What are the responsibilities and job description for the AI ML Solution Architect position at Reveille Technologies?
Python (PyTorch/TensorFlow), SQL, API design; familiarity with LangChain/LlamaIndex, Azure/AWS AI,
GitHub, Docker, Kubernetes
Roles & Responsibilities
- Define end-to-end AI/ML and GenAI architectures (data ingestion feature store model training inference monitoring).
- Design LLM-based solutions: RAG pipelines, prompt orchestration, guardrails, policy enforcement, and human-in-the-loop workflows.
- Select appropriate models (open source vs. hosted foundation models), vector databases, embedding strategies, and retrieval frameworks.
- Author architecture artifacts: context diagrams, sequence diagrams, deployment topology, decision records, security controls, and data lineage.
- Lead data architecture for AI workload data quality, labeling, metadata, PII handling, and de-identification.
- Establish MLOps: CI/CD for models, feature store, model registry, automated evaluation, canary rollout, A/B testing, drift monitoring.
- Optimize cost and performance for training/inference (GPU/TPU selection, quantization, distillation, batching).
- Ensure data privacy, consent, and secure access (role-based control, encryption, KMS, secret management).