Data & AI tech Manager/Data & AI Tech Manager

Publiée le 24.03.2026

Louis Vuitton

Référence : TP03220

  • Localisation :

    Chinese Mainland

  • Type de contrat :

    办公室职位

  • Mode de travail :

    全职

  • Salaire :

    To be negotiated

Le poste

Principal Responsibilities

Data Management and Extraction

· Maintain an inventory of data assets, including databases, data sources, and formats, ensuring that all data is easily accessible and well-organized.

· Design and implement processes for data extraction from various internal and external sources, ensuring accurate and timely retrieval of information.

Data Integration

· Collaborate with other functions to design and implement system integration solutions that ensure seamless data flow between various applications and platforms.

· Manage and optimize databases to ensure efficient data storage, retrieval, and processing, supporting the organization’s data needs.

Data Analytics and Tools

· Collaborate with business units to gather data requirements, providing support for data analysis via reporting tools, system integration, and AI applications.

· Work closely with various departments to understand their data needs and provide support for data-related projects and initiatives.

· Oversee the selection, implementation, and management of data analytical tools and platforms (e.g., BI tools, data visualization software) to enhance data analysis capabilities across the organization.

Agentic Architecture & System Design

· Design Multi-Agent Systems: Architect scalable multi-agent orchestration frameworks where specialized agents collaborate to solve complex, multi-step business problems.

· Build Advanced RAG Pipelines: Lead the development of next-gen Retrieval-Augmented Generation (RAG) systems that go beyond simple vector search, integrating Knowledge Graphs, hybrid search, and re-ranking models to provide agents with precise, context-aware grounding.

· Memory & State Management: Design sophisticated long-term and short-term memory mechanisms (using vector DBs, SQL, or key-value stores) to allow agents to maintain context across long-running sessions and learn from past interactions.

Application Engineering & Product Delivery

· End-to-End Agent Lifecycle: Own the full software development lifecycle (SDLC) for AI applications, from prototype to production, ensuring agents are not just demos but reliable, latency-optimized products.

· Human-in-the-Loop (HITL) Interfaces: Build intuitive UI/UX patterns for human-agent collaboration, including approval gates, intervention points, and feedback loops humans guide or correct agent actions before final execution.

· Evaluation & Testing Frameworks: Establish rigorous automated testing suits for agents to measure success rates, task completion accuracy, hallucination frequency, and tool invocation reliability.

· Performance Optimization: Optimize application performance by implementing caching strategies, prompt compression, model routing, and asynchronous processing to reduce latency and token costs.

Reliability, Safety & Governance (Agent-Specific)

· Guardrails & Safety Layers: Implement advanced guardrail systems to prevent agents from taking unauthorized actions, accessing sensitive data, or entering infinite loops. This includes input/output filtering and constraint enforcement.

· Deterministic Workflow Enforcement: Balance probabilistic LLM reasoning with deterministic workflow engines to ensure critical business processes remain predictable and auditable.

· Observability & Debugging: Deploy comprehensive observability stacks specifically for agentic flows, tracing decision paths, tool calls, and reasoning steps to rapidly debug failures in complex autonomous chains.

· Cost & Token Governance: Monitor and optimize token consumption and compute costs associated with high-frequency agent operations, implementing budget limits and efficiency protocols.

Technical Leadership & Innovation

· Framework Selection & Strategy: Evaluate and select the best open-source and proprietary agent frameworks and define the team’s technical stack.

· POC to Production Pipeline: Rapidly prototype new agent concepts and define the clear criteria and engineering standards required to graduate them into mission-critical production applications.

· Cross-Functional Integration: Collaborate closely with product managers and domain experts to translate vague business needs into structured agent specifications and actionable user stories.

· Team Upskilling: Mentor engineers on prompt engineering patterns, chain-of-thought reasoning, few-shot learning, and the nuances of building non-deterministic software systems.


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Principal Responsibilities

Data Management and Extraction

· Maintain an inventory of data assets, including databases, data sources, and formats, ensuring that all data is easily accessible and well-organized.

· Design and implement processes for data extraction from various internal and external sources, ensuring accurate and timely retrieval of information.

Data Integration

· Collaborate with other functions to design and implement system integration solutions that ensure seamless data flow between various applications and platforms.

· Manage and optimize databases to ensure efficient data storage, retrieval, and processing, supporting the organization’s data needs.

Data Analytics and Tools

· Collaborate with business units to gather data requirements, providing support for data analysis via reporting tools, system integration, and AI applications.

