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Free KNIME Courses

KNIME is an analytics platform where the software is used for understanding Data Science and exploring its methodologies. It is utilized by the analysis and research industries. To learn KNIME enrol in the KNIME Free Courses offered by Great Learning and get the course completion certificate.
9.8L+ Learners
4 Courses
4.46 average rating
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Key Highlights

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Earn an industry-recognized certificate
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Start anytime, learn on your schedule
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Taught by industry experts and top faculty

Begin your learning journey

Key Highlights

certificate icon
Earn an industry-recognized certificate
flexible schedule icon
Start anytime, learn on your schedule
expert instructors icon
Taught by industry experts and top faculty

Empowering millions through professional learning

Empowering millions through professional learning

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All Knime Courses

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Free Knime Courses

Big Data Analytics Course

Great Learning Academy

Big Data Analytics Course

star 4.54 · 1.5L+ learners · 19.0 hours

Skills: Map reduce, HDFS, YARN, Hive, Apache Hadoop, Pyspark, Kafka, Spark streaming

Free icon Free

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Big Data Analytics Course

star 4.54 · 1.5L+ learners · 19.0 hours

What you’ll learn:

  • Hadoop - Master your Big Data
  • Hive - Big Data SQL
  • Spark - Stream and Analyze the Big Data

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Databases and Files Systems in AWS

Great Learning Academy

Databases and Files Systems in AWS

star 4.52 · 11.7K+ learners · 1.5 hours

Skills: AWS Cloud Storage,Database Services on AWS

Free icon Free

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Databases and Files Systems in AWS

star 4.52 · 11.7K+ learners · 1.5 hours

What you’ll learn:

  • Why Cloud Computing?
  • How Cloud Computing helps?
  • What is AWS?

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Data Structures & Algorithms in Java

Great Learning Academy

Data Structures & Algorithms in Java

star 4.48 · 1.7L+ learners · 4.0 hours

Skills: Calculation of complexity in code, Common sorting algorithms, Recursion

Free icon Free

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Data Structures & Algorithms in Java

star 4.48 · 1.7L+ learners · 4.0 hours

What you’ll learn:

  • What is Data Structure?
  • Importance of Data Structure
  • Introduction to Algorithm

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Data Science Foundations

Great Learning Academy

Data Science Foundations

star 4.45 · 6.4L+ learners · 2.0 hours

Skills: Data Science, Analytics Landscape, Data Science Life Cycle fundamentals

Free icon Free

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Data Science Foundations

star 4.45 · 6.4L+ learners · 2.0 hours

What you’ll learn:

  • Introduction to Data Science
  • Data Science Life Cycle
  • Data Mining Tasks

View Course

Big Data Analytics Course

Great Learning Academy

Big Data Analytics Course

Skills: Map reduce, HDFS, YARN, Hive, Apache Hadoop, Pyspark, Kafka, Spark streaming

star 4.54 · 1.5L+ learners · 19.0 hours
Free icon Free

View Course

Databases and Files Systems in AWS

Great Learning Academy

Databases and Files Systems in AWS

Skills: AWS Cloud Storage,Database Services on AWS

star 4.52 · 11.7K+ learners · 1.5 hours
Free icon Free

View Course

Data Structures & Algorithms in Java

Great Learning Academy

Data Structures & Algorithms in Java

Skills: Calculation of complexity in code, Common sorting algorithms, Recursion

star 4.48 · 1.7L+ learners · 4.0 hours
Free icon Free

View Course

Data Science Foundations

Great Learning Academy

Data Science Foundations

Skills: Data Science, Analytics Landscape, Data Science Life Cycle fundamentals

star 4.45 · 6.4L+ learners · 2.0 hours
Free icon Free

View Course

Learner reviews of the Free Knime Courses

Our learners share their experiences of our courses

4.46
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Reviewer Profile

5.0

“Big Data Analytics Course: An Amazing Experience”
I would like to thank the tutor for his excellent teaching on the Big Data Analytics course. Every topic covered in the course was amazing and informative. He has a great way of explaining complex concepts in a clear and concise manner. He was always patient and willing to answer any questions that I had. I found the course to be very valuable and I would highly recommend it to anyone interested in learning about big data analysis. Thank you again for your excellent teaching. I hope this feedback is helpful. Please let me know if you have any other questions.

