OPUS-MT-train/lib/config.mk
2022-05-28 00:17:52 +03:00

866 lines
29 KiB
Makefile

# -*-makefile-*-
#
# model and environment configurations
#
# load model-specific configuration parameters
# if they exist in the work directory
##---------------------------------------------------------------
## default name of the data set (and the model)
##---------------------------------------------------------------
TRAINSET_NAME ?= opus
DATASET ?= ${TRAINSET_NAME}
## various ways of setting the model languages
##
## (1) explicitly set source and target languages, for example:
## SRCLANGS="da no sv" TRGLANGS="fi da"
##
## (2) specify language pairs, for example:
## LANGPAIRS="de-en fi-sv da-es"
## this will set SRCLANGS="de fi da" TRGLANGS="en sv es"
##
## if LANGPAIRS are set and the model is not supposed to be SYMMETRIC
## then set SRCLANGS and TRGLANGS to the languages in LANGPAIRS
ifdef LANGPAIRS
SRCLANGS ?= ${sort ${shell echo "${LANGPAIRS}" | tr ' ' "\n" | cut -f1 -d '-'}}
TRGLANGS ?= ${sort ${shell echo "${LANGPAIRS}" | tr ' ' "\n" | cut -f2 -d '-'}}
endif
## LANGPAISTR is used as a sub-dir in WORKHOME
SPACE := $(empty) $(empty)
LANGSRCSTR ?= ${subst ${SPACE},+,$(SRCLANGS)}
LANGTRGSTR ?= ${subst ${SPACE},+,$(TRGLANGS)}
LANGPAIRSTR ?= ${LANGSRCSTR}-${LANGTRGSTR}
WORKDIR = ${WORKHOME}/${LANGPAIRSTR}
## default model type
MODELTYPE = transformer-align
MODELCONFIG = ${DATASET}${MODEL_VARIANT}.${MODELTYPE}.mk
ifneq ($(wildcard ${WORKDIR}/${MODELCONFIG}),)
include ${WORKDIR}/${MODELCONFIG}
endif
## some pre-defined language sets
include ${REPOHOME}lib/langsets.mk
## supported model types
## configuration for each type is in lib/train.mk
MODELTYPES = transformer \
transformer-align \
transformer-base \
transformer-base-align \
transformer-big \
transformer-big-align \
transformer-small \
transformer-small-align \
transformer-tiny \
transformer-tiny-align \
transformer-tiny11 \
transformer-tiny11-align
## clean-corpus script parameters
## (for filtering subword-segmented bitexts)
##
## (TODO: should MIN_NTOKENS be 1?)
# MIN_NR_TOKENS = 0
# MAX_NR_TOKENS = 250
MIN_NR_TOKENS = 1
MAX_NR_TOKENS = 500
NR_TOKEN_RATIO = 2
MAX_TOKEN_LENGTH = 100
## default values in the original script:
##
# MAX_TOKEN_LENGTH = 1000
# NR_TOKEN_RATIO = 9
## name of the model-specific configuration file
## NEW: make it more model specific
#
# MODELCONFIG ?= config.mk
## set SRC and TRG unless they are specified already
ifneq (${words ${SRCLANGS}},1)
SRC ?= multi
else
SRC ?= ${SRCLANGS}
endif
ifneq (${words ${TRGLANGS}},1)
TRG ?= multi
else
TRG ?= ${TRGLANGS}
endif
##----------------------------------------------------------------------
## SKIP_LANGPAIRS can be used to skip certain language pairs
## in data preparation for multilingual models
## ---> this can be good to skip BIG language pairs
## that would very much dominate all the data
## must be a pattern that can be matched by egrep
## e.g. en-de|en-fr
##
## SKIP_SAME_LANG - set to 1 to skip data with the same language
## on both sides
##----------------------------------------------------------------------
SKIP_LANGPAIRS ?= "nothing"
