Time-Series Analytics for Big, Fast Data
23 Jul 2018, 6:00 pm
Since the company’s inception, Kx’s singular goal has been to provide its customers with the fastest, most efficient, and most flexible tools for processing real-time and historical data. This focus has enabled us to become the worldwide leader in high-volume, high-performance time-series databases. Kx Technology is an integrated platform that includes a high-performance historical time-series column-store database, an in-memory compute engine, and a real-time event processor all with a unifying expressive query and programming language. Designed from the start for extreme scale, and running on industry standard servers, Kx Technology has been proven to solve complex problems faster than any of its competitors.
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We invite you to explore a career within our Data Science practice, where we take seriously our commitment to stimulate, challenge, develop, reward and care for our employees. Whether you are a recent graduate with a desire to kick-start your career or an experienced technologist seeking a new challenge – Kx offers prospects to match your potential. For more information, Click here
We’re holding our next Kx Meetup on Monday 23rd July – we hope you can join!
We will be explaining how Kx supports streaming analytics on extremely large datasets that would simply swamp traditional technologies. This talk is a perfect opportunity to learn about the power and scalability of Kx and how it can be applied to real-life business problems across a range of traditional industries.
Join us for an evening of exciting talks from Data Science industry leaders and experts with pizza and beers. We look forward to seeing you there!
- 6:00 pm - Registration & Nibbles
- 6:15 pm - Intro & Welcome
- 6:30 pm - “Time Series Analytics for Big Fast Data”
- 7:05 pm - Q&A
- 7:30 pm - Networking & Mingling