Ir al contenidoIr al pie de página
  • Empleos
  • Empresas
  • Sueldos
  • Para empleadores

      Impulsa tu carrera profesional

      Averigua cuánto podrías ganar, encuentra el empleo perfecto y comparte información sobre tu vida laboral y personal de forma anónima.

      employer cover photo
      employer logo
      employer logo

      Caylent

      ¿Esta es tu empresa?

      Información
      Evaluaciones
      Pago y prestaciones
      Empleos
      Entrevistas
      Entrevistas
      Búsquedas relacionadas: Evaluaciones de Caylent | Empleos en Caylent | Sueldos en Caylent | Prestaciones en Caylent
      Entrevistas en CaylentEntrevistas para el cargo de Machine Learning Engineer en CaylentEntrevista en Caylent


      Glassdoor

      • Acerca de
      • Premios
      • Blog
      • Contacto

      Empleadores

      • Cuenta de empleador gratuita
      • Centro de empleador

      Información

      • Ayuda
      • Pautas
      • Condiciones de uso
      • Privacidad y opciones de anuncios
      • No vender ni compartir mi información
      • Herramienta de autorización de cookies

      Trabaja con nosotros

      • Anunciantes
      • Oportunidades laborales
      Descargar aplicación

      • Buscar por:
      • Empresas
      • Empleos
      • Ubicaciones

      Copyright © 2008-2026. Glassdoor LLC. "Glassdoor", "Worklife Pro", "Bowls" y sus logotipos son marcas comerciales registradas de Glassdoor LLC.

      Empresas seguidas

      Sigue a tus empresas favoritas para estar al tanto de las últimas oportunidades y disponer de información desde adentro.

      Búsquedas de empleo

      Recibe recomendaciones y actualizaciones personalizadas al iniciar tu búsqueda.

      Entrevista para Machine Learning Engineer

      12 nov 2024
      Empleado anónimo
      Oferta aceptada
      Experiencia positiva
      Entrevista promedio

      Solicitud

      Me postulé en línea. El proceso tomó 3 semanas. Acudí a una entrevista en Caylent en sep 2024

      Entrevista

      The interview process was smooth and well-organized from start to finish. It struck a great balance between technical questions and behavioral ones, allowing me to demonstrate both my machine learning knowledge and how I approach problems. The questions were deep and practical, pushing me to think through core concepts like algorithms, model deployment, and optimization, which made the process feel more like a discussion than just a test of knowledge. I also appreciated the opportunity to learn more about the company—how teams collaborate, how problems are solved, and what the overall culture is like. It wasn’t just about evaluating my skills; it gave me a better sense of what working at the company would be like. Overall, it was a great experience that helped me learn and gave me a clear picture of the organization.

      Preguntas de entrevista [1]

      Pregunta 1

      1) Can you explain the difference between the Random Forest and XGBoost algorithms? 2) What are L1 and L2 regularization techniques, and which one would you use for feature selection? 3) What are the different model deployment options available in Amazon SageMaker? 4) How would you monitor a deployed model on SageMaker to ensure its performance over time? 5) Can you tell me about a research paper that you found particularly inspiring or impactful? What made it stand out to you?
      Responder pregunta

      Otras evaluaciones sobre las entrevistas para el cargo de Machine Learning Engineer en Caylent

      Entrevista para Machine Learning Engineer

      20 jun 2024
      Empleado anónimo
      Oferta aceptada
      Experiencia positiva
      Entrevista difícil

      Solicitud

      Me postulé a través de un reclutador. El proceso tomó 3 semanas. Acudí a una entrevista en Caylent

      Entrevista

      The interview process was a process of 3 calls, first was a call with the recruiter, followed by a first round AWS focused technical interview and then a second round ML focused technical interview. The interviews were about 1 hour each, they were split into introductions, Q&A, and finally back and forth dialogue. The Q&A portions were technical and theoretical questions about different AWS/ML topics like variance vs bias, classification accuracy metrics, regularization, Sagemaker pipelines etc

      Preguntas de entrevista [3]

      Pregunta 1

      Can you explain the bias variance tradeoff?
      Responder pregunta

      Pregunta 2

      What are different techniques used to split datasets for training models?
      Responder pregunta

      Pregunta 3

      Can you describe overfitting, what are some causes for it, and what are some techniques to prevent it?
      Responder pregunta
      4

      Entrevista para Machine Learning Engineer

      22 oct 2024
      Empleado anónimo
      Oferta aceptada
      Experiencia positiva
      Entrevista promedio

      Solicitud

      Me postulé a través de un reclutador. Acudí a una entrevista en Caylent en may 2024

      Entrevista

      The interview process consisted of several rounds: HR Get-to-Know Round: This was an initial round where the focus was on understanding my background, interests, and overall fit with the company culture. Machine Learning Round: In this technical round, my knowledge and skills in machine learning concepts, algorithms, and practical applications were evaluated. Hiring Manager Round: This round involved a discussion with the hiring manager to assess my suitability for the specific role, team dynamics, and project alignment. Cloud Technology Round: The final round tested my proficiency in cloud technology, focusing on relevant tools, platforms, and their application in machine learning and deployment processes.

      Preguntas de entrevista [1]

      Pregunta 1

      What is overfitting? What is IAC? Some ML deployment questions
      Responder pregunta