Builds, deploys, and optimizes enterprise-grade AI agents for high-stakes conversations, integrating with enterprise systems and fine-tuning LLMs. Requires 3+ years in AI engineering or NLP with Python, PyTorch/TensorFlow proficiency.
Salary not listed
On-site3+ YOEML Engineering
About the role
Responsibilities
Build, deploy, and optimize AI agents that engage in enterprise-grade conversations.
Work with customers to understand business needs, assess AI capabilities, and implement tailored solutions.
Train and fine-tune LLMs for improved accuracy and efficiency.
Integrate AI agents with enterprise systems via APIs, databases, and automation tools.
Experiment rapidly to improve AI-driven interactions, response quality, and automation capabilities.
Collaborate with cross-functional teams (engineering, research, and product) to shape Eloquent AI’s roadmap.
Monitor and improve agents’ performance via user simulations and evaluations.
Requirements
3+ years of experience in software development, AI engineering, or NLP in a production environment.
Strong proficiency in Python, with experience in frameworks like PyTorch and TensorFlow.
Experience working with LLMs and NLP models, including fine-tuning and inference optimization.
Familiarity with APIs, cloud infrastructure (AWS, GCP, or Azure), and enterprise integrations.
Ability to prototype, experiment, and iterate quickly to improve AI agents.
Strong problem-solving skills and the ability to work closely with customers to refine AI solutions.
Nice-to-Haves
Experience with prompt engineering, parameter-efficient fine-tuning (PEFT), retrieval-augmented generation (RAG), reinforcement learning for LLMs.
Experience with frontend or backend development (React, Node.js, NestJS) to enhance AI-driven applications.
Background in information retrieval or recommender systems, document question answering, or agent development.
Published AI research in top tier AI conferences like: NeurIPS, ACL, SIGIR, ICML and ICLR.
Contributed to open-source NLP projects.
Worked in a fast-paced startup environment and thrive in rapid iteration cycles.
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