Sr. Full-Stack Engineer, AI Data Platform
Labelbox•1d ago
United StatesOnsiteFull-timeMid Level3+ yrs exp
Visa-friendly
Top focus
Full Stack EngineerData EngineerPlatform EngineerVp DataSenior Data Engineer
- Shape the Future of AI
- At Labelbox, we're building the critical infrastructure that powers breakthrough AI models at leading research labs and enterprises. Since 2018, we've been pioneering data-centric approaches that are fundamental to AI development
- our work becomes even more essential as AI capabilities expand exponentially.
- About Labelbox
- We're the only company offering three integrated solutions for frontier AI development:
- Enterprise Platform & Tools : Advanced annotation tools, workflow automation, and quality control systems that enable teams to produce high-quality training data at scale
- Frontier Data Labeling Service : Specialized data labeling through Alignerr, leveraging subject matter experts for next-generation AI models
- Expert Marketplace : Connecting AI teams with highly skilled annotators and domain experts for flexible scaling
- Why Join Us
- High-Impact Environment : We operate like an early-stage startup, focusing on impact over process. You'll take on expanded responsibilities quickly, with career growth directly tied to your contributions.
- Technical Excellence : Work at the cutting edge of AI development, collaborating with industry leaders and shaping the future of artificial intelligence.
- Innovation at Speed : We celebrate those who take ownership, move fast, and deliver impact. Our environment rewards high agency and rapid execution.
- Continuous Growth : Every role requires continuous learning and evolution. You'll be surrounded by curious minds solving complex problems at the frontier of AI.
- Clear Ownership : You'll know exactly what you're responsible for and have the autonomy to execute. We empower people to drive results through clear ownership and metrics.
- Role Overview
- We’re looking for a Sr. Full-Stack AI Engineer to join our team, where you’ll build the next generation of tools for developing, evaluating, and training state-of-the-art AI systems. You will own features end to end
- from user-facing experiences and APIs to backend services, data models, and infrastructure.
- You’ll be at the heart of our applied AI efforts, with a particular focus on human-in-the-loop systems used to generate high-quality training data for Large Language Models (LLMs) and AI agents. This includes building a platform that enables us and our customers to create and evaluate data, as well as systems that leverage LLMs to assist with reviewing, scoring
- improving human submissions.
- Your Impact
- Own Large Surface: Design, build, and ship workflows spanning frontend UI, APIs, backend services, databases, and production infrastructure across a variety of features.
- Enable Human-in-the-Loop AI Training: Build systems that allow humans to efficiently create, review, and curate high-quality AI training and evaluation data sets.
- Support RLHF and Preference Data Workflows: Design and implement tooling that supports RLHF-style pipelines, including task generation, human review, scoring, aggregation, and dataset versioning.
- Leverage LLMs in the Review Loop: Build systems that use LLMs to assist human reviewers, such as automated checks, critiques, ranking suggestions, or quality signals.
- Advance AI Evaluation: Design and implement evaluation frameworks and interactive tools for LLMs and AI agents across multiple data modalities (text, images, audio, video).
- Create Intuitive, Reviewer-Focused Interfaces: Build thoughtful, efficient user interfaces optimized for high-throughput human review, quality control, and operational workflows.
- Architect Scalable Data & Service Layers: Design APIs, backend services, and data schemas that support large-scale data creation, review, and iteration with strong guarantees around correctness and traceability.
- Solve Ambiguous, Real-World Problems: Translate loosely defined operational and research needs into practical, scalable, end-to-end systems.
- Ensure System Reliability: Participate in on-call rotations to monitor, troubleshoot, and resolve issues across the stack.
- Elevate the Team: Re-imagine engineering practices, development processes, and documentation. Share knowledge through technical writing and design discussions.
- What You Bring
- Bachelor’s degree in Computer Science, Data Engineering, or a related field.
- 3+ years of experience in a software or machine learning engineering role.
- A proactive , product-focused mindset and a high degree of ownership, with a passion for building solutions that empower users.
