Data Scientist Python - Start-up


Premium Job From Client Server

Recruiter

Client Server

Listed on

5th February 2019

Location

Cambridge

Salary/Rate

£35000 - £50000

Type

Permanent

This job has now expired please search on the home page to find live IT Jobs.

Data Scientist (Python PhD Machine Learning Pandas NumPy SciPy). Exciting opportunity for a Data Scientist to join a dynamic and technology driven company that has a number of interesting projects in the pipeline for the future. This is a fantastic opportunity for you to develop your skills and progressively take on more responsibility as the company grows.

Established start-up is seeking a bright and ambitious Data Scientist to join their talented team who are developing disruptive applications within the energy space utilising Machine Learning techniques. As a Data Scientist you'll apply your analytical skills to further improve the company's systems and energy services. Your team will mentor you in pattern extraction, signal processing, anomaly detection and regression techniques allowing you to reach your full potential and make your mark on the company.

Based in Cambridge, close to the science park, you will join a friendly and collaborative company where you can enjoy a number of benefits including a pension scheme, a free annual health check and more!

Requirements:

*Previous Python development experience

*Degree educated in Computer Science or similar (2:1 or above) and likely to have a PhD

*Good mathematical, data analytics and problem solving skills

*Familiar with Machine Learning techniques, Pandas, NumPy and SciPy

*Excellent communication and collaboration skills

*Desirable: knowledge of anomaly detection and regression techniques

As a Data Scientist (Python) you can expect to earn a competitive salary (up to £50k) plus benefits.

Apply today or call to have a confidential discussion about this Data Scientist (Python) role.

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