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Machine Learning Course in Canada

Extensive Program with 10 Courses View all
200+ Hours of Interactive Learning
6+ Projects and 40+ Assignments
The capstone project will provide you with a business case. You will need to solve this by applying all the skills you’ve learned in the courses of the master’s program.
Discover your full potential by attending the Machine Learning course in Canada. In this ML course, you will be taught various techniques and concepts of Machine Learning Using NLP, Python, Deep learning, and PySpark. This Machine learning course in Canada includes random forests, supervised and unsupervised learning, statistics, machine-learning algorithms, and more. Edureka's Machine learning Course in Canada offers Capstone projects, Real-time case studies, and 200+ interactive education with lifetime access for those who wish to become Machine Learning engineers.
As per Indeed.com, the average salary for a Machine Learning Engineer is $136,047 per year in United States.

You Will Learn

Python, Statistics, Data Preparation, Machine Learning, Natural Language Processing, Deep Learning, ChatGPT, Reinforcement Learning, Sequence Learning, Image Processing, Computer Vision, Spark MLlib, Data Visualization and many more skills.

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Machine Learning Course in Canada Review

Our Masters Course Alumni work for amazing companies

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I gained confidence to make a career leap to Data Science after this course

I had a wonderful learning experience with Edureka. Not only did I get exposed to Data Science, but I was also able to learn related technologies that helped me in my career. The course also gave me an edge over other candidates when I was looking for a job change and helped me ace my interviews. I am now planning to shift my career to Data Science and Edureka's course has given me the knowledge and confidence to make this career leap.

Machine Learning Course in Canada Syllabus

Python Statistics for Data Science Course

SELF PACED

The Python Statistics for Data Science course is designed to provide learners with a comprehensive understanding of how to perform statistical analysis and make data-driven decisions. Through a series of interactive lessons and hands-on exercises, you will learn how to conduct hypothesis testing, perform regression analysis, and many more. This course is ideal for anyone looking to enhance their data science skills and gain a deeper understanding of statistics. This course will provide you with the knowledge you need to succeed in the rapidly growing field of data science.

  • WEEK 3-4
  • 6 Modules
  • 12 Hours
  • 6 Skills
Watch Course Recording
Python Statistics for Data Science Course
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Python Programming Certification Course

LIVE CLASS

The Edureka Python Training Course online is designed to help you master Python programming. It covers sequences and file operations, conditional statements, functions, loops, OOPs, modules, handling exceptions, libraries like NumPy, Pandas, and Matplotlib, GUI programming, web maps, and data operations. This course prepares you for PCEP, PCAP, and PCPP Professional Certification Exams, enabling you to kick-start your career as a certified programmer.

  • WEEK 4-5
  • 11 Modules
  • 30 Hours
  • 11 Skills
Watch Course Recording
Python Programming Certification Course
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Data Science with Python Certification Course

LIVE CLASS

Edureka's Data Science with Python Certification Course is accredited by NASSCOM. It will help you master important Python programming concepts such as data operations, file operations, object-oriented programming, and various Python libraries such as Pandas, Numpy, and Matplotlib essential for Data Science. This course is well-suited for professionals and beginners. This training will introduce you to different types of Machine Learning, Recommendation Systems, and other relevant concepts to kickstart your Data Science career.

  • WEEK 6-7
  • 12 Modules
  • 36 Hours
  • 12 Skills
Watch Course Recording
Data Science with Python Certification Course
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Artificial Intelligence Certification Course

LIVE CLASS

Edureka's advanced AI training course is designed by industry experts to help you prepare AI Engineer, Data Scientist, NLP Engineer, etc. The objective of this Artificial Intelligence training course is to help learners improve their Computer Vision, Text Processing skills, etc. AI certification course will help you understand various concepts like OS Module, Setting the NLTK Environment, POS Tagging, etc.

