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Anomaly Detection Made Easy with PyCaret

  • Development
  • Apr 19, 2025
SynopsisAnomaly Detection Made Easy with PyCaret, available at $59.99...
Anomaly Detection Made Easy with PyCaret  No.1

Anomaly Detection Made Easy with PyCaret, available at $59.99, has an average rating of 3.45, with 29 lectures, 2 quizzes, based on 30 reviews, and has 575 subscribers.

You will learn about Acquire an understanding of the intuition and some core concepts underlying Anomaly detection Propose and formulate anomaly detection problem statements which can be effectively addressed in PyCaret Knowledge of the PyCaret library, including its installation, setup, and use in anomaly detection. Hands-on experience working with real-world data using PyCaret, including data cleaning, data preprocessing, and data visualization Knowledge of how to interpret and explain the results of anomaly detection models, and how to use them to detect and flag anomalies in the data. This course is ideal for individuals who are Certified fraud examiners looking to apply AutoML tools or Business analysts who are interested in detecting anomalies in their organizations data in sectors such as banking, healthcase, predictive maintenance in manufacturing operations or Low-code Machine Learning enthusiasts looking to learn anomaly detection or Beginner data scientists curious about AutoML tools and anomaly detection or Particularly relevant for those who are interested in detecting anomalies in social media data, as this is the dataset that is used in the course or Citizen data scientists who want to learn about anomaly detection (PyCaret is a plug and play low code library with no data processing requirements) or Data scientists who want to expand their knowledge of anomaly detection or Students and researchers who are studying data science, machine learning, or related fields and want to learn about anomaly detection using PyCaret It is particularly useful for Certified fraud examiners looking to apply AutoML tools or Business analysts who are interested in detecting anomalies in their organizations data in sectors such as banking, healthcase, predictive maintenance in manufacturing operations or Low-code Machine Learning enthusiasts looking to learn anomaly detection or Beginner data scientists curious about AutoML tools and anomaly detection or Particularly relevant for those who are interested in detecting anomalies in social media data, as this is the dataset that is used in the course or Citizen data scientists who want to learn about anomaly detection (PyCaret is a plug and play low code library with no data processing requirements) or Data scientists who want to expand their knowledge of anomaly detection or Students and researchers who are studying data science, machine learning, or related fields and want to learn about anomaly detection using PyCaret.

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Summary

Title: Anomaly Detection Made Easy with PyCaret

Price: $59.99

Average Rating: 3.45

Number of Lectures: 29

Number of Quizzes: 2

Number of Published Lectures: 29

Number of Published Quizzes: 2

Number of Curriculum Items: 31

Number of Published Curriculum Objects: 31

Original Price: $19.99

Quality Status: approved

Status: Live

What You Will Learn

  • Acquire an understanding of the intuition and some core concepts underlying Anomaly detection
  • Propose and formulate anomaly detection problem statements which can be effectively addressed in PyCaret
  • Knowledge of the PyCaret library, including its installation, setup, and use in anomaly detection.
  • Hands-on experience working with real-world data using PyCaret, including data cleaning, data preprocessing, and data visualization
  • Knowledge of how to interpret and explain the results of anomaly detection models, and how to use them to detect and flag anomalies in the data.
  • Who Should Attend

  • Certified fraud examiners looking to apply AutoML tools
  • Business analysts who are interested in detecting anomalies in their organizations data in sectors such as banking, healthcase, predictive maintenance in manufacturing operations
  • Low-code Machine Learning enthusiasts looking to learn anomaly detection
  • Beginner data scientists curious about AutoML tools and anomaly detection
  • Particularly relevant for those who are interested in detecting anomalies in social media data, as this is the dataset that is used in the course
  • Citizen data scientists who want to learn about anomaly detection (PyCaret is a plug and play low code library with no data processing requirements)
  • Data scientists who want to expand their knowledge of anomaly detection
  • Students and researchers who are studying data science, machine learning, or related fields and want to learn about anomaly detection using PyCaret
  • Target Audiences

  • Certified fraud examiners looking to apply AutoML tools
  • Business analysts who are interested in detecting anomalies in their organizations data in sectors such as banking, healthcase, predictive maintenance in manufacturing operations
  • Low-code Machine Learning enthusiasts looking to learn anomaly detection
  • Beginner data scientists curious about AutoML tools and anomaly detection
  • Particularly relevant for those who are interested in detecting anomalies in social media data, as this is the dataset that is used in the course
  • Citizen data scientists who want to learn about anomaly detection (PyCaret is a plug and play low code library with no data processing requirements)
  • Data scientists who want to expand their knowledge of anomaly detection
  • Students and researchers who are studying data science, machine learning, or related fields and want to learn about anomaly detection using PyCaret
  • Are you looking to add Anomaly Detection to your existing toolbox of skills?

    Anomaly Detection is an essential application: it can identify potential problems and reduce false alarms.

    From fraud detection to predictive maintenance, the possibilities are endless.

  • Uncover hidden trends and patterns in the data with PyCaret’s robust anomaly detection capabilities.

  • Detect anomalies in customer behavior, product demand, etc.

  • Discover new opportunities with PyCaret’s anomaly detection by spotting abnormal patterns in sales and financial data.

