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require 'lmptb.lmvocab'
require 'lmptb.lmfeeder'
require 'lmptb.lmutil'
require 'lmptb.layer.init'
require 'rnn.layer_tdag'
--[[global function rename]]--
printf = nerv.printf
--[[global function rename ends]]--
--global_conf: table
--first_time: bool
--Returns: a ParamRepo
function prepare_parameters(global_conf, first_time)
printf("%s preparing parameters...\n", global_conf.sche_log_pre)
if (first_time) then
ltp_ih = nerv.LinearTransParam("ltp_ih", global_conf)
ltp_ih.trans = global_conf.cumat_type(global_conf.vocab:size() + 1, global_conf.hidden_size) --index 0 is for zero, others correspond to vocab index(starting from 1)
ltp_ih.trans:generate(global_conf.param_random)
ltp_ih.trans[0]:fill(0)
ltp_hh = nerv.LinearTransParam("ltp_hh", global_conf)
ltp_hh.trans = global_conf.cumat_type(global_conf.hidden_size, global_conf.hidden_size)
ltp_hh.trans:generate(global_conf.param_random)
ltp_ho = nerv.LinearTransParam("ltp_ho", global_conf)
ltp_ho.trans = global_conf.cumat_type(global_conf.hidden_size, global_conf.vocab:size())
ltp_ho.trans:generate(global_conf.param_random)
bp_h = nerv.BiasParam("bp_h", global_conf)
bp_h.trans = global_conf.cumat_type(1, global_conf.hidden_size)
bp_h.trans:generate(global_conf.param_random)
bp_o = nerv.BiasParam("bp_o", global_conf)
bp_o.trans = global_conf.cumat_type(1, global_conf.vocab:size())
bp_o.trans:generate(global_conf.param_random)
local f = nerv.ChunkFile(global_conf.param_fn, 'w')
f:write_chunk(ltp_ih)
f:write_chunk(ltp_hh)
f:write_chunk(ltp_ho)
f:write_chunk(bp_h)
f:write_chunk(bp_o)
f:close()
end
local paramRepo = nerv.ParamRepo()
paramRepo:import({global_conf.param_fn}, nil, global_conf)
printf("%s preparing parameters end.\n", global_conf.sche_log_pre)
return paramRepo
end
--global_conf: table
--Returns: nerv.LayerRepo
function prepare_layers(global_conf, paramRepo)
printf("%s preparing layers...\n", global_conf.sche_log_pre)
local recurrentLconfig = {{["bp"] = "bp_h", ["ltp_hh"] = "ltp_hh"}, {["dim_in"] = {global_conf.hidden_size, global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size}, ["break_id"] = global_conf.vocab:get_sen_entry().id, ["independent"] = global_conf.independent, ["clip"] = 10}}
local layers = {
["nerv.IndRecurrentLayer"] = {
["recurrentL1"] = recurrentLconfig,
},
["nerv.SelectLinearLayer"] = {
["selectL1"] = {{["ltp"] = "ltp_ih"}, {["dim_in"] = {1}, ["dim_out"] = {global_conf.hidden_size}}},
},
["nerv.SigmoidLayer"] = {
["sigmoidL1"] = {{}, {["dim_in"] = {global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size}}}
},
["nerv.AffineLayer"] = {
["outputL"] = {{["ltp"] = "ltp_ho", ["bp"] = "bp_o"}, {["dim_in"] = {global_conf.hidden_size}, ["dim_out"] = {global_conf.vocab:size()}}},
},
["nerv.SoftmaxCELayer"] = {
["softmaxL"] = {{}, {["dim_in"] = {global_conf.vocab:size(), global_conf.vocab:size()}, ["dim_out"] = {1}}},
},
}
--[[ --we do not need those in the new rnn framework
printf("%s adding %d bptt layers...\n", global_conf.sche_log_pre, global_conf.bptt)
for i = 1, global_conf.bptt do
layers["nerv.IndRecurrentLayer"]["recurrentL" .. (i + 1)] = recurrentLconfig
layers["nerv.SigmoidLayer"]["sigmoidL" .. (i + 1)] = {{}, {["dim_in"] = {global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size}}}
layers["nerv.SelectLinearLayer"]["selectL" .. (i + 1)] = {{["ltp"] = "ltp_ih"}, {["dim_in"] = {1}, ["dim_out"] = {global_conf.hidden_size}}}
end
--]]
local layerRepo = nerv.LayerRepo(layers, paramRepo, global_conf)
printf("%s preparing layers end.\n", global_conf.sche_log_pre)
return layerRepo
end
--global_conf: table
--layerRepo: nerv.LayerRepo
--Returns: a nerv.TDAGLayer
function prepare_dagLayer(global_conf, layerRepo)
printf("%s Initing daglayer ...\n", global_conf.sche_log_pre)
--input: input_w, input_w, ... input_w_now, last_activation
local dim_in_t = {}
dim_in_t[1] = 1 --input to select_linear layer
dim_in_t[2] = global_conf.vocab:size() --input to softmax label
local connections_t = {
{"<input>[1]", "selectL1[1]", 0},
{"selectL1[1]", "recurrentL1[1]", 0},
{"recurrentL1[1]", "sigmoidL1[1]", 0},
{"sigmoidL1[1]", "outputL[1]", 0},
{"sigmoidL1[1]", "recurrentL1[2]", 1},
{"outputL[1]", "softmaxL[1]", 0},
{"<input>[2]", "softmaxL[2]", 0},
{"softmaxL[1]", "<output>[1]", 0}
}
--[[
printf("%s printing DAG connections:\n", global_conf.sche_log_pre)
for key, value in pairs(connections_t) do
printf("\t%s->%s\n", key, value)
end
]]--
local dagL = nerv.TDAGLayer("dagL", global_conf, {["dim_in"] = dim_in_t, ["dim_out"] = {1}, ["sub_layers"] = layerRepo,
["connections"] = connections_t,
})
printf("%s Initing DAGLayer end.\n", global_conf.sche_log_pre)
return dagL
end
train_fn = '/home/slhome/txh18/workspace/nerv/nerv/nerv/examples/lmptb/m-tests/some-text'
test_fn = '/home/slhome/txh18/workspace/nerv/nerv/nerv/examples/lmptb/m-tests/some-text'
global_conf = {
lrate = 1, wcost = 1e-6, momentum = 0,
cumat_type = nerv.CuMatrixFloat,
mmat_type = nerv.CuMatrixFloat,
hidden_size = 20,
chunk_size = 5,
batch_size = 3,
max_iter = 18,
param_random = function() return (math.random() / 5 - 0.1) end,
independent = true,
train_fn = train_fn,
test_fn = test_fn,
sche_log_pre = "[SCHEDULER]:",
log_w_num = 10, --give a message when log_w_num words have been processed
timer = nerv.Timer()
}
global_conf.work_dir = '/home/slhome/txh18/workspace/nerv/play/dagL_test'
global_conf.param_fn = global_conf.work_dir.."/params"
local vocab = nerv.LMVocab()
global_conf["vocab"] = vocab
global_conf.vocab:build_file(global_conf.train_fn, false)
local paramRepo = prepare_parameters(global_conf, true)
local layerRepo = prepare_layers(global_conf, paramRepo)
local dagL = prepare_dagLayer(global_conf, layerRepo)
dagL:init(global_conf.batch_size, global_conf.chunk_size)
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