Applications of AI for Predictive Maintenance Training

Commitment 1 Day, 7-8 hours a day.
Language English
User Ratings Average User Rating 4.8 See what learners said
Price REQUEST
Delivery Options Instructor-Led Onsite, Online, and Classroom Live

COURSE OVERVIEW

In this Applications of AI for Predictive Maintenance Training workshop, you’ll learn how to identify anomalies and failures in time series data, estimate the remaining useful life of the corresponding parts, and use this information to map anomalies to failure conditions. You’ll be able to leverage predictive maintenance to manage failures and avoid costly unplanned downtimes. First, you’ll learn the key challenges around identifying anomalies that can lead to costly breakdowns. We’ll discuss how you can leverage your company’s time-series data to predict outcomes using machine-learning classification models with XGBoost. Then, you’ll learn how to apply predictive maintenance procedures by using an LSTM-based model to predict the failure of a device and avoid downtime. Finally, you will experiment with autoencoders to detect anomalies using the previous steps’ time series sequences. After the workshop, you’ll learn how to:

  • Predict part failures using machine learning classification models with XGBoost
  • Train GPU LSTM-based models using Keras and TensorFlow for failure prediction in time series
  • Detect anomalies using an autoencoder and Seq2Seq models
  • Experiment with generative adversarial network (GAN) models to detect anomalies

Please note that once a booking has been confirmed, it is non-refundable. This means that after you have confirmed your seat for an event, it cannot be canceled, and no refund will be issued, regardless of attendance.

WHAT'S INCLUDED?
  • 1 day of Applications of AI for Predictive Maintenance Training with an expert instructor
  • Applications of AI for Predictive Maintenance Electronic Course Guide
  • Certificate of Completion
  • 100% Satisfaction Guarantee
RESOURCES
RELATED COURSES

ADDITIONAL INFORMATION

COURSE OBJECTIVES

Upon completion of this Applications of AI for Predictive Maintenance Training course, participants can:

  • Use AI-based predictive maintenance to prevent failures and unplanned downtimes
  • Identify key challenges around detecting anomalies that can lead to costly breakdowns
  • Use time-series data to predict outcomes with XGBoost-based machine learning classification models
  • Use an LSTM-based model to predict equipment failure
  • Use anomaly detection with time-series autoencoders to predict failures when limited failure-example data is available
CUSTOMIZE IT
  • We can adapt this Applications of AI for Predictive Maintenance Training course to your group’s background and work requirements at little to no added cost.
  • If you are familiar with some aspects of this Applications of AI for Predictive Maintenance course, we can omit or shorten their discussion.
  • We can adjust the emphasis placed on the various topics or build the Applications of AI for Predictive Maintenance course around the mix of technologies of interest to you (including technologies other than those in this outline).
  • If your background is nontechnical, we can exclude the more technical topics, include the topics that may be of special interest to you (e.g., as a manager or policymaker), and present the Applications of AI for Predictive Maintenance course in a manner understandable to lay audiences.
AUDIENCE/TARGET GROUP

The target audience for this Applications of AI for Predictive Maintenance Training course:

  • ALL
CLASS PREREQUISITES

The knowledge and skills that a learner must have before attending this Applications of AI for Predictive Maintenance Training course are:

  • Experience with Python
  • Basic understanding of data processing and deep learning

COURSE SYLLABUS

Introduction

  • Meet the instructor.
  • Create an account at courses.nvidia.com/join

Training XGBoost Models with RAPIDS for Time Series

  • Learn how to predict part failures using XGBoost classification on GPUs with cuDF:
    • Prepare real data for efficient GPU ingestion with RAPIDS cuDF.
    • Train a classification model using GPU-accelerated XGBoost and CPU-only XGBoost.
    • Compare and discuss performance and accuracy results for XGBoost using CPUs, GPUs, and GPUs with cuDF.

Training LSTM Models Using Keras and TensorFlow for Time Series

  • Learn how to predict part failures using a deep learning LSTM model with time-series data:
    • Prepare sequenced data for time-series model training.
    • Build and train a deep learning model with LSTM layers using Keras.
    • Evaluate the accuracy of the model.

Training Autoencoders for Anomaly Detection

  • Learn how to predict part failures using anomaly detection with autoencoders:
    • Build and train an LSTM autoencoder.
    • Develop and train a 1D convolutional autoencoder.
    • Experiment with hyperparameters and compare the results of the models.

Assessment and Q&A

Applications of AI for Predictive Maintenance TrainingApplications of AI for Predictive Maintenance Training Course Recap, Q/A, and Evaluations

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