CudaContext.cpp 36.8 KB
Newer Older
1
2
3
4
5
6
7
8
/* -------------------------------------------------------------------------- *
 *                                   OpenMM                                   *
 * -------------------------------------------------------------------------- *
 * This is part of the OpenMM molecular simulation toolkit originating from   *
 * Simbios, the NIH National Center for Physics-Based Simulation of           *
 * Biological Structures at Stanford, funded under the NIH Roadmap for        *
 * Medical Research, grant U54 GM072970. See https://simtk.org.               *
 *                                                                            *
9
 * Portions copyright (c) 2009-2025 Stanford University and the Authors.      *
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
 * Authors: Peter Eastman                                                     *
 * Contributors:                                                              *
 *                                                                            *
 * This program is free software: you can redistribute it and/or modify       *
 * it under the terms of the GNU Lesser General Public License as published   *
 * by the Free Software Foundation, either version 3 of the License, or       *
 * (at your option) any later version.                                        *
 *                                                                            *
 * This program is distributed in the hope that it will be useful,            *
 * but WITHOUT ANY WARRANTY; without even the implied warranty of             *
 * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.  See the              *
 * GNU Lesser General Public License for more details.                        *
 *                                                                            *
 * You should have received a copy of the GNU Lesser General Public License   *
 * along with this program.  If not, see <http://www.gnu.org/licenses/>.      *
 * -------------------------------------------------------------------------- */

#ifdef WIN32
  #define _USE_MATH_DEFINES // Needed to get M_PI
#endif
#include <cmath>
#include "CudaContext.h"
#include "CudaArray.h"
33
#include "CudaBondedUtilities.h"
34
#include "CudaEvent.h"
35
#include "CudaFFT3D.h"
36
#include "CudaIntegrationUtilities.h"
37
#include "CudaKernels.h"
38
#include "CudaKernelSources.h"
39
#include "CudaNonbondedUtilities.h"
40
#include "CudaProgram.h"
41
#include "CudaSort.h"
42
#include "openmm/common/ComputeArray.h"
43
#include "openmm/common/ContextSelector.h"
44
#include "SHA1.h"
45
#include "openmm/MonteCarloFlexibleBarostat.h"
46
47
48
#include "openmm/Platform.h"
#include "openmm/System.h"
#include "openmm/VirtualSite.h"
49
#include "CudaExpressionUtilities.h"
50
#include "openmm/internal/ContextImpl.h"
51
52
53
#include <algorithm>
#include <cstdlib>
#include <fstream>
54
#include <iomanip>
55
#include <iostream>
56
#include <set>
57
58
#include <sstream>
#include <typeinfo>
59
#include <sys/stat.h>
60
#include <cudaProfiler.h>
61
#include <nvrtc.h>
62
63
64
#ifndef WIN32
  #include <unistd.h>
#endif
peastman's avatar
peastman committed
65

66
67
68
69
70

#define CHECK_RESULT(result) CHECK_RESULT2(result, errorMessage);
#define CHECK_RESULT2(result, prefix) \
    if (result != CUDA_SUCCESS) { \
        std::stringstream m; \
71
        m<<prefix<<": "<<getErrorString(result)<<" ("<<result<<")"<<" at "<<__FILE__<<":"<<__LINE__; \
72
73
        throw OpenMMException(m.str());\
    }
74
75
76
77
78
79
#define CHECK_NVRTC_RESULT(result, prefix) \
    if (result != NVRTC_SUCCESS) { \
        stringstream m; \
        m<<prefix<<": "<<nvrtcGetErrorString(result)<<" ("<<result<<")"<<" at "<<__FILE__<<":"<<__LINE__; \
        throw OpenMMException(m.str());\
    }
80
81
82
83
84

using namespace OpenMM;
using namespace std;

const int CudaContext::ThreadBlockSize = 64;
85
const int CudaContext::TileSize = sizeof(tileflags)*8;
86
87
bool CudaContext::hasInitializedCuda = false;

88
CudaContext::CudaContext(const System& system, int deviceIndex, bool useBlockingSync, const string& precision, const string& tempDir, CudaPlatform::PlatformData& platformData,
89
        CudaContext* originalContext) : ComputeContext(system), platformData(platformData), contextIsValid(false), hasAssignedPosqCharges(false),
90
        pinnedBuffer(NULL), integration(NULL), expression(NULL), bonded(NULL), nonbonded(NULL), useBlockingSync(useBlockingSync) {
91
92
    int cudaDriverVersion;
    cuDriverGetVersion(&cudaDriverVersion);
93
94
95
96
97
98
    if (!hasInitializedCuda) {
        CHECK_RESULT2(cuInit(0), "Error initializing CUDA");
        hasInitializedCuda = true;
    }
    if (precision == "single") {
        useDoublePrecision = false;
99
        useMixedPrecision = false;
100
101
102
    }
    else if (precision == "mixed") {
        useDoublePrecision = false;
103
        useMixedPrecision = true;
104
105
106
    }
    else if (precision == "double") {
        useDoublePrecision = true;
107
        useMixedPrecision = false;
108
109
    }
    else
110
        throw OpenMMException("Illegal value for Precision: "+precision);
111
112
    char* cacheVariable = getenv("OPENMM_CACHE_DIR");
    cacheDir = (cacheVariable == NULL ? tempDir : string(cacheVariable));
113
#ifdef WIN32
114
    this->tempDir = tempDir+"\\";
115
    cacheDir = cacheDir+"\\";
116
117
#else
    this->tempDir = tempDir+"/";
118
    cacheDir = cacheDir+"/";
119
120
121
#endif
    contextIndex = platformData.contexts.size();
    string errorMessage = "Error initializing Context";
122
123
124
125
126
127
    if (originalContext == NULL) {
        isLinkedContext = false;
        int numDevices;
        CHECK_RESULT(cuDeviceGetCount(&numDevices));
        if (deviceIndex < -1 || deviceIndex >= numDevices)
            throw OpenMMException("Illegal value for DeviceIndex: "+intToString(deviceIndex));
128