SKIP_SAME_LANG ?= 0
##----------------------------------------------------------------------
## set SHUFFLE_DATA if you want to shuffle data for
## each language pair to be added to the training data
## --> especially useful in connection with FIT_DATA_SIZE
## set DATA_IS_SHUFFLED=1 if the training data is already shuffled
## --> useful to avoid shuffling when training sentence piece model
## NEW (2021-12-16): SHUFFLE_DATA is now set by default
## --> can now also avoid sqlite and data shuffling inside MarianNMT
## --> is that a problem (would MarianNMT use different random shuffles / epoch?)
##----------------------------------------------------------------------
SHUFFLE_DATA ?= 1
# DATA_IS_SHUFFLED ?= 1
## devtest data is shuffled by default
SHUFFLE_DEVDATA ?= 1
## shuffle multilingual training data to mix language examples
SHUFFLE_MULTILINGUAL_DATA ?= 1
##----------------------------------------------------------------------
## set FIT_DATA_SIZE to a specific value to fit the training data
## to a certain number of lines for each language pair in the collection
## --> especially useful for multilingual models for balancing the
## the size for each language pair
## the script does both, over- and undersampling
##----------------------------------------------------------------------
# FIT_DATA_SIZE ?= 100000
## similar for the dev data: set FIT_DEVDATA_SIZE to
## balance the size of the devdata for each language pair
##
# FIT_DEVDATA_SIZE =
## define a default dev size fit for multilingual models
## TODO: is 1000 too small? or too big?
## TODO: should this depend on the number of languages involved?
ifneq (${words ${TRGLANGS}},1)
FIT_DEVDATA_SIZE ?= 1000
endif
ifneq (${words ${SRCLANGS}},1)
FIT_DEVDATA_SIZE ?= 1000
endif
## maximum number of repeating the same data set
## in oversampling
MAX_OVER_SAMPLING ?= 50
##----------------------------------------------------------------------
## set CHECK_TRAINDATA_SIZE if you want to check that each
## bitext has equal number of lines in source and target
## ---> this only prints a warning if not
##----------------------------------------------------------------------
# CHECK_TRAINDATA_SIZE = 1
# sorted languages and langpair used to match resources in OPUS
SORTLANGS = $(sort ${SRC} ${TRG})
SORTSRC = ${firstword ${SORTLANGS}}
SORTTRG = ${lastword ${SORTLANGS}}
LANGPAIR = ${SORTSRC}-${SORTTRG}
SORTED_LANGPAIR = ${SORTSRC}-${SORTTRG}
## for monolingual things
LANGS ?= ${SRCLANGS}
LANGID ?= ${firstword ${LANGS}}
LANGSTR ?= ${subst ${SPACE},+,$(LANGS)}
## for same language pairs: add numeric extension
## (this is neccessary to keep source and target files separate)
ifeq (${SRC},$(TRG))
SRCEXT = ${SRC}1
TRGEXT = ${SRC}2
SORTSRCEXT = ${SORTSRC}1
SORTTRGEXT = ${SORTSRC}2
else
SRCEXT = ${SRC}
TRGEXT = ${TRG}
SORTSRCEXT = ${SORTSRC}
SORTTRGEXT = ${SORTTRG}
endif
## set a flag to use target language labels
## in multi-target models
ifneq (${words ${TRGLANGS}},1)
USE_TARGET_LABELS = 1
TARGET_LABELS ?= $(patsubst %,>>%<<,${TRGLANGS})
endif
## size of dev data, test data and BPE merge operations
## NEW default size = 2500 (keep more for training for small languages)
## NOTE: size will be increased to 5000 for Tatoeba
DEVSIZE ?= 2500
TESTSIZE ?= 2500
## set some additional thresholds for
## the size of test and dev data
## DEVMINSIZE is the absolute minimum we require
## to run any training procedures
DEVSMALLSIZE ?= 1000
TESTSMALLSIZE ?= 1000
DEVMINSIZE ?= 250
## set additional argument options for opus_read (if it is used)
## e.g. OPUSREAD_ARGS = -a certainty -tr 0.3
OPUSREAD_ARGS =
##----------------------------------------------------------------------------
## resources in OPUS
##----------------------------------------------------------------------------
## get available data from the OPUS-API
OPUSAPI = http://opus.nlpl.eu/opusapi/
OPUSAPI_WGET = ${WGET} -qq --no-check-certificate -O - ${OPUSAPI}?
get-opus-mono = ${shell ${OPUSAPI_WGET}source=${1}\&corpora=True | ${JQ} '.corpora[]' | tr '"' ' '}
get-opus-bitexts = ${shell ${OPUSAPI_WGET}source=${1}\&target=${2}\&corpora=True | ${JQ} '.corpora[]' | tr '"' ' '}
get-bigger-bitexts = ${shell ${OPUSAPI_WGET}source=${1}\&target=${2}\&preprocessing=xml\&version=latest | \
${JQ} -r '.corpora[1:] | .[] | select(.source!="") | select(.target!="") | select(.alignment_pairs>${3}) | .corpus' }
get-opus-langs = ${shell ${OPUSAPI_WGET}languages=True | ${JQ} '.languages[]' | tr '"' ' '}
get-opus-version = ${shell ${OPUSAPI_WGET}source=${1}\&target=${2}\&corpus=${3}\&preprocessing=xml\&version=latest | ${JQ} '.corpora[] | .version' | sed 's/"//g' | head -1}
get-elra-bitexts = ${shell ${OPUSAPI_WGET}source=${1}\&target=${2}\&corpora=True | \
${JQ} '.corpora[]' | tr '"' ' ' | grep '^ *ELR[CA][-_]'}
## start of some functions to check whether there is a resource for downloading
## open question: links to the latest release do not exist in the storage
## --> would it be better to get that done via the OPUS API?
OPUS_STORE = https://object.pouta.csc.fi/OPUS-
url-status = ${shell curl -Is -K HEAD ${1} | head -1}
url-exists = ${shell if [ "${call url-status,${1}}" == "HTTP/1.1 200 OK" ]; then echo 1; else echo 0; fi}
resource-url = ${shell echo "${OPUS_STORE}${3}/${call get-opus-version,${1},${2},${3}}/moses/${1}-${2}.txt.zip"}
## exclude certain data sets
# EXCLUDE_CORPORA ?= WMT-News MPC1 ${call get-elra-bitexts,${SRC},${TRG}}
EXCLUDE_CORPORA ?= WMT-News MPC1
# all matching corpora in OPUS except for some that we want to exclude
OPUSCORPORA = $(filter-out ${EXCLUDE_CORPORA},${call get-opus-bitexts,${SRC},${TRG}})
## monolingual data
OPUSMONOCORPORA = $(filter-out ${EXCLUDE_CORPORA},${call get-opus-mono,${LANGID}})
