The Utiva Machine Learning Program provides an intensive industry-aligned curriculum that equips you with the necessary skills to iterate and develop predictive models for process optimization. You will be introduced to core concepts of Machine Learning, including Distributed Computing, and Advanced Signal Processing.
A 2-month experiential learning and hands-on training session
11 Hours of online learning session on practice and principles
5 weekends physical training on design, practice and approaches
60 case questions as online assessment to measure performance
1 real-life business case from a a tech company as a learning focus
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Solidify your Python skills by completing coding challenges and importing and using core data science libraries relevant to machine learning.
Fundamentals of Bayes Nets, Gaussian Mixture Models, Hidden Markov Models. Using Statistics as a model evaluation metric.
Using Python to clean, prepare and scale your data to successfully train algorithms to make predictions and visualize results to make predictions and visualize results.
Build and run various types of models on real datasets to uncover patterns and make predictions.
Develop models with unsupervised learning techniques and relevant Python libraries such as Scikit-learn to make data-driven predictions.
Develop neural network models with relevant Python libraries to make strong machine learning models for real-world data sets.
The Utiva Career team works hard to help you transition to your dream jobs
As a graduate of our learning program, we give you access to our job dashboard which is an invite-only group for sharing the latest job opportunities from our hiring partners.
We host a monthly hangout with employers across 3 different cities in Nigeria; this event gives you the opportunity to meet different companies executives across different industries.
From CV prep and mock interviews to job matching and career advice – we’ll make sure you walk into your next job with confidence.