We're building an open financial system for the world.
Senior Software Engineer – AI Platform Team
Location
United States
Posted
2 days ago
Salary
0
Seniority
Senior
Job Description
Senior Software Engineer – AI Platform Team
Coinbase
• Build and operate the LLM and agent infrastructure every team at Coinbase builds on. • Ship high impact AI agents on top of the LLM infrastructure. • Serve as the company's single path to LLMs and the substrate for the full agent lifecycle: build, deploy, run, observe, improve.
Job Requirements
- Own multi quarter, high impact initiatives on the platform (gateway, runtime, knowledge, governance) or the applied agents on top.
- Partner across engineering, security, legal, finance, and product.
- Work directly with our partners at the frontier labs and major cloud providers.
Benefits
- Equal Opportunity Employer
- Reasonable accommodations for individuals with disabilities
- Collaboration with global teams
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AI Tech Lead
JalasoftWe provide the best software engineering solutions by investing in our people first.
• Serving as Scrum Master and Delivery Lead for both AI teams: organizing and facilitating sprint planning, daily stand-ups, backlog grooming, and retrospectives. • Shielding both teams from day-to-day integration distractions by ensuring the junior development team receives clean task definitions, structured schemas, and clearly scoped technical requirements. • Balancing high-speed AI prototyping demands against the structured pipeline stabilization cycles required for enterprise-grade development. • Managing cross-team dependency and interface mapping to ensure smooth collaboration between the senior and junior engineering layers. • Translating strict architectural guardrails — network isolation, database connection limits, cost-containment — from the System Architects into practical workflows for the engineering teams. • Partnering with Loftware Architects to ensure teams safely leverage AWS services and data read replicas without compromising corporate security boundaries, tenant isolation, or regional compliance. • Leading technical review sessions to determine the appropriate storage strategy (Amazon MemoryDB / Redis OSS / Valkey vs. pgvector vs. OpenSearch), balancing developer needs against enterprise infrastructure standards. • Overseeing evaluation frameworks for multi-step agent workflows to ensure deterministic behavior and eliminate unhandled hallucinations. • Validating that all data ingestion flows and internal tool-calling structures adhere to type-safe validation layers, preventing malformed agent responses from breaking downstream systems or leaking PII. • Overseeing the centralized repository for system prompts, prompt caching strategies, and Amazon Bedrock configurations to ensure optimal performance, token budgeting, and corporate policy alignment. • Working with internal teams to define and enforce robust CI/CD strategies for AI agents, ensuring that changes to prompts, embeddings, or state-machine routing rules are deployed without service disruption. • Contributing to operational protocols for deployment failures mid-workflow, ensuring both teams design for idempotency to handle unexpected model degradation or pipeline failures gracefully.
• Contribuir na evolução da arquitetura da plataforma de agentes de IA, garantindo padronização e reusabilidade; • Implementar mecanismos de tracking, métricas, logging e observabilidade para agentes; • Apoiar a análise de iniciativas com agentes de IA, entendendo necessidades, padrões e requisitos; • Desenvolver e integrar componentes reutilizáveis para o ecossistema de IA; • Colaborar com diferentes iniciativas, garantindo alinhamento técnico e compartilhamento de boas práticas; • Desenvolver MVPs estruturados (templates de agentes, documentação, monitoramento); • Apoiar a definição de padrões, protocolos e boas práticas para desenvolvimento de agentes;
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