Date |
Time | Title | Credit Hours / Category | Deadline to Apply | Term | Class | CourseType | Price (QAR) | Availability | |
---|---|---|---|---|---|---|---|---|---|---|
25 Aug - 29 Aug | 8:00AM - 11:00AM Sun-Thur |
Machine Learning & Predictive Analysis
Mastering data analysis and predictive techniques is crucial in the evolving landscape of
technology and analytics. This course is crafted to equip participants with the foundational skills
required for analyzing data and predicting outcomes using machine learning techniques. It aims
to clarify the complexities of algorithms and statistical methods that power informed decisionmaking and forecasting. The curriculum covers fundamental concepts such as types of machine
learning, model validation strategies, and data preparation techniques. The course structure
combines theoretical lectures with hands-on labs and team projects, enabling participants to not
only grasp the principles of predictive analytics but also apply these machine learning techniques
to real-world datasets.
TARGET AUDIENCE: This course is tailored for individuals from various sectors,
who require essential skills for effective data-driven decision-making across all industries.
Target Audience : This course is tailored for individuals from various sectors,who require essential skills for effective data-driven decision-making across all industries.
Classroom Learning |
11 Aug 2024 | 1247 | 1132 | CPEP | 1000 | Available |
Accredited by Qatar Council for Healthcare Practitioners – Accreditation Department (QCHP-AD), the College of the North Atlantic – Qatar is offering a number of Continuing Professional Development (CPD) activities for the healthcare professionals in the State of Qatar.
Customized training is also available to meet your organization’s time restrictions.
We deliver numerous activities not listed in this guide, and our team of instructional designers and facilitation experts will work with you to develop dynamic and flexible learning programs that respond to your healthcare training needs.
Date |
Time | Title | Credit Hours / Category | Deadline to Apply | Term | Class | CourseType | Price (QAR) | Availability |
---|