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MiQ Digital Data Scientist Interview Questions and Answers

Updated 16 Feb 2025

MiQ Digital Data Scientist Interview Experiences

2 interviews found

Interview experience
3
Average
Difficulty level
-
Process Duration
-
Result
-
Round 1 - Aptitude Test 

Aptitude abd behavioural questions

Interview Preparation Tips

Interview preparation tips for other job seekers - Be thorough in ML, AI, DL concepts with knowledge of DBMS, SQL, and python packages like pandas, scipy, etc. Have good projects in ML, DL, Data Science domain
Interview experience
4
Good
Difficulty level
-
Process Duration
-
Result
-
Round 1 - Aptitude Test 

Few mcq on stats and ml, followed by 3 python function codes

Round 2 - Coding Test 

Machine learning, python, sql, stats

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Interview experience
4
Good
Difficulty level
Moderate
Process Duration
More than 8 weeks
Result
Selected Selected

I applied via Referral and was interviewed before May 2023. There was 1 interview round.

Round 1 - Assignment 

Got an assignment to perform in excel about data analysis for churn prediction. Performed in excel. 70% focus was on skills and 30% on analysis.

I applied via Naukri.com and was interviewed in May 2022. There was 1 interview round.

Round 1 - HR 

(2 Questions)

  • Q1. Tell me about yourself
  • Ans. 

    I am a highly motivated and experienced professional with a strong background in the field.

    • I have a Bachelor's degree in Business Administration

    • I have over 5 years of experience in sales and marketing

    • I am skilled in developing and implementing effective strategies

    • I have a proven track record of exceeding sales targets

    • I am a team player and have excellent communication skills

  • Answered by AI
  • Q2. Last movie you have watched
  • Ans. 

    The last movie I watched was 'Inception'.

    • The movie is directed by Christopher Nolan.

    • It is a science fiction action film.

    • The plot revolves around a thief who steals corporate secrets through dream-sharing technology.

    • The film stars Leonardo DiCaprio, Joseph Gordon-Levitt, and Ellen Page.

    • It received critical acclaim for its unique concept and visual effects.

  • Answered by AI

Interview Preparation Tips

Interview preparation tips for other job seekers - easy and nothing tough good communication is only required.

I applied via Naukri.com and was interviewed in Jun 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 Resume tips
Round 2 - One-on-one 

(12 Questions)

  • Q1. What is correlation(in plain english)?
  • Ans. 

    Correlation is a statistical measure that shows how two variables are related to each other.

    • Correlation measures the strength and direction of the relationship between two variables.

    • It ranges from -1 to 1, where -1 indicates a perfect negative correlation, 0 indicates no correlation, and 1 indicates a perfect positive correlation.

    • Correlation does not imply causation, meaning that just because two variables are correlat...

  • Answered by AI
  • Q2. What is multi-collinearity?
  • Ans. 

    Multicollinearity is a phenomenon where two or more independent variables in a regression model are highly correlated.

    • It can lead to unstable and unreliable estimates of regression coefficients.

    • It can also make it difficult to determine the individual effect of each independent variable on the dependent variable.

    • It can be detected using correlation matrices or variance inflation factors (VIF).

    • Solutions include removing...

  • Answered by AI
  • Q3. What are p-values? explain it in plain english without bringing up machine learning?
  • Ans. 

    P-values are a statistical measure that helps determine the likelihood of obtaining a result by chance.

    • P-values range from 0 to 1, with a smaller value indicating stronger evidence against the null hypothesis.

    • A p-value of 0.05 or less is typically considered statistically significant.

    • P-values are commonly used in hypothesis testing to determine if a result is statistically significant or not.

  • Answered by AI
  • Q4. How are LSTMs better than RNNs? what makes them better? how does LSTMs do better what they do better than vanilla RNNs?
  • Ans. 

    LSTMs are better than RNNs due to their ability to handle long-term dependencies.

    • LSTMs have a memory cell that can store information for long periods of time.

    • They have gates that control the flow of information into and out of the cell.

    • This allows them to selectively remember or forget information.

