Actionable Insights for Every Home.
Senior Data Engineer
Location
India
Posted
192 days ago
Salary
0
Seniority
Senior
Job Description
Senior Data Engineer
WIN Home Inspection
• Collaborate with cross-functional teams to define data requirements, perform data collection, and ensure data quality and integrity. • Curate data sets including through hands on analyses and automated tools including web scraping, ETL pipelines and SQL queries. • Conduct in-depth research and analysis to identify new data sources and complement existing data sources. • Design and maintain intuitive BI dashboards, reports, and visualizations to effectively communicate complex data and insights. • Identify actionable business insights through analysis of data trends, patterns, and correlations. • Own documentation of data processes, schemas, and data sets • Build using best practices in security, design, and data quality.
Job Requirements
- Bachelors in computer science or related technical field.
- 2-5 years of experience in data analysis (e.g. Python, SQL, Excel, Tableau, Looker, PowerBI) and visualization tools
- Experience with data querying, manipulation, and integration scripting a plus
- Experience with enterprise cloud computing and storage platforms (AWS, GCP etc)
- Thrive in a dynamic environment that requires innovation and speed of execution.
- Ability to understand and break-down problems and propose clear solutions.
- Creative and outside-the-box thinker with strategic mindset
- Willing to learn new technologies and platforms.
- Strong work ethic, high integrity, and a team-player
Benefits
- Highly inclusive and collaborative culture built on mutual respect.
- Focus on core values, initiative, leadership and adaptability.
- Strong emphasis on personal and professional development
- Flexibility to work remotely and/or hybrid indefinitely.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
Fullstack Data Engineer
Codvo.aiBuilding Advance AI & Cloud Native Software Using The "Virtual Silicon Valley" Model. Let’s Talk AI, Cloud and Outcomes.
• Design and develop ETL/ELT pipelines on platforms like Databricks (PySpark, Delta Lake, SQL), Informatica, Teradata, Snowflake • Architect data models (batch and streaming) for analytics, ML, and reporting • Optimize performance of large-scale distributed data processing jobs • Implement CI/CD pipelines for Databricks workflows using GitHub Actions, Azure DevOps, or similar • Build and maintain APIs, dashboards, or applications that consume processed data (full-stack aspect) • Collaborate with data scientists, analysts, and business stakeholders to deliver solutions • Ensure data quality, lineage, governance, and security compliance • Deploy solutions across cloud environments (Azure, AWS, or GCP)
• Translate business requirements to data engineering solutions to support an enterprise scale AWS and/or Databricks based data environments. • Support designing, maintaining, automating and optimizing ETL operations ensuring data quality and efficient data management. • Design, build, and optimize scalable data solutions using a Medallion Architecture. • Manage ingestion routines for processing multi-terabyte datasets efficiently for multiple projects simultaneously. • Integrate data from various structured and unstructured sources to enable high-quality business insights. • Implement effective data management strategies to ensure data integrity, availability, and accessibility. • Identify opportunities for cost optimization in data storage, processing, and analytics operations. • Monitor and support user requests, addressing platform or performance issues, cluster stability, Spark optimization, and configuration management. • Collaborate with the team to enable advanced AI-driven analytics and data science workflows.


