NStack

General Information
Company Name
NStack
Founded Year
2015
Location (Offices)
London, United Kingdom +1
Founders / Decision Makers
Number of Employees
11-50
Industries
API, Analytics, Cloud Infrastructure +2
Funding Stage
Convertible Note
Social Media

NStack - Company Profile

NStack, founded in 2015, is a United Kingdom-based startup that focuses on helping data scientists run more experiments. The company allows users to deploy Python models and build analytics workflows in minutes. With a core focus on API, Analytics, Cloud Infrastructure, Developer Tools, and Enterprise Software, NStack received a Convertible Note investment from Acequia Capital (AceCap) on December 10, 2020. This strategic investment can potentially fuel NStack's growth, innovation, and market expansion.

Taxonomy: Python, Predictive Modeling, Workflow Automation, Data Integration, Data Experimentation, Data Sources, Model Deployment, Customer Value, Platform, London, Data Tools

Funding Rounds & Investors of NStack (4)

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Funding Stage Amount No. Investors Investors Date
Convertible Note Unknown 1 Acequia Capital (AceCap) 10 Dec 2020
Convertible Note Unknown 1 Acequia Capital (AceCap) 12 Jun 2018
Convertible Note Unknown - 16 Dec 2015
Venture Round Unknown 1 01 Jun 2015

Latest News of NStack

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No recent news or press coverage available for NStack.

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