Masten, Matt via llvm-dev
2016-Apr-01 00:20 UTC
[llvm-dev] RFC: A proposal for vectorizing loops with calls to math functions using SVML
RFC: A proposal for vectorizing loops with calls to math functions using SVML (short vector math library). ========Overview ======== Very simply, SVML (Intel short vector math library) functions are vector variants of scalar math functions that take vector arguments, apply an operation to each element, and store the result in a vector register. These vector variants can be generated by the compiler, based on precision requirements specified by the user, resulting in substantial performance gains. This is an initial proposal to add a new LLVM IR transformation pass that will translate scalar math calls to svml calls with the help of the loop vectorizer. ===================Problem Description =================== Currently, without the "#pragma clang loop vectorize(enable)", the loop vectorizer will not vectorize loops with math calls due to cost model reasons. Additionally, When the loop pragma is used, the loop vectorizer will widen the math call using an intrinsic, but the resulting code is inefficient because the intrinsic is replaced with scalarized function calls. Please see the example below for a simple loop containing a sinf call. For demonstration purposes, the example was compiled for an xmm target, thus VF = 4 given the float type. Example: sinf.c #define N 1000 #pragma clang loop vectorize(enable) for (i = 0; i < N; i++) { array[i] = sinf((float)i); } Without the loop pragma the loop vectorizer's cost model rejects the loop. clang -c -ffast-math -O2 -Rpass-analysis=loop-vectorize -Rpass-missed=loop-vectorize sinf.c sinf.c:19:3: remark: the cost-model indicates that vectorization is not beneficial [-Rpass-analysis=loop-vectorize] for (i = 0; i < N; i++) { ^ sinf.c:19:3: remark: the cost-model indicates that interleaving is not beneficial and is explicitly disabled or interleave count is set to 1 [-Rpass-analysis=loop-vectorize] When the the loop pragma is used, the loop is vectorized and the call to @llvm.sin.v4f32 is generated, but the call is later scalarized with the additional overhead of unpacking the scalar function arguments from a vector. This can be seen from inspection of the resulting assembly code just below the LLVM IR. vector.body: ; preds = %vector.body, %vector.ph %index = phi i64 [ 0, %vector.ph ], [ %index.next, %vector.body ], !dbg !6 %0 = trunc i64 %index to i32, !dbg !7 %broadcast.splatinsert6 = insertelement <4 x i32> undef, i32 %0, i32 0, !dbg !7 %broadcast.splat7 = shufflevector <4 x i32> %broadcast.splatinsert6, <4 x i32> undef, <4 x i32> zeroinitializer, !dbg !7 %induction8 = add <4 x i32> %broadcast.splat7, <i32 0, i32 1, i32 2, i32 3>, !dbg !7 %1 = sitofp <4 x i32> %induction8 to <4 x float>, !dbg !7 %2 = call <4 x float> @llvm.sin.v4f32(<4 x float> %1), !dbg !8 %3 = getelementptr inbounds float, float* %array, i64 %index, !dbg !9 %4 = bitcast float* %3 to <4 x float>*, !dbg !10 store <4 x float> %2, <4 x float>* %4, align 4, !dbg !10, !tbaa !11 %index.next = add i64 %index, 4, !dbg !6 %5 = icmp eq i64 %index.next, 1000, !dbg !6 br i1 %5, label %middle.block, label %vector.body, !dbg !6, !llvm.loop !15 .LBB0_1: # %vector.body # =>This Inner Loop Header: Depth=1 movd %ebx, %xmm0 pshufd $0, %xmm0, %xmm0 # xmm0 = xmm0[0,0,0,0] paddd .LCPI0_0(%rip), %xmm0 cvtdq2ps %xmm0, %xmm0 movaps %xmm0, 16(%rsp) # 16-byte Spill shufps $231, %xmm0, %xmm0 # xmm0 = xmm0[3,1,2,3] callq sinf movaps %xmm0, (%rsp) # 16-byte Spill movaps 16(%rsp), %xmm0 # 16-byte Reload shufps $229, %xmm0, %xmm0 # xmm0 = xmm0[1,1,2,3] callq sinf unpcklps (%rsp), %xmm0 # 16-byte Folded Reload # xmm0 = xmm0[0],mem[0],xmm0[1],mem[1] movaps %xmm0, (%rsp) # 16-byte Spill movaps 16(%rsp), %xmm0 # 16-byte Reload callq sinf movaps %xmm0, 32(%rsp) # 16-byte Spill movapd 16(%rsp), %xmm0 # 16-byte Reload shufpd $1, %xmm0, %xmm0 # xmm0 = xmm0[1,0] callq sinf movaps 32(%rsp), %xmm1 # 16-byte Reload unpcklps %xmm0, %xmm1 # xmm1 = xmm1[0],xmm0[0],xmm1[1],xmm0[1] unpcklps (%rsp), %xmm1 # 16-byte Folded Reload # xmm1 = xmm1[0],mem[0],xmm1[1],mem[1] movups %xmm1, (%r14,%rbx,4) addq $4, %rbx cmpq $1000, %rbx # imm = 0x3E8 jne .LBB0_1 ==========================Proposed New Functionality ========================== In order to take advantage of the performance benefits of the svml library, the proposed solution is to introduce a new LLVM IR pass that is capable of translating the vector math intrinsics to svml calls. As an example, the LLVM IR above for "vector.body", introduced in the Problem Description section, would serve as input to the proposed pass and be transformed into the following LLVM IR. Special attention should be paid to the "__svml_sinf4_ha" call in the LLVM IR and resulting assembly code