GCP AI Jobs

Discover the latest remote and onsite GCP AI roles across top active AI companies. Updated hourly.

Check out 66 new GCP AI roles opportunities posted on The Homebase

Data Strategy Associate

New
Top rated
Figure AI
Full-time
Full-time
Posted

Design and build intuitive web interfaces for robot data annotation, datasets visualization, and experiment tracking. Utilize data-driven techniques to optimize interfaces for efficiency and fast iteration cycles. Integrate AI models to automate manual tasks. Work together with AI researchers, robot operators, and annotators to support new user experiences.

$150,000 – $250,000
Undisclosed
YEAR

(USD)

San Jose
Maybe global
Onsite
TypeScript
Python
JavaScript
AWS
GCP

Senior manager, solutions architecture (UK)

New
Top rated
Writer
Full-time
Full-time
Posted

Lead and empower a team of highly skilled solutions architects, fostering their technical growth and career development across complex enterprise AI engagements. Drive the successful adoption and deployment of WRITER's generative AI platform by overseeing key pre-sales technical engagements including use case discovery, proof-of-concept execution, and value realization for strategic customers. Partner closely with sales leadership and go-to-market teams to develop strategic account plans, define compelling technical value propositions, and accelerate pipeline growth for WRITER's solutions. Act as an executive technical sponsor for WRITER’s most strategic accounts, building strong relationships with C-level stakeholders and becoming their trusted advisor in AI strategy and implementation. Influence WRITER's product roadmap by gathering critical market insights and customer feedback to ensure the platform continuously addresses evolving enterprise AI needs. Architect robust, scalable, and secure AI solutions for diverse enterprise environments, integrating WRITER's platform with complex customer data ecosystems and existing technical stacks. Transform how customer evaluations and proofs of concept are facilitated, implementing best practices and scalable processes that demonstrate clear ROI and accelerate time-to-value for clients.

Undisclosed

()

London, United Kingdom
Maybe global
Hybrid
Python
AWS
Azure
GCP
Generative AI

Copy of Member of Technical Staff - ML Engineering

New
Top rated
Talent Labs
Full-time
Full-time
Posted

Deploy, maintain, and optimize production and research compute clusters. Design and implement scalable and efficient ML inference solutions. Develop dynamic and heterogeneous compute solutions for balancing research and production needs. Contribute to productizing model APIs for external use. Develop infrastructure observability and monitoring solutions.

Undisclosed

()

London, United Kingdom
Maybe global
Remote
Kubernetes
AWS
GCP
Azure
PyTorch

Engineering Leader

New
Top rated
Ema
Full-time
Full-time
Posted

As an Engineering Leader at Ema, you will build and lead a high-performance engineering organization by recruiting, hiring, and developing senior engineers across multiple sub-teams including cloud infrastructure, data platform, ML operations, and developer experience. You will establish engineering standards, a code review culture, on-call expectations, and promote a bias-toward-shipping mentality balanced with production rigor. You will coach and grow senior and staff engineers into technical leaders and manage engineering managers as the organization scales. Your responsibilities include setting the 6–18 month platform roadmap in partnership with engineering teams, making critical architectural decisions such as build versus buy and migration strategies, and driving cross-functional alignment with product, ML/AI research, and go-to-market teams. You will own production health for all platform services, including incident response, postmortems, SLO tracking, and capacity planning. Additionally, you will establish and refine engineering practices to maintain fast shipping without compromising reliability, and participate in executive-level reviews related to infrastructure spend, system health, and engineering velocity.

Undisclosed

()

Bengaluru, India
Maybe global
Onsite
Go
Python
Kubernetes
AWS
GCP

AI Engineer

New
Top rated
Distyl
Full-time
Full-time
Posted

Build production AI systems by designing, developing, and deploying robust AI applications using LLMs, including prompt engineering, agent workflows, tool use, and full-stack AI products. Work directly with customers by partnering closely with enterprise stakeholders to understand complex problems and translate them into impactful AI solutions. Lead system architecture by designing scalable architectures for production AI systems that balance performance, reliability, cost, and maintainability. Develop internal platform infrastructure by contributing to Distillery, the internal LLM application platform, building reusable infrastructure, tools, and workflows used across customer deployments. Evaluate AI systems rigorously by developing evaluation frameworks that measure model performance across accuracy, latency, cost, reliability, and safety. Ship production-grade systems ensuring they meet high standards for observability, reliability, security, and maintainability. Raise the engineering bar by improving development workflows, evaluation practices, and deployment strategies as the AI platform evolves.

