Pairwise
technology
NetworkInfrastructure&AIEngineer
Neural analysis suggests this role is
optimal for Mid candidates.
“Network Infrastructure & AI Engineer at Pairwise. Skills: Network Infrastructure, Cloud Networking (Azure, AWS), AI Platform Development, Agentic Applications, Infrastructure-as-Code, Kubernetes, CI/CD, RAG, LangChain, LangGraph. Design and operate cloud network infrastructure on Azure and AWS. Own the infrastructure-as-code, Kubernetes, and CI/CD pipelines”
Industry & Context.
scoping vague problems
work on-site
What They're Looking For.
Must Have
BS in Computer Science, Electrical Engineering, or a related field with 5+ years of relevant or MS with 2+ or PhD with no prior industry experience, Hands-on experience with Azure and AWS networking primitives (VNets/VPCs, peering, private endpoints, hybrid connectivity), Python skills for AI application development, Production experience with infrastructure-as-code (Terraform, Bicep), Kubernetes, and CI/CD for both infra and ML workloads, Experience building or operating RAG and/or agentic systems, with exposure to LangGraph, LangChain, or comparable frameworks, Demonstrated ability to operate independently in ambiguous environments - scoping vague problems, sequencing the work, and driving to a result without close direction
Nice to Have
Direct exposure to the telecom domain: mobile network operators, RAN/core architecture, 4G/5G, or working with OEM network equipment vendors, Experience designing systems under strict security and compliance constraints, Familiarity with observability for LLM applications: tracing, evals-as-CI, and cost/latency monitoring
What You'll Do.
Design and operate cloud network infrastructure on Azure and AWS
Own the infrastructure-as-code
Build and run the platform that hosts our AI workloads
Develop RAG workflows end-to-end
Implement agentic features using LangGraph and LangChain
Build and run evaluations for AI quality
How You'll Work.
Process & Methodology
sequencing the work, driving to a result
Full Job Description
About the job At Pairwise, we are a team of engineers, operators, and builders focused on enabling the next generation of technical talent to do their best work. We partner with leading technology companies to deliver high-performance engineering solutions across embedded systems, networking, semiconductors, and software. Our teams have contributed to some of the most advanced products in consumer, infrastructure, and communications technologies. This full-time role offers the chance to work on-site with a global leader in the technology industry, contributing to impactful, technically challenging projects in a high-caliber and fast-moving environment. Overview Join our client's network and infrastructure team in a hybrid role that sits at the intersection of cloud networking and applied AI. You'll spend roughly half your time on network infrastructure and deployment across Azure and AWS, and the other half building the AI platform and agentic applications that run on top of it. Security, compliance, and data privacy are central to everything we ship - you'll be expected to design with those constraints from day one rather than bolt them on later. Responsibilities Design and operate cloud network infrastructure on Azure and AWS, including VNets/VPCs, peering, private connectivity, and segmentation. Own the infrastructure-as-code, Kubernetes, and CI/CD pipelines that deliver both our network footprint and our ML workloads. Build and run the platform that hosts our AI workloads: model gateways, vector stores, ingestion pipelines, and deployment plumbing. Develop RAG workflows end-to-end and implement agentic features using LangGraph and LangChain. Build and run evaluations for AI quality so changes ship with confidence rather than vibes. Minimum Qualifications BS in Computer Science, Electrical Engineering, or a related field with 5+ years of relevant experience; or MS with 2+ years; or PhD with no prior industry experience required. Hands-on experience with Azure and
Applying for this Network Infrastructure & AI Engineer role?
Most applicants get filtered before a human reads their resume. See if yours makes the cut.
How to Apply on Greenhouse
- Create a Greenhouse profile before applying — it saves time across multiple applications.
- Upload your resume as a PDF; the parser handles it better than Word.
- Answer all knockout questions carefully — wrong answers auto-reject before a human sees you.
- Enable email notifications to track application status in real time.
ANONYMOUS · UNFILTERED
What do employees actually say about Pairwise?
Real rants from real employees. Read before you apply.