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Ikrame AtirIA

Ikrame Atir

AI Engineer

310 €/jour
Mulhouse, FR
0-2 ans

Délai de réponse moyen : 1h

À propos de Ikrame

Je transforme vos besoins métier en solutions IA concrètes, de A à Z.

Je m'appelle Ikrame, ingénieure IA spécialisée dans les LLMs et la donnée.
J'accompagne les entreprises de A à Z : du diagnostic de votre besoin jusqu'à la mise en production d'une solution qui tourne vraiment.

🎯 Ce que je fais concrètement :

Chatbots RAG : votre assistant IA qui répond à partir de vos propres documents (PDF, Word, Excel, emails…)
Fine-tuning LLM : un modèle entraîné sur vos données métier, qui parle votre langage
Extraction & normalisation de données : transformez vos documents bruts en données structurées et exploitables
Évaluation de modèles : je benchmarke vos solutions IA existantes et vous dis lesquelles valent vraiment le coup

💡 Pourquoi travailler avec moi ?

J'analyse d'abord votre situation avant de proposer quoi que ce soit , pas de solution cherchant un problème
J'ai de l'expérience terrain sur des projets industriels réels, pas que de la théorie
Je maîtrise toute la stack : du parsing de PDF jusqu'au déploiement en production
Je livre des solutions qui tournent

Stack : Python · LangChain · Azure · Databricks · HuggingFace · FAISS · MLflow · Streamlit · vLLM

📩 Un projet en tête ? Décrivez-moi votre problème, on trouve ensemble si l'IA peut vraiment vous aider.
  • Français

    Bilingue ou natif

  • Anglais

    Capacité professionnelle complète

En télétravail uniquement
Travaille majoritairement à distance

Expériences

  • De Particulier à Particulier
    Automated AI-Powered Document Processing Pipeline
    RESSOURCES HUMAINES
    janvier 2026 - janvier 2026
    Mulhouse, France
    Built a fully automated end-to-end document processing pipeline using n8n as the orchestration layer, designed to eliminate manual data entry and accelerate document handling for a small business.
    How it works :

    A webhook trigger listens for new PDF documents uploaded to a Google Drive folder
    n8n automatically extracts the raw text from each document using a Python script executed via HTTP request
    The extracted text is sent to an LLM (OpenAI GPT-4) through a custom prompt engineered to identify and extract structured fields : client name, invoice number, date, total amount, line items
    The structured JSON response is validated and cleaned using a JavaScript function node inside n8n
    Valid records are automatically inserted into an Airtable database for tracking and reporting
    If extraction confidence is below a defined threshold, the document is flagged and a Slack notification is sent to a human reviewer with the document preview attached
    A final HTTP request triggers a confirmation email to the client via SendGrid, with a summary of the processed document

    Key technical decisions :

    Used a multi-step prompt engineering approach with chain-of-thought reasoning to improve LLM extraction accuracy on heterogeneous document layouts
    Implemented error handling and retry logic directly in n8n to handle API timeouts and malformed responses
    Built a fallback mechanism routing low-confidence extractions to a manual review queue instead of failing silently

    Results :

    Reduced manual document processing time by ~80%
    Processed 200+ documents per week fully automatically
    Human review required for less than 5% of documents
    OpenAI Python n8n JavaScript REST APIs
  • Liebherr
    AI & Data Engineer
    INGÉNIERIE MÉCANIQUE
    septembre 2025 - Aujourd'hui (9 mois)
    Colmar, France
    Designed and developed an end-to-end AI application for automatic extraction and normalization of equipment data from heavy machinery brochures across multiple industrial brands, replacing a fully manual process.

    • Built and deployed a multi-tab web application serving as the main interface for the full pipeline.
    • Processed complex document layouts including tables, technical specifications, and mixed content types using document intelligence techniques.
    • Implemented an AI-based classification and semantic matching system to normalize equipment data consistently across heterogeneous sources.
    • Designed a structured equipment database with automatic duplicate detection and data consistency mechanisms.
    • Set up experiment tracking to monitor pipeline runs, log metrics, and manage model artifacts.
    • Delivered a complete pipeline from raw document input to structured output with categorized equipment statuses.
    Databricks Microsoft Azure MLflow Streamlit Python
  • K-LINE Groupe LIEBOT
    AI Engineer — K-LINE Groupe LIEBOT
    ARCHITECTURE & URBANISME
    octobre 2024 - août 2025 (10 mois)
    Les Herbiers, France
    Built a production-ready internal AI assistant using a RAG architecture, enabling employees to query the company's entire internal knowledge base in natural language across heterogeneous document formats.
    • Ingested and processed a wide variety of internal documents: PDFs, multi-sheet Excel files with scientific values, architectural window plans, Word files, and internal documentation, handling complex layouts and mixed content types.
    • Built the retrieval pipeline using FAISS as the vector store for fast and scalable semantic search over embedded document chunks.
    • Deployed NVIDIA Nemotron as the core LLM and integrated vLLM to enable real-time token streaming, significantly reducing perceived response latency by displaying generated tokens directly in the UI as they are produced, instead of waiting for the full response.
    • Developed a custom HTML/CSS/JavaScript chat interface connected to the backend, with live streaming rendering to deliver a smooth, ChatGPT-like user experience.
    • Managed the full pipeline from document ingestion and chunking to embedding, retrieval, and response generation.
    RAG Langchain Vector Embeddings NLP LLM

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Formations

  • Ingénieur Informatique & Réseaux
    ENSISA
    2025
  • Classes préparatoires aux grandes écoles
    Lycée Raoul Follereau
    2022
    Physiques Technologies Sciences de l'ingénieur

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