Role Overview
We’re looking for a 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, and improving human submissions.
Your Impact
- Own End-to-End Product Features
Design, build, and ship complete workflows spanning frontend UI, APIs, backend services, databases, and production infrastructure.
- Enable Human-in-the-Loop AI Training
Build systems that allow humans to efficiently create, review, and curate high-quality training and evaluation data used in AI model development.
- 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—while maintaining human oversight.
- 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 (e.g., in React) 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 full stack.
- Elevate the Team
Improve 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.
- 2+ 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), and cloud-native solutions (e.g., Google Spanner, AWS DynamoDB).
- Familiarity with cloud infrastructure like GCP (GCS, PubSub) and containerization (Kubernetes) is a plus.
- 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, and 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, and collaborative problem-solving. We've cultivated an environment where engineers can take ownership of significant challenges, experiment with cutting-edge technologies, and 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