AWS AI Jobs

Discover the latest remote and onsite AWS AI roles across top active AI companies. Updated hourly.

Check out 352 new AWS AI roles opportunities posted on AI Chopping Block

Senior Staff AI Engineer

New
Top rated
Hippocratic AI
Full-time
Full-time
Posted

As a Senior Staff AI Engineer at Hippocratic AI, you will define the multi-year technical strategy and architectural roadmap for the AI platform encompassing RAG, multi-agent systems, real-time voice, evaluation, and safety, aligning leadership, engineering, and research around it. You will architect foundational platforms and systems used across multiple products, teams, and partners, making critical technical decisions for the company's future. You will partner directly with executive, product, and clinical leadership to translate long-term healthcare goals into technical initiatives. Additionally, you will represent engineering in board-level, partner, and regulatory discussions, identifying and driving both zero-to-one and one-to-n innovations that expand the company's capabilities. You will own the company-wide safety and evaluation standards, setting gates and measurement systems that all agents, partner deployments, and model changes must pass. Furthermore, you will mentor Staff and Senior engineers, influence hiring and leveling, multiplying the impact of engineering teams, and represent Hippocratic AI externally at conferences, through publications, and partner engagements in the healthcare AI community.

Undisclosed

()

Palo Alto, United States
Maybe global
Onsite
Python
Prompt Engineering
Vector Databases
RAG
MLOps

Staff AI Engineer

New
Top rated
Hippocratic AI
Full-time
Full-time
Posted

As a Staff AI Engineer at Hippocratic AI, you will set the technical direction for voice-based generative AI in healthcare, architect intelligent systems powering clinically safe healthcare agents, and own one or more core AI domains end-to-end including RAG, agent orchestration, evaluation, or real-time voice. Responsibilities include designing foundational production-grade AI pipelines for voice-based generative healthcare agents incorporating multi-step reasoning, agent orchestration, and evaluation systems; leading cross-functional initiatives with product, clinical, and engineering teams to translate healthcare workflows into safe and scalable AI experiences; representing engineering in clinical and partner conversations; driving innovation using state-of-the-art LLMs, retrieval systems, and streaming architectures; setting standards for AI-native workflows supporting real-time, conversational, and long-running interactions across healthcare contexts; owning safety and evaluation standards across model evaluation, safety testing, and observability; defining production gates for agents; mentoring senior and mid-level engineers; and elevating team quality through code and design reviews.

Undisclosed

()

Palo Alto, United States
Maybe global
Onsite
Python
Prompt Engineering
Vector Databases
RAG
AWS

Senior Product Manager, Enterprise AI Platform

New
Top rated
H Company
Full-time
Full-time
Posted

Define the vision and roadmap for the Enterprise AI platform. Understand key enterprise use cases and pain points through deep engagement with forward deployed teams, turning common pain points into high leverage features. Partner with research, engineering, and design teams to translate AI capabilities into useful product features. Own product lifecycle from ideation through launch.

Undisclosed

()

Paris or London, France or United Kingdom
Maybe global
Hybrid
Python
Prompt Engineering
Model Evaluation
MLOps
MLflow

Machine Learning Engineer

New
Top rated
HappyRobot
Full-time
Full-time
Posted

Design, build, and maintain scalable machine learning systems including data ingestion, preprocessing, training, testing, and deployment. Develop and optimize end-to-end ML pipelines encompassing data collection, labeling, training, validation, and monitoring to ensure reliability and reproducibility. Implement robust MLOps practices such as model versioning, experiment tracking, CI/CD for machine learning, and continuous monitoring in production environments. Collaborate with product and engineering teams to integrate and deploy models into real-time products with a focus on efficiency and scalability. Ensure data quality, observability, and performance across all AI systems. Stay current with the latest AI infrastructure, tooling, and research to support ongoing innovation.

Undisclosed

()

Spain
Maybe global
Remote
Python
Go
MLOps
MLflow
Docker

Senior Product Manager, Enterprise AI Platform

New
Top rated
H Company
Full-time
Full-time
Posted

Define the vision and roadmap for the Enterprise AI platform. Understand key enterprise use cases and pain points through deep engagement with forward deployed teams, turning common pain points into high leverage features. Partner with research, engineering, and design teams to translate AI capabilities into useful product features. Own the product lifecycle from ideation through launch.

Undisclosed

()

Paris or London, United Kingdom
Maybe global
Hybrid
Python
Prompt Engineering
Model Evaluation
MLOps
MLflow

AI Deployment Engineer- Codex

New
Top rated
OpenAI
Full-time
Full-time
Posted

Serve as the primary technical subject matter expert on OpenAI Codex for a portfolio of customers, embedding deeply with them to enable their engineering teams and build coding workflows. Partner directly with customers to design and implement AI-enhanced development workflows, from rapid prototyping through scalable production rollout. Build high-quality demos, reference implementations, and workflow automations, using Codex itself as part of the development process. Lead large-format workshops, technical deep dives, and hands-on enablement sessions that help engineering organizations adopt AI coding tools effectively and safely. Contribute technical content including examples, guides, patterns, and best practices to the OpenAI Cookbook to help the broader developer community accelerate their work with Codex. Gather high-fidelity product insights from real customer deployments and translate them into clear product proposals and model feedback for internal teams. Influence customer strategy and decision-making by framing how AI coding tools fit into their software development lifecycle, technical roadmap, and organizational workflows. Serve as a trusted advisor on solution architecture, operational readiness, model configuration, security considerations, and best-practice adoption.