  • Anomaly detection identifies outliers in any given situation.

    Used for a wide range of use cases – to identify fraud in financial services and for identifying fake news in social media management, understanding the intuitionbehind anomaly detection is vital for every data scientist.

    The course begins with an Introduction to Anomaly Detection:

    1. The types of Anomalies

    2. Anomaly detection use cases

    3. Intuition behind some of the anomaly detection algorithms: Isolation Forest, Local Outlier Factor and KNN

    Anomaly detection is not just about finding outliers, but understanding the context of the data.

    As you know all too well, without context, results are just numbers.

    In the second part of the course, we go through a discussion onthe PyCaret workflow:

    1. How the PyCaret library simplifies data-cleaning and preparation for anomaly detection

    2. The range of anomaly detection algorithms

    3. How to assign models

    4. How to visualize the results of anomaly detection in PyCaret.

    Combining Anomaly Detection with other Data Analytics techniques, such as clustering and regression, can provide a more comprehensive understanding of your data.

  • Discover how PyCaret’s cutting-edge anomaly detection algorithms can save your business thousands by detecting anomalies before they cause financial damage.

  • Learn how to implement PyCaret’s state-of-the-art anomaly detection models in your work, and see the results in real-time.

  • Get the skills you need to identify complex anomalies in vast datasets with ease using PyCaret’s user-friendly interface.

  • In the third and final part of the course, we work with an inbuilt PyCaret social media dataset (the ‘Facebook’ dataset) case study

    You can focus on mastering the simple PyCaret workflow and applying your intuition to draw relevant and useful conclusions informed by domain knowledge.

    We first undertake exploratory data analysis using Python’s Seaborn library. Then:

    1. We identify anomalies based on the reactions to posts/videos/links and other content types. In this case, the problem statement is to identify content that might need to be reviewed owing to the disproportionate number of reactions.

    2. We work with a handful of anomaly detection models and examine the dataset for the observations flagged as anomalous.

    3. We discover that these content types have received many reactions, and the content types and reaction types vary from algorithm to algorithm. This is how we combine context and intuition with PyCaret’s powerful algorithm.

    So, what are you waiting for?

  • Discover the game-changing anomaly detection techniques using PyCaret that top data scientists use to stay ahead of their competition.

  • Uncover how to quickly and accurately detect anomalies in your data, giving you a competitive edge in the workplace.

  • Learn the skills to impress your boss and stand out in job interviews by demonstrating your proficiency in the hottest data analytics tool, PyCaret.

  • Harness the power of PyCaret to detect hidden patterns and insights that your competition is missing and transform your data analysis skills into a valuable asset in the job market.

  • Join the elite community of data professionals with a cutting-edge career advantage by mastering PyCaret for anomaly detection.

  • By the end of the course, you’ll have hands-on experience and a solid understanding of the fundamentals of anomaly detection using PyCaret.

    This course is ideal for data analysts, business analysts, citizen data scientists, students, and anyone interested in anomaly detection.

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Introduction

    Lecture 2: Concepts to grasp through the course

    Lecture 3: What is anomaly detection?

    Lecture 4: Types of Anomalies

    Lecture 5: Use Cases for Anomaly Detection

    Chapter 2: Anomaly Detection Algorithms

    Lecture 1: Introduction to Outlier Detection Algorithms

    Lecture 2: Overview of Outlier Detection Algorithms in PyCaret

    Lecture 3: Isolation Forest

    Lecture 4: Local Outlier Factor

    Lecture 5: K Nearest Neighbours

    Lecture 6: Review of Anomaly Detection Algorithms

    Chapter 3: Introduction to PyCaret

    Lecture 1: Google Colab

    Lecture 2: An Introduction to the PyCaret Workflow

    Lecture 3: Setup under PyCaret

    Lecture 4: Create Model with PyCaret

    Lecture 5: Assign Model with PyCaret

    Lecture 6: Plot Model with PyCaret

    Lecture 7: Predict Model with PyCaret

    Chapter 4: Example: Anomaly Detection with PyCaret

    Lecture 1: Step 1: Presenting workflow in Anomaly Detection for the Facebook dataset

    Lecture 2: Step 2: Exploration of the PyCaret inbuilt Facebook dataset

    Lecture 3: Step 3: PyCaret Setup function

    Lecture 4: Step 4: PyCaret Create Model

    Lecture 5: Step 5: Assign model and examine results: Local Outlier Factor:

    Lecture 6: Step 5: Assign model and examine results: KNN

    Lecture 7: Step 5: Assign model and examine results: Histogram

    Lecture 8: Step 5: Assign model and examine results: IForest

    Lecture 9: Step 6: Plot Model and Evaluate Model

    Lecture 10: Step 7: Predict model, and Conclusion!

    Chapter 5: Bonus: Time Series Anomaly Detection for IOT Data

    Lecture 1: Time Series Anomaly Detection (IOT Data)

    Instructors

  • Anomaly Detection Made Easy with PyCaret  No.2
    DatOlympia Learning Solutions
    DatOlympia: A Data Literacy Company
  • Rating Distribution

  • 1 stars: 2 votes
  • 2 stars: 2 votes
  • 3 stars: 10 votes
  • 4 stars: 8 votes
  • 5 stars: 8 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!