snippet. vector.body: ; preds = %vector.body, %entry %index = phi i64 [ 0, %entry ], [ %index.next, %vector.body ], !dbg !6 %0 = trunc i64 %index to i32, !dbg !7 %broadcast.splatinsert6 = insertelement <4 x i32> undef, i32 %0, i32 0, !dbg !7 %broadcast.splat7 = shufflevector <4 x i32> %broadcast.splatinsert6, <4 x i32> undef, <4 x i32> zeroinitializer, !dbg !7 %induction8 = add <4 x i32> %broadcast.splat7, <i32 0, i32 1, i32 2, i32 3>, !dbg !7 %1 = sitofp <4 x i32> %induction8 to <4 x float>, !dbg !7 %vcall = call <4 x float> @__svml_sinf4_ha(<4 x float> %1) %2 = getelementptr inbounds float, float* %array, i64 %index, !dbg !8 %3 = bitcast float* %2 to <4 x float>*, !dbg !9 store <4 x float> %vcall, <4 x float>* %3, align 4, !dbg !9, !tbaa !10 %index.next = add i64 %index, 4, !dbg !6 %4 = icmp eq i64 %index.next, 1000, !dbg !6 br i1 %4, label %for.end, label %vector.body, !dbg !6, !llvm.loop !14 The resulting assembly would appear as: .LBB0_1: # %vector.body # =>This Inner Loop Header: Depth=1 movd %ebx, %xmm0 pshufd $0, %xmm0, %xmm0 # xmm0 = xmm0[0,0,0,0] paddd .LCPI0_0(%rip), %xmm0 cvtdq2ps %xmm0, %xmm0 callq __svml_sinf4_ha movups %xmm0, (%r14,%rbx,4) addq $4, %rbx cmpq $1000, %rbx # imm = 0x3E8 jne .LBB0_1 In order to perform the translation, several requirements must be met to guide code generation. Those include: 1) In addition to the -ffast-math flag, support is needed from clang to allow the user to be able to specify the desired precision requirements. The additional flags needed include the following, where "imf" is shorthand for "Intel math function". -fimf-absolute-error=value[:funclist] define the maximum allowable absolute error for math library function results value - a positive, floating-point number conforming to the format [digits][.digits][{e|E}[sign]digits] funclist - optional comma separated list of one or more math library functions to which the attribute should be applied -fimf-accuracy-bits=bits[:funclist] define the relative error, measured by the number of correct bits, for math library function results bits - a positive, floating-point number funclist - optional comma separated list of one or more math library functions to which the attribute should be applied -fimf-arch-consistency=value[:funclist] ensures that the math library functions produce consistent results across different implementations of the same architecture value - true or false funclist - optional comma separated list of one or more math library functions to which the attribute should be applied -fimf-max-error=ulps[:funclist] defines the maximum allowable relative error, measured in ulps, for math library function results ulps - a positive, floating-point number conforming to the format [digits][.digits][{e|E}[sign]digits] funclist - optional comma separated list of one or more math library functions to which the attribute should be applied -fimf-precision=value[:funclist] defines the accuracy (precision) for math library functions value - defined as one of the following values high - equivalent to max-error = 0.6 medium - equivalent to max-error = 4 low - equivalent to accuracy-bits = 11 (single precision); accuracy-bits = 26 (double precision) funclist - optional comma separated list of one or more math library functions to which the attribute should be applied -fimf-domain-exclusion=classlist[:funclist] indicates the input arguments domain on which math functions must provide correct results. classlist - defined as one of the following values nans, infinities, denormals, zeros all, none, common funclist - optional list of one or more math library functions to which the attribute should be applied. Information from the flags can then be encoded as function attributes at each call site. In the future, this functionality will enable more fine-grained control over specifying precision for individual calls/regions, instead of setting the precision requirements for all call instances of a function. Please note that the example translation presented so far does not have the IMF attributes attached to the @llvm.sin.v4f32 call, and as a result the default is set to an svml variant marked with "_ha" (max-error = 0.6), which is short for high accuracy. Other supported variants will include low precision, enhanced performance, bitwise reproducible, and correctly rounded. Please refer to the IEEE-754 standard for additional information regarding supported precisions. The compiler will select the most appropriate variant based on the IMF attributes. See #2. 2) An interface to query for the appropriate svml function variant based on the scalar function name and IMF attributes. 