article thumbnail

Cloud analytics migration: how to exceed expectations

CIO

A cloud analytics migration project is a heavy lift for enterprises that dive in without adequate preparation. A modern data and artificial intelligence (AI) platform running on scalable processors can handle diverse analytics workloads and speed data retrieval, delivering deeper insights to empower strategic decision-making.

Analytics 146
article thumbnail

A look at the future of mainframe modernization with hybrid cloud

CIO

At the same time, many organizations have been pushing to adopt cloud-based approaches to their IT infrastructure, opting to tap into the speed, flexibility, and analytical power that comes along with it. It’s a decision that maps back to the overarching goals of a business and how they want to leverage their data.

Cloud 167
Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

The targeted approach to cloud and data CIOs need for ROI gains

CIO

Migration to the cloud, data valorization, and development of e-commerce are areas where rubber sole manufacturer Vibram has transformed its business as it opens up to new markets. Much of this growth is driven by investments in AI technologies, and IDC also expects cloud infrastructure spend to increase 26% compared to 2023.

Cloud 179
article thumbnail

Trade routes of the digital age: How data gravity shapes cloud strategy

CIO

However, trade along the Silk Road was not just a matter of distance; it was shaped by numerous constraints much like todays data movement in cloud environments. Merchants had to navigate complex toll systems imposed by regional rulers, much as cloud providers impose egress fees that make it costly to move data between platforms.

Strategy 164
article thumbnail

Checklist Report: Preparing for the Next-Generation Cloud Data Architecture

Data architectures to support reporting, business intelligence, and analytics have evolved dramatically over the past 10 years.

article thumbnail

How Du’s vision for sovereign cloud and AI will transform UAE’s digital governance

CIO

Du, one of the largest telecommunications operators in the Middle East, is deploying Oracle Alloy to offer cloud and sovereign AI services to business, government, and public sector organizations in the UAE. However, with the rapid adoption of AI and cloud technologies, concerns over security and data privacy are paramount.

article thumbnail

Bridging the gap between mainframe data and hybrid cloud environments

CIO

A high hurdle many enterprises have yet to overcome is accessing mainframe data via the cloud. Without integrating mainframe data, it is likely that AI models and analytics initiatives will have blind spots. It enhances scalability, flexibility, and cost-effectiveness, while maximizing existing infrastructure investments.

Cloud 147
article thumbnail

12 Considerations When Evaluating Data Lake Engine Vendors for Analytics and BI

To do so, modern enterprises leverage cloud data lakes as the platform used to store data for analytical purposes, combined with various compute engines for processing that data. Businesses today compete on their ability to turn big data into essential business insights.

article thumbnail

TCO Considerations of Using a Cloud Data Warehouse for BI and Analytics

Enterprises are pouring money into data management software – to the tune of $73 billion in 2020 – but are seeing very little return on their data investments.

article thumbnail

Partner Webinar: A Framework for Building Data Mesh Architecture

Speaker: Jeremiah Morrow, Nicolò Bidotti, and Achille Barbieri

Data teams in large enterprise organizations are facing greater demand for data to satisfy a wide range of analytic use cases. Yet they are continually challenged with providing access to all of their data across business units, regions, and cloud environments. Leveraging Dremio for data governance and multi-cloud with Arrow Flight.

article thumbnail

Data Analytics in the Cloud for Developers and Founders

Speaker: Javier Ramírez, Senior AWS Developer Advocate, AWS

You have lots of data, and you are probably thinking of using the cloud to analyze it. But how will you move data into the cloud? In this session, we address common pitfalls of building data lakes and show how AWS can help you manage data and analytics more efficiently. In which format? What about streaming data?

article thumbnail

Product Transformation: Adapting Your Solutions for Cloud Models

Speaker: Ahmad Jubran, Cloud Product Innovation Consultant

In order to maintain a competitive advantage, CTOs and product managers are shifting their products to the cloud. Many do this by simply replicating their current architectures in the cloud. Join Ahmad Jubran, Cloud Product Innovation Consultant, and learn how to adapt your solutions for cloud models the right way.

article thumbnail

Top Considerations for Building an Open Cloud Data Lake

Increasingly, enterprises are leveraging cloud data lakes as the platform used to store data for analytics, combined with various compute engines for processing that data. Read this paper to learn about: The value of cloud data lakes as the new system of record.

article thumbnail

Best Practices for Deploying & Scaling Embedded Analytics

Embedding analytics in your application doesn’t have to be a one-step undertaking. Read more about how to simplify the deployment and scalability of your embedded analytics, along with important considerations for your: Environment Architecture: An embedded analytics architecture is very similar to a typical web architecture.

article thumbnail

The Practical Guide to Using a Semantic Layer for Data & Analytics

How to enable data teams to model and deliver a semantic layer on data in the cloud. How a semantic layer delivers massive ROI with streamlined query performance, concurrency, cost management, and ease of use. How you can reach optimal performance on large datasets while improving query performance and user concurrency by 10x.