Undisclosed

()

London, United Kingdom
Maybe global
Remote
Python
TypeScript
LangChain
LlamaIndex
Prompt Engineering

Penetration Tester

New
Top rated
Lovable
Full-time
Full-time
Posted

Plan and execute penetration tests across Lovable's web platform, mobile surface, APIs, cloud infrastructure, and AI pipelines. Probe LLM integrations for prompt injection, jailbreaks, data leakage, and novel attack vectors unique to AI-generated code running in live products. Identify systemic vulnerabilities introduced when millions of users create and deploy real applications on Lovable. Work directly with engineering to prioritise, remediate, and verify fixes, closing the loop between discovery and resolution. Run internal red team exercises, contribute to threat modelling, and embed an attacker's mindset across the engineering culture to raise the security bar organization-wide. Help make Lovable the most secure AI product in the market.

Undisclosed

()

Stockholm, Sweden
Maybe global
Onsite
GCP
AWS
Cloudflare
Penetration Testing

Head of Internal Tools Engineering

New
Top rated
Bjak
Full-time
Full-time
Posted

The Head of Internal Tools Engineering is responsible for owning the end-to-end strategy and roadmap for all internal tools, platforms, and automation, treating internal technology as a product. They make strategic build-vs-buy decisions, map current and next-state process flows, and lead systems transformation for internal teams. They architect and maintain the full engineering lifecycle of internal platforms, build seamless API-first ecosystems integrating various internal systems, ensure system reliability and operational resilience, and design scalable, secure architectures using cloud-native principles and microservices. They lead AI strategy by integrating AI and LLMs into internal workflows and deploying intelligent automation tools. They reduce cognitive load for internal users by providing standardized workflows and self-service capabilities, measure platform success by adoption, satisfaction, and productivity impact, and build, lead, and mentor a high-performing engineering team. They cultivate a collaborative culture, provide technical mentorship, foster psychological safety, partner cross-functionally with leadership across departments, and align internal platform investments with company strategy while demonstrating measurable ROI.

Undisclosed

()

New York, United States
Maybe global
Remote
Python
AWS
GCP
Azure
Docker

Head of Internal Tools Engineering

New
Top rated
Bjak
Full-time
Full-time
Posted

The role involves architecting, building, and scaling the internal technology ecosystem to accelerate workforce productivity, eliminate operational friction, and provide a compounding infrastructure advantage by treating internal tools with product rigor and user-centricity. Responsibilities include owning the end-to-end strategy and roadmap for all internal tools, platforms, and automation; making strategic build-vs-buy decisions; mapping current and next-state process flows and leading systems transformation. The role requires architecting and maintaining the full engineering lifecycle of internal platforms, building API-first ecosystems integrating with various business systems, owning system reliability and operational resilience, and designing scalable, secure cloud-native architectures. The role leads AI adoption and automation integration into internal workflows, including deploying intelligent automation tools, evaluating AI-assisted troubleshooting, and driving continuous experimentation with prototypes. The person will reduce cognitive load for internal users by providing golden paths and standardized workflows, ensuring frictionless onboarding, and measuring platform success via adoption rates, user satisfaction, DORA metrics, and productivity impact. Team leadership duties include building, leading, and mentoring engineers and managers, fostering a collaborative culture rooted in ownership, speed, craftsmanship, and psychological safety. The role partners cross-functionally with various company leadership teams to translate business needs into a unified technical vision, aligning internal platform investments with company strategy and demonstrating measurable ROI.

Undisclosed

()

Beijing, China
Maybe global
Remote
Python
AWS
GCP
Azure
CI/CD

Solutions Architect (Dallas)

New
Top rated
LangChain
Full-time
Full-time
Posted

The Solutions Architect is responsible for designing scalable, highly-available infrastructure for AI platform deployments including compute, storage, networking, security, enterprise integration patterns, Infrastructure as Code (Terraform, Helm), multi-region HA/DR strategies, and CI/CD pipelines. They design multi-agent systems using various patterns, implement agent logic using modern frameworks (langchain/langgraph), design evaluation frameworks, optimize prompts with A/B testing, and guide deployment and operations. The role involves leading technical maturity assessments, working directly with enterprise customers to understand requirements and present recommendations, and partnering with Engagement Managers and Product/Engineering teams.

