- Responsible for the design and construction of core data closed loop pipelines. Develop toolchains for data cleaning, annotation quality inspection, and data mining to support the algorithm team in quickly locating model error cases and driving iterative model optimization.
- Data Support for Production and R&D Processes. This includes log event tracking, connected vehicle data, internal and external data collection, data synchronization, data cleaning and standardization, data modeling, offline and real-time data processing, data as a service, and data visualization. Support business operations such as autonomous driving, smart cockpits, overseas data collection, and robotics data collection.
- Responsible for optimizing the performance of the entire data pipeline (collection, cleaning, conversion). Solve bottlenecks in large-scale data transmission, memory management, I/O, etc., and build a distributed data processing system with high throughput and low latency.
- Responsible for building a data management platform covering the entire process from data collection to data lake ingestion to model training. Implement capabilities for data version control, data lineage tracing, metadata management, and fast data retrieval to support unified data access and collaboration across multiple teams.
- Collaborate with the large model team and other technical teams to deeply understand business requirements, respond quickly, and ensure successful implementation.
- Bachelor's degree or higher in Computer Science, Software Engineering, Artificial Intelligence, or related fields.
- 5-8+ years of experience in large-scale data processing or data platform development.
- Proficiency in at least one programming language among Python / Go / Java. Solid software engineering foundation, good coding standards, and a strong sense of code quality.
- Hands-on project experience in at least two of the following areas:
- Design and development of large-scale data pipelines / ETL systems, with end-to-end experience in data cleaning, transformation, and loading.
- Production-level experience with distributed message queues (Kafka / Pulsar / RabbitMQ), familiar with stream processing paradigms.
- Experience with distributed data lake systems (e.g., Apache Iceberg), familiar with Iceberg's table format, partition evolution, snapshot isolation, etc., with practical performance tuning and deployment experience.
- Experience with columnar storage formats (e.g., Lance) and related query engines, with practical application in large model training.
- Hands-on experience using and optimizing relational databases (MySQL / PostgreSQL) and NoSQL databases (Redis / MongoDB). Understand metadata management and caching strategies.
- Experience in performance optimization and troubleshooting for large-scale distributed systems, able to quickly locate and resolve complex performance bottlenecks. Experience with Kubernetes / Docker containerization deployment.
- Strong cross-team communication and collaboration skills, high sense of responsibility, and proactive problem-solving attitude.
- Familiarity with closed-loop data in the embodied AI industry will be a huge plus.
- Some understanding of the autonomous driving industry, awareness of data closed loop and data flywheel concepts, and enthusiasm for this field.
- Experience with AI infrastructure or model training workflows (e.g., data loading, feature engineering, data preparation for model evaluation).
- Familiarity with data lake / data warehouse systems, with practical experience implementing data version control and data lineage tracing.
- Open-source contributions on GitHub or a technical blog, with continuous attention to the latest technological trends in big data / AI infrastructure.
- A fun, supportive and engaging environment.
- Infrastructures and computational resources to support your work.
- Opportunity to work on cutting edge technologies with the top talents in the field.
- Opportunity to make significant impact on the transportation revolution by the means of advancing autonomous driving.
- Competitive compensation package.
- Snacks, lunches, dinners, and fun activities.
Skills Required
- Bachelor's degree or higher in Computer Science, Software Engineering, Artificial Intelligence, or related fields
- 5-8+ years of experience in large-scale data processing or data platform development
- Proficiency in at least one programming language among Python / Go / Java
- Hands-on project experience in large-scale data pipelines / ETL systems
- Experience with distributed message queues (Kafka / Pulsar / RabbitMQ)
- Experience with distributed data lake systems (e.g., Apache Iceberg)
- Hands-on experience using and optimizing relational databases (MySQL / PostgreSQL) and NoSQL databases (Redis / MongoDB)
- Experience in performance optimization for large-scale distributed systems
- Strong cross-team communication and collaboration skills
What We Do
Xpeng Motors is a leading Chinese electric vehicle and technology company that designs and manufactures intelligent automobiles that are seamlessly integrated with the Internet and utilize the latest advances in artificial intelligence. Focusing on China’s young and tech-savvy consumer base, XPENG Motors strives to offer smart mobility solutions with technology innovation and cutting-edge R&D. The company’s initial backers include its CEO & Chairman He Xiaopeng, the founder of UCWeb Inc. and a former Alibaba executive. It was co-founded in 2014 by Henry Xia and He Tao, former senior executives at Guangzhou Auto with expertise in innovative automotive technology and R&D. It has received funding from prominent Chinese and international investors including Alibaba Group, Foxconn Group and IDG Capital. Currently with 3,000 employees, the company is headquartered in Guangzhou and has design, R&D, manufacturing and sales & marketing divisions in Silicon Valley, San Diego, Beijing, Shanghai, Zhaoqing (Guangdong Province) and Zhengzhou (Henan Province).






