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import random
import logging
from datasets import load_dataset, Dataset, DatasetDict
from sentence_transformers import (
    SentenceTransformer,
    SentenceTransformerTrainer,
    SentenceTransformerTrainingArguments,
    SentenceTransformerModelCardData,
)
from sentence_transformers.losses import MatryoshkaLoss, MultipleNegativesRankingLoss
from sentence_transformers.training_args import BatchSamplers, MultiDatasetBatchSamplers
from sentence_transformers.evaluation import NanoBEIREvaluator
from sentence_transformers.models.StaticEmbedding import StaticEmbedding

from transformers import AutoTokenizer

logging.basicConfig(
    format="%(asctime)s - %(message)s", datefmt="%Y-%m-%d %H:%M:%S", level=logging.INFO
)
random.seed(12)


def load_train_eval_datasets():
    """
    Either load the train and eval datasets from disk or load them from the datasets library & save them to disk.

    Upon saving to disk, we quit() to ensure that the datasets are not loaded into memory before training.
    """
    try:
        train_dataset = DatasetDict.load_from_disk("datasets/train_dataset")
        eval_dataset = DatasetDict.load_from_disk("datasets/eval_dataset")
        return train_dataset, eval_dataset
    except FileNotFoundError:
        print("Loading gooaq dataset...")
        gooaq_dataset = load_dataset("sentence-transformers/gooaq", split="train")
        gooaq_dataset_dict = gooaq_dataset.train_test_split(test_size=10_000, seed=12)
        gooaq_train_dataset: Dataset = gooaq_dataset_dict["train"]
        gooaq_eval_dataset: Dataset = gooaq_dataset_dict["test"]
        print("Loaded gooaq dataset.")

        print("Loading msmarco dataset...")
        msmarco_dataset = load_dataset("sentence-transformers/msmarco-co-condenser-margin-mse-sym-mnrl-mean-v1", "triplet", split="train")
        msmarco_dataset_dict = msmarco_dataset.train_test_split(test_size=10_000, seed=12)
        msmarco_train_dataset: Dataset = msmarco_dataset_dict["train"]
        msmarco_eval_dataset: Dataset = msmarco_dataset_dict["test"]
        print("Loaded msmarco dataset.")

        print("Loading squad dataset...")
        squad_dataset = load_dataset("sentence-transformers/squad", split="train")
        squad_dataset_dict = squad_dataset.train_test_split(test_size=10_000, seed=12)
        squad_train_dataset: Dataset = squad_dataset_dict["train"]
        squad_eval_dataset: Dataset = squad_dataset_dict["test"]
        print("Loaded squad dataset.")

        print("Loading s2orc dataset...")
        s2orc_dataset = load_dataset("sentence-transformers/s2orc", "title-abstract-pair", split="train[:100000]")
        s2orc_dataset_dict = s2orc_dataset.train_test_split(test_size=10_000, seed=12)
        s2orc_train_dataset: Dataset = s2orc_dataset_dict["train"]
        s2orc_eval_dataset: Dataset = s2orc_dataset_dict["test"]
        print("Loaded s2orc dataset.")

        print("Loading allnli dataset...")
        allnli_train_dataset = load_dataset("sentence-transformers/all-nli", "triplet", split="train")
        allnli_eval_dataset = load_dataset("sentence-transformers/all-nli", "triplet", split="dev")
        print("Loaded allnli dataset.")

        print("Loading paq dataset...")
        paq_dataset = load_dataset("sentence-transformers/paq", split="train")
        paq_dataset_dict = paq_dataset.train_test_split(test_size=10_000, seed=12)
        paq_train_dataset: Dataset = paq_dataset_dict["train"]
        paq_eval_dataset: Dataset = paq_dataset_dict["test"]
        print("Loaded paq dataset.")