## all languages in OPUS
## TODO: do we need this?
OPUSLANGS := ${call get-opus-langs}
OPUS_LANGS3 := ${sort ${filter-out xxx,${shell ${GET_ISO_CODE} ${OPUSLANGS}}}}
OPUS_LANG_PARENTS := ${sort ${shell langgroup -p -n ${OPUS_LANGS3} 2>/dev/null}}
OPUS_LANG_GRANDPARENTS := ${sort ${shell langgroup -p -n ${OPUS_LANG_PARENTS} 2>/dev/null}}
OPUS_LANG_GROUPS := ${sort ${OPUS_LANG_PARENTS} ${OPUS_LANG_GRANDPARENTS}}
##----------------------------------------------------------------------------
## train/dev/test data
##----------------------------------------------------------------------------
## select a suitable DEVSET
## - POTENTIAL_DEVSETS lists more or less reliable corpora (in order of priority)
## - BIGGER_BITEXTS lists all bitext with more than DEVSMALLSIZE sentence pairs
## - SMALLER_BITEXTS lists potentially smaller bitexts but at least DEVMINSIZE big
## - DEVSET is the first of the potential devset that exists with sufficient size
## TODO: what do we do if there is no devset?
POTENTIAL_DEVSETS = Tatoeba GlobalVoices infopankki wikimedia TED2020 Europarl OpenSubtitles JW300 bible-uedin
BIGGER_BITEXTS := ${call get-bigger-bitexts,${SRC},${TRG},${DEVSMALLSIZE}}
SMALLER_BITEXTS := ${call get-bigger-bitexts,${SRC},${TRG},${DEVMINSIZE}}
DEVSET ?= ${firstword ${filter ${POTENTIAL_DEVSETS},${BIGGER_BITEXTS}} \
${filter ${POTENTIAL_DEVSETS},${SMALLER_BITEXTS}}}
print-potential-datasets:
@echo "bigger : ${BIGGER_BITEXTS}"
@echo "smaller : ${SMALLER_BITEXTS}"
@echo "selected: ${DEVSET}"
## increase dev/test sets for Tatoeba (very short sentences!)
ifeq (${DEVSET},Tatoeba)
DEVSIZE = 5000
TESTSIZE = 5000
endif
## in case we want to use some additional data sets
# EXTRA_TRAINSET =
## TESTSET= DEVSET, TRAINSET = OPUS - WMT-News,DEVSET.TESTSET
TESTSET ?= ${DEVSET}
TRAINSET ?= $(filter-out ${EXCLUDE_CORPORA} ${DEVSET} ${TESTSET},${OPUSCORPORA} ${EXTRA_TRAINSET})
MONOSET ?= $(filter-out ${EXCLUDE_CORPORA} ${DEVSET} ${TESTSET},${OPUSMONOCORPORA} ${EXTRA_TRAINSET})
## 1 = use remaining data from dev/test data for training
USE_REST_DEVDATA ?= 1
## for model fine-tuning
TUNE_SRC ?= ${SRC}
TUNE_TRG ?= ${TRG}
TUNE_DOMAIN ?= OpenSubtitles
TUNE_FIT_DATA_SIZE ?= 1000000
TUNE_VALID_FREQ ?= 1000
TUNE_DISP_FREQ ?= 1000
TUNE_SAVE_FREQ ?= 1000
TUNE_EARLY_STOPPING ?= 5
TUNE_GPUJOB_SUBMIT ?=
## existing projects in WORKHOME
ALL_LANG_PAIRS := ${shell ls ${WORKHOME} 2>/dev/null | grep -- '-' | grep -v old}
ALL_BILINGUAL_MODELS := ${shell echo '${ALL_LANG_PAIRS}' | tr ' ' "\n" | grep -v -- '\+'}
ALL_MULTILINGUAL_MODELS := ${shell echo '${ALL_LANG_PAIRS}' | tr ' ' "\n" | grep -- '\+'}
##----------------------------------------------------------------------------
## pre-processing and vocabulary
##----------------------------------------------------------------------------
