Machine Learning Engineer
Maestro Technologies, Inc.
2 - 5 years
Bengaluru
Posted: 05/02/2026
Job Description
Location : Bangalore
Work : Onsite (Mon - Thu) and Remote on Fri
Job Title
Machine Learning Engineer (Data Engineering Focus) Databricks | Retail Grocery
Overview
We are seeking a Machine Learning Engineer with strong Data Engineering skills to build and operationalize scalable data and ML solutions on Databricks running on Google Cloud Platform (GCP) . This role focuses on developing end-to-end data pipelines, feature engineering, and production ML workflows that power critical retail grocery use cases such as demand forecasting, personalization, promotions, pricing, and inventory optimization .
You will work across data engineering, data science, and platform teams to deliver reliable, production-grade ML systems at scale.
Key Responsibilities
Data Engineering & Platform
- Design, build, and optimize batch and streaming data pipelines using Databricks (Spark / Structured Streaming) .
- Develop robust ETL/ELT pipelines ingesting retail data (POS, transactions, customer, inventory, promotions, supplier data).
- Implement Delta Lake tables with best practices for performance, schema evolution, and data quality.
- Orchestrate pipelines using Databricks Workflows and/or Cloud Composer (Airflow) .
- Ensure data reliability, observability, and cost efficiency across pipelines.
Machine Learning Engineering
- Build and productionize ML pipelines using Databricks MLflow , Databricks Feature Store , and Spark ML / Python ML frameworks .
- Collaborate with data scientists to convert experiments into scalable, reusable ML pipelines .
- Deploy and manage batch and real-time inference workflows within Databricks.
- Optimize model training and inference for performance and cost.
MLOps & Best Practices
- Implement ML lifecycle management using MLflow (experiment tracking, model registry, versioning).
- Enable CI/CD for data and ML pipelines using Git-based workflows.
- Monitor model performance, data drift, and pipeline health.
- Enforce best practices around testing, code quality, and reproducibility .
Retail Analytics & Collaboration
- Partner with business, analytics, and product teams to translate retail grocery use cases into data and ML solutions.
- Provide technical guidance on Spark optimization, data modeling, and ML architecture .
- Contribute to platform standards and reusable components.
Required Qualifications
- 4+ years of experience in Data Engineering and/or Machine Learning Engineering .
- Strong hands-on experience with Databricks :
- Apache Spark (PySpark / Spark SQL)
- Delta Lake
- MLflow
- Strong proficiency in Python and SQL .
- Experience building production-grade data pipelines at scale.
- Solid understanding of ML concepts , feature engineering, and model evaluation.
- Experience deploying ML models in distributed environments.
Preferred
- Experience with Databricks on GCP .
- Familiarity with Cloud Composer (Airflow) .
- Experience with BigQuery , Pub/Sub , or GCP storage services.
- Retail, grocery, e-commerce, or CPG domain experience.
- Experience with demand forecasting, recommendation systems, or pricing models .
- Exposure to real-time/streaming ML use cases.
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