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path: root/nerv/examples/lmptb/bilstmlm_ptb_main.lua
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require 'lmptb.lmvocab'
require 'lmptb.lmfeeder'
require 'lmptb.lmutil'
require 'lmptb.layer.init'
--require 'tnn.init'
require 'lmptb.lmseqreader'
require 'lm_trainer'

--[[global function rename]]--
--local printf = nerv.printf
local LMTrainer = nerv.LMTrainer
--[[global function rename ends]]--

--global_conf: table
--first_time: bool
--Returns: a ParamRepo
function prepare_parameters(global_conf, iter)
    nerv.printf("%s preparing parameters...\n", global_conf.sche_log_pre) 
    
    global_conf.paramRepo = nerv.ParamRepo()
    local paramRepo = global_conf.paramRepo

    if iter == -1 then --first time
        nerv.printf("%s first time, prepare some pre-set parameters, and leaving other parameters to auto-generation...\n", global_conf.sche_log_pre) 
        local f = nerv.ChunkFile(global_conf.param_fn .. '.0', 'w')
        f:close()
        --[[
        ltp_ih = nerv.LinearTransParam("ltp_ih", global_conf)  
        ltp_ih.trans = global_conf.cumat_type(global_conf.vocab:size(), 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_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 .. '.0', '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()
        ]]--
        return nil
    end
    
    nerv.printf("%s loading parameter from file %s...\n", global_conf.sche_log_pre, global_conf.param_fn .. '.' .. tostring(iter)) 
    paramRepo:import({global_conf.param_fn .. '.' .. tostring(iter)}, nil, global_conf)

    nerv.printf("%s preparing parameters end.\n", global_conf.sche_log_pre)

    return nil
end

--global_conf: table
--Returns: nerv.LayerRepo
function prepare_layers(global_conf)
    nerv.printf("%s preparing layers...\n", global_conf.sche_log_pre)
    
    local pr = global_conf.paramRepo

    local du = false

    local layers = {
        ["nerv.LSTMLayerT"] = {
            ["lstmFL1"] = {{}, {["dim_in"] = {global_conf.hidden_size, global_conf.hidden_size, global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size, global_conf.hidden_size}, ["pr"] = pr}}, 
            ["lstmRL1"] = {{}, {["dim_in"] = {global_conf.hidden_size, global_conf.hidden_size, global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size, global_conf.hidden_size}, ["pr"] = pr}}, 
        },
        
        ["nerv.DropoutLayerT"] = {
            ["dropoutL1"] = {{}, {["dim_in"] = {global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size}}}, 
        },

        ["nerv.SelectLinearLayer"] = {
            ["selectL1"] = {{}, {["dim_in"] = {1}, ["dim_out"] = {global_conf.hidden_size}, ["vocab"] = global_conf.vocab, ["pr"] = pr}},
        },
        
        ["nerv.CombinerLayer"] = {
            ["combinerXL1"] = {{}, {["dim_in"] = {global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size, global_conf.hidden_size}, ["lambda"] = {1}}},
            ["combinerHFL1"] = {{}, {["dim_in"] = {global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size, global_conf.hidden_size}, ["lambda"] = {1}}},
            ["combinerHRL1"] = {{}, {["dim_in"] = {global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size, global_conf.hidden_size}, ["lambda"] = {1}}},
        },

        ["nerv.AffineLayer"] = {
            ["biAffineL1"] = {{}, {["dim_in"] = {global_conf.hidden_size, global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size}, ["pr"] = pr, ["lambda"] = {1, 1}}},
            ["outputL"] = {{}, {["dim_in"] = {global_conf.hidden_size}, ["dim_out"] = {global_conf.vocab:size()}, ["direct_update"] = du, ["pr"] = pr}},
        },

        ["nerv.TanhLayer"] = {
            ["biTanhL1"] = {{}, {["dim_in"] = {global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size}}},
        },

