Tajudeen Akinosho

TAJUDEEN AKANBI AKINOSHO is a current MSc. student in Computing at the University of South Africa (UNISA). He holds an Honors degree in Computing at UNISA and also a BSc honors in Computer Science at the Federal University of Agriculture, Abeokuta (FUNAAB) Nigeria. He holds a Higher National Degree in Statistics from Yaba College of Technology, Lagos. His research interest includes Data Engineering, Data Science, Machine Learning, Big Data, and High-Performance Computing with focus on Quantum Computing.

Accepted Talks:

Introduction to Data Stream using River

Data are continuously generated from diverse areas such data from new paradigms such as network devices, cloud computing, wireless and intelligent systems for communications, wireless sensor network (WSN), financial transactions, environmental monitoring, radio frequency identification (RFID), telecommunication, military surveillance, weather monitoring, Healthcare and medical diagnoses monitoring, electricity usage prediction, and real-time surveillance. In the streaming setting, data is unceasing, potentially unbounded, and continuously evolving with time. A tool that can be used as an extension on the Massive Online Analysis (MOA) framework is River, a Python library. This talk will introduce listeners how to use River to do machine learning on streaming data. River library supports different machine learning tasks, including regression, classification, and unsupervised learning. It also supports tasks such as computing online metrics and concept drift detection. River can be used to build a machine learning pipeline and evaluate the model’s performance on a streaming dataset.


Python Software Foundation
Thinkst Canary Afrolabs