What are the responsibilities and job description for the AI Engineer with Agentic AI position at Envision Technology Solutions?
Job Title: AI Engineer.
Location: Berkeley Heights, NJ / Alpharetta, GA (5 Days onsite)
Duration: Long term
Required Skills: -
- Strong software engineering fundamentals and proficiency in Python, Java, Springboot, Microservices, REST API, Spring Weblfux etc.
- Experience of working with Codex.
- Proven experience building LLM powered applications in production tool calling function, calling structured outputs retrieval and evaluation.
- Experience designing distributed systems and APIs REST, RPC plus event driven patterns Kafka, SQS, Pub Sub.
- Solid understanding of data engineering basics SQL data modeling feature engineering and data quality
- Handson knowledge of cloud platforms AWS or Azure or GCP containers, Docker and orchestration Kubernetes preferred.
- Ability to write clean testable secure code comfortable with code reviews and engineering rigor
- Experience with multiagent systems planning verification and autonomous workflow execution
- Experience with vector databases hybrid search and knowledge graphs
- Familiarity with model evaluation offline evals golden datasets adversarial testing regression harnesses and AB testing.
Technical Skills: -
- Agent frameworks Lang Graph Semantic Kernel similar orchestration frameworks or equivalent custom implementations
- RAG tooling embedding pipelines hybrid retrieval reranking chunking strategies citation provenance
- Observability Open Telemetry structured logging dashboards alerting
- Data systems OLTP analytics warehouses lakes streaming pipelines feature stores optional
- Testing unit integration tests for tools replay tests for agent traces eval harnesses for LLM outputs
Role and Responsibilities:
1. Agentic AI System Design Engineering
- Design and implement agent architectures planner executor tool using agents multiagent orchestration reflection evaluation loops.
- Build tooling integrations for agent’s merchant systems underwriting platforms transaction stores risk engines CRM case tools knowledge bases and workflow engines.
- Implement robust state management session memory task plans provenance traceability and replay ability of agent actions
2. LLM RAG Engineering for Payments Workloads
- Develop RAG pipelines over policies SOPs card network rules underwriting guidelines dispute playbooks and merchant agreements.
- Apply prompt and system design structured output patterns and schema validation for deterministic agent behaviour.
- Optimize for latency cost and reliability using caching model routing and evaluation driven prompt iteration.
3. ML Decisioning Integration
- Combine LLM agents with classical ML models fraud scoring anomaly detection risk scoring and rules engines.
- Build feedback loops from outcomes chargeback win rate false positives approval uplift to continuously improve models and agent strategies.
4. Safety Compliance and Responsible AI
- Implement guardrails PII handling policy enforcement prompt injection defences tool per missioning rate limiting and safe failover.
- Ensure auditability why an agent took action evidence used and human approval where required human in the loop.
5. Product ionization MLOps LLMOps
- Build CICD for agent services evaluation suites telemetry drift detection and incident response playbooks.
- Instrument agent behaviour using tracing spans structured logs and metrics task success tool errors hallucination indicators
6. Collaboration Leadership
- Partner with Product Risk Ops Underwriting Compliance and Engineering to convert business problems into deployable AI solutions.
- Mentor engineers set standards for agent design patterns testing and production readiness.