local GRULayer = nerv.class('nerv.GRULayer', 'nerv.Layer') function GRULayer:__init(id, global_conf, layer_conf) -- input1:x -- input2:h -- input3:c (h^~) nerv.Layer.__init(self, id, global_conf, layer_conf) if self.dim_in[2] ~= self.dim_out[1] then nerv.error("dim_in[2](%d) mismatch with dim_out[1](%d)", self.dim_in[2], self.dim_out[1]) end -- prepare a DAGLayer to hold the lstm structure local pr = layer_conf.pr if pr == nil then pr = nerv.ParamRepo({}, self.loc_type) end local function ap(str) return self.id .. '.' .. str end local din1, din2 = self.dim_in[1], self.dim_in[2] local dout1 = self.dim_out[1] local layers = { ["nerv.CombinerLayer"] = { [ap("inputXDup")] = {{}, {dim_in = {din1}, dim_out = {din1, din1, din1}, lambda = {1}}}, [ap("inputHDup")] = {{}, {dim_in = {din2}, dim_out = {din2, din2, din2, din2, din2}, lambda = {1}}}, [ap("updateGDup")] = {{}, {dim_in = {din2}, dim_out = {din2, din2}, lambda = {1}}}, [ap("updateMergeL")] = {{}, {dim_in = {din2, din2, din2}, dim_out = {dout1}, lambda = {1, -1, 1}}}, }, ["nerv.AffineLayer"] = { [ap("mainAffineL")] = {{}, {dim_in = {din1, din2}, dim_out = {dout1}, pr = pr}}, }, ["nerv.TanhLayer"] = { [ap("mainTanhL")] = {{}, {dim_in = {dout1}, dim_out = {dout1}}}, }, ["nerv.LSTMGateLayer"] = { [ap("resetGateL")] = {{}, {dim_in = {din1, din2}, dim_out = {din2}, pr = pr}}, [ap("updateGateL")] = {{}, {dim_in = {din1, din2}, dim_out = {din2}, pr = pr}}, }, ["nerv.ElemMulLayer"] = { [ap("resetGMulL")] = {{}, {dim_in = {din2, din2}, dim_out = {din2}}}, [ap("updateGMulCL")] = {{}, {dim_in = {din2, din2}, dim_out = {din2}}}, [ap("updateGMulHL")] = {{}, {dim_in = {din2, din2}, dim_out = {din2}}}, }, } self.lrepo = nerv.LayerRepo(layers, pr, global_conf) local connections = { ["[1]"] = ap("inputXDup[1]"), ["[2]"] = ap("inputHDup[1]"), [ap("inputXDup[1]")] = ap("resetGateL[1]"), [ap("inputHDup[1]")] = ap("resetGateL[2]"), [ap("inputXDup[2]")] = ap("updateGateL[1]"), [ap("inputHDup[2]")] = ap("updateGateL[2]"), [ap("updateGateL[1]")] = ap("updateGDup[1]"), [ap("resetGateL[1]")] = ap("resetGMulL[1]"), [ap("inputHDup[3]")] = ap("resetGMulL[2]"), [ap("inputXDup[3]")] = ap("mainAffineL[1]"), [ap("resetGMulL[1]")] = ap("mainAffineL[2]"), [ap("mainAffineL[1]")] = ap("mainTanhL[1]"), [ap("updateGDup[1]")] = ap("updateGMulHL[1]"), [ap("inputHDup[4]")] = ap("updateGMulHL[2]"), [ap("updateGDup[2]")] = ap("updateGMulCL[1]"), [ap("mainTanhL[1]")] = ap("updateGMulCL[2]"), [ap("inputHDup[5]")] = ap("updateMergeL[1]"), [ap("updateGMulHL[1]")] = ap("updateMergeL[2]"), [ap("updateGMulCL[1]")] = ap("updateMergeL[3]"), [ap("updateMergeL[1]")] = "[1]", } self.dag = nerv.DAGLayer(self.id, global_conf, {dim_in = self.dim_in, dim_out = self.dim_out, sub_layers = self.lrepo, connections = connections}) self:check_dim_len(2, 1) -- x, h and h end function GRULayer:bind_params() local pr = layer_conf.pr if pr == nil then pr = nerv.ParamRepo({}, self.loc_type) end self.lrepo:rebind(pr) end function GRULayer:init(batch_size, chunk_size) self.dag:init(batch_size, chunk_size) end function GRULayer:batch_resize(batch_size, chunk_size) self.dag:batch_resize(batch_size, chunk_size) end function GRULayer:update(bp_err, input, output, t) self.dag:update(bp_err, input, output, t) end function GRULayer:propagate(input, output, t) self.dag:propagate(input, output, t) end function GRULayer:back_propagate(bp_err, next_bp_err, input, output, t) self.dag:back_propagate(bp_err, next_bp_err, input, output, t) end function GRULayer:get_params() return self.dag:get_params() end