This role involves working closely with customers, product, and engineering teams to onboard new clients, configure solutions, and validate data. Key responsibilities include deploying and monitoring machine learning models in production, executing ML pipelines, interpreting model performance, and providing insights to stakeholders. The Data Scientist will also troubleshoot issues, gather customer feedback for product enhancements, and contribute to documentation and mentoring.
Good To Have:- Experience in supply chain, retail, or similar domains.
Must Have:- Onboard new clients and configure solutions to their data and business needs.
- Validate data quality and integrity.
- Deploy and monitor machine learning models in production.
- Execute existing ML pipelines to train new models and assess their quality.
- Interpret model performance and provide insights to customers and internal teams.
- Communicate technical concepts clearly to non-technical stakeholders.
- Provide actionable feedback to product and R&D teams based on field experience.
- Perform data validation, enrichment, and transformation for modelling.
- Evaluate and interpret model performance metrics to ensure quality and stability.
- Monitor model behaviour and data drift in production environments.
- Troubleshoot issues related to data pipelines, model behaviour, and system integration.
- Explain model behaviour, configuration, and performance to customer stakeholders.
- Gather insights from customer engagements and provide structured feedback.
- Document processes and contribute to playbooks for scalable onboarding.
- Train and mentor junior PS team members.
- Bachelor’s or master’s in computer science, Data Science, or related field.
- 5 to 10 years of experience.
- Strong understanding of machine learning and data science fundamentals.
- Proven experience deploying and supporting ML models in production.
- Experience executing ML pipelines and interpreting model performance.
- Excellent problem-solving and debugging skills.
- Strong communication skills.
- Experience working directly with customers or cross-functional teams.
- Familiarity with monitoring tools and best practices for production ML systems.
- Experience with cloud platforms (Azure or GCP preferred).