Post-Graduate Diploma in Machine Learning and Artificial Intelligence
Technologies like Machine Learning (ML) and Artificial Intelligence (AI) will revolutionize businesses all over the world. Get deep insight into AI and ML to help your future employers to drive innovation and bolster their businesses by creating engaging customer interaction to drive loyalty and grow their revenue. We will teach you how to apply AI opportunities that are critical to the success of today’s organizations, and their customers, and grow their brand in the AI era.
Our training will help you to build a solid foundation to generate targeted measured solutions in terms of high-quality data for your future employers to enhance their human interaction and improve their bottom line.
There is an urgent need to address the skill shortages in various industries and deep learning on AI and ML from CCHS will make you super marketable in today’s new-age digital and data-driven business environment.
At the end of the program, you will have the theoretical and hands-on skills required to deliver in a real-time work environment. You will be ready to write, modify, integrate, and test computer codes for data analytics, data science, and data processing applications. You will find employment in any data-dependent department of an organization such as finance, marketing, engineering, project management, supply chain, healthcare systems, IT, and information technology consulting firms in the private, public, and not-for-profit sectors. During your academic cycle, you will practice various software programs besides Python, MATLAB, Mycroft, OpenCV, TensorFlow, Keras, Git, GitHub, and solidity.
What to expect:
Mode of Delivery
Instructor-led classroom training, Online, Hybrid
Duration
43 weeks / 900 Hours
Tuition
Local $17,820 / Intl $21,720 CAD
Certification
Diploma
Intake
Bi-monthly
Admission Requirements
- An Ontario college diploma / degree or equivalent; and
- Education or experience in one of the following: Statistics/SAS, Analytics, Mathematics, Physical Science, Programming, Data Mining, Big Data and Data Science.
- Meet other admission requirements set by the Superintendent of Private Career Colleges.
Program Curriculum:
- Statistics for Data Science & Python
- Robotics and Programming
- Computational Intelligence
- MATLAB and Simulink Applications in AI
- Natural Language Processing
- Computer Vision
- Deep Learning with TensorFlow and Keras
- Advanced Forecasting Methods Application inn Supply Chain and Finance
- Git and GitHub
- Solidity and Blockchain
- Leadership & Management Skills
- Capstone Project
To view the Bring Your Own Device Policy, please click here.
Job Market Potential
Median Income:
$83K+ per annum through salary or contract based on experience, organization, location and duties involved.
Possible Job Titles:
AI Developer, AI Architect, Machine Learning Engineer, Data Analyst, Data Scientist, Research Scientist
Fast Facts
Ontario’s labour market information can help you plan your career.
The time is now to take action on your future!
Contact us today.
learning model
machine learning model
computer system
perform tasks
deep learning
real world
computer vision
recommendation engine
speech recognition
computers learn
machine learning ml
machine learning algorithms
reinforcement learning
artificial intelligence and machine
intelligence and machine learning
autonomous vehicle
computer science
data scientists
human brain
driving cars
logistic regression
social media
learning works
human language
anomaly detection
artificial intelligence and machine learning < br/> average salary
ai systems
natural language processing
data sets
application of ai
unlabeled data
training data
algorithms learn
image recognition
unlabeled data
training data
algorithms learn
image recognition
data analysis
neural networks
business problems
customer services
fraud detection
machine learning and deep learning
arthur samuel
unsupervised learning
labeled data
supervised learning algorithms
supervised machine learning
machine learning works
subset of ai
data points
machine learning works
decision tree
patterns in data
admission requirements
unsupervised machine learning
trial and error