129
130
131
132
133
134
        vector<int> devicePrecedence;
        if (deviceIndex == -1) {
            devicePrecedence = getDevicePrecedence();
        } else {
            devicePrecedence.push_back(deviceIndex);
        }
135

136
137
138
139
140
141
142
143
144
145
        this->deviceIndex = -1;
        for (int i = 0; i < static_cast<int>(devicePrecedence.size()); i++) {
            int trialDeviceIndex = devicePrecedence[i];
            CHECK_RESULT(cuDeviceGet(&device, trialDeviceIndex));
            defaultOptimizationOptions = "--use_fast_math";
            unsigned int flags = CU_CTX_MAP_HOST;
            if (useBlockingSync)
                flags += CU_CTX_SCHED_BLOCKING_SYNC;
            else
                flags += CU_CTX_SCHED_SPIN;
146

147
148
            if (cuCtxCreate(&context, flags, device) == CUDA_SUCCESS) {
                this->deviceIndex = trialDeviceIndex;
149
150
                CUcontext popped;
                cuCtxPopCurrent(&popped);
151
152
                break;
            }
153
        }
154
        if (this->deviceIndex == -1) {
155
156
157
158
            if (deviceIndex != -1)
                throw OpenMMException("The requested CUDA device could not be loaded");
            else
                throw OpenMMException("No compatible CUDA device is available");
159
        }
160
161
162
163
164
165
    }
    else {
        isLinkedContext = true;
        context = originalContext->context;
        this->deviceIndex = originalContext->deviceIndex;
        this->device = originalContext->device;
166
    }
167

168
    int major, minor;
169
170
    CHECK_RESULT(cuDeviceGetAttribute(&major, CU_DEVICE_ATTRIBUTE_COMPUTE_CAPABILITY_MAJOR, device));
    CHECK_RESULT(cuDeviceGetAttribute(&minor, CU_DEVICE_ATTRIBUTE_COMPUTE_CAPABILITY_MINOR, device));
peastman's avatar
peastman committed
171
    int numThreadBlocksPerComputeUnit = (major == 6 ? 4 : 6);
172
    if (cudaDriverVersion < 7000) {
173
174
175
176
177
        // This is a workaround to support GTX 980 with CUDA 6.5.  It reports
        // its compute capability as 5.2, but the compiler doesn't support
        // anything beyond 5.0.
        if (major == 5)
            minor = 0;
178
179
    }
    if (cudaDriverVersion < 8000) {
180
181
182
183
184
185
186
        // This is a workaround to support Pascal with CUDA 7.5.  It reports
        // its compute capability as 6.x, but the compiler doesn't support
        // anything beyond 5.3.
        if (major == 6) {
            major = 5;
            minor = 3;
        }
187
    }
188
    gpuArchitecture = 10*major+minor;
189
    computeCapability = major+0.1*minor;
190

191
    contextIsValid = true;
192
    ContextSelector selector(*this);
193
    CHECK_RESULT(cuCtxSetCacheConfig(CU_FUNC_CACHE_PREFER_SHARED));
194
    if (contextIndex > 0 && originalContext == NULL) {
root's avatar
root committed
195
196
197
        int canAccess;
        cuDeviceCanAccessPeer(&canAccess, getDevice(), platformData.contexts[0]->getDevice());
        if (canAccess) {
198
199
200
201
            {
                ContextSelector selector2(*platformData.contexts[0]);
                CHECK_RESULT(cuCtxEnablePeerAccess(getContext(), 0));
            }
root's avatar
root committed
202
203
204
            CHECK_RESULT(cuCtxEnablePeerAccess(platformData.contexts[0]->getContext(), 0));
        }
    }
205
206
    defaultQueue = shared_ptr<ComputeQueueImpl>(new CudaQueue(0));
    currentQueue = defaultQueue;
207
208
209
210
211
212
    numAtoms = system.getNumParticles();
    paddedNumAtoms = TileSize*((numAtoms+TileSize-1)/TileSize);
    numAtomBlocks = (paddedNumAtoms+(TileSize-1))/TileSize;
    int multiprocessors;
    CHECK_RESULT(cuDeviceGetAttribute(&multiprocessors, CU_DEVICE_ATTRIBUTE_MULTIPROCESSOR_COUNT, device));
    numThreadBlocks = numThreadBlocksPerComputeUnit*multiprocessors;
213
    if (cudaDriverVersion >= 9000) {
Peter Eastman's avatar
Peter Eastman committed
214
215
        compilationDefines["SYNC_WARPS"] = "__syncwarp();";
        compilationDefines["SHFL(var, srcLane)"] = "__shfl_sync(0xffffffff, var, srcLane);";
216
        compilationDefines["BALLOT(var)"] = "__ballot_sync(0xffffffff, var);";
Peter Eastman's avatar
Peter Eastman committed
217
218
219
220
    }
    else {
        compilationDefines["SYNC_WARPS"] = "";
        compilationDefines["SHFL(var, srcLane)"] = "__shfl(var, srcLane);";
221
        compilationDefines["BALLOT(var)"] = "__ballot(var);";
Peter Eastman's avatar
Peter Eastman committed
222
    }
223
    if (useDoublePrecision) {
Peter Eastman's avatar
Peter Eastman committed
224
225
        posq.initialize<double4>(*this, paddedNumAtoms, "posq");
        velm.initialize<double4>(*this, paddedNumAtoms, "velm");
226
        compilationDefines["USE_DOUBLE_PRECISION"] = "1";
227
228
229
        compilationDefines["make_real2"] = "make_double2";
        compilationDefines["make_real3"] = "make_double3";
        compilationDefines["make_real4"] = "make_double4";
230
231
232
        compilationDefines["make_mixed2"] = "make_double2";
        compilationDefines["make_mixed3"] = "make_double3";
        compilationDefines["make_mixed4"] = "make_double4";
233
    }
234
    else if (useMixedPrecision) {
Peter Eastman's avatar
Peter Eastman committed
235
236
237
        posq.initialize<float4>(*this, paddedNumAtoms, "posq");
        posqCorrection.initialize<float4>(*this, paddedNumAtoms, "posqCorrection");
        velm.initialize<double4>(*this, paddedNumAtoms, "velm");
238
239
240
241
242
243
244
245
        compilationDefines["USE_MIXED_PRECISION"] = "1";
        compilationDefines["make_real2"] = "make_float2";
        compilationDefines["make_real3"] = "make_float3";
        compilationDefines["make_real4"] = "make_float4";
        compilationDefines["make_mixed2"] = "make_double2";
        compilationDefines["make_mixed3"] = "make_double3";
        compilationDefines["make_mixed4"] = "make_double4";
    }
246
    else {
Peter Eastman's avatar
Peter Eastman committed
247
248
        posq.initialize<float4>(*this, paddedNumAtoms, "posq");
        velm.initialize<float4>(*this, paddedNumAtoms, "velm");
249
250
251
        compilationDefines["make_real2"] = "make_float2";
        compilationDefines["make_real3"] = "make_float3";
        compilationDefines["make_real4"] = "make_float4";
252
253
254
        compilationDefines["make_mixed2"] = "make_float2";
        compilationDefines["make_mixed3"] = "make_float3";
        compilationDefines["make_mixed4"] = "make_float4";
255
    }
256
257
    force.initialize<long long>(*this, paddedNumAtoms*3, "force");
    posCellOffsets.resize(paddedNumAtoms, mm_int4(0, 0, 0, 0));
258
259
260
261
262
    atomIndexDevice.initialize<int>(*this, paddedNumAtoms, "atomIndex");
    atomIndex.resize(paddedNumAtoms);
    for (int i = 0; i < paddedNumAtoms; ++i)
        atomIndex[i] = i;
    atomIndexDevice.upload(atomIndex);
263
264
265
266

