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Adnane El MansouriAE

Adnane El Mansouri

Supermalter

Senior AI Engineer | GenAI & LLMOps

600 €/jour
2 projets
Paris, FR
8-15 ans

Délai de réponse moyen : 1h

À propos de Adnane

Senior Machine Learning & AI Engineer specializing in leveraging Generative AI (GenAI) technologies to define, implement, and optimize data use cases. My expertise includes a strong focus on the following areas:

- Deep understanding and application of Generative AI models, including Large Language Models (LLMs), for a variety of Data Science use cases such as Natural Language Processing (NLP),
- Proven experience in applications like Demand Forecasting, Anomaly Detection, Marketing Mix Modeling, and Computer Vision.
- Proficient in the development and deployment of both classic Machine Learning models (MLOps) and deep learning models such LLMs (LLMOps).
- Advanced proficiency in NLP and Generative AI technologies, including a thorough understanding of the latest developments in LLMs and their practical applications in generating text, code, and synthetic data for training more robust models.
- Expertise in managing and optimizing ML pipelines for production environments, incorporating MLOps practices with a focus on continuous integration and delivery (CI/CD).
- Extensive programming experience in Python, with expertise in utilizing big data frameworks such as Spark, Databricks, and Dataiku, tailored towards the development and scaled ML applications.
- Specialized knowledge in cloud and data engineering with a strong foundation in AWS & Azure platform.
  • Français

    Bilingue ou natif

  • Anglais

    Bilingue ou natif

  • Italien

    Capacité professionnelle complète

En télétravail uniquement
Travaille majoritairement à distance

Expériences

  • Louis Vuitton
    Senior AI / Machine Learning Engineer
    LUXE
    janvier 2024 - Aujourd'hui (2 ans et 5 mois)
    Paris, France
    Designed and deployed a multi-agent conversational AI system to assist client advisors in navigating POS systems and retrieving client data. In parallel, built advanced forecasting pipelines for luxury products across multiple time horizons and granularities to optimize inventory and strategic planning.

    Conversational AI & Multi-Agent Orchestration:

    - Architected a multi-agent orchestration system using LangGraph, with specialized agents for POS navigation, client data retrieval, analytics and product lookup coordinated via a supervisor agent for dynamic task routing.
    - Integrated external data sources and action delegation through MCP (Model Context Protocol) enabling real-time use and structured access of the CRM, inventory, and POS systems.
    - Built a RAG pipeline with LangChain combining vector search and knowledge graphs over POS manuals, client data, and product catalogs for grounded, context-aware responses.
    - Implemented agentic tool-use patterns allowing agents to autonomously call forecasting models, query BigQuery, and trigger actions based on client segmentation outputs.
    - Prompt Engineering of GPT and Gemini as backbone LLMs, and guardrails for reliable advisor-interactions.

    Time Series Forecasting & MLOps:

    - Built demand forecasting models using classical methods (ARIMA, SARIMA), deep learning (LSTM, Temporal Fusion Transformer), and Prophet — with hyperparameter tuning via Optuna and AutoML with PyCaret.
    - Enabled multi-horizon, multi-granularity forecasting across product categories and regions, feeding outputs into agent-based decision workflows for supply chain and advisor teams.
    - ML pipeline deployment with CI/CD for continuous model retrain and deployment on Cloud Run

    Tech Stack: Python, LangGraph, LangChain, MCP Servers, RAG, GPT, Gemini, Multi-Agent Orchestration, ARIMA, SARIMA, LSTM, Prophet, Temporal Fusion Transformer, BigQuery ML, Vertex AI, PyCaret, Optuna, GCP (Cloud Run, Dataflow, BigQuery, Cloud Composer), CI/CD.
    LLM IA générative LangGraph MCP RAG
  • Johnson & Johnson MedTech
    Lead Machine Learning Engineer
    INDUSTRIE PHARMACEUTIQUE
    mars 2022 - janvier 2024 (1 an et 10 mois)
    Brussels Metropolitan Area, Belgium
    POC of an advanced medical recommendation engine, aimed at reducing the time of medical interactions. This system uses NLP and LLM techniques to build KPIs that represent the patient's detailed health profile through various data sources (Medical reports, analysis reports, survey responses, etc.) and on the other hand, issue recommendations on actions to take based on these KPIs such as medical products or changes in lifestyle.

    Achievements:
    - Implementation of large-scale language models (multimodal LLM) like GPT, Llama, Mistral for tasks like information extraction, medical data analysis (text & image), and recommendation generation.
    - Implementation, Prompt Engineering, RAG of LLMs via Langchain.
    - Configuration and management of data environments on AWS Cloud, notably AWS S3 and AWS Redshift.
    - Deployment of LLMs use cases as end points via AWS SageMaker.
    - Setting up data ingestion and processing pipelines on Databricks via Spark.
    - Orchestration of different prediction and reporting pipelines on Databricks in batch.
    - Maintenance of CI/CD processes to ensure continuous updating and deployment of models and applications.

    Tech Skills & Stack: Python, NLP, LLM, GenAI, Langchain, QLora, Prompt Engineering, RAG, transformers, Databricks, Chainlit , MLOps, AWS Cloud, AWS SageMaker, AWS CloudFormation, Amazon CloudWatch, AWS S3, AWS Redshift, Spark, CI/CD.
    Python LLM MLOps AWS SageMaker AWS CloudFormation
  • Danone
    Senior Data Scientist / Data Engineer
    GRANDE DISTRIBUTION
    mars 2021 - mars 2022 (1 an)
    92500 Rueil-Malmaison, France
    My intervention focused on setting up a sales forecasting pipeline for dairy products (Demand Forecasting). The project aimed to integrate reporting for supply chain managers from different Time Series modelings to optimize inventory & price management and anticipate market trends, thus dynamically adapting to the fluctuating needs of customers.

    Achievements:
    - Design and implementation of a machine learning sales forecasting pipeline using advanced Time Series Forecasting techniques over different time horizons and granularities. (ARIMA, Prophet, Boosting models)
    - Incorporating deep learning models like transformers architectures for probabilistic forecasting.
    - Interpretability of the forecasts with business and different stakeholders.
    - Deployment and management of machine learning pipelines on Databricks. (MLOps)
    - Setting up data ingestion and processing pipelines via Spark on Databricks and making them available on Snowflake.
    - Management of continuous integration and delivery (CI/CD) with Gitlab and Azure DevOps.

    Tech Skills & Stack: Time Series Forecasting, Machine Learning, Python, SQL, Azure Cloud, Azure DevOps, Azure Data Lake, Databricks, Spark, Snowflake, SQL, Gitlab, CI/CD.
    Time Series Transformers Databricks PySpark Data science

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Formations

  • Diplôme d'ingénieur, Mathématiques appliqués et Machine Learning
    ENSEIRB-MATMECA
    2019
    Diplôme d'ingénieur, Mathématiques appliqués et Machine Learning
  • Classes préparatoires aux grandes écoles (CPGE), Mathématiques et informatique
    CPGE - Lycée Mohammed VI, Kénitra
    2016
    Classes préparatoires aux grandes écoles (CPGE), Mathématiques et informatique

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