Posted on: 28/10/2025
Description :
Scope :
You will work closely with customers, product teams, and engineering to :
- 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 both 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.
Our Technical Environment :
- Languages : Python, SQL
- Frameworks/Tools : TensorFlow, PyTorch, Pandas, NumPy, Jupyter, Flask
- Big Data & Cloud : Snowflake, Apache Beam/Spark, Azure, GCP
- DevOps & Monitoring : Docker, Kubernetes, Kafka, Pub/Sub, Jenkins, Git, TFX, Dataflow
What Youll Do :
- Collaborate with customers and internal teams to understand data, business context, and deployment requirements.
- Perform data validation, enrichment, and transformation to ensure readiness for modelling.
- Execute pre-built ML pipelines to train and retrain models using customer data.
- 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.
- Clearly explain model behaviour, configuration, and performance to customer stakeholders.
- Gather insights from customer engagements and provide structured feedback to product and engineering teams to drive product enhancements.
- Document processes and contribute to playbooks for scalable onboarding.
- Train and mentor junior PS team members.
What Were Looking For :
- Bachelors or masters in computer science, Data Science, or related field with 5 to 8 yrs 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 with the ability to explain complex technical topics to non-technical audiences.
- 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).
- Bonus : Experience in supply chain, retail, or similar domains.
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