pere commited on
Commit
eb6c8f6
1 Parent(s): 1bdaff9

experiments

Browse files
batch_finetune_eu_jav_base_exp_bas_16.sh ADDED
@@ -0,0 +1,8 @@
 
 
 
 
 
 
 
 
 
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+ PROJECT_DIR=${HOME}"/models/eu-jav-categorisation"
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+ export PYTHONPATH=${PROJECT_DIR}
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+ INITIAL_CHECKPOINT_PATH=\"gs://t5-data/pretrained_models/t5x/mt5_base/checkpoint_1000000\"
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+ TRAIN_STEPS=1002000
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+
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+ python3 ../../t5x/t5x/train.py --gin_search_paths="./" --gin.TRAIN_STEPS=${TRAIN_STEPS} --gin_file="finetune_classification_base_test.gin" --gin.INITIAL_CHECKPOINT_PATH=${INITIAL_CHECKPOINT_PATH} --gin.MIXTURE_OR_TASK_NAME=\"classify_tweets\" --gin.MODEL_DIR=\"gs://eu-jav-t5x/finetuned/italian_tweets/evaltest_classify_tweets_base_v1\"
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+ python3 ../../t5x/t5x/train.py --gin_search_paths="./" --gin.TRAIN_STEPS=${TRAIN_STEPS} --gin_file="finetune_classification_base_test.gin" --gin.INITIAL_CHECKPOINT_PATH=${INITIAL_CHECKPOINT_PATH} --gin.MIXTURE_OR_TASK_NAME=\"classify_tweets\" --gin.MODEL_DIR=\"gs://eu-jav-t5x/finetuned/italian_tweets/evaltest_classify_tweets_base_2\"
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+
batch_finetune_eu_jav_base_exp_bs_16.sh ADDED
@@ -0,0 +1,7 @@
 
 
 
 
 
 
 
 
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+ PROJECT_DIR=${HOME}"/models/eu-jav-categorisation"
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+ export PYTHONPATH=${PROJECT_DIR}
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+ INITIAL_CHECKPOINT_PATH=\"gs://t5-data/pretrained_models/t5x/mt5_base/checkpoint_1000000\"
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+ TRAIN_STEPS=1003000
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+
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+ python3 ../../t5x/t5x/train.py --gin_search_paths="./" --gin.TRAIN_STEPS=${TRAIN_STEPS} --gin_file="finetune_classification_base_exp_bs_16.gin" --gin.INITIAL_CHECKPOINT_PATH=${INITIAL_CHECKPOINT_PATH} --gin.MIXTURE_OR_TASK_NAME=\"classify_tweets\" --gin.MODEL_DIR=\"gs://eu-jav-t5x/finetuned/italian_tweets/exp_bs_16_classify_tweets_base_v1\"
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+
batch_finetune_eu_jav_base_exp_dropout_02.sh ADDED
@@ -0,0 +1,7 @@
 
 
 
 
 
 
 
 
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+ PROJECT_DIR=${HOME}"/models/eu-jav-categorisation"
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+ export PYTHONPATH=${PROJECT_DIR}
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+ INITIAL_CHECKPOINT_PATH=\"gs://t5-data/pretrained_models/t5x/mt5_base/checkpoint_1000000\"
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+ TRAIN_STEPS=1003000
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+
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+ python3 ../../t5x/t5x/train.py --gin_search_paths="./" --gin.TRAIN_STEPS=${TRAIN_STEPS} --gin_file="finetune_classification_base_exp_dropout_02.gin" --gin.INITIAL_CHECKPOINT_PATH=${INITIAL_CHECKPOINT_PATH} --gin.MIXTURE_OR_TASK_NAME=\"classify_tweets\" --gin.MODEL_DIR=\"gs://eu-jav-t5x/finetuned/italian_tweets/exp_dropout_02_classify_tweets_base_v1\"
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+
batch_finetune_eu_jav_base_exp_dropout_04.sh ADDED
@@ -0,0 +1,7 @@
 
 
 
 
 
 
 
 
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+ PROJECT_DIR=${HOME}"/models/eu-jav-categorisation"
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+ export PYTHONPATH=${PROJECT_DIR}
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+ INITIAL_CHECKPOINT_PATH=\"gs://t5-data/pretrained_models/t5x/mt5_base/checkpoint_1000000\"
4
+ TRAIN_STEPS=1003000
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+
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+ python3 ../../t5x/t5x/train.py --gin_search_paths="./" --gin.TRAIN_STEPS=${TRAIN_STEPS} --gin_file="finetune_classification_base_exp_dropout_04.gin" --gin.INITIAL_CHECKPOINT_PATH=${INITIAL_CHECKPOINT_PATH} --gin.MIXTURE_OR_TASK_NAME=\"classify_tweets\" --gin.MODEL_DIR=\"gs://eu-jav-t5x/finetuned/italian_tweets/exp_dropout_04_classify_tweets_base_v1\"
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+
batch_finetune_eu_jav_base_test.sh CHANGED
@@ -3,6 +3,6 @@ export PYTHONPATH=${PROJECT_DIR}
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  INITIAL_CHECKPOINT_PATH=\"gs://t5-data/pretrained_models/t5x/mt5_base/checkpoint_1000000\"
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  TRAIN_STEPS=1002000
5
 
