TOKENIZER=YOUR_PATH_TO_MODEL TOKENIZER_ID=roberta for i in $(seq -f "%02g" 0 9) do python -m dense.driver.encode \ --output_dir ../data/example/$TOKENIZER_ID/models \ --model_name_or_path ../data/example/$TOKENIZER_ID/models \ --fp16 \ --per_device_eval_batch_size 128 \ --encode_in_path ../data/example/$TOKENIZER_ID/corpus/split${i}.json \ --tokenizer_name $TOKENIZER \ --encoded_save_path ../data/example/$TOKENIZER_ID/encoding/split${i}.pt done python -m dense.driver.encode \ --output_dir ../data/example/$TOKENIZER_ID/models \ --model_name_or_path ../data/example/$TOKENIZER_ID/models \ --fp16 \ --tokenizer_name $TOKENIZER \ --q_max_len 32 \ --encode_is_qry \ --per_device_eval_batch_size 128 \ --encode_in_path ../data/example/$TOKENIZER_ID/query/dev.query.json \ --encoded_save_path ../data/example/$TOKENIZER_ID/encoding/qry.pt for i in $(seq -f "%02g" 0 9) do python -m dense.faiss_retriever \ --query_reps ../data/example/$TOKENIZER_ID/encoding/qry.pt \ --passage_reps ../data/example/$TOKENIZER_ID/encoding/split${i}.pt \ --depth 50 \ --save_ranking_to ../data/example/$TOKENIZER_ID/ranking/intermediate/split${i} done python -m dense.faiss_retriever.reducer \ --score_dir ../data/example/$TOKENIZER_ID/ranking/intermediate \ --query ../data/example/$TOKENIZER_ID/encoding/qry.pt \ --save_ranking_to ../data/example/$TOKENIZER_ID/ranking/rank.txt python score_to_marco.py ../data/example/$TOKENIZER_ID/ranking/rank.txt