DISIT Lab, competence and project idea on bigdata. reasoning
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1 DISIT Lab, competence and project idea on bigdata knowledge modeling, OD/LD and reasoning Paolo Nesi Dipartimento di Ingegneria dell Informazione, DINFO Università degli Studi di Firenze Via S. Marta 3, 50139, Firenze, Italy Tel: , fax: DISIT Lab alias DISIT Lab (DINFO UNIFI),
2 DISIT Lab Competences DISIT Lab one of the most active ICT labs of the University of Florence successfully developed a number of International RnD/RIA/IA projects as well as solutions grounded on available DISIT tools for specified TRL Publications: Tools: Research areas: big data, high performance distributed systems, data mining and understanding semantic models and computing, knowledge mining and representation, ontology modelling, artificial intelligence, natural language processing, Techniques: data analytic, clustering, indexing and search, link discovering, regression, holistic regression, machine learning, prediction, inference, deduction, recognition, disambiguation. DISIT solutions for: user behaviour analysis, recommendation, multilingual and cross media indexing, user and collective profiling, indoor/outdoor navigation, media synchronisation, matchmaking, audio transcoding, decision support, sentient and autonomous agents and tools, open data, linked open data. DISIT Lab (DINFO UNIFI),
3 Recent Track Record on BD Big data issues: Data Mining, OD harvesting reconciliation, quality improvement, decision taking, predictions, causeeffect,. Smart City Knowledge Model, KM4City Pub on: IEEE ICECCS, SMAP2014, DMS2014, Journal of Visual Language Sii Mobility, largest Italian smart city project on the integration of mobility and smart city services (14 Meuro): mobility.org ServiceMap.disit.org DISIT Lab (DINFO UNIFI),
4 Recent Track Record on BD Modeling knowledge and reasoners for: Smart City: Sii Mobility Smart Cloud: ICARO project Cultural heritage: ECLAP platform and social network Linked Open Graph service: LD/LOD open service and reasoner engine Web based reasoning tool on large RDF stores multiple SPARQL entry points tool E.g.: Europeana, dbpedia, OSIM, ECLAP, cultural italia, Getty, Geonames, etc. etc. Pub on: DMS2014, Journal of Visual Language, W3C workshop Smart City model & tools Linked Open Graph DISIT Lab (DINFO UNIFI),
5 Project Idea Knowledge modeling and indexing for fast conceptual reasoning in space, time, Research challenges on nosql Semantic data base and indexing Modeling of Reasoning algorithms and tools, Semantic Reasoning Languages, decision taking processes Distributed computing solutions Rendering and visualization tool on semantic database Performance evaluation and assessment metrics Application areas: Smart city, cloud, cultural heritage, content protection DISIT Lab (DINFO UNIFI),
6 Recent publications P. Nesi, G. Pantaleo, M. Tenti, "Ge(o)Lo(cator): Geographic Information Extraction from Unstructured Text Data and Web Documents", SMAP 2014, 9th International Workshop on Semantic and Social Media Adaptation and Personalization, November 6 7, 2014, Corfu/Kerkyra, Greece. technically cosponsored by the IEEE Computational Intelligence Society and technically supported by the IEEE Semantic Web Task Force. P. Bellini, P. Nesi, A. venturi, "Linked Open Graph: browsing multiple SPARQL entry points to build your own LOD views", Journal on Visual Language and computing, P. Bellini, P. Nesi, M. Simoncini, A. Tibo, "Maintenance and Emergency Management with an Integrated indoor/outdoor Navigation Support", Journal on Visual Language and computing, Best Paper Award. P. Bellini, M. Benigni, R. Billero, P. Nesi, N. Rauch, "Ontology Bulding vs Data Harvesting and Cleaning for Smart city Services", 20th International Conference on Distributed Multimedia Systems, DMS2014, Pittburgh University Center, Pittsburgh, USA, Aug P. Bellini, P. Nesi, N. Rauch, "Knowledge Base Contruction Process for Smart city Services", IEEE 19th International Conference on Engineering of Complex Computer Systems (IEEE ICECCS 2014) P. Bellini, P. Nesi, N. Rauch, Smart City data via LOD/LOG Service, LOD2014, Workshop Linked Open Data: where are we?, organized by W3C and CNR, Rome, 2014 P. Bellini, D. Cenni, P. Nesi, "Optimization of Information Retrieval for Cross Media contents in a Best Practice Network", International Journal Multimedia Information Retrieval. Springer, 2014 P. Bellini, P. Nesi, "Modeling Performing Arts Metadata and Relationships in Content Service for Institutions", International Multimedia Systems Journal, Springer P. Bellini, P. Nesi, F. Pazzaglia, "Exploiting P2P Scalability for Grant Authorization in Digital Rights Management Solutions", International Journal Multimedia Tools and Applications, Springer press, DISIT Lab (DINFO UNIFI),
7 Paolo Nesi DISIT Lab: Tel: Dipartimento di Ingegneria dell Informazione, DINFO Università degli Studi di Firenze Via S. Marta 3, 50139, Firenze, Italy Tel: , fax: DISIT Lab (DINFO UNIFI),
Automating Big Data Management, by DISIT Lab Distributed [Systems and Internet, Data Intelligence] Technologies Lab Prof. Ph.D. Eng.
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