AI Engineer, AIOps & Infrastructure at Eloquent AI (X25)
$150K - $250K  •  
The AI Operator for Financial Services
San Francisco
Full-time
US citizen/visa only
6+ years
About Eloquent AI

At Eloquent AI, we build autonomous AI agents engineered specifically for regulated industries, tackling unique technical challenges like ensuring real-time compliance and eliminating hallucinations in high-stakes interactions.

We believe that every conversation matters—whether it’s closing a deal, assisting a high-value customer, or providing mission-critical support. That’s why we develop autonomous AI agents that don’t just chat, but empathise, take action, and deliver real business impact.

As a fast-growing global company headquartered in San Francisco, we have a strong presence across multiple regions. Joining Eloquent AI means collaborating with some of the brightest minds in AI, engineering, and business to tackle complex challenges and drive real-world impact for leading enterprises.

About the role

Meet Eloquent AI

At Eloquent AI, we’re building the next generation of AI Operators—multimodal, autonomous systems that execute complex workflows across fragmented tools with human-level precision. Our technology goes far beyond chat: it sees, reads, clicks, types, and makes decisions—transforming how work gets done in regulated, high-stakes environments.

We’re already powering some of the world’s leading financial institutions and insurers, fundamentally changing how millions of people manage their finances every day. From automating compliance reviews to handling customer operations, our Operators are quietly replacing repetitive, manual tasks with intelligent, end-to-end execution.

Headquartered in San Francisco with a global footprint, Eloquent AI is a fast-growing company backed by top-tier investors. Join us to work alongside world-class talent in AI, engineering, and product as we redefine the future of financial services.

Your Role

As a Senior Software Engineer, AIOps & Infrastructure at Eloquent AI, you will be responsible for designing, building, and optimizing scalable, high-performance AI infrastructure to support the deployment and operation of our enterprise AI agents. Your work will enable machine learning engineers and AI teams to train, fine-tune, and deploy LLMs efficiently while ensuring stability, observability, and performance at scale.

You’ll play a key role in automating LLMOps and MLOps workflows, optimizing GPU workloads, and ensuring resilient, production-ready AI systems. This role requires deep expertise in cloud infrastructure, Kubernetes, and LLM and ML deployment pipelines. If you’re passionate about scalable AI systems and optimizing ML models for real-world applications, this is your opportunity to work at the frontier of LLMOps.

You will:

  • Design and build scalable ML infrastructure for deploying and maintaining AI agents in production.

  • Automate LLMOps and MLOps workflows , ensuring seamless model training, fine-tuning, deployment, and monitoring.

  • Optimize GPU and cloud compute workloads , improving efficiency and reducing latency for large-scale AI systems.

  • Develop Kubernetes-based solutions , including custom operators for ML model orchestration.

  • Improve system observability and reliability , implementing logging, monitoring, and performance tracking for AI models.

  • Work with ML and engineering teams to streamline data pipelines, model serving, and inference optimizations.

  • Ensure security, compliance, and reliability in AI infrastructure, maintaining high availability and scalability.

  • Participate in on-call rotations , ensuring 24/7 reliability of critical AI systems.

Requirements

  • 5+ years of experience in software engineering, MLOps, or infrastructure development.

  • Strong expertise in Kubernetes and experience managing containerized ML workloads.

  • Deep understanding of cloud platforms (AWS, GCP, Azure) and distributed computing.

  • Proficiency in Python, with experience developing services for ML/AI applications.

  • Experience with ML model deployment pipelines, including model serving, inference optimization, and monitoring.

  • Familiarity with vector databases, retrieval systems, and RAG architectures is a plus.

  • Strong problem-solving skills and the ability to work in a high-scale, production-focused AI environment.

Bonus Points If…

  • You have experience with LLMOps, fine-tuning, and deploying large-scale AI models.

  • You’ve worked with GPU workload optimization, ML model parallelization, or distributed training strategies.

  • You have experience building infrastructure for AI-powered applications.

  • You’ve contributed to open-source MLOps tools or AI infrastructure projects.

  • You thrive in a fast-moving startup environment and enjoy solving complex technical challenges.

Technology

At Eloquent AI, our proprietary Agentic OS combines reinforcement learning with deep evaluations, enabling agents to autonomously ingest domain-specific knowledge and self-correct through internal reward modeling.

Our tech stack leverages React, TypeScript, and Node.js on the front end, paired with scalable Python and Go-based backend services deployed across AWS, GCP, and Azure.

If you’re excited to solve complex problems at the intersection of reliable AI, compliance, and real-time enterprise systems, you’ll find impactful challenges here every day.

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