Full Stack AI Developer
Listed on 2026-02-08
-
Software Development
AI Engineer, Full Stack Developer
Location: California
Overview
As a Full Stack AI Developer, you will build and deliver intelligent, AI-powered applications that bridge modern web development and advanced AI technologies. You will work across the full stack to integrate, optimize, and deploy AI solutions that solve real-world problems and scale in production environments.
Company ProfileOur client is a US-based company that builds enterprise-grade, AI-powered marketing systems that help businesses grow online. By automating and optimizing digital marketing campaigns, they deliver strategies that once required large teams and six-figure budgets now accessible at a fraction of the cost.
The company focuses on driving measurable results such as increased leads, traffic, and sales, enabling clients to scale without the need for large in-house marketing teams.
This is a great opportunity for a Full Stack AI Developer to join a collaborative, growth-focused culture where impact matters, communication is open, and continuous learning is part of everyday work.
Duties and Responsibilities- Architect & Implement:
Develop and maintain robust, scalable full-stack applications with AI at their core - AI Integration:
Use modern AI development tools and APIs (such as OpenAI, Lang Chain, or Pinecone) to build intelligent features - Code Mastery:
Maintain high standards of code quality through Git Hub, participating in rigorous code reviews and collaborative version control - Innovate:
Collaborate with cross-functional teams to brainstorm, prototype, and deploy new AI-driven products - Optimize:
Refine existing projects to improve performance, responsiveness, and AI accuracy
- At least 3 years of experience in Full Stack AI Development
- Technical Versatility:
Strong proficiency in both front-end (e.g., React, Vue, or Next.js) and back-end (e.g., Node.js, Python, or Go) technologies - AI Tooling:
Hands-on experience with AI development frameworks and a deep understanding of how to integrate Large Language Models (LLMs) into production environments - Git Hub Fluency:
Expert-level comfort with Git workflows, including branching, merging, and collaborative code editing - Problem Solver: A natural curiosity for solving complex technical puzzles and the ability to learn new tools quickly
- Communication:
The ability to explain technical AI concepts to non-technical stakeholders
- Experience with vector databases and prompt engineering.
- Knowledge of Dev Ops and deploying AI models to cloud environments (AWS, Azure, or GCP).
- A portfolio of personal AI projects or open-source contributions.
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).