3) For calls to math functions that store to memory (e.g., sincos), additional analysis of the pointer arguments is beneficial in order to generate the best performing load/store instructions. =====================GCC/ICC compatibility ===================== The initial implementation will involve the translation of 6 svml functions, which include sin, cos, log, pow, exp, and sincos (both single and double precision variants). Support for these functions matches the current capabilities of GCC and a subset of ICC. As more functions become open-sourced, the plan is to support them as part of the final solution determined from this proposal. The flags referenced in the Proposed New Functionality section are required to maintain icc compatibility. ======================Current Implementation ====================== To evaluate the feasibility of this proposal, a prototype transform pass has been developed, which performs the following: 1) Searches for vector math intrinsics as candidates for translation to svml. 2) Reads function attributes to obtain precision requirements for the call. If none, default to attributes that will force the selection of a high accuracy variant. 3) Since the vector factor of the intrinsic can be wider than what is legally supported by the target, type legalization is performed so that the correct svml variant is selected. For example, if a call to @llvm.sin.v8f32(<8 x float> %1) is made for an xmm target, the pass will generate two __svml_sinf4 calls and will do the appropriate splitting of %1 to create the new arguments for each call. In addition, the multiple return vectors are recombined and users of the original return vector are updated. The pass is also capable of handling less than full vector cases. E.g., @llvm.sin.v2f32. 4) Special handling for sincos since the results are stored to a double wide vector and additional analysis is needed to optimize the stores to memory. Additional shuffling is required to obtain the sin and cos results from the double wide vector. 5) Vector intrinsics that are not translated to svml are scalarized. 6) The loop vectorizer has been taught to allow widening of sincos and additional utilities have been written to analyze arguments for sincos. ========Feedback ======== For those who are interested in this topic, I would like to ask for your review of this proposal and would definitely appreciate any/all feedback on the proposed approach. Help is also very welcome and much appreciated in the development process.
Sanjay Patel via llvm-dev
2016-Apr-04 17:57 UTC
[llvm-dev] RFC: A proposal for vectorizing loops with calls to math functions using SVML
Hi Matt - Are you using the same TLI hook as Darwin's Accelerate framework: addVectorizableFunctionsFromVecLib()? If not, why not? On Thu, Mar 31, 2016 at 6:20 PM, Masten, Matt via llvm-dev < llvm-dev at lists.llvm.org> wrote:> RFC: A proposal for vectorizing loops with calls to math functions using > SVML (short > vector math library). > > ========> Overview > ========> > Very simply, SVML (Intel short vector math library) functions are vector > variants of > scalar math functions that take vector arguments, apply an operation to > each > element, and store the result in a vector register. These vector variants > can be > generated by the compiler, based on precision requirements specified by the > user, resulting in substantial performance gains. This is an initial > proposal to > add a new LLVM IR transformation pass that will translate scalar math > calls to > svml calls with the help of the loop vectorizer. > > ===================> Problem Description > ===================> > Currently, without the "#pragma clang loop vectorize(enable)", the loop > vectorizer will not vectorize loops with math calls due to cost model > reasons. > Additionally, When the loop pragma is used, the loop vectorizer will widen > the > math call using an intrinsic, but the resulting code is inefficient > because the > intrinsic is replaced with scalarized function calls. Please see the > example > below for a simple loop containing a sinf call. For demonstration > purposes, the > example was compiled for an xmm target, thus VF = 4 given the float type. > > Example: sinf.c > > #define N 1000 > > #pragma clang loop vectorize(enable) > for (i = 0; i < N; i++) { > array[i] = sinf((float)i); > } > > Without the loop pragma the loop vectorizer's cost model rejects the loop. > > clang -c -ffast-math -O2 -Rpass-analysis=loop-vectorize > -Rpass-missed=loop-vectorize sinf.c > > sinf.c:19:3: remark: the cost-model indicates that vectorization is not > beneficial [-Rpass-analysis=loop-vectorize] > for (i = 0; i < N; i++) { > ^ > sinf.c:19:3: remark: the cost-model indicates that interleaving is not > beneficial and is explicitly disabled or interleave count is set to 1 > [-Rpass-analysis=loop-vectorize] > > When the the loop pragma is used, the loop is vectorized and the call to > @llvm.sin.v4f32 is generated, but the call