DataOps Engineer Aligned Automation
Aligned Automation
Office Location
Full Time
Experience: 10 - 10 years required
Pay:
Salary Information not included
Type: Full Time
Location: Maharashtra
Skills: Python, aws, ECS, Docker, Kubernetes, PostgreSQL, Redis, ETLELT pipelines, DataOps methodologies, S3, Lambda, CloudWatch, pgvector, CICD pipelines, GitHub workflows, AgileScrum, DataOps principles
About Aligned Automation
Job Description
As a DataOps Engineer, you will play a crucial role within our data engineering team, operating in the realm that merges software engineering, DevOps, and data analytics. Your primary responsibility will involve creating and managing secure, scalable, and production-ready data pipelines and infrastructure that are vital in supporting advanced analytics, machine learning, and real-time decision-making capabilities for our clientele. Your key duties will encompass designing, developing, and overseeing the implementation of robust, scalable, and efficient ETL/ELT pipelines leveraging Python and contemporary DataOps methodologies. You will also be tasked with incorporating data quality checks, pipeline monitoring, and error handling mechanisms, as well as constructing data solutions utilizing cloud-native services on AWS like S3, ECS, Lambda, and CloudWatch. Furthermore, your role will entail containerizing applications using Docker and orchestrating them via Kubernetes to facilitate scalable deployments. You will collaborate with infrastructure-as-code tools and CI/CD pipelines to automate deployments effectively. Additionally, you will be involved in designing and optimizing data models using PostgreSQL, Redis, and PGVector, ensuring high-performance storage and retrieval while supporting feature stores and vector-based storage for AI/ML applications. In addition to your technical responsibilities, you will be actively engaged in driving Agile ceremonies such as daily stand-ups, sprint planning, and retrospectives to ensure successful sprint delivery. You will also be responsible for reviewing pull requests (PRs), conducting code reviews, and upholding security and performance standards. Your collaboration with product owners, analysts, and architects will be essential in refining user stories and technical requirements. To excel in this role, you are required to have at least 10 years of experience in Data Engineering, DevOps, or Software Engineering roles with a focus on data products. Proficiency in Python, Docker, Kubernetes, and AWS (specifically S3 and ECS) is essential. Strong knowledge of relational and NoSQL databases like PostgreSQL, Redis, and experience with PGVector will be advantageous. A deep understanding of CI/CD pipelines, GitHub workflows, and modern source control practices is crucial, as is experience working in Agile/Scrum environments with excellent collaboration and communication skills. Moreover, a passion for developing clean, well-documented, and scalable code in a collaborative setting, along with familiarity with DataOps principles encompassing automation, testing, monitoring, and deployment of data pipelines, will be beneficial for excelling in this role.,