Personal Information
Short Biography
An aspiring IT professional specializing in Business Analytics. Proficient in applying analytical methods such as classification, clustering, and predictive modeling to transform data into clear, actionable insights for effective decision-making. Possesses experience in developing intuitive and user-centered front-end interfaces, ensuring that system features and data are functional, accessible, and visually clear. Skilled in combining analytics and design strengths to build solutions that bridge data, design, and business value. Prepared to apply this diverse skill set to create impactful, data-driven systems and ventures in the future.
🛠️ Skills
People Skills (Communication, Collaboration, Leadership)
Advanced (75%)
Database Management
Beginner (60%)
2D Art (IbisPaint)
Beginner (60%)
Programming Languages (C++, Java)
Competent (65%)
PowerPoint Presentation (Microsoft, Canva)
Advanced (75%)
🎓 Educational Qualification
Tertiary · Aug 2022 - Present
Bachelor of Science in Information Technology
Business Analytics · FEU Institute of Technology - FEU Tech
Secondary · Jun 2016 - Jun 2022
Pasig City Science High School
Primary · Jun 2010 - Mar 2016
El Elyon Learning Center Inc.
Preschool · Jun 2008 - Mar 2010
El Elyon Learning Center Inc.
🏆 Honors and Awards
FEU Tech 3TSY2425 CCSMA Dean's Lister (Gold)
Issued by FEU Tech Registrar's Office on July 27, 2025
View Credential
FEU Tech 2TSY2425 CCSMA Dean's Lister (Bronze)
Issued by FEU Tech Registrar's Office on April 25, 2025
View Credential
Recipient
FEU Tech 3TSY2324 CCSMA Dean's Lister (Bronze)
Issued by FEU Tech Registrar's Office on August 05, 2024
View Credential
Top Performing Student
Issued by FEU Institute of Technology on April 22, 2023
BSIT-BA
With Honors
Issued by Pasig City Science High School on June 28, 2022
📜 Licenses and Certifications
IT Specialist - Data Analytics
Issued by Certiport on November 24, 2025 - November 25, 2030
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IT Specialist - Databases
Issued by Certiport on November 23, 2025 - November 24, 2030
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PMI Project Management Ready
Issued by Project Management Institute on March 14, 2025
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Information Technology Specialist in Networking
Issued by Certiport on July 11, 2024
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👨🏻🏫 Seminars and Trainings
Attendee
Research Journey: Motivation to Publication
Awarded by Educational Innovation and Technology Hub on November 07, 2025
View Credential
Attendee
Building modern, cloud-native apps with Google Cloud
Awarded by Google on May 04, 2023
Attendee
The Gartner 2023 Leadership Vision for Technology Innovation
Awarded by Gartner on May 03, 2023
Attendee
Gartner Workshop: Create a Robust AI Strategy – From Plan to Execution
Awarded by Gartner on May 02, 2023
Attendee
Executive Leadership Series: CIOs, Strengthen Your Strategic Leadership
Awarded by Gartner on May 01, 2023
👥 Organizations and Memberships
DEVCON Philippines
Member · April 18, 2023 - Present
East Gate Baptist Church - Pasig
Member · May 20, 2007 - Present
Research Publications
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Conference Paper · 10.1109/ICTKE67052.2025.11274454
Predicting Adoption Intention using Machine Learning Approaches: the Case of e-Marketplace for Startups2025 23rd International Conference on ICT and Knowledge Engineering (ICT&KE), (2025), pp. 1-6
This paper discusses that the Digital marketplaces play a crucial role in connecting startups with potential investors, yet their adoption success depends on understanding the key factors influencing user intention. Predicting adoption behaviors accurately can help improve engagement and ensure platform sustainability. The study applies the Unified Theory of Acceptance and Use of Technology (UTAUT) framework to identify key adoption factors including Performance Expectancy (PE), Effort Expectancy (EE), Social Influence (SI), Facilitating Conditions (FC), Trust (TR), and Government Support (GS).and this has been widely applied to study technology adoption, limited research integrates this framework with machine learning models to predict adoption intention in e-marketplaces for startups. This study aims to develop machine learning-based prediction models for StartSmart an e-marketplace linking startups and investors and identify the most influential factors affecting adoption intention based on the UTAUT framework. Data from 542 respondents were analyzed using six machine learning techniques: Decision Trees (DT), Random Forests (RF), Gradient Boosting (GRB), XGBoost (XGB), K-Nearest Neighbors (KNN), and Support Vector Machines (SVM).Results indicate that DT achieved the highest accuracy (0.93) and precision (0.94), while RF obtained the highest AUC-ROC score (0.98). Analysis of feature importance revealed that PE and EE were the most significant predictors of adoption, followed by TR and GS. These findings provide valuable insights for platform developers to prioritize usability and performance improvements, and for policymakers to strengthen trust and government support. The study also highlights the potential of combining UTAUT with machine learning to enhance predictive accuracy in digital adoption research.