    // Create utility kernels that are used in multiple places.

    CUmodule utilities = createModule(CudaKernelSources::vectorOps+CudaKernelSources::utilities);
267
268
269
270
271
272
    clearBufferKernel = getKernel(utilities, "clearBuffer");
    clearTwoBuffersKernel = getKernel(utilities, "clearTwoBuffers");
    clearThreeBuffersKernel = getKernel(utilities, "clearThreeBuffers");
    clearFourBuffersKernel = getKernel(utilities, "clearFourBuffers");
    clearFiveBuffersKernel = getKernel(utilities, "clearFiveBuffers");
    clearSixBuffersKernel = getKernel(utilities, "clearSixBuffers");
Peter Eastman's avatar
Peter Eastman committed
273
    reduceEnergyKernel = getKernel(utilities, "reduceEnergy");
274
    setChargesKernel = getKernel(utilities, "setCharges");
275
276
277
278
279
280
281
282

    // Set defines based on the requested precision.

    compilationDefines["SQRT"] = useDoublePrecision ? "sqrt" : "sqrtf";
    compilationDefines["RSQRT"] = useDoublePrecision ? "rsqrt" : "rsqrtf";
    compilationDefines["RECIP"] = useDoublePrecision ? "1.0/" : "1.0f/";
    compilationDefines["EXP"] = useDoublePrecision ? "exp" : "expf";
    compilationDefines["LOG"] = useDoublePrecision ? "log" : "logf";
283
    compilationDefines["POW"] = useDoublePrecision ? "pow" : "powf";
284
285
286
287
288
289
    compilationDefines["COS"] = useDoublePrecision ? "cos" : "cosf";
    compilationDefines["SIN"] = useDoublePrecision ? "sin" : "sinf";
    compilationDefines["TAN"] = useDoublePrecision ? "tan" : "tanf";
    compilationDefines["ACOS"] = useDoublePrecision ? "acos" : "acosf";
    compilationDefines["ASIN"] = useDoublePrecision ? "asin" : "asinf";
    compilationDefines["ATAN"] = useDoublePrecision ? "atan" : "atanf";
290
291
    compilationDefines["ERF"] = useDoublePrecision ? "erf" : "erff";
    compilationDefines["ERFC"] = useDoublePrecision ? "erfc" : "erfcf";
292

