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Research Scientist - E-commerce Recommendation; LLM - Global Frontier Tech Program

Job in Seattle, King County, Washington, 98113, USA
Listing for: Tiktok
Full Time position
Listed on 2026-06-02
Job specializations:
  • IT/Tech
    Ecommerce, Data Scientist, Data Analyst
Job Description & How to Apply Below
Position: Research Scientist - E-commerce Recommendation(LLM Applications) - Global Frontier Tech Recruitment Program - 2027
We are looking for talented individuals to join our team in 2027. As a graduate, you will get opportunities to pursue bold ideas, tackle complex challenges, and unlock limitless growth. Launch your career where inspiration is infinite at our Company.
Successful candidates must be able to commit to an onboarding date by end of year 2027. Please state your availability and graduation date clearly in your resume.

Team Introduction
Global E-commerce is an e-commerce business built on Tik Tok (also known as Tik Tok Shop). It aims to become the preferred platform where users discover and purchase high-quality products at competitive prices. Across multiple scenarios-including live-streaming e-commerce, video-based commerce, and marketplace (shelf-based) commerce-the team is committed to delivering a more personalized, proactive, and efficient shopping experience for users, while providing merchants with a stable and reliable platform.

Its mission is to bring unique and high-quality products to global markets and make a better lifestyle easily accessible.

The Data-E-commerce team serves as the core algorithm and technical backbone of the Global E-commerce business. It focuses on algorithmic innovation in the e-commerce domain, helping users efficiently discover products of interest, ensuring transaction safety, and improving intelligence across all stages of the transaction process. Here, you will collaborate with top-tier product and engineering teams to tackle both technical and business challenges, driving the deep integration of advanced technologies into real-world e-commerce scenarios.

Project Overview
The Global E-commerce ecosystem has accumulated massive heterogeneous data, including user behavior, product images and text, multimedia content, sales data, and logistics time series. However, traditional models still face significant limitations in long-term forecasting, cross-modal understanding, and complex decision-making.
This project aims to build a foundational large model tailored for Global E-commerce scenarios. It will unify key elements such as users, products, content, logistics, and inventory into a single modeling framework. On top of this, a modular, pluggable Agent framework will be designed to integrate capabilities such as task planning, tool usage, multi-turn interaction, and environmental awareness. This enables end-to-end intelligent decision-making across workflows like demand forecasting, traffic allocation, and personalized recommendation.

Key Challenges
1. Heterogeneous Data Fusion & Alignment:
Unified modeling of user behavior sequences, product sales time-series signals, and multimodal product content, achieving deep semantic alignment across high-dimensional temporal and visual/textual representations.
2. Collaboration Between Recommendation LLMs and World Models:
Reformulating recommendation as a generative problem of producing user-specific recommendation lists, enabling end-to-end modeling based on large models.
3. Item Tokenization for Recommendation:
Efficiently encoding hundreds of millions of items into multimodal semantic representations to support large-scale training and generation tasks. Handling tens of terabytes of user behavior tokens during pretraining, improving scaling laws through model architecture and training strategies, reframing recommendation tasks into post-training problems (e.g., RLVR-based approaches), and optimizing for GMV and user experience. Building high-performance recommendation systems using inference frameworks such as SGLang.
4. Multimodal Large Models for E-commerce:
Developing multilingual and multimodal large models tailored for e-commerce, achieving state-of-the-art (SOTA) performance in core scenarios, and serving as the foundation for intelligent e-commerce agents across diverse applications.
5. Agent Evaluation, Safety & Compliance:
Designing evaluation metrics and benchmarks aligned with real-world business scenarios, ensuring robustness, safety, and compliance under highly constrained and adversarial environments.

Project Value

* Technical Value - Build a general-purpose multimodal foundation model, leveraging iterative improvements in models, data, and compute to achieve scaling-law-driven growth and establish a strong technical foundation.

* Business Value - Establish a foundational large model for Global E-commerce, leveraging generative recommendation, temporal models, and agent-based systems to drive GMV growth and user retention, forming a high-leverage revenue engine.

Responsibilities

* Design algorithms and systems that leverage LLMs and generative models for content-to-commerce matching, product summarization, etc

* Explore novel architectures and strategies for generative recommendation systems

* Contribute to the research community via internal papers, patents, or external publications

* Drive scientific rigor while balancing real-world constraints

Minimum Qualifications
1. Individuals who are completing or recently completed a PhD in Software…
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