This list contains only the countries for which job offers have been published in the selected language (e.g., in the French version, only job offers written in French are displayed, and in the English version, only those in English).
The data analyst is responsible for analyzing business requirements and converting them into data requirements such as reports, visualizations, and data lifecycle management. They will analyze and interpret complex data sets to inform business decisions. We are seeking a highly skilled professional to lead the automation of writing and maintaining analytics event technical specifications. This role will leverage AI, LLMs and automation platforms to transform business requirements into scalable, accurate, and consistent tracking documentation. The ideal candidate will combine deep analytics expertise with hands-on experience in AI workflows, ensuring seamless collaboration between product, engineering, and analytics teams.
Job Responsibility:
Collaborate with Business SMEs, Product owners, Data Stewards, and Data Architects to identify critical data elements, define business terms, capture metadata, define data schema, clean, and prepare data in an appropriate format to perform analysis
Analyze data using statistical techniques to identify trends and patterns (e.g. growth/decline in key metrics) and create visualizations and reports to present findings to business stakeholders and/or data scientists for further actions
Define analytics tagging requirements for new and enhanced web/app features and ensure alignment with business KPIs
Automate the generation of analytics event specifications using AI/LLM tools (e.g., GPT-based models, generative automation platforms)
Perform data profiling, assess, and monitor the quality of data by working with the Data stewards, Data quality leads, and internal stakeholders and support the implementation of data quality rules and remediation of issues
Collaborate/Partner with product owner and agile delivery teams to ensure that the project/product is delivered with quality and in time
Interpret data models (Logical and Physical) and ensuring they align with the solution design
Convert user requirements into technical specifications and design documents, and identifying new data sources for the data warehouse
Also responsible for other Duties/Projects as assigned by business management as needed
Requirements:
Bachelor's Degree
2-4 years Experience in data identification, querying, cleaning, wrangling, checking quality, working with common relational and non-relational databases in big data environments on both on-prem and cloud such as Azure, AWS and Google Cloud
2-4 years Experience articulating and translating business questions and using statistical techniques to arrive at an answer using data
2-4 years Experience writing and speaking about technical concepts to business, technical, and lay audiences and giving data-driven presentations
2-4 years Experience working with relational databases using SQL
2-4 years Experience with data visualization tools such as Power BI, Tableau etc
Experience of relational databases, data warehousing and data architecture computer systems, including not limited to SQL, Python
Strong experience with large language models (LLMs) such as GPT, Claude, Gemini, Llama etc.
Technology Experience with Data querying, cleaning, wrangling, working with common relational and non-relational databases in big data environments such as Azure, AWS and Google Cloud
Technology Experience articulating and translating business questions and using statistical techniques to arrive at an answer using data
Technology Data Visualization skills using tools such as PowerBI, Tableau etc
Communication Excellent presentation, communication, and organizational skills
Agile Familiarity with Agile Methodology
Problem Solving Strong analytical, critical-thinking skills with demonstrated ability analyze/synthesize data and generate insights
At least 18 years of age
Legally authorized to work in the United States
Nice to have:
2-4 years Experience with big data architecture and pipeline, such as Hadoop, Hive, Spark, and Kafka
Microsoft Certified: Power BI Data Analyst Associate