Responsibilities:
We are looking for a highly motivated AI Full Stack Developer to join our team to build, deploy, and maintain end-to-end applications that leverage generative AI models and agentic architectures. As a Full-stack AI Developer, will bridge the gap between AI research and production-ready applications, working across the entire stack from frontend interfaces to backend logic and machine learning models. Will be responsible for building, testing, and scaling AI-driven products.
Key Responsibilities
· AI Application Development: Develop and maintain end-to-end AI applications, from user interfaces to backend logic, focusing on AI-powered features.
· ML Model Integration: Implement machine learning models (using frameworks like , , or ) into web and mobile applications.
· Backend & API Engineering: Build and maintain scalable backend services and RESTful APIs, often integrated with large language models (LLMs) and agentic frameworks.
· Frontend Development: Create interactive, responsive front-end components for user interfaces using modern frameworks like , , or .
· & Deployment: Manage end-to-end life cycles for production, including deployment workflows using , , or containerization tools to ensure high-performance applications.
· Database Management: Manage both relational and NoSQL databases to support AI-powered functionality.
· Collaboration: Work closely with data scientists, product managers, and designers to turn AI capabilities into user-focused products.
·
Required Qualifications & Skills
· Experience: Proven experience(5~8 yrs. for Middle Level & 9+ yrs. for Sr. Level) as a Full Stack Developer with specialized experience in AI model deployment.
· Backend Skills: Strong proficiency in Python and frameworks like FastAPI or Django.
· Frontend Skills: Experience with modern JavaScript frameworks (React.js + Node.js,Next.js, Plotly Dash + FastAPI).
· AI/ML Knowledge: Familiarity with AI model integration (e.g., OpenAI API, LangChain, PyTorch).
· Cloud/DevOps: Experience in Cloud platforms (AWS, Google Cloud Platform, Azure) and container technologies (Docker, Kubernetes).
· Education: Bachelor’s or Master’s degree in Computer Science, Artificial Intelligence, or a related field.