Explore the role of DevOps in establishing reliable AI data and governance frameworks, enhancing your organization's data integrity and operational success.
Table-augmented generation (TAG) and LOTUS bridge AI and databases, enabling complex queries using LLMs. They address the limits of Text2SQL and RAG models.
Streaming SQL enables real-time data processing and analytics on the fly, seamlessly querying Kafka topics for actionable insights without complex coding.
Utilizing AWS SageMaker and Glue to create a fraud detection system using ETL, deep learning, and XGBoost for scalable, efficient, and accurate results.
Automated bug fixing has evolved from simple template-based approaches to sophisticated AI systems powered by LLMs, agents, agentless, and RAG paradigms.
Learn to optimize React apps by diagnosing re-renders, using React.memo, lazy loading, and advanced strategies like context splitting and list virtualization.
AI agents streamline workflows by autonomously processing claims, detecting fraud, ensuring compliance, and enhancing decision-making with real-time insights.
CSS variables revolutionize the theming of apps by allowing theme changes in real time. This makes them suitable for modern apps having features like data visualization.
A data culture fosters data and AI use to improve decision-making, drive innovation, build trust, and ensure organizational success through collaboration.
In this article, learn about AI in agile product teams, gain insights from deep research, and explore what it means for your practice as an agile practitioner.
We will explore the importance of eXplanation in fraud detection models and learn how it can help to understand different patterns of fraud in our system.