This site uses cookies to improve your experience. To help us insure we adhere to various privacy regulations, please select your country/region of residence. If you do not select a country, we will assume you are from the United States. Select your Cookie Settings or view our Privacy Policy and Terms of Use.
Cookie Settings
Cookies and similar technologies are used on this website for proper function of the website, for tracking performance analytics and for marketing purposes. We and some of our third-party providers may use cookie data for various purposes. Please review the cookie settings below and choose your preference.
Used for the proper function of the website
Used for monitoring website traffic and interactions
Cookie Settings
Cookies and similar technologies are used on this website for proper function of the website, for tracking performance analytics and for marketing purposes. We and some of our third-party providers may use cookie data for various purposes. Please review the cookie settings below and choose your preference.
Strictly Necessary: Used for the proper function of the website
Performance/Analytics: Used for monitoring website traffic and interactions
A cloudanalytics 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.
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.
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.
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.
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.
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.
There are many benefits of running workloads in the cloud, including greater efficiency, stronger performance, the ability to scale, and ubiquitous access to applications, data, and cloud-native services. That said, there are also advantages to a hybrid approach, where applications live both on-premises and in the cloud.
At Cloud Next 2025, Google announced several updates that could help CIOs adopt and scale agents while reducing integration complexity and costs. Smaller LLMs and other updates At Cloud Next 2025, Google also introduced specialized LLMs for video, audio, and images in the form of Veo 2, Chirp 3, and Imagen 3.
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.
Google Cloud Next 2025 was a showcase of groundbreaking AI advancements. bigframes.pandas provides a pandas-compatible API for analytics, and bigframes.ml The post The AI Future According to Google Cloud Next ’25: My Interesting Finds appeared first on Xebia. BigFrames 2.0 offers a scikit-learn-like API for ML.
In his role as president, CPO, and COO, Zavery’s responsibilities include ServiceNow’s platform, products, engineering, cloud infrastructure, and user experience. During his tenure, he helped build Google Cloud into the fourth-largest enterprise software company by increasing annualized revenue from $7 billion to over $41 billion.
Azure Synapse Analytics is Microsofts end-to-give-up information analytics platform that combines massive statistics and facts warehousing abilities, permitting advanced records processing, visualization, and system mastering. What is Azure Synapse Analytics? Why Integrate Key Vault Secrets with Azure Synapse Analytics?
This article is the first in a multi-part series sharing a breadth of Analytics Engineering work at Netflix, recently presented as part of our annual internal Analytics Engineering conference. Subsequent posts will detail examples of exciting analytic engineering domain applications and aspects of the technical craft.
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.
The proposed model illustrates the data management practice through five functional pillars: Data platform; data engineering; analytics and reporting; data science and AI; and data governance. The choice of vendors should align with the broader cloud or on-premises strategy.
At yesterdays Oracle Cloud Summit in Dubai, the company made several key announcements, highlighting not only its deepening commitment to the region but also the exciting trajectory of AI and cloud adoption across the UAE and KSA. A key point shared during the summit was how the Kingdoms organizations are increasingly investing in AI.
Cloud storage. Not all data architectures leverage cloud storage, but many modern data architectures use public, private, or hybrid clouds to provide agility. Cloud computing. In addition to using cloud for storage, many modern data architectures make use of cloud computing to analyze and manage data.
As organizations adopt a cloud-first infrastructure strategy, they must weigh a number of factors to determine whether or not a workload belongs in the cloud. Cost has been a key consideration in public cloud adoption from the start. Meanwhile, GreenOps focuses on reducing the environmental impact of cloud operations.
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.
Cloud computing has been a major force in enterprise technology for two decades. But according to a Barclays report issued last year, only 42% of workloads reside in the public cloud , despite the benefits of running workloads in the cloud. Retraining admins on new tools to manage cloud environments requires time and money.
Data sovereignty and the development of local cloud infrastructure will remain top priorities in the region, driven by national strategies aimed at ensuring data security and compliance. The skills gap, particularly in AI, cloud computing, and cybersecurity, remains a critical issue.
In todays dynamic digital landscape, multi-cloud strategies have become vital for organizations aiming to leverage the best of both cloud and on-premises environments. As enterprises navigate complex data-driven transformations, hybrid and multi-cloud models offer unmatched flexibility and resilience. Why Hybrid and Multi-Cloud?