293
    // Set defines for applying periodic boundary conditions.
294

295
296
297
298
299
    Vec3 boxVectors[3];
    system.getDefaultPeriodicBoxVectors(boxVectors[0], boxVectors[1], boxVectors[2]);
    boxIsTriclinic = (boxVectors[0][1] != 0.0 || boxVectors[0][2] != 0.0 ||
                      boxVectors[1][0] != 0.0 || boxVectors[1][2] != 0.0 ||
                      boxVectors[2][0] != 0.0 || boxVectors[2][1] != 0.0);
300
301
302
    for (int i = 0; i < system.getNumForces(); i++)
        if (dynamic_cast<const MonteCarloFlexibleBarostat*>(&system.getForce(i)) != NULL)
            boxIsTriclinic = true;
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
    if (boxIsTriclinic) {
        compilationDefines["APPLY_PERIODIC_TO_DELTA(delta)"] =
            "{"
            "real scale3 = floor(delta.z*invPeriodicBoxSize.z+0.5f); \\\n"
            "delta.x -= scale3*periodicBoxVecZ.x; \\\n"
            "delta.y -= scale3*periodicBoxVecZ.y; \\\n"
            "delta.z -= scale3*periodicBoxVecZ.z; \\\n"
            "real scale2 = floor(delta.y*invPeriodicBoxSize.y+0.5f); \\\n"
            "delta.x -= scale2*periodicBoxVecY.x; \\\n"
            "delta.y -= scale2*periodicBoxVecY.y; \\\n"
            "real scale1 = floor(delta.x*invPeriodicBoxSize.x+0.5f); \\\n"
            "delta.x -= scale1*periodicBoxVecX.x;}";
        compilationDefines["APPLY_PERIODIC_TO_POS(pos)"] =
            "{"
            "real scale3 = floor(pos.z*invPeriodicBoxSize.z); \\\n"
            "pos.x -= scale3*periodicBoxVecZ.x; \\\n"
            "pos.y -= scale3*periodicBoxVecZ.y; \\\n"
            "pos.z -= scale3*periodicBoxVecZ.z; \\\n"
            "real scale2 = floor(pos.y*invPeriodicBoxSize.y); \\\n"
            "pos.x -= scale2*periodicBoxVecY.x; \\\n"
            "pos.y -= scale2*periodicBoxVecY.y; \\\n"
            "real scale1 = floor(pos.x*invPeriodicBoxSize.x); \\\n"
            "pos.x -= scale1*periodicBoxVecX.x;}";
        compilationDefines["APPLY_PERIODIC_TO_POS_WITH_CENTER(pos, center)"] =
            "{"
            "real scale3 = floor((pos.z-center.z)*invPeriodicBoxSize.z+0.5f); \\\n"
            "pos.x -= scale3*periodicBoxVecZ.x; \\\n"
            "pos.y -= scale3*periodicBoxVecZ.y; \\\n"
            "pos.z -= scale3*periodicBoxVecZ.z; \\\n"
            "real scale2 = floor((pos.y-center.y)*invPeriodicBoxSize.y+0.5f); \\\n"
            "pos.x -= scale2*periodicBoxVecY.x; \\\n"
            "pos.y -= scale2*periodicBoxVecY.y; \\\n"
            "real scale1 = floor((pos.x-center.x)*invPeriodicBoxSize.x+0.5f); \\\n"
            "pos.x -= scale1*periodicBoxVecX.x;}";
    }
    else {
        compilationDefines["APPLY_PERIODIC_TO_DELTA(delta)"] =
            "{"
            "delta.x -= floor(delta.x*invPeriodicBoxSize.x+0.5f)*periodicBoxSize.x; \\\n"
            "delta.y -= floor(delta.y*invPeriodicBoxSize.y+0.5f)*periodicBoxSize.y; \\\n"
            "delta.z -= floor(delta.z*invPeriodicBoxSize.z+0.5f)*periodicBoxSize.z;}";
        compilationDefines["APPLY_PERIODIC_TO_POS(pos)"] =
            "{"
            "pos.x -= floor(pos.x*invPeriodicBoxSize.x)*periodicBoxSize.x; \\\n"
            "pos.y -= floor(pos.y*invPeriodicBoxSize.y)*periodicBoxSize.y; \\\n"
            "pos.z -= floor(pos.z*invPeriodicBoxSize.z)*periodicBoxSize.z;}";
        compilationDefines["APPLY_PERIODIC_TO_POS_WITH_CENTER(pos, center)"] =
            "{"
            "pos.x -= floor((pos.x-center.x)*invPeriodicBoxSize.x+0.5f)*periodicBoxSize.x; \\\n"
            "pos.y -= floor((pos.y-center.y)*invPeriodicBoxSize.y+0.5f)*periodicBoxSize.y; \\\n"
            "pos.z -= floor((pos.z-center.z)*invPeriodicBoxSize.z+0.5f)*periodicBoxSize.z;}";
    }

356
    // Create utilities objects.
357

358
359
    bonded = new CudaBondedUtilities(*this);
    nonbonded = new CudaNonbondedUtilities(*this);
360
361
    integration = new CudaIntegrationUtilities(*this, system);
    expression = new CudaExpressionUtilities(*this);
362
363
364
}

CudaContext::~CudaContext() {
365
    pushAsCurrent();
peastman's avatar
peastman committed
366
367
368
369
370
371
372
373
    for (auto force : forces)
        delete force;
    for (auto listener : reorderListeners)
        delete listener;
    for (auto computation : preComputations)
        delete computation;
    for (auto computation : postComputations)
        delete computation;
374
375
    if (pinnedBuffer != NULL)
        cuMemFreeHost(pinnedBuffer);
376
377
378
379
    if (integration != NULL)
        delete integration;
    if (expression != NULL)
        delete expression;
380
381
    if (bonded != NULL)
        delete bonded;
382
383
    if (nonbonded != NULL)
        delete nonbonded;
384
385
    if (contextIsValid && !isLinkedContext)
        cuProfilerStop();
386
    popAsCurrent();
387
    string errorMessage = "Error deleting Context";
388
    if (contextIsValid && !isLinkedContext)
389
        cuCtxDestroy(context);
390
    contextIsValid = false;
391
392
}

