Big Data Engineer Intern (Monetization Data) - 2026 Start (BS/MS)

Singapore, Singapore

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Team Introduction
Monetization data SG team aims to empower TikTok monetization business through acquiring, building and managing all kinds of ad data as our data foundation, and further provide scalable solutions including dashboards, pipelines, data products and data services. We are partnership with business through a better understanding of business strategy and aligning OKRs with business to drive business growth as a stakeholder. At the same time, our team continues to explore the development of data engines, data warehouse methodology, BI tools, ML data technology to efficiently improve the efficiency of data development, and deeply mine data value to improve business growth.

We are looking for talented individuals to join us for an internship in 2026. Internships at TikTok aim to offer students industry exposure and hands-on experience. Watch your ambitions become reality as your inspiration brings infinite opportunities at TikTok.

Candidates can apply to a maximum of two positions and will be considered for jobs in the order you apply. The application limit is applicable to TikTok and its affiliates' jobs globally.

Applications will be reviewed on a rolling basis - we encourage you to apply early.

Successful candidates must be able to commit to at least 3 months long internship period.

Successful candidates must be able to commit to either of the following Internships
- From January to June
- From May to August (Summer)

Responsibilities
- Responsible for developing and operating our internal BI platform to support various business of advertising and analytics.
- Process data processing requests and execute data model design, implementation and maintenance
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Tags: Big Data Data warehouse Machine Learning Model design OKR Pipelines

Region: Asia/Pacific
Country: Singapore

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