Include:Work with a team of data scientists and cross-functional teams to build scalable business solutions Build data models in dbt to transform data into bronze, silver, and gold layers to serve various business use cases Design, implement, and improve dataflows that powers analytics at large scale Use workflow orchestration tools such as Databricks Workflows or Airflow to automate data processing Apply best practices and standardization of business processes to maximize dataflow efficiency Co... more details
Job Description
As part of the NBCU DM&I team, this Sr. Analyst will be responsible for developing data framework and automating data transformation and dataflows across the data science platform. Our data science platform serves as a basis for advanced analytics including, but not limited to audience predictive models, real time data analysis, media mix models, campaign optimization, data assessments for 1st, 2nd and 3rd party data, and audience development (sizing, planning, profiling). This role reports directly into the Director of Data Science. To succeed, the Sr. Analyst is expected to demonstrate strategic thinking, problem-solving skills, strong communication and trouble-shooting skills, and the ability to work on multiple engagements simultaneously in a fast-paced environment.
In this role, the Sr. Analyst will work closely with business owners, teammates and engineers to build out state-of-the-art audiences for NBCU brands and advertisers!
Responsibilities include:
Work with a team of data scientists and cross-functional teams to build scalable business solutions
Build data models in dbt to transform data into bronze, silver, and gold layers to serve various business use cases
Design, implement, and improve dataflows that powers analytics at large scale
Use workflow orchestration tools such as Databricks Workflows or Airflow to automate data processing
Apply best practices and standardization of business processes to maximize dataflow efficiency
Communicate functional insights and analysis results to leadership
Document data engineering processes, data pipelines, and system architectures for future reference and knowledge sharing
Qualifications
Bachelor’s degree in computer science or a related field. Advanced degree is preferred.
2+ years of related technical work experience
Must be willing to work in New York, NY
Knowledge of cloud-based data platforms (e.g., AWS, Azure GCP) and their associated services
Hands on experience using dbt to build data pipelines
Programming languages such as Python is required
Experience with SQL/Relational databases
Experience with data warehouses, data process automation, data governance, data privacy
Creative thinker and problem solver – ability to come up with new ideas and messaging concepts that meet current and future business objectives
Salary Range: $85,000 - $105,000
Additional Information
NBCUniversal's policy is to provide equal employment opportunities to all applicants and employees without regard to race, color, religion, creed, gender, gender identity or expression, age, national origin or ancestry, citizenship, disability, sexual orientation, marital status, pregnancy, veteran status, membership in the uniformed services, genetic information, or any other basis protected by applicable law. NBCUniversal will consider for employment qualified applicants with criminal histories in a manner consistent with relevant legal requirements, including the City of Los Angeles Fair Chance Initiative For Hiring Ordinance, where applicable.
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