Ciancia, C.; Patrick, P. L.; Esposito, P.
Terminology and Lexicography Research and Practice, John Benjamins, pp. 179–196
Computational Linguist · NLP Engineer · AI Systems Builder
PhDlinguistandfull-stackNLPengineer.Iturnlinguisticstructureintodeployablesystemsandlanguageplatformsbuiltforthemodernweb.
About
PhD-trained Computational Linguist and NLP Engineer with a track record of delivering production-grade AI systems across research and industry environments. I combine deep linguistic expertise: morphology, syntax, discourse analysis, lexicology, with hands-on LLM engineering, bridging a gap that most candidates on either side of it cannot.
My systems span the full pipeline: transformer model fine-tuning, retrieval-augmented generation (RAG), knowledge graph construction, and large-scale corpus processing. The result is NLP infrastructure that is linguistically informed, interpretable, and built to scale.
PhD
Linguistics
5+
Years in NLP & AI
3
Production AI Systems
6+
Publications
Department of Industrial Engineering, University of Salerno
University of Salerno
University of Salerno
CAOT – University of Salerno
Skills & Projects
A selection of systems I've designed and built — spanning semantic retrieval, entity extraction, and adaptive learning.
Semantic retrieval system combining knowledge graphs and LLMs for context-aware, structured information access in the Cultural Heritage domain.
Architected a hybrid retrieval pipeline that queries an OWL ontology via SPARQL to ground LLM responses in structured domain knowledge, dramatically reducing hallucinations in specialised Q&A tasks. Integrated vector databases and transformer models for lightweight, scalable deployment.
Domain-specific named entity extraction pipeline built for the cultural heritage domain, achieving state-of-the-art F1 on specialised entity types.
Trained and fine-tuned a transformer-based NER model on annotated cultural heritage corpora. Designed a domain-specific label set covering artworks, institutions, historical periods, and persons. Coupled with an active-learning OCR pipeline to minimise annotation effort on scarce data.
Adaptive language learning system powered by NLP-driven personalisation, IRT-based difficulty calibration, and Linguistic Linked Open Data integration.
Designed the full NLP backbone of an adaptive learning app: lexical transparency algorithm processing 50,000+ word pairs, real-time challenge adjustment via Dual Process Theory, and LLOD integration for authentic domain-specific content. Achieved a 33% improvement in vocabulary acquisition for 2,500+ active learners.
Ontology-based tool for vertical semantic enrichment of web content, improving discoverability and structured knowledge representation.
Developed a pipeline that leverages domain ontologies to semantically enrich content metadata, aligning it with structured knowledge bases and improving search engine visibility through entity-level annotation and schema markup generation.
Research
Peer-reviewed research and international conference contributions in computational linguistics, NLP, knowledge graphs, and AI-driven language learning.
Ciancia, C.; Patrick, P. L.; Esposito, P.
Terminology and Lexicography Research and Practice, John Benjamins, pp. 179–196
Clarizia, F.; Esposito, P.; Giunto, A.; Loffredo, R.
Proceedings of the 18th International Conference on Computer Supported Education (CSEDU 2026), Vol. 1, pp. 891–901
Pellegrino, M. A.; Esposito, P.; Tuozzo, G.
ACM Journal of Data and Information Quality
Esposito, P.; Mazzone, C.; Pellegrino, M.; Scarano, V.
Proceedings of the 16th International Conference on Computer Supported Education (CSEDU 2024), SciTePress, pp. 380–387
Esposito, P.
DQMLKG 2024: Data Quality meets Machine Learning and Knowledge Graphs
Esposito, P.; Pellegrino, M. A.; Scarano, V.; Tuozzo, G.
Proceedings of the International Semantic Web Conference (ISWC 2024)
Antelmi, A.; Esposito, P.
MIS4TEL 2024 Proceedings, Springer, Vol. 2, pp. 204–215
Cross Linguistic Passages of Meaning: Toward a Tailor-Made Digital System for Word-Sense, Cognates and Translation Pedagogy
Passaggi di senso: traduzioni e linguaggi oltre i confini · Fisciano, Italy
Recalibrating Lexical Development: Spatial Engagement in Digital Language Learning with Appìl
32nd AIA Conference – HUMAN, HUMANE, HUMANITIES · Torino, Italy
What’s the Frequency? Evaluating lexical frequency measures over phonological and morphological effects
UK Language Variation and Change 15 · Lancaster, UK
Shifting Cognitive Spaces in Computer-Assisted Language Learning
Underground Imaginaries 2025 · Napoli, Italy
Empowering Learners: A Tool for Sustainable Language Acquisition
Enhancing Sustainability Conference · Napoli, Italy
Appìl: Enhancing Access to English as a Lingua Franca through Adaptive Learning
ELF Communication Today
The Dual Role of AI in Second Language Learning: Exploring Applications and Addressing Biases
Shifting Boundaries: AI and Human Interactions Redefining Reality · Napoli, Italy
What kind of frequency measures best explain variation in a purely phonological variable
ICLaVe12 · Vienna, Austria
Empowering Data Literacy Among High School Learners
MIS4TEL 2024 · Salamanca, Spain
The Linguistic Linked Open Data through the Linguists' Lens
ESWC 2024 Workshop (DQMLKG) · Crete, Greece
Broaden Your Horizon! Play with Semantics via a Knowledge Graph-Based Approach
CSEDU 2024 · Angers, France
The role of Linguistic Linked Open Data for the development of Appìl
New Trends in English Language Teaching · Chieti–Pescara, Italy
Lexical Frequency Effects on Language Variation
ICHLL · Fisciano, Italy
Appìl – an interface for the improvement of lexical skills
Lectures on Computational Linguistics · Pisa, Italy
Contact
Whether it's a research collaboration, a production NLP system, or just a conversation about language and AI, I'm always happy to connect.
Support
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