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 The Homebase

Senior AI Engineer

New
Top rated
Ryz Labs
Contractor
Full-time
Posted

The responsibilities include building agent-driven enrollment and parent communication pipelines that scale significantly without proportional headcount growth; creating and managing parallel simulations of students testing curriculum to identify gaps and generate improvements; developing automated culture and community agents for engagement, onboarding, and retention at machine scale; constructing real-time operational dashboards to provide leadership with visibility into various business aspects such as enrollment, academic progress, parent satisfaction, and campus operations; designing AI-first workflows for guides, advisors, and operational staff to reduce administrative burdens and refocus on students; building systems called Brainlifts to capture and compound institutional knowledge over time; and integrating these capabilities into Alpha's broader AI ecosystem including EPHOR, Alpha GPTs, and Fleet/Swarm infrastructure.

Undisclosed

()

Buenos Aires, Argentina
Maybe global
Remote
Python
Prompt Engineering
OpenAI API
MLOps
Docker

Clinical AI Engineer

New
Top rated
Heidi Health
Full-time
Full-time
Posted

Build end-to-end AI features by architecting and shipping fullstack solutions from React frontends to Python backend services that leverage voice AI and large language models to automate clinical workflows; implement and fine-tune audio processing pipelines ensuring accurate performance of Automatic Speech Recognition (ASR) and LLM agents in diverse medical environments; translate complex clinical feedback into technical solutions by rapidly prototyping and deploying improvements to model behavior, prompting strategies, and audio handling; optimize fullstack performance for real-time audio streaming and token generation to minimize latency for seamless clinician interaction; partner with implementation and clinical teams to shorten the feedback loop by shipping critical integrations and feature requests from concept to production quickly.

Undisclosed

()

Sydney, Australia
Maybe global
Hybrid
Python
JavaScript
TypeScript
React
RAG

Data Strategy Associate

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

Design and build intuitive web interfaces for robot data annotation, datasets visualization, and experiment tracking. Utilize data-driven techniques to optimize interfaces for efficiency and fast iteration cycles. Integrate AI models to automate manual tasks. Work together with AI researchers, robot operators, and annotators to support new user experiences.

$150,000 – $250,000
Undisclosed
YEAR

(USD)

San Jose
Maybe global
Onsite
TypeScript
Python
JavaScript
AWS
GCP

DevOps Engineer, Infrastructure & Security

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

The role involves taking full accountability for the long-term performance and reliability of AI use cases deployed across international government agencies. Responsibilities include overseeing the end-to-end health of the platform to ensure seamless integration between the AI core and all full-stack components, from APIs to UI, maintaining a responsive and production-ready environment. The job also requires building automated systems to monitor model performance and data drift across geographically dispersed environments, managing the technical lifecycle within diverse regulatory frameworks, leading the response for production issues in mission-critical environments, ensuring rapid resolution and prevention of future issues. Additionally, the role requires translating deep technical performance metrics into clear insights for senior international government officials and partnering with Engineering and ML teams to ensure lessons learned in the field influence the technical architecture and decisions of future use cases.

Undisclosed

()

San Francisco or New York, United States
Maybe global
Onsite
Kubernetes
Docker
AWS
Vector Databases
MLOps

Senior manager, solutions architecture (UK)

New
Top rated
Writer
Full-time
Full-time
Posted

Lead and empower a team of highly skilled solutions architects, fostering their technical growth and career development across complex enterprise AI engagements. Drive the successful adoption and deployment of WRITER's generative AI platform by overseeing key pre-sales technical engagements including use case discovery, proof-of-concept execution, and value realization for strategic customers. Partner closely with sales leadership and go-to-market teams to develop strategic account plans, define compelling technical value propositions, and accelerate pipeline growth for WRITER's solutions. Act as an executive technical sponsor for WRITER’s most strategic accounts, building strong relationships with C-level stakeholders and becoming their trusted advisor in AI strategy and implementation. Influence WRITER's product roadmap by gathering critical market insights and customer feedback to ensure the platform continuously addresses evolving enterprise AI needs. Architect robust, scalable, and secure AI solutions for diverse enterprise environments, integrating WRITER's platform with complex customer data ecosystems and existing technical stacks. Transform how customer evaluations and proofs of concept are facilitated, implementing best practices and scalable processes that demonstrate clear ROI and accelerate time-to-value for clients.

