Associate Data Scientist
工作概要:
Would you like to be part of the interdisciplinary team providing vital insights into the rapidly evolving media landscape for Disney’s suite of television networks (ABC, ESPN, etc.) and direct-to-consumer (DTC) streaming services? Join our Data & Analytics Operations team, whose mission is to develop, support, and improve analytics operations by delivering data-driven applications that drive efficiencies across the Research, Insights & Analytics group in Disney Entertainment (DE).
We highly value statistical modeling and machine learning approaches—including cross-media measurement and activation across linear, streaming, and digital platforms. We balance advanced methods with pragmatic, classical ones that focus on strong business context, merging the science with the craft. Additionally, we incorporate and deploy modern GenAI-assisted workflows to accelerate analysis and documentation within established privacy and governance standards.
Job Summary:
As a Data Scientist on the Disney Entertainment (DE) Research, Insights & Analytics team, you’ll develop and improve predictive models that inform advertising and audience dynamics across Disney’s television networks and DTC streaming services (Disney+, Hulu, ESPN+). Primary focus will be viewership and impressions forecasting—built in partnership with Linear and Digital forecasting teams—to optimize Ad Sales yield and support the DTC and Linear P&Ls. You’ll extend this work into cross-media measurement and activation as a whole, delivering clear communications of model accuracy, results, and business impact.
You’ll contribute to production-level data-science pipelines and monitoring of models (clean, well-tested Python/SQL; versioning, and QA) and help enhance analysis of complex data for partners in Research, Content, Ad Sales, and Forecasting. You’ll responsibly leverage and deploy AI workflows to improve quality, speed, and depth of analysis—validating outputs before use.
Responsibilities and Duties of the Role:
Machine Learning and Statistical Modeling: Design and develop predictive and generative model pipelines by leveraging classical data science and modern AI/ML to impact and measure KPIs; analyze drivers of change and implement improvements that enhance accuracy and stability of cross-media measurement and advance analytics.
Data Quality: Ensure data is clean and trustworthy; investigate and escalate anomalies; perform robust feature engineering and data prep across linear and streaming sources; contribute to source-of-truth definitions.
Applications and Communications: Build visualizations and applications to share results with business stakeholders in an easily digestible, sustainable, and automated manner; Analyze data to identify patterns and uncover opportunities.
Collaboration: Partner closely with peers and business stakeholders to identify and unlock opportunities. Collaborate with other data teams to improve capabilities around data modeling, data platforms, and data visualizations.
Process Improvement: Drive innovation by exploring new statistical techniques and brainstorming ways to optimize existing infrastructure and make processes even better.
Operations: Apply Agile principles via participating in standups, sprint planning, writing business requirements documents, and retrospectives; Participate in an “Open Source” learning environment where sharing, documenting, teaching, and collaborating with others is the culture.
Required Education, Experience/Skills/Training:
Basic Qualifications:
Proficiency in SQL and Python (e.g., pandas, numpy, scikit-learn) for data analysis.
Experience designing and implementing predictive models (e.g., regression, time series, decision trees, XGBoost, clustering).
Experience working with Git and collaborative development practices.
Experience with data visualization tools and applications (e.g. Tableau, plotly, Streamlit)
Ability to communicate clearly with technical and non-technical audiences.
User/Client orientation; strong interpersonal skills that build trust across teams.
Comfort with messy data and flexibility in dynamic environments.
Experience responsibly using AI-assisted workflows with validation.
Preferred Qualifications:
Experience with ETL, data pipeline management, and cloud infrastructure for managing large amounts of data (e.g. AWS, PySpark, Snowflake, Airflow, Databricks);
Experience using web frameworks (Django) and JavaScript libraries (ReactJS, JQuery) to build professional frontend and backend web applications focused on user experience;
Experience building internal tools that help teams operationalize analytics (e.g., small Streamlit/Gradio utilities, scheduled batch jobs).
Exposure to managed LLM/AI services inside analytics platforms is a plus.
Required Education:
- A Bachelor’s Degree in Computer Science, Statistics, Data Science, Mathematics, Econometrics, Cognitive Science, or equivalent substitute.
The hiring range for this position in New York, NY is $102,100 to $136,900 per year. The base pay actually offered will take into account internal equity and also may vary depending on the candidate’s geographic region, job-related knowledge, skills, and experience among other factors. A bonus and/or long-term incentive units may be provided as part of the compensation package, in addition to the full range of medical, financial, and/or other benefits, dependent on the level and position offered.
關於Disney Entertainment Television:
Disney Entertainment Television 匯聚 The Walt Disney Company 旗下的知名內容品牌,為公司的串流平台 Disney+、Hulu 和 Star 以及其廣播和有線網絡建立原創娛樂及新聞節目。廣泛的內容組合包括 ABC Entertainment、ABC News、ABC Owned Television Stations、Disney Branded Television、Freeform、FX、Hulu Originals、National Geographic Content 和 Onyx Collective,以及 Disney Television Studios,當中包括 20th Television、20th Television Animation、ABC Signature 和 Walt Disney Television Alternative。Disney Entertainment Television 的創意品牌每年製作超過 4,500 小時的 300 多個各類節目,在開創性故事敍述方面佔據領先地位,吸引觀眾並贏得好評。在 2023 年,Disney Entertainment Television 的卓越節目在日間時段、黃金時段、新聞與紀錄片及親子類別贏得 163 項 Emmy® 提名。
關於 The Walt Disney Company:
Walt Disney Company 連同其子公司和聯營公司,是領先的多元化國際家庭娛樂和媒體企業,其業務主要涉及三個範疇:Disney Entertainment、ESPN 及 Disney Experiences。Disney 在 1920 年代的起步之初,只是一間卡通工作室,至今已成為娛樂界的翹楚,並昂然堅守傳承,繼續為家庭中每位成員創造世界一流的故事與體驗。Disney 的故事、人物與體驗傳遍世界每個角落,深入人心。我們在 40 多個國家/地區營運業務,僱員及演藝人員攜手協力,創造全球和當地人們都珍愛的娛樂體驗。
這個職位隸屬於 American Broadcasting Companies, Inc.,其所屬的業務部門是 Disney Entertainment Television。
American Broadcasting Companies, Inc. 是提供平等就業機會的僱主。求職者都會獲得聘僱考量的機會,不分種族、宗教、膚色、生理性別、性傾向、社會性別、性別認同、性別表達、原國籍、血統、年齡、婚姻狀態、軍人或退伍軍人身份、醫療狀況、遺傳資訊或殘疾狀況、或者聯邦、州級或地方法律所禁止的其他任何基本特徵。Disney 提倡讓所有人的想法和決策都有助我們發展、創新、創造最好故事的商業環境,並與瞬息萬變的世界息息相關。
就業申請的殘疾便利安排
The Walt Disney Company and its Affiliated Companies are Equal Employment Opportunity employers and welcome all job seekers including individuals with disabilities and veterans with disabilities. If you have a disability and believe you need a reasonable accommodation in order to search for a job opening or apply for a position, visit the Disney candidate disability accommodations FAQs. We will only respond to those requests that are related to the accessibility of the online application system due to a disability.
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