modify an object in one iteration 67and expect to be able to read it in another, or read it in one before it gets 68modified by another -- there's no way to synchronize inter-iteration 69communication with critical sections or atomics. 70 71But a conforming `DO CONCURRENT` construct *can* modify an object in 72multiple iterations of the loop so long as its only reads from that 73object *after* having modified it earler in the *same* iteration. 74(See 11.1.7.5 paragraph 4 for the details.) 75 76For example: 77 78``` 79 DO CONCURRENT (J=1:N) 80 TMP = A(J) + B(J) 81 C(J) = TMP 82 END DO 83 ! And TMP is undefined afterwards 84``` 85 86The scalar variable `TMP` is used in this loop in a way that conforms 87to the standard, as every use of `TMP` follows a definition that appears 88earlier in the same iteration. 89 90The idea, of course, is that a parallelizing compiler isn't required to 91use the same word of memory to hold the value of `TMP`; 92for parallel execution, `TMP` can be _localized_. 93This means that the loop can be internally rewritten as if it had been 94``` 95 DO CONCURRENT (J=1:N) 96 BLOCK 97 REAL :: TMP 98 TMP = A(J) + B(J) 99 C(J) = TMP 100 END BLOCK 101 END DO 102``` 103and thus any risk of data flow between the iterations is removed. 104 105## The identification problem 106 107The automatic localization rules of `DO CONCURRENT` that allow 108usage like `TMP` above are not limited to simple local scalar 109variables. 110They also apply to arbitrary variables, and thus may apply 111in cases that a compiler cannot determine exactly due to 112the presence of indexing, indirection, and interprocedural data flow. 113 114Let's see why this turns out to be a problem. 115 116Examples: 117``` 118 DO CONCURRENT (J=1:N) 119 T(IX(J)) = A(J) + B(J) 120 C(J) = T(IY(J)) 121 END DO 122``` 123This loop conforms to the standard language if, 124whenever `IX(J)` equals `IY(J')` for any distinct pair of iterations 125`J` and `J'`, 126then the load must be reading a value stored earlier in the 127same iteration -- so `IX(J')==IY(J')`, and hence `IX(J)==IX(J')` too, 128in this example. 129Otherwise, a load in one iteration might depend on a store 130in another. 131 132When all values of `IX(J)` are distinct, and the program conforms 133to the restrictions of `DO CONCURRENT`, a compiler can parallelize 134the construct easily without applying localization to `T(...)`. 135And when some values of `IX(J)` are duplicates, a compiler can parallelize 136the loop by forwarding the stored value to the load in those 137iterations. 138But at compilation time, there's _no way to distinguish_ these 139cases in general, and a conservative implementation has to assume 140the worst and run the loop's iterations serially. 141(Or compare `IX(J)` with `IY(J)` at runtime and forward the 142stored value conditionally, which adds overhead and becomes 143quickly impractical in loops with multiple loads and stores.) 144 145In 146``` 147 TYPE :: T 148 REAL, POINTER :: P 149 END TYPE 150 TYPE(T) :: T1(N), T2(N) 151 DO CONCURRENT (J=1:N) 152 T1(J)%P = A(J) + B(J) 153 C(J) = T2(J)%P 154 END DO 155``` 156we have the same kind of ambiguity from the compiler's perspective. 157Are the targets of the pointers used for the stores all distinct 158from the targets of the pointers used for the loads? 159The programmer may know that they are so, but a compiler 160cannot; and there is no syntax by which one can stipulate 161that they are so. 162 163## The global variable localization problem 164 165Here's another case: 166``` 167 MODULE M 168 REAL :: T 169 END MODULE 170 ... 171 USE M 172 INTERFACE 173 PURE REAL FUNCTION F(X) 174 REAL, INTENT(IN) :: X 175 END FUNCTION 176 END INTERFACE 177 DO CONCURRENT (J=1:N) 178 T = A(J) + B(J) 179 D(J) = F(A(J)) + T 180 END DO 181``` 182The variable `T` is obviously meant to be localized. 183However, a compiler can't be sure that the pure function `F` 184doesn't read from `T`; if it does, there wouldn't be a 185practical way to convey the localized copy to it. 186 187In summary, standard Fortran defines `DO CONCURRENT` as a serial 188construct with a sheaf of constraints that we assume are intended 189to enable straightforward parallelization without 190all of the complexity of defining threading models or shared memory semantics, 191with the addition of an automatic localization rule that provides 192convenient temporaries objects without requiring the use of nested 193`BLOCK` or `ASSOCIATE` constructs. 194But the language allows ambiguous cases in which a compiler can neither 1951. prove that automatic localization *is* required for a given 196 object in every iteration, nor 1971. prove that automatic localization *isn't* required in any iteration. 198 199## Locality specifiers 200 201The Fortran 2018 standard added "locality specifiers" to the 202`DO CONCURRENT` statement. 203These allow one to define some variable names as being `LOCAL` or 204`SHARED`, overriding the automatic localization rule so that it 205applies only in the remaining cases of "unspecified" locality. 206 207`LOCAL` variables are those that can be defined by more than one 208iteration but are referenced only after having been defined 209earlier in the same iteration. 210`SHARED` variables are those that, if defined in 211any iteration, are not defined or referenced in any other iteration. 212 213(There is also a `LOCAL_INIT` specifier that is not relevant to the 214problem at hand, and a `DEFAULT(NONE)` specifier that requires a 215locality specifier be present for every variable mentioned in the 216`DO CONCURRENT` construct.) 