Actian Vector

Analyze billions of rows in milliseconds

Get faster analytics and lower data processing costs with a true in-memory columnar analytics database trusted by the world’s most regulated companies.

Vector with Actian

Reduce the cost and complexity of your data infrastructure without sacrificing performance

Backed by patented technology and built for performance and scalability, Vector uses a distributed and columnar engine with parallel query processing that allows customers to store more data and analyze it faster.

blue Vector Icon for Actian

Vectorized processing

SIMD vectorization for faster analytical queries.

cpu icon

CPU cache as execution memory

100x faster than RAM to execute without lags.

blue HCL Informix Icon for Actian

Multicore parallelism

Maximize concurrency while enabling load prioritization.

blue database icon for Actian

Data lake ingestion

Easily load CSV, Parquet and ORC files through External Tables into Vector.

Connection icon

Pure column store

Zero penalty real-time data retrieval and updates.

Smart Compression icon

Smart compression

Maximize throughput for real-time applications.

The analytics database behind ambitious companies

Because Actian Vector can deliver extraordinary performance using only a small number of commodity compute nodes, the solution has exceeded the performance and functionality benchmarks of Netezza while lowering overall cost of ownership.

"Actian allows us to reliably unify data for pharmacies across the Netherlands. As a result, we can confidently assist pharmacists in the daily practice of their profession."

"With fast and actionable business analytics from Vector, we can deliver tailored offers and recommendations to our customers and advertising partners, and thus improve monetization of the games we develop."

Real-time data analytics simplified

Vector can support any workload or analytics use case with millisecond latency and zero performance bottlenecks. Deploy on-premises, and on AWS, Azure, and Google Cloud with little or no database tuning.

Maximum performance, speed, and scalability

Process queries on historical and real-time data with sub-second and millisecond response times so you can make fast, informed decisions with confidence.

Support complex workloads with Actian Vector

Support for complex and diverse workloads

Store and query data outside of traditional structures so you can work with diverse data formats, sizes, and analytical workloads effortlessly.

Enterprise-class security and compliance

Operate in the toughest data environments with encryption at rest and in transit, and dynamic data masking to govern and secure your data.

Book a Demo

Deliver zero penalty real-time updates

Make complex data analysis simple with Vector.

 

Actian Vector Overview

Fast, feature-rich, and easy to use

Enjoy all of the must-have features for advanced analytical capabilities along with simplicity, speed, and scale. Database admins will love the fast implementation. Just download and set up.

Find a partner icon

Performant

MPP architecture results in increasing scalability and performance of queries and supports more complex analytics tasks.

Auto partitioning leads to faster query execution and better resource management, allowing users to focus on analysis rather than database tuning.

Automatic storage indexes enable typical OLAP queries to access only a fraction of the full data set, significantly improving query performance.

blue dataflow icon for Actian

Versatile

Spark UDFs to enable advanced data transformations and analytics.

REGEX pattern matching allows for more advanced search functionalities, enabling users to efficiently handle complex queries and improve data retrieval accuracy. 

Advanced external tables allow users to perform complex and customized data operations directly within their analytics workflows.

blue Actian support security icon

Secure

Protect sensitive data with encryption at rest and in transit with the ability to re-key the database with new encryption keys.

Dynamic data masking and column-level de-identification provide a safe way to share data across stakeholders.

Phased, non-disruptive migrations move suitable workloads to the cloud while those that should remain on-premises run on amortized infrastructure for lower TCO.

Explore More