Top 3 Key Components of a Data-ready Smart Machine
Data-ready solutions enable users the flexibility to introduce new components, revisit design and adjust or modify applications to fit their unique needs. Most importantly, no one gets locked into decisions that can’t be changed down the road. With the ability to organize and egress data and offer compatible sharing with nearly any external application, data-ready smart machines help unlock value through:
- Data organization and contextualization
- Decoupling and optimizing the flow of data
- Combining functions like visualization, data analysis, remote access and edge IoT
1. Organize and Contextualize the Data
Firstly, OEMs need to evaluate not only how to use data for additional value at the equipment level, but how to stage that data for egress to end user’s digital environments. Data from OEM equipment often appears as a large, and relatively flat, list of data points that provides little understanding as to what each data point can provide.
By organizing the data into a model, individual data points can be grouped together to help define their relationship to one another. This includes additional data that helps define relationships between different parts of the model, providing contextualization to what is happening across the overarching process. It is this approach to organization and contextualization that begins the transformation of data into information.
2. Push vs. Pull; Decoupling and Optimizing the Data Flow
Secondly, there needs to be an intention behind how the data will be consumed. One can determine whether there is going to be a steady stream of data (pulled by external end user applications such as SCADAs and historians), or whether the data must be in a more transactional form (pushed at the right time from the control level to an application that is event driven). And then, users need to make sure that they have a modern platform that serves up the organized and contextualized data through a variety of IT-friendly protocols. With data organized into a well-thought-out and easily understood format, the process of identifying the data needed by a specific end user application is eased as only the data that has meaning is served up. Solutions that offer this optimization cut down on the data that is sent out significantly, saving time and increasing productivity.
3. A Modern Machine Level Solution
Lastly, it’s important to recognize the need for a modern, machine-level solution that combines visualization, data analysis, remote access and edge IoT. The ability to move data leads to a differentiated solution in the market. There are a lot of customers that don’t know exactly the information they want. By taking this data-ready approach, it allows them to prepare equipment to be data flexible.
It is all in the name of efficiency. By unlocking the value in data-ready smart machines, users see an increase in efficiency and productivity right out of the gate. Organizing information in the right way and taking the modern approach to how it is created allows users to move the data that brings value versus pulling everything all the time and then trying to contextualize that data.