Reiven M. Bernardino
StudentBSIT Student Specializing in Business Analytics
San Jose, Nueva Ecija · FEU Institute of Technology
Personal Information
Short Biography
Hey, I'm Reiven M. Bernardino, a third-year BSITBA student at FEU Tech. Fascinated by the synergy of technology and business, I'm on a journey to explore new possibilities and contribute to the evolving digital sphere. Eager to engage in collaborative ventures, I bring a passion for innovation and a commitment to creating a positive impact.
🛠️ Skills
Graphics Design (Canva, Adobe Illustrator, Adobe Photoshop)
Beginner (57%)
Database Management
Beginner (58%)
Critical Thinking Skills
Competent (64%)
Adaptability
Advanced (72%)
Communication
Advanced (77%)
🎓 Educational Qualification
Tertiary · Aug 2022 - Present
Bachelor of Science in Information Technology
Specialization in Business Analytics · FEU Institute of Technology - FEU Tech
Secondary · Jun 2016 - May 2022
St. Joseph School - San Jose City, Nueva Ecija
Primary · Jun 2013 - Apr 2016
St. Joseph School - San Jose City, Nueva Ecija
Primary · Jun 2009 - Mar 2013
Bethany Christian Academy - San Jose City, Nueva Ecija
📜 Licenses and Certifications
SMART Technopreneurship 101
Issued by Technical Education and Skills Development Authority on May 05, 2023
View Credential👨🏻🏫 Seminars and Trainings
Model Training, Prediction, Formalization and Monitoring
Awarded by Google on May 05, 2023
Exploratory Data Analysis and Data Engineering
Awarded by Google on May 04, 2023
Cloud OnBoard: From Data to AI with BigQuery and Vertex AI
Awarded by Google on May 04, 2023
👥 Organizations and Memberships
DEVCON Philippines
Member · May 01, 2023 - Present
FIT iTamaraws Esports Club
Member · September 22, 2022 - July 17, 2023
Research Publications
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Conference Paper · 10.1109/ICTKE67052.2025.11274437
Predicting Farmers Adoption Intention of E-Commerce for Organic Produce using Machine Learning Approaches2025 23rd International Conference on ICT and Knowledge Engineering (ICT&KE), (2025), pp. 1-6
Despite the potential for e-commerce to boost productivity and market access for farmers, adoption remains low, particularly in rural areas of developing countries. This study addresses the research gap by predicting farmers' adoption of digital platforms in the National Capital Region, Philippines, using the Theory of Planned Behavior (TPB) and the Technology Acceptance Model (TAM). Based on a survey of 615 farmers and analysis with various machine learning models, with XGBoost as the top performer, the study found that perceived usefulness, trust, and price value are the most significant factors influencing adoption. Social influence and ease of use also play important roles. The findings provide guidance for policymakers and platform developers, highlighting the need to improve digital literacy, build trust, and ensure affordability to accelerate the digital transformation of the agricultural sector.