393
void CudaContext::initialize() {
394
    ContextSelector selector(*this);
395
    string errorMessage = "Error initializing Context";
396
    int numEnergyBuffers = max(numThreadBlocks*ThreadBlockSize, nonbonded->getNumEnergyBuffers());
397
398
    int multiprocessors;
    CHECK_RESULT2(cuDeviceGetAttribute(&multiprocessors, CU_DEVICE_ATTRIBUTE_MULTIPROCESSOR_COUNT, device), "Error checking GPU properties");
399
    if (useDoublePrecision) {
Peter Eastman's avatar
Peter Eastman committed
400
        energyBuffer.initialize<double>(*this, numEnergyBuffers, "energyBuffer");
401
        energySum.initialize<double>(*this, multiprocessors, "energySum");
402
403
404
405
        int pinnedBufferSize = max(paddedNumAtoms*4, numEnergyBuffers);
        CHECK_RESULT(cuMemHostAlloc(&pinnedBuffer, pinnedBufferSize*sizeof(double), 0));
    }
    else if (useMixedPrecision) {
Peter Eastman's avatar
Peter Eastman committed
406
        energyBuffer.initialize<double>(*this, numEnergyBuffers, "energyBuffer");
407
        energySum.initialize<double>(*this, multiprocessors, "energySum");
408
409
410
411
        int pinnedBufferSize = max(paddedNumAtoms*4, numEnergyBuffers);
        CHECK_RESULT(cuMemHostAlloc(&pinnedBuffer, pinnedBufferSize*sizeof(double), 0));
    }
    else {
Peter Eastman's avatar
Peter Eastman committed
412
        energyBuffer.initialize<float>(*this, numEnergyBuffers, "energyBuffer");
413
        energySum.initialize<float>(*this, multiprocessors, "energySum");
414
415
416
        int pinnedBufferSize = max(paddedNumAtoms*6, numEnergyBuffers);
        CHECK_RESULT(cuMemHostAlloc(&pinnedBuffer, pinnedBufferSize*sizeof(float), 0));
    }
417
418
    for (int i = 0; i < numAtoms; i++) {
        double mass = system.getParticleMass(i);
419
        if (useDoublePrecision || useMixedPrecision)
420
421
422
423
            ((double4*) pinnedBuffer)[i] = make_double4(0.0, 0.0, 0.0, mass == 0.0 ? 0.0 : 1.0/mass);
        else
            ((float4*) pinnedBuffer)[i] = make_float4(0.0f, 0.0f, 0.0f, mass == 0.0 ? 0.0f : (float) (1.0/mass));
    }
Peter Eastman's avatar
Peter Eastman committed
424
    velm.upload(pinnedBuffer);
425
    bonded->initialize(system);
Peter Eastman's avatar
Peter Eastman committed
426
427
    addAutoclearBuffer(force.getDevicePointer(), force.getSize()*force.getElementSize());
    addAutoclearBuffer(energyBuffer.getDevicePointer(), energyBuffer.getSize()*energyBuffer.getElementSize());
428
429
430
    int numEnergyParamDerivs = energyParamDerivNames.size();
    if (numEnergyParamDerivs > 0) {
        if (useDoublePrecision || useMixedPrecision)
Peter Eastman's avatar
Peter Eastman committed
431
            energyParamDerivBuffer.initialize<double>(*this, numEnergyParamDerivs*numEnergyBuffers, "energyParamDerivBuffer");
432
        else
Peter Eastman's avatar
Peter Eastman committed
433
434
            energyParamDerivBuffer.initialize<float>(*this, numEnergyParamDerivs*numEnergyBuffers, "energyParamDerivBuffer");
        addAutoclearBuffer(energyParamDerivBuffer);
435
    }
436
    findMoleculeGroups();
437
    nonbonded->initialize(system);
438
}
439

440
441
void CudaContext::initializeContexts() {
    getPlatformData().initializeContexts(system);
442
443
}

444
445
FFT3D CudaContext::createFFT(int xsize, int ysize, int zsize, bool realToComplex) {
    return FFT3D(new CudaFFT3D(*this, xsize, ysize, zsize, realToComplex));
446
447
}

448
449
450
451
452
void CudaContext::setAsCurrent() {
    if (contextIsValid)
        cuCtxSetCurrent(context);
}

453
454
455
456
457
458
459
460
461
462
463
void CudaContext::pushAsCurrent() {
    if (contextIsValid)
        cuCtxPushCurrent(context);
}

void CudaContext::popAsCurrent() {
    CUcontext popped;
    if (contextIsValid)
        cuCtxPopCurrent(&popped);
}

464
465
466
467
468
CUmodule CudaContext::createModule(const string source, const char* optimizationFlags) {
    return createModule(source, map<string, string>(), optimizationFlags);
}

CUmodule CudaContext::createModule(const string source, const map<string, string>& defines, const char* optimizationFlags) {
469
    string bits = intToString(8*sizeof(void*));
470
471
472
473
    string options = (optimizationFlags == NULL ? defaultOptimizationOptions : string(optimizationFlags));
    stringstream src;
    if (!options.empty())
        src << "// Compilation Options: " << options << endl << endl;
peastman's avatar
peastman committed
474
    for (auto& pair : compilationDefines) {
475
476
477
478
479
480
481
        // Query defines to avoid duplicate variables
        if (defines.find(pair.first) == defines.end()) {
            src << "#define " << pair.first;
            if (!pair.second.empty())
                src << " " << pair.second;
            src << endl;
        }
482
483
484
    }
    if (!compilationDefines.empty())
        src << endl;
485
486
487
488
489
490
491
492
493
494
495
496
    if (useDoublePrecision) {
        src << "typedef double real;\n";
        src << "typedef double2 real2;\n";
        src << "typedef double3 real3;\n";
        src << "typedef double4 real4;\n";
    }
    else {
        src << "typedef float real;\n";
        src << "typedef float2 real2;\n";
        src << "typedef float3 real3;\n";
        src << "typedef float4 real4;\n";
    }
497
498
499
500
501
502
503
504
505
506
507
508
    if (useDoublePrecision || useMixedPrecision) {
        src << "typedef double mixed;\n";
        src << "typedef double2 mixed2;\n";
        src << "typedef double3 mixed3;\n";
        src << "typedef double4 mixed4;\n";
    }
    else {
        src << "typedef float mixed;\n";
        src << "typedef float2 mixed2;\n";
        src << "typedef float3 mixed3;\n";
        src << "typedef float4 mixed4;\n";
    }
509
    src << "typedef unsigned int tileflags;\n";
510
    src << CudaKernelSources::common << endl;
peastman's avatar
peastman committed
511
512
513
514
    for (auto& pair : defines) {
        src << "#define " << pair.first;
        if (!pair.second.empty())
            src << " " << pair.second;
515
516
517
518
519
        src << endl;
    }
    if (!defines.empty())
        src << endl;
    src << source << endl;
520
521
    
    // Determine what architecture to compile for.
522
523
524
525

    int maxCompilerArchitecture;
#if CUDA_VERSION < 11020
    // CUDA versions before 11.2 can't query the compiler to see what it supports.
526
    
527
528
529
530
531
532
533
534
535
    maxCompilerArchitecture = 75;
#else
    int numArchs;
    CHECK_NVRTC_RESULT(nvrtcGetNumSupportedArchs(&numArchs), "Error querying supported architectures");
    vector<int> archs(numArchs);
    CHECK_NVRTC_RESULT(nvrtcGetSupportedArchs(archs.data()), "Error querying supported architectures");
    maxCompilerArchitecture = archs.back();
#endif
    string compileArchitecture = intToString(min(gpuArchitecture, maxCompilerArchitecture));
536

