前向部署工程师,Google Cloud,AI 专家

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Summary

本文是 Valtech 公司发布的 Forward Deployed Engineer(FDE,前线部署工程师)招聘信息,工作地点为加拿大魁北克省,要求流利英语。该岗位需要深度嵌入企业客户团队,将 Google Cloud 与前沿 AI 能力转化为生产级系统,而非仅担任顾问角色。核心职责包括:与客户工程团队协作,使用 Vertex AI 和 Gemini 模型架构、编码并交付多智能体系统、MCP 服务器、RAG 管道与安全护栏;设计检索增强生成架构,优化向量数据库与嵌入以解决幻觉问题;构建连接 Google AI 产品与客户遗留系统、身份、安全边界的集成方案;使用 Google ADK 或 LangGraph 实现 ReAct、自反思、分层委派等多智能体模式;构建评估与可观测性框架,关注延迟、每次请求成本等指标;调试高流量环境下的智能体逻辑与工具选择;并在项目结束后推进向客户团队的有序交接。必备资格包括计算机相关学士学位、5年以上 Python/TypeScript 软件开发经验、在 GCP 上架构部署 AI 系统的实操经验(Vertex AI、Gemini、BigQuery、Cloud Run 等)、构建生产级 RAG 与智能体解决方案的经验、使用 Terraform 等 IaC 工具部署云资源的经验、领导技术发现会议的能力、集成企业 IT 基础设施的经验,以及最高 50% 差旅的适应能力。优先资格涵盖 AI 硕士/博士、多智能体框架(ADK/LangGraph/CrewAI)、MCP 服务器经验、LLM 原生运营指标优化、高流量生产系统排障、数据主权与安全治理架构、AI 辅助开发倡导经验及 GCP 多项专业认证。Valtech 提供远程工作、健康保险、500 加元个人账户、退休计划匹配、弹性假期等福利,强调多元包容文化。该职位清晰呈现了 FDE 角色在 AI 工程落地中

Key Takeaways

  • FDE 需嵌入客户团队,将 Vertex AI 与 Gemini 模型转化为生产级智能体系统,而非仅提供技术咨询
  • 需架构多智能体系统(MCP 服务器、子智能体、连接器)与 RAG 管道(向量数据库、分块策略、嵌入优化)
  • 需实现 ReAct、自反思、分层委派等多智能体模式,使用 Google ADK 或 LangGraph 框架
  • 需构建可观测性框架,追踪延迟、每次请求成本、token/秒等 LLM 原生运营指标
  • 需领导技术发现,集成企业遗留系统、身份与安全边界,并推动客户团队完成知识交接
  • 必备资格强调 GCP 全栈 AI 服务实操经验(Vertex AI、Gemini、BigQuery、Cloud Run、Pub/Sub)及 Terraform
  • 优先资格突出 MCP 服务器设计、高流量生产排障、AI 辅助开发倡导及 GCP 多项专业认证

这份来自 Valtech 的 FDE 招聘启事是一份不可多得的“AI 前线部署工程师”能力全景图。它精准定义了当前产业界对顶级 AI 落地人才的核心要求:不仅要精通 Google Cloud 的全栈 AI 技术栈(Vertex AI、Gemini、RAG、MCP 协议),更需要具备在客户真实、混乱的生产环境中亲手写代码、部署系统、调试故障的嵌入式实战能力。不同于纯研究或纯顾问角色,该岗位要求将多智能体架构转化为可移交的、产生实际商业价值的工程资产。建议所有关注大模型落地、Agent 构建的技术管理者和工程师仔细研读这份 JD——它揭示了 AI 工程化岗位从“实验室”迈向“产品线”的完整技能组合与交付标准。

FDE 需嵌入客户团队,将 Vertex AI 与 Gemini 模型转化为生产级智能体系统,而非仅提供技术咨询

—— 络石智能研究院 · Editor's Pick

前向部署工程师,Google Cloud,AI 专家

Posted Jul 6, 2026

Why Valtech? We’re the experience innovation company - a trusted partner to the world’s most recognized brands. To our people we offer growth opportunities, a values-driven culture, international careers and the chance to shape the future of experience.

The opportunity

At Valtech, you’ll find an environment designed for continuous learning, meaningful impact, and professional growth. Whether you're pioneering new digital solutions, challenging conventional thinking or building the next generation of customer experiences, your work will help transform industries.

We are proud of:

The work we do and the innovation we drive

Our values of share, care and dare

A workplace culture that fosters creativity, diversity and autonomy

Our borderless, global framework, which enables seamless collaboration

The role

Please note, we are only accepting applicants from the province of Québec for this role. Fluency in English is necessary because the position entails collaboration with teams based in the rest of Americas and occasionally in Europe.

