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Janani Ravi

In this course, you will learn how you can develop your machine learning workflow using RapidMiner Studio, a data science platform for data preparation, machine learning, and predictive model deployment.

RapidMiner Studio provides an integrated development environment for data visualization, data preparation, machine learning, and deployment. In this course, Implementing Machine Learning Workflow with RapidMiner, you will get an overview of how you can use drag-n-drop operators to build and train machine learning models.

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In this course, you will learn how you can develop your machine learning workflow using RapidMiner Studio, a data science platform for data preparation, machine learning, and predictive model deployment.

RapidMiner Studio provides an integrated development environment for data visualization, data preparation, machine learning, and deployment. In this course, Implementing Machine Learning Workflow with RapidMiner, you will get an overview of how you can use drag-n-drop operators to build and train machine learning models.

First, you will get introduced to RapidMiner studio, which is a no-code technology to develop your machine learning workflow. You will perform exploratory data analysis using RapidMiner, build linear regression models, evaluate models using cross-validation, and perform feature selection and normalization of input data, without writing a single line of code.

Next, you will explore a native Java library for traditional machine learning models. The Java Statistical Analysis Tool, or JSAT library, is a pure Java library that allows you to train regression, classification, and clustering models. You will use JSAT to perform linear regression, perform classification using logistic regression and decision trees, perform clustering using k-means clustering, and deploy your model using the SpringBoot framework in a limited production environment.

Finally, you will see how you can use the Deep Java Library, or DJL, to train neural network models in Java. DJL provides a native Java API and can run your training on multiple backends such as Apache MXNet, TensorFlow, and PyTorch. You will also leverage transfer learning and use pre-trained models for image classification, image segmentation, and natural language processing.

When you are finished with this course, you will be able to use no-code technologies and native Java libraries to build and train machine learning models.

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What's inside

Syllabus

Course Overview
Implementing Machine Learning Models with RapidMiner Studio
Using JSAT to Implement Machine Learning Models
Using DJL to Implement Machine Learning Models
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Good to know

Know what's good
, what to watch for
, and possible dealbreakers
Develops your machine learning workflow using RapidMiner Studio
Provides an integrated development environment for data visualisation, preparation, machine learning, and deployment
Teaches you how to build and train machine learning models without coding
Teaches you how to use native Java libraries to implement machine learning models
Teaches you how to train neural network models in Java
Provides hands-on experience with no-code technologies and native Java libraries

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Activities

Be better prepared before your course. Deepen your understanding during and after it. Supplement your coursework and achieve mastery of the topics covered in Implementing Machine Learning Workflow with RapidMiner with these activities:
Review linear algebra and calculus
These topics will provide a foundation for many of the concepts covered in this course.
Browse courses on Linear Algebra
Show steps
  • Review your notes from linear algebra and calculus.
  • Complete practice problems from a textbook or online resource.
  • Take a practice test.
Follow a tutorial on how to use RapidMiner Studio
This activity will help you to learn the basics of RapidMiner Studio.
Show steps
  • Find a tutorial on how to use RapidMiner Studio.
  • Follow the steps in the tutorial.
  • Complete the exercises in the tutorial.
Join a study group to discuss machine learning concepts
This activity will help you to learn from and collaborate with other students.
Browse courses on Machine Learning
Show steps
  • Find a study group to join.
  • Attend study group meetings.
  • Participate in discussions.
Five other activities
Expand to see all activities and additional details
Show all eight activities
Review Elements of Statistical Learning
This book provides a comprehensive overview of statistical learning techniques that are used in machine learning.
Show steps
  • Read the first three chapters of the book.
  • Complete the exercises at the end of each chapter.
  • Summarize the key concepts in each chapter.
Practice building machine learning models in RapidMiner Studio
This activity will help you to develop your skills in building machine learning models.
Show steps
  • Open RapidMiner Studio.
  • Create a new project.
  • Import data into your project.
  • Build a machine learning model.
  • Evaluate the performance of the model.
Build a machine learning model to predict customer churn
This project will provide you with hands-on experience in building and deploying a machine learning model.
Show steps
  • Collect data on customer churn.
  • Prepare the data for modeling.
  • Build and train a machine learning model.
  • Evaluate the performance of the model.
  • Deploy the model to production.
Write a blog post about your experience building a machine learning model
This activity will help you to reflect on your learning and share your knowledge with others.
Browse courses on Machine Learning
Show steps
  • Choose a topic for your blog post.
  • Write an outline for your blog post.
  • Write the first draft of your blog post.
  • Edit and revise your blog post.
  • Publish your blog post.
Contribute to an open-source machine learning project
This activity will help you to learn about open-source software development and contribute to the machine learning community.
Browse courses on Machine Learning
Show steps
  • Find an open-source machine learning project to contribute to.
  • Read the project documentation.
  • Identify an area where you can contribute.
  • Make a pull request to the project.

