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Profile Details
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★★★★★
☆☆☆☆☆
USD 20 /hr
Hire Dr. Michael F.
Nigeria
USD 20 /hr

Freelance Data Scientist & Expert in Machine Learning, Deep Learning & Computer Visision using Python.

Profile Summary
Subject Matter Expertise
Services
Writing Technical Writing
Research Market Research, User Research, Meta-Research, Fact Checking, Gap Analysis, Gray Literature Search, Systematic Literature Review, Secondary Data Collection
Consulting Digital Strategy Consulting, Scientific and Technical Consulting
Data & AI Predictive Modeling, Statistical Analysis, Algorithm Design-Non ML, Data Visualization, Big Data Analytics, Data Processing, Data Insights
Product Development Product Validation, Prototyping
Work Experience

Lectuter

Redeemer's University, Ede, Nigeria

January 2020 - Present

Lectuter

Adeleke University, Ede, Nigeria

November 2016 - January 2020

lecturer

Oduduwa University, Ipetumodu. Nigeria

November 2013 - October 2016

Education

Doctor of Philosophy (Computer Science)

Obafemi Awolowo University Ile-Ife

July 2014 - August 2018

Masters of Science (Computer Science)

Obafemi Awolowo University Ile-Ife

April 2011 - May 2013

Certifications
Publications
JOURNAL ARTICLE
Michael Adebisi Fayemiwo, Toluwase Ayobami Olowookere, Samson Afolabi Arekete, Adewale Opeoluwa Ogunde, Mba Obasi Odim, Bosede Oyenike Oguntunde, Oluwabunmi Omobolanle Olaniyan, Theresa Omolayo Ojewumi, Idowu Sunday Oyetade, Ademola Adegoke Aremu, et al.(2021). Modeling a deep transfer learning framework for the classification of COVID-19 radiology dataset . PeerJ Computer Science. 7. p. e614. {PeerJ}