Systems | Development | Analytics | API | Testing

Resume builders in the age of AI: How to future-proof your testing career

Just a few years ago, AI’s effect on software development was debatable — would it be as transformative as everyone predicted? But its impact is undeniable. In a 2024 survey, a majority of developers reported using AI in development, a sharp increase from the year before. In a short period of time, developers adapted, integrating agentic AI into their daily operations to boost productivity. Quality assurance teams are not far behind.

HIPAA Compliance Requirements: A Must-Read Guide to Securing PHI in Non-Prod

Health Insurance Portability and Accountability Act (HIPAA) compliance is non-negotiable for any organization handling protected health information (PHI). But as data volumes grow and non-production environments multiply, protecting PHI without slowing innovation is harder than ever. This is a common and complex challenge faced by many organizations.

Enterprise AI that's Ready for Serious Work: Introducing Appian Composer and Agent Studio

AI agents have exploded. And we use this term intentionally. Tech vendors rushed to put out agent products that don’t stand up to enterprise use with results that were mostly underwhelming and sometimes even catastrophic. Appian took a different approach. While companies are now scrambling to validate the efficacy of their AI, Appian’s AI is field-tested, so the products you get are ready to use and safe to deploy from day one.

How to Choose AI-Powered ETL for Non-Technical Teams

Data teams spend 45% of their time on data preparation, which stifles business growth and delays critical insights. With the ETL market projected to grow from $533 million to $1.28 billion by 2034, businesses face an overwhelming array of choices. Yet traditional ETL tools require specialized coding expertise that non-technical teams simply don't have, creating dangerous dependencies on overburdened IT departments.

AI-Powered Integration: Turning Complex Workflows into Simple Commands

Data integration has long been one of the most time-intensive parts of enterprise IT. Connecting multiple systems, reconciling formats, and ensuring data reaches its destination reliably often requires weeks of preparation before the first record moves. But with AI-powered integration, that timeline compresses dramatically. What once took weeks can now be designed, validated, and delivered in minutes.

What Is A Test Environment? A Complete Guide For Developers

A test environment is a controlled setting that includes software, hardware, network configuration, test data, and testing tools, where applications can be set up and validated before they are delivered to real users. It can be understood as a safe space for developers and QA engineers to do an assessment of how an application performs under expected real-world usage conditions.

Benchmarking Ingestion Costs and Performance of Qlik Open Lakehouse Vs a Data Warehouse

As the demand for data to power AI models and real-time decision making continues to grow, organizations are increasingly looking for ways to simplify and optimize the ways to ingest, and process fresh data within the enterprise. On average, organizations allocate 20–50% of their annual data warehouse spend on compute for data ingestion, amounting to millions of dollars in costs for large enterprises.