Remove Compliance Remove IoT Remove Scalability Remove Storage
article thumbnail

Navigating the data management maze: How emerging tech and modern solutions are revolutionizing mainframe-to-cloud integration

CIO

Technologies such as AI, cloud computing, and the Internet of Things (IoT), require the right infrastructure to support moving data securely across environments. However, enterprises with integration solutions that coexist with native IT architecture have scalable data capture and synchronization abilities.

Cloud 258
article thumbnail

The Importance of Security and Compliance in Enterprise Applications

OTS Solutions

However, as more organizations rely on these applications, the need for enterprise application security and compliance measures is becoming increasingly important. Breaches in security or compliance can result in legal liabilities, reputation damage, and financial losses.

Insiders

Sign Up for our Newsletter

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

Trending Sources

article thumbnail

The impact of AI on edge computing

CIO

Edge processing keeps sensitive data local, addressing privacy concerns and ensuring compliance with data protection regulations. Edge storage solutions: AI-generated content—such as images, videos, or sensor data—requires reliable and scalable storage. This optimization improves efficiency and reduces costs. Resilience.

article thumbnail

The Importance of Security and Compliance in Enterprise Applications

OTS Solutions

However, as more organizations rely on these applications, the need for enterprise application security and compliance measures is becoming increasingly important. Breaches in security or compliance can result in legal liabilities, reputation damage, and financial losses.

article thumbnail

The New Way Companies are Harnessing Data at the Edge for Value Added in Real-Time

CIO

They are playing out across industries with the help of edge computing, Internet of Things (IoT) devices and an innovative approach known as Business Outcomes-as-a-Service. [1] Those using a turnkey, scalable BOaaS platform are quickly able to manage an entire AI and IoT ecosystem from one dashboard, across the cloud, edge and far edge. [4]

IoT 303
article thumbnail

Prioritizing AI? Don’t shortchange IT fundamentals

CIO

In fact, for security, compliance, and efficiency reasons, CIOs will want to carefully manage which data generative AI has access to. As the cost of data storage has fallen, many organizations are keeping unnecessary data, or cleaning up data that’s out of date or no longer useful after a migration or reorganization.

article thumbnail

Fundamentals of Data Engineering

Xebia

The authors divide the data engineer lifecycle into five stages: Generation Storage Ingestion Transformation Serving Data The field is moving up the value chain, incorporating traditional enterprise practices like data management and cost optimization and new practices like DataOps. Architect for scalability. Plan for failure.