Posted:
6/2/2026, 5:00:00 PM
Location(s):
Hangzhou City, Zhejiang, China ⋅ Zhejiang, China
Experience Level(s):
Senior
Field(s):
Software Engineering
· Lead end-to-end development of software application features and services from prototyping to production, aligned to clear product outcomes and KPIs.
· Partner with product and ML/AI engineering teams to translate business problems into end-to-end solution approaches (build vs buy, data needs, evaluation strategy) and executable delivery plans.
· Lead and scale high-performing engineering teams delivering multiple initiatives in parallel (AI-enabled applications, internal platforms, and developer tooling).
· Promote automation and engineering excellence (CI/CD for ML, automated evaluation, red-teaming, monitoring/alerting, and cost/performance optimization) to improve quality and velocity.
· Collaborate closely with product, data, security, legal/compliance, and global engineering teams to align on AI use cases, constraints, and delivery expectations.
· Work with platform teams to ensure reusable components and consistent solution patterns across the portfolio.
· Explore, evaluate, and introduce AI technologies where they add clear business value (models, frameworks, orchestration tools, data platforms), balancing performance, cost, and risk.
· Continuously improve development lifecycle practices (data/versioning, evaluation, deployment, monitoring, incident response) and governance models.
· Collaborate with team on troubleshooting, solution improvements.
· Bachelor’s degree or above in Computer Science, Software Engineering, or a related field (or equivalent practical experience).
· 7+ years of experience in software engineering, including significant leadership experience delivering financial systems in production at scale.
· Strong software engineering fundamentals (distributed systems, APIs, data structures) and proficiency with modern software development stacks (full stack: React/Java/Python), including strong code quality practices.
· Proven experience building and operating workloads on public cloud platforms (AWS/Azure/GCP), including scalable model training and low-latency inference deployment.
· Solid experience with data platforms and pipelines (e.g., Databricks, Snowflake, Spark).
· Deep understanding of modern engineering practices and MLOps (CI/CD, testing, experiment tracking, model/version management, monitoring, incident management).
· Experience working in global or distributed teams across different regions and time zones.
· Strong communication skills in English and Chinese, including the ability to present complex AI topics and decisions to senior stakeholders.
· Strong AI understanding is a plus.
Across the globe, institutional investors rely on us to help them manage risk, respond to challenges, and drive performance and profitability. We keep our clients at the heart of everything we do, and smart, engaged employees are essential to our continued success.
We are committed to fostering an environment where every employee feels valued and empowered to reach their full potential. As an essential partner in our shared success, you’ll benefit from inclusive development opportunities, flexible work-life support, paid volunteer days, and vibrant employee networks that keep you connected to what matters most. Join us in shaping the future.
As an Equal Opportunity Employer, we consider all qualified applicants for all positions without regard to race, creed, color, religion, national origin, ancestry, ethnicity, age, disability, genetic information, sex, sexual orientation, gender identity or expression, citizenship, marital status, domestic partnership or civil union status, familial status, military and veteran status, and other characteristics protected by applicable law.
Discover more information on jobs at StateStreet.com/careers
Read our CEO Statement
Website: https://www.statestreet.com/
Headquarter Location: Boston, Massachusetts, United States
Employee Count: 10001+
Year Founded: 1792
IPO Status: Public
Last Funding Type: Post-IPO Debt
Industries: Banking ⋅ Finance ⋅ Financial Services