$197,000 – $278,000
Undisclosed
YEAR

(USD)

New York, United States
Maybe global
Remote
Python
Prompt Engineering
Model Evaluation
MLOps
Docker

Senior / Staff Software Engineer (SF/NY)

New
Top rated
Fractional AI
Full-time
Full-time
Posted

You will work on a small, high-caliber team building AI products for clients, setting technical direction, writing code, and serving as the go-to person when challenges arise. Spend approximately 75% of your time coding and 25% interacting with clients, including CTOs, to understand problems, evaluate tradeoffs, and ensure solutions meet their needs.

$230,000 – $350,000
Undisclosed
YEAR

(USD)

San Francisco or New York, United States
Maybe global
Hybrid
Python
JavaScript
TypeScript
PyTorch
TensorFlow

Staff Software Engineer, Bots

New
Top rated
Cantina Labs
Full-time
Full-time
Posted

As a member of the Bots team, design, build, and scale systems that enhance user engagement with the AI-powered platform, including bot chat orchestration, AI image generation, AI video generation, and tooling for managing these features. Collaborate with cross-functional teams like product managers, designers, and data specialists to deliver high-quality, performant, and maintainable features. Experiment with and integrate new AI image, video, and voice generation technologies. Build tooling and infrastructure around various AI technologies. Gain exposure to the architecture and operations of a fast-growing social AI product. Contribute expertise to evolve team processes and technical infrastructure, ensuring scalability and reliability.

$230,000 – $290,000
Undisclosed
YEAR

(USD)

San Francisco, United States
Maybe global
Onsite
Go
AWS
Docker
Kubernetes
CI/CD

AI/ML Engineer

New
Top rated
Air Apps
Full-time
Full-time
Posted

Develop, train, and optimize machine learning models for various mobile app features. Research and implement state-of-the-art AI techniques to improve user engagement and app performance. Collaborate with cross-functional teams to integrate AI-driven solutions into applications. Design and maintain scalable ML pipelines, ensuring efficient model deployment and monitoring. Analyze large datasets to derive insights and drive data-driven decision-making. Stay updated with the latest AI trends and best practices and incorporate them into development processes. Optimize AI models for mobile environments to ensure high performance and low latency.

€60,000 – €76,000
Undisclosed
YEAR

(EUR)

Barcelona, Spain
Maybe global
Remote
Python
TensorFlow
PyTorch
NLP
Computer Vision

AI/ML Engineer

New
Top rated
Air Apps
Full-time
Full-time
Posted

Develop, train, and optimize machine learning models for various mobile app features. Research and implement state-of-the-art AI techniques to improve user engagement and app performance. Collaborate with cross-functional teams to integrate AI-driven solutions into applications. Design and maintain scalable ML pipelines, ensuring efficient model deployment and monitoring. Analyze large datasets to derive insights and drive data-driven decision-making. Stay updated with the latest AI trends and best practices, incorporating them into development processes. Optimize AI models for mobile environments to ensure high performance and low latency.

€60,000 – €76,000
Undisclosed
YEAR

(EUR)

Helsinki, Finland
Maybe global
Remote
Python
TensorFlow
PyTorch
NLP
Computer Vision

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[{"question":"What are AWS AI jobs?","answer":"AWS AI jobs involve building, training, and deploying generative AI applications using specialized cloud services. These roles work with tools like SageMaker for custom model development, Bedrock for foundation models, and Lake Formation for data governance. Professionals in these positions create AI-driven applications, implement RAG systems with Kendra, and orchestrate machine learning pipelines using Step Functions and Lambda."},{"question":"What roles commonly require AWS skills?","answer":"Common roles requiring AWS skills include machine learning engineers, data scientists, software engineers, architects, and platform engineers. These professionals work on generative AI applications and AI-assisted development lifecycles. They implement end-to-end ML pipelines in SageMaker, design LLM-powered applications with Bedrock, create agentic workflows, and build AI-enhanced developer tools using Amazon Q Developer."},{"question":"What skills are typically required alongside AWS?","answer":"Alongside AWS expertise, professionals typically need experience with JupyterLab, Git, and IDE integrations like VS Code. Knowledge of LangChain for LLM orchestration, machine learning concepts, and data engineering practices are valuable. Familiarity with generative AI patterns like retrieval-augmented generation, prompt engineering, and AI application development workflows helps create effective solutions within the AWS ecosystem."},{"question":"What experience level do AWS AI jobs usually require?","answer":"AWS AI jobs typically require mid to senior-level experience with cloud infrastructure and AI development patterns. Employers look for professionals familiar with JupyterLab environments, ML workflows in SageMaker, and foundation model deployment via Bedrock. Experience building end-to-end machine learning pipelines, implementing RAG systems, and orchestrating AI workflows using Step Functions and Lambda is highly valued."},{"question":"What is the salary range for AWS AI jobs?","answer":"AWS AI job salaries vary based on experience, location, and specific role. Machine learning engineers and data scientists implementing SageMaker solutions generally command premium compensation. Platform engineers orchestrating AI infrastructure and architects designing generative AI applications often receive higher salaries. Software engineers using Amazon Q for AI-assisted development are increasingly valued for their productivity enhancements."},{"question":"Are AWS AI jobs in demand?","answer":"AWS AI jobs are experiencing strong demand as organizations adopt generative AI technologies. Companies are actively hiring professionals who can implement AI-driven development lifecycles using tools like Amazon Q Developer. There's particular demand for engineers who can work with Bedrock for foundation models, build RAG systems with Kendra, and design agentic workflows for business process automation."},{"question":"What is the difference between AWS and Azure in AI roles?","answer":"The key difference in AI roles is that AWS emphasizes fully managed services like Bedrock for foundation models and SageMaker for end-to-end ML workflows, while Azure offers a different ecosystem through Azure AI services. AWS positions focus more on serverless orchestration and agentic capabilities unique to their toolchain. The platforms have distinct approaches to generative AI implementation, with different service integrations and developer experiences."}]