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init.lua
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init.lua
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require 'cutorch'
require 'nn'
cudnn = require 'cudnn.env'
require('cudnn.ffi')
local C = cudnn.C
local ffi = require 'ffi'
--------------------------------------------------------------------
-- defaults, each should be overrideable via env var:
--------------------------------------------------------------------
cudnn.benchmark = false
cudnn.fastest = false
-- use new cudnn FindEx APIs
-- Warning: this option is experimental and assumes at least 2 warmup iterations!
cudnn.useFindEx = false
-- amount of memory to use on 1st iteration for FindEx
cudnn.initialWorkspaceBytes = 1024
--
cudnn.reservedGPUBytes = 1024*1024
cudnn.maxWorkspaceGPUMemPercent = 95
local maxStreamsPerDevice = 1024
--------------------------------------------------------------------
-- end defaults
--------------------------------------------------------------------
local numDevices = cutorch.getDeviceCount()
-- this tensor keeps track of whether a handle has been initialized or not
local handleStatus = torch.ByteTensor(numDevices,
maxStreamsPerDevice):zero()
-- here we create an array of cudnn handle structs
cudnn.handle = ffi.new('struct cudnnContext*[?]', numDevices*maxStreamsPerDevice)
local function destroy(handle)
local currentDevice = cutorch.getDevice()
for i=1,numDevices do
cutorch.setDevice(i)
-- streams go from 0 to maxStreamsPerDevice - 1
for j=0,maxStreamsPerDevice - 1 do
if handleStatus[i][j + 1] == 1 then -- if handle was created
cudnn.errcheck('cudnnDestroy', handle[(((i-1)*maxStreamsPerDevice) + j)]);
end
end
end
cutorch.setDevice(currentDevice)
end
ffi.gc(cudnn.handle, destroy)
cudnn.typemap = {
['torch.CudaHalfTensor'] = 'CUDNN_DATA_HALF',
['torch.CudaTensor'] = 'CUDNN_DATA_FLOAT',
['torch.CudaDoubleTensor'] = 'CUDNN_DATA_DOUBLE',
}
local sizeofmap = {
['torch.CudaHalfTensor'] = cutorch.hasHalf and ffi.sizeof('half') or 2,
['torch.CudaTensor'] = ffi.sizeof('float'),
['torch.CudaDoubleTensor'] = ffi.sizeof('double'),
}
function cudnn.sizeof(t)
return sizeofmap[torch.type(t)]
end
local onemap = {
['torch.CudaHalfTensor'] = torch.FloatTensor({1}),
['torch.CudaTensor'] = torch.FloatTensor({1}),
['torch.CudaDoubleTensor'] = torch.DoubleTensor({1}),
}
local zeromap = {
['torch.CudaHalfTensor'] = torch.FloatTensor({0}),
['torch.CudaTensor'] = torch.FloatTensor({0}),
['torch.CudaDoubleTensor'] = torch.DoubleTensor({0}),
}
function cudnn.scalar(t, val)
if val == 1 then
return onemap[torch.type(t)]:data()
elseif val == 0 then
return zeromap[torch.type(t)]:data()
else
error('unknown scalar')
end
end
local function fasterHalfMathTypeForCurrentDevice()
-- get info from cutorc
if cutorch.hasFastHalfInstructions() then
return 'CUDNN_DATA_HALF'
else
return 'CUDNN_DATA_FLOAT'
end
end
local configMaths = {}
local function configureMath(overrides)
local currentDevice = cutorch.getDevice()
for i=1,cutorch.getDeviceCount() do
cutorch.setDevice(i)
configMaths[i] = {
['torch.CudaHalfTensor'] = fasterHalfMathTypeForCurrentDevice(),
['torch.CudaTensor'] = 'CUDNN_DATA_FLOAT',
['torch.CudaDoubleTensor'] = 'CUDNN_DATA_DOUBLE',
}
-- apply overrides
if overrides then
for k,v in pairs(overrides) do configMaths[i][k] = v end
end
end
cutorch.setDevice(currentDevice)
end
cudnn.configureMath = configureMath
-- TODO: rename to something like "configuredMathType" on next refactor
-- also, should move torch.type() inside
cudnn.configmap = function(tensortype)
return configMaths[cutorch.getDevice()][tensortype]
end
configureMath()
function cudnn.getHandle()
local device = cutorch.getDevice()
local stream = cutorch.getStream() -- starts from 0
assert(stream < maxStreamsPerDevice, 'cudnn bindings only support max of : '
.. maxStreamsPerDevice .. ' streams per device')
-- lazy initialization of handles
if handleStatus[device][stream + 1] == 0 then
local status = C['cudnnCreate'](cudnn.handle
+ (((device-1) * maxStreamsPerDevice)
+ stream))
if status ~= ffi.C.CUDNN_STATUS_SUCCESS then
local str = ffi.string(C.cudnnGetErrorString(status))
error('Error in CuDNN: ' .. str)
end
handleStatus[device][stream + 1] = 1 -- mark handle as initialized
end
return cudnn.handle[(((device-1)*maxStreamsPerDevice) + stream)]
end
function cudnn.call(f, ...)
