AI-Directed Software Engineer
Indexed description
This is a full-stack role with a DevOps component. You won't be specializing in one layer. You'll own features end-to-end — from the database schema, through the Java services, through the Angular or React UI, and out through the Kubernetes deployment that ships them.
Operating in an AI-first environment, you'll push the organization from AI-assisted toward AI-delegated software delivery.
Job Description
Our Stack
You don't need to know all of this on day one, but you'll work across it:
- Backend: Java, Maven, Jersey (JAX-RS), Jackson, Log4j, Tomcat
- Frontend (Angular): Angular + TypeScript , PrimeNG, PrimeFlex, Transloco, DayPilot
- Frontend (React): React, Vite, TypeScript, TailwindCSS
- Data: PostgreSQL (runtime + analytics instances), direct SQL
- Messaging: Apache ActiveMQ
- Native client: C# / .NET Framework (Windows ZeroClient), WiX / MSI installers
- Infra & DevOps: Docker, Kubernetes, AWS (CloudFormation, EFS, S3), Helm/Kustomize, multi-tenant cloud architecture
- Analytics & tooling: Python ETL pipelines, Swagger / OpenAPI
- WebApps (Angular)
- ReactWebApps (Vite/React)
- NativeClients (C#)
- Packages (Docker/K8s).
- End-to-end delivery of features from concept → demo → production, across backend, frontend, and deployment
- Directing AI tools to generate code, APIs, UI, SQL, infra config, and workflows
- Decomposing product requirements into AI-executable tasks
- Validation, testing, and hardening of AI-generated output
- Kubernetes/Docker configuration and deployment of the services you build
- Throughput and cycle time across your assigned workstreams
- Continuous improvement of AI-driven development patterns, prompts, and tooling
Every AI-generated output is a starting point, not a finished product. You own correctness, edge cases, security, and production readiness. The breadth of this stack is exactly why AI-directed development matters here: no single engineer can be a deep expert in Java, Angular, React, C#, PostgreSQL, and Kubernetes — but one engineer directing AI across all of them can.
What We're Looking For
- Strong software engineering fundamentals (APIs, distributed systems, debugging, data flows)
- Full-stack breadth — comfortable moving between backend services, UI, and deployment config in the same day
- Working familiarity with containers and Kubernetes (or willingness to ramp fast); can debug a failing pod, read a manifest, and ship a Helm change
- Demonstrated experience using AI coding tools (Claude Code, Cursor, Copilot, or similar) to ship real work
- Sharp eye for reviewing AI output — especially subtle correctness, security, or deployment issues
- Comfort in fast, ambiguous, rapidly changing environments
- Bias toward shipping working software over perfect design
- Systems thinking — understanding how components interact at scale
- Willingness to challenge both human and AI-generated assumptions
- Strong written communication — prompting is writing
What Success Looks Like (First 90 Days)
- Ship multiple features from concept to demo-ready in ≤5 days each, touching backend, frontend, and deployment where required
- Demonstrate effective use of AI to produce production-quality code across the stack
- Establish repeatable, documented workflows for AI-directed development
- Measurably improve delivery speed and consistency across your workstreams
- Validate and harden AI-generated output before it reaches customers
- Help move the team from AI-assisted → AI-directed development
Worker Type
Regular
Number Of Openings Available
1
Create a free Caio profile to unlock more results and save your role and location preferences.
Unlock free search