Machine Learning Masterclass

Short course

Online

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£ 10 VAT inc.

Description

  • Type

    Short course

  • Methodology

    Online

  • Start date

    Different dates available

"Master the skills you need to propel your career forward in machine learning. Equip yourself with the essential knowledge and skillset that make you a confident machine learning engineer and take your career to the next level. This comprehensive course is designed to help you reach your professional goals.

The skills and knowledge that you will gain through studying this machine learning masterclass course will help you get one step closer to your professional aspirations and develop your skills for a rewarding career.

This comprehensive course will teach you the theory of effective machine learning practice and equip you with the essential skills, confidence and competence to assist you in the machine learning industry. You’ll gain a solid understanding of the core competencies required to drive a successful career in machine learning.

Learn from expert tutors with industry experience, teaching you the latest expertise and best practice. This extensive course is designed for machine learning professionals who are aspiring to specialise in machine learning. Earn industry-recognised credentials to demonstrate your new skills and add extra value to your CV.

Enrol today and take the next step towards your personal and professional goals."

Facilities

Location

Start date

Online

Start date

Different dates availableEnrolment now open

About this course

CPD & IPHM Certified - MCQ Exam & Tutor Support

This course is suitable for all skill levels and backgrounds. Whether you want to advance your career prospects, learn a new skill, or broaden your educational horizons this course will help you to gain a solid understanding of the core competencies required to drive a successful career in your chosen industry.

"Academic
The course is open to students of all academic backgrounds aiming to enhance their skills.

Age
At Study Plex, we invite everyone to learn. This course is open to anyone aged 16 and over.

Eligibility
If you have a basic grasp of English, numeracy and ICT, you will be eligible to enrol."

"CPD and IPHM Accredited Certificate of Achievement
Grow your career by earning CPD and IPHM accredited certificate of achievement and add extra value to your CV. On successful completion of this course, you will be eligible to order your CPD and IPHM accredited certificate of achievement (dual certificate) to demonstrate your new skills. You can also share this certificate with prospective employers and your professional network. The CPD and IPHM accredited certificate of achievement (dual certificate) can be obtained in PDF format at the nominal fee of £12; there is an additional fee to get a printed copy certificate which is £39.

Endorsed Certificate from Quality Licence Scheme
On successful completion of the course assessment, you will be eligible to order the Endorsed Certificate by Quality Licence Scheme. The Quality Licence Scheme is a brand of the Skills and Education Group, a leading national awarding organisation for providing high-quality vocational qualifications across a wide range of industries. This will provide you with a competitive edge in your career add extra value to your CV. You can also share this certificate with prospective employers and your professional network which will help you to drive a successful career in your chosen industry. There is a Quality Licence Scheme endorsement fee to obtain an endorsed certificate which is £85."

Our customer support team will contact you within 48hrs.

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Reviews

This centre's achievements

2021

All courses are up to date

The average rating is higher than 3.7

More than 50 reviews in the last 12 months

This centre has featured on Emagister for 4 years

Subjects

  • Industry

Course programme

"Welcome to the course Introduction Setting up R Studio and R crash course Installing R and R studio Basics of R and R studio Packages in R Inputting data part 1: Inbuilt datasets of R Inputting data part 2: Manual data entry Inputting data part 3: Importing from CSV or Text files Creating Barplots in R Creating Histograms in R Basics of Statistics Types of Data Types of Statistics Describing the data graphically Measures of Centers Measures of Dispersion Introduction to Machine Learning Introduction to Machine Learning Building a Machine Learning Model Data Preprocessing for Regression Analysis Gathering Business Knowledge Data Exploration The Data and the Data Dictionary Importing the dataset into R Univariate Analysis and EDD EDD in R Outlier Treatment Outlier Treatment in R Missing Value imputation Missing Value imputation in R Seasonality in Data Bi-variate Analysis and Variable Transformation Variable transformation in R Non Usable Variables Dummy variable creation: Handling qualitative data Dummy variable creation in R Correlation Matrix and cause-effect relationship Correlation Matrix in R Linear Regression Model The problem statement Basic equations and Ordinary Least Squared (OLS) method Assessing Accuracy of predicted coefficients Assessing Model Accuracy – RSE and R squared Simple Linear Regression in R Multiple Linear Regression The F – statistic Interpreting result for categorical Variable Multiple Linear Regression in R Test-Train split Bias Variance trade-off Test-Train Split in R Regression models other than OLS Linear models other than OLS Subset Selection techniques Subset selection in R Shrinkage methods – Ridge Regression and The Lasso Ridge regression and Lasso in R Classification Models: Data Preparation The Data and the Data Dictionary Importing the dataset into R EDD in R Outlier Treatment in R Missing Value imputation in R Variable transformation in R Dummy variable creation in R The Three classification models Three Classifiers and the problem statement Why can’t we use Linear Regression? Logistic Regression Logistic Regression Training a Simple Logistic model in R Results of Simple Logistic Regression Logistic with multiple predictors Training multiple predictor Logistic model in R Confusion Matrix Evaluating Model performance Predicting probabilities, assigning classes and making Confusion Matrix in R Linear Discriminant Analysis Linear Discriminant Analysis Linear Discriminant Analysis in R K-Nearest Neighbors Test-Train Split Test-Train Split in R K-Nearest Neighbors classifier K-Nearest Neighbors in R Comparing results from 3 models Understanding the results of classification models Summary of the three models Simple Decision Trees Basics of Decision Trees Understanding a Regression Tree The stopping criteria for controlling tree growth The Data set for this part Importing the Data set into R Splitting Data into Test and Train Set in R Building a Regression Tree in R Pruning a tree Pruning a Tree in R Simple Classification Tree Classification Trees The Data set for Classification problem Building a classification Tree in R Advantages and Disadvantages of Decision Trees Ensemble technique 1 - Bagging Bagging Bagging in R Ensemble technique 2 - Random Forest Random Forest technique Random Forest in R Ensemble technique 3 - GBM, AdaBoost and XGBoost Boosting techniques Gradient Boosting in R AdaBoosting in R XGBoosting in R Maximum Margin Classifier Content flow The Concept of a Hyperplane Maximum Margin Classifier Limitations of Maximum Margin Classifier Support Vector Classifier Support Vector classifiers Limitations of Support Vector Classifiers Support Vector Machines Kernel Based Support Vector Machines Creating Support Vector Machine Model in R The Data set for the Classification problem Importing Data into R Test-Train Split Classification SVM model using Linear Kernel Hyperparameter Tuning for Linear Kernel Polynomial Kernel with Hyperparameter Tuning Radial Kernel with Hyperparameter Tuning The Data set for the Regression problem SVM based Regression Model in R"

Machine Learning Masterclass

£ 10 VAT inc.