$170,000 – $190,000
Undisclosed
YEAR

(USD)

Dallas, United States
Maybe global
Remote
Python
TypeScript
Kubernetes
AWS
GCP

Solutions Architect (Austin)

New
Top rated
LangChain
Full-time
Full-time
Posted

The Solutions Architect is responsible for designing, deploying, and optimizing production-grade AI infrastructure and agent systems, including scalable, secure infrastructure deployments and building reliable agent applications. Responsibilities include infrastructure and platform engineering such as designing scalable and highly available infrastructure for AI platform deployments with compute, storage, networking, security, and enterprise integration patterns. They utilize Infrastructure as Code tools like Terraform and Helm and implement multi-region high availability and disaster recovery strategies as well as CI/CD pipelines. The role also covers agent engineering and development including designing multi-agent systems using various patterns, implementing agent logic using frameworks such as LangChain and LangGraph, designing evaluation frameworks, optimizing prompts with A/B testing, and guiding deployment and operations. Additionally, the role involves customer engagement and assessment, leading technical maturity assessments, working directly with enterprise customers to understand requirements, presenting recommendations, and partnering with Engagement Managers and Product/Engineering teams.

$170,000 – $190,000
Undisclosed
YEAR

(USD)

Austin, United States
Maybe global
Remote
Python
TypeScript
Kubernetes
CI/CD
AWS

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[{"question":"What are GCP AI jobs?","answer":"GCP AI jobs involve working with Google Cloud Platform to develop, deploy, and manage artificial intelligence solutions. These positions typically use Vertex AI for managing resources, models, and training pipelines. Common roles include AI Engineers, Machine Learning Engineers, and Solutions Architects who implement generative AI solutions across data, infrastructure, and AI components."},{"question":"What roles commonly require GCP skills?","answer":"Roles requiring GCP skills include Field Solutions Architects specializing in Generative AI design, Customer Engineers focusing on Cloud AI implementations, Google Cloud AI Engineers working with AI/ML frameworks, Machine Learning Engineers handling cloud expansions, and Product Managers overseeing Google Distributed Cloud AI initiatives. These positions typically involve deploying AI agents and managing cloud-native architecture."},{"question":"What skills are typically required alongside GCP?","answer":"Alongside GCP, professionals typically need experience with containerization technologies, Kubernetes, and cloud-native architecture. Strong understanding of cloud security and IAM access controls is essential. Familiarity with AI/ML frameworks, Vertex AI components (Feature Store, Agent Engine), and Cloud Run for AI agents is valuable. Data processing skills using BigQuery and experience with service agents for logs and storage are also common requirements."},{"question":"What experience level do GCP AI jobs usually require?","answer":"GCP AI positions typically require mid to senior-level experience, with 3-5 years working in cloud environments. Roles expect practical experience implementing cloud-native architecture, managing containerized applications, and applying AI/ML frameworks within cloud ecosystems. Advanced positions often require hands-on experience with Vertex AI administration, implementing IAM permissions, and designing end-to-end AI solutions on Google Cloud."},{"question":"What is the salary range for GCP AI jobs?","answer":"Salary ranges for GCP AI professionals vary based on location, experience level, and specific role. Entry-level positions start in the upper five-figure range, while mid-level engineers and architects can earn well into six figures. Senior specialists and those with combined expertise in AI architecture, cloud security, and enterprise implementation command premium compensation, especially in technology hubs and at large organizations."},{"question":"Are GCP AI jobs in demand?","answer":"GCP AI jobs show strong demand across multiple industries as organizations accelerate their cloud-based AI initiatives. Companies actively recruit for solutions architects, AI engineers, and machine learning specialists who can implement Vertex AI solutions. The growth in AI chatbot development, generative AI applications, and cloud-native AI services is driving consistent demand for professionals who can design and deploy Google Cloud AI infrastructure."},{"question":"What is the difference between GCP and AWS in AI roles?","answer":"While both platforms support AI workloads, GCP offers Vertex AI with specific administrator and user roles tailored to AI workflows, while AWS uses SageMaker with different permission structures. GCP integrates tightly with Google's AI research through tools like Agent Engine and Feature Store. AWS provides broader industry adoption but GCP often appeals to organizations seeking Google's AI expertise, particularly for generative AI and natural language applications."}]