With more and more businesses moving to the Cloud, FinOps is becoming a vital framework for efficiently controlling Cloud expenses. Given that SaaS accounts for a sizable amount of Cloud expenses for businesses of all kinds, including small and medium-sized firms, this addition is essential.
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?
Re-platforming to reduce friction Marsh McLennan had been running several strategic data centers globally, with some workloads on the cloud that had sprung up organically. Simultaneously, major decisions were made to unify the company’s data and analytics platform.
The evolution of cloud-first strategies, real-time integration and AI-driven automation has set a new benchmark for data systems and heightened concerns over data privacy, regulatory compliance and ethical AI governance demand advanced solutions that are both robust and adaptive.
Here's a theory I have about cloud vendors (AWS, Azure, GCP): Cloud vendors 1 will increasingly focus on the lowest layers in the stack: basically leasing capacity in their data centers through an API. Redshift at the time was the first data warehouse running in the cloud. 5 And what does that mean for other cloud products?
For those enterprises with significant VMware deployments, migrating their virtual workloads to the cloud can provide a nondisruptive path that builds on the IT teams already-established virtual infrastructure. AI and analytics integration. For many organizations, building this capacity on-premises is challenging.
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.
Saudi Arabia has announced a 100 billion USD initiative aimed at establishing itself as a major player in artificial intelligence, data analytics, and advanced technology. billion in a global super-scaler cloud, and Oracle investing $1.5 billion to expand its MENA business by launching new cloud areas in the Kingdom.
In today’s data-driven world, large enterprises are aware of the immense opportunities that data and analytics present. To overcome this, many CIOs originally adopted enterprise data platforms (EDPs)—centralized cloud solutions that delivered insights quickly, securely, and reliably across various business units and geographies.
At Gitex Global 2024, Core42, a leading provider of sovereign cloud and AI infrastructure under the G42 umbrella, signed a landmark agreement with semiconductor giant AMD. The partnership is set to trial cutting-edge AI and machine learning solutions while exploring confidential compute technology for cloud deployments.
VMware Cloud Foundation on Google Cloud VMware Engine (GCVE) is now generally available, and there has never been a better time to move your VMware workloads to Google Cloud, so you can bring down your costs and benefit from a modern cloud experience. Lets take a look at these announcements in greater depth.
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.
Allegis had been using Eclipse for 10 years, when the system was acquired by Epicor, and Allegis began exploring migrating to a cloud-based ERP system. We really liked [NetSuite’s] architecture and that it’s in the cloud, and it hit the vast majority of our business requirements,” Shannon notes.
“You either move the data to the [AI] model that typically runs in cloud today, or you move the models to the machine where the data runs,” she adds. “I For most users, mainframe modernization means keeping some mission-critical workloads on premises while shifting other workloads to the cloud, Goude says.
But the more analytic support we have, the better,” Gonzalo Gortázar CEO of CaixaBank, told IBM. A client once shared how predictive analytics allowed them to spot a rising trend in customer preferences early on. Decision-making based on intuition, common sense, and knowledge is very good and should never be lost.
Azures growing adoption among companies leveraging cloud platforms highlights the increasing need for effective cloud resource management. Enterprises must focus on resource provisioning, automation, and monitoring to optimize cloud environments. As Azure environments grow, managing and optimizing costs becomes paramount.
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.
The products that Klein particularly emphasized at this roundtable were SAP Business Data Cloud and Joule. Business Data Cloud, released in February , is designed to integrate and manage SAP data and external data not stored in SAP to enhance AI and advanced analytics.
For instance, Capital One successfully transitioned from mainframe systems to a cloud-first strategy by gradually migrating critical applications to Amazon Web Services (AWS). Additionally, leveraging cloud-based solutions reduced the burden of maintaining on-premises infrastructure. Also, reexamine current practices and processes.
Re-platforming to reduce friction Marsh McLellan had been running several strategic data centers globally, with some workloads on the cloud that had sprung up organically. Simultaneously, major decisions were made to unify the company’s data and analytics platform.
AWS decided to leave the debate to others by combining the best of both capabilities in a new service announced today at AWS re:Invent called Neptune Analytics. There’s been a debate of sorts in AI circles about which database is more important in finding truthful information in generative AI applications: graph or vector databases.
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.
We organize all of the trending information in your field so you don't have to. Join 49,000+ users and stay up to date on the latest articles your peers are reading.
You know about us, now we want to get to know you!
Let's personalize your content
Let's get even more personalized
We recognize your account from another site in our network, please click 'Send Email' below to continue with verifying your account and setting a password.
Let's personalize your content