At Nielsen, we are passionate about our work to power a better media future for all people by providing powerful insights that drive client decisions and deliver extraordinary results. Our talented, global workforce is dedicated to capturing audience engagement with content - wherever and whenever it’s consumed. Together, we are proudly rooted in our deep legacy as we stand at the forefront of the media revolution. When you join Nielsen, you will join a dynamic team committed to excellence, perseverance, and the ambition to make an impact together. We champion you, because when you succeed, we do too. We enable your best to power our future.
Principal Data Scientist, Predictive Modeling
What would make me a great candidate?
You enjoy applying your skills to developing new models and processes for predictive modeling. You are able to be both hands on in creating models and equally capable of overseeing the work of others as they apply the tools you have built to additional datasets. You are familiar with survey research and recommendation engine models. You are highly analytical and are able to defend the validity of your models by conducting hold-out analyses, and presenting the results in plain language to people outside of the Data Science industry. You have a passion for continuous improvement, driving operational efficiency in the speed of modeling, the volume of compute power used, etc. You’re excited to build new capabilities and help drive advancement of the business.
Responsibilities:
- Design, test and implement recommendation engine models to turn sparse datasets into synthetic datasets. This includes writing code from scratch. Must be proficient with reading, manipulating and analyzing big data and writing new code to build models.
- Prove model validity through analytic research (e.g. holdouts) and speak to predictive power internally and externally to clients as needed.
- Use iterative modeling to determine the ideal parameters for the sparse data - e.g. minimum level of completeness, key required datapoints that drive higher predictive accuracy, minimum number of datapoints required for a given predicted variable, etc.
- Using the analytic findings from ideal parameter exploration, consult with internal and external partners on the best way to source the ideal sparse data.
- Support screening and hiring of other data scientists in the mid to long term future. Support onboarding and development of more junior data scientist staff. Serve as a subject matter expert for others internally and externally. Provide technical assistance in predictive modeling methodologies, data manipulation, fusion, and modeling.
- Define and implement a vision for scaling new models across increasingly larger datasets - driving for efficient speed, computer usage, etc.
- Support automation for scaling routinized processes.
- Support pilot programs for R&D purposes.
- Conduct tactical or strategic analyses to address business and customer opportunities.
- Utilize tools such as Python, R, SPSS, etc. to perform complex data analysis, develop tools for automating procedures.
- Develop, test, and implement high quality, modular python code that can be seamlessly integrated into an existing production system.
- Develop and implement machine learning solutions to leverage big data from internal and external sources.
- Assist with ad hoc analyses and projects.
Qualifications:
-
Strong Educational Background: Degree in a quantitative field like Math, Statistics, Computer Science, or Economics.
-
Experienced Data Scientist: 10+ years of experience, with a focus on predictive modeling and recommendation engines.
-
Technical Proficiency: Skilled in Python (including pytorch), statistical tests, and machine learning techniques (Decision Trees, Random Forests, Neural Networks, etc.).
-
Data Management and Visualization: Familiarity with SQL, relational databases, and BI tools like Tableau and Spotfire.
-
Excellent Communication and Collaboration: Strong critical thinking, problem-solving, and communication skills, with experience in a fast-paced environment.
#LI-YL1
Please be aware that job-seekers may be at risk of targeting by scammers seeking personal data or money. Nielsen recruiters will only contact you through official job boards, LinkedIn, or email with a nielsen.com domain. Be cautious of any outreach claiming to be from Nielsen via other messaging platforms or personal email addresses. Always verify that email communications come from an @nielsen.com address. If you're unsure about the authenticity of a job offer or communication, please contact Nielsen directly through our official website or verified social media channels.