Applied AI Engineer

Ramp

Remote Actively hiring
Remote, USA · New York City, NY Posted 137 days ago $155,000$339,500 / year

At a glance

AI generated

TL;DR

As a full-stack engineer on Ramp’s Applied AI team, you will work on cutting-edge projects involving large language models (LLMs) and develop innovative solutions such as AI Agents and Retrieval-Augmented Generation. Your responsibilities include building end-to-end full-stack AI applications, integrating components for AI infrastructure to support production-level inference and fine-tuning, and creating internal tools that enhance the productivity of Ramp’s engineering teams. You should be proficient in web frameworks, backend systems, and cloud infrastructure, with a proven track record of delivering full-stack AI projects in real-world production environments. This role offers an opportunity to contribute to groundbreaking AI applications at scale within a dynamic and innovative company.

Skills

Python JavaScript Node.js Django Flask React PostgreSQL MongoDB AWS GCP Kubernetes Terraform CI/CD GitOps

What you'll do

  • Develop and ship full-stack AI projects from conception to deployment.
  • Build and integrate components for scalable AI infrastructure in production.
  • Enhance engineering processes and tools to scale AI solutions across Ramp.
  • Create internal platforms and tools to improve productivity of AI teams.
  • Fine-tune models and build backend systems supporting AI-driven products.

What we're looking for

  • Proficient in full-stack development, including web frameworks and backend systems.
  • Experience working on AI projects with production use cases of large language models (LLMs).
  • Track record of building backend infrastructure to support AI-driven products.
  • Strong understanding of cloud infrastructure and its application in AI solutions.
  • Ability to develop tools and platforms enhancing productivity for AI and engineering teams.

Market check

Salary context

This $155,000–$339,500 range sits above 80% of similar postings on FindRole.

Peer median band

$161,850$240,000

Median floor and ceiling across peers.

Typical midpoint (25–75%)

$159,937$246,150

Middle half of comparable postings.

Based on 240 comparable postings.

* 240 is the maximum number of comparable postings sampled.

Employer

About Ramp

Ramp is a corporate spend management platform providing corporate cards, expense management, and accounts payable automation tools to help businesses control spending and operate more efficiently. Industry: Financial Technology & Corporate Spend Management

Ramp currently has 30 open roles on FindRole.

Listed pay typically runs $168,000–$287,450 across 30 roles with salary data.

Most-posted roles

View all roles at Ramp

More like this

Similar roles

Applied AI Engineer

Broadcom

Usa-Ca - Promontory B, US 17 days ago $141,300$226,000
Python Kubernetes Terraform Docker CI/CD VMware vSphere vSAN NSX Aria AWS GCP Azure PostgreSQL MongoDB Redis Prometheus Grafana GitLab Jenkins

Applied AI Engineer

Booz Allen Hamilton

US 14 days ago $99,000$225,000
Python FastAPI Flask Streamlit Gradio React TypeScript Kubernetes CI/CD Prometheus Grafana MLOps Docker PostgreSQL AWS Azure Google Cloud Platform

Applied AI Engineer II

Microsoft

Redmond, Wa,Us, US 10 days ago
Python C# CI/CD Terraform Azure RBAC Managed Identities Secrets Management Prometheus Grafana Docker Kubernetes PostgreSQL LLM Prompt Engineering RAG Responsible AI Test-Driven Development Feature Flags Staged Rollouts

AI Engineer

Booz Allen Hamilton

US 25 days ago $77,500$176,000
Python FastAPI Flask REST GraphQL AWS MLOps DevSecOps CI/CD Kubernetes Terraform PostgreSQL Redis Docker Prometheus Grafana GitLab Jenkins

AI Engineer

Booz Allen Hamilton

US 9 days ago $77,600$176,000
Python FastAPI Flask AWS MLOps CI/CD Terraform Kubernetes GraphQL REST SQL Docker Prometheus Grafana PostgreSQL Redis Kafka NATS RabbitMQ

AI Engineer

Booz Allen Hamilton

US 63 days ago $77,600$176,000
Python LLMs MCP LangChain LangGraph C# Java microservice design edge computing Docker CUDA RAPIDs Agile