Datenwissenschaftler Interview Questions

Datenwissenschaftler Interview Questions

In einem Vorstellungsgespräch für Datenwissenschaftler stellen Arbeitgeber wahrscheinlich Fragen zur Beurteilung Ihrer Kompetenzen in Datenmodellierung, Problemlösung und Programmierung. Bereiten Sie sich darauf vor, allgemeine Fragen zu beantworten, die Ihre Kenntnisse in Statistik und Datenwissenschaft testen sollen. Sie müssen evtl. auch offene Fragen beantworten, mit denen Ihre Kreativität, Kommunikationsfähigkeiten und Ihre Ausbildung in Datenmodellierung und Programmierung geprüft werden.

Typische Bewerbungsfragen als Datenwissenschaftler (m/w/d) und wie Sie diese beantworten

Question 1

Frage 1: Welche Verfahren der Datenmodellierung bevorzugen Sie und warum?

How to answer
So beantworten Sie die Frage: Daten in verständliche und aktionsfähige Informationen umzuwandeln ist ein kritischer Bestandteil der Arbeit eines Datenwissenschaftlers. Mit dieser Frage können Arbeitgeber Ihre Fähigkeiten in Datenmodellierung und Ihren Hintergrund in Erfahrung bringen. Führen Sie Ihre bevorzugten Datenmodellierungstechniken auf und erläutern Sie die jeweiligen Vorteile wie einfache Anwendung, Flexibilität usw.
Question 2

Frage 2: Wie würden Sie gefälschte Instagram-Konten feststellen, mit denen Verbraucher betrogen werden sollen?

How to answer
So beantworten Sie die Frage: Mithilfe von Fragen wie dieser kann ein Arbeitgeber Ihre Problemlösungskompetenz prüfen. Bei der Beantwortung offener Fragen wie dieser können Sie ruhig klärende Fragen stellen und Whiteboards verwenden, um Ihre Programmier- und Diagrammfähigkeiten vorzuführen. Verdeutlichen Sie Ihren Denkprozess bei der Behebung des Problems.
Question 3

Frage 3: Beschreiben Sie Umstände, die in Python eine Liste, ein Tuple oder Set erfordern.

How to answer
So beantworten Sie die Frage: Personalverantwortliche verwenden Fragen wie diese, um Ihre Python-Programmierkenntnisse zu prüfen. Gehen Sie vor dem Vorstellungsgespräch die Grundlagen von Python wie Listen, Tuples und Sets durch. Sie sollten erklären können, wann und wie jedes Tool von Datenwissenschaftlern eingesetzt wird.

33,531 datenwissenschaftler interview questions shared by candidates

PLEASE DON'T TAKE THE PHONE SCREENING LIGHTLY! I did and got rejected. I was expecting SQL questions and in general talk about my resume but she asked me a question on product sense and I was completely unprepared for it. Creation of Facebook user groups has gone down by 20%, what will you do? sounds simple but I messed it up so badly. I was just blabbering anything in an unstructured way, I sounded so stupid and not even fit for a small company forget Facebook. The recruiter was nice and she did not say anything but I were to hear my own answer, I would reject myself on spot. I regret it so much wish I could have prepared for it. I hope someone sees this and it helps them. The SQL questions were easy and I did answer them correctly- what kind of joins to get only common rows, what the natural sorting order etc.
avatar

Data Scientist

Interviewed at Meta

3.6
Mar 9, 2020

PLEASE DON'T TAKE THE PHONE SCREENING LIGHTLY! I did and got rejected. I was expecting SQL questions and in general talk about my resume but she asked me a question on product sense and I was completely unprepared for it. Creation of Facebook user groups has gone down by 20%, what will you do? sounds simple but I messed it up so badly. I was just blabbering anything in an unstructured way, I sounded so stupid and not even fit for a small company forget Facebook. The recruiter was nice and she did not say anything but I were to hear my own answer, I would reject myself on spot. I regret it so much wish I could have prepared for it. I hope someone sees this and it helps them. The SQL questions were easy and I did answer them correctly- what kind of joins to get only common rows, what the natural sorting order etc.

We have two types of reviewers: careful reviewer (80% of reviewers) and lazy reviewers (20% of reviewers). Careful reviewers rate a post positive 60% of time and negative 40% of time). Lazy reviewers however rate a post positive 100% of time. A) what is the probability that a random ad is reviewed positively? B) If an ad gets a negative review, what is the probability that it's reviewed by a lazy reviewer? C) If 3 ads are reviewed positively in a row, what is the probability that they are reviewed by a lazy reviewer? D) Some as above with n positively reviewed ads in a row. What happens when n goes to infinity? E) If we have very few labeled data, how can we build a model to distinguish between careful and lazy reviewers?
avatar

Data Scientist, Analytics

Interviewed at Meta

3.6
Mar 6, 2019

We have two types of reviewers: careful reviewer (80% of reviewers) and lazy reviewers (20% of reviewers). Careful reviewers rate a post positive 60% of time and negative 40% of time). Lazy reviewers however rate a post positive 100% of time. A) what is the probability that a random ad is reviewed positively? B) If an ad gets a negative review, what is the probability that it's reviewed by a lazy reviewer? C) If 3 ads are reviewed positively in a row, what is the probability that they are reviewed by a lazy reviewer? D) Some as above with n positively reviewed ads in a row. What happens when n goes to infinity? E) If we have very few labeled data, how can we build a model to distinguish between careful and lazy reviewers?

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