data
Added Apr 22Staff Data Scientist, Marketing
at Asana
United StatesOn-site
Responsibilities
- Architect, design, and lead the technical execution for the Marketing Data Science roadmap, serving as the Solution Architect for all core projects including Media Mix Modeling (MMM), User Lifetime Value, Causal Inferences, Multi-touch Attribution, and Spend Optimization engines.
- Collaborate with marketing leadership to pinpoint how data science can be further integrated into Asana's business approach.
- Develop and standardize MLOps tooling and processes that enable the team to deploy, monitor, and maintain multiple models in production efficiently and reliably.
- Research, prototype, and advocate for emerging capabilities and state-of-the-art models in the marketing data science space, demonstrating their potential
- Proven track record developing, deploying, and maintaining scalable production ML solutions and data products
Requirements
- Most Asanas have the option to work from home on Wednesdays.
- Provide hands-on technical mentorship and guidance to a team of data scientists at varying levels, helping them navigate complex modeling challenges, choose appropriate methodologies, and establish robust ML Ops.
- Take on a technical leadership role within the broader Asana Data Community, interacting with Data Engineering and Platform teams to influence the data and MLOps infrastructure required to support marketing data products. About you:
- Bachelor Degree in Math, Statistics, Computer Science, Engineering a related quantitative field, or equivalent experience 6+ years of
- experience in a data science role, with 2+ years dedicated to technical leadership and mentorship of other data scientists, successfully driving the architecture and execution of large-scale production data science projects 4+ years of
- experience collaborating with Marketing functions on deep technical projects, with extensive
- experience designing, implementing, and deploying marketing models (e.g. MMM, LTV, MTA, Uplift)
- Expert-level knowledge in advanced statistical modeling, causal inference, experimental design and analysis, and machine learning techniques relevant to marketing effectiveness
- Technical Stack: Expert proficiency in SQL and Python.
- Experience with MLOps tools (e.g., MLFlow), statistical languages (e.g., R), and distributed data processing systems (e.g., Spark, Redshift) is a plus