Aller au contenuAller au pied de page
  • Emplois
  • Entreprises
  • Salaires
  • Pour les employeurs

      Boostez votre carrière

      Découvrez votre salaire potentiel, décrochez des emplois de rêve et partagez vos témoignages de manière anonyme.

      employer cover photo
      employer logo
      employer logo

      Axya

      Est-ce votre entreprise ?

      À propos
      Avis
      Salaires et avantages
      Emplois
      Entretiens
      Entretiens
      Recherches associées: Avis sur Axya | Offres d’emploi chez Axya | Salaires chez Axya | Avantages sociaux chez Axya
      Entretiens chez AxyaEntretiens d’embauche pour AI Engineer chez AxyaEntretien chez Axya


      Glassdoor

      • À propos
      • Récompenses
      • Blog
      • Nous contacter
      • Guides

      Employeurs

      • Compte employeur gratuit
      • Centre employeur
      • Blog pour les employeurs

      Informations

      • Aide
      • Règles de la communauté
      • Conditions d'utilisation
      • Confidentialité et choix publicitaires
      • Ne pas vendre ni partager mes informations
      • Outil de consentement aux cookies

      Travailler avec nous

      • Annonceurs
      • Carrières
      Télécharger l'application

      • Parcourir par :
      • Entreprises
      • Emplois
      • Lieux

      Copyright © 2008-2026. Glassdoor LLC. « Glassdoor », son logo, « Worklife Pro » et « Bowls » sont des marques déposées de Glassdoor LLC.

      Entreprises suivies

      Tenez-vous au courant des dernières opportunités et profitez de conseils d’initiés en suivant les entreprises de vos rêves.

      Recherche d’emplois

      Obtenez des recommandations et des mises à jour personnalisées en démarrant vos recherches.

      Entretien pour AI Engineer

      1 juin 2025
      Candidat à l'entretien anonyme
      Montréal, QC
      Aucune offre
      Expérience négative
      Entretien moyen

      Candidature

      J'ai postulé en ligne. Le processus a pris 1 semaine. J'ai passé un entretien chez Axya (Montréal, QC) en mai 2025

      Entretien

      Interview process concerns: Second round required presentation + diagrams + prototype - excessive time commitment for candidates. Homework assignments appear related to actual company problems, which feels like unpaid consulting work. There are more ethical ways to evaluate technical skills without exploiting candidate time.

      Questions d'entretien [2]

      Question 1

      Axya has built an industrial procurement platform with many diverse types of customers. Each of these customers have also a diverse pool of supplier who all have their unique ways of sending quotations or other kind of procurement information in PDFs. Each supplier’s follows a stable format per supplier but varies across suppliers. Challenge: 1. Automatically extract structured quote fields (part numbers, unit prices, quantities, delivery dates, payment terms) from heterogeneous PDF documents. 2. Provide a queryable service endpoint that returns normalized quotes in JSON. Key Requirements: ● OCR & Layout Analysis: Propose OCR engines (e.g., Amazon Textract, Tesseract, LayoutLM) and strategies to detect table/grid structures. ● LLM Integration: Outline how you would use a pre-trained LLM (or fine-tune) to correct, normalize, and validate extracted text and map to schema. ● Scalability & Fault Tolerance: Design for high throughput and intermittent failures using AWS primitives. ● MLOps Pipeline: Define CI/CD for pipeline updates, model versioning, automated testing, and performance monitoring (e.g., SageMaker Pipelines, CloudWatch). ● Deliverable Service: A RESTful API or microservice specification that ingests a PDF URL (or S3 URI) and returns a JSON payload of extracted fields.
      Répondre à cette question

      Question 2

      The platform has thousands of aerospace suppliers with structured attributes (capacities, certifications) and unstructured documents attached to them (HTML pages, PDFs). All of this information has some commonalities, but a lot fo what makes each of these companies successfully doesn’t necessarily fit a common schema. A buyer for an aerospace company should be able to communicate a need in plain language and receive a list of suppliers that match its requirements and the context surrounding the request. Note: The current system uses full-text ElasticSearch, and you can test it out here: https://axya.co/suppliers_directory?page=0 Challenge: 1. Index structured and unstructured data into a unified semantic search solution to answer capability queries (e.g., "CNC machining for titanium aerospace parts"). 2. Make sure that part of the query that is deterministic gets treated as such (i.e. specific certification required or geolocalisation of the suppliers). Key Requirements: ● Data Ingestion & Preprocessing: Describe ETL for structured tables and document parsing (PDF, HTML), metadata extraction, and cleaning. ● Embedding & Vector Store: Choose embedding models (e.g., OpenAI embeddings, Sentence Transformers) and vector database architecture. ● “RAG” Pipeline: Illustrate how a retrieval layer and LLM can be combined to answer free‐text queries with structured output (e.g., top-N supplier list with relevancy scores). ● Cloud Deployment: Architect an AWS-based solution for indexing, query API, and autoscaling. ● MLOps & Monitoring: Propose a CI/CD process for retraining embeddings (if needed), refreshing indexes, and tracking query performance and drift. Note 1: Whenever possible, we much prefer to reuse existing technologies than to add new ones. Note 2: all of the information collected and used for indexing are public information from suppliers. Deliverables 1. Slide Deck: 12–15 slides covering both projects end-to-end. 2. Architecture Diagrams: Detailed AWS diagrams for each system’s components, data flows, and failover strategies. 3. Code Snippets / Pseudocode: Examples of key modules (e.g., data ingestion, model inference, CI pipeline definitions). 4. Security & Compliance Notes: Brief discussion on data privacy and access controls (when necessary). 5. (bonus) Optional Prototype: If time permits, a minimal proof‐of‐concept (e.g., Jupyter notebook or small Lambda function).
      Répondre à cette question