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asq-sheriff/README.md

AEJAZ SHERIFF QUARAISHI

Principal AI Architect | Healthcare AI Systems | Production MLOps | Enterprise LLM Deployment

LinkedIn Website Email

Profile Views GitHub followers

Keywords: AI Architect Healthcare AI Production MLOps LLM Deployment RAG Systems Enterprise Architecture HIPAA Compliance Therapeutic AI Multi-Agent Systems AI Governance

Atlanta, GA | Open to Principal/Staff AI Architect Opportunities


Value Proposition

I turn AI demos into production systems that pass regulatory audits, scale to millions, and deliver measurable business outcomes.

Quantifiable Achievements

Metric Result
Therapeutic Quality Score 93.3/100 (40% above CMS 5-Star)
Crisis Detection Recall 100% with <5% false positives
System Latency <100ms @ 1000+ concurrent users
Production AI Systems 27 years enterprise delivery
Healthcare Members Served 6M+ at Blue Cross Blue Shield

Domain Expertise

  • Healthcare AI: FDA-ready therapeutic systems
  • Enterprise Scale: Blue Cross (12 yrs), IBM Labs (10 yrs)
  • Compliance: HIPAA, CMS, FDA, EU AI Act
  • Architecture: TOGAF 9.1 Certified
  • Current: Principal Architect @ Pragmatic Logic AI

Featured Projects

Stars

Production-Grade Multi-Agent Therapeutic AI | 17 Microservices | 100% Crisis Detection | HIPAA Compliant

Python Go PyTorch HIPAA

A complete AI system I designed and built from scratch for elderly mental health care:

Metric Achievement
Crisis Detection 100% recall, <1s response (30x faster than regulatory)
Latency ~200ms P50, ~450ms P95 (full request-to-response)
Caching 4-layer strategy with 60-70% hit rate
Intent Classification 303 prototypes across 10 therapeutic categories
Market Opportunity $3T+ TAM, 30,600 US facilities

Technical Highlights:

  • 7 therapeutic agents with evidence-based interventions (C-SSRS compliant)
  • 5-level risk stratification (Joint Commission compliant)
  • RAG pipeline with 6 parallel streams (asyncio.gather ~2x speedup)
  • Qwen 2.5-7B on Apple Silicon (Metal GPU, 45-50 tok/s)

View Demo Technical Portfolio Code Samples Process Flow

Executive Summary Investor Overview Partnership Models FAQ


Stars

The Definitive Enterprise AI Deployment Guide | 480+ Checklist Items | 20 Domains | CRISP-DM Aligned

AI MLOps LLMOps Governance

Addressing why 87% of ML projects fail to reach deployment:

Metric Value
Checklist Items 480+ production-ready checks
Domains 20 (Architecture, Data Quality, Agentic AI, Security, Red Teaming, FinOps, Governance, Healthcare AI, and more)
Lifecycle Model CRISP-DM aligned 8-stage framework with gate requirements
Industry Frameworks Gartner, OWASP LLM Top 10, NIST AI RMF, EU AI Act, ISO 42001
Companion Guides 7 deep-dive docs (MLOps Maturity, Lifecycle Stages, Failure Taxonomy, Case Studies)

Key Features:

  • MLOps Maturity Model assessment (Level 0-3)
  • Healthcare AI section with FDA regulatory overlay
  • Assured Intelligence for safety-critical systems (conformal prediction, causal validation)
  • Interactive HTML checklist with auto-scoring, CSV template, C4 architecture diagrams

"After 27 years of enterprise systems and analyzing $15B+ in AI failures (IBM Watson, Zillow, Babylon Health), I compiled everything you need to avoid the mistakes that killed billion-dollar AI projects."

Interactive Checklist CSV Template Architecture Diagram Companion Docs Contributing


Stars

RAG Pipeline | Vector Search | LLM Integration | Multi-Database Architecture

Python FastAPI LangChain MongoDB PostgreSQL Redis

Production-ready RAG demonstrating polyglot persistence and enterprise patterns:

Component Implementation
RAG Pipeline LangChain orchestration with semantic search
Vector Store MongoDB Atlas with embedding indexing
Polyglot Persistence PostgreSQL (ACID), ScyllaDB (logs), Redis (cache)
LLM Support OpenAI GPT + local Qwen fallback
Architecture Two-plane design for independent scaling

Enterprise Patterns: JWT/OAuth2 auth, billing service, rate limiting, structured logging, zero-downtime deployments