is later scalarized with the > additional overhead of unpacking the scalar function arguments from a > vector. > This can be seen from inspection of the resulting assembly code just below > the > LLVM IR. > > vector.body: ; preds = %vector.body, % > vector.ph > %index = phi i64 [ 0, %vector.ph ], [ %index.next, %vector.body ], !dbg > !6 > %0 = trunc i64 %index to i32, !dbg !7 > %broadcast.splatinsert6 = insertelement <4 x i32> undef, i32 %0, i32 0, > !dbg !7 > %broadcast.splat7 = shufflevector <4 x i32> %broadcast.splatinsert6, > <4 x i32> undef, <4 x i32> zeroinitializer, !dbg !7 > %induction8 = add <4 x i32> %broadcast.splat7, <i32 0, i32 1, i32 2, i32 > 3>, > !dbg !7 > %1 = sitofp <4 x i32> %induction8 to <4 x float>, !dbg !7 > %2 = call <4 x float> @llvm.sin.v4f32(<4 x float> %1), !dbg !8 > %3 = getelementptr inbounds float, float* %array, i64 %index, !dbg !9 > %4 = bitcast float* %3 to <4 x float>*, !dbg !10 > store <4 x float> %2, <4 x float>* %4, align 4, !dbg !10, !tbaa !11 > %index.next = add i64 %index, 4, !dbg !6 > %5 = icmp eq i64 %index.next, 1000, !dbg !6 > br i1 %5, label %middle.block, label %vector.body, !dbg !6, !llvm.loop > !15 > > > .LBB0_1: # %vector.body > # =>This Inner Loop Header: Depth=1 > movd %ebx, %xmm0 > pshufd $0, %xmm0, %xmm0 # xmm0 = xmm0[0,0,0,0] > paddd .LCPI0_0(%rip), %xmm0 > cvtdq2ps %xmm0, %xmm0 > movaps %xmm0, 16(%rsp) # 16-byte Spill > shufps $231, %xmm0, %xmm0 # xmm0 = xmm0[3,1,2,3] > callq sinf > movaps %xmm0, (%rsp) # 16-byte Spill > movaps 16(%rsp), %xmm0 # 16-byte Reload > shufps $229, %xmm0, %xmm0 # xmm0 = xmm0[1,1,2,3] > callq sinf > unpcklps (%rsp), %xmm0 # 16-byte Folded Reload > # xmm0 > xmm0[0],mem[0],xmm0[1],mem[1] > movaps %xmm0, (%rsp) # 16-byte Spill > movaps 16(%rsp), %xmm0 # 16-byte Reload > callq sinf > movaps %xmm0, 32(%rsp) # 16-byte Spill > movapd 16(%rsp), %xmm0 # 16-byte Reload > shufpd $1, %xmm0, %xmm0 # xmm0 = xmm0[1,0] > callq sinf > movaps 32(%rsp), %xmm1 # 16-byte Reload > unpcklps %xmm0, %xmm1 # xmm1 > xmm1[0],xmm0[0],xmm1[1],xmm0[1] > unpcklps (%rsp), %xmm1 # 16-byte Folded Reload > # xmm1 > xmm1[0],mem[0],xmm1[1],mem[1] > movups %xmm1, (%r14,%rbx,4) > addq $4, %rbx > cmpq $1000, %rbx # imm = 0x3E8 > jne .LBB0_1 > > ==========================> Proposed New Functionality > ==========================> > In order to take advantage of the performance benefits of the svml > library, the > proposed solution is to introduce a new LLVM IR pass that is capable of > translating the vector math intrinsics to svml calls. As an example, the > LLVM IR > above for "vector.body", introduced in the Problem Description section, > would > serve as input to the proposed pass and be transformed into the following > LLVM > IR. Special attention should be paid to the "__svml_sinf4_ha" call in the > LLVM > IR and resulting assembly code snippet. > > vector.body: ; preds = %vector.body, > %entry > %index = phi i64 [ 0, %entry ], [ %index.next, %vector.body ], !dbg !6 > %0 = trunc i64 %index to i32, !dbg !7 > %broadcast.splatinsert6 = insertelement <4 x i32> undef, i32 %0, i32 0, > !dbg !7 > %broadcast.splat7 = shufflevector <4 x i32> %broadcast.splatinsert6, > <4 x i32> undef, <4 x i32> zeroinitializer, !dbg !7 > %induction8 = add <4 x i32> %broadcast.splat7, <i32 0, i32 1, i32 2, i32 > 3>, > !dbg !7 > %1 = sitofp <4 x i32> %induction8 to <4 x float>, !dbg !7 > %vcall = call <4 x float> @__svml_sinf4_ha(<4 x float> %1) > %2 = getelementptr inbounds float, float* %array, i64 %index, !dbg !8 > %3 = bitcast float* %2 to <4 x float>*, !dbg !9 > store <4 x float> %vcall, <4 x float>* %3, align 4, !dbg !9, !tbaa !10 > %index.next = add i64 %index, 4, !dbg !6 > %4 = icmp eq i64 %index.next, 1000, !dbg !6 > br i1 %4, label %for.end, label %vector.body, !dbg !6, !llvm.loop !14 > > The resulting assembly would appear as: > > .LBB0_1: # %vector.body > # =>This Inner Loop Header: Depth=1 > movd %ebx, %xmm0 > pshufd $0, %xmm0, %xmm0 # xmm0 = xmm0[0,0,0,0] > paddd .LCPI0_0(%rip), %xmm0 > cvtdq2ps %xmm0, %xmm0 > callq __svml_sinf4_ha > movups %xmm0, (%r14,%rbx,4) > addq $4, %rbx > cmpq $1000, %rbx # imm = 0x3E8 > jne .LBB0_1 > > In order to perform the translation, several requirements must be met to > guide > code generation. Those include: > > 1) In addition to the -ffast-math flag, support is needed from clang to > allow > the user to be able to specify the desired precision requirements. The > additional flags needed include the following, where "imf" is shorthand > for > "Intel math function". > > -fimf-absolute-error=value[:funclist] > define the maximum allowable absolute error for math library > function results > value - a positive, floating-point number conforming to the > format [digits][.digits][{e|E}[sign]digits] > funclist - optional comma separated list of one or more math > library functions to which the attribute should be > applied > > -fimf-accuracy-bits=bits[:funclist] > define the relative error, measured by the number of correct > bits, > for math library function results > bits - a positive, floating-point number > funclist - optional comma separated list of one or more math > library functions to which the attribute should be > applied > > -fimf-arch-consistency=value[:funclist] > ensures that the math library functions produce consistent > results > across different implementations of the same architecture > value - true or false > funclist - optional comma separated list of one or more math > library functions to which the attribute should be > applied > > -fimf-max-error=ulps[:funclist] > defines the maximum allowable relative error, measured in ulps, > for > math library function results > ulps - a positive, floating-point number conforming to the > format [digits][.digits][{e|E}[sign]digits] > funclist - optional comma separated list of one or more math > library functions to which the attribute should be > applied > > -fimf-precision=value[:funclist] > defines the accuracy (precision) for math library functions > value - defined as one of the following values > high - equivalent to max-error = 0.6 > medium - equivalent to max-error = 4 > low - equivalent to accuracy-bits = 11 (single > precision); accuracy-bits = 26 (double > precision) > funclist - optional comma separated list of one or more math > library functions to which the attribute should be > applied > > -fimf-domain-exclusion=classlist[:funclist] > indicates the input arguments domain on which math functions > must provide correct results. > classlist - defined as one of the following values > nans, infinities, denormals, zeros > all, none, common > funclist - optional list of one or more math library > functions to which the attribute should be applied. > > Information from the flags can then be encoded as function attributes at > each > call site. In the future, this functionality will enable more fine-grained > control over specifying precision for individual calls/regions, instead of > setting the precision requirements for all call instances of a function. > Please > note that the example translation presented so far does not have the IMF > attributes attached to the @llvm.sin.v4f32 call, and as a result the > default is > set to an svml variant marked with "_ha" (max-error = 0.6), which is short > for > high accuracy. Other supported variants will include low precision, > enhanced > performance, bitwise reproducible, and correctly rounded. Please refer to > the > IEEE-754 standard for additional information regarding supported > precisions. > The compiler will select the most appropriate variant based on the IMF > attributes. See #2. > > 2) An interface to query for the appropriate svml function variant based > on the > scalar function name and IMF attributes. > > 3) For calls to math functions that store to memory (e.g., sincos), > additional > analysis of the pointer arguments is beneficial in order to generate > the best > performing load/store instructions. > > =====================> GCC/ICC compatibility > =====================> > The initial implementation will involve the translation of 6 svml > functions, > which include sin, cos, log, pow, exp, and sincos (both single and double > precision variants). Support for these functions matches the current > capabilities of GCC and a subset of ICC. As more functions become > open-sourced, > the plan is to support them as part of the final solution determined from > this > proposal. The flags referenced in the Proposed New Functionality section > are > required to maintain icc compatibility. > > ======================> Current Implementation > ======================> > To evaluate the feasibility of this proposal, a prototype transform pass > has > been developed, which performs the following: > > 1) Searches for vector math intrinsics as candidates for translation to > svml. > > 2) Reads function attributes to obtain precision requirements for the > call. If > none, default to attributes that will force the selection of a high > accuracy > variant. > > 3) Since the vector factor of the intrinsic can be wider than what is > legally > supported by the target, type legalization is performed so that the > correct > svml variant is selected. For example, if a call to > @llvm.sin.v8f32(<8 x float> %1) is made for an xmm target, the pass will > generate two __svml_sinf4 calls and will do the appropriate splitting > of %1 > to create the new arguments for each call. In addition, the multiple > return > vectors are recombined and users of the original return vector are > updated. > The pass is also capable of handling less than full vector cases. E.g., > @llvm.sin.v2f32. > > 