Data Scientist, India

Theneostats
Gravesend
1 month ago
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About the Job

NeoStats is a new age, Data & Analytics firm offering contemporary solutions and infinite possibilities. Our mission is to create a lasting competitive advantage for our clients by transforming them into world-class, data-driven organizations. Established in 2022 to provide End to End Data & Analytics Services, we are headquartered out of UAE, with bases in India & UK. Comprising industry veterans, we enable structural transformations in Analytics powered by our expertise, true partnership, and e2e implementation approach.We are looking for highly talented Data Scientist to join our team in Bengaluru, India. If youare looking for a place where you can gain hands-on experience and create a direct impact,then this may be the place for you! The ideal candidate will have a track record as a>significant individual contributor as well as a strong team player.


Responsibilities

  • Consult to understand business needs and translate those into technical outcomes relating to effective data solutions. Identify, interpret, and communicate meaningful insights, conclusions, and report to clients.
  • Work with the team to produce end-to-end data analytics and BI solutions, including MIS, predictive models, experimentation frameworks, and deep analysis.
  • Play an integral role in data preparation and data wrangling for exploratory data analysis and building AI solutions. Gather, engineer, and prepare data for stakeholders to enable smarter decision making. Use a broad set of data curation and analytical tools and techniques to enable the development of quantitative and qualitative business insights.
  • Identify problems and analyze the development of KPIs. Deep dive and extract, organize, analyze, and visualize data using Power BI. Support management with important strategic analysis and recommendations.

Candidate Profile

  • Bachelor’s or Master’s degree in Statistics, Mathematics, Quantitative Analysis, Computer Science, Software Engineering or Information Technology.
  • 3+ years’ experience in data science with banking exposure.
  • Proficiency in SQL and Python; familiarity with SAS, Scala or Spark is a plus.
  • Experience in development and deployment of predictive models and clustering methods using languages such as Python or R. SAS is a plus.
  • Experience in translating non-trivial business requirements into data science solution, developing and deploying models (preferably to cloud-based environments) and presenting outcomes.
  • Strong team player that is flexible and creative learning and delivering in different technologies.
  • Ability to learn and lead with minimal oversight and work on several research projects at the same time.
  • Proven success in contributing to a team-oriented environment.
  • Ability to simplify and explain complex topics to stakeholders and non-technical audience.

What we offer:

  • Competitive Salary and Benefits.
  • Opportunity to be part of a fast-paced and growing startup. Grow your career with the company.
  • Ownership – You will own your initiative and be given specific responsibilities.
  • Continuous coaching & mentoring – You will have the opportunity to interact and work closely with other senior data scientists and AI experts across the globe.
  • Dynamic and respectful work environment – we truly value you.

Location – Bengaluru, India


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