Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

DRAMA: Domain Retrieval using Adaptive Module Allocation

About

Neural models are increasingly used in Web-scale Information Retrieval (IR). However, relying on these models introduces substantial computational and energy requirements, leading to increasing attention toward their environmental cost and the sustainability of large-scale deployments. While neural IR models deliver high retrieval effectiveness, their scalability is constrained in multi-domain scenarios, where training and maintaining domain-specific models is inefficient and achieving robust cross-domain generalisation within a unified model remains difficult. This paper introduces DRAMA (Domain Retrieval using Adaptive Module Allocation), an energy- and parameter-efficient framework designed to reduce the environmental footprint of neural retrieval. DRAMA integrates domain-specific adapter modules with a dynamic gating mechanism that selects the most relevant domain knowledge for each query. New domains can be added efficiently through lightweight adapter training, avoiding full model retraining. We evaluate DRAMA on multiple Web retrieval benchmarks covering different domains. Our extensive evaluation shows that DRAMA achieves comparable effectiveness to domain-specific models while using only a fraction of their parameters and computational resources. These findings show that energy-aware model design can significantly improve scalability and sustainability in neural IR.

Pranav Kasela, Marco Braga, Ophir Frieder, Nazli Goharian, Gabriella Pasi, Raffaele Perego• 2026

Related benchmarks

TaskDatasetResultRank
Information RetrievalAcademic Search Computer Science
MAP@10020.4
22
Information RetrievalAcademic Search Political Science
MAP@10019.4
22
Information RetrievalAcademic Search Psychology
MAP@1000.224
22
Information RetrievalAcademic Search Physics
MAP@1000.196
22
Information RetrievalcQA out-of-domain (test)
MAP@10052.4
8
Information RetrievalQuora
NDCG@1083.2
8
Community Question AnsweringcQA Scifi domain StackExchange (test)
MAP@10064.1
7
Information RetrievalQuery length 128 ensemble setting (test)
GFLOPs/query0.15
7
Information RetrievalcQA Apple
MAP@10030.7
7
Information RetrievalcQA English
MAP@10054.3
7
Showing 10 of 16 rows

Other info

Follow for update