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

      Woolworths Group

      Questa è la tua azienda?

      Circa
      Recensioni
      Stipendi e benefit
      Lavori
      Colloqui
      Colloqui
      Ricerche correlate: Recensioni su Woolworths Group | Offerte di lavoro di Woolworths Group | Stipendi di Woolworths Group | Benefit di Woolworths Group
      Colloqui di Woolworths GroupColloqui per Senior Data Scientist presso Woolworths GroupColloquio di Woolworths Group


      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.

      Colloquio per Senior Data Scientist

      12 dic 2025
      Candidato anonimo a colloquio
      Offerta rifiutata
      Esperienza positiva
      Colloquio facile

      Candidatura

      Ho presentato la mia candidatura di persona. La procedura ha richiesto 2 settimane. Ho sostenuto un colloquio presso Woolworths Group nel mese di gen 2025

      Colloquio

      First round is Data science Case interview with a lead data scientist and a senior manager testing modelling experience. Second round is behaviour interview on general analytical experience and people coaching experience.

      Domande di colloquio [1]

      Domanda 1

      Case interview about propensity model
      Rispondi alla domanda

      Altre recensioni di colloqui per Senior Data Scientist presso Woolworths Group

      Colloquio per Senior Data Scientist

      2 feb 2022
      Candidato anonimo a colloquio
      Sydney
      Nessuna offerta
      Esperienza neutra
      Colloquio difficile

      Candidatura

      Ho presentato la mia candidatura tramite un'agenzia di reclutamento personale. La procedura ha richiesto una settimana. Ho sostenuto un colloquio presso Woolworths Group (Sydney) nel mese di gen 2022

      Colloquio

      I applied through an agent and the first round is to give you an online test to complete within 2 hours. If you pass the test, then you can go into the next round of interviews.

      Domande di colloquio [1]

      Domanda 1

      The test is heavily testing the data analytics skills. The second part of the test is to ask you to come out with answers to 7 questions with data analytics tools. This test aims more to select the best data analytics candidate. If you want to pass the test, you need to practice more on the data analytics part, although I do not think this is not an important skill for the data scientist. Anyway, this is the gaming rule for this company.
      Rispondi alla domanda

      Colloquio per Senior Data Scientist

      30 ott 2020
      Dipendente anonimo
      Offerta accettata
      Esperienza neutra
      Colloquio difficile

      Candidatura

      Ho presentato la mia candidatura tramite un selezionatore. Ho sostenuto un colloquio presso Woolworths Group

      Colloquio

      The recruiter called me regarding the role as he saw my profile on LinkedIn and arranged for a 90 minutes technical interview. Two Online Rounds: Python (45 minutes) (Difficult) And Machine Learning (45 minutes)(Average difficulty)

      Domande di colloquio [1]

      Domanda 1

      WooliesX Data Science Test - Machine learning and statistics Question 1 We are measuring the brightness of a star with a photon detector that produces a luminosity score. We point it at a particular star and take a large number of readings. Unfortunately, the readings are noisy and we observe that some readings indicate the star has negative brightness. Would you discard the negative readings? What effect does this have on the data and the readings we make from it? Question 2 You have fitted a GBM model and are happy with its accuracy. How will you explain, in business terms, to your stakeholders what the model is doing? What insights can you draw from the model? Question 3 Imagine you have the same dataset for training a predictive model. you once use XGboost and once a randomforest methodology (not eXtreme boosting). Under which scenario do you expect the depth of the trees to be higher? Question 4 Assume you have built a classification model which has an accuracy of 90% on the test set. Under what circumstances could this still be a bad model? Question 5 You are supposed to make a propensity to purchase model using XGBoost, and you have 40k features on customers in the feature bank. Given it is not feasible to productionise a model with this many features, how do you quantitatively reduce the number of features to something feasible (say 500 features)? Question 6 What are the advantages of a model like XGBoost over logistic regression? What are the disadvantages? Question 7 If you have a dataset that has a size larger than the amount of RAM in your computer, list at least 3 ways to help in fitting a model on this data. Question 8 You have made a very powerful predictive model for customers weekly sales. What is your favorite method of explaining the importance of the features in your model? Does this method consider interactions between features? If the feature is categorical, does this method work better with one-hot encoding or label encoding? Does this method explain the direction of the effect of the feature on the target variable (direct or inverse)? Question 9 How do you compare one-hot encoding and label encoding? When would one-hot encoding work better? And when would it be the other way around? Any other approach to encoding? Question 10 You are developing a GBM model to predict customers' weekly spend in supermarkets. From the data you collected you realised that about 30% of your target variable were zeros, i.e. 30% of customers had zero weekly spend in the past. State your plan for modelling. Question 11 A promotion offer was sent to two groups of customers, Group A and Group B, consisting of 1180 and 5740 customers, respectively. The redemption rate was 21% for Group A and 25% for Group B. Determine whether the two redemption rates are significantly different. Report the associated p-value. State any assumptions you may make. Question 12 You have a friend who randomly decides whether he goes out for a drink on Friday nights with probability of going out being 90%. If he goes out, he randomly chooses from three bars, A, B and C, with equal probabilities. Suppose you are trying to find him on a Friday night, and you have checked Bar A and B and he is not in either of those two. What is the probability that you will find him in Bar C? Apply the Bayes rule and show steps.
      Rispondi alla domanda
      5