SAS Visual Analytics Training Course.
Introduction:
SAS Visual Analytics is a powerful, web-based tool designed to help organizations explore, analyze, and visualize their data in real-time. With advanced data visualizations, dynamic reports, and predictive analytics capabilities, SAS Visual Analytics empowers users to turn raw data into actionable insights. This 5-day course will provide participants with a comprehensive understanding of how to use SAS Visual Analytics to analyze business data, create engaging visualizations, and share interactive reports, enabling data-driven decision-making across the organization.
Objectives:
By the end of this course, participants will:
- Understand the SAS Visual Analytics interface and key features.
- Learn how to prepare and load data for analysis in SAS Visual Analytics.
- Create dynamic reports, dashboards, and data visualizations.
- Gain proficiency in using advanced analytics features such as forecasting, trend analysis, and predictive modeling.
- Understand how to share and collaborate on reports and visualizations effectively.
- Apply best practices in data visualization and reporting to communicate insights clearly.
Who Should Attend:
This course is designed for:
- Data analysts, business analysts, and data visualization professionals looking to enhance their skills with SAS Visual Analytics.
- Business intelligence professionals who want to use SAS for effective data exploration and reporting.
- Executives and decision-makers who need to interpret data visualizations to drive business decisions.
- IT professionals involved in the implementation or support of SAS Visual Analytics.
Day 1: Introduction to SAS Visual Analytics and Data Exploration
Morning:
Overview of SAS Visual Analytics:
- Introduction to the SAS Visual Analytics platform and its components: data exploration, reporting, and advanced analytics.
- Understanding the SAS Visual Analytics user interface and workspace.
- Exploring the various data types and sources supported by SAS Visual Analytics (e.g., SAS datasets, CSV files, relational databases).
Connecting and Loading Data:
- Loading data into SAS Visual Analytics from various sources.
- Data preparation and cleaning within SAS Visual Analytics.
- Understanding data metadata and setting data relationships.
Afternoon:
Basic Data Exploration:
- Exploring data using tables, graphs, and summary statistics.
- Using filters, sorting, and grouping for deeper insights.
- Identifying trends and patterns in data through visual exploration.
Hands-on Session:
- Load sample datasets into SAS Visual Analytics and perform basic data exploration (filters, graphs, and summary statistics).
Day 2: Creating Visualizations and Interactive Reports
Morning:
Creating Basic Visualizations:
- Introduction to visualization types: bar charts, line charts, pie charts, scatter plots, etc.
- Creating basic visualizations in SAS Visual Analytics.
- Customizing visualizations: adjusting colors, axes, labels, and chart formatting.
Using Graphs to Convey Insights:
- Designing clear and effective graphs to communicate data trends.
- Creating visualizations for categorical and continuous variables.
- Using annotations to highlight important data points.
Afternoon:
Creating Interactive Reports:
- Designing reports with multiple visualizations.
- Adding interactivity: filters, drop-down menus, and drill-down capabilities.
- Customizing report layouts, themes, and styles for better presentation.
Hands-on Session:
- Create an interactive report using various visualizations, such as bar charts and line charts, and apply interactive features like filters and drill-downs.
Day 3: Advanced Visualization Techniques and Data Transformation
Morning:
Advanced Visualizations:
- Working with advanced charts: heatmaps, geo maps, waterfall charts, and histograms.
- Understanding when to use different visualization types for specific business cases.
- Creating complex visualizations with multiple dimensions and measures.
Data Transformation and Calculated Items:
- Creating calculated columns, measures, and custom expressions in SAS Visual Analytics.
- Data aggregation and transformation techniques for preparing data for advanced analysis.
- Working with time-based data and creating time-series visualizations.
Afternoon:
Forecasting and Trend Analysis:
- Using SAS Visual Analytics to perform trend analysis and forecasting.
- Applying time series forecasting models to predict future trends.
- Visualizing forecast results and interpreting predictive insights.
Hands-on Session:
- Create an advanced visualization such as a heatmap or geo map and perform trend analysis with forecasting techniques.
Day 4: Sharing, Collaboration, and Report Distribution
Morning:
Collaborating with Reports:
- Sharing reports with others through SAS Visual Analytics.
- Setting up report permissions and user access control.
- Collaborating on reports by adding comments, annotations, and feedback.
Publishing Reports and Dashboards:
- Publishing and scheduling reports for automated distribution.
- Exporting reports to different formats (PDF, Excel, HTML).
- Embedding reports and visualizations into web applications.
Afternoon:
Creating Dashboards:
- Building interactive dashboards for executive decision-making.
- Organizing visualizations in a dashboard layout for easy navigation.
- Using dynamic filters and controls to update dashboards in real-time.
Hands-on Session:
- Create a dashboard with multiple visualizations and implement sharing and collaboration features, such as comment and permission settings.
Day 5: Advanced Analytics and Deployment in SAS Visual Analytics
Morning:
Predictive Analytics and Modeling:
- Introduction to predictive analytics in SAS Visual Analytics.
- Creating and evaluating models using regression, classification, and clustering techniques.
- Visualizing predictive results and model outputs.
Integration with Other SAS Products:
- Integrating SAS Visual Analytics with other SAS tools like SAS Viya, SAS Enterprise Miner, and SAS Studio.
- Using external data sources (Big Data, cloud, and APIs) for enriched analytics.
Afternoon:
Best Practices in Visualization and Reporting:
- Data visualization best practices: ensuring clarity, accuracy, and usability.
- Designing dashboards and reports for different audiences (executives, analysts, operational teams).
- Implementing performance optimization techniques in large-scale deployments.
Final Hands-On Project:
- Build an advanced report or dashboard using SAS Visual Analytics, incorporating predictive analytics and a variety of visualizations.
- Present the final project for peer review and feedback.
Key Takeaways:
- In-depth understanding of SAS Visual Analytics and its tools for data visualization and analysis.
- Ability to create interactive, dynamic reports and dashboards for data exploration.
- Proficiency in advanced visualization techniques like heatmaps, geo maps, and forecasting.
- Hands-on experience in applying predictive analytics models and interpreting their results.
- Knowledge of best practices in reporting, data visualization, and collaboration.