        ["nerv.SoftmaxCELayerT"] = {
            ["softmaxL"] = {{}, {["dim_in"] = {global_conf.vocab:size(), global_conf.vocab:size()}, ["dim_out"] = {1}}},
        },
    }

    if global_conf.layer_num > 1 then
        nerv.error("this script currently do not support more than one layer")
    end
    --[[ 
    for l = 2, global_conf.layer_num do 
        layers["nerv.DropoutLayerT"]["dropoutL" .. l] = {{}, {["dim_in"] = {global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size}}}
        layers["nerv.LSTMLayerT"]["lstmL" .. l] = {{}, {["dim_in"] = {global_conf.hidden_size, global_conf.hidden_size, global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size, global_conf.hidden_size}, ["pr"] = pr}}
        layers["nerv.CombinerLayer"]["combinerL" .. l] = {{}, {["dim_in"] = {global_conf.hidden_size}, ["dim_out"] = {global_conf.hidden_size, global_conf.hidden_size}, ["lambda"] = {1}}}
    end
    ]]--

    local layerRepo = nerv.LayerRepo(layers, pr, global_conf)
    nerv.printf("%s preparing layers end.\n", global_conf.sche_log_pre)
    return layerRepo
end

--global_conf: table
--layerRepo: nerv.LayerRepo
--Returns: a nerv.TNN
function prepare_tnn(global_conf, layerRepo)
    nerv.printf("%s Generate and initing TNN ...\n", global_conf.sche_log_pre)

    --input: input_w, input_w, ... input_w_now, last_activation
    local connections_t = {
        {"<input>[1]", "selectL1[1]", 0},
        
        --{"selectL1[1]", "recurrentL1[1]", 0},  
        --{"recurrentL1[1]", "sigmoidL1[1]", 0},
        --{"sigmoidL1[1]", "combinerL1[1]", 0},
        --{"combinerL1[1]", "recurrentL1[2]", 1},
        
        {"selectL1[1]", "combinerXL1[1]", 0},
        {"combinerXL1[1]", "lstmFL1[1]", 0},
        {"lstmFL1[1]", "combinerHFL1[1]", 0},
        {"combinerHFL1[1]", "lstmFL1[2]", 1},
        {"lstmFL1[2]", "lstmFL1[3]", 1},
        {"combinerXL1[2]", "lstmRL1[1]", 0},
        {"lstmRL1[1]", "combinerHRL1[1]", 0},
        {"combinerHRL1[1]", "lstmRL1[2]", -1},
        {"lstmRL1[2]", "lstmRL1[3]", -1},
        {"combinerHFL1[2]", "biAffineL1[1]", 0},
        {"combinerHRL1[2]", "biAffineL1[2]", 0},
        {"biAffineL1[1]", "biTanhL1[1]", 0},
        {"biTanhL1[1]", "dropoutL1[1]", 0},

        {"dropoutL"..global_conf.layer_num.."[1]", "outputL[1]", 0},
        {"outputL[1]", "softmaxL[1]", 0},
        {"<input>[2]", "softmaxL[2]", 0},
        {"softmaxL[1]", "<output>[1]", 0}
    }

    --[[    
    for l = 2, global_conf.layer_num do
        table.insert(connections_t, {"dropoutL"..(l-1).."[1]", "lstmL"..l.."[1]", 0})
        table.insert(connections_t, {"lstmL"..l.."[2]", "lstmL"..l.."[3]", 1})
        table.insert(connections_t, {"lstmL"..l.."[1]", "combinerL"..l.."[1]", 0})
        table.insert(connections_t, {"combinerL"..l.."[1]", "lstmL"..l.."[2]", 1})
        table.insert(connections_t, {"combinerL"..l.."[2]", "dropoutL"..l.."[1]", 0})
    end
    ]]--

