Senior AI Architect AI, GenAI & Agentic AI

Overview

Remote
$70 - $80
Contract - W2
Contract - Independent
Contract - 12 Month(s)

Skills

Artificial Intelligence
Autogen
Cloud Computing
Machine Learning (ML)
Google Cloud Platform
Gap Analysis
Orchestration
Electronic Health Record (EHR)
Generative Artificial Intelligence (AI)
Machine Learning Operations (ML Ops)
context engineering
GenAI
LLMs
HIPAA
FDA
GDPR
Part 11/820
HITRUST
governance frameworks

Job Details

Role: Senior AI Architect AI, GenAI & Agentic AI (with Context Engineering Expertise)

Role Overview

We are looking for a Senior AI Architect to guide enterprise customers through current-state vs future-state AI transformations. The ideal candidate has deep expertise in context engineering designing and orchestrating context-aware AI systems and a proven track record of building enterprise-grade AI, GenAI, and Agentic AI solutions.

This role blends strategic advisory (gap analysis, roadmaps, executive communication) with hands-on technical architecture (context pipelines, orchestration frameworks, and governance).

Key Responsibilities

Advisory & Gap Analysis

  • Conduct AI maturity and readiness assessments, covering infrastructure, data, model lifecycle, and context engineering practices.
  • Perform gap analysis of current-state AI/GenAI systems vs desired future-state capabilities (e.g., from single-model solutions to context-rich multi-agent ecosystems).
  • Recommend AI adoption roadmaps aligned with business outcomes, ROI, and compliance needs.

Context Engineering & AI Enablement

  • Architect context engineering frameworks that unify structured, semi-structured, and unstructured enterprise knowledge into usable context for LLMs and agentic systems.
  • Build real-time context pipelines (ingestion, enrichment, retrieval, orchestration) to reduce latency and improve accuracy.
  • Define context interfaces/APIs to enable consumption of enterprise knowledge across AI agents, applications, and workflows.
  • Implement guardrails, policy layers, and context redaction modules to ensure security, compliance, and ethical AI usage.

Enterprise-Grade AI Architecture

  • Design scalable architectures for AI/GenAI/Agentic AI across cloud and hybrid environments (AWS, Azure, Google Cloud Platform).
  • Integrate LLMs with vector databases, knowledge graphs, and real-time context stores.
  • Lead multi-agent system design (LangGraph, MCP, AutoGen, custom orchestration) to enable autonomous workflows.
  • Ensure compliance with enterprise governance frameworks (HIPAA, FDA, GDPR, Part 11/820, HITRUST).

Strategy, Innovation & Customer Advisory

  • Run executive workshops and clearly articulate the value of context-aware AI architectures.
  • Build maturity models for context engineering adoption and measure business impact.
  • Stay ahead of the curve in Agentic AI, contextual orchestration, and self-healing AI systems.
  • Contribute to whitepapers, thought leadership, and reference architectures for enterprise customers.

Qualifications & Experience

  • Education: Bachelor s/master s in computer science, AI/ML, Data Science, or related; PhD a plus.

Experience:

  • 10+ years in AI/ML and enterprise architecture.
  • 3+ years with LLMs, GenAI platforms, and orchestration frameworks.
  • Proven ability to lead context engineering initiatives in large enterprises.

Technical Expertise:

  • Context Engineering: pgvector, Pinecone, Redis, Weaviate, Milvus, knowledge graphs, context layering techniques.
  • AI/GenAI: OpenAI, Anthropic, LLaMA, Hugging Face, fine-tuning, RAG pipelines, policy/guardrail frameworks.
  • Agentic AI: LangChain, LangGraph, MCP, AutoGen, custom orchestration.
  • Enterprise Systems: Integrations with ERP, CRM, EMR/EHR, ServiceNow, etc.
  • MLOps & Governance: MLflow, Kubeflow, ModelOps pipelines, Responsible AI frameworks, explainability tools (SHAP, LIME).

Key Competencies

  • Visionary strategist who can map current-state vs future-state AI for enterprises.
  • Hands-on architect with experience building context-aware, real-time AI ecosystems.
  • Strong executive advisory skills with ability to influence at CxO level.
  • Ability to balance innovation with compliance in regulated industries.
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About Microgreen Technologies LLC