We are seeking a Forward Deployed Engineer (FDE) with deep expertise in Google Cloud and applied AI to embed directly with our enterprise customers and turn frontier AI capabilities into production-grade systems. This role is for an engineer who thrives on ambiguity, codes alongside customer teams, and owns AI initiatives end-to-end — from technical discovery through architecture, build, deployment, and handoff.

The ideal candidate has shipped agentic AI solutions on Google Cloud, is fluent in Vertex AI and Gemini, and is comfortable architecting multi-agent systems, RAG pipelines, and tool-calling integrations against messy enterprise environments. You will operate as an embedded builder — not an advisor — writing production code, debugging live systems, and co-developing with the customer’s engineering team to instill Google-grade engineering best practices and accelerate AI adoption.

This position is remote and may require occasional travel

Role responsibilities

Embed within customer engineering teams and lead technical discovery sessions with business stakeholders, engineering leadership, and security to translate ambiguous business problems into clear AI architectures and delivery plans.

Architect, code, and ship production-grade agentic AI solutions on Google Cloud — including multi-agent systems, MCP servers, sub-agents, skills, connectors, agentic wrappers, and safety guardrails — that move customers beyond pilots into measurable business value.

Design and implement Retrieval-Augmented Generation (RAG) pipelines and grounding architectures, including chunking strategy, vector databases, and embedding optimization to prevent hallucinations and ensure response quality.

Build the “connective tissue” between Google’s AI products and customer infrastructure, including APIs, legacy data silos, identity, and security perimeters.

Implement multi-agent patterns such as ReAct, self-reflection, and hierarchical delegation using frameworks like Google’s Agent Development Kit (ADK) or LangGraph

Build high-performance evaluation pipelines and observability frameworks for agentic systems, with attention to accuracy, safety, latency, cost-per-request, and tokens-per-second.

Debug agent logic and optimize tool selection in live, high-traffic environments, including tracing conversation and request IDs across microservices to resolve production failures.

Co-build with customer engineering teams and act as a hands-on advocate for AI-assisted development, introducing and operationalizing AI coding tools to accelerate delivery and elevate engineering practices.

Drive a deliberate handoff to the customer’s team, ensuring long-term ownership, documentation, and end-user adoption after the engagement concludes.

Develop and maintain technical documentation, architecture decision records, and evaluation results across all assigned engagements.

Must have qualifications

To be considered for this role, you must meet the following essential qualifications:

Bachelor’s degree in Engineering, Computer Science, a related field, or equivalent practical experience.

5+ years of software development experience using Python, TypeScript, or comparable languages, with a track record of shipping production-grade code to external or internal customers.

Hands-on experience architecting and deploying AI systems on Google Cloud Platform (GCP), including:

Vertex AI — Vertex AI — model deployment, fine-tuning workflows, evaluation, and platform-level observability.

Gemini models — Gemini models — prompt engineering, structured outputs, function/tool calling, and multimodal use cases.

BigQuery and Cloud Storage — BigQuery and Cloud Storage — as data and grounding sources for AI workloads.

Cloud Run, Cloud Functions, and Pub/Sub — Cloud Run, Cloud Functions, and Pub/Sub — for deploying and orchestrating agentic services.

Gemini Enterprise Agent Platform — designing, configuring, and deploying enterprise-grade agents, grounding on customer data sources, integrating tools and connectors

Demonstrated experience building agentic and AI-driven solutions in production, including:

LLM application development — LLM application development — prompt engineering, agent development, and evaluation frameworks.

RAG architectures — RAG architectures — vector databases, chunking strategy, and retrieval evaluation.

Data pipelines — Data pipelines — structured and unstructured data ingestion to power enterprise-grade AI solutions.

Experience deploying cloud resources via Terraform or similar infrastructure-as-code tools.

Experience leading technical discovery sessions with business stakeholders and engineering teams to define AI requirements and translate ambiguous business goals into technical roadmaps.

Experience integrating AI systems with enterprise IT infrastructure, including authenticated APIs, legacy data systems, and corporate security perimeters.

Ability to travel up to 50% of the time to customer sites.

AI proficiency for productivity

Outstanding communication skills, including the ability to explain complex AI and architectural concepts to both deep-technical engineers and non-technical executives.

Nice to have qualifications

Master’s degree or PhD in AI, Computer Science, Machine Learning, or a related technical field.

Experience implementing multi-agent systems using frameworks such as Google’s Agent Development Kit (ADK), LangGraph, or CrewAI, and complex agent patterns including ReAct, self-reflection, and hierarchical delegation.

Hands-on experience designing and deploying Model Context Protocol (MCP) servers, tool-calling protocols, and connector ecosystems for agentic systems.

Knowledge of “LLM-native” operational metrics (tokens/sec, cost-per-request, time-to-first-token) and techniques for optimizing state management, granular tracing, and conversation-ID propagation across microservices.

Track record of troubleshooting live, high-traffic production AI systems during critical windows.

Experience architecting AI solutions within complex infrastructures, including data sovereignty, secure governance, and air-gapped or regulated environments.