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- python3 ../../t5x/t5x/train.py --gin_search_paths="./" --gin.TRAIN_STEPS=${TRAIN_STEPS} --gin_file="finetune_classification_base_test.gin" --gin.INITIAL_CHECKPOINT_PATH=${INITIAL_CHECKPOINT_PATH} --gin.MIXTURE_OR_TASK_NAME=\"classify_tweets\" --gin.MODEL_DIR=\"gs://eu-jav-t5x/finetuned/italian_tweets/traintest_classify_tweets_base_v1\" &&
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- python3 ../../t5x/t5x/train.py --gin_search_paths="./" --gin.TRAIN_STEPS=${TRAIN_STEPS} --gin_file="finetune_classification_base_test.gin" --gin.INITIAL_CHECKPOINT_PATH=${INITIAL_CHECKPOINT_PATH} --gin.MIXTURE_OR_TASK_NAME=\"classify_tweets\" --gin.MODEL_DIR=\"gs://eu-jav-t5x/finetuned/italian_tweets/traintest_classify_tweets_base_2\" &&
8
 
 
3
  INITIAL_CHECKPOINT_PATH=\"gs://t5-data/pretrained_models/t5x/mt5_base/checkpoint_1000000\"
4
  TRAIN_STEPS=1002000
5
 
6
+ python3 ../../t5x/t5x/train.py --gin_search_paths="./" --gin.TRAIN_STEPS=${TRAIN_STEPS} --gin_file="finetune_classification_base_test.gin" --gin.INITIAL_CHECKPOINT_PATH=${INITIAL_CHECKPOINT_PATH} --gin.MIXTURE_OR_TASK_NAME=\"classify_tweets\" --gin.MODEL_DIR=\"gs://eu-jav-t5x/finetuned/italian_tweets/evaltest_classify_tweets_base_v1\"
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+ python3 ../../t5x/t5x/train.py --gin_search_paths="./" --gin.TRAIN_STEPS=${TRAIN_STEPS} --gin_file="finetune_classification_base_test.gin" --gin.INITIAL_CHECKPOINT_PATH=${INITIAL_CHECKPOINT_PATH} --gin.MIXTURE_OR_TASK_NAME=\"classify_tweets\" --gin.MODEL_DIR=\"gs://eu-jav-t5x/finetuned/italian_tweets/evaltest_classify_tweets_base_2\"
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finetune_classification_base_exp_bs_16.gin ADDED
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+ from __gin__ import dynamic_registration
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+ import tasks
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+
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+ import __main__ as train_script
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+ from t5.data import mixtures
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+ from t5x import models
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+ from t5x import partitioning
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+ from t5x import utils
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+
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+ include "t5x/examples/t5/mt5/base.gin"
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+ include "t5x/configs/runs/finetune.gin"
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+
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+ MIXTURE_OR_TASK_NAME = %gin.REQUIRED
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+ TASK_FEATURE_LENGTHS = {"inputs": 256, "targets": 2}
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+ INITIAL_CHECKPOINT_PATH = %gin.REQUIRED
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+ TRAIN_STEPS = %gin.REQUIRED # 1000000 pre-trained steps + 10000 fine-tuning steps.
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+ USE_CACHED_TASKS = False
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+ DROPOUT_RATE = 0.1
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+ RANDOM_SEED = 0
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+ BATCH_SIZE = 16
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+
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+ #Fixing a small error
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+ infer_eval/utils.DatasetConfig:
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+ task_feature_lengths = %TASK_FEATURE_LENGTHS
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+
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+ #Saving every 1000 steps
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+ utils.SaveCheckpointConfig:
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+ period = 500
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+
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+
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+ # Pere: Only necessary if we load a t5 model. We can start with an t5x model here
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+ # `LOSS_NORMALIZING_FACTOR`: When fine-tuning a model that was pre-trained
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+ # using Mesh Tensorflow (e.g. the public T5 / mT5 / ByT5 models), this should be
34
+ # set to `pretraining batch_size` * `target_token_length`. For T5 and T5.1.1:
35
+ # `2048 * 114`. For mT5: `1024 * 229`. For ByT5: `1024 * 189`.
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+ # LOSS_NORMALIZING_FACTOR = 234496
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+
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+ # Might have to ba changed based on architecture
39
+ # partitioning.PjitPartitioner.num_partitions = 1
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+
finetune_classification_base_exp_dropout_02.gin ADDED
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+ from __gin__ import dynamic_registration
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+ import tasks
