AI Engineer

Job not on LinkedIn

🕒 February 26

Apply Now
Find Similar Remote Jobs

📊 Check your resume score for this job

Improve your chances of getting an interview by checking your resume score before you apply.

Logo of Epistemix

Epistemix

11 - 50 employees

Founded 2018

☁️ SaaS

🤖 Artificial Intelligence

🤝 B2B

💰 $7M Series A - Epistemix on 2024-06

SaaS • Artificial Intelligence • B2B

Epistemix is a SaaS decision-making platform that uses large synthetic population and agent-based simulation models, AI, and inference to help organizations test scenarios, forecast trends, and optimize interventions in low-data and uncertain environments. Customers overlay their data on representative 1:1 synthetic populations to generate consumer insights, forecast adoption and tipping points, and run scenario planning for marketing, public health, pharmaceuticals, and policy decisions to reduce risk and improve outcomes.

📋 Description

• Craft clean, testable, and maintainable code to enable AI-generated agent-based models. • Own the software from requirements development through deployment and maintenance that enable decision makers to generate agent-based models that address critical business questions and data scientists to build agent-based models more quickly that answer the questions of decision makers. • Design, build, test, and deploy a scalable system architecture so that AI-generated models can be validated by data scientists and deliver results back to decision makers quickly. • Own the engineering solution and collaborate with internal teams to ensure alignment with company strategy.

🎯 Requirements

• Bachelor’s or Master’s degree in Computer Science, Artificial Intelligence, Data Science, or a related field (or equivalent experience). • 3+ years of experience developing AI/ML applications in production environments. • Proven track record of working with LLMs, NLP models, or AI-driven systems. • Experience designing and optimizing high-performance, scalable APIs. • Strong problem-solving skills and ability to work in a fast-paced environment. • Must be legally authorized to work in the United States and not require employer sponsorship now or in the future.

🏖️ Benefits

• Equity & Incentives – Participation in our stock option program. • Flexible Time Off – Autonomy to manage your schedule and work-life balance. • Health, Welfare and 401(k) Programs – Eligibility for benefits (for U.S. employees). • Meaningful Impact – Apply your creative talents to revolutionize data-driven decision-making and make a real-world difference.

Apply Now

Similar Jobs

🕒 February 26

Qventus, Inc

51 - 200

☁️ SaaS

🤖 Artificial Intelligence

🤝 B2B

Senior/Lead Product Manager advancing AI Operational Assistant Studio for transformative healthcare solutions. Driving the development and strategy for the Agentic AI platform.

🇺🇸 United States – Remote

💵 $160k - $200k / year

💰 $85M Series D - Qventus on 2025-01

⏰ Full Time

🟠 Senior

🤖 AI Engineer

🕒 February 26

Tribe AI

51 - 200

🤖 Artificial Intelligence

🏢 Enterprise

🤝 B2B

Forward Deployed AI Architect designing complex AI systems in partnership with enterprises. Leading technical discovery and client engagement to achieve significant AI outcomes.

🕒 February 26

Tribe AI

51 - 200

🤖 Artificial Intelligence

🏢 Enterprise

🤝 B2B

Forward Deployed AI Engineer building and deploying AI solutions with enterprise clients. Collaborating on complex issues and implementing scalable AI systems to drive business impact.

AWS

Azure

Cloud

Google Cloud Platform

Python

🕒 February 26

Tribe AI

51 - 200

🤖 Artificial Intelligence

🏢 Enterprise

🤝 B2B

Lead AI Engineer developing reusable AI components for enterprise platforms. Supporting project teams and ensuring high-quality deliveries through effective platform utilization.

🕒 February 25

Fastino Labs

11 - 50

🤖 Artificial Intelligence

☁️ SaaS

🏢 Enterprise

AI Engineer at Fastino focused on developing and deploying efficient, high-performance AI solutions. Collaborating with engineering teams to operationalize innovative AI architectures for enterprise clients.

Kubernetes

Microservices