C.cudnnSetStream(cudnn.getHandle(),
ffi.C.THCState_getCurrentStream(cutorch.getState()))
return C[f](...)
end
local errcheck = function(f, ...)
local status = cudnn.call(f, ...)
if status ~= ffi.C.CUDNN_STATUS_SUCCESS then
local str = ffi.string(C.cudnnGetErrorString(status))
error('Error in CuDNN: ' .. str .. ' ('..f..')')
return false
end
return true
end
cudnn.errcheck = errcheck
function cudnn.toDescriptor(t)
local typename = torch.typename(t)
assert(cudnn.typemap[typename])
local descriptor = ffi.new('struct cudnnTensorStruct*[1]')
-- create descriptor
errcheck('cudnnCreateTensorDescriptor', descriptor)
-- set gc hook
local function destroy(d)
errcheck('cudnnDestroyTensorDescriptor', d[0]);
end
ffi.gc(descriptor, destroy)
-- view 2D and 3D as 4D
if t:dim() == 2 then
t = t:view(t:size(1), t:size(2), 1, 1)
elseif t:dim() == 3 then
t = t:view(t:size(1), t:size(2), t:size(3), 1)
end
-- set descriptor
local size = torch.LongTensor(t:size()):int()
local stride = torch.LongTensor(t:stride()):int()
errcheck('cudnnSetTensorNdDescriptor', descriptor[0], cudnn.typemap[typename],
t:dim(), size:data(), stride:data())
return descriptor
end
function cudnn.createDescriptors(count, descs_type, create_func, destroy_func)
local ds = ffi.new(descs_type, count)
for i = 0, count - 1 do
errcheck(create_func, ds + i)
end
local function destroyDescriptors(ds)
for i = 0, count - 1 do
errcheck(destroy_func, ds[i])
end
end
ffi.gc(ds, destroyDescriptors)
return ds
end
function cudnn.setConvolutionDescriptor(data, desc)
if not data.arrayLength then data.arrayLength = #data.padA end
if not data.upscaleA then data.upscaleA = torch.IntStorage(data.arrayLength):fill(1) end
if not data.mode then data.mode = 'CUDNN_CROSS_CORRELATION' end
local myDesc = desc or cudnn.createDescriptors(
1, 'struct cudnnConvolutionStruct*[?]',
'cudnnCreateConvolutionDescriptor', 'cudnnDestroyConvolutionDescriptor')
errcheck('cudnnSetConvolutionNdDescriptor', myDesc[0],
data.arrayLength,
torch.IntTensor(data.padA):data(),
torch.IntTensor(data.filterStrideA):data(),
torch.IntTensor(data.upscaleA):data(),
data.mode,
data.dataType)
return myDesc
end
function cudnn.setFilterDescriptor(data, filterDesc)
local myDesc = filterDesc or cudnn.createDescriptors(
1, 'struct cudnnFilterStruct*[?]',
'cudnnCreateFilterDescriptor', 'cudnnDestroyFilterDescriptor')
local dims = data.nbDims or #data.filterDimA
errcheck('cudnnSetFilterNdDescriptor', myDesc[0],
data.dataType, data.format or 'CUDNN_TENSOR_NCHW',
dims, torch.IntTensor(data.filterDimA):data());
return myDesc
end
local sharedBuffer = {}
local nextBufferSize = {}
-- may reassign currentSize
local function allocateStorage(buf, ifGreater)
if buf.nextSize < 0 then
buf.nextSize = buf.currentSize
end
local elSize = 8
-- get number of elements in the buf, rounded up
local newelem = math.floor((buf.nextSize+elSize-1)/elSize)
if buf.storage then
if (newelem == buf.storage:size()) or (ifGreater and newelem < buf.storage:size()) then
else
-- resize to just to make sure we return memory
buf.storage:resize(0)
buf.storage:resize(newelem)
end
else
-- this is to be replaced with new cutorch tempbuf stuff
-- may reassign currentSize again
