He has held multiple leadership roles, including as a Research Study Leader for Project [Geo+Met]SLOPE and Extension Project Leader for Weather and Atmospheric Information Services (Project WAIS). His teaching tenure at Visayas State University from 2016 to 2024 highlights his commitment to education, with a strong focus on meteorology and physical sciences.
An active participant in international meteorological training and conventions, he has presented research on critical topics, such as tropical cyclone impacts and landslide-associated rainfall events, at forums including the Japan Geoscience Union Meeting and the Philippine Meteorological Society Annual Conventions. His work underscores a commitment to advancing meteorological science for societal and environmental benefit.
Skilled in Python programming, leveraging it for data analysis, visualization, and workflow automation in meteorological and environmental projects. With expertise in using Python’s data science libraries, he creates scripts that streamline data processing and enhance GIS and geospatial analysis workflows, enabling precise assessments of environmental conditions. His proficiency in Python strengthens his capacity for effective data-driven insights, applying his coding skills to complex research and public service initiatives.
Experience: 2 - 5 years
Experience: 2 - 5 years
Experienced in GIS, specializing in spatial data analysis and visualization within meteorological and environmental research using GIS platforms. Proficient in QGIS, he has applied GIS techniques in projects like [Geo+Met]SLOPE, where he managed data collection and analysis focused on environmental stability. His skills in GIS include project leadership and public service, supported by programming expertise that enables automated data visualization and geospatial workflows for precise analysis.
“I have one of the best VAs I've had in a long time...she's been amazing”
Davonna Willis
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