TikTok

Senior Research Engineer - AI-Native Online Datastore Systems

TikTok$212K — $450K *
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • PhD in Computer Science, Artificial Intelligence, or related field, or thesis-based Master's with research focus in AI, ML, software engineering, or systems.
  • Proficient in Python and Go (or C++/Java) with experience in translating research prototypes into production.
  • Expertise in LLM application engineering, including RAG and prompt engineering.
  • Strong foundation in distributed systems; knowledge of online storage and data management preferred.
  • Preferred experience includes peer-reviewed publications in agent systems or AIOps.

Responsibilities

  • Design and architect a centralized AI Context & Knowledge Layer for online datastore systems.
  • Research and implement Agentic Workflows across development and operations lifecycles.
  • Establish and validate Agent Evaluation & Experimentation methodologies to improve performance.
  • Create reusable Skills for online storage capabilities and integrate AI development tools.
  • Drive team-wide AI-Native adoption through demos, architecture reviews, and best practices.

Benefits

  • Medical, dental, and vision insurance from day one.
  • 401(k) retirement savings plan with company match.
  • Paid parental leave and short/long-term disability coverage.
  • Generous paid time off including 10 holidays, 10 sick days, and 17 personal days per year.
Full Job Description
Responsibilities

We are TikTok's Online Datastore Systems team, responsible for designing, building, and governing the core online storage infrastructure that powers our global business-including databases, caches, data synchronization, metadata management, storage governance, and global data distribution. Our mission is to deliver online data storage services with ultimate performance, reliability, and intelligence for hundreds of millions of users and countless business scenarios worldwide. The team is undergoing a pivotal paradigm shift: from manual oncall and hand-crafted governance toward AI-native development and operations. We already have early practices in production-an Oncall Agent (knowledge base + runbooks + tiered write-permission model), a storage replica governance Skill, and an Agent Box toolchain-but we need someone to design the AI infrastructure layer from scratch, establish an evaluation framework, and drive org-wide adoption. This is a greenfield opportunity. You won't be maintaining existing AI systems-you'll be the team's first dedicated AI-Native Research Engineer, balancing research exploration with hands-on engineering: studying how agents work best in online data storage contexts, and turning those insights into reusable infrastructure and workflows. Here, you will tackle world-class challenges in globalization, multi-region active-active, compliance, and cost efficiency-while using AI to redefine how storage systems are built and operated. Responsibilities - Design and build the AI Context & Knowledge Layer: Architect a centralized context layer for the online datastore systems team, integrating knowledge bases, runbooks, code repositories, and real-time system state so AI agents have grounded, traceable, team-specific domain knowledge. Continuously iterate on knowledge structure and retrieval strategies to improve answer quality and evidence-chain completeness. - Research and implement Agentic Workflows: Explore agent applications across the development lifecycle (AI-assisted coding, automated testing, PR pre-review, deployment validation) and the operations lifecycle (oncall triage, structured troubleshooting, storage governance task submission). Design multi-agent orchestration frameworks with tiered permission and safety guardrails (read-only / confirm-then-execute / human-execute). - Establish Agent Evaluation & Experimentation: Design offline eval sets and core metrics (hit rate, evidence-chain completeness, misoperation rate). Validate agent effectiveness through shadow mode or A/B experiments. Build a reproducible evaluation methodology to drive continuous improvement. Share findings through tech talks or internal write-ups. - Storage Platform Skill-ification & Toolchain Integration: Encapsulate core online storage capabilities (metadata queries, workflow troubleshooting, storage replica governance, DDL changes, etc.) as reusable Skills. Integrate with gdpa-cli, lark-cli, and real-time query tools. Build standardized AI development environments. - Drive AI-Native Adoption & Enablement: Accelerate team-wide adoption through pairing, workflow demos, architecture reviews, and best-practice documentation. Balance AI-driven speed with code quality and system safety. Serve as the technical advocate for AI-native transformation.

Qualifications

Minimum Qualification(s): - Research background (required - one of the following): - PhD in Computer Science, Artificial Intelligence, or a related field; or - Thesis-based Master's degree with a research focus in AI, ML, software engineering, or systems. - Proficiency in Python and Go (or C++ / Java), with the ability to translate research prototypes into production systems; AI-Native coding mindset. - Deep expertise in LLM application engineering: RAG, tool use / function calling, structured outputs, prompt / context engineering; proven track record of engineering research into shipped systems. - Solid distributed systems foundation; familiarity with online storage, caching, data sync, or metadata management is a plus. Preferred Qualification(s): - Peer-reviewed publications or top-tier conference acceptances in agent systems, LLM applications, AIOps, or SE4ML. - Research-grade experience designing agent evaluation, offline benchmarks, or experimentation frameworks. - Multi-agent orchestration and guardrail design for high-risk operations. - Global online storage infrastructure background (multi-region active-active, cross-region sync, compliance governance).

Job Information

[For Pay Transparency]Compensation Description (Annually)

The base salary range for this position in the selected city is $212800 - $450000 annually.

Compensation may vary outside of this range depending on a number of factors, including a candidate's qualifications, skills, competencies and experience, and location. Base pay is one part of the Total Package that is provided to compensate and recognize employees for their work, and this role may be eligible for additional discretionary bonuses/incentives, and restricted stock units.

Benefits may vary depending on the nature of employment and the country work location. Employees have day one access to medical, dental, and vision insurance, a 401(k) savings plan with company match, paid parental leave, short-term and long-term disability coverage, life insurance, wellbeing benefits, among others. Employees also receive 10 paid holidays per year, 10 paid sick days per year and 17 days of Paid Personal Time (prorated upon hire with increasing accruals by tenure).

The Company reserves the right to modify or change these benefits programs at any time, with or without notice.

About TikTok

TikTok is a social media app that allows users to create and share short videos. The app was launched in 2016 by Chinese tech company ByteDance. TikTok has become one of the most popular social media apps in the world, with over 1 billion active users. The app has been downloaded over 2 billion times worldwide. TikTok has faced controversy over its data privacy practices and its potential ties to the Chinese government. In 2020, the app faced a potential ban in the United States, but a deal was reached with Oracle and Walmart to create a new company called TikTok Global.
Learn more about TikTok
Size
1,750 employees
Industry
Founded
2012

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