Full-Stack AI Engineer

AI EngineerMachine Learning EngineerFull TimeRemote

Location

United States

Posted

5 days ago

Salary

Not specified

PythonPy TorchTensor FlowJava ScriptType ScriptReactNode.jsFast APIFlaskDockerKubernetesSQLSnowflakeBig QueryAWSAirflowMlflowLLMRAGETLCi/cdAPI Development

Job Description

This description is a summary of our understanding of the job description. Click on 'Apply' button to find out more.

Role Description

Our client is seeking a Full-Stack AI Engineer to design, build, and deploy AI-powered applications. This role requires bridging software engineering with applied machine learning, ensuring that models are integrated into production systems that are scalable, reliable, and user-friendly. The Full-Stack AI Engineer combines back-end services, front-end interfaces, and machine learning pipelines to deliver practical, business-driven AI solutions.

Responsibilities

  • AI Model Integration:
    • Deploy pre-trained and fine-tuned ML/LLM models (OpenAI, Hugging Face, TensorFlow, PyTorch).
    • Wrap models in APIs (FastAPI, Flask, Node.js) for scalable inference.
    • Implement vector search integrations (Pinecone, Weaviate, FAISS) for retrieval-augmented generation (RAG).
  • Data Engineering & Pipelines:
    • Build ETL pipelines for ingesting, cleaning, and transforming text, image, or structured data.
    • Automate data labeling, preprocessing, and versioning with Airflow, Prefect, or Dagster.
    • Store and manage datasets in cloud warehouses (Snowflake, BigQuery, Redshift).
  • Application Development (Full-Stack):
    • Build front-end UIs in React, Next.js, or Vue to surface AI-powered features (chatbots, dashboards, analytics).
    • Design back-end services and microservices to connect models to business logic.
    • Ensure responsive, intuitive, and secure interfaces for end users.
  • Infrastructure & Deployment:
    • Containerize ML services with Docker and deploy to Kubernetes clusters.
    • Automate CI/CD pipelines for model updates and application releases.
    • Monitor latency, cost, and model drift with MLflow, Weights & Biases, or custom dashboards.
  • Security & Compliance:
    • Ensure AI systems comply with data privacy standards (GDPR, HIPAA, SOC 2).
    • Implement rate limiting, access control, and secure API endpoints.
  • Collaboration & Iteration:
    • Work with data scientists to productionize prototypes.
    • Partner with product teams to scope AI features aligned with business needs.
    • Document systems for reproducibility and knowledge transfer.

Qualifications

  • Strong coder with a foundation in both full-stack development and applied ML/AI.
  • Comfortable building prototypes and scaling them to production-grade systems.
  • Analytical problem solver who balances performance, cost, and usability.
  • Curious and adaptable, staying current with emerging AI/LLM tools and frameworks.

Requirements

  • 3+ years in software engineering with exposure to AI/ML.
  • Proficiency in Python (PyTorch, TensorFlow) and JavaScript/TypeScript (React, Node.js).
  • Experience deploying ML models into production systems.
  • Strong SQL and experience with cloud data warehouses.

Ideal Experience & Skills

  • Built and scaled AI-powered SaaS products.
  • Experience with LLM fine-tuning, embeddings, and RAG pipelines.
  • Knowledge of MLOps practices (Kubeflow, MLflow, Vertex AI, SageMaker).
  • Familiarity with microservices, serverless architectures, and cost-optimized inference.

What Does a Typical Day Look Like?

A Full-Stack AI Engineer’s day revolves around connecting models to real-world applications. You will:

  • Review and refine model APIs, testing latency and accuracy.
  • Write front-end code to surface AI features in user-friendly interfaces.
  • Maintain pipelines that clean and prepare new datasets for training or fine-tuning.
  • Deploy updates through CI/CD pipelines, monitoring cost and performance post-release.
  • Collaborate with product and data science teams to prioritize AI features that solve real user problems.
  • Document workflows and results so solutions are repeatable and scalable.

Key Metrics for Success (KPIs)

  • Successful deployment of AI features to production on schedule.
  • Application uptime ≥ 99.9% and inference latency < 500ms for key endpoints.
  • Reduction in manual workflows replaced by AI features.
  • Model performance tracked and stable (accuracy, drift, false positives/negatives).
  • Positive user adoption and satisfaction of AI-driven features.