    --[[
    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 tnn = nerv.TNN("TNN", global_conf, {["dim_in"] = {1, global_conf.vocab:size()}, 
            ["dim_out"] = {1}, ["sub_layers"] = layerRepo,
            ["connections"] = connections_t, ["clip_t"] = global_conf.clip_t,
        })

    tnn:init(global_conf.batch_size, global_conf.chunk_size)

    nerv.printf("%s Initing TNN end.\n", global_conf.sche_log_pre)
    return tnn
end

function load_net(global_conf, next_iter)
    prepare_parameters(global_conf, next_iter)
    local layerRepo = prepare_layers(global_conf)
    local tnn = prepare_tnn(global_conf, layerRepo)
    return tnn
end

local train_fn, valid_fn, test_fn
global_conf = {}
local set = arg[1] --"test"

if (set == "ptb") then

root_dir = '/home/slhome/txh18/workspace'
data_dir = root_dir .. '/ptb/DATA'
train_fn = data_dir .. '/ptb.train.txt.adds'
valid_fn = data_dir .. '/ptb.valid.txt.adds'
test_fn = data_dir .. '/ptb.test.txt.adds'
vocab_fn = data_dir .. '/vocab'

qdata_dir = root_dir .. '/ptb/questionGen/gen'

global_conf = {
    lrate = 0.015, wcost = 1e-5, momentum = 0, clip_t = 5,
    cumat_type = nerv.CuMatrixFloat,
    mmat_type = nerv.MMatrixFloat,
    nn_act_default = 0, 

    hidden_size = 300,
    layer_num = 1,
    chunk_size = 90,
    batch_size = 20, 
    max_iter = 35,
    lr_decay = 1.003,
    decay_iter = 10,
    param_random = function() return (math.random() / 5 - 0.1) end,
    dropout_str = "0",

    train_fn = train_fn,
    valid_fn = valid_fn,
    test_fn = test_fn,
    vocab_fn = vocab_fn,
    max_sen_len = 90,
    sche_log_pre = "[SCHEDULER]:",
    log_w_num = 40000, --give a message when log_w_num words have been processed
    timer = nerv.Timer(),
    work_dir_base = '/home/slhome/txh18/workspace/ptb/EXP-nerv/bilstmlm_v1.0'
}

elseif (set == "msr_sc") then

data_dir = '/home/slhome/txh18/workspace/sentenceCompletion/DATA_PV2'
train_fn = data_dir .. '/normed_all.sf.len60.adds.train'
valid_fn = data_dir .. '/normed_all.sf.len60.adds.dev'
test_fn = data_dir .. '/answer_normed.adds'
vocab_fn = data_dir .. '/normed_all.choose.vocab30000.addqvocab'

global_conf = {
    lrate = 1, wcost = 1e-6, momentum = 0,
    cumat_type = nerv.CuMatrixFloat,
    mmat_type = nerv.MMatrixFloat,
    nn_act_default = 0, 

    hidden_size = 300,
    layer_num = 1,
    chunk_size = 15,
    batch_size = 10, 
    max_iter = 30,
    decay_iter = 10,
    lr_decay = 1.003,
    param_random = function() return (math.random() / 5 - 0.1) end,
    dropout_str = "0",

    train_fn = train_fn,
    valid_fn = valid_fn,
    test_fn = test_fn,
    vocab_fn = vocab_fn,
    sche_log_pre = "[SCHEDULER]:",
    log_w_num = 400000, --give a message when log_w_num words have been processed
    timer = nerv.Timer(),
    work_dir_base = '/home/slhome/txh18/workspace/sentenceCompletion/EXP-Nerv/rnnlm_test'
}

elseif (set == "twitter") then

root_dir = '/home/slhome/txh18/workspace'
data_dir = root_dir .. '/twitter_new/DATA'
train_fn = data_dir .. '/twitter.choose.adds'
valid_fn = data_dir .. '/twitter.valid.adds'
test_fn = data_dir .. '/comm.test.choose-ppl.adds'
vocab_fn = data_dir .. '/twitter.choose.train.vocab'

