Stellar Consulting Solutions, LLC

Full Stack AI Tech Lead

⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Full Stack AI Tech Lead with a 12+ year software engineering background, focusing on spec-first development, full stack application architecture, and AWS deployment. Pay rate is "unknown," and location is "remote." Key skills include React, Node.js, Python, and GenAI experience.
🌎 - Country
United States
πŸ’± - Currency
$ USD
-
πŸ’° - Day rate
Unknown
-
πŸ—“οΈ - Date
July 10, 2026
πŸ•’ - Duration
Unknown
-
🏝️ - Location
Unknown
-
πŸ“„ - Contract
Unknown
-
πŸ”’ - Security
Unknown
-
πŸ“ - Location detailed
Atlanta, GA
-
🧠 - Skills detailed
#Docker #Computer Science #EC2 #JavaScript #Langchain #Lambda (AWS Lambda) #ML (Machine Learning) #API (Application Programming Interface) #Cloud #RDS (Amazon Relational Database Service) #Terraform #Deployment #Indexing #AI (Artificial Intelligence) #MongoDB #REST (Representational State Transfer) #Code Reviews #Security #Databases #Kubernetes #GraphQL #SQS (Simple Queue Service) #Scala #GitHub #Strategy #PostgreSQL #TypeScript #Migration #S3 (Amazon Simple Storage Service) #Data Architecture #Python #Schema Design #AWS (Amazon Web Services) #React #SNS (Simple Notification Service)
Role description
ob Description/ Responsibilities β€’ Drive spec-first development practices across teams β€” leading the authoring of specs, technical plans, and agent-ready task breakdowns using GitHub Spec Kit or equivalent tooling before any code is written. β€’ Architect and build full stack web applications using React and modern JavaScript / TypeScript frameworks on the frontend, backed by Node.js and Python services. β€’ Design, develop, and maintain RESTful and GraphQL APIs β€” ensuring performance, reliability, versioning, and security across all service boundaries. β€’ Lead cloud architecture and deployment on AWS, leveraging services such as Lambda, EC2, S3, API Gateway, RDS, and CloudFormation for scalable, resilient systems. β€’ Integrate and build AI-powered features using LLMs, AI agents, and prompt engineering techniques, translating GenAI capabilities into tangible product value. β€’ Own data architecture decisions across MongoDB and PostgreSQL, including schema design, indexing strategies, query optimization, and migrations. β€’ Mentor and technically guide engineers at all levels, conducting code reviews and raising the overall engineering bar across the organization. β€’ Partner with product, design, and AI/ML teams to define requirements and translate them into well-specified, high-quality software. β€’ Contribute to engineering strategy, tooling choices, and cross-team standards as a senior technical leader. Required Qualifications β€’ 12+ years of professional software engineering experience with a strong full stack background. β€’ Proven experience with GenAI tools and a spec-first development approach β€” including GitHub Spec Kit, AI agent frameworks, or equivalent spec-driven methodologies. β€’ Expert-level proficiency in React and modern JavaScript / TypeScript frameworks (Next.js, Vue, or similar). β€’ Strong backend development experience with both Node.js and Python β€” building, maintaining, and scaling production-grade REST and GraphQL APIs. β€’ Deep, hands-on experience with AWS β€” comfortable across core services (Lambda, EC2, S3, API Gateway, RDS) as well as security, networking, and cost optimization. β€’ Solid experience designing and managing both MongoDB (document store) and PostgreSQL (relational) databases at scale. β€’ Demonstrated ability to integrate LLM APIs (OpenAI, Anthropic, or similar), build prompt engineering pipelines, and deliver AI-augmented product features. β€’ Track record of leading technical delivery β€” setting architecture direction, unblocking teams, and owning outcomes across complex, multi-service systems. β€’ Bachelor’s or master’s degree in computer science, Engineering, or equivalent practical experience. Good to Have β€’ Experience with GitHub Copilot, Cursor, or AI-assisted development environments integrated into day-to-day engineering workflows. β€’ Familiarity with containerization (Docker, Kubernetes) and infrastructure-as-code tools (Terraform, AWS CDK). β€’ Exposure to vector databases (Pinecone, pgvector) or RAG (Retrieval-Augmented Generation) pipeline design. β€’ Experience with AI orchestration frameworks such as LangChain or LlamaIndex. β€’ Knowledge of event-driven architecture patterns using AWS SQS, SNS, or EventBridge. β€’ Familiarity with MLOps practices and deploying ML models into production pipelines. β€’ Contributions to open-source projects, technical writing, or a portfolio of AI-integrated applications.