Humberger Nav
mployee.me logo
Senior Consultant
Virtusa
foundit
Chennai, India
Fresher
Not Disclosed
Full time
03 May 2026
Top Skills:
Query OptimizationData QualityUnit TestingData Engineering Data AnalysisData PipelinesPartitioning StrategiesSnowflake Indexing TechniquesBig DataBig Data TechnologyData AnalysisData PipelineData QualityIndexingLandscapePerformance ImprovementProduction ManagementQuery OptimizationSnowflakeSoftware Development LifecycleUnit Testing

96

Get Personalized Job Matches with 1 Click

Job Description iconJob Description
Download Resume iconDownload Resume
'Senior Engineer in Production Management (Big Data - Snowflake Focused)

The Senior Engineer in Production Management, specializing in Big Data with a focus

on Snowflake, will be responsible for the design, development, and overall

implementation of robust and scalable data solutions in a complex, critical, and large

cross-departmental and multi-disciplinary area. This role is crucial for building robust

pipelines, ensuring data quality, and driving performance improvements across our Big

Data initiatives..

The role requires a comprehensive understanding of various facets of Big Data

technologies and how they interact to achieve strategic data objectives. The candidate

will apply in-depth understanding of the business impact of data-driven insights and be

accountable for the delivery of a full range of end-to-end data engineering projects.

Responsibilities

 Demonstrates an in-depth understanding of the Software Development Lifecycle

and its integration within the overall data technology landscape to deliver

scalable, reliable, and performant Big Data solutions, particularly within

Snowflake.

 Conduct in-depth data analysis, troubleshoot complex data issues, and ensure

the accuracy, reliability, and integrity of data.

 Optimize Big Data workflows, including Snowflake query optimization, leveraging

partitioning strategies and indexing techniques in distributed storage systems.

 Perform rigorous unit testing and validation of data pipelines and transformations.

 Collaborate with data scientists, analysts, and other engineers to understand

data requirements and deliver robust data solutions.