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New York Life Insurance Company Data Scientist Interview Questions and Answers

Updated 13 Mar 2024

New York Life Insurance Company Data Scientist Interview Experiences

1 interview found

Interview experience
4
Good
Difficulty level
Moderate
Process Duration
2-4 weeks
Result
Selected Selected

I applied via Company Website and was interviewed before Mar 2023. There were 3 interview rounds.

Round 1 - HR 

(1 Question)

  • Q1. What is the target value for logistic regression?
  • Ans. 

    The target value for logistic regression is a binary outcome variable.

    • The target value in logistic regression is typically a binary variable, representing two classes or outcomes.

    • For example, in a spam email classification model, the target value could be 'spam' or 'not spam'.

    • Logistic regression predicts the probability that an instance belongs to a particular class.

  • Answered by AI
Round 2 - Case Study 

Machine Learning Case

Round 3 - One-on-one 

(1 Question)

  • Q1. Behavioral-related questions

Interview Preparation Tips

Interview preparation tips for other job seekers - Study your resume and prepare for theory-based data science questions.

Skills evaluated in this interview

Interview questions from similar companies

Interview experience
4
Good
Difficulty level
Moderate
Process Duration
Less than 2 weeks
Result
Not Selected

I applied via Naukri.com and was interviewed in Aug 2024. There was 1 interview round.

Round 1 - One-on-one 

(2 Questions)

  • Q1. Whats is supervised learning
  • Ans. 

    Supervised learning is a type of machine learning where the model is trained on labeled data to make predictions or decisions.

    • Uses labeled data for training

    • Predicts outcomes based on input features

    • Examples include regression and classification algorithms

  • Answered by AI
  • Q2. What is unsupervised learning
  • Ans. 

    Unsupervised learning is a type of machine learning where the model is trained on unlabeled data without any predefined output labels.

    • No predefined output labels are provided for the training data

    • The model must find patterns and relationships in the data on its own

    • Common techniques include clustering and dimensionality reduction

    • Examples: K-means clustering, Principal Component Analysis (PCA)

  • Answered by AI

Interview Preparation Tips

Interview preparation tips for other job seekers - do hard work

Skills evaluated in this interview

Interview experience
5
Excellent
Difficulty level
-
Process Duration
-
Result
-
Round 1 - Technical 

(1 Question)

  • Q1. Relevant question to the projects

Data Scientist Interview Questions & Answers

MetLife user image Ramachandra Maharshi Andukuri

posted on 17 Mar 2024

Interview experience
1
Bad
Difficulty level
-
Process Duration
-
Result
-
Round 1 - Technical 

(1 Question)

  • Q1. Walk us through you resume
Interview experience
4
Good
Difficulty level
Moderate
Process Duration
Less than 2 weeks
Result
Not Selected

I applied via Naukri.com and was interviewed in Aug 2024. There was 1 interview round.

Round 1 - One-on-one 

(2 Questions)

  • Q1. Whats is supervised learning
  • Ans. 

    Supervised learning is a type of machine learning where the model is trained on labeled data to make predictions or decisions.

    • Uses labeled data for training

    • Predicts outcomes based on input features

    • Examples include regression and classification algorithms

  • Answered by AI
  • Q2. What is unsupervised learning
  • Ans. 

    Unsupervised learning is a type of machine learning where the model is trained on unlabeled data without any predefined output labels.

    • No predefined output labels are provided for the training data

    • The model must find patterns and relationships in the data on its own

    • Common techniques include clustering and dimensionality reduction

    • Examples: K-means clustering, Principal Component Analysis (PCA)

  • Answered by AI

Interview Preparation Tips

Interview preparation tips for other job seekers - do hard work

Skills evaluated in this interview

Interview experience
4
Good
Difficulty level
-
Process Duration
-
Result
Selected Selected
Round 1 - Technical 

(2 Questions)

  • Q1. LSTM RNN and simple RNN difference
  • Ans. 

    LSTM RNN is a type of RNN that can learn long-term dependencies, while simple RNN struggles with vanishing/exploding gradients.

    • LSTM RNN has more complex architecture with memory cells, input, forget, and output gates.

    • Simple RNN has a single tanh activation function and suffers from vanishing/exploding gradients.

    • LSTM RNN is better at capturing long-term dependencies in sequences.

