DATA SCIENTIST

Arborimpact
City of London
3 weeks ago
Applications closed

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You need to have knowledge of various programming languages, such as Python, C/C++, SQL, and Java.

Understanding analytical tools such as SAS, Hadoop, Spark, Hive, Pig, and R

LOCATION

London, UK

Toronto, CA

Montreal, CA

New York, NY

Remote work available

EMPLOYMENT TYPE

Contract

Permanent

Intern

Part-Time

What You’ll Do

Adept at Working with Unstructured Data

Creating and executing functions

Working with a front and backend developer to integrate SQL databases and APIs

Who You are

We're looking for someone who is a go-getter

We don't tell smart people how to do their jobs, we're hiring individuals who can take lead and provide ideas - As a start-up, we're always looking for ways to innovate.

Able to manage 10 hours per week at minimum


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