Experience designing user-facing interfaces for AI and agentic systems with attention to context engineering, transparency, and explainability.

Experience driving organization-wide initiatives (e.g., migrations to new AI stacks, engineering-velocity programs) that deliver measurable improvements to engineering productivity and business outcomes.

Experience as an advocate for AI-assisted software development, including introducing AI coding assistants to enterprise engineering teams and developing internal best practices for their use.

Google Cloud certifications:

Google Cloud Professional Machine Learning Engineer

Google Cloud Professional Cloud Architect

Google Cloud Professional Data Engineer

Familiarity with full-stack application development and REST/GraphQL API design.

If you do not meet all the listed qualifications or have gaps in your experience, we still encourage you to apply. At Valtech, we recognize that talent comes in many forms, and we value diverse perspectives and a willingness to learn.

Commitment to reaching all kinds of people

We design experiences that work for all kinds of people - and that starts with our own teams. At Valtech, we’re intentional about building an inclusive culture where everyone feels supported to grow, thrive and achieve their goals. No matter your background, you belong here. Explore our Diversity & Inclusion site to see how we’re creating a more equitable Valtech for all.

The benefits

This is a full time position based in Quebec, Canada.

Valtech offers a comprehensive benefits package effective after three months of continuous service:

A comprehensive insurance plan, where you can choose the module that best suits your needs—Gold, Silver, or Bronze. The employer may contribute up to 80% of your coverage depending on the selected module. This plan includes short- and long-term disability coverage.

Dialogue via Sun Life provides virtual healthcare services, allowing you to consult with a healthcare professional for emergencies, prescription renewals, and more. You also have access to the Employee and Family Assistance Program, as well as a complete mental health support program.

A $500 Personal Spending Account, which can be used for healthcare reimbursements, gym memberships, public transit passes, office supplies, or contributions to your RRSP through Valtech.

A retirement plan where Valtech will match 100% of your RRSP contributions through a Deferred Profit Sharing Plan (DPSP), up to a maximum of 4%. You can start contributing to your RRSP immediately, and to the DPSP after 3 months. The vesting of the DPSP will be after a 24 months of service.

Access to a flexible vacation under Valtech's policy to support your work-life balance, with 5 days available during your probation period and a prorated amount calculated for the remainder of the year.

Personal Technology Reimbursement – $30/month for every employee-offered on day 1.

We close during the winter holidays and offer flexible scheduling throughout the year, so you can enjoy those sunny Friday afternoons—provided your weekly hours are completed.

Your application process

Once you apply, our Talent Acquisition team will review your application. If your skills and experience align with the role, we’ll reach out for next steps. Your CV should cover key information on relevant experiences and expertise. We do not require information such as age, gender, marital status, or a headshot in your application. We review all candidates based on skills, experience, and potential.

⚠️ Beware of recruitment fraud: Only engage with official Valtech email addresses.

We are committed to inclusion and accessibility. If you need reasonable accommodations during the interview process, please either indicate it in your application or let your Talent Partner know.

About Valtech

Valtech is the experience innovation company that exists to unlock a better way to experience the world. By blending crafts, categories, and cultures, we help brands unlock new value in an increasingly digital world.

At the intersection of data, AI, creativity, and technology, we drive transformation for leading organizations, including L’Oréal, Mars, Audi, P&G, Volkswagen Dolby, and more.

At Valtech, we don’t just talk about transformation. We make it happen. Our people are the heart of our success, and we foster a workplace where everyone has the support to thrive, grow and innovate.

Are you ready to create what’s next? Join us.

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FAQ

Forward Deployed Engineer(FDE)在 AI 领域的核心职责是什么?
FDE 是嵌入客户工程团队的实战型工程师,负责将 Google Cloud 的前沿 AI 能力转化为生产级系统。其工作包括与客户联合架构、编码、部署多智能体解决方案和 RAG 管道,调试生产环境中的 Agent 逻辑,并最终将系统移交给客户团队,确保客户能长期独立运营。
申请 Valtech 的 FDE 岗位需要具备哪些 Google Cloud 技术栈经验?
必须具备在 Google Cloud 上架构和部署 AI 系统的实操经验,包括:Vertex AI 的模型部署、微调和评估;Gemini 模型的提示工程与工具调用;BigQuery 与 Cloud Storage 作为数据源;使用 Cloud Run、Cloud Functions、Pub/Sub 部署和编排智能体服务;以及使用 Terraform 等 IaC 工具管理云资源。优先资格还包括使用 Google ADK 构建多智能体系统的经验。
该职位对 MCP(Model Context Protocol)有哪些具体要求?
该职位的优先资格要求具备亲自动手设计和部署 MCP 服务器的经验,并需要掌握工具调用协议和连接器生态系统(connector ecosystem)的开发,以便为智能体系统(agentic systems)建立扩展和互操作能力。

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