537
    // See whether we already have PTX for this kernel cached.
538

539
540
541
542
543
544
    CSHA1 sha1;
    sha1.Update((const UINT_8*) src.str().c_str(), src.str().size());
    sha1.Final();
    UINT_8 hash[20];
    sha1.GetHash(hash);
    stringstream cacheFile;
545
    cacheFile << cacheDir;
546
547
548
    cacheFile.flags(ios::hex);
    for (int i = 0; i < 20; i++)
        cacheFile << setw(2) << setfill('0') << (int) hash[i];
549
    cacheFile << '_' << compileArchitecture << '_' << bits;
550
551
552
    CUmodule module;
    if (cuModuleLoad(&module, cacheFile.str().c_str()) == CUDA_SUCCESS)
        return module;
553

554
    // Select a name for the output file.
555

556
557
    stringstream tempFileName;
    tempFileName << "openmmTempKernel" << this; // Include a pointer to this context as part of the filename to avoid collisions.
558
    tempFileName << "_" << this_thread::get_id();
559
    string outputFile = (tempDir+tempFileName.str()+".ptx");
560

561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
583
584
585
586
587
588
589
590
591
    // Split the command line flags into an array of options.
    
    string flags = "-arch=compute_"+compileArchitecture+" "+options;
    stringstream flagsStream(flags);
    string flag;
    vector<string> splitFlags;
    while (flagsStream >> flag)
        splitFlags.push_back(flag);
    int numOptions = splitFlags.size();
    vector<const char*> optionsVec(numOptions);
    for (int i = 0; i < numOptions; i++)
        optionsVec[i] = &splitFlags[i][0];
    
    // Compile the program to PTX.
    
    nvrtcProgram program;
    CHECK_NVRTC_RESULT(nvrtcCreateProgram(&program, src.str().c_str(), NULL, 0, NULL, NULL), "Error creating program");
    try {
        nvrtcResult result = nvrtcCompileProgram(program, optionsVec.size(), &optionsVec[0]);
        if (result != NVRTC_SUCCESS) {
            size_t logSize;
            nvrtcGetProgramLogSize(program, &logSize);
            vector<char> log(logSize);
            nvrtcGetProgramLog(program, &log[0]);
            throw OpenMMException("Error compiling program: "+string(&log[0]));
        }
        size_t ptxSize;
        nvrtcGetPTXSize(program, &ptxSize);
        vector<char> ptx(ptxSize);
        nvrtcGetPTX(program, &ptx[0]);
        nvrtcDestroyProgram(&program);
592

593
        // If possible, write the PTX out to a temporary file so we can cache it for later use.
594

595
        bool wroteCache = false;
596
597
        try {
            ofstream out(outputFile.c_str());
598
            out << string(&ptx[0]);
599
            out.close();
600
601
            if (!out.fail())
                wroteCache = true;
602
603
        }
        catch (...) {
604
605
606
607
            // Ignore.
        }
        if (!wroteCache) {
            // An error occurred.  Possibly we don't have permission to write to the temp directory.  Just try to load the module directly.
608

609
610
611
612
            CHECK_RESULT2(cuModuleLoadDataEx(&module, &ptx[0], 0, NULL, NULL), "Error loading CUDA module");
            return module;
        }
    }
613
614
615
    catch (...) {
        nvrtcDestroyProgram(&program);
        throw;
616
    }
617
618
619
620
    try {
        CUresult result = cuModuleLoad(&module, outputFile.c_str());
        if (result != CUDA_SUCCESS) {
            std::stringstream m;
621
            m<<"Error loading CUDA module: "<<getErrorString(result)<<" ("<<result<<")";
622
623
            throw OpenMMException(m.str());
        }
624
625
        if (rename(outputFile.c_str(), cacheFile.str().c_str()) != 0)
            remove(outputFile.c_str());
626
627
628
629
630
631
632
        return module;
    }
    catch (...) {
        remove(outputFile.c_str());
        throw;
    }
}
633
634
635
636
637
638
639
640
641
642
643
644

CUfunction CudaContext::getKernel(CUmodule& module, const string& name) {
    CUfunction function;
    CUresult result = cuModuleGetFunction(&function, module, name.c_str());
    if (result != CUDA_SUCCESS) {
        std::stringstream m;
        m<<"Error creating kernel "<<name<<": "<<getErrorString(result)<<" ("<<result<<")";
        throw OpenMMException(m.str());
    }
    return function;
}

645
646
647
648
649
650
651
vector<ComputeContext*> CudaContext::getAllContexts() {
    vector<ComputeContext*> result;
    for (CudaContext* c : platformData.contexts)
        result.push_back(c);
    return result;
}

Peter Eastman's avatar
Peter Eastman committed
652
653
654
655
double& CudaContext::getEnergyWorkspace() {
    return platformData.contextEnergy[contextIndex];
}

656
657
ComputeQueue CudaContext::createQueue() {
    return shared_ptr<ComputeQueueImpl>(new CudaQueue());
658
659
}

660
661
CUstream CudaContext::getCurrentStream() {
    return dynamic_cast<CudaQueue*>(currentQueue.get())->getStream();
662
663
}

664
665
CudaArray* CudaContext::createArray() {
    return new CudaArray();
666
667
}

668
669
670
671
ComputeEvent CudaContext::createEvent() {
    return shared_ptr<ComputeEventImpl>(new CudaEvent(*this));
}

672
673
674
675
ComputeSort CudaContext::createSort(ComputeSortImpl::SortTrait* trait, unsigned int length, bool uniform) {
    return shared_ptr<ComputeSortImpl>(new CudaSort(*this, trait, length, uniform));
}

