Machine Learning Engineer
Indexed description
Key responsibilities:
- Support and monitor weekend batch loads, ensuring timely and accurate execution
- Perform outlier detection and root cause analysis for issues such as demand forecast drops or anomalies
- Translate findings into clear insights and communicate them effectively to leads and stakeholders
- Monitor scheduled jobs and data pipelines to ensure successful execution
- Validate dashboard outputs and analyze data trends, anomalies, and inconsistencies
- Support basic model validation and output analysis (e.g., forecast vs actuals, error trends)
- Write and optimize SQL queries and PySpark transformations for debugging and analysis
- Identify patterns in recurring failures and recommend improvements
- Work with data science and engineering teams to debug model or data-related issues
- Escalate issues when required, with clear analysis and supporting insights
- Monitor workflows in Azure Data Factory (ADF) and Databricks
- Contribute to CI/CD validation and release monitoring
- Maintain documentation for issues, RCA findings, and fixes
Tech stack required:
- 3 to 5 years of experience as Machine Learning Engineer
- Strong working knowledge of SQL (must-have)
- Basic to intermediate PySpark / Python
- Understanding of data pipelines and distributed data processing
- Familiarity with Azure Data Factory (ADF) and Databricks
- Basic understanding of machine learning workflows and model outputs
- Ability to perform data analysis and debugging using data
- Exposure to CI/CD processes and Azure DevOps
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