Senior Data Scientist Engineering & Tech · Mumbai · Hybrid Remote

Collinson Group
London
1 week ago
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The Senior Data Scientist will be responsible for the following:

  • Advanced Analytics and Model Development:Design, develop, and deliver sophisticated data products, including problem definition, data acquisition, data exploration and visualization, feature engineering, algorithm experimentation, machine learning model development, evaluation, and deployment.
  • Innovation and Prototyping:Drive innovation by rapidly prototyping proof-of-concept ideas and converting them into enterprise solutions.
  • Large Language Models (LLMs):Develop and implement advanced LLMs for various applications, enhancing the company’s capability in natural language processing and understanding.
  • Forecasting:Implement advanced forecasting techniques to predict future trends and behaviours, providing valuable insights for decision-making.
  • Customer Lifecycle Management:Analyse customer data to optimize customer lifecycle management strategies, enhancing customer engagement and retention.
  • Intelligent Products:Develop intelligent products that leverage AI and machine learning to deliver enhanced customer experiences and operational efficiencies.
  • Stakeholder Management:Produce detailed reports and presentations to effectively communicate findings and recommendations to stakeholders at various levels.
  • Infrastructure Management:Oversee the management and optimization of our AWS infrastructure to ensure robust, scalable, and cost-effective data solutions.
  • Mentorship and Team Development:Mentor junior data scientists, fostering a culture of continuous learning and professional growth within the team.

Team Working

  • Actively contribute to the Data Science team dynamics and improvements.
  • Engage in internal Business Intelligence and Analytics communities to share knowledge and improve team processes.
  • Provide regular and accurate reports of progress to technical leads and the Project lead where required.
  • Build strong relationships with stakeholders to provide high-value solutions within the business while keeping communication channels open.
  • Maintain strong technical awareness and familiarity with new and upcoming technologies around Data Integration and Business Intelligence Analysis.
  • Be prepared to give presentations or provide mentoring on any new technology or skills acquired in a collegiate environment.
  • Stay abreast of industry trends and participate in external communities to keep up-to-date and offer informed positions when defining or consulting on solution design.

Knowledge:

  • Extensive knowledge of data science techniques, including data preparation, exploration, and visualization.
  • In-depth understanding of data mining techniques in one or more areas of statistical modelling methods, time series, text mining, optimization, information retrieval.
  • Proven ability to produce workflows using classification, clustering, regression, and dimensionality reduction.
  • Expertise in prototyping and applying statistical analysis and modelling algorithms to solve complex problems in new domains.

Qualifications

  • Bachelor’s or master’s degree in computer science, Data Science, Machine Learning, or a related field. Ph.D. is a plus.
  • 5+ years of experience in machine learning, data science, or related roles, with a strong track record of developing Data Science powered data products in an agile environment.
  • Proficiency in programming languages such as Python, R with a focus on machine learning libraries and frameworks (e.g., TensorFlow, Py-Torch, scikit-learn).
  • Extensive experience with SQL and related relational databases.
  • Strong understanding of statistical analysis, data mining, and predictive modelling techniques.
  • Excellent problem-solving skills and the ability to think critically and creatively.
  • Strong communication and collaboration skills, with the ability to work effectively in a team-oriented environment.
  • Proven ability to manage business stakeholders, translate business needs into technical requirements, and deliver impactful solutions.
  • Experience with version control systems (e.g., Git) and agile development methodologies.

Preferred Qualifications

  • Experience of working on projects centred around – Forecasting, Customer Lifecycle Management and Dynamic Pricing.
  • Experience of taking projects from prototype to delivery stages while operating in agile development methodologies.
  • Experience of working with AWS Technologies – Storage (RDBMS, S3, Redshift etc.), Compute (EC2, Lambda, Kinesis, EMR etc.) and Data Science related managed services (Sagemaker, AWS Forecast, Bedrock etc.).

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