        print("Loading trivia_qa dataset...")
        trivia_qa = load_dataset("sentence-transformers/trivia-qa", split="train")
        trivia_qa_dataset_dict = trivia_qa.train_test_split(test_size=5_000, seed=12)
        trivia_qa_train_dataset: Dataset = trivia_qa_dataset_dict["train"]
        trivia_qa_eval_dataset: Dataset = trivia_qa_dataset_dict["test"]
        print("Loaded trivia_qa dataset.")

        print("Loading msmarco_10m dataset...")
        msmarco_10m_dataset = load_dataset("bclavie/msmarco-10m-triplets", split="train")
        msmarco_10m_dataset_dict = msmarco_10m_dataset.train_test_split(test_size=10_000, seed=12)
        msmarco_10m_train_dataset: Dataset = msmarco_10m_dataset_dict["train"]
        msmarco_10m_eval_dataset: Dataset = msmarco_10m_dataset_dict["test"]
        print("Loaded msmarco_10m dataset.")

        print("Loading swim_ir dataset...")
        swim_ir_dataset = load_dataset("nthakur/swim-ir-monolingual", "en", split="train").select_columns(["query", "text"])
        swim_ir_dataset_dict = swim_ir_dataset.train_test_split(test_size=10_000, seed=12)
        swim_ir_train_dataset: Dataset = swim_ir_dataset_dict["train"]
        swim_ir_eval_dataset: Dataset = swim_ir_dataset_dict["test"]
        print("Loaded swim_ir dataset.")

        # NOTE: 20 negatives
        print("Loading pubmedqa dataset...")
        pubmedqa_dataset = load_dataset("sentence-transformers/pubmedqa", "triplet-20", split="train")
        pubmedqa_dataset_dict = pubmedqa_dataset.train_test_split(test_size=100, seed=12)
        pubmedqa_train_dataset: Dataset = pubmedqa_dataset_dict["train"]
        pubmedqa_eval_dataset: Dataset = pubmedqa_dataset_dict["test"]
        print("Loaded pubmedqa dataset.")

        # NOTE: A lot of overlap with anchor/positives
        print("Loading miracl dataset...")
        miracl_dataset = load_dataset("sentence-transformers/miracl", "en-triplet-all", split="train")
        miracl_dataset_dict = miracl_dataset.train_test_split(test_size=10_000, seed=12)
        miracl_train_dataset: Dataset = miracl_dataset_dict["train"]
        miracl_eval_dataset: Dataset = miracl_dataset_dict["test"]
        print("Loaded miracl dataset.")

        # NOTE: A lot of overlap with anchor/positives
        print("Loading mldr dataset...")
        mldr_dataset = load_dataset("sentence-transformers/mldr", "en-triplet-all", split="train")
        mldr_dataset_dict = mldr_dataset.train_test_split(test_size=10_000, seed=12)
        mldr_train_dataset: Dataset = mldr_dataset_dict["train"]
        mldr_eval_dataset: Dataset = mldr_dataset_dict["test"]
        print("Loaded mldr dataset.")

        # NOTE: A lot of overlap with anchor/positives
        print("Loading mr_tydi dataset...")
        mr_tydi_dataset = load_dataset("sentence-transformers/mr-tydi", "en-triplet-all", split="train")
        mr_tydi_dataset_dict = mr_tydi_dataset.train_test_split(test_size=10_000, seed=12)
        mr_tydi_train_dataset: Dataset = mr_tydi_dataset_dict["train"]
        mr_tydi_eval_dataset: Dataset = mr_tydi_dataset_dict["test"]
        print("Loaded mr_tydi dataset.")