676
677
678
679
680
681
682
683
684
685
686
687
688
689
690
ComputeProgram CudaContext::compileProgram(const std::string source, const std::map<std::string, std::string>& defines) {
    CUmodule module = createModule(CudaKernelSources::vectorOps+source, defines);
    return shared_ptr<ComputeProgramImpl>(new CudaProgram(*this, module));
}

CudaArray& CudaContext::unwrap(ArrayInterface& array) const {
    CudaArray* cuarray;
    ComputeArray* wrapper = dynamic_cast<ComputeArray*>(&array);
    if (wrapper != NULL)
        cuarray = dynamic_cast<CudaArray*>(&wrapper->getArray());
    else
        cuarray = dynamic_cast<CudaArray*>(&array);
    if (cuarray == NULL)
        throw OpenMMException("Array argument is not an CudaArray");
    return *cuarray;
691
692
693
}

std::string CudaContext::getErrorString(CUresult result) {
Peter Eastman's avatar
Peter Eastman committed
694
695
696
    const char* message;
    if (cuGetErrorName(result, &message) == CUDA_SUCCESS)
        return string(message);
peastman's avatar
peastman committed
697
    return "CUDA error";
698
699
700
701
702
703
}

void CudaContext::executeKernel(CUfunction kernel, void** arguments, int threads, int blockSize, unsigned int sharedSize) {
    if (blockSize == -1)
        blockSize = ThreadBlockSize;
    int gridSize = std::min((threads+blockSize-1)/blockSize, numThreadBlocks);
704
    CUresult result = cuLaunchKernel(kernel, gridSize, 1, 1, blockSize, 1, 1, sharedSize, getCurrentStream(), arguments, NULL);
705
706
707
708
709
710
711
    if (result != CUDA_SUCCESS) {
        stringstream str;
        str<<"Error invoking kernel: "<<getErrorString(result)<<" ("<<result<<")";
        throw OpenMMException(str.str());
    }
}

712
713
714
int CudaContext::computeThreadBlockSize(double memory) const {
    int maxShared;
    CHECK_RESULT2(cuDeviceGetAttribute(&maxShared, CU_DEVICE_ATTRIBUTE_MAX_SHARED_MEMORY_PER_BLOCK, device), "Error querying device property");
715
716
717
718
719
720
721
722
723
    int max = (int) (maxShared/memory);
    if (max < 64)
        return 32;
    int threads = 64;
    while (threads+64 < max)
        threads += 64;
    return threads;
}

724
725
void CudaContext::clearBuffer(ArrayInterface& array) {
    clearBuffer(unwrap(array).getDevicePointer(), array.getSize()*array.getElementSize());
726
727
728
}

void CudaContext::clearBuffer(CUdeviceptr memory, int size) {
729
730
    int words = size/4;
    void* args[] = {&memory, &words};
Peter Eastman's avatar
Peter Eastman committed
731
    executeKernel(clearBufferKernel, args, words, 128);
732
733
}

734
735
void CudaContext::addAutoclearBuffer(ArrayInterface& array) {
    addAutoclearBuffer(unwrap(array).getDevicePointer(), array.getSize()*array.getElementSize());
736
737
}

738
739
void CudaContext::addAutoclearBuffer(CUdeviceptr memory, int size) {
    autoclearBuffers.push_back(memory);
740
    autoclearBufferSizes.push_back(size/4);
741
742
}

743
744
745
746
747
748
749
750
751
752
753
754
755
756
757
758
759
760
761
762
763
764
765
766
767
768
769
770
771
772
773
774
775
776
777
778
779
780
781
782
783
784
785
void CudaContext::clearAutoclearBuffers() {
    int base = 0;
    int total = autoclearBufferSizes.size();
    while (total-base >= 6) {
        void* args[] = {&autoclearBuffers[base], &autoclearBufferSizes[base],
                        &autoclearBuffers[base+1], &autoclearBufferSizes[base+1],
                        &autoclearBuffers[base+2], &autoclearBufferSizes[base+2],
                        &autoclearBuffers[base+3], &autoclearBufferSizes[base+3],
                        &autoclearBuffers[base+4], &autoclearBufferSizes[base+4],
                        &autoclearBuffers[base+5], &autoclearBufferSizes[base+5]};
        executeKernel(clearSixBuffersKernel, args, max(max(max(max(max(autoclearBufferSizes[base], autoclearBufferSizes[base+1]), autoclearBufferSizes[base+2]), autoclearBufferSizes[base+3]), autoclearBufferSizes[base+4]), autoclearBufferSizes[base+5]), 128);
        base += 6;
    }
    if (total-base == 5) {
        void* args[] = {&autoclearBuffers[base], &autoclearBufferSizes[base],
                        &autoclearBuffers[base+1], &autoclearBufferSizes[base+1],
                        &autoclearBuffers[base+2], &autoclearBufferSizes[base+2],
                        &autoclearBuffers[base+3], &autoclearBufferSizes[base+3],
                        &autoclearBuffers[base+4], &autoclearBufferSizes[base+4]};
        executeKernel(clearFiveBuffersKernel, args, max(max(max(max(autoclearBufferSizes[base], autoclearBufferSizes[base+1]), autoclearBufferSizes[base+2]), autoclearBufferSizes[base+3]), autoclearBufferSizes[base+4]), 128);
    }
    else if (total-base == 4) {
        void* args[] = {&autoclearBuffers[base], &autoclearBufferSizes[base],
                        &autoclearBuffers[base+1], &autoclearBufferSizes[base+1],
                        &autoclearBuffers[base+2], &autoclearBufferSizes[base+2],
                        &autoclearBuffers[base+3], &autoclearBufferSizes[base+3]};
        executeKernel(clearFourBuffersKernel, args, max(max(max(autoclearBufferSizes[base], autoclearBufferSizes[base+1]), autoclearBufferSizes[base+2]), autoclearBufferSizes[base+3]), 128);
    }
    else if (total-base == 3) {
        void* args[] = {&autoclearBuffers[base], &autoclearBufferSizes[base],
                        &autoclearBuffers[base+1], &autoclearBufferSizes[base+1],
                        &autoclearBuffers[base+2], &autoclearBufferSizes[base+2]};
        executeKernel(clearThreeBuffersKernel, args, max(max(autoclearBufferSizes[base], autoclearBufferSizes[base+1]), autoclearBufferSizes[base+2]), 128);
    }
    else if (total-base == 2) {
        void* args[] = {&autoclearBuffers[base], &autoclearBufferSizes[base],
                        &autoclearBuffers[base+1], &autoclearBufferSizes[base+1]};
        executeKernel(clearTwoBuffersKernel, args, max(autoclearBufferSizes[base], autoclearBufferSizes[base+1]), 128);
    }
    else if (total-base == 1) {
        clearBuffer(autoclearBuffers[base], autoclearBufferSizes[base]*4);
    }
}
786