- Experience using frontend frameworks like React/Redux and backend systems and technologies like Python, Java, GraphQL; familiarity with NodeJS and NestJS is a plus.
- Knowledge of designing and managing scalable database systems, including relational databases (e.g., PostgreSQL, MySQL), NoSQL stores (e.g., MongoDB, Cassandra)
- cloud-native solutions (e.g., Google Spanner, AWS DynamoDB).
- Working knowledge of cloud infrastructure like GCP (GCS, PubSub) and containerization (Kubernetes).
- Excellent communication and collaboration skills.
- High proficiency in leveraging AI tools for daily development (e.g., Cursor, GitHub Copilot).
- Comfort and enthusiasm for working in a fast-paced, agile environment where rapid problem-solving is key.
- A focus on writing clean, well-tested code and delivering your work on time.
- Bonus Points
- Experience building tools for AI/ML applications, particularly for data annotation , monitoring, or agent evaluation.
- Familiarity with data infrastructure components such as data pipelines, streaming systems, and storage architectures (e.g., Cloud Buckets, Key-Value Stores).
- Previous experience with search engines (e.g., ElasticSearch).
- Experience in optimizing databases for performance (e.g., schema design, indexing, query tuning) and integrating them with broader data workflows.
- Engineering at Labelbox
- At Labelbox Engineering, we're building a comprehensive platform that powers the future of AI development. Our team combines deep technical expertise with a passion for innovation, working at the intersection of AI infrastructure, data systems
- user experience. We believe in pushing technical boundaries while maintaining high standards of code quality and system reliability. Our engineering culture emphasizes autonomous decision-making, rapid iteration
- collaborative problem-solving. We've cultivated an environment where engineers can take ownership of significant challenges, experiment with cutting-edge technologies
- see their solutions directly impact how leading AI labs and enterprises build the next generation of AI systems.
- Our Technology Stack
- Our engineering team works with a modern tech stack designed for scalability, performance, and developer efficiency:
- Frontend: React.js with Redux, TypeScript
- Backend: Node.js, TypeScript, Python, some Java & Kotlin
- APIs: GraphQL
- Cloud & Infrastructure: Google Cloud Platform (GCP), Kubernetes
- Databases: MySQL, Spanner, PostgreSQL
- Queueing / Streaming: Kafka, PubSub
- Labelbox strives to ensure pay parity across the organization and discuss compensation transparently. The expected annual base salary range for United States-based candidates is below. This range is not inclusive of any potential equity packages or additional benefits. Exact compensation varies based on a variety of factors, including skills and competencies, experience
- geographical location.
- Annual base salary range
- $180,000 — $260,000 USD
- Life at Labelbox
- Location : Join our dedicated tech hub in San Francisco
- Work Style : Hybrid model with 3 days per week in office, combining collaboration and flexibility
- Environment : Fast-paced and high-intensity, perfect for ambitious individuals who thrive on ownership and quick decision-making
- Growth : Career advancement opportunities directly tied to your impact
- Vision : Be part of building the foundation for humanity's most transformative technology
- Our Vision
- We believe data will remain crucial in achieving artificial general intelligence. As AI models become more sophisticated, the need for high-quality, specialized training data will only grow. Join us in developing new products and services that enable the next generation of AI breakthroughs.
- Labelbox is backed by leading investors including SoftBank, Andreessen Horowitz, B Capital, Gradient Ventures, Databricks Ventures, and Kleiner Perkins. Our customers include Fortune 500 enterprises and leading AI labs.
- Your Personal Data Privacy : Any personal information you provide Labelbox as a part of your application will be processed in accordance with Labelbox’s Job Applicant Privacy notice .
- Any emails from Labelbox team members will originate from a @labelbox.com email address. If you encounter anything that raises suspicions during your interactions, we encourage you to exercise caution and suspend or discontinue communications.
Required skills
PythonJavaGraphQLReactReduxPostgreSQLMySQLMongoDBCassandraGoogle SpannerAWS DynamoDBGCPKubernetes