Julio De Melo Borges
Karlsruhe Institute of Technology (KIT)
Campus Süd
Institute of Telematics
Chair for Pervasive Computing Systems / TECO
Vincenz-Prießnitz-Straße 1
76131 Karlsruhe
Germany
Building 07.07, Room 214
email: borges(at)teco.edu
LinkedIn: http://lnked.in/jborges
phone: +49 721 608-41708
fax: +49 721 608-41702
Short CV
- 2015-Now: PhD Student at TECO/KIT
- 2015: Graduation with Master (MSc) of Computer Science from Karlsruhe Institute of Technology (KIT)
- 2015: Conclusion of Software Campus Executive Training Program in cooperation with Software AG
- 2012: Graduation with Bachelor (BSc) of Computer Science from Karlsruhe Institute of Technology (KIT)
Projects
- 2014 – 2017: Data Scientist @ Smart Data Innovation Lab (SDIL) – Promotion of Cutting-Edge Smart Data Research
→ See our projects at: http://www.sdil.de/en/projects/ - 2014 – 2017: Data Scientist @ Smart Data Solution Center (SDSC) – Smart Data Analytics for Small and Medium Enterprises.
→ See our success stories at: http://sdsc-bw.de/erfolge - 2014 – 2015: Project Manager – ESTAData – Data driven decision recommendation for administrative bodies based on collective intelligence
Activities
2017
2016
- International Conference on IOT in Urban Space (Urb-IoT’16). Organizing Committee – Social Media Chair
- Speaker at ISC High Performance Computing Conference: Industry meets Research: Success-Stories of the Smart Data Solution Center Baden-Wuerttemberg
- Speaker at Bitkom Big Data Summit: Industry Meets Science: Erfolge des Smart Data Innovation Lab
- Speaker at Small Big Data Value Association Summit: Innovation Spaces (SDIL)
2015
- International Conference on Smart Grid Communications (SmartGridComm). Technical Program Committee
- Speaker at IHK Karlsruhe: Von Big Data zu Smart Data
Teaching
- 2017 – Praktikum Smart Data Analytics
- 2016 – Praktikum Kontextsensitive ubiquitäre Systeme (now: Smart Data Analytics): Techniques, methods and software for context acquisition and processing as the basis of Smart Data Analytics.
- Achievements: Top 1% in a Data Mining Competition on Kaggle
Supervised Theses
- Simon Sudrich: Anomaly Detection for Dynamic Heterogeneous Graphs (Praxis der Forschung)
- Qianqian Cao: Enhancing Traffic Flow Forecasting with Environmental Models (Master-Thesis)
- Daniel Ziehr: Leveraging Spatio-Temporal Features for Improving Predictive Policing (Master-Thesis).
- Wei Han: Association Rules Mining for Master Data (Master-Thesis)
Research Interests
- Data Mining
- Machine Learning
- Big Data Technologies
- IoT + Smart Cities
Peer-reviewed Publications
[mendeley type=”groups” id=”8c337d2b-91fd-3f04-9db0-60b09db9bea4″ filter=”author=borges” sortby=”year” sortorder=”desc” groupby=”year”]