X-Git-Url: https://www.fleuret.org/cgi-bin/gitweb/gitweb.cgi?a=blobdiff_plain;f=dagnn.lua;h=5921c05da410a041186e8cd8806046b4673fd027;hb=84b07c45eb8a2785a81cad7bcf6fadbac0d63f8f;hp=0c1d15303f42ce6e8ad439b787bffe29664511c3;hpb=e50d9b4373f39161df34afb1033c89910963fa47;p=dagnn.git diff --git a/dagnn.lua b/dagnn.lua index 0c1d153..5921c05 100755 --- a/dagnn.lua +++ b/dagnn.lua @@ -26,7 +26,7 @@ local DAG, parent = torch.class('nn.DAG', 'nn.Container') function DAG:__init() parent.__init(self) -- Nodes are indexed by the module they contain - self.node = { } + self.node = {} end -- Apply f on t recursively; use the corresponding elements from args @@ -76,7 +76,7 @@ function DAG:putInOrder() end until nc == 0 - self.sorted = { } + self.sorted = {} for m, d in pairs(distance) do table.insert(self.sorted, { distance = d, nnm = m }) end @@ -86,20 +86,39 @@ function DAG:putInOrder() for i, a in ipairs(self.sorted) do self.sorted[i] = a.nnm end end -function DAG:computeGradOutput(gradInputSucc) - local gi +-- This accumulates x in a where they are both nested tables of +-- tensors. If first is true, set a = x. Behavior is undefined if a +-- and x do not have the exact same structure. +function DAG:nestedAccTensor(a, x, first) + if torch.type(x) == 'table' then + local b = {} + for i in pairs(x) do + b[i] = self:nestedAccTensor(a[i], x[i], first) + end + a = b + else + if first then + if a then + a:resizeAs(x):copy(x) + else + a = x:clone() + end + else + a:add(x) + end + end + return a +end + +function DAG:updateGradOutput(node) + local gradInputSucc = node.gradInputSucc if #gradInputSucc == 1 then - gi = gradInputSucc[1] -- we avoid a clone() + node.gradOutput = gradInputSucc[1] elseif #gradInputSucc > 1 then for k = 1, #gradInputSucc do - if gi then - gi:add(gradInputSucc[k]) - else - gi = gradInputSucc[k]:clone() - end + node.gradOutput = self:nestedAccTensor(node.gradOutput, gradInputSucc[k], k == 1) end end - return gi end ---------------------------------------------------------------------- @@ -127,7 +146,7 @@ function DAG:setInput(i) error('Input modules must have outgoing edges.') end if #self.node[nnm].pred > 0 then - error('Input modules cannog have incoming edges.') + error('Input modules cannot have incoming edges.') end end, self.inputModules @@ -205,9 +224,9 @@ function DAG:updateOutput(input) self:nestedApply( function(nnm, i) - self.node[nnm].input = i - -- nnm:updateOutput(i) - self:rethrowErrors(nnm, self.node[nnm].index, 'updateOutput', i) + local node = self.node[nnm] + node.input = i + self:rethrowErrors(nnm, node.index, 'updateOutput', i) end, self.inputModules, input @@ -226,8 +245,7 @@ function DAG:updateOutput(input) end end node.input = i - -- nnm:updateOutput(i) - self:rethrowErrors(nnm, self.node[nnm].index, 'updateOutput', i) + self:rethrowErrors(nnm, node.index, 'updateOutput', i) end end @@ -246,8 +264,7 @@ function DAG:updateGradInput(input, gradOutput) function(nnm, go) local node = self.node[nnm] node.gradOutput = go - -- nnm:updateGradInput(self.node[nnm].input, go) - self:rethrowErrors(nnm, node.index, 'updateGradInput', self.node[nnm].input, go) + self:rethrowErrors(nnm, node.index, 'updateGradInput', node.input, go) end, self.outputModules, gradOutput ) @@ -264,12 +281,11 @@ function DAG:updateGradInput(input, gradOutput) for k = #self.sorted, 1, -1 do local nnm = self.sorted[k] local node = self.node[nnm] - local pred, gradInputSucc = node.pred, node.gradInputSucc + local pred = node.pred - if #gradInputSucc > 0 then - node.gradOutput = self:computeGradOutput(gradInputSucc) - -- nnm:updateGradInput(node.input, node.gradOutput) - self:rethrowErrors(nnm, self.node[nnm].index, 'updateGradInput', node.input, node.gradOutput) + if #node.gradInputSucc > 0 then + self:updateGradOutput(node) + self:rethrowErrors(nnm, node.index, 'updateGradInput', node.input, node.gradOutput) end -- We fill the gradInputSucc of our predecessors @@ -291,8 +307,6 @@ function DAG:updateGradInput(input, gradOutput) end function DAG:accGradParameters(input, gradOutput, scale) - scale = scale or 1 - assert(self.sorted, 'There has been a DAG structure change before a DAG:accGradParameters') self:nestedApply( @@ -308,7 +322,16 @@ function DAG:accGradParameters(input, gradOutput, scale) for k = 1, #self.modules do local nnm = self.modules[k] local node = self.node[nnm] - -- nnm:accGradParameters(node.input, node.gradOutput, scale) self:rethrowErrors(nnm, k, 'accGradParameters', node.input, node.gradOutput, scale) end end + +function DAG:clearState() + self.sorted = nil + for _, node in pairs(self.node) do + node.gradInputSucc = nil + node.input = nil + node.gradOutput = nil + end + return parent.clearState(self) +end