Run detail
f616925e2ae1ece5
Dataset
msmarco-v1-passage.trecdl2020
Method
csqe
Model
Qwen2.5-72B-Instruct
Retriever
SPLADE++ (learned_sparse)
params_hash
c19ee8db
Queries
54
Metrics
| ndcg_cut_10 | 0.5736 |
| recall_1000 | 0.9052 |
Reproduce this run
Three steps: (1) reformulate the queries with QueryGym's example pipeline, (2) run retrieval with Pyserini, (3) evaluate with trec_eval.
1. reformulate
python examples/querygym_pyserini/pipeline.py \
--dataset msmarco-v1-passage.trecdl2020 \
--method csqe \
--model Qwen/Qwen2.5-72B-Instruct \
--steps reformulate \
--temperature 1 \
--max-tokens 128 \
--method-params '{"num_examples":4,"train_split":"train"}' \
--output-dir outputs/reproduce 2. retrieve (SPLADE++)
python -m pyserini.search.lucene \
--threads 16 --batch-size 128 \
--index msmarco-v1-passage.splade-pp-ed \
--topics outputs/reproduce/queries/reformulated_queries.tsv \
--encoder naver/splade-cocondenser-ensembledistil \
--output run.txt \
--hits 1000 --impact 3. evaluate
python -m pyserini.eval.trec_eval -c -m ndcg.cut.10 -m recall.1000 \
dl20-passage run.txt Artifacts
Config
config.json
{
"method_params": {
"num_examples": 4,
"train_split": "train"
},
"llm_config": {
"temperature": 1,
"max_tokens": 128
},
"dataset_config": {
"topics": "dl20-passage",
"index": "msmarco-v1-passage",
"num_queries": 54
},
"retrieval": {
"retriever_id": "splade-pp",
"paradigm": "learned_sparse",
"params": {
"model": "naver/splade-cocondenser-ensembledistil"
}
}
}