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Machine Learning Essentials With Scala

Length
3 days
Length
3 days
This provider usually responds within 48 hours 👍

Course description

Machine Learning Essentials With Scala

Machine Learning Essentials with Scala is an essentials-level, three-day hands-on course that teaches students core skills and concepts in modern ML practices. This course is geared for attendees new to machine learning who need introductory level coverage of these topics, rather than a deep dive of the math and statistics behind Machine Learning. Students will learn basic algorithms from scratch. For each machine learning concept, students will first learn about and discuss the foundations, its applicability and limitations, and then explore the implementation and use, reviewing and working with specific use cases.

Working in a hands-on learning environment, led by our Machine Learning expert instructor, students will learn about and explore:

  • Popular machine learning algorithms, their applicability and limitations
  • Practical application of these methods in a machine learning environment
  • Practical use cases and limitations of algorithms

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Who should attend?

This in an introductory-level course is geared for experienced Scala developers intending to start using learning about and working with basic machine learning algorithms and concepts.

Pre-Requisites: Students should have:

  • Basic Scala programming skills. Attendees without Scala programming background may view labs as follow along exercises or team with others to complete them. (NOTE: This course is also offered in Python or R – please inquire for details)
  • Good foundational mathematics skills in Linear Algebra and Probability, to start learning about and using basic machine learning algorithms and concepts
  • Basic Linux skills, including familiarity with command-line options such as ls, cd, cp, and su

Training content

Machine Learning (ML) Overview

  • Machine Learning landscape
  • Machine Learning applications
  • Understanding ML algorithms & models (supervised and unsupervised)

Machine Learning Environment

  • Introduction to Jupyter notebooks / R-Studio
  • Exercise: Getting familiar with ML environment

Machine Learning Concepts

  • Statistics Primer
  • Covariance, Correlation, Covariance Matrix
  • Errors, Residuals
  • Overfitting / Underfitting
  • Cross validation, bootstrapping
  • Confusion Matrix
  • ROC curve, Area Under Curve (AUC)
  • Exercise: Working with Basic Statistics

Feature Engineering (FE)

  • Preparing data for ML
  • Extracting features, enhancing data
  • Data cleanup
  • Visualizing Data
  • Exercise: data cleanup
  • Exercise: visualizing data

Linear regression

  • Simple Linear Regression
  • Multiple Linear Regression
  • Running LR
  • Evaluating LR model performance
  • Exercise / Use case: House price estimates

Logistic Regression

  • Understanding Logistic Regression
  • Calculating Logistic Regression
  • Evaluating model performance
  • Use case: credit card application, college admissions

Classification : SVM (Supervised Vector Machines)

  • SVM concepts and theory
  • SVM with kernel
  • Use case: Customer churn data

Classification : Decision Trees & Random Forests

  • Theory behind trees
  • Classification and Regression Trees (CART)
  • Random Forest concepts
  • Exercise / Use case: predicting loan defaults, estimating election contributions

Classification : Naive Bayes

  • Theory behind Naive Bayes
  • Running NB algorithm
  • Evaluating NB model
  • Exercise / Use case: spam filtering

Clustering (K-Means)

  • Theory behind K-Means
  • Running K-Means algorithm
  • Estimating the performance
  • Exercise / Use case: grouping cars data, grouping shopping data

Principal Component Analysis (PCA)

  • Understanding PCA concepts
  • PCA applications
  • Running a PCA algorithm
  • Evaluating results
  • Exercise / Use case: analyzing retail shopping data

Recommendation (Collaborative filtering)

  • Recommender systems overview
  • Collaborative Filtering concepts
  • Use case: movie recommendations, music recommendations

Time Permitting: Capstone Project

Hands-on guided workshop utilizing skills learned throughout the course

Costs

  • Price: $2,195.00
  • Discounted Price: $1,426.75

Quick stats about Trivera Technologies LLC?

Over 25 years of technology training expertise.

Robust portfolio of over 1,000 leading edge technology courses.

Guaranteed to run courses and flexible learning options.

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Trivera Technologies LLC
7862 West Irlo Bronson Highway
STE 626
Kissimmee FL 34747

Trivera Technologies

Trivera Technologies is a IT education services & courseware firm that offers a range of wide professional technical education services including: end to end IT training development and delivery, skills-based mentoring programs,new hire training and re-skilling services, courseware licensing and...

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