Data Science Associate

Monito
Greater London
9 months ago
Applications closed

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Metyis is growing! We are looking for a Data Science Associate with 3-4 years of experience to join our Data and Analytics team in London.



Who we are

Metyis is a global and forward-thinking firm operating across a wide range of industries, developing and delivering Big Data, Digital Commerce, Marketing & Design solutions and Advisory services. At Metyis, our long-term partnership model brings long-lasting impact and growth to our business partners and clients through extensive execution capabilities.

With our team, you can experience a collaborative environment with highly skilled multidisciplinary experts, where everyone has room to build bigger and bolder ideas. Being part of Metyis means you can speak your mind and be creative with your knowledge. Imagine the things you can achieve with a team that encourages you to be the best version of yourself.

We are Metyis. Partners for Impact.

We are looking for a Data professional to join our Data Science team. As a Data Science Associate, you are responsible for turning our clients’ business a more data-driven one, where data is used to drive action in every team, every day.

What we offer

  • Interact with our clients on regular basis, to drive their business towards impactful change.

  • Work in multidisciplinary teams and learn from motivated colleagues.

  • A chance to take responsibility for your work, develop yourself every day and take full ownership of your career.

  • Become part of a fast growing international and diverse team.

What You Will Do

  • Perform data analysis in the field of Growth Revenue Management, Marketing Analytics, CLM/CRM Analytics and/or Risk Analytics.

  • Conduct analyses in typical analytical tools ranging from SAS, SPSS, Eviews, R, Python, SQL, Teradata, Hadoop, Access, Excel, etc.

  • Communicate analyses via compelling presentations.

  • Solve problems, disaggregate issues, develop hypotheses and develop actionable recommendations from data and analysis.

  • Prepare and facilitating workshops.

  • Manage stakeholders and communicating with executives.

  • Coach and mentor team members.

What you'll bring

  • 3-5 years of professional work experience in the analytics domain.

  • An advanced degree in a quantitative field (e.g. mathematics, computer programming, etc.).

  • An ability to think analytically, decompose problem sets, develop hypotheses and recommendations from data analysis.

  • Strong technical skills regarding data analysis, statistics, and programming. Strong working knowledge of, Python, Hadoop, SQL, and/or R.

  • Working knowledge of Python data tools (e.g. Jupyter, Pandas, Scikit-Learn, Matplotlib).

  • Ability to talk the language of statistics, finance, and economics a plus.

  • Profound knowledge of the English language.

In a changing world, diversity and inclusion are core values for team well-being and performance. At Metyis, we want to welcome and retain all talents, regardless of gender, age, origin or sexual orientation, and irrespective of whether or not they are living with a disability, as each of them has their own experience and identity.

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