Software Engineer Vice President Wealth Management Engineering
Who We Are
Wealth Management
Across Wealth Management Goldman Sachs helps empower clients and customers around the world to reach their financial goals. Our advisor-led wealth management businesses provide financial planning investment management banking and comprehensive advice to a wide range of clients including ultra-high net worth and high net worth individuals as well as family offices foundations and endowments and corporations and their employees. Our consumer business provides digital solutions for customers to better spend borrow invest and save. Across Wealth Management our growth is driven by a relentless focus on our people our clients and customers and leading-edge technology data and design.
The Client Communications Platform is a strategic initiative establishing industry-leading standards for transparency efficiency and consistent service in client and advisor communications. The platform is modernizing through cloud-native infrastructure (AWS) and advanced data processing technologies (Snowflake and Spark) to enhance data quality and availability. Spanning five technical domainsdata sourcing content generation storage and accessibility client delivery and workflow analyticsthe platform automates processes improves user experiences and transitions from legacy systems to modern scalable solutions that deliver operational efficiencies and superior client service.
We are seeking a Senior Software Engineer with 10 years of experience to design build and operate cloud-native data-intensive systems on AWS. You will lead the development of resilient microservices and high-throughput data pipelines leveraging Spring Boot Apache Spark and Snowflake. The ideal candidate combines strong software engineering fundamentals with hands-on cloud expertise data engineering skills and a pragmatic approach to reliability security and cost efficiency. You are fluent with GitLab for source control code reviews and CI/CD.
Your Impact
A successful candidate will be able to balance project management trade-offs own decisions and communicate effectively with senior stakeholders across business partners and technology peers with an eye towards influencing and driving positive business outcomes.
Collaborate closely with product data and platform teams; author technical designs review merge requests and mentor engineers
Design develop and own cloud-native RESTful microservices and data pipelines using Java SpringBoot Apache Spark and Snowflake.
Implement batch and streaming data processing using Spark (DataFrames Spark SQL Structured Streaming) on EMR or EKS; orchestrate with AWS Glue Step Functions or Airflow.
Model and optimize Snowflake workloads (virtual warehouses micro-partitioning clustering query profiling caching); implement Snowpipe Tasks Streams RBAC and data governance.
Apply AWS Well-Architected best practices across reliability security performance cost optimization and operational excellence (VPC design IAM least privilege KMS Secrets Manager CloudWatch).
Implement observability and SRE practices: metrics logs tracing (OpenTelemetry) dashboards (CloudWatch Grafana) alerting SLOs incident response and postmortems.
Perform performance engineering (API latency P99 improvements Spark job tuning Snowflake warehouse sizing) and cost governance (right-sizing auto-suspend lifecycle policies).
Uphold high standards for testing (unit integration contract performance) code quality and secure coding; leverage GitLab pipeline gates for quality and security checks.
Basic Qualifications
10 years of professional software engineering experience building production systems.
Strong Java with Spring Framework (Spring Boot Spring Data; Spring Cloud preferred.
Solid grasp on Observability stack: OpenTelemetry Prometheus Grafana; distributed tracing.
Strong foundation of cloud computing and distributed systems fundamentals: scalability availability consistency tradeoffs event-driven architectures idempotency and backpressure.
Experience working with no-SQL databases (MongoDB preferred) and messaging systems (Kafka)
Proficient in data modeling and building reliable data integrations and APIs.
Experience with CI/CD using GitLab CI/CD and Git version control; strong familiarity with merge requests code reviews and branching strategies.
5 years of hands-on AWS experience with core services: EC2 S3 IAM VPC RDS/Aurora Lambda ECS/EKS CloudWatch; understanding of networking (subnets routing security groups NACLs).
2 years working with Apache Spark (DataFrames Spark SQL Structured Streaming) including performance tuning (partitioning join strategies memory management serialization).
Preferred Qualifications
AWS Certifications (Solution Architect Developer Associate/Professional)
Spring Cloud patterns (service discovery config circuit breakers via Resilience4j).
Infrastructure as Code with Terraform.
Security and compliance familiarity (SOC 2 ISO 27001 GDPR) and secure data handling (PII tokenization masking).
Goldman Sachs Engineering Culture At Goldman Sachs our Engineers dont just make things we make things possible. Change the world by connecting people and capital with ideas. Solve the most challenging and pressing engineering problems for our clients. Join our engineering teams that build massively scalable software and systems architect low latency infrastructure solutions proactively guard against cyber threats and leverage machine learning alongside financial engineering to continuously turn data into action. Create new businesses transform finance and explore a world of opportunity at the speed of markets Engineering is at the critical center of our business and our dynamic environment requires innovative strategic thinking and immediate real solutions. Want to push the limit of digital possibilities Start here!
Required Experience:
Exec
The Goldman Sachs Group, Inc. is a leading global investment banking, securities, and asset and wealth management firm that provides a wide range of financial services.