Machine Learning with Python

Duration: 5 Days • Classroom: Physical • HRDC: Claimable

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What you'll learn
  • Participants will gain an understanding of the basics of Flutter, including how to create layouts, handle user input, manage state, and connect to APIs.
  • Ability to create custom mobile apps.
  • Participants will have Hands-on experience to apply their newly acquired knowledge and skills in a real-world context.
Course description

This training course is designed to introduce participants to the fundamentals of machine learning and how to use Python to build machine learning models. Over the course of 5 days, participants will learn how to use popular machine learning libraries such as Scikit-learn and Tensorflow to create and evaluate machine learning models. The training will cover topics such as supervised and unsupervised learning, regression analysis, classification algorithms, and clustering techniques. Participants will also learn how to preprocess and clean data for machine learning, how to evaluate the performance of machine learning models, and how to optimize models for better accuracy. Throughout the course, participants will engage in hands-on exercises and projects to reinforce their understanding of machine learning concepts and their application to real-world problems. By the end of the training, participants will have a solid foundation in machine learning with Python and be able to apply this knowledge to real-world data problems. Overall, this training course will provide participants with the skills and knowledge needed to build and deploy machine learning models using Python, and to pursue further training and education in the field of machine learning.

Course content
  • Overview of machine learning and its applications
  • Introduction to Python for machine learning
  • Setting up a Python environment for machine learning
  • Linear regression
  • Classification algorithms (e.g. logistic regression, k-NN)
  • Decision trees
  • Clustering algorithms (e.g. k-means, hierarchical clustering)
  • Dimensionality reduction (e.g. principal component analysis)
  • Introduction to neural networks
  • Building neural networks with Tensorflow
  • Training and fine-tuning neural networks
  • Evaluating model accuracy
  • Hyperparameter tuning and optimization
  • Deploying models for real-world applications
This course includes:

English

5 Days

Physical Class

Certificate of Completion

HRDC Claimable

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