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Job Title


Associate Solutions Engineer - AI


Company : SHI


Location : Piscataway, NJ


Created : 2026-04-17


Job Type : Full Time


Job Description

About Us Since 1989, SHI International Corp. has helped organizations change the world through technology. Weu2019ve grown every year since, and today weu2019re proud to be a $16 billion global provider of IT solutions and services. Over 17,000 organizations worldwide rely on SHIu2019s concierge approach to help them solve whatu2019s next. But the heartbeat of SHI is our employees u2013 all 7,000 of them. If you join our team, youu2019ll enjoy: + Our commitment to diversity, as the largest minority- and woman-owned enterprise in the U.S. + Continuous professional growth and leadership opportunities. + Health, wellness, and financial benefits to offer peace of mind to you and your family. + World-class facilities and the technology you need to thrive u2013 in our offices or yours. Job Summary The Associate Solutions Engineer u2013 AI is an earlyu2011career technical role for engineers with strong foundations in machine learning, AI systems, and infrastructure who are ready to apply that knowledge in realu2011world, customeru2011facing enterprise environments. In this role, you will support the design, validation, and implementation of AIu2011powered solutions across enterprise platforms, infrastructure, and data environments. Working alongside senior solution engineers, architects, and strategic partners, you will help translate advanced AI capabilities into scalable, productionu2011ready solutions for SHI customers. This role blends handsu2011on development, AI systems knowledge, and solution delivery, with exposure to customer engagement and enterpriseu2011scale problem solving. Role Description AI & Machine Learning Solution Development + Support the design and implementation of AI and generative AI solutions using modern ML frameworks and enterprise platforms + Assist in translating advanced AI concepts (e.g., fineu2011tuning, LoRA, reinforcement learningu2013based optimization, perception systems) into deployable enterprise architectures + Contribute to solution prototypes, proofs of concept (POCs), and labu2011based demonstrations for customers AI Infrastructure & Systems + Work with AI infrastructure stacks, including accelerators, kernels, training pipelines, and performance optimization + Assist in evaluating and optimizing AI workloads across hardware platforms (GPUs, AI accelerators, optimized kernels) + Support AI deployment patterns such as model training, inference, and retrievalu2011augmented generation (RAG) Data, Pipelines & Tooling + Build and support AIu2011related pipelines for: + Data ingestion and preprocessing + Model evaluation and benchmarking + Failure analysis, logging, and observability + Develop internal and customeru2011facing tools or dashboards to visualize performance, system behavior, or AI outputs Customer & Partner Engagement + Participate in technical workshops, solution briefings, and architecture sessions with customers + Help explain AI system behavior, limitations, and performance tradeu2011offs to technical and semiu2011technical audiences + Collaborate with cloud, silicon, and ISV partners across the AI ecosystem Behaviors and Competencies + Presenting: Can prepare and deliver presentations, addressing key points and responding to questions with clarity. + Negotiation: Can proactively seek out negotiation opportunities, initiate discussions, and contribute to conflict resolution. + Communication: Can effectively communicate complex ideas and information, and can adapt communication style to the audience. + Detail-Oriented: Can identify errors or inconsistencies in work and make necessary corrections. + Organization: Can prioritize daily tasks, manage personal workflow, and utilize basic tools to keep track of responsibilities. + Follow-Up: Can independently track and follow up on tasks without requiring reminders, ensuring responsibilities are fulfilled. + Problem-Solving: Can identify problems, propose solutions, and take action to resolve them without explicit instructions. + Relationship Building: Can identify opportunities for collaboration, propose strategies for effective communication, and build relationships without explicit instructions. + Documentation: Can independently create and update documentation, ensuring accuracy and consistency, and can identify gaps or areas needing clarification. + Results Orientation: Can set challenging goals for their team and lead them to achieve these goals, demonstrating a consistent track record of results. Skill Level Requirements Core Technical Skills + Strong proficiency in Python for machine learning, systems tooling, and data workflows + Experience with PyTorch and modern ML training and inference workflows + Understanding of fineu2011tuning and optimization techniques, including: + LoRA (Lowu2011Rank Adaptation) + Reinforcement learningu2013based optimization approaches (e.g., GRPO or similar) + Solid foundation in software development and machine learning fundamentals, including: + Model evaluation + Performance analysis Systems & Infrastructure + Exposure to AI accelerators, kernels, or lowu2011level optimization concepts + Familiarity with ML infrastructure pipelines beyond modelu2011level code + Experience with profiling, debugging, and performance tuning of ML workloads + Basic exposure to AI platforms and infrastructure including GPUs, networking, storage, and datau2011center technologies Data & Tooling + Experience building data pipelines for logs, metrics, or ML inputs + Comfort working with both structured and unstructured data + Experience working across different data sources and formats Preferred Skill Level Requirements + Experience with AI solution domains such as: + Generative AI + Agentic AI systems + Computer vision or perception systems + Robotics + Experience benchmarking, comparing, or evaluating machine learning models + Exposure to lowu2011level or systemsu2011level optimization (e.g., kernelu2011level tuning) + Familiarity with AI frameworks or SDKs such as: + CUDA, XLA + TensorRT, Neuron, NKI + Exposure to NVIDIA platforms and frameworks (e.g., NeMo, NIMs) + Understanding of modern AI workflows including: + Graph databases + Vector databases + Guardrails and inference pipelines + Experience working with ML platforms across cloud, hybrid, or onu2011prem environments + Familiarity with containerization and deployment tools (e.g., Docker) + Experience developing visualization or dashboard tools (e.g., React, Node.js, or similar frameworks) + Research or applied experience translating academic AI concepts into productionu2011ready systems Other Requirements + Ability to communicate complex technical concepts clearly to both technical and semiu2011technical audiences + Interest in customeru2011facing solution development and enterprise problem solving + Willingness to collaborate with internal teams and external partners across the AI ecosystem + Ability to balance learning, handsu2011on engineering, and solution delivery in a fastu2011paced environment What This Role Is Not + Not a pure machine learning research role + Not a pure software engineering role isolated from customers + Not a presalesu2011only role without handsu2011on technical work This role sits between solution development, engineering, and applied delivery , and is designed to grow technically strong engineers into trusted enterprise AI solution leaders. The estimated annual pay range for this position is $75,000 - $150,000 which includes a base salary. The compensation for this position is dependent on job-related knowledge, skills, experience, and market location and, therefore, will vary from individual to individual. Benefits may include, but are not limited to, medical, vision, dental, 401K, and flexible spending. Equal Employment Opportunity u2013 M/F/Disability/Protected Veteran Status