4) Special handling for sincos since the results are stored to a double > wide > vector and additional analysis is needed to optimize the stores to > memory. > Additional shuffling is required to obtain the sin and cos results from > the double wide vector. > > 5) Vector intrinsics that are not translated to svml are scalarized. > > 6) The loop vectorizer has been taught to allow widening of sincos and > additional utilities have been written to analyze arguments for sincos. > > ========> Feedback > ========> > For those who are interested in this topic, I would like to ask for your > review > of this proposal and would definitely appreciate any/all feedback on the > proposed approach. Help is also very welcome and much appreciated in the > development process. > _______________________________________________ > LLVM Developers mailing list > llvm-dev at lists.llvm.org > http://lists.llvm.org/cgi-bin/mailman/listinfo/llvm-dev >-------------- next part -------------- An HTML attachment was scrubbed... URL: <http://lists.llvm.org/pipermail/llvm-dev/attachments/20160404/e2773916/attachment-0001.html>
Masten, Matt via llvm-dev
2016-Apr-04 23:39 UTC
[llvm-dev] RFC: A proposal for vectorizing loops with calls to math functions using SVML
Hi Sanjay, For sincos calls, I’m currently just going through isTriviallyVectorizable(), which was good enough to get things working so that I could test the translation. I don’t see why this cannot be changed to use addVectorizableFunctionsFromVecLib(). The other functions that I’m working with are already vectorized using the loop pragma. Those include sin, cos, exp, log, and pow. From: Sanjay Patel [mailto:spatel at rotateright.com] Sent: Monday, April 04, 2016 10:57 AM To: Masten, Matt Cc: llvm-dev at lists.llvm.org Subject: Re: [llvm-dev] RFC: A proposal for vectorizing loops with calls to math functions using SVML Hi Matt - Are you using the same TLI hook as Darwin's Accelerate framework: addVectorizableFunctionsFromVecLib()? If not, why not? On Thu, Mar 31, 2016 at 6:20 PM, Masten, Matt via llvm-dev <llvm-dev at lists.llvm.org<mailto:llvm-dev at lists.llvm.org>> wrote: RFC: A proposal for vectorizing loops with calls to math functions using SVML (short vector math library). ========Overview ======== Very simply, SVML (Intel short vector math library) functions are vector variants of scalar math functions that take vector arguments, apply an operation to each element, and store the result in a vector register. These vector variants can be generated by the compiler, based on precision requirements specified by the user, resulting in substantial performance gains. This is an initial proposal to add a new LLVM IR transformation pass that will translate scalar math calls to svml calls with the help of the loop vectorizer. ===================Problem Description =================== Currently, without the "#pragma clang loop vectorize(enable)", the loop vectorizer will not vectorize loops with math calls due to cost model reasons. Additionally, When the loop pragma is used, the loop vectorizer will widen the math call using an intrinsic, but the resulting code is inefficient because the intrinsic is replaced with scalarized function calls. Please see the example below for a simple loop containing a sinf call. For demonstration purposes, the example was compiled for an xmm target, thus VF = 4 given the float type. Example: sinf.c #define N 1000 #pragma clang loop vectorize(enable) for (i = 0; i < N; i++) { array[i] = sinf((float)i); } Without the loop pragma the loop vectorizer's cost model rejects the loop. clang -c -ffast-math -O2 -Rpass-analysis=loop-vectorize -Rpass-missed=loop-vectorize sinf.c sinf.c:19:3: remark: the cost-model indicates that vectorization is not beneficial [-Rpass-analysis=loop-vectorize] for (i = 0; i < N; i++) { ^ sinf.c:19:3: remark: the cost-model indicates that interleaving is not beneficial and is explicitly disabled or interleave count is set to 1 [-Rpass-analysis=loop-vectorize] When the the loop pragma is used, the loop is vectorized and the call to @llvm.sin.v4f32 is generated, but the call is later scalarized with the additional overhead of unpacking the scalar function arguments from a vector. This can be seen from inspection of the resulting assembly code just below the LLVM IR. vector.body: ; preds = %vector.body, %vector.ph<http://vector.ph> %index = phi i64 [ 0, %vector.ph<http://vector.ph> ], [ %index.next, %vector.body ], !dbg !6 %0 = trunc i64 %index to i32, !dbg !7 %broadcast.splatinsert6 = insertelement <4 x i32> undef, i32 %0, i32 0, !dbg !7 %broadcast.splat7 = shufflevector <4 x i32> %broadcast.splatinsert6, <4 x i32> undef, <4 x i32> zeroinitializer, !dbg !7 %induction8 = add <4 x i32> %broadcast.splat7, <i32 0, i32 1, i32 2, i32 3>, !dbg !7 %1 = sitofp <4 x i32> %induction8 to <4 x float>, !dbg !7 %2 = call <4 x float> @llvm.sin.v4f32(<4 x float> %1), !dbg !8 %3 = getelementptr inbounds float, float* %array, i64 %index, !dbg !9 %4 = bitcast float* %3 to <4 x float>*, !dbg !10 store <4 x float> %2, <4 x float>* %4, align 4, !dbg !10, !tbaa !11 %index.next = add i64 %index, 4, !dbg !6 %5 = icmp eq i64 %index.next, 1000, !dbg !6 br i1 %5, label %middle.block, label %vector.body, !dbg !6, !llvm.loop !15 .LBB0_1: # %vector.body # =>This Inner Loop Header: Depth=1 movd %ebx, %xmm0 pshufd $0, %xmm0, %xmm0 # xmm0 = xmm0[0,0,0,0] paddd .LCPI0_0(%rip), %xmm0 cvtdq2ps %xmm0, %xmm0 movaps %xmm0, 16(%rsp) # 16-byte Spill shufps $231, %xmm0, %xmm0 # xmm0 = xmm0[3,1,2,3] callq sinf movaps %xmm0, (%rsp) # 16-byte Spill movaps 16(%rsp), %xmm0 # 16-byte Reload shufps $229, %xmm0, %xmm0 # xmm0 = xmm0[1,1,2,3] callq sinf unpcklps (%rsp), %xmm0 # 16-byte Folded Reload # xmm0 = xmm0[0],mem[0],xmm0[1],mem[1] movaps %xmm0, (%rsp) # 16-byte Spill movaps 16(%rsp), %xmm0 # 16-byte Reload callq sinf movaps %xmm0, 32(%rsp) # 16-byte Spill movapd 16(%rsp), %xmm0 # 16-byte Reload shufpd $1, %xmm0, %xmm0 # xmm0 = xmm0[1,0] callq sinf movaps 32(%rsp), %xmm1 # 16-byte Reload unpcklps %xmm0, %xmm1 # xmm1 = xmm1[0],xmm0[0],xmm1[1],xmm0[1] unpcklps (%rsp), %xmm1 # 16-byte Folded Reload # xmm1 = xmm1[0],mem[0],xmm1[1],mem[1] movups %xmm1, (%r14,%rbx,4) addq $4, %rbx cmpq $1000, %rbx # imm = 0x3E8 jne .LBB0_1 ==========================Proposed New Functionality ========================== In order to take advantage of the performance benefits of the svml library, the proposed solution is to introduce a new LLVM IR pass that is capable of translating the vector math intrinsics to svml calls. As an example, the LLVM IR above for "vector.body", introduced in the Problem Description section, would serve as input to the proposed pass and be transformed into the following LLVM IR. Special attention should be paid to the "__svml_sinf4_ha" call in the LLVM IR and resulting assembly code snippet. vector.body: ; preds = %vector.body, %entry %index = phi i64 [ 0, %entry ], [ %index.next, %vector.body ], !dbg !6 %0 = trunc i64 %index to i32, !dbg !7 %broadcast.splatinsert6 = insertelement <4 x i32> undef, i32 %0, i32 0, !dbg !7 %broadcast.splat7 = shufflevector <4 x i32> %broadcast.splatinsert6, <4 x i32> undef, <4 x i32> zeroinitializer, !dbg !7 %induction8 = add <4 x i32> %broadcast.splat7, <i32 0, i32 1, i32 2, i32 3>, !dbg !7 %1 = sitofp <4 x i32> %induction8 to <4 x float>, !dbg !7 %vcall = call <4 x float> @__svml_sinf4_ha(<4 x float> %1) %2 = getelementptr inbounds float, float* %array, i64 %index, !dbg !8 %3 = bitcast float* %2 to <4 x float>*, !dbg !9 store <4 x float> %vcall, <4 x float>* %3, align 4, !dbg !9, !tbaa !10 %index.next = add i64 %index, 4, !dbg !6 %4 = icmp eq i64 %index.next, 1000, !dbg !6 br i1 %4, label %for.end, label %vector.body, !dbg !6, !llvm.loop !14 The resulting assembly would appear as: .LBB0_1: # %vector.body # =>This Inner Loop Header: Depth=1 movd %ebx, %xmm0 pshufd $0, %xmm0, %xmm0 # xmm0 = xmm0[0,0,0,0] paddd .LCPI0_0(%rip), %xmm0 cvtdq2ps %xmm0, %xmm0 callq __svml_sinf4_ha movups %xmm0, (%r14,%rbx,4) addq $4, %rbx cmpq $1000, %rbx # imm = 0x3E8 jne .LBB0_1 In order to perform the translation, several requirements must be met to guide code generation. Those include: 1) In addition to the -ffast-math flag, support is needed from clang to allow the user to be able to specify the desired precision requirements. The additional flags needed include the following, where "imf" is shorthand for "Intel math function". -fimf-absolute-error=value[:funclist] define the maximum allowable absolute error for math library function results value - a positive, floating-point number conforming to the format [digits][.digits][{e|E}[sign]digits] funclist - optional comma separated list of one or more math library functions to which the attribute should be applied -fimf-accuracy-bits=bits[:funclist] define the relative error, measured by the number of correct bits, for math library function results bits - a positive, floating-point number funclist - optional comma separated list of one or more math library functions to which the attribute should be applied -fimf-arch-consistency=value[:funclist] ensures that the math library functions produce consistent results across different implementations of the same architecture value - true or false funclist - optional comma separated list of one or more math library functions to which the attribute should be applied -fimf-max-error=ulps[:funclist] defines the maximum allowable relative error, measured in ulps, for math library function results ulps - a positive, floating-point number conforming to the format [digits][.digits][{e|E}[sign]digits] funclist - optional comma separated list of one or more math library functions to which the attribute should be applied -fimf-precision=value[:funclist] defines the accuracy (precision) for math library functions value - defined as one of the following values high - equivalent to max-error = 0.6 medium - equivalent to max-error = 4 low - equivalent to accuracy-bits = 11 (single precision); accuracy-bits = 26 (double precision) funclist - optional comma separated list of one or more math library functions to which the attribute should be applied -fimf-domain-exclusion=classlist[:funclist] indicates the input arguments domain on which math functions must provide correct results. classlist - defined as one of the following values nans, infinities, denormals, zeros all, none, common funclist - optional list of one or more math library functions to which the attribute should be applied. Information from the flags can then be encoded as function attributes at each call site. In the future, this functionality will enable more fine-grained control over specifying precision for individual calls/regions, instead of setting the precision requirements for all call instances of a function. Please note that the example translation presented so far does not have the IMF attributes attached to the @llvm.sin.v4f32 call, and as a result the default is set to an svml variant marked with "_ha" (max-error = 0.6), which is short for high accuracy. Other supported variants will include low precision, enhanced performance, bitwise reproducible, and correctly rounded. Please refer to the IEEE-754 standard for additional information regarding supported precisions. The compiler will select the most appropriate variant based on the IMF attributes. See #2. 2) An interface to query for the appropriate svml function variant based on the scalar function name and IMF attributes. 3) For calls to math functions that store to memory (e.g., sincos), additional analysis of the pointer arguments is beneficial in order to generate the best performing load/store instructions. =====================GCC/ICC compatibility ===================== The initial implementation will involve the translation of 6 svml functions, which include sin, cos, log, pow, exp, and sincos (both single and double precision variants). Support for these functions matches the current capabilities of GCC and a subset of ICC. As more functions become open-sourced, the plan is to support them as part of the final solution determined from this proposal. The flags referenced in the Proposed New Functionality section are required to maintain icc compatibility. ======================Current Implementation ====================== To evaluate the feasibility of this proposal, a prototype transform pass has been developed, which performs the following: 1) Searches for vector math intrinsics as candidates for translation to svml. 2) Reads function attributes to obtain precision requirements for the call. If none, default to attributes that will force the selection of a high accuracy variant. 3) Since the vector factor of the intrinsic can be wider than what is legally supported by the target, type legalization is performed so that the correct svml variant is selected. For example, if a call to @llvm.sin.v8f32(<8 x float> %1) is made for an xmm target, the pass will generate two __svml_sinf4 calls and will do the appropriate splitting of %1 to create the new arguments for each call. In addition, the multiple return vectors are recombined and users of the original return vector are updated. The pass is also capable of handling less than full vector cases. E.g., @llvm.sin.v2f32. 4) Special handling for sincos since the results are stored to a double wide vector and additional analysis is needed to optimize the stores to memory. Additional shuffling is required to obtain the sin and cos results from the double wide vector. 5) Vector intrinsics that are not translated to svml are scalarized. 6) The loop vectorizer has been taught to allow widening of sincos and additional utilities have been written to analyze arguments for sincos. ========Feedback ======== For those who are interested in this topic, I would like to ask for your review of this proposal and would definitely appreciate any/all feedback on the proposed approach. Help is also very welcome and much appreciated in the development process. _______________________________________________ LLVM Developers mailing list llvm-dev at lists.llvm.org<mailto:llvm-dev at lists.llvm.org> http://lists.llvm.org/cgi-bin/mailman/listinfo/llvm-dev -------------- next part -------------- An HTML attachment was scrubbed... URL: <http://lists.llvm.org/pipermail/llvm-dev/attachments/20160404/cd3df0e8/attachment-0001.html>
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