Interview Process

  • Initial Phone Screen
  • Video Interview with Pavago Recruiter
  • Technical Assessment (e.g., deploy a small ML model with API endpoints and basic front-end integration)
  • Client Interview(s) with Engineering Team
  • Offer & Background Verification

Job Requirements

  • Strong coder with a foundation in both full-stack development and applied ML/AI.
  • Comfortable building prototypes and scaling them to production-grade systems.
  • Analytical problem solver who balances performance, cost, and usability.
  • Curious and adaptable, staying current with emerging AI/LLM tools and frameworks.
  • 3+ years in software engineering with exposure to AI/ML.
  • Proficiency in Python (PyTorch, TensorFlow) and JavaScript/TypeScript (React, Node.js).
  • Experience deploying ML models into production systems.
  • Strong SQL and experience with cloud data warehouses.
  • Ideal Experience & Skills
  • Built and scaled AI-powered SaaS products.
  • Experience with LLM fine-tuning, embeddings, and RAG pipelines.
  • Knowledge of MLOps practices (Kubeflow, MLflow, Vertex AI, SageMaker).
  • Familiarity with microservices, serverless architectures, and cost-optimized inference.
  • What Does a Typical Day Look Like?
  • A Full-Stack AI Engineer’s day revolves around connecting models to real-world applications. You will:
  • Review and refine model APIs, testing latency and accuracy.
  • Write front-end code to surface AI features in user-friendly interfaces.
  • Maintain pipelines that clean and prepare new datasets for training or fine-tuning.
  • Deploy updates through CI/CD pipelines, monitoring cost and performance post-release.
  • Collaborate with product and data science teams to prioritize AI features that solve real user problems.
  • Document workflows and results so solutions are repeatable and scalable.
  • Key Metrics for Success (KPIs)
  • Successful deployment of AI features to production on schedule.
  • Application uptime ≥ 99.9% and inference latency < 500ms for key endpoints.
  • Reduction in manual workflows replaced by AI features.
  • Model performance tracked and stable (accuracy, drift, false positives/negatives).
  • Positive user adoption and satisfaction of AI-driven features.
  • Interview Process
  • Initial Phone Screen
  • Video Interview with Pavago Recruiter
  • Technical Assessment (e.g., deploy a small ML model with API endpoints and basic front-end integration)
  • Client Interview(s) with Engineering Team
  • Offer & Background Verification

Related Job Pages

More AI Engineer Jobs

AI Solutions Developer

HMH

HMH is a learning technology company committed to delivering connected solutions that engage learners, empower educators and improve student outcomes. As a leading provider of K–12 core curriculum, supplemental and intervention solutions, and professional learning services, HMH partners with educators and school districts to uncover solutions that unlock students’ potential and extend teachers’ capabilities. HMH serves more than 50 million students and 4 million educators in 150 countries.

AI Engineer5 days ago
Full TimeRemoteTeam 1,001-5,000H1B Sponsor

This role focuses on hands-on technical work supporting AI development and integration, including coding, testing, and system monitoring of AI applications using platforms like ChatGPT and Azure AI. Responsibilities also involve Agile coordination, maintaining backlogs, tracking sprints, and creating technical documentation.

PythonJavaScriptAI developmentChatGPTAzure AItestingdebuggingmodel deploymentAPI developmentworkflow automationdocumentationAgile
United States
$90K - $105K / year

Senior AI Engineer - United States

cyberu

Cornerstone powers the potential of organizations and their people to thrive in a changing world. Cornerstone Galaxy, the complete AI-powered workforce agility platform, meets organizations where they are. With Galaxy, organizations can identify skills gaps and development opportunities, retain and engage top talent, and provide multimodal learning experiences to meet the diverse needs of the modern workforce. More than 7,000 organizations and 100 million+ users in 180+ countries and in nearly 50 languages use Cornerstone Galaxy. Build high-performing, future-ready organizations and people today.

AI Engineer5 days ago
Full TimeRemoteTeam 11-50

The role involves supporting the design, development, and testing of advanced AI-driven features within workforce agility products, including those using Generative AI and Agentic Frameworks. Responsibilities also include collaborating on projects involving NLP, recommendation systems, and preparing datasets for model training and evaluation.

PythonJavaTensorFlowPyTorchscikit-learnLLMsGenerative AIRecommendation SystemsNLPHugging FaceData PreprocessingAgile
United States
$126K - $203K / year
AI Engineer5 days ago
Full TimeRemoteTeam 201-500H1B No Sponsor

The manager will act as a high-velocity tactical partner, taking clinical or operational objectives and independently designing, deploying, and owning AI/automation solutions to achieve efficiency gains. This involves hands-on building using tools like Microsoft Copilot Studio or Power Automate and managing adoption through staff training.

Microsoft Copilot StudioPower AutomateZapierKeragonLLMAutomationLow-codeNo-codePythonSQLData AnalysisWorkflow DesignClinical WorkflowsHealthcare Operations
United States + 1 moreAll locations: United States, Georgia
Full TimeRemoteTeam 201-500

We’re looking for a Senior Artificial Intelligence Engineer to help mature Flexion’s AI application development capabilities. Flexion is committed to providing top-tier AI application development services and is looking for an Artificial Intelligence Engineer to help us advance o...

AI application developmentGenerative AIML lifecyclemodel fine-tuningmodel deploymentmodel monitoringexperiment trackingmodel registryfeature storesvector databasescontainerizationcontainer orchestrationauto-scalingdistributed computingmodel quantizationmodel pruningmodel optimizationinference graphscloud deploymentfoundation modelsagile methodologiesmentoring
United States
$200K - $250K / year