
Granica helps enterprises prepare and optimize their data so AI models and analytics run faster, cheaper, and with fewer privacy risks. It applies research-driven techniques—information theory,…

Granica helps enterprises prepare and optimize their data so AI models and analytics run faster, cheaper, and with fewer privacy risks. It applies research-driven techniques—information theory,…
What they do: AI Data Readiness Platform that compresses, curates, and sanitizes data for ML and analytics
Flagship product: Crunch (lossless, entropy-aware compression for data lakes)
Founded / HQ: 2019; Mountain View, California
Funding: $45M reported (early VC / Series A, June 2023)
Target customers: Data- and AI-intensive enterprises (financial services, retail, geospatial, autonomous systems)
Data infrastructure for AI — optimizing storage, compute, and privacy for large-scale ML and analytics
2019
Software Development
$45,000,000
Investors reported to include Bain Capital Ventures, NEA, and individual/backer investors
“Institutional VC backing including Bain Capital Ventures and NEA plus notable individual/backer investors”
Location: Bay Area (Mountain View)
Employment Type: Full-time
Work Model: On-site
Department: Research
Compensation: $160K – $250K + Equity
Granica is building the next generation of .
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Today’s AI systems are limited not only by model design but by the inefficiency of the data that feeds them. At enterprise scale, redundant data, inefficient representations, and poorly optimized learning pipelines create enormous cost and latency.
Granica’s mission is to eliminate that inefficiency.
We combine advances in information theory, machine learning, and distributed systems to design data infrastructure that continuously improves how information is represented and used by AI.
Granica’s research effort is led by Prof. Andrea Montanari (Stanford) and focuses on building learning systems that operate efficiently on large-scale structured and tabular data .
While much of the industry focuses on text or media models, Granica is building the foundations of AI systems that learn directly from structured enterprise data. This role focuses on building machine learning systems for structured and tabular data rather than general LLM application development. The Role
The Applied AI Research Team sits at the intersection of theory and production.
Your work will take ideas emerging from fundamental research and turn them into practical algorithms, optimized pipelines, and production-ready ML systems that operate across petabytes of structured enterprise data. This is a high-ownership role for engineers who can think like researchers and build like systems engineers. You will translate theory into measurable performance improvements and help define the engineering foundations of structured AI. What You’ll Do
Turn research into working systems
Invent and optimize algorithms
Build high-performance ML pipelines
Build hybrid AI systems
Collaborate across research and engineering
Iterate fast and measure everything
What You’ll Bring
Technical Depth
Systems Engineering
Applied Mindset
Bonus Experience
Why This Role Matters
The world’s most valuable data is structured .
Most AI systems today are not built to learn from it efficiently.
Granica is building the systems that close this gap.
Your work will help define the engineering foundations of structured AI — designing the algorithms, pipelines, and infrastructure that enable efficient learning from enterprise data at global scale.
This Role Offers
Compensation & Benefits
At Granica, you will shape the fundamental infrastructure that makes intelligence itself efficient, structured, and enduring. Join us to build the foundational data systems that power the future of enterprise AI! Compensation Range: $160K - $250K