This website uses cookies. Read our cookie policy for more information. By continuing to browse this site you are agreeing to our use of cookies.

hidden og tag linkedin

Lead Data Scientist - Deep Learning (Energy Demand Forecasting), London, UK

Job Type:
Job Sector:
Data, Technology
Job Category:
Data Analytics and Insight, Data Science & Data Engineering
70,000 to 100,000 per annum
Job Ref:

Lead Data Scientist - Energy Demand Forecasting with Deep Learning

Xcede's Data Science & Engineering team are working with a hugely exciting start-up in London who are disrupting the way the energy industry works. By providing an automated model for understanding energy consumption on more regular intervals, the company in question are providing a more affordable, and cleaner (energy) service for their customers. While the business model is relatively straight forward, the tech behind it is anything but.

If you're interested in using Deep Learning (RNNs / LSTMs) in an applied setting, this could well be the job for you. With a 3-person team of ex-academics in place (coming from backgrounds focusing on reinforcement learning, deep learning, etc.) we're currently looking for a “hands on” lead data scientist to help guide them in a commercial setting.

Key Responsibilities:

- Design and implement Deep Learning algorithms for the company's core product.
- Help work on company strategy from a data driven perspective.
- Mentor Junior & Mid-Level Data Scientists
- Make more Data Science hires & take part in interviews


- MSc / PhD background in a related Comp Sci / AI / ML related area.
- Commercial experience in an applied ML / DL setting
- Ideally Recurrent Neural Network experience (RNN / LSTMs)
- Some proof of mentoring ideally
- Python, TensorFlow, Spark, AWS (we're pretty flexible though - it's all about the right tool for the right job!)

If you are interested in this or other Data Scientist or Data Engineer positions, please contact Niall Wharton on or +44(0)203 301 9908

Contact Details:
Tel: 0203 301 9908
Fax: 0203 301 9901
Contact: Niall Wharton

You may return to your current search results by clicking here.

Latest Job Listings