Inscrire

À propos

À propos

Faculté

Admissions

Pôle savoir

Machine Learning

Master industry-standard tools and techniques such as Search Engine Optimization (SEO), Social Media Marketing, Google Ads, Conversion Optimization, Google Analytics, digital content marketing, marketing automation, and front-end web development.

Skills gained : Modular thinking, Programming basics,
Algorithimic thinking, Problem solving, Debugging

Home >

>

Programmer Analyst LEA.CK Profile: Web App Development

Duration
36 hours
Schedule : Mon - Wed - Thu
6 PM - 9 PM

Skills gained
Modular thinking,
Programming basics, Algorithimic thinking,
Problem solving
Debugging

Tools
Java, ASP,
Microsoft .Net, SQL server
Object Oriented
Programming, ORM,


Pricing
Course Fee ; 2500
Bundle price available
Request Corporate
vouchers

Aperçu du programme

The Machine Learning Course is a comprehensive and practical introduction to the field of machine learning. Designed for both beginners and those with some prior experience, this course covers the key concepts, algorithms, and techniques used in machine learning. Through a combination of theoretical learning, hands-on coding exercises, and real-world projects, participants will gain a deep understanding of machine learning and its applications.

Enroll

Start Date

Duration

Tuition Fee

36 hrs

CAD 2500

14 June 2025

Key Benefits

Official Accredited
Curicullum
Our curriculum is kept up to date with the latest official Certification syllabus and making you getting ready to take the exam.

Get trained by
Industry experts

Our courses are delivered by professionals with years of experience
in the industry.

24/7
Labs
Our students have access to their labs and course materials at any hour of the day to maximize their learning potential and guarantee success.

Certification
Vouchers
Upto 50 percent discount voucher will be provided.

Tax
Credits
Claim up to 25% of tuition fees and education tax credit from your taxes.

Course Outline

Introduction to Machine Learning

This module initiates the understanding of machine learning, emphasizing its significance in problem-solving and technology. It delves into the distinctions among supervised, unsupervised, and reinforcement learning paradigms. Additionally, it showcases machine learning's versatile applications across diverse industries, providing a comprehensive outlook on its real-world implementations.

SKILLS GAINED

…………………………………………………………………………………………………………………………………………………………

Data Preprocessing and Exploration

Supervised Learning Algorithms

Unsupervised Learning Algorithms

Model Evaluation and Validation

This module focuses on model evaluation and validation techniques in machine learning. It covers methods like cross-validation, train-test splits, performance metrics (accuracy, precision, recall, F1-score), and learning curves. It aims to assess model performance, reliability, and generalizability, ensuring robustness and accuracy in predictive models.

SKILLS GAINED

…………………………………………………………………………………………………………………………………………………………

Neural Networks and Deep Learning

This module delves into neural networks and deep learning, exploring multi-layered networks capable of learning complex patterns. It covers artificial neural networks, deep learning architectures (CNNs, RNNs), activation functions, optimization techniques (SGD, Adam), and frameworks like TensorFlow or PyTorch. Deep learning enables modeling intricate data structures, making it integral in various fields for tasks like image recognition, natural language processing, and more.

SKILLS GAINED

…………………………………………………………………………………………………………………………………………………………

Computer Vision

This module centers on computer vision, encompassing techniques to enable computers to interpret and understand visual information from images or videos. It covers image processing, feature extraction, object detection, segmentation, and recognition using methods like CNNs (Convolutional Neural Networks) and frameworks such as OpenCV. Computer vision finds applications in fields like autonomous vehicles, healthcare imaging, security, and augmented reality.

SKILLS GAINED

…………………………………………………………………………………………………………………………………………………………

Model Deployment and Ethics

This module focuses on the deployment of machine learning models into real-world applications and the ethical considerations surrounding their usage. It covers techniques for deploying models in production environments, ensuring scalability, efficiency, and reliability. Additionally, it delves into ethical considerations, addressing issues like bias, fairness, transparency, and privacy, fostering responsible and ethical AI implementations.

SKILLS GAINED

…………………………………………………………………………………………………………………………………………………………

Advanced Topics and Future Trends

This module explores advanced topics and future trends in the realm of machine learning and artificial intelligence. It may cover cutting-edge techniques like generative adversarial networks (GANs), transfer learning, reinforcement learning advancements, and emerging trends in AI research. Additionally, it might delve into topics such as AI ethics, explainable AI, and the integration of AI with emerging technologies, providing insights into the evolving landscape of machine learning and its potential future directions.

SKILLS GAINED

…………………………………………………………………………………………………………………………………………………………

Skills gained

Algorithimic
Thinking

Programming
basics

Modular
Thinking

Problem
Solving

Debugging

Qui peut postuler

L'éducation pratique en TI est le pont entre votre diplôme et votre carrière.

Eligibility Criteria

Learners need to possess an undergraduate degree or a high school diploma. No need of any professional experience is required as this is the fundamental course.

Prerequisites

Knowledge on Front End Technologies, SQL Programming is required to enroll in this course.

Upcoming sessions & Schedule

Enroll

Summer Session

17 June 2025

Register before

30th May 2025

Enroll

Fall Session

17 October 2025

Register before

30th May 2025

Enroll

Winter Session

12 February 2026

Register before

30th May 2025

Contactez-nous

Enroll for this
Certification

20th June
Start Date


CAD 2500/-
Stand alone Certification

Enroll

Get Bundle
pricing

Get Bundle

SQL + BI + Python Programming




6000 CAD
Bundle price for three

Contactez-nous

Questions Fréquemment Posées

FAQs

About the Instructor?

Is there any Voucher to take the Official certification?

I need help in choosing the correct courses for my job role. Can you assist?

When do I get the MCIT Certificate?

Upon completion of the certification course classes you will be provided with an MCIT certificate.

Collège de technologie de l'information de Montréal

Collège des technologies de l’information de Montréal

200-1255 Robert-Bourassa Blvd.

Montreal, Quebec H3B 3B2

+1 514 405 6874

info@montrealcollege.ca