Machine Learning
Showing 217–228 of 233 results
Transfer Learning: Tailoring Neural Networks for Your Data
Transfer learning is one of the core concepts leveraged for building Generative AI applications. This course teaches the essentials of transfer learning as well as advanced strategies such as fine-tuning and feature extraction.
Troubleshooting and Improving Neural Network Performance
This course will teach you neural network troubleshooting and performance tuning from a data scientist's perspective.
UCx: Text Analytics 2: Visualizing Natural Language Processing
Extend your knowledge of the core techniques of computational linguistics by working through case-studies and visualizing their results.
UMontrealX: Deep Learning Essentials
Do you want to learn how machines can learn tasks we thought only human brains could perform? Then take this Deep Learning course developed by IVADO, Mila and Université de Montréal: an extensive overview of the essentials of deep learning, this ground-breaking technology already prevalent in our lives and spanning all sectors.
UMontrealX: Machine Learning Use Cases in Finance
In the last six years, the financial sector has seen an increase in the use of machine learning models in financial, banking and insurance contexts. Data science and advanced analytics teams in the financial and insurance community are implementing these models regularly and have found a place for them in their toolbox.
Understanding Algorithms for Reinforcement Learning
Reinforcement learning is a type of machine learning which allows decision makers to operate in an unknown environment. In the world of self-driving cars and exploring robots, RL is an important field of study for any student of machine learning.
Understanding Machine Learning
An introduction to machine learning with no coding involved.
Understanding Machine Learning with Python 3
Use your data to predict future events with the help of machine learning. This course will walk you through creating a machine learning prediction solution and will introduce Python, the scikit-learn library, and the Jupyter Notebook environment.
Unlocking Speech Recognition: Deep Learning in Acoustics
Explore the techniques of AI communication by developing speech-to-text models using TensorFlow and PyTorch. This course will teach you the essential techniques to build advanced speech-to-text models, turning spoken words into actionable commands.
Unsupervised Learning in Python
Learn how to cluster, transform, visualize, and extract insights from unlabeled datasets using scikit-learn and scipy.
Unsupervised Learning in R
This course provides an intro to clustering and dimensionality reduction in R from a machine learning perspective.
Using Neural Networks for Image and Voice Data Analysis
Neural networks can be configured in various ways depending on the type of data and objectives. This course will help you understand how to properly choose a neural network architecture for image or audio data.