## joint source+target sentencepiece model
ifeq (${USE_JOINT_SUBWORD_MODEL},1)
SUBWORDS = jointspm
endif
## type of subword segmentation (bpe|spm)
## model vocabulary size (NOTE: BPESIZE is used as default)
SUBWORDS ?= spm
BPESIZE ?= 32000
SRCBPESIZE ?= ${BPESIZE}
TRGBPESIZE ?= ${BPESIZE}
SUBWORD_VOCAB_SIZE ?= ${BPESIZE}
SUBWORD_SRCVOCAB_SIZE ?= ${SUBWORD_VOCAB_SIZE}
SUBWORD_TRGVOCAB_SIZE ?= ${SUBWORD_VOCAB_SIZE}
SUBWORD_MODEL_NAME ?= opus
ifeq (${SUBWORDS},bpe)
BPESRCMODEL = ${WORKDIR}/train/${SUBWORD_MODEL_NAME}.src.bpe${SUBWORD_SRCVOCAB_SIZE:000=}k-model
BPETRGMODEL = ${WORKDIR}/train/${SUBWORD_MODEL_NAME}.trg.bpe${SUBWORD_TRGVOCAB_SIZE:000=}k-model
BPE_MODEL = ${WORKDIR}/train/${SUBWORD_MODEL_NAME}.bpe${SUBWORD_VOCAB_SIZE:000=}k-model
SUBWORD_SRC_MODEL = ${BPESRCMODEL}
SUBWORD_TRG_MODEL = ${BPETRGMODEL}
else
SPMSRCMODEL = ${WORKDIR}/train/${SUBWORD_MODEL_NAME}.src.${SUBWORDS}${SUBWORD_SRCVOCAB_SIZE:000=}k-model
SPMTRGMODEL = ${WORKDIR}/train/${SUBWORD_MODEL_NAME}.trg.${SUBWORDS}${SUBWORD_TRGVOCAB_SIZE:000=}k-model
SPM_MODEL = ${WORKDIR}/train/${SUBWORD_MODEL_NAME}.${SUBWORDS}${SUBWORD_VOCAB_SIZE:000=}k-model
SUBWORD_SRC_MODEL = ${SPMSRCMODEL}
SUBWORD_TRG_MODEL = ${SPMTRGMODEL}
SUBWORD_SRC_VOCAB = ${SPMSRCMODEL}.vocab
SUBWORD_TRG_VOCAB = ${SPMTRGMODEL}.vocab
endif
## don't delete subword models!
.PRECIOUS: ${SUBWORD_SRC_MODEL} ${SUBWORD_TRG_MODEL}
## size of the joined vocabulary
## TODO: heuristically add 1,000 to cover language labels is a bit ad-hoc
VOCABSIZE ?= $$((${SUBWORD_SRCVOCAB_SIZE} + ${SUBWORD_TRGVOCAB_SIZE} + 1000))
## for document-level models
CONTEXT_SIZE ?= 100
## pre-processing/data-cleanup type
## PRE .......... apply basic normalisation scripts
## CLEAN_TYPE ... clean = simple noise filtering
## strict = some additional cleanup based on test set stats
## CLEAN_TESTDATA_TYPE should stay as 'clean' because
## we need those data sets to get the parameters
## for the strict mode
PRE ?= simple
CLEAN_TRAINDATA_TYPE ?= strict
CLEAN_DEVDATA_TYPE ?= strict
CLEAN_TESTDATA_TYPE ?= clean
## subword splitting type
PRE_SRC = ${SUBWORDS}${SUBWORD_SRCVOCAB_SIZE:000=}k
PRE_TRG = ${SUBWORDS}${SUBWORD_TRGVOCAB_SIZE:000=}k
## dev and test data come from one specific data set
## if we have a bilingual model
ifeq (${words ${SRCLANGS}},1)
ifeq (${words ${TRGLANGS}},1)
DEVSET_NAME ?= ${DEVSET}
TESTSET_NAME ?= ${TESTSET}
endif
endif
## otherwise we give them a generic name
DEVSET_NAME ?= opus-dev
TESTSET_NAME ?= opus-test
## DATADIR = directory where the train/dev/test data are
## TODO: MODELDIR still in use?
## TODO: SPMDIR still in use? (monolingual sp models)
DATADIR = ${WORKHOME}/data
MODELDIR = ${WORKHOME}/models/${LANGPAIRSTR}
SPMDIR = ${WORKHOME}/SentencePieceModels
## train data sets (word alignment for the guided alignment option)
TRAIN_BASE = ${WORKDIR}/train/${DATASET}
