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[PROCESO CERRADO] Mobility Analytics Data Scientist NOMMON

MIOTI | Madrid Internet of Things Institute
united kingdom
2 months ago
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Over the past decade, Nommon has been a pioneer in the application of big data to the analysis of travel demand. Our Mobility Insights solution processes and analyses anonymised mobile network data and other geolocation data from mobile devices to provide high-quality mobility indicators (e.g., origin-destination matrices). An ambitious research and development strategy has put Nommon at the forefront of innovation in the mobility analytics market and has led to continuous growth. We are looking for Mobility Analytics Data Scientists (0-5 years of experience) to join our Mobility Analytics department in Madrid. The selected candidates will deploy our industry-leading analytics solutions for a variety of clients (transport authorities, transport operators and concessionaires, transport consultants, etc.) in different geographical markets, including Spain, UK, Brazil, Mexico and Colombia, among others.

Job description:

The candidate will work alongside a multidisciplinary team to deliver projects for our clients. Responsibilities include:

  1. Lead and implement transport planning and traffic engineering projects based on our solution portfolio.
  2. Collaborate with the product development team in the continuous improvement of Nommon’s Mobility Insights solution, by assessing client feedback and deriving recommendations and lessons learnt.
  3. Support business development activities (e.g., proposal writing).

Qualifications and skills:

Required:

  1. MSc/PhD in a relevant scientific field (Engineering, Mathematics, Physics, etc.), preferably with background in Transport Engineering.
  2. Outstanding academic record.
  3. Basic knowledge of concepts, principles and theories of transport planning and modelling.
  4. Strong mathematical and statistical background.
  5. Excellent analytical and numerical skills.
  6. Excellent English and Spanish oral and written communication skills.

Nice to have, but not indispensable:

  1. Experience in transport planning and/or traffic management projects.
  2. Experience/knowledge in transport simulation software packages (e.g., VISUM, Aimsun, TransCAD, CUBE, etc.).
  3. Experience/knowledge in the use of new data sources (e.g., mobile network data, GPS tracks, Bluetooth, public transport smart cards, etc.) for the analysis of mobility and transport demand.
  4. Good command of Portuguese.
  5. Experience/knowledge in mathematical programming and data analytics.
  6. Experience/knowledge in data visualisation.

Salary and benefits:

  1. Annual salary: 32.000 – 42.500 €.
  2. Flexible working hours and possibility to work remotely up to 2 days per week.
  3. Nice, well-located office in the centre of Madrid.
  4. Long term and stable position.
  5. Regular performance and salary reviews.

February 2024


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