Overview:

Welcome to the "Machine Learning with Python Course"! This course is designed to provide a comprehensive introduction to machine learning using Python, one of the most popular programming languages for data science and machine learning. With the increasing demand for machine learning skills across various industries, this course will equip you with the knowledge and tools needed to build and deploy machine learning models using Python.
  • Interactive video lectures by industry experts
  • Instant e-certificate and hard copy dispatch by next working day
  • Fully online, interactive course with Professional voice-over
  • Developed by qualified first aid professionals
  • Self paced learning and laptop, tablet, smartphone friendly
  • 24/7 Learning Assistance
  • Discounts on bulk purchases

Main Course Features:

  • Thorough coverage of machine learning concepts, algorithms, and techniques
  • Hands-on projects and coding exercises to reinforce learning
  • Exploration of popular machine learning libraries such as scikit-learn and TensorFlow
  • Implementation of supervised and unsupervised learning algorithms for classification, regression, and clustering tasks
  • Guidance on data preprocessing, feature engineering, and model evaluation
  • Real-world case studies and examples to illustrate machine learning applications
  • Access to resources and tools for building, testing, and deploying machine learning models
  • Supportive online community for collaboration and assistance throughout the course

Who Should Take This Course:

  • Aspiring data scientists and machine learning enthusiasts looking to start their journey in machine learning with Python
  • Programmers and developers interested in expanding their skill set to include machine learning for data analysis and prediction
  • Students and professionals seeking to enhance their career prospects with machine learning expertise

Learning Outcomes:

  • Understand fundamental machine learning concepts and techniques
  • Implement machine learning algorithms and models using Python
  • Perform data preprocessing, feature engineering, and model evaluation
  • Develop predictive models for classification and regression tasks
  • Apply unsupervised learning algorithms for clustering and dimensionality reduction
  • Deploy machine learning models in real-world applications
  • Debug and optimize machine learning models for improved performance
  • Stay updated with the latest advancements and trends in machine learning with Python.

Certification

Once you’ve successfully completed your course, you will immediately be sent a digital certificate. Also, you can have your printed certificate delivered by post (shipping cost £3.99). All of our courses are fully accredited, providing you with up-to-date skills and knowledge and helping you to become more competent and effective in your chosen field. Our certifications have no expiry dates, although we do recommend that you renew them every 12 months.

Assessment

At the end of the Course, there will be an online assessment, which you will need to pass to complete the course. Answers are marked instantly and automatically, allowing you to know straight away whether you have passed. If you haven’t, there’s no limit on the number of times you can take the final exam. All this is included in the one-time fee you paid for the course itself.

  • Introduction to Course
  • What is Machine Learning
  • Life Cycle
  • Introduction to Numpy Library
  • Creating Arrays from Scratch
  • Creating Arrays from Scratch Continued
  • Array Indexing and Slicing
  • Numpy Array Functions and Shape Modification
  • Mathematical Operations on Numpy Arrays
  • Introduction to Pandas Library
  • Working with Pandas DataFrames
  • Slicing and Indexing with Pandas
  • Create DataFrame and Explore Dataset
  • Data Analysis with Pandas DataFrame
  • Other Useful Methods in Pandas Library
  • Introduction to Matplotlib
  • Customizing Line Plots
  • Create Plot Using DataFrame
  • Standard Scaler to Scale the Data
  • Encoding Categorical Data
  • Sklearn Pipeline and Column Transformer
  • Evaluation Metrics in Sklearn
  • Linear Regression
  • Evaluation of Linear Regression Model
  • Polynomial Regression
  • Polynomial Regression Continued
  • Sklearn Pipeline Polynomial Regression
  • Decision Tree Classifier
  • Decision Tree Evaluation
  • Random Forest
  • Support Vector Machines
  • K-means Clustering
  • KMeans Clustering – Hands On
  • Data Loading and Analysis
  • Dimensionality Reduction with PCA
  • Hyper Parameter Tuning
  • Summary

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