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Granica is seeking a Senior Software Engineer to build foundational data systems for AI, addressing inefficiencies in data that limit AI models. The role involves architecting global metadata substrates, developing adaptive engines for autonomous data reorganization, and optimizing data layouts for maximum signal per byte. You will build systems for intelligent data layout, autonomous compute pipelines, and research-to-production implementation, focusing on minimizing latency between questions and insights. This position is ideal for engineers passionate about the next leap in AI coming from efficient systems.
AI today is limited not only by model design but by the inefficiency of the data that feeds it. At scale, each redundant byte, each poorly organized dataset, and each inefficient data path slows progress and compounds into enormous cost, latency, and energy waste.
Granica’s mission is to remove that inefficiency. We combine new research in information theory, probabilistic modeling, and distributed systems to design self-optimizing data infrastructure: systems that continuously improve how information is represented and used by AI.
This engineering team partners closely with the Granica Research group led by Prof. Andrea Montanari (Stanford), bridging advances in information theory and learning efficiency with large-scale distributed systems. Together, we share a conviction that the next leap in AI will come from breakthroughs in efficient systems, not just larger models.
At Granica, you'll help build the next generation of enterprise AI—from exabyte-scale data infrastructure, Large Tabular Models (LTMs), and stateful AI agents. Together, we're creating the infrastructure that enables enterprises to own their data, own the intelligence built on it, and scale both efficiently.