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tags:
  - nlp
  - information-retrieval
  - rag
  - computer-vision
  - multilingual
  - italian

πŸ§ͺ DAISLab β€” University of Salerno

Data, Artificial Intelligence & Systems Lab
Department of Computer Science Β· University of Salerno, Italy


About Us

DAISLab is a research laboratory at the University of Salerno (UNISA), Italy, operating within the Department of Computer Science. Our work sits at the intersection of Natural Language Processing, Information Retrieval, Retrieval-Augmented Generation (RAG), and Computer Vision.

We are committed to open science: our datasets, benchmarks, and experimental resources are publicly released to support reproducible research and community-driven progress.


πŸ”¬ Research Areas

  • Data Science & Machine Learning β€” data-driven methods, predictive models, and large-scale analytics pipelines
  • Data Profiling & Data Mining β€” discovery of functional dependencies, metadata extraction, and incremental profiling on big data architectures
  • Information Retrieval & RAG β€” dense retrieval, embedding benchmarking, chunking strategies, and multilingual RAG evaluation
  • Data Privacy & Social Network Analysis β€” privacy-preserving techniques, anonymisation, and analysis of social graph structures
  • Web Engineering & Visual Languages β€” web-based information systems, visual query languages, and multimedia databases
  • Artificial Intelligence β€” applied AI across NLP, computer vision, and data management tasks

πŸ‘₯ Team

Giuseppe Polese

Full Professor Β· Department of Computer Science, University of Salerno
πŸ“§ gpolese@unisa.it
ORCID Scholar


Stefano Cirillo

Assistant Professor (Tenure-Track) Β· Department of Computer Science, University of Salerno
πŸ“§ scirillo@unisa.it Β· 🌐 UNISA page
ORCID Scholar


Giandomenico Solimando

Researcher Β· Department of Computer Science, University of Salerno
🌐 UNISA page
ORCID Scholar


πŸ”— Links


If you use our datasets or find our work useful, please consider citing the relevant paper. Contributions and collaborations are welcome!