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Reviewer Profile

5.0

“Engaging and Informative Learning Experience”
I thoroughly enjoyed the depth of the curriculum and the well-structured quizzes and assignments. The instructor did an excellent job breaking down complex concepts, making them easy to follow. The course not only improved my skills but also provided practical tools that I can immediately apply in my work. Overall, a highly valuable experience.

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Reviewer Profile

5.0

“The Online Big Data Course Enhanced My Skills in Hadoop, Spark, and Data Processing”
The online Big Data course was a transformative journey that deepened my understanding of data processing and analytics. I learned essential tools like Hadoop and Spark, gaining hands-on experience through practical assignments and real-world projects. The interactive lectures facilitated engaging discussions, allowing me to collaborate with peers and gain diverse insights. I particularly appreciated the focus on scalability and performance optimization in big data systems.

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Reviewer Profile

5.0

“A Bit Tough but the Instructor Taught So Well!”
I really enjoyed the course. It was well-organized, starting from basics and moving to advanced topics. The instructors were knowledgeable. I highly recommend this course for anyone interested in big data!

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Reviewer Profile

4.0

“A Very Good Experience: Easy to Learn and Great Content”
My experience with the Big Data Analytics program on Great Learning was truly rewarding. The course is well-structured, offering a blend of theoretical knowledge and hands-on experience with real-world projects. It covers the essential tools and technologies used in the industry, such as Hadoop and Spark, which have significantly boosted my confidence in working with large datasets. The platform's mentorship and support system were also excellent. I appreciated the interactive sessions with industry experts and the timely assistance from program managers.

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Reviewer Profile

5.0

“Insightful Learning Experience in Spark and Kafka”
I particularly enjoyed the hands-on approach to learning, which allowed me to apply theoretical concepts directly to practical scenarios. The curriculum was well-structured, making it easy to follow along and build upon my existing knowledge. The instructor was knowledgeable and engaging, providing valuable insights and answering questions effectively. Overall, the experience enhanced my skills in Spark and Kafka significantly.

LinkedIn Profile

Reviewer Profile

5.0

“An In-Depth Course on Big Data Frameworks”
This course provides an in-depth understanding of big data frameworks and tools like Hadoop and Spark. With well-structured modules, it covers data processing, analysis, and visualization techniques. The practical exercises and case studies help in mastering real-world applications. Overall, it's a valuable course for anyone looking to enhance their big data skills.

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Reviewer Profile

5.0

“A Pleasant and Useful Course”
The course is easy to follow, clear, and explains each concept with examples, making it easy to understand.

LinkedIn Profile

Reviewer Profile

5.0

“Learning About Big Data and Exploring Big Data”
The online Big Data workshop was insightful! The hands-on approach with tools like Hadoop and Spark really enhanced my understanding. Highly recommend for anyone looking to boost their data skills!

LinkedIn Profile

Reviewer Profile

5.0

“Engagement and Interaction: Opportunities for Active Participation”
Comprehensive Content: The course covered a wide range of topics, providing a thorough understanding of the subject matter. Engaging Teaching Style: The instructor's teaching methods were dynamic and engaging, making complex concepts easier to understand. Hands-On Experience: Practical exercises, labs, or projects allowed for hands-on learning, reinforcing theoretical knowledge. Real-World Applications: Case studies and examples from industry illustrated how the concepts apply in real-world situations. Collaborative Environment:

LinkedIn Profile

Learn KNIME Course Online

KNIME is an analytics platform that helps you create and understand data science and machine learning methodologies. You can explore the algorithms, various concepts, processes, and functions. You can visualize the workflow and understand the model and the pipeline better. 

 

KNIME provides you with a graphical interface for development. KNIME is known as software that is used for developing Data Science. Data Science and Machine Learning models are always challenging to understand because of their complex and cryptic nature. To work with Machine learning and Data Science, you must be a good developer who understands Data Science and Machine Learning concepts.