Undisclosed

()

London, United Kingdom
Maybe global
Hybrid
Python
AWS
Azure
GCP
Generative AI

Full Stack Engineer

New
Top rated
Agent
Full-time
Full-time
Posted

Build and maintain features for the web-based property management platform using TypeScript, React, Node.js, PostgreSQL, and AWS. Contribute to a monorepo architecture, working within two-week sprint cycles to deliver high-quality code. Implement integrations including DocuSign, Plaid, Stripe, and ownership group payout systems. Optimize platform performance and user experience by replacing legacy systems. Build and integrate AI agents using Claude and other AI APIs to automate organizational processes, developing API integrations and custom agents. Collaborate with the CEO on prioritizing automation opportunities. Take ownership of tasks, independently research and implement solutions to challenges, proactively identify and implement improvements, and contribute ideas to platform architecture and development priorities.

$2,800 – $3,500 / month
Undisclosed
MONTH

(USD)

Buenos Aires, Argentina
Maybe global
Remote
TypeScript
JavaScript
AWS
CI/CD
Docker

Copy of Member of Technical Staff - ML Engineering

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

Deploy, maintain, and optimize production and research compute clusters. Design and implement scalable and efficient ML inference solutions. Develop dynamic and heterogeneous compute solutions for balancing research and production needs. Contribute to productizing model APIs for external use. Develop infrastructure observability and monitoring solutions.

Undisclosed

()

London, United Kingdom
Maybe global
Remote
Kubernetes
AWS
GCP
Azure
PyTorch

Product Manager, Agent Harness & Modelling

New
Top rated
Cohere
Full-time
Full-time
Posted

Define and own the roadmap for North's agent harness, including the agent loop, context engineering layer, tool orchestration, sandbox execution, and sub-agent delegation. Serve as the primary interface between North engineering and Cohere's Modeling team, ensuring new harness capabilities are validated before being built and that neither team limits future possibilities. Own North's agentic evaluation framework, ensuring evaluations are compatible with both the North harness and Modeling's training infrastructure, serving as a reliable bridge between product and research. Engage enterprise customers to identify real-world agentic failures and translate findings into product and model requirements. Stay current with the open-source and commercial agent ecosystem and drive adoption decisions that align North's architecture with emerging standards.

Undisclosed

()

Toronto, Canada
Maybe global
Remote
Python
Prompt Engineering
Model Evaluation
MLOps
MLflow

Research Engineer – Benchmarking, Evals & Failure Analysis

New
Top rated
Mercor
Full-time
Full-time
Posted

As a Research Engineer at Mercor, you will own benchmarking pipelines, evaluation systems, and failure analysis workflows that directly inform how frontier language models are trained and improved. You will design, implement, and maintain benchmarks and metrics for tool use, agentic behavior, and real-world reasoning, ensuring they scale with training and align with product and research goals. You will build and operate LLM evaluation systems including runs, scoring, dashboards, and reporting to allow tracking and comparison of model performance at scale. You will conduct systematic failure analysis on model outputs, categorize failure modes, quantify their prevalence, and use these insights to influence reward design, data curation, and benchmark design. Additionally, you will create and refine rubrics, automated evaluators, and scoring frameworks that influence training and evaluation decisions, balancing rigor and scalability. You will quantify data usability and quality, guide data generation, augmentation, and curation based on evaluations and failure analysis. Collaboration with AI researchers, applied AI teams, and data producers to align evaluations with training objectives and prioritize important benchmarks and failure analyses is expected. Finally, you will operate with strong ownership in a fast-paced, high-iteration research environment.

$130,000 – $500,000
Undisclosed
YEAR

(USD)

San Francisco, United States
Maybe global
Onsite
Python
MLflow
Docker
Kubernetes
AWS

Aerodynamics Methodology and Software Engineer

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

Refactor research scripts and specialist tools into modular, high-performance, and maintainable Python/C++ libraries, implementing robust unit-testing and documentation standards, and ensuring the team follows code development structure. Architect agentic workflows and custom MCP servers to connect LLMs with internal CFD solvers and databases, codifying engineering knowledge into structured files to enable AI-driven code refactoring, automated simulation setup, and intelligent data analysis. Develop APIs and automated workflows to integrate tools like OpenVSP, XFoil, and OpenFOAM into seamless optimization loops. Manage and optimize Linux-based HPC clusters and/or Cloud computing infrastructure. Design the data architecture for storing and retrieving aerodynamic results to provide vehicle performance data as a single source of truth for GNC and flight physics teams.

Undisclosed

()

Lausanne, Switzerland
Maybe global
Onsite
Python
C++
NumPy
Pandas
AWS

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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."}]