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Next Cohort: May 8-Jul 24
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Duration
11 weeks
Tuition
$279
Live Online
May 8-Jul 24
Commitment
Part-Time
Delivery
Live Online
Year Founded
1967
Scholarships
no
JavaScript is a very powerful yet easy-to-learn programming language that allows you to add interactivity, functionality and more to static HTML pages. Our JavaScript Fundamentals course explores the essential concepts behind modern programming languages and helps you get comfortable reading, writing and using JavaScript. Learn to write basic programs that interact with various elements of a web page while also studying good programming style, debugging and best practices.
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Next Cohort: May 8-Jul 24
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Student Reviews (13)
Amazing college
Priyanka Mehta
Etobicoke • September 17, 2024Graduated From
Machine Learning 1
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Superb
Superb
My experience at George Brown College
Anonymous
Toronto • September 17, 2024Graduated From
Information Systems Business Analysis Program
Overall:
Instructors:
Curriculum:
Job Assistance:
I enrolled in the Analytics for Business Decision Making course at George Brown College in 2021, hoping to gain the skills necessary to thrive in the rapidly growing field of data analytics. While the course provided a foundational understanding of dat...
I enrolled in the Analytics for Business Decision Making course at George Brown College in 2021, hoping to gain the skills necessary to thrive in the rapidly growing field of data analytics. While the course provided a foundational understanding of data analysis and business decision-making, I found the content to be somewhat lacking in depth and relevance to the current job market.
The course covered basic concepts in data analytics, including data processing, statistical analysis, and data visualization. It also introduced tools like Excel and SQL, which are essential for any data analyst. However, the curriculum felt outdated and did not delve deeply into more advanced and industry-relevant tools and techniques such as Python, R, or machine learning algorithms, which are highly sought after by employers today.
While there were some hands-on projects, they were often simplistic and did not simulate real-world business problems effectively. The lack of exposure to complex, real-life datasets and scenarios meant that the practical skills gained were not useful at all.