Data Analytics for Asset Care

$950.00

Class 1: Data Collection and Cleaning
• Data sources and types (sensor data, historical data, operational data)
• Data collection methods and systems
• Data quality assessment and cleaning
• Data preprocessing techniques (normalization, standardization, outlier detection)
Class 2: Statistical Analysis and Data Visualization
• Descriptive statistics (mean, median, mode, standard deviation)
• Exploratory data analysis (EDA)
• Data visualization techniques (charts, graphs, dashboards)
• Hypothesis testing and statistical inference
Class 3: Machine Learning Applications in Asset Care
• Introduction to machine learning
• Supervised learning (regression, classification)
• Unsupervised learning (clustering, dimensionality reduction)
• Deep learning techniques (neural networks)
• Machine learning model evaluation and selection
Class 4: Predictive Modeling and Anomaly Detection
• Time series analysis and forecasting
• Predictive maintenance models
• Anomaly detection techniques (statistical methods, machine learning)
• Model deployment and monitoring
Class 5: Data-Driven Decision-Making
• Data-driven asset management strategies
• Decision support systems
• Key performance indicators (KPIs) and metrics
• Return on investment (ROI) analysis
• Continuous improvement and optimization

Description

This course provides a comprehensive overview of industrial data analytics for asset care, equipping participants with the knowledge and skills needed to leverage data to improve asset performance, reliability, and efficiency. The course will cover essential topics such as data collection, cleaning, statistical analysis, machine learning, predictive modeling, and data-driven decision-making. By the end of this course, participants will be able to effectively utilize data analytics techniques to optimize asset management strategies, reduce costs, and enhance operational efficiency.