buf.storage = torch.CudaDoubleStorage(newelem)
end
buf.currentSize = buf.storage:size()*elSize
buf.data = buf.storage:data()
buf.nextSize = -1
end
local function sharedBufForStream(device, stream)
device = device or cutorch.getDevice()
stream = stream or cutorch.getStream() -- starts from 0
if not sharedBuffer[device] then sharedBuffer[device] = {} end
local buf = sharedBuffer[device][stream]
if not buf then
buf = {
currentSize = cudnn.initialWorkspaceBytes,
nextSize = -1
}
allocateStorage(buf)
sharedBuffer[device][stream] = buf
end
return buf
end
function cudnn.getSharedWorkspace(device, stream)
device = device or cutorch.getDevice()
stream = stream or cutorch.getStream()
local buf = sharedBufForStream(device, stream)
return buf.data, buf.currentSize
end
-- Creates a clone of luaStr that can be used to prevent side
-- effects when passing char* to C functions.
function cudnn.externalizeString(luaStr)
local cStr = ffi.new("char[?]", #luaStr+1)
ffi.copy(cStr, luaStr)
return cStr
end
function cudnn.adjustSharedWorkspaceSize(bytesDelta, device, stream)
local buf = sharedBufForStream(device, stream)
buf.nextSize = buf.currentSize + bytesDelta
allocateStorage(buf)
end
function cudnn.setNextWorkspaceSize(bytes, device, stream)
local buf = sharedBufForStream(device, stream)
buf.nextSize = bytes
return buf
end
function cudnn.setSharedWorkspaceSize(bytes, ifGreater, device, stream)
bytes = bytes or cudnn.initialWorkspaceBytes
local buf = cudnn.setNextWorkspaceSize(bytes, device, stream)
allocateStorage(buf, ifGreater)
end
cudnn.find = require('cudnn.find')
require('cudnn.SpatialConvolution')
require('cudnn.VolumetricConvolution')
require('cudnn.SpatialFullConvolution')
require('cudnn.VolumetricFullConvolution')
require('cudnn.Pooling')
require('cudnn.SpatialMaxPooling')
require('cudnn.SpatialAveragePooling')
require('cudnn.Pooling3D')
require('cudnn.VolumetricMaxPooling')
require('cudnn.VolumetricAveragePooling')
require('cudnn.Pointwise')
require('cudnn.ReLU')
require('cudnn.ClippedReLU')
require('cudnn.Tanh')
require('cudnn.Sigmoid')
require('cudnn.SpatialSoftMax')
require('cudnn.SpatialLogSoftMax')
require('cudnn.VolumetricSoftMax')
require('cudnn.VolumetricLogSoftMax')
require('cudnn.SoftMax')
require('cudnn.LogSoftMax')
require('cudnn.SpatialCrossMapLRN')
require('cudnn.BatchNormalization')
require('cudnn.SpatialBatchNormalization')
require('cudnn.VolumetricBatchNormalization')
require('cudnn.SpatialCrossEntropyCriterion')
require('cudnn.SpatialWeightedCrossEntropyCriterion')
require('cudnn.VolumetricCrossEntropyCriterion')
require('cudnn.TemporalConvolution')
require('cudnn.RNN')
require('cudnn.RNNTanh')
require('cudnn.RNNReLU')
require('cudnn.BLSTM')
require('cudnn.LSTM')
require('cudnn.BGRU')
require('cudnn.GRU')
require('cudnn.functional')
require('cudnn.convert')
function cudnn.reset()
-- this resets everything
if cudnn.verbose then
print("cudnn::reset for device #", cutorch.getDevice())
end
cutorch.synchronize()
-- make sure shared buffers that may have been cached, have 0 size
for i=1,numDevices do
sharedBuffer[i] = {}
end
collectgarbage()
-- this resets internal algorithm finder state machine and cache
cudnn.find.reset()
end
return cudnn