Current data engineering methods are struggling

91% report frequently receiving request for analytics with unrealistic or unreasonable expectations, and 87% say they are blamed when things go wrong
Data World

Data Engineering

A framework designed for increased data demands

The rapid adoption of data analytics and advanced analytics by Industry, both of which rely on big data is a challenge for data engineers around the world. Data architectures and frameworks were often not built to comply with these demands, and so data engineers spend large amounts of time re-engineering solutions, integrating multiple data systems and maintaining data quality.

VROC has designed an end-to-end suite of products to reduce the burden on data engineers, which includes data storage, management, visualisation and analytics, and can also be coupled with AI and remote operations control.

DataHUB+ is built for industrial big data, with its distributed data storage allowing for scalability, reliability, speed and data integrity. The automatic ingestion and pre-processing of out of order, linear, non-linear and time-series data reduces the time data engineers and data professionals spend wrangling data. Greatly improving collaboration and productivity.

Download DataHUB+ Product Sheet

End-to-end Data and AI Pipeline

VROC's unique end-to-end ML pipeline include AutoML and MLOps capability
Advanced Data Engineering

Automating data engineering processes for greater efficiencies

The advent of DataOps and MLOps which are designed for automation and ease of execution will greatly benefit data engineers and data administrators. With the hope that statistics like this one from the IDC improve, which states that 28% of AI/ML projects fail due to a lack of necessary expertise, production-ready data, and integrated development environments.

Applying methodologies such as DataOps and MLOps along with automated tools, will help to automate data orchestration and the delivery of analytics, AI and machine learning models to the point where companies can scale the use of advanced analytics to achieve rapid results.

Get Started
Useful Resources

You might be interested in

Data Management Strategy Before the AI Strategy

A data management strategy is critical for industrial manufacturers who wish to do more with their data and harness AI.

Read Full Article

Industrial Data Storage Comparison

Compare the differences between data historian, data lake and data warehouse. What's best for machine learning?

Read Full Article

Stop, you don’t need additional IoT sensors

If a lack of sensors is prohibiting you from starting your industrial predictive maintenance journey... here is your solutio

Read Full Article

Democratization of data for scalable AI results

The next frontier for scalable AI is the democratization of data through the use of analytics process automation (APA)

Read Full Article

DataHUB+ vs Traditional Process Historian

Understanding the difference between a traditional Process Historian and DataHUB+

Read Full Article

Overcoming Bias in AI [Case Study]

Understanding inherent biases this is critical for recognising how they become present in AI-driven technology, thanks to p

Read Full Article

Never too busy for data analytics

The value of the insights that can be obtained from Industrial analytics is so great that businesses need to find ways to ov

Read Full Article

Data Science: Consultancy vs DIY

Explore the difference in data science offerings, understand the differences and advantages.

Read Full Article

Five ways to scale Industrial AI

We explore five trends being adopted to help scale the use of Industrial Artificial Intelligence

Read Full Article

Get started with VROC today

Ready to embark on a pilot project or roll-out the innovation enterprise wide? Perhaps you need assistance integrating your systems or accessing your data? We have a solution to help you as you progress through your digital transformation.