Bigdata team member in New Data team for L4 - Lead Data Engineer
Description
Why Ness
We know that people are our greatest asset. Our staff’s professionalism, innovation, teamwork, and dedication to excellence have helped us become one of the world’s leading technology companies. It is these qualities that are vital to our continued success. As a Ness employee, you will be working on products and platforms for some of the most innovative software companies in the world.
You’ll gain knowledge working alongside other highly skilled professionals that will help accelerate your career progression.
You’ll also benefit from an array of advantages like access to trainings and certifications, bonuses, and aids, socializing activities, and attractive compensation.
The Team
The Data Lake team is responsible for data ingestion from internal source systems in batch/real-time modes, curation and governance of the data assets created in the platform. The team also owns and maintains the existing ETL pipelines in Informatica and also works towards converting those to ELT by leveraging the Databricks product. The team has a broad and expert knowledge on Ratings organization’s critical data domains, technology stacks and architectural patterns, fosters knowledge sharing and collaboration that results in a unified strategy.
The Impact: You will be an expert contributor and part of the Rating Organization’s Data Services Product Engineering Team with a unique opportunity to build and evolve S&P Ratings next gen data and analytics platform.
Our Hiring Manager Says
If you are an individual that brings demonstrated experience of delivering big data projects as a data engineer, this is an excellent opportunity. We are looking for someone who has in-depth technical knowledge around data lake systems, is completely hands-on and worked on transformational initiatives for the business.
Responsibilities:
- Design & Build data pipelines with an emphasis on scale, performance and reliability.
- Provide technical expertise in the areas of design and implementation of Data Lake solution powered by Databricks on AWS cloud.
- Ensure data governance principles adopted, data quality checks and data lineage implemented in each hop of the data
- Partner with the data teams, enterprise architecture organization to ensure best use of standards for the key data domains and use cases
- Continuous learner with an eye on emerging trends around data lake architecture and enterprise data solutions.
- Ensure compliance through the adoption of enterprise standards and promotion of best practice / guiding principles aligned with organization standards
Experience & Qualifications: - BE, MCA or MS degree in Computer Science or Information Technology
6+ years of experience building solutions in big data technologies.
For L4:
9+ years of experience programming with one or more of Java /Scala.
- Experience is Big data eco system (Spark, Kafka, Delta Lake)
- Experience building streaming data pipelines using Kafka and Spark
- Development experience in delivering ELT/database/programming solution with hands on experience in big data concepts spark performance tuning, Data modeling and data ware housing concepts, Reusable transformations, Partition techniques.
- Strong knowledge on SQL optimizations and tuning.
- Must have experience in continuous delivery through CI/CD pipelines, containers and orchestration technologies.
- Preferred experience building data pipelines on Databricks, Snowflake, Azure Data Lake etc for Lakehouse/Warehouse solutions is an added advantage.
- Expert knowledge of Agile approaches to software development and able to put key Agile principles into practice to deliver solutions incrementally.
- Monitors industry trends and directions; develops and presents substantive technical recommendations to senior management
- Excellent analytical thinking, interpersonal, oral, and written communication skills with strong ability to influence both IT and business partners
- Ability to prioritize and manage work to critical project timelines in a fast-paced environment
- Financial services industry experience is an added advantage.
- Databricks experience or certifications is an added advantage.
- AWS or any public cloud certification is an added advantage.
Not checking every single requirement?
If this role sounds good to you, even if you don’t meet every single bullet point in the job description, we encourage you to apply anyway. For most of the candidates that applied, we found a role that was a very good fit with their skills.
Let’s meet and you may just be the right candidate for one of our roles.
At Ness Digital Engineering we are willing to build a work culture that is based on diversification, inclusion, and authenticity.