Passa al contenutoPassa al piè di pagina
  • Lavori
  • Aziende
  • Stipendi
  • Per le aziende

      Migliora la tua carriera

      Scopri le tue potenzialità di guadagno, trova lavori da sogno e condividi approfondimenti su lavoro e vita privata in forma anonima.

      employer cover photo
      employer logo
      employer logo

      Cogniac

      Questa è la tua azienda?

      Circa
      Recensioni
      Stipendi e benefit
      Lavori
      Colloqui
      Colloqui
      Ricerche correlate: Recensioni su Cogniac | Offerte di lavoro di Cogniac | Stipendi di Cogniac | Benefit di Cogniac
      Colloqui di CogniacColloqui per Senior Deep Learning Engineer presso CogniacColloquio di Cogniac


      Glassdoor

      • Chi siamo
      • Contattaci

      Aziende

      • Account Business gratuito
      • Spazio per le aziende
      • Blog per le aziende

      Informazioni

      • Aiuto
      • Linee guida
      • Condizioni d'uso
      • Privacy e scelte pubblicitarie
      • Non vendere né condividere le mie informazioni
      • Strumento per l'accettazione dei cookie

      Lavora con noi

      • Inserzionisti
      • Carriere
      Scarica l'app

      • Cerca:
      • Aziende
      • Lavori
      • Località

      Copyright © 2008-2026. Glassdoor LLC. "Glassdoor," "Worklife Pro," "Bowls" e il relativo logo sono marchi registrati di Glassdoor LLC.

      Aziende seguite

      Non lasciarti sfuggire opportunità e informazioni privilegiate seguendo le aziende dove vorresti lavorare.

      Ricerche di lavoro

      Ricevi suggerimenti e aggiornamenti personalizzati avviando le tue ricerche.

      Le migliori aziende per "stipendio e benefit" vicino a te

      avatar
      Amazon
      3.7★Stipendio e benefit
      avatar
      Google
      4.5★Stipendio e benefit
      avatar
      HENNGE
      3.8★Stipendio e benefit
      avatar
      xneelo
      3.8★Stipendio e benefit

      Colloquio per Senior Deep Learning Engineer

      10 dic 2021
      Candidato anonimo a colloquio
      Nessuna offerta
      Esperienza negativa
      Colloquio difficile

      Candidatura

      Ho presentato la mia candidatura online. La procedura ha richiesto più di una settimana. Ho sostenuto un colloquio presso Cogniac nel mese di dic 2021

      Colloquio

      The interview process was 4 interviews in total, the first interview was with the hiring manager and was a very general review of resume and experience. The next 3 interviews were with various other technical members of the staff, and focused more on technical assessment. Oddly enough, in all four interviews, none of the questions really targeted intuition around deep learning for computer vision, and this position was predominantly for computer vision. The first technical interview was pretty awkward. The interviewer opened a google doc and a programming problem, then told me to code directly in the document. I asked him if I could at least put the code in an editor (since nobody ever codes in google docs) but the interviewer said 'no'. So I wrote the program in google docs, fighting formatting the whole time, and was not allowed to test my code. Most companies use leetcode which provides a decent editing environment and also allows you to run your code, even during interviews. But that was not the case here. So they essentially put me into a scenario that that would never occur in the real world, asked me to solve a contrived problem, then disallowed me from checking my solution and presenting it confidently. I'm not sure putting candidates in an irregular circumstance and asking them to solve a problem without typically available resources is an effective way to gauge their abilities. The next interview was with the software architect. He also asked some technical questions about deep learning, but they were only surface-level questions about hyper parameters and optimizers. We didn't talk at all about deeper topics like network architecture or what a network learns. At one point in this interview, and perhaps most surprising, he put a conspicuously labeled python function in front of me and asked me what it did. It was a recursive function that computed the FFT of a series, not something very commonly known or taught in deep learning for computer vision. So it was weird that he would ask about something so irrelevant. I think we was just trying to assess me in terms of what his background was, which happened to be somewhat irrelevant to the position as advertised. The final technical interview was with the hiring manager who does deep learning. I was expecting this interview to go better than the previous two. The interviewer ended up asking some really obscure questions about applying deep learning models to challenging circumstances. It was clear that the interview questions were derived from real challenges he was facing in his job, which was fine. However, the difference between the interviewer (him) and the interviewee (me) in this circumstance is that he's known about these problems for some time, and has been able to research, experiment, and analyze these obscure problems. I, as the interviewee, am being put on the spot to both understand these obscure applications and also describe details about why the problems occur and how to solve them. Again, no real focus on the fundamentals of deep learning for computer vision, just very specific questions about obscure problems. I'm not sure this process is going to highlight good problem solvers with solid intuition more than it is going to find specific candidates who may have dealt with hyper specific cases. But I wish them good luck.

      Domande di colloquio [4]

      Domanda 1

      What are Eigen Vectors and Eigen Values?
      Rispondi alla domanda

      Domanda 2

      Do you know what this function does (it was an FFT function)? lol
      Rispondi alla domanda

      Domanda 3

      If I have an input image of 4000 x 4000 and objects that I want to detect of size 8 x 8, what are the limiting factors in an object detector that would drive the performance in detecting the 8 x 8 objects?
      Rispondi alla domanda

      Domanda 4

      If I have labeled images where I want to perform object detection, and sometimes the objects are partially occluded, how can I exclude partially occluded objects from training?
      Rispondi alla domanda
      3