  • WEEK 8-9
  • 18 Modules
  • 42 Hours
  • 18 Skills
Watch Course Recording
Artificial Intelligence Certification Course
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ChatGPT Training Course: Beginners to Advanced

LIVE CLASS

Edureka’s ChatGPT Course will help you effectively interact with the biggest revelation in the ChatGPT. You will be able to upgrade your prompt engineering skills by integrating ChatGPT plugins and ChatGPT APIs to enhance your efficiency. Unlock your potential by crafting your very own chatbot, harnessing the knowledge gained from real-life applications and projects covered in this course, and taking a sneak peek into the future with GPT-4 and ChatGPT Plus.

  • WEEK 3-4
  • 9 Modules
  • 18 Hours
  • 9 Skills
Watch Course Recording
ChatGPT Training Course: Beginners to Advanced
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PySpark Certification Training Course

LIVE CLASS

Edureka's PySpark certification training is curated by top industry experts to help you master the skills required to become a successful PySpark developer. This certification course covers Apache Spark, Machine Learning, Spark RDD, Spark SQL, Spark MLlib, Spark Streaming, HDFS, Flume, Spark GraphX, and Kafka for building data-intensive applications.Our online training is instructor-led and enables you to master key PySpark hands-on demonstrations.

  • WEEK 6-7
  • 12 Modules
  • 36 Hours
  • 13 Skills
Watch Course Recording
PySpark Certification Training Course
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Free Elective Courses along with learning path

VIEW FREE COURSES
Self Paced

Python Scripting Certification Training

VIEW CURRICULUM
Self Paced

Reinforcement Learning

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Self Paced

Graphical Models Certification Training

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Self Paced

Sequence Learning Certification Training

VIEW CURRICULUM

Machine Learning Course in Canada Fees

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1,939 3,861
Your total savings: 1,922
No Cost EMI Available, Starting from 216/mo.
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To make this a No Cost EMI offer
The interest amount will be discounted from the price of your order. You will be charged for the item price minus the discounted interest.
See Course Bundle
  • Python Statistics for Data Science Course
    159
  • Python Programming Certification Course
    459
  • Data Science with Python Certification Course
    779
  • Artificial Intelligence Certification Course
    649
  • ChatGPT Training Course: Beginners to Advanced
    579
  • PySpark Certification Training Course
    579
+4 Free Elective Courses 657

Financing Options

Financing options available without any credit/debit card. The interest amount will be discounted from the price of the course and will be borne by Edureka. You will be charged the course price minus the interest.

Click on View More to avail. Conditions Apply.

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Capstone Project

AI and Machine Learning Engineer Master Capstone Project

The objective of this project is to automatically recognize human actions based on analysis of the body landmarks from pose estimation. 

Machine Learning Certification in Canada

Edureka’s Certificate Holders work at companies like :

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certificate
John Doe
Machine Learning Engineer
Python Statistics for Data Science Course Python Programming Certification Course Data Science with Python Certification Course Artificial Intelligence Certification Course ChatGPT Training Course: Beginners to Advanced PySpark Certification Training Course AI and Machine Learning Engineer Master Capstone Project
XYZ1234 31st Jul 2024
The Certificate ID can be verified at www.edureka.co/verify
to check the authenticity of this certificate

Machine Learning Course in Canada Features

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As per your convenience

Weekday or weekend; morning or evening. Multiple options for everyone.

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Never miss a class

You can always switch to another batch, depending upon your availability.

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24x7 Support

Resolved All Your Doubts Instantly, get One-On-One Learning Assistance Round The Clock.

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Lifetime Access

You'll have the keys to all our presentations, quizzes, installation guides. All for a lifetime!

Machine Learning Job Outlook

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12 million Career Opportunities estimated for experienced Machine Learning Engineers in the IT industry across the globe.

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Salary Trend The average salary for a Machine Learning Engineer is $136,047 per year.

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22.00% Annual Growth in job opportunities for Machine Learning Engineers by 2023, worldwide.

