The Context Graph Paradox: When More Data Makes AI Agents Worse
Discover why context graphs fail at scale and how semantic structure delivers reliable runtime context for enterprise AI agents.
As we step into 2024, we partnered with Database Trends & Applications (DBTA.com) to take stock of the rapidly evolving landscape. Data Engineers play a key role in making data ready to use for any data-driven application. The excitement for Generative AI in executive boardrooms last year and the race to leverage LLMs have caused a surge in demand for data engineering.
These forces are not only reshaping the data engineering landscape but also raising the bar for skills required in the field. We put together a list of top data engineering skills to adapt and thrive in 2024:
The future of data engineering is bright, and those who invest in these skills will undoubtedly be at the forefront of this exciting and dynamic field. To read more about DBTA’s take on the role of data engineers in 2024 and dive into the skills you need to succeed, read the full report here.
Discover why context graphs fail at scale and how semantic structure delivers reliable runtime context for enterprise AI agents.
Enterprise AI agents fail when the context behind their decisions is incomplete, stale, or conflicting. Context engineering ensures agents receive accurate, permission-aware runtime context for reliable decisions.
Explore how a multimodal AI pipeline built with NVIDIA models, Nebius infrastructure, and Nexla orchestration converts social media travel videos into structured itineraries.