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Tabular Reporting - Do More with Qlik Webinar Replay

This session will demonstrate how Tabular Reporting used within Qlik Sense Applications enables users to efficiently address and manage common operational report creation and distribution requirements. Attendees will discover how report developers can create formatted Excel Templates directly from Qlik data and visualizations. The webinar will also highlight the power of governed Report Tasks, showcasing the seamless distribution and “bursting” of reports to stakeholders. By leveraging Tabular Reporting, the Qlik platform becomes the central source for crucial operational decisions, customer communications, and more.

Helix Core Introduces S3 Storage Support

As organizations continue to migrate to the cloud and search for ways to reduce costs, Perforce has released Helix Core 2023.2 – giving users the ability to connect their archive depots to S3-backed (or S3-compatible) cloud object storage. S3 storage support offers users a durable and convenient solution that grows automatically and indefinitely. In the following article I explain S3 storage, diving into the benefits of using S3 storage, and how to get started using S3 Storage within Helix Core.

AI, mobile testing, and increased test automation: A look ahead at trends that will dominate the testing and quality engineering landscape in 2024

We asked executives across Tricentis for their thoughts on topics that have the testing industry buzzing: artificial intelligence (AI), mobile testing, and increasing reliance on low-code/no-code testing solutions. Read on for Tricentis insiders’ take on these hot topics and how they impact the future of the industry.

LLMOps vs. MLOps: Understanding the Differences

Data engineers, data scientists and other data professional leaders have been racing to implement gen AI into their engineering efforts. But a successful deployment of LLMs has to go beyond prototyping, which is where LLMOps comes into play. LLMOps is MLOps for LLMs. It’s about ensuring rapid, streamlined, automated and ethical deployment of LLMs to production. This blog post delves into the concepts of LLMOps and MLOps, explaining how and when to use each one.

Accelerating Queries on Iceberg Tables with Materialized Views

This blog post describes support for materialized views for the Iceberg table format in Cloudera Data Warehouse. Apache Iceberg is a high-performance open table format for petabyte-scale analytic datasets. It has been designed and developed as an open community standard to ensure compatibility across languages and implementations.

6 Ways Marketers Are Using Generative AI: Is It Really Saving Time?

AI was the hot topic of 2023 and will continue to reign in 2024: ChatGPT first launched at the end of 2022 and became a massive hit in just a few months. Google released Bard shortly after, and then, new AI tools just kept popping up, prompting marketers to learn how to leverage them to become more efficient and productive.

Accelerate Gen AI Securely With Snowflake Cortex And Snowpark Container Services

Fueled by vast data volumes and powerful computing, AI is revolutionizing work. To capture the value of Generative AI for business, companies need to customize LLMs with their enterprise data. But feeding sensitive data into externally hosted LLMs poses security and exposure risks, and self-hosting LLMs carry a heavy operational burden from maintaining complex environments.

Understanding White Box Testing of #AI Models | Toni Ramchandani | #softwaretesting #testautomation

In this informative session, Toni Ramchandani sheds light on the essential practice of white box testing of AI Models, where participants will uncover the internal mechanics of AI models, gaining valuable insights into neuron activation, layer functions, and model interpretability. From honing skills in robustness and reliability testing to addressing bias and fairness concerns, attendees will explore a comprehensive range of topics crucial for ensuring the effectiveness and ethicality of AI systems.