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Peter Fan
Software Engineer at Dendi
Peter Fan is a seasoned professional with a rich background in data engineering and software development for large biological datasets. He graduated from the University of North Carolina at Chapel Hill with a Bachelor of Science in Biology and a minor in Computer Science. Peter further pursued his academic interests by studying Life Sciences at the National University of Singapore and completing his high school education at the prestigious North Carolina School of Science and Mathematics.
Continuing his academic journey, Peter obtained a Master of Science in Computer Science from the Georgia Institute of Technology. With a passion for technology and biology, Peter has applied his skills in various roles across different organizations, demonstrating a versatile and dynamic approach to his career.
Throughout his professional career, Peter has served in key roles such as a Software Engineer at Dendi, a Data Engineer at CAMP4 Therapeutics, and a Next Generation Sequencing Data Pipeline Engineer at Biogen. Additionally, he has contributed significantly as an Associate Computational Biologist at Broad Institute, showcasing his expertise in cross-disciplinary fields.
Peter's early experiences include roles such as a Research Assistant in Computer Science at the University of North Carolina at Chapel Hill, a Computational Chemistry/Cheminformatics Intern at GlaxoSmithKline, a Web Developer Intern at the Center for Open Science, and various internships in research labs focusing on synthetic biology, pharmacology, and computational biology at renowned institutions like Duke University and UNC Chapel Hill School of Medicine.
Driven by a quest for continuous improvement, Peter Fan actively seeks opportunities to enhance his software and data engineering skills. His academic achievements, coupled with his hands-on experience in both wet-lab research and software development, make him a valuable asset in the realms of data engineering and software development for large-scale biological datasets.