Currently tracking 489 active AI roles, up 170% versus the prior 4 weeks. Primary focus: Agent · Engineering. Salary range $98k–$505k (avg $233k).
| Title | Stage | AI score |
|---|---|---|
| Senior Software Engineer, AI/ML Infrastructure Senior Software Engineer to work on an ML-as-a-service platform that enables Google product teams to build and launch GenAI-powered products. The role involves developing and maintaining production services, improving ML fleet efficiency, and implementing customer-requested ML/AI features, with a focus on prompt optimization, fine-tuning, and hyperparameter optimization. | ServePost-train | 8 |
| Software Engineer III, AI/ML, Google Cloud Software Engineer III role focused on enabling and optimizing foundational AI/ML models (LLMs, Diffusion) within Google Cloud infrastructure, specifically using frameworks like vLLM and MaxText. The role involves partnering with customers to measure model performance, identify technical bottlenecks, collaborate with infrastructure teams, and design specialized ML solutions. It requires experience with ML infrastructure, GenAI concepts, and debugging training/inference workloads. |
| ServeAgent |
| 8 |
| Silicon RTL Design Engineer, PhD, Early Career This role focuses on designing and architecting next-generation Tensor Processing Units (TPUs) for AI/ML workloads. Responsibilities include defining architecture, developing power/performance models, RTL design, and collaborating with hardware, software, and ML teams for effective hardware/software co-design. The role also involves using AI techniques for physical design and optimizing silicon bring-up processes. | Serve | 8 |
| Senior RTL Design Engineer, Google cloud This role focuses on the design and implementation of Application-Specific Integrated Circuits (ASICs) for accelerating Machine Learning (ML) computations in data centers, specifically for Google's AI and Infrastructure team. The engineer will work on micro-architecture, implementation, and optimization of these custom silicon solutions, collaborating with various teams to deliver high-performance and efficient hardware accelerators. | Serve | 7 |
| Staff Software Engineer, Cloud AI/ML Infrastructure Staff Software Engineer for Google Cloud's AI/ML Infrastructure team, focusing on building and operating a multi-tenant ML-as-a-service platform to enable Google product teams to build and launch GenAI-powered products. The role involves simplifying AI workflows, collaborating across front-end, infrastructure, and modeling expertise, and democratizing AI techniques. | ServeAgent | 7 |
| Customer Engineer, AI Infrastructure Modernization TPU, Google Cloud Customer Engineer focused on AI infrastructure modernization using Google Cloud's TPU/GPU accelerators. The role involves guiding customers on architecture, deployment, and optimization of large-scale training and inference jobs, working with AI/ML accelerators, and supporting sales teams in piloting and deploying these solutions. | ServeData | 7 |
| Technical Solutions Engineer, AI/ML Technical Solutions Engineer for Google Cloud AI/ML portfolio, focusing on customer-reported issues, deployment failures, and model performance degradation. Responsibilities include troubleshooting, debugging ML models (TensorFlow, PyTorch) in production environments (Kubernetes, Compute Engine), and ensuring production readiness of generative AI models. Requires Python coding, AI/ML concepts, and networking/system administration experience. | ServePost-train | 7 |
| Technical Solutions Engineer, Artificial Intelligence/Machine Learning Technical Solutions Engineer for Google Cloud AI/ML portfolio, focusing on customer-facing support, troubleshooting ML deployments (including Generative AI), and ensuring production readiness. Requires strong Python scripting, debugging skills, and experience with ML frameworks and cloud infrastructure. | ServePost-train | 7 |
| Software Engineer, AI/ML Software Engineer role focused on implementing ML solutions, utilizing ML infrastructure, and contributing to model optimization and data processing. Requires experience in software development and ML infrastructure, with preferred qualifications in C++ and software design. | Serve | 7 |
| Software Engineer III, AI/ML, Google Cloud Software Engineer III on the AI and Infrastructure team at Google Cloud, focusing on delivering AI and Infrastructure at scale. The role involves writing product/system code, collaborating on design and code reviews, contributing to documentation, triaging and debugging issues, and implementing solutions in ML areas including ML infrastructure, model optimization, and data processing. Requires experience in Python/C++, ML infrastructure (deployment, evaluation, optimization, data processing), and optionally speech/audio or reinforcement learning. | Serve | 7 |
| Software Engineer, PhD, Early Career, 2026 Google is seeking a PhD Software Engineer with expertise in AI/ML and large-scale distributed systems to design, test, deploy, and maintain software solutions for AI and Infrastructure (AI2) organization. The role involves defining technical goals, developing scalable systems, applying research expertise to complex problems, and contributing to essential Google services and Cloud products. | Serve | 7 |
| Design Verification Engineer, PhD, Early Career This role focuses on the design and verification of AI/ML hardware accelerators (TPUs), involving architecture definition, performance modeling, RTL design, and hardware/software co-design. The engineer will work on optimizing ML workloads and developing efficient design verification strategies for next-generation TPUs, leveraging AI techniques for physical design convergence. | Serve | 7 |
| Software Engineering Manager II, Google Cloud Software Engineering Manager II for Google Cloud's AI and Infrastructure team, focusing on delivering AI and Infrastructure at scale. The role involves technical leadership, team management, setting priorities, developing roadmaps, and guiding system designs, with a focus on enabling advanced AI models and delivering computing power. | Serve | 7 |
| Software Engineer, PhD, Early Career, Campus, 2025 Start Software Engineer with a PhD, focusing on AI/ML infrastructure and systems within Google Cloud. The role involves writing product/system development code, participating in design reviews, reviewing code, contributing to documentation, triaging and debugging complex technical issues, and collaborating on design, analysis, and development across the stack. The focus is on building and scaling AI/ML capabilities on Google's frameworks and infrastructure, contributing to products used by billions. | Serve | 7 |
| Silicon Architecture/Design Engineer, PhD, Early Career Silicon Architecture/Design Engineer focused on developing next-generation TPUs for AI/ML workloads. Responsibilities include workload characterization, architecture specification, power/performance modeling, RTL design, hardware/software codesign, and leveraging AI techniques for physical design. The role requires a PhD and experience with accelerator architectures and data center workloads. | Serve | 7 |
| Software Engineering Intern, Masters, Summer 2026 Google is seeking a Software Engineering Intern to work on AI-integrated software and high-performance applications, focusing on designing, deploying, and maintaining end-to-end infrastructure for large-scale systems. The role involves developing scalable engineering solutions for Google products and applying computer science knowledge to real-world challenges. | Serve | 5 |
| Software Engineering PhD Intern, Summer 2026 This is a PhD intern role focused on developing and maintaining the end-to-end infrastructure for AI-integrated software and large-scale systems at Google. The intern will work on complex computer science solutions and scalable, distributed software systems. | Serve | 5 |
| Staff Software Engineer, Continuous Fleet Transformation and Optimization Staff Software Engineer at Google Cloud focused on optimizing fleet transformation and operations using ML-powered simulations and discrete algorithms. The role involves migrating from MIP models to ML for predictive, self-governing systems, designing simulation engines, and guiding automated policy enforcement for AI/ML compute needs. | Serve | 5 |