Brillio

Senior Data Science Lead

Brillio

full-time

Posted on:

Location Type: Hybrid

Location: BangaloreIndia

Visit company website

Explore more

AI Apply
Apply

Job Level

About the role

  • Translate complex business problems into structured, data- and model-driven narratives. Partner with stakeholders to frame ambiguous problem statements, perform deep exploratory Data Analysis (EDA), Visualizations, Hypothesis A/B Testing/ What-if analysis and scenario modeling, Algorithm development to identify inefficient sectors (DL/UL) by flagging outliers using performance KPIs.
  • Communicate statistically sound, model-backed insights that directly influence strategic and operational decisions.
  • Apply advanced statistical techniques, classical ML, and modern AI approaches to forecast outcomes and recommend next-best actions.
  • Experience in driving initiatives through a rigorous lifecycle—problem formulation → hypothesis generation → EDA → feature engineering → modeling → evaluation → visualization → measurable business impact—ensuring scientific rigor, interpretability, and alignment with business objectives.
  • Develop, evaluate, and iterate on analytical, machine learning, and hybrid AI models to uncover patterns, trends, and anomalies, solving complex problems such as churn prediction, revenue optimization, network efficiency, and operational optimization.
  • Demonstrate strong hands-on expertise in BigQuery, SQL, and Python to build scalable data pipelines, feature stores, and analytical workflows, ensuring performance, reproducibility, and accuracy on large-scale datasets.
  • Ensure consistency and reliability across diverse data sources through strong data validation, monitoring, and governance practices. Maintain trust in analytical and AI-driven outcomes through robust data quality checks, model validation, and ongoing performance monitoring.
  • Collaborate with cross-functional teams (data engineering, SRE, platform, and business teams) to operationalize AI-driven insights, ensure reliability, and deliver measurable business impact.
  • Drive continuous improvement initiatives by integrating feedback loops, monitoring KPIs on data reliability aligned to enterprise goals.
  • Demonstrate analytical mindset and proactive problem-solving abilities.

Requirements

  • Strong proficiency in Advanced SQL with experience in writing optimized queries for large datasets.
  • Expertise in data analytics with a solid understanding of statistical methods and data interpretation.
  • Exposure to Data Science concepts, including predictive modeling and machine learning techniques.
  • Hands-on experience with Python, R, or similar analytical tools is a plus.
  • Experience working with large-scale datasets and business intelligence tools.
  • Strong problem-solving abilities with the capability to translate business problems into analytical solutions.
  • Excellent communication and presentation skills to convey insights effectively to stakeholders.
Benefits
  • Mentorship & Collaboration – Guide junior analysts, promote knowledge sharing, and foster a culture of analytical excellence across teams.
  • Analytical Mindset & Self-Starter – Proactive in identifying opportunities, framing problems, and communicating insights in a business-first language, bridging the gap between data science and strategy.
  • Data Visualization & Dashboards – Transform raw numbers into intuitive dashboards and visual stories that resonate with both technical and non-technical audiences, enabling faster decisions.
  • Familiarity with cloud platforms such as AWS, Azure, or GCP for data processing and analytics.
Applicant Tracking System Keywords

Tip: use these terms in your resume and cover letter to boost ATS matches.

Hard Skills & Tools
Data AnalysisVisualizationsHypothesis TestingA/B TestingAlgorithm DevelopmentMachine LearningStatistical TechniquesFeature EngineeringBigQuerySQL
Soft Skills
Problem-SolvingAnalytical MindsetCommunicationCollaborationProactive