Data Product Success Analyst

CGA
Stockport
1 year ago
Applications closed

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Job Description

Job Objective

Validate model outputs and assure data integrity. The Data Product Success Analyst role is vital for the quality and integrity of our OPM model outputs. The analyst will be assigned to a specific OPM model but will work closely together in the Product Success team to make sure delivery deadlines on all OPM outputs are met and data quality meets CGA standards. Always aiming to deliver the best possible data, the data Product Success analyst identifies anomalies in the data and in the OPM process and rectifies where possible. The data Product Success analyst works closely together with all parts of the CGA business to address issues in the data and understand external factors driving trends in the model outputs. 

Main Duties & Responsibilities

Understand and run the OPM model Make sure all stages of the (OPM) model run according to the Product Success schedule. Understand the principles and logic behind supporting processes that feed into the running of the model and validation. Validate model output against available data sources and drive data validation meetings. · Use available tools and data sources to investigate client queries that are escalated to the Product Success team. Implement improvements to existing validation processes, reports, and standard templates Act as a Role model for the CGA Values and Culture. Motivating the team to implement a culture of diligence, customer service and continuous improvement

Qualifications

Relevant background in sciences (Mathematical, Physics, analytical etc.) Prior knowledge of the hospitality industry. Highly organised and able to multi-task You are structured and analytical You have excellent communication skills Ability to work in a dynamic and fast-moving team

Additional Information

Hybrid Model Role. 

Our Benefits

Flexible working environment Volunteer time off LinkedIn Learning Employee-Assistance-Program (EAP)

About NIQ

NIQ is the world’s leading consumer intelligence company, delivering the most complete understanding of consumer buying behavior and revealing new pathways to growth. In , NIQ combined with GfK, bringing together the two industry leaders with unparalleled global reach. With a holistic retail read and the most comprehensive consumer insights—delivered with advanced analytics through state-of-the-art platforms—NIQ delivers the Full View™. NIQ is an Advent International portfolio company with operations in + markets, covering more than 90% of the world’s population.

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Our commitment to Diversity, Equity, and Inclusion

NIQ is committed to reflecting the diversity of the clients, communities, and markets we measure within our own workforce. We exist to count everyone and are on a mission to systematically embed inclusion and diversity into all aspects of our workforce, measurement, and products. We enthusiastically invite candidates who share that mission to join us. We are proud to be an Equal Opportunity/Affirmative Action-Employer, making decisions without regard to race, color, religion, gender, gender identity or expression, sexual orientation, national origin, genetics, disability status, age, marital status, protected veteran status or any other protected class. Our global non-discrimination policy covers these protected classes in every market in which we do business worldwide. Learn more about how we are driving diversity and inclusion in everything we do by visiting the NIQ News Center: 

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