--qdata_dir = root_dir .. '/ptb/questionGen/gen'

global_conf = {
    lrate = 0.15, wcost = 1e-5, momentum = 0, clip_t = 5,
    cumat_type = nerv.CuMatrixFloat,
    mmat_type = nerv.MMatrixFloat,
    nn_act_default = 0, 

    hidden_size = 300,
    layer_num = 1,
    chunk_size = 15,
    batch_size = 20, 
    max_iter = 35,
    lr_decay = 1.003,
    decay_iter = 10,
    param_random = function() return (math.random() / 5 - 0.1) end,
    dropout_str = "0",

    train_fn = train_fn,
    valid_fn = valid_fn,
    test_fn = test_fn,
    vocab_fn = vocab_fn,
    max_sen_len = 90,
    sche_log_pre = "[SCHEDULER]:",
    log_w_num = 40000, --give a message when log_w_num words have been processed
    timer = nerv.Timer(),
    work_dir_base = root_dir .. '/twitter_new/EXP-nerv/bilstmlm_v1.0'
}

else

valid_fn = '/home/slhome/txh18/workspace/nerv/nerv/nerv/examples/lmptb/m-tests/some-text'
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'
vocab_fn = '/home/slhome/txh18/workspace/nerv/nerv/nerv/examples/lmptb/m-tests/some-text'

global_conf = {
    lrate = 0.01, wcost = 1e-5, momentum = 0,
    cumat_type = nerv.CuMatrixFloat,
    mmat_type = nerv.MMatrixFloat,
    nn_act_default = 0, 

    hidden_size = 20,
    layer_num = 1,
    chunk_size = 20,
    batch_size = 10, 
    max_iter = 2,
    param_random = function() return (math.random() / 5 - 0.1) end,
    dropout_str = "0",

    train_fn = train_fn,
    valid_fn = valid_fn,
    test_fn = test_fn,
    max_sen_len = 80,
    lr_decay = 1.003,
    decay_iter = 10,
    vocab_fn = vocab_fn, 
    sche_log_pre = "[SCHEDULER]:",
    log_w_num = 10, --give a message when log_w_num words have been processed
    timer = nerv.Timer(),
    work_dir_base = '/home/slhome/txh18/workspace/nerv/play/testEXP/tnn_bilstmlm_test'
}

end

lr_half = false --can not be local, to be set by loadstring
start_iter = -1
start_lr = nil
ppl_last = 100000
commands_str = "train:test"
commands = {}
test_iter = -1

--for testout(question)
q_file = "/home/slhome/txh18/workspace/ptb/questionGen/gen/ptb.test.txt.q10rs1_Msss.adds"

if arg[2] ~= nil then
    nerv.printf("%s applying arg[2](%s)...\n", global_conf.sche_log_pre, arg[2])
    loadstring(arg[2])() 
    nerv.LMUtil.wait(0.5)
else
    nerv.printf("%s no user setting, all default...\n", global_conf.sche_log_pre)
end

global_conf.work_dir = global_conf.work_dir_base .. 'h' .. global_conf.hidden_size .. 'l' .. global_conf.layer_num .. 'ch' .. global_conf.chunk_size .. 'ba' .. global_conf.batch_size .. 'slr' ..   global_conf.lrate .. 'wc' .. global_conf.wcost .. 'dr' .. global_conf.dropout_str 
global_conf.train_fn_shuf = global_conf.work_dir .. '/train_fn_shuf'
global_conf.train_fn_shuf_bak = global_conf.train_fn_shuf .. '_bak'
global_conf.param_fn = global_conf.work_dir .. "/params"
global_conf.dropout_list = nerv.SUtil.parse_schedule(global_conf.dropout_str)
global_conf.log_fn = global_conf.work_dir .. '/log_lstm_tnn_' .. commands_str ..os.date("_TT%m_%d_%X",os.time())
global_conf.log_fn, _ = string.gsub(global_conf.log_fn, ':', '-')
commands = nerv.SUtil.parse_commands_set(commands_str)

if start_lr ~= nil then
    global_conf.lrate = start_lr --starting lr can be set by user(arg[2])
end

nerv.printf("%s creating work_dir(%s)...\n", global_conf.sche_log_pre, global_conf.work_dir)
nerv.LMUtil.wait(2)
os.execute("mkdir -p "..global_conf.work_dir)
os.execute("cp " .. global_conf.train_fn .. " " .. global_conf.train_fn_shuf)

