Step into the future of technology with our Data Mining, Machine Learning and Deep Learning course. In an age where data is the new oil, mastering these skills opens up a world of opportunities. As industries increasingly rely on data-driven insights, the demand for professionals skilled in supervised and unsupervised learning, as well as deep learning, is skyrocketing. This course equips you with the ability to extract meaningful patterns from vast datasets, drive innovation and create smarter solutions. Delivered online, it offers you the flexibility to learn at your own pace, ensuring you stay ahead in a competitive job market. Whether you’re looking to enhance your current role or switch to a new career, this course is your gateway to becoming a highly sought-after expert in a constantly evolving field. Join us to turn data into insights and shape the future.
Data mining, machine learning and deep learning (English)
Introduction
Objectives
- Understand the fundamental concepts of supervised learning techniques.
- Learn how to implement regression and classification models effectively.
- Explore unsupervised learning methods for data clustering.
- Understand the basics of neural networks in the context of deep learning.
- Develop skills to evaluate model performance accurately.
- Gain an understanding of advanced deep learning architectures.
- Apply machine learning solutions to real-world data problems.
Table of Contents
UNIT 1. SUPERVISED LEARNING (I)
1. Introduction
2. Simple, multiple and logistic linear regression (I)
3. Simple, multiple and logistic linear regression (II)
4. Support vector machines (SVM)
5. Decision trees
UNIT 2. SUPERVISED LEARNING (II)
1. KNN (k-nearest neighbours)
2. Naive Bayes
3. Evaluation of supervised models
4. Example exercise
5. Proposed exercise
UNIT 3. UNSUPERVISED LEARNING
1. Introduction to clustering: purconsider and metrics
2. K-means clustering
3. Hierarchical clustering, other techniques and examples
4. Principal component analysis (PCA)
5. PCA example exercise
UNIT 4. DEEP LEARNING
1. Artificial Neural Networks (ANN) (I)
2. Artificial Neural Networks (ANN) (II)
3. Artificial Neural Networks (ANN) (III)
4. Example exercise
5. Proposed exercise