doc2query/msmarco-indonesian-mt5-base-v1

This is a doc2query model based on mT5 (also known as docT5query).

It can be used for:

Usage

from transformers import AutoTokenizer, AutoModelForSeq2SeqLM
import torch

model_name = 'doc2query/msmarco-indonesian-mt5-base-v1'
tokenizer = AutoTokenizer.from_pretrained(model_name)
model = AutoModelForSeq2SeqLM.from_pretrained(model_name)

text = "Python adalah bahasa pemrograman tujuan umum yang ditafsirkan, tingkat tinggi. Dibuat oleh Guido van Rossum dan pertama kali dirilis pada tahun 1991, filosofi desain Python menekankan keterbacaan kode dengan penggunaan spasi putih yang signifikan. Konstruksi bahasanya dan pendekatan berorientasi objek bertujuan untuk membantu pemrogram menulis kode yang jelas dan logis untuk proyek skala kecil dan besar."


def create_queries(para):
    input_ids = tokenizer.encode(para, return_tensors='pt')
    with torch.no_grad():
        # Here we use top_k / top_k random sampling. It generates more diverse queries, but of lower quality
        sampling_outputs = model.generate(
            input_ids=input_ids,
            max_length=64,
            do_sample=True,
            top_p=0.95,
            top_k=10, 
            num_return_sequences=5
            )
        
        # Here we use Beam-search. It generates better quality queries, but with less diversity
        beam_outputs = model.generate(
            input_ids=input_ids, 
            max_length=64, 
            num_beams=5, 
            no_repeat_ngram_size=2, 
            num_return_sequences=5, 
            early_stopping=True
        )


    print("Paragraph:")
    print(para)
    
    print("\nBeam Outputs:")
    for i in range(len(beam_outputs)):
        query = tokenizer.decode(beam_outputs[i], skip_special_tokens=True)
        print(f'{i + 1}: {query}')

    print("\nSampling Outputs:")
    for i in range(len(sampling_outputs)):
        query = tokenizer.decode(sampling_outputs[i], skip_special_tokens=True)
        print(f'{i + 1}: {query}')

create_queries(text)

Note: model.generate() is non-deterministic for top_k/top_n sampling. It produces different queries each time you run it.

Training

This model fine-tuned google/mt5-base for 66k training steps (4 epochs on the 500k training pairs from MS MARCO). For the training script, see the train_script.py in this repository.

The input-text was truncated to 320 word pieces. Output text was generated up to 64 word pieces.

This model was trained on a (query, passage) from the mMARCO dataset.