· Work closely with various departments to understand their data needs and provide support for data-related projects and initiatives.

· Oversee the selection, implementation, and management of data analytical tools and platforms (e.g., BI tools, data visualization software) to enhance data analysis capabilities across the organization.

Agentic Architecture & System Design

· Design Multi-Agent Systems: Architect scalable multi-agent orchestration frameworks where specialized agents collaborate to solve complex, multi-step business problems.

· Build Advanced RAG Pipelines: Lead the development of next-gen Retrieval-Augmented Generation (RAG) systems that go beyond simple vector search, integrating Knowledge Graphs, hybrid search, and re-ranking models to provide agents with precise, context-aware grounding.

· Memory & State Management: Design sophisticated long-term and short-term memory mechanisms (using vector DBs, SQL, or key-value stores) to allow agents to maintain context across long-running sessions and learn from past interactions.

Application Engineering & Product Delivery

· End-to-End Agent Lifecycle: Own the full software development lifecycle (SDLC) for AI applications, from prototype to production, ensuring agents are not just demos but reliable, latency-optimized products.

· Human-in-the-Loop (HITL) Interfaces: Build intuitive UI/UX patterns for human-agent collaboration, including approval gates, intervention points, and feedback loops humans guide or correct agent actions before final execution.

· Evaluation & Testing Frameworks: Establish rigorous automated testing suits for agents to measure success rates, task completion accuracy, hallucination frequency, and tool invocation reliability.

· Performance Optimization: Optimize application performance by implementing caching strategies, prompt compression, model routing, and asynchronous processing to reduce latency and token costs.

Reliability, Safety & Governance (Agent-Specific)

· Guardrails & Safety Layers: Implement advanced guardrail systems to prevent agents from taking unauthorized actions, accessing sensitive data, or entering infinite loops. This includes input/output filtering and constraint enforcement.

· Deterministic Workflow Enforcement: Balance probabilistic LLM reasoning with deterministic workflow engines to ensure critical business processes remain predictable and auditable.

· Observability & Debugging: Deploy comprehensive observability stacks specifically for agentic flows, tracing decision paths, tool calls, and reasoning steps to rapidly debug failures in complex autonomous chains.

· Cost & Token Governance: Monitor and optimize token consumption and compute costs associated with high-frequency agent operations, implementing budget limits and efficiency protocols.

Technical Leadership & Innovation

· Framework Selection & Strategy: Evaluate and select the best open-source and proprietary agent frameworks and define the team’s technical stack.

· POC to Production Pipeline: Rapidly prototype new agent concepts and define the clear criteria and engineering standards required to graduate them into mission-critical production applications.

· Cross-Functional Integration: Collaborate closely with product managers and domain experts to translate vague business needs into structured agent specifications and actionable user stories.

· Team Upskilling: Mentor engineers on prompt engineering patterns, chain-of-thought reasoning, few-shot learning, and the nuances of building non-deterministic software systems.

LA MAISON
LOUIS VUITTON

Créée à Paris en 1854, la Maison Louis Vuitton perpétue la vision ambitieuse de son fondateur. Jeune artisan, en tant que maître malletier, Louis Vuitton fabrique des boîtes destinées à emballer les effets personnels et les garde-robes volumineuses de ses clients. Au fil du temps, les créations de la Maison s’accompagnent de nombreuses innovations, notamment la malle plate, la toile légère, des motifs emblématiques et la serrure à Gorge. Aujourd’hui, l’héritage de Louis Vuitton s’exprime à travers un esprit rigoureux qui privilégie l’innovation, la création audacieuse et la quête d’excellence.

Rêvons ensemble !

Avec plus de 75 Maisons, 6 secteurs d’activités, une présence dans 80 pays et plus de 500 métiers répartis sur toute la chaîne de valeur – de l’approvisionnement des matières premières à la distribution de nos produits en passant par leur fabrication – LVMH offre un environnement unique à la mesure de vos ambitions. Un terrain de jeu où vous ferez équipe avec nos 213 000 collaborateurs représentant 190 nationalités et 4 générations.Avec ses boutiques, ateliers de fabrication, centres de R&D, plateformes logistiques ou encore sièges sociaux, LVMH est un acteur mondial qui rassemble 213 000 collaborateurs représentant 190 nationalités et présents dans 80 pays. Chez LVMH, toutes les conditions sont réunies pour vous offrir un environnement unique à la mesure de vos ambitions !