Application search that scales
Deliver relevant and fast results by combining vector, full-text, and keyword search in one runtime.

Do more with your data
0x
up to 100x faster queries
0%
up to 80% cost savings on data lakehouse spend
0x
increase in data reliability for critical workloads
Modern application search mandates a hybrid approach
Building great application search demands a blend of search methods: keyword for precision, full-text for context, and vector for semantic meaning. Most teams struggle to combine them effectively without standing up separate engines or ETL pipelines. The result is fragmented search logic, inconsistent results, and slower performance.
Relevant and fast application search
Ship application search that combines multiple methods, predictable performance, and full data governance.
Hybrid search out-of-the-box
Blend results for keyword, full-text, and vector similarity using Reciprocal Rank Fusion (RRF). Add per-query weights, filters, and recency boosts so the most relevant and newest results appear first.

Natively integrated with AI
Add categorization, classification, and enrichment directly into your search results using Spice’s SQL AI function. Leverage built-in LLM functions for labeling, summarizing, sentiment, and custom tasks.

Simple to build, easy to scale
Start single-node, then scale out. Tune ranking weights or switch embedding models on demand.

Accelerate locally
Materialize hot data with DuckDB/SQLite or Cayenne acceleration and offload vector loads to scalable object store indexes with Amazon S3 Vectors. Get predictable performance for common queries with index-only reads and filter pushdown.





Deployed in production
Run data-intensive workloads on a high-performance engine trusted by teams building real-time systems at scale.


“Spice opened the door to take these critical control-plane datasets and move them next to our services in the runtime path."
Peter Janovsky
Software Architect, Twilio


0x
Faster queries
“It just spins up and works, which is really nice. The responsiveness is amazing, which is a huge gain for the customer.”
Darin Douglass
Principal Software Engineer, Barracuda


"Partnering with Spice AI has transformed how NRC Health delivers AI-driven insights. By unifying siloed data across systems, we accelerated AI feature development, reducing time-to-market from months to weeks - and sometimes days. With predictable costs and faster innovation, Spice isn't just solving some of our data and AI challenges - it’s helping us redefine personalized healthcare.”
Tim Ottersburg
VP of Technology, NRC Health


“Spice AI grounds AI in our actual data, using SQL queries across all our data. This brings accuracy to probabilistic AI systems, which are very prone to hallucinations.”
Rachel Wong
CTO, Basis Set
Trusted by global enterprises
Build an application search engine that works
Guides and examples to learn more about introducing application search with Spice.
True Hybrid Search: Vector, Full-Text, and SQL in One Runtime
TL;DR Show Me the (Data)! It’s well established (and maybe even trite) to say that enterprises are going all-in on artificial intelligence, with more than $40 billion directed toward generative AI projects in recent years. The initial results have been underwhelming. A recent study from the Massachusetts Institute of Technology’s NANDA initiative concluded that despite the enormous allocation of […]

Real-Time Hybrid Search Using RRF: A Hands-On Guide with Spice
Surfacing relevant answers to searches across datasets has historically meant navigating significant tradeoffs. Keyword (or lexical) search is fast, cheap, and commoditized, but limited by the constraints of exact matching. Vector (or semantic) search captures nuance and intent, but can be slower, harder to debug, and expensive to run at scale. Combining both usually entails standing up multiple engines […]

Making Object Storage Operational for Real-Time and AI Workloads
TLDR Introduction Although legacy systems and workflows remain common, many enterprises are re-evaluating their architectures to meet new demands – driven in part, but not exclusively, by AI – that require support for more data-intensive and real-time applications. The underlying storage needs for these novel workloads are generally outside the bounds of a traditional operational […]

See Spice in action
Get a guided walkthrough of how development teams use Spice to query, accelerate, and integrate AI for mission-critical workloads.
Get a demo