System Design Architecture Codebase RAG Fundamentals Roadmap


Stars

Production-Grade AWS VPC Module | Multi-AZ | Infrastructure as Code | Enterprise-Ready

Terraform AWS IaC CI/CD

A reusable Terraform module for deploying secure, scalable AWS VPC infrastructureβ€”the foundation for production AI workloads:

Metric Value
Resources Orchestrated 15+ AWS resources
Network Capacity 65,000+ IPs (/16 VPC)
Deployment Time ~3 minutes
Availability Multi-AZ (2-6 zones)
  • Network Architecture: Public/private subnet segmentation with NAT Gateway for secure egress
  • Security Features: VPC Flow Logs, Network ACLs, private-first design pattern
  • Enterprise Patterns: Consistent tagging, input validation, modular structure
  • CI/CD Pipeline: GitHub Actions with automated Terraform validation

Documentation Changelog Contributing MIT License


Stars

Production-Ready Python Project Template | Cookiecutter | Modern Tooling | Best Practices

Python Ruff Pre-commit Mypy Bandit Cookiecutter

A zero-config Cookiecutter template that scaffolds production-ready Python projects with modern tooling and automated quality gates:

Metric Value
Linting Speed 10-100x faster (Ruff vs Black+isort+Flake8)
Type Coverage 100% with Mypy strict mode
Setup Time ~30 seconds to scaffold
Quality Gates 5 automated pre-commit hooks
  • Modern Toolchain: Ruff (unified linter/formatter), Mypy, Pytest, Bandit security scanning
  • Automated Quality: Pre-commit hooks for lint, format, type-check, and security on every commit
  • Production Patterns: Typer CLI scaffolding, Rich terminal UI, conventional commits with Commitizen
  • Rich Documentation: Mermaid diagrams for architecture, workflow, and toolchain visualization
flowchart LR
    CODE[Your Code] --> RUFF[Ruff] --> MYPY[Mypy] --> PYTEST[Pytest] --> BANDIT[Bandit] --> COMMIT[Commit]
Loading

"The foundation I use for all my AI/ML projectsβ€”consistent tooling means I can focus on solving problems, not configuring environments."

Quick Start Features Tool Stack Pre-commit Config MIT License


Technical Stack

Languages & Frameworks

Python Go Java FastAPI React

AI/ML & LLM Infrastructure

PyTorch LangChain MLflow Hugging Face OpenAI Vertex AI

Databases & Storage

PostgreSQL MongoDB Redis ScyllaDB

Infrastructure & DevOps

AWS GCP Terraform Docker Kubernetes


Certifications & Credentials

TOGAF 9 Certified
TOGAF 9.1
Certified Enterprise Architect
HL7 FHIR Proficient
HL7 FHIR
Healthcare Interoperability
HIPAA Security Officer ITIL 4 Foundation
ITIL 4
Foundation

Roadmap

Milestone Description Status
Lilo Engine Core 17 microservices, 7 therapeutic agents, 100% crisis recall Complete
Safety-Critical Infrastructure IEC 61508 compliant safety kernel, formal verification In Progress
EHR Integration Epic & Cerner via FHIR R4, SMART on FHIR OAuth 2.0 Q2 2026
Edge-Cloud Architecture K3s + Jetson for <50ms local inference Q3 2026
FDA De Novo Submission Clinical validation with 100 residents across 3 facilities Q4 2026
RPM Device Integration Vitals monitoring with Medicare billing ($1,560/patient/year) 2027

Current Focus

Lilo Engine Phase 2: Safety-Critical Infrastructure

Building the next evolution of the therapeutic AI platform with formal safety guarantees.

Next Milestone: Safety Kernel + Device Abstraction Layer

Target Specification
Safety Standard IEC 61508 SIL 2
Formal Verification TLA+ / Alloy specifications
Edge Latency <50ms local inference
Device Support Jetson Orin + Apple Silicon

Platform Metrics

Metric Current
Crisis Detection 100% recall, <1s
Therapeutic Score 93.3/100
Microservices 17
AI Agents 7

Compliance Targets

HIPAA FDA ISO

"The difference between a demo and production isn't the AI modelβ€”it's the 90% of 'boring' stuff that makes it reliable, secure, and scalable."


Let's Connect

Looking for a Principal/Staff AI Architect who can deliver production AI systems?

LinkedIn Email Website


27 years of progressive technical leadership | C-suite vision to hands-on delivery | Enterprise AI at scale

Pragmatic Logic AI

@asq-sheriff's activity is private