A new study from 451 Research indicates that the majority of IT Professionals are clamoring for a solution which will offer real-time analytics from machine and IoT generated data, but 53% of those surveyed lack the functionality.

As reported by ZDnet:

Among the 200 survey respondents, there was a clear desire to analyze data as rapidly as possible. When asked specifically at which levels of speed they wanted to expand their use of machine data analytics, most respondents said ‘machine real-time’ speed (69 percent), compared with ‘human real-time’ (51 percent), and minutes, hours or days (29 percent).

About one-third of respondents (34 percent) said their existing machine data analytics offering doesn’t feature machine real-time analytics, while 53 percent said their current technology wasn’t even capable of human real-time analytics.

This is precisely what we are building with the Cinchapi Data Platform.

From the beginning, our goal has been to create a data platform which can stream disparate data in real-time, no matter the source or schema. So long as we can connect directly, or via an API, we can work with virtually any data source, and that absolutely includes real-time data generated from IoT devices.

So how do we do that? After all, data prep and clean up is a massive time-suck.  Data developers will tell you that one of the biggest challenges that they face is making sense of disparate data – what does it mean?

We mitigate that problem by leveraging machine learning to make short work of the data clean up.  Literally, once a data source is connected, developers can begin making ad hoc queries of the data.

That  by itself will save a developer a massive amount of time and effort, but we don’t stop there. We don’t insist on developing cryptic formulas in an effort to “solve for x”. Nah, we’re better than that.

One of our core beliefs is that we we should strive to provide “computing without complexity”.  To that end, the Cinchapi Data Platform features a Natural Language Processing (NLP) interface. That means instead of creating a host of complicated queries to explore the data, a developer can ask questions of the data.

The goal is to make data conversational.  If a developer wanted to drill down, all she has to do is ask followup questions. Pretty sweet.

But what about all of those real-time analytics? Those are included out of the box, and even better, a visualization engine takes those analytics and presents them visually.  That’s right,  real-time analytics and visualizations from multiple data sources – all with on simple to use data solution.

Want to see it all in action, click here to view a 60  second overview, and if you like what you see, sign up for a much more in-depth live demonstration.