Skip to main content
Jobs via Dice logo

React Developer with AI

Jobs via Dice
Full TimemidHybrid
Posted March 4, 2026

Resume Keywords to Include

Make sure these keywords appear in your resume to improve ATS scoring

GraphQLReactRESTCI/CDAPI

Sign up free to auto-tailor your resume with all these keywords and get a higher ATS score

Job Description

Dice is the leading career destination for tech experts at every stage of their careers. Our client, Appiness Inc., is seeking the following. Apply via Dice today

Job Title:

React Developer with AI

Location:

Washington D.C Hybrid, 4 days onsite a week)

Duration:

Long term contract

Mode of Interview:

Onsite interview

Job Description

Looking for a Full Stack Developer with recent AI experience and a strong background in React and

Must have skills:

React, , and AI.

Roles & Responsibilities:

We seek developers with an AI-first engineering mindset, able to choose between deterministic code, LLMs, and agents, and to design for probabilistic outputs with robust fallback strategies while balancing cost, latency, and reliability.

Core GenAI & LLM expertise includes integrating LLMs into production, prompt engineering, structured outputs, RAG pipelines, effective context management, and quality/hallucination evaluation.

Rapid solution development skills:

proficiency with modern AI development platforms, APIs, and tooling to quickly prototype, iterate, and deploy functional AI capabilities into real-world systems.

Agentic AI experience:

building autonomosemi-autonomous agents with clear goals, constraints, orchestration patterns, tool-calling, state/memory handling, guardrails, and behavioural observability.

Full-stack capabilities: Backend — API design (REST/GraphQL), secure services, data modelling, async workflows, external integrations. Frontend — modern frameworks (e.g., React), AI-native UX (streaming responses, explainability), state management, human-AI interaction patterns.

Cloud-native experience in containerized/microservice environments, CI/CD for AI components, secure secrets handling, cost-aware designs, and performance optimization.

Data & knowledge engineering:

handling structured/unstructured data, building pipelines, preprocessing, embeddings, ranking, and versioning AI artifacts.

Focus on reliability, security, and responsible AI: safeguard sensitive data, mitigate leakage/bias/safety risks, ensure auditability, and support graceful degradation.

Excellent collaboration and communication:

clear explanation of AI behaviour, cross-functional teamwork, documentation, and critical output review.

High learning agility and craftsmanship:

staying current with evolving AI tools, delivering production-quality systems.

Want AI-powered job matching?

Upload your resume and get every job scored, your resume tailored, and hiring manager emails found - automatically.

Get Started Free