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Top 10 Data Science Interview
Questions in 2022
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Data science is rapidly dominating the world with its diverse usage in various
industries. It currently plays a critical role in profit generation. Many young people are
interested in data science. Data Scientists generate wonders and deliver the most
outstanding results by combining Artificial Intelligence (AI), Machine Learning (ML), and
many other technologies. So letโ€™s discuss some of the Data Science interview questions
in this article.
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Interview Questions
Question 1: Describe model deployment in Data Science?
Answer: In Data Science, the term "deployment" refers to using a model to make
predictions based on new data. Building a model is rarely the last step in a project. Even if
the model's purpose is to increase data comprehension, the information acquired must
be organized and structured in a form that the client can understand.
Question 2: In Data Science, what is logistic regression?
Answer: Logistic regression is a strategy for predicting a binary outcome by combining
predictor variables in a linear way.
Question 3: What are three types of biases that can occur during sampling?
Answer: Three types of biases during sampling are:
1. Selection bias
2. Under coverage bias
3. Survivorship bias
Question 4: What is the decision tree algorithm?
Answer: A prominent supervised machine learning algorithm is the decision tree. It's
primarily used for classification and regression, and it helps you break down a large
dataset into smaller chunks. The decision tree can handle both category and numerical
data.
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Question 6: Describe the recommender system?
Answer: The recommender system is a subcategory of information filtering methods. It
aids in predicting the preferences or evaluations that users are likely to confer on a
product.
Question 7: List the Python libraries that Data Analysts use?
Answer: The Python libraries used by Data Analysts are:
โ€ข SciPy
โ€ข Pandas
โ€ข Matplotlib
โ€ข NumPy
โ€ข Scikit
โ€ข Seaborn
Question 8: What is collaborative filtering?
Answer: Collaborative filtering is a method of searching for the right patterns by
combining numerous data sources and entities.
Question 9: Describe bias?
Answer: Bias is defined as an inaccuracy produced in your model as a result of an
oversimplification of a machine learning method. It can result in underfitting.
Question 10: Define linear regression?
Answer: Linear regression is a statistical programming method that predicts the value of
a variable 'A' based on the value of another variable 'B.' B is the predictor variable. In
contrast, A is known as the criteria variable.
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Data Science with InfosecTrain
With data's wide acceptance, it's no wonder that there are a plethora of excellent
prospects for a challenging position in Data Science. If you want to advance your
Data Science career, you should look into InfosecTrain's Data Science Courses to
learn with industry experts.
About InfosecTrain
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โ€ข High-quality technical services, certifications
or customized training programs curated with
professionals of over 15 years of combined
experience in the domain
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Top 10 Data Science Interview Questions in 2022.pptx

  • 1. Top 10 Data Science Interview Questions in 2022 www.infosectrain.com | sales@infosectrain.com
  • 2. www.infosectrain.com | sales@infosectrain.com Data science is rapidly dominating the world with its diverse usage in various industries. It currently plays a critical role in profit generation. Many young people are interested in data science. Data Scientists generate wonders and deliver the most outstanding results by combining Artificial Intelligence (AI), Machine Learning (ML), and many other technologies. So letโ€™s discuss some of the Data Science interview questions in this article.
  • 3. www.infosectrain.com | sales@infosectrain.com Interview Questions Question 1: Describe model deployment in Data Science? Answer: In Data Science, the term "deployment" refers to using a model to make predictions based on new data. Building a model is rarely the last step in a project. Even if the model's purpose is to increase data comprehension, the information acquired must be organized and structured in a form that the client can understand. Question 2: In Data Science, what is logistic regression? Answer: Logistic regression is a strategy for predicting a binary outcome by combining predictor variables in a linear way. Question 3: What are three types of biases that can occur during sampling? Answer: Three types of biases during sampling are: 1. Selection bias 2. Under coverage bias 3. Survivorship bias Question 4: What is the decision tree algorithm? Answer: A prominent supervised machine learning algorithm is the decision tree. It's primarily used for classification and regression, and it helps you break down a large dataset into smaller chunks. The decision tree can handle both category and numerical data.
  • 4. www.infosectrain.com | sales@infosectrain.com Question 6: Describe the recommender system? Answer: The recommender system is a subcategory of information filtering methods. It aids in predicting the preferences or evaluations that users are likely to confer on a product. Question 7: List the Python libraries that Data Analysts use? Answer: The Python libraries used by Data Analysts are: โ€ข SciPy โ€ข Pandas โ€ข Matplotlib โ€ข NumPy โ€ข Scikit โ€ข Seaborn Question 8: What is collaborative filtering? Answer: Collaborative filtering is a method of searching for the right patterns by combining numerous data sources and entities. Question 9: Describe bias? Answer: Bias is defined as an inaccuracy produced in your model as a result of an oversimplification of a machine learning method. It can result in underfitting. Question 10: Define linear regression? Answer: Linear regression is a statistical programming method that predicts the value of a variable 'A' based on the value of another variable 'B.' B is the predictor variable. In contrast, A is known as the criteria variable.
  • 5. www.infosectrain.com | sales@infosectrain.com Data Science with InfosecTrain With data's wide acceptance, it's no wonder that there are a plethora of excellent prospects for a challenging position in Data Science. If you want to advance your Data Science career, you should look into InfosecTrain's Data Science Courses to learn with industry experts.
  • 6. About InfosecTrain โ€ข Established in 2016, we are one of the finest Security and Technology Training and Consulting company โ€ข Wide range of professional training programs, certifications & consulting services in the IT and Cyber Security domain โ€ข High-quality technical services, certifications or customized training programs curated with professionals of over 15 years of combined experience in the domain www.infosectrain.com | sales@infosectrain.com
  • 8. Why InfosecTrain Global Learning Partners Flexible modes of Training Tailor Made Training Post training completion Certified and Experienced Instructors Access to the recorded sessions www.infosectrain.com | sales@infosectrain.com
  • 9. Our Trusted Clients www.infosectrain.com | sales@infosectrain.com
  • 10.
  • 11. Contact us Get your workforce reskilled by our certified and experienced instructors! IND: 1800-843-7890 (Toll Free) / US: +1 657-722-11127 / UK : +44 7451 208413 sales@infosectrain.com www.infosectrain.com