Role Proficiency:
This role requires proficiency in data pipeline development including coding and testing data pipelines for ingesting wrangling transforming and joining data from various sources. Must be skilled in ETL tools such as Informatica Glue Databricks and DataProc with coding expertise in Python PySpark and SQL. Works independently and has a deep understanding of data warehousing solutions including Snowflake BigQuery Lakehouse and Delta Lake. Capable of calculating costs and understanding performance issues related to data solutions.
Outcomes:
Act creatively to develop pipelines and applications by selecting appropriate technical options optimizing application development maintenance and performance using design patterns and reusing proven solutions.rnInterpret requirements to create optimal architecture and design developing solutions in accordance with specifications. Document and communicate milestones/stages for end-to-end delivery. Code adhering to best coding standards debug and test solutions to deliver best-in-class quality. Perform performance tuning of code and align it with the appropriate infrastructure to optimize efficiency. Validate results with user representatives integrating the overall solution seamlessly. Develop and manage data storage solutions including relational databases NoSQL databases and data lakes. Stay updated on the latest trends and best practices in data engineering cloud technologies and big data tools. Influence and improve customer satisfaction through effective data solutions.Measures of Outcomes:
Adherence to engineering processes and standards Adherence to schedule / timelines Adhere to SLAs where applicable # of defects post delivery # of non-compliance issues Reduction of reoccurrence of known defects Quickly turnaround production bugs Completion of applicable technical/domain certifications Completion of all mandatory training requirements Efficiency improvements in data pipelines (e.g. reduced resource consumption faster run times). Average time to detect respond to and resolve pipeline failures or data issues. Number of data security incidents or compliance breaches.Outputs Expected:
Code Development:
Develop data processing code independentlyensuring it meets performance and scalability requirements. Define coding standards
templates
and checklists. Review code for team members and peers.
Documentation:
checklists
guidelines
and standards for design
processes
and development. Create and review deliverable documents
including design documents
architecture documents
infrastructure costing
business requirements
source-target mappings
test cases
and results.
Configuration:
Testing:
scenarios
and execution plans. Review the test plan and test strategy developed by the testing team. Provide clarifications and support to the testing team as needed.
Domain Relevance:
demonstrating a deeper understanding of business needs. Learn about customer domains to identify opportunities for value addition. Complete relevant domain certifications to enhance expertise.
Project Management:
Defect Management:
Estimation:
Knowledge Management:
SharePoint
libraries
and client universities. Review reusable documents created by the team.
Release Management:
Design Contribution:
low-level design (LLD)
and system architecture for applications
business components
and data models.
Customer Interface:
Team Management:
Certifications:
Skill Examples:
Proficiency in SQL Python or other programming languages used for data manipulation. Experience with ETL tools such as Apache Airflow Talend Informatica AWS Glue Dataproc and Azure ADF. Hands-on experience with cloud platforms like AWS Azure or Google Cloud particularly with data-related services (e.g. AWS Glue BigQuery). Conduct tests on data pipelines and evaluate results against data quality and performance specifications. Experience in performance tuning of data processes. Expertise in designing and optimizing data warehouses for cost efficiency. Ability to apply and optimize data models for efficient storage retrieval and processing of large datasets. Capacity to clearly explain and communicate design and development aspects to customers. Ability to estimate time and resource requirements for developing and debugging features or components.Knowledge Examples:
Knowledge Examples
Knowledge of various ETL services offered by cloud providers including Apache PySpark AWS Glue GCP DataProc/DataFlow Azure ADF and ADLF. Proficiency in SQL for analytics including windowing functions. Understanding of data schemas and models relevant to various business contexts. Familiarity with domain-related data and its implications. Expertise in data warehousing optimization techniques. Knowledge of data security concepts and best practices. Familiarity with design patterns and frameworks in data engineering.Additional Comments:
Must have 1 DevOps & Version Control Solid hands-on experience with Git (branching strategies, repo management). Familiarity with CI/CD concepts and deployment automation. 2 Programming & Data Engineering Strong hands-on experience with Python (including NumPy, Pandas, PySpark). Proven expertise in building and maintaining data pipelines and ETL/ELT processes. Hands-on experience in Airflow and/or BigQuery or Azure Databricks for data engineering solutions. 3 Solution Delivery and Architecture Track record of architecting, implementing, and supporting enterprise-grade solutions, preferably in financial services or highly regulated environments. Ability to translate detailed designs into robust, scalable, and reusable solutions. 4 Agile & Collaboration Experience working in Agile/Scrum delivery environments. Strong communication skills (written & verbal) with ability to influence stakeholders and collaborate across teams. 5 Education and Experience Bachelors degree with in Computer science or any related field Work experience in Information Security,Cybersecurity or related field 6 Candidate's Availability Candidate is available to join within 15-30 days Candidate is on notice period for 30 days Candidate must be flexible for different working hours Good to have DevOps & Cloud Expertise Knowledge of DevOps tools and practices (CI/CD pipelines, infrastructure as code, containerization – Docker/Kubernetes). Experience with machine learning frameworks (Keras, TensorFlow, Scikit-learn) as part of data pipelines. Advance Data Engineering Knowledge of additional ETL frameworks (e.g., Dagster, Luigi, Prefect). Experience with machine learning frameworks (Keras, TensorFlow, Scikit-learn) as part of data pipelines.