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Performance TV Advertising Platform
Senior Data Scientist
Location
United States
Posted
118 days ago
Salary
$175K - $270K / year
Seniority
Senior
Job Description
Senior Data Scientist
tvScientific
• Write production code in Python. • Design, launch, and analyze experiments to optimize ad campaigns. • Build reporting and analytics tools for the Data Science Team's customers. • Translate into tvScientific's Data Science Product.
Job Requirements
- Experience writing and reviewing production-level code in Python.
- Excellent writing skills.
- Strong statistics and ML fundamentals.
- Desire to work at a fast-growing Series B startup–working under uncertainty, owning and scaling new products, and an experimental and iterative development process.
- Adtech or CTV experience
- Teaching experience.
- Big data experience with Scala, Apache Spark, Apache Beam, and AWS Athena.
- Exceptional data visualization skills.
Benefits
- Full health, dental, and vision insurance - up to 95% funded by the company for employees.
- Employee stock option program.
- Company-sponsored retirement plan with a matching contribution program.
- 12 annual paid holidays (including 2 flexible days).
- Generous PTO policy (get your work done and take the time you need).
- A remote-first environment that allows employees flexibility to work from anywhere in the US.
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