 

Through KNIME, even a person with a vague understanding of Machine Learning and Data Science can understand their models better. You can understand the different algorithms and functions with a better approach. You can create and explore more of its concepts and algorithms with the features of KNIME software.

 

KNIME provides you with a user-friendly GUI, basically a graphical interface for the development. KNIME has various predefined components called nodes, which help read the data, understand many Machine Learning algorithms, and allows you to visualize the data in multiple formats. It has repositories that include pre-defined nodes. Using these pre-defined nodes, you can specify the workflow between them.

 

KNIME is available for Linux, Windows, and Mac OS. To download KNIME on your Windows or Linux system, you can follow the instructions given on the download page of KNIME. When you run KNIME on your system, you can see that the workbench has several views. You can utilize these views to create and understand Data Science and Machine Learning better.

 

In the workbench, you see the below-mentioned views:

 

  • Workspace
  • Node Repository
  • Outline
  • Console
  • KNIME Explorer
  • Description

 

Workspace View

 

It is the most crucial view that helps you in creating the models regarding Machine Learning. Each workspace consists of several nodes. These nodes are connected using arrows. 

 

Generally, these nodes are defined from left to right, but it is not necessary as you can also freely move these nodes anywhere on the workspace as per the requirement. The connections will move accordingly between the nodes as you move them to maintain their connectivity. You can also add or remove the relationships between these nodes at any point in time.  

 

Node Repository

 

It is the next critical view. Node repository provides you with a list of nodes that can be used for your analytics. It is easy to work with as it systematically categorizes the nodes based on their functions. The categories are likely to be:

  • IO
  • Views
  • Analytics

Nodes define the functionality that can be visually added to your workflow. When you expand these categories, you will find several options. For example, in the IO category, you can find various nodes to read data in multiple formats like CSV, XLS, ARFF, etc. 

 

You can define and understand various Machine Learning Algorithms through the Analytics node like Clustering, Bayes, Decision Tree, Ensemble Learning, and many more. You can pick the appropriate node from the repository, a Machine Learning algorithm, and apply it to your workspace for your analytics. Connect the input of this node to the output of your data reader node resulting in the creation of your workflow.

 

To explore the other views of KNIME and learn KNIME in-depth, enrol in the KNIME Free Courses offered by Great Learning Academy. Understand and utilize the KNIME analytical platform better by learning its concepts through these courses. You can also secure the course completion certificates on the successful completion of the enrolled courses.

 

Meet your faculty

Meet industry experts who will teach you relevant skills in artificial intelligence

instructor img

Mr. Vishwa Mohan

Sr. Software Engineer, Ex-Walmart, Ex- Paypal, IIT-BHU Alumnus
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Dr. Bappaditya Mukhopadyay

Professor, Analytics & Finance

Frequently Asked Questions

What does KNIME stand for?

KNIME is Konstanz Information Miner, a free data analytics platform and open-source software known for reporting and integration.

What is KNIME used for?

KNIME is an open-source and free data analytics platform. It is used to develop the Machine Learning models and applications, provides GUI for developing applications, provides nodes for multiple tasks that help read the data, explores and apply various Machine Learning algorithms, and visualizes the data in the different available formats.

How do I learn KNIME?

KNIME is open-source, free software that can be downloaded on your system. To learn KNIME online, you can browse through plenty of the courses available on the web. One of the best-fit Platforms where you can learn KNIME for free is Great Learning Academy. You can enrol in their KNIME Free Courses and also get Free KNIME Certification.

Is KNIME any good?

KNIME is highly known for its analytics properties and is utilized by many for understanding and manipulating various Machine Learning algorithms. It is praised for its robust analytical solutions. Hence, KNIME is still used and praised by many.

Is KNIME better than Python?

Python is a high-level language that provides developers with extensive library support and is very useful for programming. KNIME is a free tool adapted by many to explore Machine Learning algorithms. It is also used for analytical purposes. KNIME is a good choice for users who are new to programming and want to explore more on Data Science and Machine Learning.