217 218These locality specifiers can help resolve some otherwise ambiguous 219cases of localization, but they're not a complete solution to the problems 220described above. 221 222First, the specifiers allow explicit localization of objects 223(like the scalar `T` in `MODULE M` above) that are not local variables 224of the subprogram. 225`DO CONCURRENT` still allows a pure procedure called from the loop 226to reference `T`, and so explicit localization just confirms the 227worst-case assumptions about interprocedural data flow 228within an iteration that a compiler must make anyway. 229 230Second, the specifiers allow arbitary variables to be localized, 231not just scalars. 232One may localize a million-element array of derived type 233with allocatable components to be created in each iteration, 234for example. 235(It is not clear whether localized objects are finalized; 236probably not.) 237 238Third, as Fortran uses context to distinguish references to 239pointers from (de)references to their targets, it's not clear 240whether `LOCAL(PTR)` localizes a pointer, its target, or both. 241 242Fourth, the specifiers can be applied only to variable _names_, 243not to any designator with subscripts or component references. 244One may have defined a derived type to hold a representation 245of a sparse matrix, using `ALLOCATABLE` components to store its 246packed data and indexing structures, but a program cannot localize 247some parts of it and share the rest. 248(Perhaps one may wrap `ASSOCIATE` constructs around the 249`DO CONCURRENT` construct; 250the interaction between locality specifiers and construct entities is 251not clearly defined in the language.) 252 253In the example above that defines `T(IX(J))` and reads from `T(IY(J))`, 254the locality specifiers can't be used to share those elements of `T()` 255that are modified at most once and localize the cases where 256`IX(J)` is a duplicate and `IY(J)==IX(J)`. 257 258Last, when a loop both defines and references many shared objects, 259including potential references to globally accessible object 260in called procedures, one may need to name all of them in a `SHARED` 261specifier. 262 263## What to do now 264 265These problems have been presented to the J3 Fortran language 266standard committee. 267Their responses in 268recent [e-mail discussions](https://mailman.j3-fortran.org/pipermail/j3/2020-July/thread.html) 269did not include an intent to address them in future standards or corrigenda. 270The most effective-looking response -- which was essentially "just use 271`DEFAULT(SHARED)` to disable all automatic localization" -- is not an 272viable option, since the language does not include such a specifier! 273 274Programmers writing `DO CONCURRENT` loops that are safely parallelizable 275need an effective means to convey to compilers that those compilers 276do not have to assume only the weaker stipulations required by 277today's `DO CONCURRENT` without having to write verbose and 278error-prone locality specifiers (when those would suffice). 279Specifically, an easy means is required that stipulates that localization 280should apply at most only to the obvious cases of local non-pointer 281non-allocatable scalars. 282 283In the LLVM Fortran compiler project (a/k/a "flang", "f18") we considered 284several solutions to this problem. 2851. Add syntax (e.g., `DO PARALLEL` or `DO CONCURRENT() DEFAULT(PARALLEL)`) 286 by which one can inform the compiler that it should localize only 287 the obvious cases of simple local scalars. 288 Such syntax seems unlikely to ever be standardized, so its usage 289 would be nonportable. 2901. Add a command-line option &/or a source directive to stipulate 291 the stronger guarantees. Obvious non-parallelizable usage in the construct 292 would elicit a stern warning. The `DO CONCURRENT` loops in the source 293 would continue to be portable to other compilers. 2941. Assume that these stronger conditions hold by default, and add a command-line 295 option &/or a source directive to "opt out" back to the weaker 296 requirements of the standard language 297 in the event that the program contains one of those inherently 298 non-parallelizable `DO CONCURRENT` loops that perhaps should never have 299 been possible to write in a conforming program in the first place. 300 Actual parallel `DO CONCURRENT` constructs would produce parallel 301 code for users who would otherwise be surprised to learn about these 302 problems in the language. 303 But this option could lead to non-standard behavior for codes that depend, 304 accidentally or not, on non-parallelizable implicit localization. 3051. Accept the standard as it exists, do the best job of automatic 306 parallelization that can be done, and refer dissatisfied users to J3. 307 This would be avoiding the problem. 308 309None of these options is without a fairly obvious disadvantage. 310The best option seems to be the one that assumes that users who write 311`DO CONCURRENT` constructs are doing so with the intent to write parallel code. 312 313## Other precedents 314 315As of August 2020, we observe that the GNU Fortran compiler (10.1) does not 316yet implement the Fortran 2018 locality clauses, but will parallelize some 317`DO CONCURRENT` constructs without ambiguous data dependences when the automatic 318parallelization option is enabled. 319 320The Intel Fortran compiler supports the new locality clauses and will parallelize 321some `DO CONCURRENT` constructs when automatic parallelization option is enabled. 322When OpenMP is enabled, ifort reports that all `DO CONCURRENT` constructs are 323parallelized, but they seem to execute in a serial fashion when data flow 324hazards are present. 325