Project description
This project aims to leverage a hybrid professional with a strong foundation in both data analytics (70%) and business analysis (30%). The role focuses on optimizing data processes, building efficient pipelines, and translating data insights into actionable business strategies for stakeholders.
Responsibilities
1. Data Analysis and Engineering (70%):
o ETL Development: Design, develop, and optimize ETL processes to ensure smooth data flow from source to target systems, leveraging tools like SQL, Informatica, and Spark.
o Data Profiling: Perform comprehensive data profiling to assess data quality, structure, and integrity, ensuring that the extracted data meets business needs.
o Real-time Data Pipelines: Develop and maintain real-time data integration pipelines using REST APIs, ensuring real-time data availability for key business operations.
o Source to Target Mapping: Work closely with the data engineering team to map data from various sources to target systems, ensuring accurate data transformations and alignment with business logic.
2. Business Analysis (30%):
o Stakeholder Engagement: Collaborate with business stakeholders to understand their requirements, translate complex data insights into clear, actionable business language, and present meaningful reports.
o JIRA Management: Utilize JIRA for project tracking and documentation of business requirements, ensuring efficient communication and tracking of tasks, issues, and enhancements.
o Data-Driven Decision Making: Use data insights to guide business decisions, helping stakeholders to make informed choices backed by accurate data analysis.
SKILLS
Must have:
* 70% Data Analyst and 30% Business Analyst (Mix of DA and BA role)
* ETL and Data engineering background - SQL, Informatica, Spark, REST APIs
* Experience in translating data from source to target, Data profiling
* Knowledge of Real-time data pipelines
* Ability to translate data into business language to present to stakeholders
Nice to have:
• Familiarity with Agile or other project management methodologies.
#J-18808-Ljbffr