Tim Jamison S. Awat
AssociateIT Educator and Networking Specialist
Quezon, Metro Manila · FEU Diliman
Personal Information
Short Biography
Information Technology Instructor at the Department of Information Technology, FEU Diliman. I have been serving in this capacity since 2019, contributing to the academic and professional development of students in the field of computing and information systems.
🛠️ Skills
Hardware Troubleshooting
Competent (69%)
Ethical Hacker
Novice (40%)
CCNA Networking v7
Master (95%)
🎓 Educational Qualification
Masteral · Jan 2019 - Present
Masters' in Information Technology
AMA University
Tertiary · May 2012 - Jun 2016
Bachelor of Science in Information Technology
AMA Computer College - Fairview
👔 Work Experience
Full-time • Jan 2019 - Present (7 years and 3 months)
Instructor 1 at FEU Diliman
Department of Information Technology
Contract • Aug 2016 - Feb 2017 (6 months)
Service Desk Technician Associate at Teletech Novaliches
At-Home Service Desk
📜 Licenses and Certifications
Information Technology Specialist in Networking
Issued by Certiport on January 21, 2021
View Credential
👨🏻🏫 Seminars and Trainings
Attendee
TechUnveil: Navigating Tomorrow's Tech Landscape v3.0
Awarded by FEU Diliman Information Technology Department on November 08, 2025
View Credential
Attendee
Enhancing Physical and Mental Resilience in the Workplace
Awarded by FEU Tech Human Resources Office on August 05, 2024
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Participant
CyberOps Associate - Instructors Training
Awarded by Cisco Networking Academy on July 11, 2024
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Attendee
Nanolearning: Bite-Sized Content as the Next Big Trend in Contemporary Education
Awarded by Educational Innovation and Technology Hub on December 12, 2023
View Credential👥 Organizations and Memberships
FEU Diliman Assemblage of Programmers and Developers - FEU Diliman
Adviser · August 06, 2022 - Present
Research Publications
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Conference Paper · 10.1109/IC4e65071.2025.11075489
Web-Based Clinic Management System with Patient Satisfaction Analysis Using Sentiment Analysis2025 16th International Conference on E-Education, E-Business, E-Management and E-Learning (IC4e), (2025), pp. 258-263
The adoption of information technology in healthcare has resulted in novel solutions for improving patient care and operational efficiency. This study details the design and implementation of a web-based clinic management system augmented with sentiment analysis to evaluate and enhance patient satisfaction. The system utilizes natural language processing and machine learning to autonomously assess patient feedback, understanding feelings (negative, positive, and neutral) regarding critical aspects such as waiting times, doctor-patient interactions, care efficacy, and overall clinic experience. The system underwent alpha and beta testing, commencing with controlled trials and then involving real-world evaluations with clinic attendants, physicians, and patients. An evaluation conducted in a dermatology clinic revealed the system's effectiveness in detecting service deficiencies and informing enhancements. Thus, this study suggests that the integration of sentiment analysis in clinical management systems enhances data-driven decision-making, hence improving patient experiences and optimizing operations.
Journal Article · 85083516719
Personalized Learning Approach in Learning Management System Using Cluster ModelsInternational Journal of Scientific and Technology Research, (2020), pp. 1288-1291
Data analysis is an integral part of research. Most researchers examine their results by using graphs, tables, charts, and figures. These methods are effective, but knowledge transfer is limited because it only depends on what the authors or researchers have presented. The need to scrutinise further the given data is essential. One way of addressing this problem is to utilise a graphical user interface (GUI), wherein a user can manually choose some parameters of an extensive dataset to display and analyse. In this paper, the results of the four variants of clustering techniques, namely the Ant Colony Optimization (ACO), Gaussian Mixture Model (GMM), K-Power Means (KPM), and Kernel-Power Density-Based Estimation (KPD), in grouping the wireless multipath propagations, are evaluated through the use of a GUI. The accuracy performance of each clustering algorithm can be obtained by choosing in the GUI the corresponding channel scenario that the user would like to investigate. A deeper analysis of the clustering characteristics can also be done by selecting other parameters in the GUI. This selection gives a better understanding of the behaviour of each clustering technique and provides an effective way of presenting and analysing the different sets of data.