TRAIN_SRC = ${TRAIN_BASE}.src
TRAIN_TRG = ${TRAIN_BASE}.trg
TRAIN_ALG = ${TRAIN_BASE}${TRAINSIZE}.${PRE_SRC}-${PRE_TRG}.src-trg.alg.gz
TRAIN_S2T = ${TRAIN_BASE}${TRAINSIZE}.${PRE_SRC}-${PRE_TRG}.s2t.gz
TRAIN_T2S = ${TRAIN_BASE}${TRAINSIZE}.${PRE_SRC}-${PRE_TRG}.t2s.gz
## data sets that are pre-processed and ready to be used
TRAINDATA_SRC = ${TRAIN_SRC}.clean.${PRE_SRC}.gz
TRAINDATA_TRG = ${TRAIN_TRG}.clean.${PRE_TRG}.gz
DEVDATA_SRC = ${DEV_SRC}.${PRE_SRC}
DEVDATA_TRG = ${DEV_TRG}.${PRE_TRG}
TESTDATA_SRC = ${TEST_SRC}.${PRE_SRC}
TESTDATA_TRG = ${TEST_TRG}
## training data in local space
LOCAL_TRAIN_SRC = ${TMPWORKDIR}/${LANGPAIRSTR}/train/${DATASET}.src
LOCAL_TRAIN_TRG = ${TMPWORKDIR}/${LANGPAIRSTR}/train/${DATASET}.trg
LOCAL_TRAIN = ${TMPWORKDIR}/${LANGPAIRSTR}/train/${DATASET}
LOCAL_MONO_DATA = ${TMPWORKDIR}/${LANGSTR}/train/${DATASET}.mono
## dev and test data
DEV_SRC ?= ${WORKDIR}/val/${DEVSET_NAME}.src
DEV_TRG ?= ${WORKDIR}/val/${DEVSET_NAME}.trg
TEST_SRC ?= ${WORKDIR}/test/${TESTSET_NAME}.src
TEST_TRG ?= ${WORKDIR}/test/${TESTSET_NAME}.trg
## home directories for back and forward translation
BACKTRANS_HOME ?= backtranslate
FORWARDTRANS_HOME ?= ${BACKTRANS_HOME}
PIVOTTRANS_HOME ?= pivoting
## model basename and optional sub-dir
## NR is used to create model ensembles
## NR is also used to generate a seed value for initialisation
MODEL = ${MODEL_SUBDIR}${DATASET}${TRAINSIZE}${MODEL_VARIANT}.${PRE_SRC}-${PRE_TRG}
NR = 1
MODEL_BASENAME = ${MODEL}.${MODELTYPE}.model${NR}
MODEL_VALIDLOG = ${MODEL}.${MODELTYPE}.valid${NR}.log
MODEL_TRAINLOG = ${MODEL}.${MODELTYPE}.train${NR}.log
MODEL_START = ${WORKDIR}/${MODEL_BASENAME}.npz
MODEL_DONE = ${WORKDIR}/${MODEL_BASENAME}.done
MODEL_FINAL = ${WORKDIR}/${MODEL_BASENAME}.npz.best-perplexity.npz
MODEL_DECODER = ${MODEL_FINAL}.decoder.yml
## quantized models
MODEL_BIN = ${WORKDIR}/${MODEL_BASENAME}.intgemm8.bin
MODEL_BIN_ALPHAS = ${WORKDIR}/${MODEL_BASENAME}.intgemm8.alphas.bin
MODEL_BIN_TUNED = ${WORKDIR}/${MODEL_BASENAME}.intgemm8tuned.bin
MODEL_BIN_TUNED_ALPHAS = ${WORKDIR}/${MODEL_BASENAME}.intgemm8tuned.alphas.bin
MODEL_INTGEMM8TUNED = ${WORKDIR}/${MODEL_BASENAME}.intgemm8tuned.npz
## lexical short-lists
SHORTLIST_NRVOC = 100
SHORTLIST_NRTRANS = 100
MODEL_BIN_SHORTLIST = ${WORKDIR}/${MODEL}.lex-s2t-${SHORTLIST_NRVOC}-${SHORTLIST_NRTRANS}.bin
.PRECIOUS: ${MODEL_FINAL} ${MODEL_BIN}
## for sentence-piece models: get plain text vocabularies
## for others: extract vocabulary from training data with MarianNMT
## backwards compatibility: if there is already a vocab-file then use it
# ifeq (${SUBWORDS},spm)
# ifeq ($(wildcard ${WORKDIR}/${MODEL}.vocab.yml),)
# USE_SPM_VOCAB ?= 1
# endif
# endif
## use vocab from sentence piece instead of
## marian_vocab from training data
ifeq ($(USE_SPM_VOCAB),1)