    • Simple RNN is simpler but struggles with

  • Answered by AI
  • Q2. What is lasso regression
  • Ans. 

    Lasso regression is a type of linear regression that uses L1 regularization to prevent overfitting by adding a penalty term to the loss function.

    • Lasso regression helps in feature selection by shrinking the coefficients of less important features to zero.

    • It is particularly useful when dealing with high-dimensional data where the number of features is much larger than the number of samples.

    • The regularization parameter in...

  • Answered by AI
Round 2 - Technical 

(1 Question)

  • Q1. How to fine tune a llm model
  • Ans. 

    Fine tuning a LLM model involves adjusting hyperparameters to improve performance.

    • Perform grid search or random search to find optimal hyperparameters

    • Use cross-validation to evaluate different hyperparameter combinations

    • Regularize the model to prevent overfitting

    • Adjust learning rate and batch size for better convergence

    • Consider using techniques like early stopping to prevent overfitting

  • Answered by AI
Round 3 - Behavioral 

(1 Question)

  • Q1. Normal discussion
Round 4 - HR 

(1 Question)

  • Q1. Salary negotiation

Skills evaluated in this interview

Interview experience
5
Excellent
Difficulty level
Easy
Process Duration
Less than 2 weeks
Result
Selected Selected

I applied via Recruitment Consulltant and was interviewed in Feb 2024. There was 1 interview round.

Round 1 - Technical 

(3 Questions)

  • Q1. Random Forest Hyperparameters
  • Q2. Why deep learning is used over statistical models
  • Ans. 

    Deep learning is used over statistical models for complex, non-linear relationships in data.

    • Deep learning can automatically learn hierarchical representations of data, capturing intricate patterns and relationships.

    • Statistical models may struggle with high-dimensional data or non-linear relationships, where deep learning excels.

    • Deep learning can handle unstructured data like images, audio, and text more effectively tha...

  • Answered by AI
  • Q3. How XGB is better than RF
  • Ans. 

    XGB is better than RF due to its ability to handle complex relationships and optimize performance.

    • XGB uses gradient boosting which allows for better handling of complex relationships compared to RF

    • XGB optimizes performance by using regularization techniques to prevent overfitting

    • XGB is faster and more efficient in training compared to RF

    • XGB allows for parallel processing which can speed up computation

    • XGB has been shown...

  • Answered by AI

Interview Preparation Tips

Interview preparation tips for other job seekers - Clear with Fundamentals

Skills evaluated in this interview

Interview experience
5
Excellent
Difficulty level
-
Process Duration
-
Result
-
Round 1 - Technical 

(1 Question)

  • Q1. Relevant question to the projects

Data Scientist Interview Questions & Answers

MetLife user image Ramachandra Maharshi Andukuri

posted on 17 Mar 2024

Interview experience
1
Bad
Difficulty level
-
Process Duration
-
Result
-
Round 1 - Technical 

(1 Question)

  • Q1. Walk us through you resume
Interview experience
5
Excellent
Difficulty level
Moderate
Process Duration
Less than 2 weeks
Result
Selected Selected

I applied via Job Portal and was interviewed in Jul 2022. There were 2 interview rounds.

Round 1 - Resume Shortlist 
Pro Tip by AmbitionBox:
Keep your resume crisp and to the point. A recruiter looks at your resume for an average of 6 seconds, make sure to leave the best impression.
View all tips
Round 2 - Technical 

(2 Questions)

  • Q1. Coding questions on Pandas Confusion matrix Project related questions ML algorithms Correlation Puzzle questions
  • Q2. Puzzle Linear Regression Outlier

Interview Preparation Tips

Interview preparation tips for other job seekers - Keep your foundations strong. Please have good practice in python especially pandas.

New York Life Insurance Company Interview FAQs

How many rounds are there in New York Life Insurance Company Data Scientist interview?
New York Life Insurance Company interview process usually has 3 rounds. The most common rounds in the New York Life Insurance Company interview process are HR, Case Study and One-on-one Round.
What are the top questions asked in New York Life Insurance Company Data Scientist interview?

Some of the top questions asked at the New York Life Insurance Company Data Scientist interview -

  1. What is the target value for logistic regressi...read more
  2. Behavioral-related questi...read more

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New York Life Insurance Company Data Scientist Interview Process

based on 1 interview

Interview experience

4
  
Good
View more
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