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Full-Stack AI Engineer 14 views

Remote Full-Stack AI Engineer Jobs 2026

An exciting career opportunity has emerged for a Full-Stack AI Engineer to join a dynamic team working remotely during U.S. client business hours. Facilitated by Pavago, this full-time role bridges the gap between software engineering and applied machine learning, ensuring that cutting-edge AI models are integrated into production systems that are scalable, reliable, and user-friendly.

This role is perfect for a strong coder who is comfortable building prototypes and scaling them to production-grade systems. If you are an analytical problem solver who stays current with emerging AI/LLM tools and frameworks, this is your chance to turn AI concepts into practical, business-driven solutions.

Job Overview and Details

Below is a quick overview of the job specifications, working hours, and technical requirements:

Job Feature Details
Job Title Full-Stack AI Engineer
Position Type Full-Time, 100% Remote
Working Hours U.S. client business hours (with flexibility for sprint schedules and model deployments).
Minimum Experience 3+ years in software engineering with exposure to AI/ML.
Core Tech Stack Python (PyTorch/TensorFlow), JS/TS (React/Node.js), SQL, Cloud Data Warehouses, Docker/Kubernetes.

Key Responsibilities

As a Full-Stack AI Engineer, your daily tasks will revolve around connecting models to real-world applications. Core duties include:

  • AI Model Integration: Deploy ML/LLM models (OpenAI, Hugging Face), wrap them in APIs (FastAPI, Node.js), and implement vector search integrations (Pinecone, FAISS) for RAG.
  • Data Engineering & Pipelines: Build ETL pipelines, automate data preprocessing with Airflow/Prefect, and manage datasets in Snowflake, BigQuery, or Redshift.
  • Full-Stack Development: Build responsive front-end UIs in React, Next.js, or Vue to surface AI features (chatbots, dashboards) and design robust back-end microservices.
  • Infrastructure & MLOps: Containerize services with Docker, deploy to Kubernetes, automate CI/CD, and monitor latency/model drift with MLflow or Weights & Biases.
  • Security & Compliance: Ensure data privacy compliance (GDPR, SOC 2) and implement rate limiting and access controls.

Ideal Experience & Skills

While the minimum requirement is 3 years of software engineering with AI exposure, the ideal candidate will also bring:

  • Proven experience building and scaling AI-powered SaaS products.
  • Hands-on expertise with LLM fine-tuning, embeddings, and RAG pipelines.
  • Deep knowledge of MLOps practices (Kubeflow, Vertex AI, SageMaker).
  • Familiarity with serverless architectures and cost-optimized inference.

Interview Process

The recruitment process is designed to thoroughly assess your technical and collaborative skills:

  1. Initial Phone Screen
  2. Video Interview with a Pavago Recruiter
  3. Technical Assessment (e.g., deploying a small ML model with API endpoints and basic front-end integration)
  4. Client Interview(s) with the Engineering Team
  5. Offer & Background Verification
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Company Information
  • Total Jobs 14 Jobs
  • Location Remote

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