        train_dataset = DatasetDict({
            "gooaq": gooaq_train_dataset,
            "msmarco": msmarco_train_dataset,
            "squad": squad_train_dataset,
            "s2orc": s2orc_train_dataset,
            "allnli": allnli_train_dataset,
            "paq": paq_train_dataset,
            "trivia_qa": trivia_qa_train_dataset,
            "msmarco_10m": msmarco_10m_train_dataset,
            "swim_ir": swim_ir_train_dataset,
            "pubmedqa": pubmedqa_train_dataset,
            "miracl": miracl_train_dataset,
            "mldr": mldr_train_dataset,
            "mr_tydi": mr_tydi_train_dataset,
        })
        eval_dataset = DatasetDict({
            "gooaq": gooaq_eval_dataset,
            "msmarco": msmarco_eval_dataset,
            "squad": squad_eval_dataset,
            "s2orc": s2orc_eval_dataset,
            "allnli": allnli_eval_dataset,
            "paq": paq_eval_dataset,
            "trivia_qa": trivia_qa_eval_dataset,
            "msmarco_10m": msmarco_10m_eval_dataset,
            "swim_ir": swim_ir_eval_dataset,
            "pubmedqa": pubmedqa_eval_dataset,
            "miracl": miracl_eval_dataset,
            "mldr": mldr_eval_dataset,
            "mr_tydi": mr_tydi_eval_dataset,
        })

        train_dataset.save_to_disk("datasets/train_dataset")
        eval_dataset.save_to_disk("datasets/eval_dataset")
        
        # The `train_test_split` calls have put a lot of the datasets in memory, while we want it to just be on disk
        quit()
    

def main():
    # 1. Load a model to finetune with 2. (Optional) model card data
    static_embedding = StaticEmbedding(AutoTokenizer.from_pretrained("google-bert/bert-base-uncased"), embedding_dim=1024)
    model = SentenceTransformer(
        modules=[static_embedding],
        model_card_data=SentenceTransformerModelCardData(
            language="en",
            license="apache-2.0",
            model_name="Static Embeddings with BERT uncased tokenizer finetuned on various datasets",
        ),
    )

    # 3. Set up training & evaluation datasets - each dataset is trained with MNRL (with MRL)
    train_dataset, eval_dataset = load_train_eval_datasets()
    print(train_dataset)

    # 4. Define a loss function
    loss = MultipleNegativesRankingLoss(model)
    loss = MatryoshkaLoss(model, loss, matryoshka_dims=[32, 64, 128, 256, 512, 1024])

    # 5. (Optional) Specify training arguments
    run_name = "static-retrieval-mrl-en-v1"
    args = SentenceTransformerTrainingArguments(
        # Required parameter:
        output_dir=f"models/{run_name}",
        # Optional training parameters:
        num_train_epochs=1,
        per_device_train_batch_size=2048,
        per_device_eval_batch_size=2048,
        learning_rate=2e-1,
        warmup_ratio=0.1,
        fp16=False,  # Set to False if you get an error that your GPU can't run on FP16
        bf16=True,  # Set to True if you have a GPU that supports BF16
        batch_sampler=BatchSamplers.NO_DUPLICATES,  # MultipleNegativesRankingLoss benefits from no duplicate samples in a batch
        multi_dataset_batch_sampler=MultiDatasetBatchSamplers.PROPORTIONAL,
        # Optional tracking/debugging parameters:
        eval_strategy="steps",
        eval_steps=250,
        save_strategy="steps",
        save_steps=250,
        save_total_limit=2,
        logging_steps=250,
        logging_first_step=True,
        run_name=run_name,  # Will be used in W&B if `wandb` is installed
    )

    # 6. (Optional) Create an evaluator & evaluate the base model
    evaluator = NanoBEIREvaluator()
    evaluator(model)

    # 7. Create a trainer & train
    trainer = SentenceTransformerTrainer(
        model=model,
        args=args,
        train_dataset=train_dataset,
        eval_dataset=eval_dataset,
        loss=loss,
        evaluator=evaluator,
    )
    trainer.train()

    # (Optional) Evaluate the trained model on the evaluator after training
    evaluator(model)

    # 8. Save the trained model
    model.save_pretrained(f"models/{run_name}/final")

    # 9. (Optional) Push it to the Hugging Face Hub
    model.push_to_hub(run_name, private=True)

if __name__ == "__main__":
    main()