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      Búsquedas relacionadas: Evaluaciones de Google | Empleos en Google | Sueldos en Google | Prestaciones en Google
      Entrevistas en GoogleEntrevistas para el cargo de Data Scientist en GoogleEntrevista en Google


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      Entrevista para Data Scientist

      2 sep 2021
      Candidato de entrevista anónimo
      Mountain View, CA
      Sin ofertas
      Experiencia negativa
      Entrevista promedio

      Solicitud

      Me postulé a través de una recomendación de un empleado. El proceso tomó 5 semanas. Acudí a una entrevista en Google (Mountain View, CA) en ago 2021

      Entrevista

      Very standard process of Google DS interview. 2 technical sessions, 1 bq, then another 2 technical sessions. My experience is very standard except that 2/4 technical sessions are ruined by the interviewers asking for inappropriate questions. I complained and got a final round of back up session, but it is useless and could not change my overall review. Difficulty is average as those hard ones are either wrong, or out of control of the interviewers (even the interviewers solved it wrong!)

      Preguntas de entrevista [2]

      Pregunta 1

      R1: You need to diagnose an error in the program: The google maps team wants to understand whether dismiss rate is a reasonable metric to help understand user experience of a button in the app. The hypothesis is that, the higher the dismiss rate, the worse the user experience. Hence, they perform a simulation in the A/A comparison scenario. In the simulation, signal = all interactions on the button (click, dismiss, ignore, ...), and negative signal = dismiss. The pseudo code is as follows. Note that we might refer to the numerator and denominator often in later discussions. result_pval = [] for replica in (1:1000):         # the number of overall signals follows a roughly bell shaped distribution         num_signal_control = round(random.normal(150, std = 30))         num_signal_treatment = round(random.normal(150, std = 30))         # given the number of overall signals, the number of negative signals follows a binomial distribution         num_negative_signal_control = random.binomial(num_signal_control, 0.5) num_negative_signal_treatment = random.binomial(num_signal_treatment, 0.5) # define numerator and denominator of the test statistics # the idea of the denominator is: we use Normal approximation to estimate the variance of the numerator p_hat_control = num_negative_signal_control / num_signal_control p_hat_treatment = num_negative_signal_treatment / num_signal_treatment numerator = p_hat_treatment - p_hat_control denominator = sqrt( p_hat_treatment*(1-p_hat_treatment)/num_signal_treatment + p_hat_control *(1-p_hat_control) /num_signal_control ) testing_statistics = numerator / denominator # calculate p value and append to the result vector p_value = 2*std_normal_area_under_curve( lower = abs(testing_statistics), upper = infinity)         result_pval = append(result_pval, p_value) plot_histogram(result_pval) The histogram of the p-values is skewed to the right on [0,1]. In other words, there are more p values < 0.5 than p values > 0.5. Q1: Is such a distribution of p-value expected?
      1 respuesta

      Pregunta 2

      R4: Assume the distribution of children per family is given by: # children 0 | 1 | 2 | 3 | 4 | >=5 p 0.3 | 0.25 | 0.2 | 0.15 | 0.1 | 0 Consider a random girl in the population of children. What's the probability that she has a sister?
      4 respuestas
      25

      Otras evaluaciones sobre las entrevistas para el cargo de Data Scientist en Google

      Entrevista para Data Scientist

      28 abr 2026
      Candidato de entrevista anónimo
      Sin ofertas
      Experiencia positiva
      Entrevista promedio

      Solicitud

      Acudí a una entrevista en Google

      Entrevista

      It was all good, the interviewer was very nice. Technical questions were a bit challenging but overall it was good. The hiring manager was looking for some hands on experience

      Entrevista para Data Scientist

      30 mar 2026
      Empleado anónimo
      Oferta aceptada
      Experiencia positiva
      Entrevista promedio

      Solicitud

      Me postulé en línea. Acudí a una entrevista en Google

      Entrevista

      Back to back interview. [1]. Mainly ask ML concepts, e.g., how to develop a classifer for youtube video; they will also ask some statistical concepts [2] Coding for both python and sql

      Preguntas de entrevista [1]

      Pregunta 1

      how to develop a classifer for youtube video
      Responder pregunta

      Entrevista para Data Scientist

      20 may 2026
      Candidato de entrevista anónimo
      París
      Sin ofertas
      Experiencia positiva
      Entrevista promedio

      Solicitud

      Me postulé en línea. Acudí a una entrevista en Google (París) en mar 2026

      Entrevista

      One HR screening, followed by two interviews: first assessing statistical knowledge and communication, second focusing on data analysis, intuition, and communication, and ending with HR feedback session stage round process.

      Preguntas de entrevista [1]

      Pregunta 1

      They asked how to compute p-value with only one sample, requiring understanding of hypothesis testing, null distribution, t-test or z-test assumptions, and interpretation of significance levels in statistical inference context.
      Responder pregunta
      1

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