Advanced AI Full Stack Engineer
About the role
We Are at the forefront of a new era in enterprise AI — one that moves beyond isolated models and experiments toward fully governed, production-grade AI systems. Our Data & AI practice brings together more than 45,000 professionals dedicated to helping clients build, deploy, and operate AI at scale. We design and engineer the platforms, runtimes, and developer tooling that make autonomous AI agents a reliable reality for the world's largest organizations.
Responsibilities
- Design and build agent orchestration runtimes — stateful execution loops that coordinate tool discovery, model inference, approval gates, and context management.
- Implement sandboxed execution environments with declarative policy enforcement (network egress, filesystem, compute quotas) that isolate agent workloads at the infrastructure level.
- Develop pluggable provider interfaces so that sandbox backends (container-based or microVM-based) are swappable without changing agent code.
- Build Python and Node.js/TypeScript SDKs and CLIs that give developers first-class interfaces for authoring, validating, and running AI agents locally and in enterprise environments.
- Design REST, gRPC, and event-streaming APIs (WebSocket, SSE) that serve as the communication backbone between agent runtimes, IDE integrations, and platform services.
- Implement framework adapters that normalize event streams from multiple AI frameworks into a unified platform event model, enabling consistent observability and governance regardless of the underlying agent framework.
- Build and maintain intelligent inference routing layers that intercept model API calls and dispatch them to on-premise or cloud model endpoints based on data-sovereignty, cost, and capability policies.
- Engineer multi-tier memory architectures spanning in-process working memory, cross-session relational stores, vector databases for semantic retrieval, and version-controlled procedural pipelines — each backed by swappable provider interfaces.
- Implement ephemeral credential injection and RBAC-scoped data access so agents operate under least-privilege principles without long-lived secrets in agent code.
- Instrument platform components with distributed tracing (OpenTelemetry), cost attribution, and P50/P95/P99 latency metrics exportable to standard observability backends.
- Implement CI/CD governance tooling — static validation pipelines that enforce schema correctness, separation-of-duty rules, and regulatory constraints before agent packages are promoted to production registries.
- Implement human-in-the-loop approval gates and audit-trail mechanisms compatible with enterprise compliance requirements.
- Collaborate closely with cross-functional teams — AI researchers, product managers, security engineers, and enterprise architects — to align platform capabilities with real-world agent use cases.
- Provide technical guidance on platform architecture decisions, code reviews, and engineering best practices across the team.
- Communicate architectural trade-offs and platform roadmap decisions clearly to both technical and non-technical stakeholders.
Requirements
- Bachelor's degree (or equivalent minimum 12 years work experience, or minimum 6 years' work experience with Associate's degree) in Computer Science, Computer Engineering, or a related field.
- Minimum of 2 years of experience with Python and/or Node.js/TypeScript building production backend services or platform tooling.
- Minimum of 1 year of experience building or integrating with AI/LLM systems, agent frameworks, or AI developer tooling.
- Bonus point is you have 4+ years of experience with Python and Node.js/TypeScript, with a strong track record of building and shipping developer-facing platforms, SDKs, or APIs.
- 2+ years of experience in one or more of: agent orchestration frameworks, inference serving infrastructure, sandboxed execution environments, or multi-tenant platform engineering.
- Hands-on experience with async Python frameworks (FastAPI, asyncio), containerisation and Kubernetes, event-streaming protocols (WebSocket, SSE, gRPC), and vector/relational databases.
- Familiarity with AI agent protocols (MCP, ACP, A2A), OpenTelemetry instrumentation, and modern AI framework ecosystems (LangGraph, OpenAI Agents SDK, Anthropic Claude SDK).
Qualifications
- Master's or PhD in Computer Science, Computer Engineering, or a related field is a plus but not required.
Skills
- Deep fluency in Python and Node.js.
- Experience with distributed systems, AI infrastructure, and developer experience.
- Experience with multi-tenant platform engineering.
- Experience with async Python frameworks (FastAPI, asyncio).
- Experience with containerisation and Kubernetes.
- Experience with event-streaming protocols (WebSocket, SSE, gRPC).
- Experience with vector/relational databases.
- Experience with AI agent protocols (MCP, ACP, A2A).
- Experience with OpenTelemetry instrumentation.
- Experience with modern AI framework ecosystems (LangGraph, OpenAI Agents SDK, Anthropic Claude SDK).
Benefits
Compensation at Accenture varies depending on a wide array of factors, which may include but are not limited to the specific office location, role, skill set, and level of experience. As required by local law, Accenture provides a reasonable range of compensation for roles that may be hired as set forth below. We anticipate this job posting will be posted until 06/30/2026.
Here's What You Need:
- Bachelor's degree (or equivalent minimum 12 years work experience, or minimum 6 years' work experience with Associate's degree) in Computer Science, Computer Engineering, or a related field.
- Minimum of 2 years of experience with Python and/or Node.js/TypeScript building production backend services or platform tooling.
- Minimum of 1 year of experience building or integrating with AI/LLM systems, agent frameworks, or AI developer tooling.
- Bonus point is you have 4+ years of experience with Python and Node.js/TypeScript, with a strong track record of building and shipping developer-facing platforms, SDKs, or APIs.
- 2+ years of experience in one or more of: agent orchestration frameworks, inference serving infrastructure, sandboxed execution environments, or multi-tenant platform engineering.
- Hands-on experience with async Python frameworks (FastAPI, asyncio), containerisation and Kubernetes, event-streaming protocols (WebSocket, SSE, gRPC), and vector/relational databases.
- Familiarity with AI agent protocols (MCP, ACP, A2A), OpenTelemetry instrumentation, and modern AI framework ecosystems (LangGraph, OpenAI Agents SDK, Anthropic Claude SDK).
- Master's or PhD in Computer Science, Computer Engineering, or a related field is a plus but not required.
For details, view a copy of the Accenture Equal Opportunity Statement.