Career center

Learners who complete Implementing Machine Learning Workflow with RapidMiner will develop knowledge and skills that may be useful to these careers:
Data Scientist
Data Scientists use machine learning and other statistical techniques to analyze data and identify trends, which can help businesses make better decisions. RapidMiner Studio is a popular data science platform that can be used to develop machine learning workflows, and knowledge of this platform is a valuable asset for aspiring Data Scientists. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Machine Learning Engineer
Machine Learning Engineers design and develop machine learning models, which can be used to automate tasks, improve decision-making, and gain insights from data. This course provides an overview of the RapidMiner Studio platform, which can be used to develop and deploy machine learning models. The course also covers the basics of machine learning, including topics such as data preparation, feature engineering, and model evaluation. This knowledge will be valuable for aspiring Machine Learning Engineers who want to build a strong foundation in the field.
Data Analyst
Data Analysts collect, clean, and analyze data to help businesses understand their customers, products, and operations. RapidMiner Studio is a powerful tool that can be used to automate many of the tasks involved in data analysis, such as data preparation, feature engineering, and model evaluation. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Software Engineer
Software Engineers design, develop, and maintain software applications. RapidMiner Studio is a popular platform for developing machine learning applications, and knowledge of this platform is a valuable asset for aspiring Software Engineers who want to specialize in machine learning. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Business Intelligence Analyst
Business Intelligence Analysts use data to identify trends and patterns that can help businesses make better decisions. RapidMiner Studio is a powerful tool that can be used to automate many of the tasks involved in business intelligence, such as data preparation, data analysis, and reporting. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Quantitative Analyst
Quantitative Analysts use mathematical and statistical techniques to analyze data and make predictions. RapidMiner Studio is a popular platform for developing machine learning models, which can be used to automate many of the tasks involved in quantitative analysis, such as data preparation, feature engineering, and model evaluation. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Operations Research Analyst
Operations Research Analysts use mathematical and statistical techniques to solve business problems. RapidMiner Studio is a powerful tool that can be used to automate many of the tasks involved in operations research, such as data preparation, data analysis, and model optimization. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Data Architect
Data Architects design and manage data systems that support business operations. RapidMiner Studio is a powerful tool that can be used to automate many of the tasks involved in data architecture, such as data modeling, data integration, and data governance. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
DevOps Engineer
DevOps Engineers automate the process of software development and deployment. RapidMiner Studio is a powerful tool that can be used to automate many of the tasks involved in DevOps, such as continuous integration, continuous delivery, and infrastructure management. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Product Manager
Product Managers oversee the development and launch of new products. RapidMiner Studio is a powerful tool that can be used to automate many of the tasks involved in product management, such as market research, product planning, and product development. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Data Engineer
Data Engineers build and maintain the infrastructure that supports data science and analytics. RapidMiner Studio is a powerful tool that can be used to automate many of the tasks involved in data engineering, such as data integration, data cleansing, and data transformation. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Information Security Analyst
Information Security Analysts protect computer systems and networks from unauthorized access, use, disclosure, disruption, modification, or destruction. RapidMiner Studio is a powerful tool that can be used to automate many of the tasks involved in information security, such as security event monitoring, intrusion detection, and incident response. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Database Administrator
Database Administrators design, implement, and maintain databases. RapidMiner Studio is a powerful tool that can be used to automate many of the tasks involved in database administration, such as database design, database tuning, and database backup and recovery. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Software Tester
Software testers ensure that software applications meet their requirements. RapidMiner Studio is a powerful tool that can be used to automate many of the tasks involved in software testing, such as test case generation, test execution, and defect tracking. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.
Network Administrator
Network Administrators design, implement, and maintain computer networks. RapidMiner Studio is a powerful tool that can be used to automate many of the tasks involved in network administration, such as network monitoring, network troubleshooting, and network security. This course provides a comprehensive overview of RapidMiner Studio, and it will help you build a strong foundation in the skills needed for this role.

Reading list

We've selected six books that we think will supplement your learning. Use these to develop background knowledge, enrich your coursework, and gain a deeper understanding of the topics covered in Implementing Machine Learning Workflow with RapidMiner.
Provides a practical introduction to machine learning using Java. It covers the basics of machine learning, data preparation, model building, and evaluation, using Java code.
Provides a comprehensive overview of machine learning from a probabilistic perspective. It covers the basics of probability theory, Bayesian inference, and machine learning algorithms.
本书为深度学习的经典教材,系统介绍了深度学习的基本原理、算法和应用。
Provides a practical introduction to data science using Python. It covers the basics of data science, data preparation, model building, and evaluation.
Provides a practical introduction to machine learning using Python. It covers the basics of machine learning, data preparation, model building, and evaluation, using Scikit-Learn, Keras, and TensorFlow.
本书为一本Java编程语言的经典教材,系统介绍了Java编程语言的基本语法和特性。

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