MODEL_VOCAB = ${WORKDIR}/${MODEL}.vocab.yml
MODEL_SRCVOCAB = ${WORKDIR}/${MODEL}.src.vocab
MODEL_TRGVOCAB = ${WORKDIR}/${MODEL}.trg.vocab
else
MODEL_VOCAB = ${WORKDIR}/${MODEL}.vocab.yml
MODEL_SRCVOCAB = ${MODEL_VOCAB}
MODEL_TRGVOCAB = ${MODEL_VOCAB}
endif
# find the latest model that has the same modeltype/modelvariant with or without guided alignment
# to be used if the flag CONTINUE_EXISTING is set to 1
# - without guided alignment (remove if part of the current): ${subst -align,,${MODELTYPE}}
# - with guided alignment (remove and add again): ${subst -align,,${MODELTYPE}}-align
#
# Don't use the ones that are tuned for a specific language pair or domain!
ifeq (${CONTINUE_EXISTING},1)
MODEL_LATEST = $(firstword \
${shell ls -t ${WORKDIR}/*${MODEL_VARIANT}.${PRE_SRC}-${PRE_TRG}.${subst -align,,${MODELTYPE}}.model[0-9].npz \
${WORKDIR}/*${MODEL_VARIANT}.${PRE_SRC}-${PRE_TRG}.${subst -align,,${MODELTYPE}}-align.model[0-9].npz \
${WORKDIR}/*${MODEL_VARIANT}.${PRE_SRC}-${PRE_TRG}.${subst -align,,${MODELTYPE}}.model[0-9].npz.best-perplexity.npz \
${WORKDIR}/*${MODEL_VARIANT}.${PRE_SRC}-${PRE_TRG}.${subst -align,,${MODELTYPE}}-align.model[0-9].npz.best-perplexity.npz \
2>/dev/null | grep -v 'tuned4' })
MODEL_LATEST_VOCAB = $(shell echo "${MODEL_LATEST}" | \
sed 's|\.${PRE_SRC}-${PRE_TRG}\..*$$|.${PRE_SRC}-${PRE_TRG}.vocab.yml|')
MARIAN_EARLY_STOPPING = 15
endif
## test set translation and scores
TEST_TRANSLATION = ${WORKDIR}/${TESTSET_NAME}.${MODEL}${NR}.${MODELTYPE}.${SRC}.${TRG}
TEST_EVALUATION = ${TEST_TRANSLATION}.eval
TEST_COMPARISON = ${TEST_TRANSLATION}.compare
## parameters for running Marian NMT
MARIAN_GPUS ?= 0
MARIAN_EXTRA =
MARIAN_VALID_FREQ ?= 10000
MARIAN_SAVE_FREQ ?= ${MARIAN_VALID_FREQ}
MARIAN_DISP_FREQ ?= ${MARIAN_VALID_FREQ}
MARIAN_EARLY_STOPPING ?= 10
MARIAN_VALID_MINI_BATCH ?= 16
MARIAN_MAXI_BATCH ?= 500
MARIAN_DROPOUT ?= 0.1
MARIAN_MAX_LENGTH ?= 500
MARIAN_ENC_DEPTH ?= 6
MARIAN_DEC_DEPTH ?= 6
MARIAN_ATT_HEADS ?= 8
MARIAN_DIM_EMB ?= 512
MARIAN_CLIP_NORM ?= 5
## default = shuffle data and batches
## (set to batches or none to change this)
# MARIAN_SHUFFLE ?= data
MARIAN_SHUFFLE ?= batches
## default: use sqlite database to store data
## remove this to use regular temp data
## set to --shuffle-in-ram to keep all shuffled data in RAM
# MARIAN_DATA_STORAGE ?= --sqlite
## set to global for lower memory usage in multiprocess training
## TODO: does this parameter really work?
MARIAN_SHARDING ?= local
## TODO: currently marianNMT crashes with workspace > 26000 (does it?)
## TODO: move this to individual env settings?
## problem: we need to know MODELTYPE before we can set this
ifeq (${GPU},p100)
MARIAN_WORKSPACE = 13000
else ifeq (${GPU},a100)
ifeq ($(subst -align,,${MODELTYPE}),transformer-big)
MARIAN_WORKSPACE = 15000
else ifeq ($(subst -align,,${MODELTYPE}),transformer-small)
MARIAN_WORKSPACE = 10000
else ifeq ($(subst -align,,${MODELTYPE}),transformer-tiny)
MARIAN_WORKSPACE = 10000
else ifeq ($(subst -align,,${MODELTYPE}),transformer-tiny11)
MARIAN_WORKSPACE = 10000
else
MARIAN_WORKSPACE = 20000
endif
else ifeq (${GPU},v100)
ifeq ($(subst -align,,${MODELTYPE}),transformer-big)
MARIAN_WORKSPACE = 15000
else ifeq ($(subst -align,,${MODELTYPE}),transformer-small)
MARIAN_WORKSPACE = 10000
else ifeq ($(subst -align,,${MODELTYPE}),transformer-tiny)
MARIAN_WORKSPACE = 10000
else ifeq ($(subst -align,,${MODELTYPE}),transformer-tiny11)
MARIAN_WORKSPACE = 10000
else
MARIAN_WORKSPACE = 20000
endif
else
MARIAN_WORKSPACE = 10000
endif
## TODO: do we need to reduce workspace for decoding?
# MARIAN_DECODER_WORKSPACE = $$((${MARIAN_WORKSPACE} / 2))
MARIAN_DECODER_WORKSPACE = 10000
## weights associated with training examples
ifneq ("$(wildcard ${TRAIN_WEIGHTS})","")