--redirecting log outputs!
nerv.SUtil.log_redirect(global_conf.log_fn)
nerv.LMUtil.wait(2)

----------------printing options---------------------------------
nerv.printf("%s printing global_conf...\n", global_conf.sche_log_pre)
for id, value in pairs(global_conf) do
    nerv.printf("%s:\t%s\n", id, tostring(value))
end
nerv.LMUtil.wait(2)

nerv.printf("%s printing training scheduling options...\n", global_conf.sche_log_pre)
nerv.printf("lr_half:\t%s\n", tostring(lr_half))
nerv.printf("start_iter:\t%s\n", tostring(start_iter))
nerv.printf("ppl_last:\t%s\n", tostring(ppl_last))
nerv.printf("commands_str:\t%s\n", commands_str)
nerv.printf("test_iter:\t%s\n", tostring(test_iter))
nerv.printf("%s printing training scheduling end.\n", global_conf.sche_log_pre)
nerv.LMUtil.wait(2)
------------------printing options end------------------------------

math.randomseed(1)

local vocab = nerv.LMVocab()
global_conf["vocab"] = vocab
nerv.printf("%s building vocab...\n", global_conf.sche_log_pre)
global_conf.vocab:build_file(global_conf.vocab_fn, false)
ppl_rec = {} 

local final_iter = -1
if commands["train"] == 1 then
    if start_iter == -1 then 
        prepare_parameters(global_conf, -1) --write pre_generated params to param.0 file
    end
    
    if start_iter == -1 or start_iter == 0 then
        nerv.printf("===INITIAL VALIDATION===\n") 
        local tnn = load_net(global_conf, 0)
        global_conf.paramRepo = tnn:get_params() --get auto-generted params
        global_conf.paramRepo:export(global_conf.param_fn .. '.0', nil)  --some parameters are auto-generated, saved again to param.0 file
        global_conf.dropout_rate = 0
        local result = LMTrainer.lm_process_file_birnn(global_conf, global_conf.valid_fn, tnn, false) --false update!
        nerv.LMUtil.wait(1)
        ppl_rec[0] = {} 
        ppl_rec[0].valid = result:ppl_all("birnn")  
        ppl_last = ppl_rec[0].valid 
        ppl_rec[0].train = 0 
        ppl_rec[0].test = 0
        ppl_rec[0].lr = 0 
    
