Why You Need to Secure AI & ML Access that Supports Remote Workers

Even in light of recent return-to-work mandates, it’s clear that the way we work has changed. Remote and hybrid teams are now the norm, and while this shift has brought flexibility, it’s also introduced unique challenges for AI and ML teams. One of the most pressing issues is ensuring seamless access to the compute resources needed to run machine learning workloads.

4 Ways Logi Symphony Leverages AI for Actionable Insights

In the rapidly evolving world of embedded analytics and business intelligence, one important question has emerged at the forefront: How can you leverage artificial intelligence (AI) to enhance your data analysis? According to insightsoftware and Hanover Research’s recent Embedded Analytics Report, developers see AI as the most important trend of the next five years.

Take Control of Your AI Future: Why You Should Own Your AI Agents

Artificial intelligence (AI) is no longer a futuristic concept—it’s here, and it’s transforming the way enterprises operate, innovate, and compete. From automating workflows to delivering data-driven insights, AI is reshaping industries and creating new opportunities. But as AI becomes more integrated into our lives and businesses, a critical question arises: Who owns and controls the AI agents that are increasingly making decisions on our behalf?

Azure for Analytics in 2025 for Data-Driven Decisions

In today's rapidly evolving digital landscape, businesses are inundated with vast amounts of data. Transforming this data into actionable insights is crucial for maintaining a competitive edge. Microsoft Azure stands at the forefront of this transformation, offering a comprehensive suite of analytics tools designed to harness the power of data effectively.

Data Lake Transformations for Modern Analytics

In today’s data-driven world, businesses are navigating an unprecedented surge in information—global data volumes are expected to reach 175 zettabytes by 2025. At the heart of this revolution is the data lake: a flexible, scalable, and cost-effective solution that is redefining how organizations store, process, and extract value from their data.

Data Quality in Snowflake: Best Practices for 2025

Ensuring data quality in Snowflake is critical for organizations that rely on data-driven decision-making. As Snowflake continues to dominate the cloud data warehouse landscape, understanding and leveraging its native data quality features is essential for maintaining trustworthy, accurate, and actionable data.

Do Data Differently: What It Means and Why It Matters

Starting today, you might notice something different from us. A bold new look. A fresher voice. A clear message: Do Data Differently. It’s how we see the world, and how we want the world to see us. Because let’s face it: the pressure on businesses to move faster, cut through complexity, and act with confidence has never been higher.

Beyond Boundaries: Leveraging Confluent for Secure Inter-Organizational Data Sharing

Data is one of a company’s most valuable assets. Its value is often limited, however, by the challenge of sharing it across organizational boundaries in a secure, reliable, and scalable way. Traditional approaches to inter-organizational data sharing have contributed to this. Flat file sharing, API calls, and proprietary solutions all pose different challenges, from security concerns to scalability and development burden.

Why Is My Apache Flink Job Not Producing Results?

Imagine that you have built an Apache Flink job. It collects records from Apache Kafka, performs a time-based aggregation on those records, and emits a new record to a different topic. With your excitement high, you run the job for the first time, and are disappointed to discover that nothing happens. You check the input topic and see the data flowing, but when you look at the output topic, it’s empty. In many cases, this is an indication that there is a problem with watermarks.