MARIAN_TRAIN_WEIGHTS = --data-weighting ${TRAIN_WEIGHTS}
endif
## NR allows to train several models for proper ensembling
## (with shared vocab)
## DANGER: if several models are started at the same time
## then there is some racing issue with creating the vocab!
ifdef NR
SEED=${NR}${NR}${NR}${NR}
else
SEED=1234
endif
## decoder flags (CPU and GPU variants)
MARIAN_BEAM_SIZE = 4
MARIAN_MINI_BATCH = 256
MARIAN_MAXI_BATCH = 512
# MARIAN_MINI_BATCH = 512
# MARIAN_MAXI_BATCH = 1024
# MARIAN_MINI_BATCH = 768
# MARIAN_MAXI_BATCH = 2048
ifeq ($(GPU_AVAILABLE),1)
MARIAN_SCORER_FLAGS = -n1 -d ${MARIAN_GPUS} \
--quiet-translation -w ${MARIAN_DECODER_WORKSPACE} \
--mini-batch ${MARIAN_MINI_BATCH} --maxi-batch ${MARIAN_MAXI_BATCH} --maxi-batch-sort src
MARIAN_DECODER_FLAGS = -b ${MARIAN_BEAM_SIZE} -n1 -d ${MARIAN_GPUS} \
--quiet-translation -w ${MARIAN_DECODER_WORKSPACE} \
--mini-batch ${MARIAN_MINI_BATCH} --maxi-batch ${MARIAN_MAXI_BATCH} --maxi-batch-sort src \
--max-length ${MARIAN_MAX_LENGTH} --max-length-crop
# --fp16
else
MARIAN_SCORER_FLAGS = -n1 --cpu-threads ${HPC_CORES} \
--quiet-translation \
--mini-batch ${HPC_CORES} --maxi-batch 100 --maxi-batch-sort src
MARIAN_DECODER_FLAGS = -b ${MARIAN_BEAM_SIZE} -n1 --cpu-threads ${HPC_CORES} \
--quiet-translation \
--mini-batch ${HPC_CORES} --maxi-batch 100 --maxi-batch-sort src \
--max-length ${MARIAN_MAX_LENGTH} --max-length-crop
MARIAN_EXTRA = --cpu-threads ${HPC_CORES}
endif
## make some data size-specific configuration parameters
## TODO: is it OK to delete LOCAL_TRAIN data?
SMALLEST_TRAINSIZE ?= 10000
SMALL_TRAINSIZE ?= 100000
MEDIUM_TRAINSIZE ?= 500000
LARGE_TRAINSIZE ?= 1000000
LARGEST_TRAINSIZE ?= 10000000
${WORKDIR}/${MODELCONFIG}:
@echo ".... create model configuration file '$@'"
@mkdir -p ${dir $@}
@if [ -e ${TRAIN_SRC}.clean.${PRE_SRC}${TRAINSIZE}.gz ]; then \
${MAKE} ${TRAIN_SRC}.clean.${PRE_SRC}${TRAINSIZE}.charfreq \
${TRAIN_TRG}.clean.${PRE_TRG}${TRAINSIZE}.charfreq; \
s=`${GZCAT} ${TRAIN_SRC}.clean.${PRE_SRC}${TRAINSIZE}.gz | head -10000001 | wc -l`; \
S=`cat ${TRAIN_SRC}.clean.${PRE_SRC}${TRAINSIZE}.charfreq | wc -l`; \
T=`cat ${TRAIN_TRG}.clean.${PRE_TRG}${TRAINSIZE}.charfreq | wc -l`; \
else \
${MAKE} ${LOCAL_TRAIN_SRC}; \
${MAKE} ${LOCAL_TRAIN_SRC}.charfreq ${LOCAL_TRAIN_TRG}.charfreq; \
s=`head -10000001 ${LOCAL_TRAIN_SRC} | wc -l`; \
S=`cat ${LOCAL_TRAIN_SRC}.charfreq | wc -l`; \
T=`cat ${LOCAL_TRAIN_TRG}.charfreq | wc -l`; \
fi; \
if [ $$s -gt ${LARGEST_TRAINSIZE} ]; then \
echo "# ${LANGPAIRSTR} training data bigger than ${LARGEST_TRAINSIZE}" > $@; \
echo "GPUJOB_HPC_MEM = 16g" >> $@; \
echo "GPUJOB_SUBMIT = -gpu01" >> $@; \
echo "SUBWORD_VOCAB_SIZE = ${SUBWORD_VOCAB_SIZE}" >> $@; \
echo "DEVSIZE = ${DEVSIZE}" >> $@; \
echo "TESTSIZE = ${TESTSIZE}" >> $@; \
echo "DEVMINSIZE = ${DEVMINSIZE}" >> $@; \
elif [ $$s -gt ${LARGE_TRAINSIZE} ]; then \
echo "# ${LANGPAIRSTR} training data bigger than ${LARGE_TRAINSIZE}" > $@; \
echo "GPUJOB_HPC_MEM = 12g" >> $@; \
echo "GPUJOB_SUBMIT = " >> $@; \
echo "MARIAN_VALID_FREQ = 2500" >> $@; \
echo "SUBWORD_VOCAB_SIZE = ${SUBWORD_VOCAB_SIZE}" >> $@; \
echo "DEVSIZE = ${DEVSIZE}" >> $@; \
echo "TESTSIZE = ${TESTSIZE}" >> $@; \
echo "DEVMINSIZE = ${DEVMINSIZE}" >> $@; \
elif [ $$s -gt ${MEDIUM_TRAINSIZE} ]; then \
echo "# ${LANGPAIRSTR} training data bigger than ${MEDIUM_TRAINSIZE}" > $@; \
echo "GPUJOB_HPC_MEM = 8g" >> $@; \