        start_iter = 1
    
        nerv.printf("\n") 
    end
    
    for iter = start_iter, global_conf.max_iter, 1 do
        final_iter = iter --for final testing
        global_conf.sche_log_pre = "[SCHEDULER ITER"..iter.." LR"..global_conf.lrate.."]:" 
        tnn = load_net(global_conf, iter - 1) 
        nerv.printf("===ITERATION %d LR %f===\n", iter, global_conf.lrate) 
        global_conf.dropout_rate = nerv.SUtil.sche_get(global_conf.dropout_list, iter)
        result = LMTrainer.lm_process_file_birnn(global_conf, global_conf.train_fn_shuf, tnn, true) --true update!
        global_conf.dropout_rate = 0
        ppl_rec[iter] = {}
        ppl_rec[iter].train = result:ppl_all("birnn")
        --shuffling training file
        nerv.printf("%s shuffling training file\n", global_conf.sche_log_pre)
        os.execute('cp ' .. global_conf.train_fn_shuf .. ' ' .. global_conf.train_fn_shuf_bak)
        os.execute('cat ' .. global_conf.train_fn_shuf_bak .. ' | sort -R --random-source=/dev/zero > ' .. global_conf.train_fn_shuf)
        nerv.printf("===PEEK ON TEST %d===\n", iter) 
        result = LMTrainer.lm_process_file_birnn(global_conf, global_conf.test_fn, tnn, false) --false update!
        ppl_rec[iter].test = result:ppl_all("birnn")  
        nerv.printf("===VALIDATION %d===\n", iter) 
        result = LMTrainer.lm_process_file_birnn(global_conf, global_conf.valid_fn, tnn, false) --false update!
        ppl_rec[iter].valid = result:ppl_all("birnn") 
        ppl_rec[iter].lr = global_conf.lrate 
        if ((ppl_last / ppl_rec[iter].valid < global_conf.lr_decay or lr_half == true) and iter > global_conf.decay_iter) then 
            global_conf.lrate = (global_conf.lrate * 0.6)
        end 
        if ppl_rec[iter].valid < ppl_last then 
            nerv.printf("%s PPL improves, saving net to file %s.%d...\n", global_conf.sche_log_pre, global_conf.param_fn, iter) 
            global_conf.paramRepo:export(global_conf.param_fn .. '.' .. tostring(iter), nil) 
        else 
            nerv.printf("%s PPL did not improve, rejected, copying param file of last iter...\n", global_conf.sche_log_pre) 
            os.execute('cp ' .. global_conf.param_fn..'.'..tostring(iter - 1) .. ' ' .. global_conf.param_fn..'.'..tostring(iter))
        end 
        if ppl_last / ppl_rec[iter].valid < global_conf.lr_decay or lr_half == true then
            lr_half = true
        end
        if ppl_rec[iter].valid < ppl_last then
            ppl_last = ppl_rec[iter].valid
        end
        nerv.printf("\n") 
        nerv.LMUtil.wait(2) 
    end
    nerv.info("saving final nn to param.final")
    os.execute('cp ' .. global_conf.param_fn .. '.' .. tostring(final_iter) .. ' ' .. global_conf.param_fn .. '.final')
    
    nerv.printf("===VALIDATION PPL record===\n") 
    for i, _ in pairs(ppl_rec) do 
        nerv.printf("<ITER%d LR%.5f train:%.3f valid:%.3f test:%.3f> \n", i, ppl_rec[i].lr, ppl_rec[i].train, ppl_rec[i].valid, ppl_rec[i].test) 
    end 
    nerv.printf("\n")
end --if commands["train"]

if commands["test"] == 1 then
    nerv.printf("===FINAL TEST===\n") 
    global_conf.sche_log_pre = "[SCHEDULER FINAL_TEST]:" 
    if final_iter ~= -1 and test_iter == -1 then
        test_iter = final_iter
    end
    if test_iter == -1 then
        test_iter = "final"
    end
    tnn = load_net(global_conf, test_iter) 
    global_conf.dropout_rate = 0
    LMTrainer.lm_process_file_birnn(global_conf, global_conf.test_fn, tnn, false) --false update!
end --if commands["test"]

if commands["testout"] == 1 then
    nerv.printf("===TEST OUT===\n") 
    nerv.printf("q_file:\t%s\n", q_file)    
    local q_fn = q_file --qdata_dir .. '/' .. q_file
    global_conf.sche_log_pre = "[SCHEDULER FINAL_TEST]:" 
    if final_iter ~= -1 and test_iter == -1 then
        test_iter = final_iter
    end
    if test_iter == -1 then
        test_iter = "final"
    end
    tnn = load_net(global_conf, test_iter) 
    global_conf.dropout_rate = 0
    LMTrainer.lm_process_file_birnn(global_conf, q_fn, tnn, false,
            {["one_sen_report"] = true}) --false update!
end --if commands["testout"]