Analytics helps us make better decisions and streaming analytics helps us make better decisions faster. Any time you are dealing with scenarios where data is coming to you fast and furious like IoT, app logs, web traffic, social media, well almost anything, streaming analytics can add real value. Given that and the fact that we just launched the new version of the SAS Event Stream Processing (ESP as we call it) free trial, it shouldn’t require any analytics to make a quick decision to give it a try.
This article provides a quick overview of the 30-day free trial of SAS Event Stream Processing. Highlights include drag-and-drop interfaces for Studio and Streamviewer.
SAS ESP is a Streaming Analytics platform that can analyze fast-moving data (up to millions of events / second), detecting patterns of interest as they occur and thus supporting real-time decision making.
How to start your free trial of SAS Event Stream Processing
For starters, it’s easy to get your trial. You start at www.sas.com/esp and hit the “Get free trial” button, logon with a SAS profile or create one and in a couple of minutes you should be ready to go. You should be receiving two emails, the second one has a link for a tenant created on our SAS Analytics Cloud just for YOU!
Once you log in, you will see a main SAS Event Stream Processing tile under the “Apps” menu option on the left:
Three dots = three supporting tasks
This right here is a pretty useful tile as the three dots on the right have links to the following supporting tasks:
More info: Jumps to a help page starting of with an overview but allowing access to help content relevant to all the rich functionality of ESP
Support: As the name suggests, takes you to the support page with access to tutorials, training, and other product support information
Restart: Allows user to restart their environment if needed
Monitor data usage and manage teams
The “Data” menu option on the left provides visibility to data usage for the tenant – each starts with 75 GB of storage allowing you to upload your own data as you begin to experiment.
The “Team” option is for managing the team of folks whom you may want to participate in this trial along with you. You can invite up to four more people. Each team gets a tenant shared by the users in the team.
Three interface options
Clicking on the main tile starts the journey and shows you three options to choose from:
The JupyterLab environment is targeted towards a data scientist persona who likes to code in Python. This is based on ESPPy, an open source package for Python to design, test and deploy streaming analytics examples. This environment uses Plotly for visualization.
SAS ESP Studio environment is the drag-and-drop based user interface that can be used by users who like to work with visual environment for building out streaming analytics examples.
ESP Streamviewer is also drag-and-drop based user interface that is used to design and visualize dashboards as you begin to test.
For each of these environments, we’ve included pre-built scenarios. They represent some basic concepts of building out “streaming analytics projects” and a sprinkling of some simple use cases across different industry verticals. Below is a sneak peek into some use case examples:
ESPPy (Python interface) based
Smart Infrastructure
Anomaly detection in Floodlights in a parking lot based on energy consumption
Connected Vehicle
Geo-fencing based real-time alerts for a connected car
Image Analytics
Real-time detection of object of interest in an image
Retail
Sentiment analysis on Product reviews
ESP Studio (UI drag-and-drop) based
Smart Infrastructure
Anomaly detection in Floodlights in a parking lot based on energy consumption
Healthcare
Minimizing false positives
Industrial
Using Vibration data to identify emerging issues with a rotary motor
Retail
Identify shelf inventory conditions such as stock-outs using Computer Vision
Utilities
Anomaly detection on a smart grid
You can use these examples just to get familiar with the type of use cases streaming analytics can be applied to or enhance/edit as needed to make them your own – all the necessary ingredients like the datasets, the analytics files are accessible from the trial environment.
The idea behind each of these examples is to present a common use case and illustrate the power of streaming analytics to shift the decision making towards “real-time.”
Now it’s over to you to explore where you can apply faster decisioning in your organizations! Get your 30-day trial of SAS Event Stream Processing.
Start My Free Trial
... View more