Posted on: 15/12/2025
Description :
About Saras Analytics :
- We are an ecommerce focused end to end data analytics firm assisting enterprises & brands in data driven decision making to maximize business value.
- Our suite of work spans extraction, transformation, visualization & analysis of data delivered via industry leading products, solutions & services.
- Our flagship product is Daton, an ETL tool.
- We have now ventured into building exciting ease of use data visualization solutions on top of Daton.
- And lastly, we have a world class data team which understands the story the numbers are telling and articulates the same to CXOs thereby creating value.
Where we are Today :
- We are a boot strapped, profitable & fast growing (2x y-o-y) startup with old school value systems.
- We play in a very exciting space which is intersection of data analytics & ecommerce both of which are game changers.
- Today, the global economy faces headwinds forcing companies to downsize, outsource & offshore creating strong tail winds for us.
- We are an employee first company valuing talent & encouraging talent and live by those values at all stages of our work without comprising on the value we create for our customers.
- We strive to make Saras a career and not a job for talented folks who have chosen to work with us.
The Role :
- We are seeking a seasoned and proficient Senior Python Data Engineer with substantial experience in cloud technologies.
- As a pivotal member of our data engineering team, you will play a crucial role in designing, implementing, and optimizing data pipelines, ensuring seamless integration with cloud platforms.
- The ideal candidate will possess a strong command of Python, data engineering principles, and a proven track record of successful implementation of scalable solutions in cloud environments.
Responsibilities :
Data Pipeline Development :
- Design, develop, and maintain scalable and efficient data pipelines using Python and cloud-based technologies.
- Implement Extract, Transform, Load (ETL) processes to seamlessly move data from diverse sources into our cloud-based data warehouse.
Cloud Integration :
- Utilize cloud platforms (e.g., Google Cloud, AWS, Azure) to deploy, manage, and optimize data engineering solutions.
- Leverage cloud-native services for storage, processing, and analysis of large datasets.
Data Modelling and Architecture :
- Collaborate with data scientists, analysts, and other stakeholders to design effective data models that align with business requirements.
- Ensure the scalability, reliability, and performance of the overall data infrastructure on cloud platforms.
Optimization and Performance :
- Continuously optimize data processes for improved performance, scalability, and cost-effectiveness in a cloud environment.
- Monitor and troubleshoot issues, ensuring timely resolution and minimal impact on data availability.
Quality Assurance :
- Implement data quality checks and validation processes to ensure the accuracy and completeness of data in the cloud-based data warehouse.
- Collaborate with cross-functional teams to identify and address data quality issues.
Collaboration and Communication :
- Work closely with data scientists, analysts, and other teams to understand data requirements and provide technical support.
- Collaborate with other engineering teams to seamlessly integrate data engineering solutions into larger cloud-based systems.
Documentation :
- Create and maintain comprehensive documentation for data engineering processes, cloud architecture, and pipelines.
Technical Skills :
Programming Languages :
- Proficiency in Python for data engineering tasks, scripting, and automation.
Data Engineering Technologies :
- Extensive experience with data engineering frameworks like distributed data processing.
- Understanding and hands-on experience with workflow management tools like Apache Airflow.
Cloud Platforms :
- In-depth knowledge and hands-on experience with at least one major cloud platform : AWS, Azure, or Google Cloud.
- Familiarity with cloud-native services for data processing, storage, and analytics.
ETL Processes :
- Proven expertise in designing and implementing Extract, Transform, Load (ETL) processes.
SQL and Databases :
- Proficient in SQL with experience in working with relational databases (e.g., PostgreSQL, MySQL) and cloud-based database services.
Data Modeling :
- Strong understanding of data modeling principles and experience in designing effective data models.
Version Control :
- Familiarity with version control systems, such as Git, for tracking changes in code and configurations.
Collaboration Tools :
- Experience using collaboration and project management tools for effective communication and project tracking.
Containerization and Orchestration :
- Familiarity with containerization technologies (e.g., Docker) and orchestration tools (e.g., Kubernetes).
Monitoring and Troubleshooting :
- Ability to implement monitoring solutions and troubleshoot issues in data pipelines.
Data Quality Assurance :
- Experience in implementing data quality checks and validation processes.
Agile Methodologies :
- Familiarity with agile development methodologies and practices.
Soft Skills :
- Strong problem-solving and critical-thinking abilities.
- Excellent communication skills, both written and verbal.
- Ability to work collaboratively in a cross-functional team environment.
- Attention to detail and commitment to delivering high-quality solutions.
If you possess the required technical skills and are passionate about leveraging cloud technologies for data engineering, we encourage you to apply.
Please submit your resume and a cover letter highlighting your technical expertise and relevant experience.
Did you find something suspicious?
Posted by
Posted in
Data Engineering
Functional Area
Data Engineering
Job Code
1589979