    Top Industries
  • Information Technology
  • Finance
  • Retail
  • Manufacturing
  • E-commerce
  • Media & Entertainment
  • Healthcare
    Job Titles include
  • Machine Learning Engineer
  • Data Scientist
  • Artificial Intelligence (AI) Research Scientist
  • Computer Vision Engineer
  • Natural Language Processing (NLP) Engineer
  • Deep Learning Engineer

Machine Learning Course in Canada FAQ

Artificial Intelligence (AI) refers to the development of computer systems that can perform tasks that would typically require human intelligence to complete. These tasks may include recognizing speech, making decisions, understanding natural language, recognizing images or patterns, and playing games, among others. AI involves the use of algorithms, statistical models, and computational techniques to enable machines to learn from experience, identify patterns and insights, and make decisions. AI systems may be designed to work autonomously, or they may be designed to work alongside humans to augment their capabilities and enhance their decision-making abilities. There are several subfields of AI, including machine learning, natural language processing, computer vision, robotics, and expert systems. AI has numerous applications across various industries, including healthcare, finance, transportation, and entertainment
Machine Learning (ML) is a subfield of Artificial Intelligence (AI) that involves the development of algorithms and statistical models that enable computer systems to learn from and make decisions based on data without being explicitly programmed. The goal of ML is to enable machines to learn from experience and improve their performance on a given task over time. ML algorithms can be trained on large datasets of examples, allowing them to identify patterns, relationships, and insights that may not be immediately apparent to human analysts. There are several types of ML algorithms, including supervised learning, unsupervised learning, and reinforcement learning. Supervised learning involves training a model on labeled data, where the correct output is known for each input. Unsupervised learning involves training a model on unlabeled data, where the algorithm must identify patterns and structures on its own. Reinforcement learning involves training a model to make decisions based on a reward system, where the algorithm learns through trial and error. ML has numerous applications across various industries, including natural language processing, computer vision, speech recognition, recommendation systems, fraud detection, and predictive maintenance, among others.

A Machine Learning Engineer is a professional who designs, develops, and maintains machine learning (ML) systems and applications. Machine learning engineers have a strong background in computer science, mathematics, and statistics and possess the technical skills needed to develop and deploy ML models.

Their primary responsibility is to build and deploy machine learning models that can learn from and make predictions on large datasets. They work with data scientists, software engineers, and other professionals to develop end-to-end ML systems that can be integrated into applications and workflows. This may involve selecting the appropriate algorithms, fine-tuning models, and deploying them in a production environment.

Machine Learning Engineers also have to keep up with the latest developments in ML and AI technologies, research and experiment with new algorithms and techniques, and continuously optimize and improve their ML models to achieve better performance.

AI and Machine Learning Course in Canada is a structured learning path recommended by leading industry experts and ensures that you transform into a proficient Machine Learning Engineer. Being a full fledged Machine Learning Engineer requires you to master multiple technologies and this program aims at providing you an in-depth knowledge of the entire Machine Learning practices. Individual courses at Edureka focus on specialization in one or two specific skills, however, if you intend to become a master in AI and Machine Learning then this is your go to path to follow.

There are several reasons why someone may choose to become a machine learning engineer:


  1. High Demand: There is a high demand for Machine Learning Engineers in the current job market, with many companies looking to incorporate machine learning technologies into their business processes.
  2. Lucrative Salaries: Machine Learning Engineers are paid well, with some of the highest salaries in the tech industry.
  3. Advancement Opportunities: Machine Learning is a rapidly growing field, and there are plenty of opportunities for career advancement and professional development.
  4. Interesting Work: Machine Learning Engineers work on exciting projects that involve developing and implementing cutting-edge technologies, such as self-driving cars, intelligent virtual assistants, and predictive maintenance systems.
  5. Positive Impact: Machine Learning Engineers can make a significant impact on society by developing systems that can solve complex problems and improve people's lives.
  6. Cross-Disciplinary Skill Set: Machine Learning Engineers possess a cross-disciplinary skill set that includes computer science, mathematics, and statistics, which can be applied to a wide range of fields and industries.
AI and Machine Learning Course in Canada has been curated after thorough research and recommendations from industry experts. It will help you differentiate yourself with multi-platform fluency, and have real-world experience with the most important tools and platforms. Edureka will be by your side throughout the learning journey - We’re Ridiculously Committed.
Our commitment to equip you with a 360-degree understanding of AI and Machine Learning Courses in Canada means we cover a broad array of topics to ensure you become a proficient machine learning engineer. Topics covered but not limited to will be:Python, Statistics, Data Preparation, Machine Learning, Natural Language Processing, Deep Learning, Reinforcement Learning, Sequence Learning, Image Processing, Computer Vision, Spark MLlib, Data Visualization and many more skills.
There are no prerequisites for enrollment to this Masters Program. Whether you are an experienced professional working in the IT industry, or an aspirant planning to enter the world of Machine Learning, this masters program is designed and developed to accommodate various professional backgrounds.