Peter Eastman's avatar
Peter Eastman committed
787
double CudaContext::reduceEnergy() {
Peter Eastman's avatar
Peter Eastman committed
788
    int bufferSize = energyBuffer.getSize();
Peter Eastman's avatar
Peter Eastman committed
789
    int workGroupSize  = 512;
Peter Eastman's avatar
Peter Eastman committed
790
    void* args[] = {&energyBuffer.getDevicePointer(), &energySum.getDevicePointer(), &bufferSize, &workGroupSize};
791
    executeKernel(reduceEnergyKernel, args, workGroupSize*energySum.getSize(), workGroupSize, workGroupSize*energyBuffer.getElementSize());
Peter Eastman's avatar
Peter Eastman committed
792
    energySum.download(pinnedBuffer);
793
794
795
796
797
798
799
800
801
802
    double result = 0;
    if (getUseDoublePrecision() || getUseMixedPrecision()) {
        for (int i = 0; i < energySum.getSize(); i++)
            result += ((double*) pinnedBuffer)[i];
    }
    else {
        for (int i = 0; i < energySum.getSize(); i++)
            result += ((float*) pinnedBuffer)[i];
    }
    return result;
Peter Eastman's avatar
Peter Eastman committed
803
804
}

805
void CudaContext::setCharges(const vector<double>& charges) {
Peter Eastman's avatar
Peter Eastman committed
806
807
    if (!chargeBuffer.isInitialized())
        chargeBuffer.initialize(*this, numAtoms, useDoublePrecision ? sizeof(double) : sizeof(float), "chargeBuffer");
Peter Eastman's avatar
Peter Eastman committed
808
809
810
811
    vector<double> c(numAtoms);
    for (int i = 0; i < numAtoms; i++)
        c[i] = charges[i];
    chargeBuffer.upload(c, true);
Peter Eastman's avatar
Peter Eastman committed
812
    void* args[] = {&chargeBuffer.getDevicePointer(), &posq.getDevicePointer(), &atomIndexDevice.getDevicePointer(), &numAtoms};
813
814
815
    executeKernel(setChargesKernel, args, numAtoms);
}

816
817
818
819
820
821
bool CudaContext::requestPosqCharges() {
    bool allow = !hasAssignedPosqCharges;
    hasAssignedPosqCharges = true;
    return allow;
}

822
823
824
825
826
827
828
829
830
void CudaContext::addEnergyParameterDerivative(const string& param) {
    // See if this parameter has already been registered.
    
    for (int i = 0; i < energyParamDerivNames.size(); i++)
        if (param == energyParamDerivNames[i])
            return;
    energyParamDerivNames.push_back(param);
}

831
832
void CudaContext::flushQueue() {
    cuStreamSynchronize(getCurrentStream());
833
834
}

835
836
837
838
839
840
841
842
843
844
vector<int> CudaContext::getDevicePrecedence() {
    int numDevices;
    CUdevice thisDevice;
    string errorMessage = "Error initializing Context";
    vector<pair<pair<int, int>, int> > devices;

    CHECK_RESULT(cuDeviceGetCount(&numDevices));
    for (int i = 0; i < numDevices; i++) {
        CHECK_RESULT(cuDeviceGet(&thisDevice, i));
        int major, minor, clock, multiprocessors, speed;
845
846
        CHECK_RESULT(cuDeviceGetAttribute(&major, CU_DEVICE_ATTRIBUTE_COMPUTE_CAPABILITY_MAJOR, thisDevice));
        CHECK_RESULT(cuDeviceGetAttribute(&minor, CU_DEVICE_ATTRIBUTE_COMPUTE_CAPABILITY_MINOR, thisDevice));
847
848
849
        if (major == 1 && minor < 2)
            continue;

Robert T. McGibbon's avatar
Robert T. McGibbon committed
850
        if ((useDoublePrecision || useMixedPrecision) && (major+0.1*minor < 1.3))
851
852
853
854
855
856
857
858
859
860
861
862
863
864
865
866
867
868
869
870
871
            continue;

        CHECK_RESULT(cuDeviceGetAttribute(&clock, CU_DEVICE_ATTRIBUTE_CLOCK_RATE, thisDevice));
        CHECK_RESULT(cuDeviceGetAttribute(&multiprocessors, CU_DEVICE_ATTRIBUTE_MULTIPROCESSOR_COUNT, thisDevice));
        speed = clock*multiprocessors;
        pair<int, int> deviceProperties = std::make_pair(major, speed);
        devices.push_back(std::make_pair(deviceProperties, -i));
    }

    // sort first by compute capability (higher is better), then speed
    // (higher is better), and finally device index (lower is better)
    std::sort(devices.begin(), devices.end());
    std::reverse(devices.begin(), devices.end());

    vector<int> precedence;
    for (int i = 0; i < static_cast<int>(devices.size()); i++) {
        precedence.push_back(-devices[i].second);
    }

    return precedence;
}
872
873
874
875
876
877
878

unsigned int CudaContext::getEventFlags() {
    unsigned int flags = CU_EVENT_DISABLE_TIMING;
    if (useBlockingSync)
        flags += CU_EVENT_BLOCKING_SYNC;
    return flags;
}