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+
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+ import __main__ as train_script
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+ from t5.data import mixtures
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+ from t5x import models
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+ from t5x import partitioning
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+ from t5x import utils
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+
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+ include "t5x/examples/t5/mt5/base.gin"
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+ include "t5x/configs/runs/finetune.gin"
12
+
13
+ MIXTURE_OR_TASK_NAME = %gin.REQUIRED
14
+ TASK_FEATURE_LENGTHS = {"inputs": 256, "targets": 2}
15
+ INITIAL_CHECKPOINT_PATH = %gin.REQUIRED
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+ TRAIN_STEPS = %gin.REQUIRED # 1000000 pre-trained steps + 10000 fine-tuning steps.
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+ USE_CACHED_TASKS = False
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+ DROPOUT_RATE = 0.2
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+ RANDOM_SEED = 0
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+
21
+ #Fixing a small error
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+ infer_eval/utils.DatasetConfig:
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+ task_feature_lengths = %TASK_FEATURE_LENGTHS
24
+
25
+ #Saving every 1000 steps
26
+ utils.SaveCheckpointConfig:
27
+ period = 500
28
+
29
+
30
+ # Pere: Only necessary if we load a t5 model. We can start with an t5x model here
31
+ # `LOSS_NORMALIZING_FACTOR`: When fine-tuning a model that was pre-trained
32
+ # using Mesh Tensorflow (e.g. the public T5 / mT5 / ByT5 models), this should be
33
+ # set to `pretraining batch_size` * `target_token_length`. For T5 and T5.1.1:
34
+ # `2048 * 114`. For mT5: `1024 * 229`. For ByT5: `1024 * 189`.
35
+ # LOSS_NORMALIZING_FACTOR = 234496
36
+
37
+ # Might have to ba changed based on architecture
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+ # partitioning.PjitPartitioner.num_partitions = 1
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+
finetune_classification_base_exp_dropout_04.gin ADDED
@@ -0,0 +1,39 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ from __gin__ import dynamic_registration
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+ import tasks
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+
4
+ import __main__ as train_script
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+ from t5.data import mixtures
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+ from t5x import models
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+ from t5x import partitioning
8
+ from t5x import utils
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+
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+ include "t5x/examples/t5/mt5/base.gin"
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+ include "t5x/configs/runs/finetune.gin"
12
+
13
+ MIXTURE_OR_TASK_NAME = %gin.REQUIRED
14
+ TASK_FEATURE_LENGTHS = {"inputs": 256, "targets": 2}
15
+ INITIAL_CHECKPOINT_PATH = %gin.REQUIRED
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+ TRAIN_STEPS = %gin.REQUIRED # 1000000 pre-trained steps + 10000 fine-tuning steps.
17
+ USE_CACHED_TASKS = False
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+ DROPOUT_RATE = 0.4
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+ RANDOM_SEED = 0
20
+
21
+ #Fixing a small error
22
+ infer_eval/utils.DatasetConfig:
23
+ task_feature_lengths = %TASK_FEATURE_LENGTHS
24
+
25
+ #Saving every 1000 steps
26
+ utils.SaveCheckpointConfig:
27
+ period = 500
28
+
29
+
30
+ # Pere: Only necessary if we load a t5 model. We can start with an t5x model here
31
+ # `LOSS_NORMALIZING_FACTOR`: When fine-tuning a model that was pre-trained
32
+ # using Mesh Tensorflow (e.g. the public T5 / mT5 / ByT5 models), this should be
33
+ # set to `pretraining batch_size` * `target_token_length`. For T5 and T5.1.1:
34
+ # `2048 * 114`. For mT5: `1024 * 229`. For ByT5: `1024 * 189`.
35
+ # LOSS_NORMALIZING_FACTOR = 234496
36
+
37
+ # Might have to ba changed based on architecture
38
+ # partitioning.PjitPartitioner.num_partitions = 1
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+
tasks_test.py CHANGED
@@ -11,7 +11,7 @@ import tensorflow.compat.v1 as tf
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12
  tsv_path = {
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  "train": "gs://eu-jav-t5x/corpus/labeled/datasetA_train_3categories.tsv",
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- "validation": "gs://eu-jav-t5x/corpus/labeled/datasetA_train_3categories.tsv",
15
  "test": "gs://eu-jav-t5x/corpus/labeled/ datasetA_test_3categories.tsv"
16
  }
17
 
 
11
 
12
  tsv_path = {
13
  "train": "gs://eu-jav-t5x/corpus/labeled/datasetA_train_3categories.tsv",
14
+ "validation": "gs://eu-jav-t5x/corpus/labeled/datasetA_test_3categories.tsv",
15
  "test": "gs://eu-jav-t5x/corpus/labeled/ datasetA_test_3categories.tsv"
16
  }
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