The roles and responsibilities of machine learning engineers may vary depending on the organization, but some common tasks and responsibilities include:


  1. Data Collection and Preprocessing: Machine Learning Engineers collect and preprocess large datasets to prepare them for analysis and modeling.
  2. Model Selection and Design: They select appropriate models and design experiments to evaluate their performance.
  3. Model Training and Validation: Machine Learning Engineers train and validate models using various algorithms and techniques, such as supervised and unsupervised learning.
  4. Hyperparameter Tuning: They optimize models by tuning hyperparameters to achieve better performance.
  5. Deployment and Integration: Machine Learning Engineers deploy models in a production environment and integrate them into applications and workflows.
  6. Performance Monitoring: They monitor models in real-time to ensure that they are performing well and making accurate predictions.
  7. Algorithm Development: Machine Learning Engineers develop and implement new algorithms and techniques to improve model accuracy and performance.
  8. Collaborating with Other Teams: They collaborate with data scientists, software engineers, and other professionals to develop end-to-end ML systems.
  9. Staying Up-to-Date with the Latest Developments: Machine Learning Engineers keep up-to-date with the latest developments in ML and AI technologies, research and experiment with new algorithms and techniques, and continuously optimize and improve their ML models.

A certificate of completion for the AI and Machine Learning Course in Canada shall be awarded to you once you have completed the following courses:


  • Python Statistics for Data Science Course
  • Python Certification Training Course
  • Python Machine Learning Certification Training
  • Advanced Artificial Intelligence Course
  • ChatGPT Complete Course: Beginners to Advanced
  • PySpark Certification Training Course

To aid your learning journey, we have added the following elective courses in the LMS:


  • Python Scripting Certification Training
  • Reinforcement Learning
  • Graphical Models Certification Training
  • Sequence Learning

Completion of the above elective courses is not associated with Master's Program completion criteria.

The Machine Learning Engineer training course in Canada is for those who want to fast-track their AI and Machine Learning career. This AI and Machine Learning Masters Course will benefit the people working in the following roles:

  • Freshers
  • Data Science professionals
  • Machine Learning professional
  • AI professionals
  • Analytics professionals
  • Business Analysts
  • Software Developers
After completing an AI and machine learning course in Canada, you can explore various job opportunities in the field. Some common job roles include: Machine Learning Engineer, Data Scientist, Artificial Intelligence (AI) Research Scientist, Computer Vision Engineer, Natural Language Processing (NLP) Engineer, Deep Learning Engineer, and many more.

Several companies in Canada are actively hiring machine learning professionals. Some prominent companies in the field include:

  • Google Canada
  • Microsoft Canada
  • Amazon Canada
  • IBM Canada
  • Shopify
  • NVIDIA
  • RBC (Royal Bank of Canada)
  • TD Bank
  • Bell Canada
  • Telus
  • The salary of a machine learning professional in Canada can vary depending on factors such as experience, skills, industry, and location. On average, the salary range for machine learning roles in Canada is between CAD 70,000 to CAD 120,000 per year. However, salaries can be higher for senior-level positions or roles in larger organizations.
    The cost of a machine learning course in Canada is $1939.

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