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Data Scientist

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  • Posted 6 days ago
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Early Applicant

Job Description

Job Title: Azure Data Scientist

Location: Pan India

Experience: 8–12+ Years

Key Skills:

  • Strong expertise in Python (NumPy, Pandas, Scikit-learn, TensorFlow/PyTorch) & SQL
  • Experience with Azure Databricks, Synapse, Azure ML, PySpark, MLflow
  • Knowledge of ML techniques (NLP, forecasting, deep learning, anomaly detection)
  • Strong foundation in statistics, feature engineering, and model tuning
  • Experience with ML deployment, CI/CD, and MLOps tools

Responsibilities:

  • Build and deploy ML models and scalable pipelines
  • Perform data analysis and generate insights from large datasets
  • Collaborate with Data Engineering & MLOps teams for production systems
  • Communicate insights via dashboards and presentations
  • Lead solution design and mentor team members

Preferred:

  • Experience in NLP, time series, deep learning
  • Exposure to Azure DevOps, CI/CD, IaC
  • Relevant Azure/Data Science certifications

More Info

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Job ID: 148989565

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