Data Scientist

Michael Page
Addlestone
1 month ago
Applications closed

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Competitive Salary

  • Competitive Salary
  • PF and Gratuity

About Our Client

Our client is an international professional services brand of firms, operating as partnerships under the brand. It is the second-largest professional services in gas station and conveninent store in the world


Job Description

Data Scientist


Job Requirements Education

  • Bachelor's degree required, preferably with a quantitative focus (Statistics, Business Analytics, Data Science, Math, Economics, etc.)
  • Master's degree preferred (MBA / MS Computer Science / Computer Science, etc.)

Relevant Experience

  • 3 - 4 years for Data Scientist
  • Relevant working experience in a data science / advanced analytics role

Behavioural Skills

  • Delivery Excellence
  • Business disposition
  • Social intelligence
  • Innovation and agility

Knowledge

  • Functional Analytics (Supply chain analytics, Marketing Analytics, Customer Analytics, etc.)
  • Statistical modelling using analytical tools (R, Python, KNIME, etc.)*Knowledge of statistics and experimental design (A / B testing, hypothesis testing, causal inference)
  • Practical experience building scalable ML models, feature engineering, model evaluation metrics, and statistical inference.
  • Practical experience deploying models using MLOps tools and practices, (MLflow, DVC, Docker, etc.)
  • Strong coding proficiency in Python (Pandas, Scikit-learn, PyTorch / TensorFlow, etc.)
  • Big data technologies & framework (AWS, Azure, GCP, Hadoop, Spark, etc.)
  • Enterprise reporting systems, relational (MySQL, Microsoft SQL Server etc.), non-relational (MongoDB, DynamoDB) database management systems and Data Engineering tools
  • Business intelligence & reporting (Power BI, Tableau, Alteryx, etc.)
  • Microsoft Office applications (MS Excel, etc.)

Location

Gurgaon, WFO


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