Extreme Networks
Senior AI/ML Engineer – Generative AI & Autonomous Agents (10034, 10035)
Extreme Networks, Seattle, Washington, us, 98127
Overview
At
Extreme Networks , we create effortless networking experiences that empower people and organizations to advance. As part of our growing
AI Competence Center , we are seeking a
Senior AI/ML Engineer
with expertise in
Generative AI ,
multi-agent systems , and
LLM-based application development . In this role, you will help build the next generation of
AI-native systems
that combine traditional machine learning, generative models, and autonomous agents. Your work will power intelligent, real-time decisions for
network design ,
optimization ,
security , and
support . Responsibilities
Design and implement the
business logic and modeling
that governs agent behavior, including decision-making workflows, tool usage, and interaction policies. Develop and refine
LLM-driven agents
using prompt engineering, retrieval-augmented generation (RAG), fine-tuning, or function calling. Understand and model the
domain knowledge
behind each agent: engage with network engineers, learn the operational context, and encode this understanding into effective agent behavior. Apply
traditional ML modeling techniques
(classification, regression, clustering, anomaly detection) to enrich agent capabilities. Contribute to the
data engineering pipeline
that feeds agents, including data extraction, transformation, and semantic chunking. Build modular, reusable AI components and integrate them with
backend APIs ,
vector stores , and
network telemetry pipelines . Collaborate with other AI engineers to create
multi-agent workflows , including planning, refinement, execution, and escalation steps. Translate GenAI prototypes into
production-grade , scalable, and testable services in collaboration with platform and engineering teams. Work with frontend developers to design agent experiences and contribute to
UX interactions
with human-in-the-loop feedback. Stay up to date on trends in LLM architectures, agent frameworks, evaluation strategies, and GenAI standards. Qualifications
Master’s or PhD in Computer Science, Artificial Intelligence, Machine Learning, or a related field. 5+ years of experience in ML/AI engineering, including 2+ years working with
transformer models or LLM systems . Strong knowledge of
ML fundamentals , with hands-on experience building and deploying traditional ML models. Solid programming skills in
Python , with experience integrating AI modules into
cloud-native microservices . Experience with
LLM frameworks
(e.g., LangChain, AutoGen, Semantic Kernel, Haystack), and
vector databases
(e.g., FAISS, Weaviate, Pinecone). Familiarity with
prompt engineering
techniques for system design, memory management, instruction tuning, and tool-use chaining. Strong understanding of
RAG architectures , including semantic chunking, metadata design, and hybrid retrieval. Hands-on experience with
data preprocessing, ETL workflows , and embedding generation. Proven ability to work with
cloud platforms
like
AWS
or
Azure
for model deployment, data storage, and orchestration. Excellent collaboration and communication skills, including cross-functional work with product managers, network engineers, and backend teams. Nice to Have
Experience with
LLMOps tools ,
open-source agent frameworks , or orchestration libraries. Familiarity with
Docker ,
Docker Compose , and container-based development environments. Background in enterprise networking, SD-WAN, or network observability tools. Contributions to open-source AI or GenAI libraries.
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At
Extreme Networks , we create effortless networking experiences that empower people and organizations to advance. As part of our growing
AI Competence Center , we are seeking a
Senior AI/ML Engineer
with expertise in
Generative AI ,
multi-agent systems , and
LLM-based application development . In this role, you will help build the next generation of
AI-native systems
that combine traditional machine learning, generative models, and autonomous agents. Your work will power intelligent, real-time decisions for
network design ,
optimization ,
security , and
support . Responsibilities
Design and implement the
business logic and modeling
that governs agent behavior, including decision-making workflows, tool usage, and interaction policies. Develop and refine
LLM-driven agents
using prompt engineering, retrieval-augmented generation (RAG), fine-tuning, or function calling. Understand and model the
domain knowledge
behind each agent: engage with network engineers, learn the operational context, and encode this understanding into effective agent behavior. Apply
traditional ML modeling techniques
(classification, regression, clustering, anomaly detection) to enrich agent capabilities. Contribute to the
data engineering pipeline
that feeds agents, including data extraction, transformation, and semantic chunking. Build modular, reusable AI components and integrate them with
backend APIs ,
vector stores , and
network telemetry pipelines . Collaborate with other AI engineers to create
multi-agent workflows , including planning, refinement, execution, and escalation steps. Translate GenAI prototypes into
production-grade , scalable, and testable services in collaboration with platform and engineering teams. Work with frontend developers to design agent experiences and contribute to
UX interactions
with human-in-the-loop feedback. Stay up to date on trends in LLM architectures, agent frameworks, evaluation strategies, and GenAI standards. Qualifications
Master’s or PhD in Computer Science, Artificial Intelligence, Machine Learning, or a related field. 5+ years of experience in ML/AI engineering, including 2+ years working with
transformer models or LLM systems . Strong knowledge of
ML fundamentals , with hands-on experience building and deploying traditional ML models. Solid programming skills in
Python , with experience integrating AI modules into
cloud-native microservices . Experience with
LLM frameworks
(e.g., LangChain, AutoGen, Semantic Kernel, Haystack), and
vector databases
(e.g., FAISS, Weaviate, Pinecone). Familiarity with
prompt engineering
techniques for system design, memory management, instruction tuning, and tool-use chaining. Strong understanding of
RAG architectures , including semantic chunking, metadata design, and hybrid retrieval. Hands-on experience with
data preprocessing, ETL workflows , and embedding generation. Proven ability to work with
cloud platforms
like
AWS
or
Azure
for model deployment, data storage, and orchestration. Excellent collaboration and communication skills, including cross-functional work with product managers, network engineers, and backend teams. Nice to Have
Experience with
LLMOps tools ,
open-source agent frameworks , or orchestration libraries. Familiarity with
Docker ,
Docker Compose , and container-based development environments. Background in enterprise networking, SD-WAN, or network observability tools. Contributions to open-source AI or GenAI libraries.
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