echo "GPUJOB_SUBMIT = " >> $@; \
echo "MARIAN_VALID_FREQ = 2500" >> $@; \
echo "MARIAN_WORKSPACE = 10000" >> $@; \
echo "SUBWORD_VOCAB_SIZE = 12000" >> $@; \
echo "DEVSIZE = ${DEVSIZE}" >> $@; \
echo "TESTSIZE = ${TESTSIZE}" >> $@; \
echo "DEVMINSIZE = ${DEVMINSIZE}" >> $@; \
elif [ $$s -gt ${SMALL_TRAINSIZE} ]; then \
echo "# ${LANGPAIRSTR} training data bigger than ${SMALL_TRAINSIZE}" > $@; \
echo "GPUJOB_HPC_MEM = 4g" >> $@; \
echo "GPUJOB_SUBMIT = " >> $@; \
echo "MARIAN_VALID_FREQ = 1000" >> $@; \
echo "MARIAN_WORKSPACE = 5000" >> $@; \
echo "MARIAN_VALID_MINI_BATCH = 8" >> $@; \
echo "SUBWORD_VOCAB_SIZE = 4000" >> $@; \
echo "DEVSIZE = 1000" >> $@; \
echo "TESTSIZE = 1000" >> $@; \
echo "DEVMINSIZE = 250" >> $@; \
elif [ $$s -gt ${SMALLEST_TRAINSIZE} ]; then \
echo "# ${LANGPAIRSTR} training data less than ${SMALLEST_TRAINSIZE}" > $@; \
echo "GPUJOB_HPC_MEM = 4g" >> $@; \
echo "GPUJOB_SUBMIT = " >> $@; \
echo "MARIAN_VALID_FREQ = 1000" >> $@; \
echo "MARIAN_WORKSPACE = 3500" >> $@; \
echo "MARIAN_DROPOUT = 0.5" >> $@; \
echo "MARIAN_VALID_MINI_BATCH = 4" >> $@; \
echo "SUBWORD_VOCAB_SIZE = 1000" >> $@; \
echo "DEVSIZE = 500" >> $@; \
echo "TESTSIZE = 1000" >> $@; \
echo "DEVMINSIZE = 100" >> $@; \
else \
echo "${LANGPAIRSTR} too small"; \
fi; \
if [ -e $@ ]; then \
if [ $$S -gt 1000 ]; then \
echo "SUBWORD_SRCVOCAB_SIZE = 32000" >> $@; \
fi; \
if [ $$T -gt 1000 ]; then \
echo "SUBWORD_TRGVOCAB_SIZE = 32000" >> $@; \
fi; \
fi
@echo "SRCLANGS = ${SRCLANGS}" >> $@
@echo "TRGLANGS = ${TRGLANGS}" >> $@
@echo "SKIPLANGS = ${SKIPLANGS}" >> $@
@echo "LANGPAIRSTR = ${LANGPAIRSTR}" >> $@
@echo "DATASET = ${DATASET}" >> $@
@echo "TRAINSET = ${TRAINSET}" >> $@
@echo "DEVSET = ${DEVSET}" >> $@
@echo "TESTSET = ${TESTSET}" >> $@
@echo "PRE = ${PRE}" >> $@
@echo "SUBWORDS = ${SUBWORDS}" >> $@
ifdef SHUFFLE_DATA
@echo "SHUFFLE_DATA = ${SHUFFLE_DATA}" >> $@
endif
ifdef FIT_DATA_SIZE
@echo "FIT_DATA_SIZE = ${FIT_DATA_SIZE}" >> $@
endif
ifdef FIT_DEVDATA_SIZE
@echo "FIT_DEVDATA_SIZE = ${FIT_DEVDATA_SIZE}" >> $@
endif
@echo "MAX_OVER_SAMPLING = ${MAX_OVER_SAMPLING}" >> $@
@echo "USE_REST_DEVDATA = ${USE_REST_DEVDATA}" >> $@
ifdef USE_TARGET_LABELS
@echo "USE_TARGET_LABELS = ${USE_TARGET_LABELS}" >> $@
endif
ifdef USE_SPM_VOCAB
@echo "USE_SPM_VOCAB = ${USE_SPM_VOCAB}" >> $@
endif
ifdef USE_JOINT_SUBWORD_MODEL
@echo "USE_JOINT_SUBWORD_MODEL = ${USE_JOINT_SUBWORD_MODEL}" >> $@
endif
################################################################
### DEPRECATED? ################################################
################################################################
## list of all languages in OPUS
## TODO: do we still need this?
## --> see OPUSLANGS which is directly taken from the API
opus-langs.txt:
${WGET} -O $@.tmp ${OPUSAPI}?languages=true
grep '",' $@.tmp | tr '",' ' ' | sort | tr "\n" ' ' | sed 's/ */ /g' > $@
rm -f $@.tmp
## all language pairs in opus in one file
## TODO: do we need this file?
opus-langpairs.txt:
for l in ${OPUS_LANGS}; do \
${WGET} -O $@.tmp ${OPUSAPI}?source=$$l\&languages=true; \
grep '",' $@.tmp | tr '",' ' ' | sort | tr "\n" ' ' | sed 's/ */ /g' > $@.tmp2; \
for t in `cat $@.tmp2`; do \
if [ $$t \< $$l ]; then \
echo "$$t-$$l" >> $@.all; \
else \
echo "$$l-$$t" >> $@.all; \
fi \
done; \
rm -f $@.tmp $@.tmp2; \
done
tr ' ' "\n" < $@.all |\
sed 's/ //g' | sort -u | tr "\n" ' ' > $@
rm -f $@.all