    • Vanilla RNNs suffer from the vanishing gradient problem, which limits their ability to handle long-term dependencies.

    • LSTMs ...

  • Answered by AI
  • Q5. Does pooling in CNNs have any learning?
  • Ans. 

    Pooling in CNNs has learning but reduces spatial resolution.

    • Pooling helps in reducing overfitting by summarizing the features learned in a region.

    • Max pooling retains the strongest feature in a region while average pooling takes the average.

    • Pooling reduces the spatial resolution of the feature maps.

    • Pooling can also help in translation invariance.

    • However, too much pooling can lead to loss of important information.

  • Answered by AI
  • Q6. Why does optimisers matter? what's their purpose? what do they do in addition to weights-updation that the vanilla gradient and back-prop does?
  • Ans. 

    Optimizers are used to improve the efficiency and accuracy of the training process in machine learning models.

    • Optimizers help in finding the optimal set of weights for a given model by minimizing the loss function.

    • They use various techniques like momentum, learning rate decay, and adaptive learning rates to speed up the training process.

    • Optimizers also prevent the model from getting stuck in local minima and help in ge...

  • Answered by AI
  • Q7. What does KNN do during training?
  • Ans. 

    KNN during training stores all the data points and their corresponding labels to use for prediction.

    • KNN algorithm stores all the training data points and their corresponding labels.

    • It calculates the distance between the new data point and all the stored data points.

    • It selects the k-nearest neighbors based on the calculated distance.

    • It assigns the label of the majority of the k-nearest neighbors to the new data point.

  • Answered by AI
  • Q8. You have two different vectors with only small change in one of the dimensions. but, the predictions/output from the model is drastically different for each vector. can you explain why this can be the case...
  • Ans. 

    Small change in one dimension causing drastic difference in model output. Explanation and solution.

    • This is known as sensitivity to input

    • It can be caused by non-linearities in the model or overfitting

    • Regularization techniques can be used to reduce sensitivity

    • Cross-validation can help identify overfitting

    • Ensemble methods can help reduce sensitivity

    • It is generally a bad thing as it indicates instability in the model

  • Answered by AI
  • Q9. Slope vs gradient (again not in relation to machine learning, and in plain english)
  • Ans. 

    Slope and gradient are both measures of the steepness of a line, but slope is a ratio while gradient is a vector.

    • Slope is the ratio of the change in y to the change in x on a line.

    • Gradient is the rate of change of a function with respect to its variables.

    • Slope is a scalar value, while gradient is a vector.

    • Slope is used to describe the steepness of a line, while gradient is used to describe the direction and magnitude o...

  • Answered by AI
  • Q10. How are boosting and bagging algorithms different?
  • Ans. 

    Boosting and bagging are ensemble learning techniques used to improve model performance.

    • Bagging involves training multiple models on different subsets of the data and averaging their predictions.

    • Boosting involves training multiple models sequentially, with each model focusing on the errors of the previous model.

    • Bagging reduces variance and overfitting, while boosting reduces bias and underfitting.

    • Examples of bagging al...

  • Answered by AI
  • Q11. What is a logarithm? (in linear algebra) what is it's significance and what purpose does it serve?
  • Ans. 

    A logarithm is a mathematical function that measures the relationship between two quantities.

    • Logarithms are used to simplify complex calculations involving large numbers.

    • They are used in linear algebra to transform multiplicative relationships into additive ones.

    • Logarithms are also used in data analysis to transform skewed data into a more normal distribution.

    • Common logarithms use base 10, while natural logarithms use

  • Answered by AI
  • Q12. What are gradients? (not in relation to machine learning)
  • Ans. 

    Gradients are the changes in values of a function with respect to its variables.

    • Gradients are used in calculus to measure the rate of change of a function.

    • They are represented as vectors and indicate the direction of steepest ascent.

    • Gradients are used in optimization problems to find the minimum or maximum value of a function.

    • They are also used in physics to calculate the force acting on a particle.

    • Gradients can be cal

  • Answered by AI

Interview Preparation Tips

Interview preparation tips for other job seekers - be strong in fundamentals and be able to explain what and why of every project on your resume and all things things used in those projects.

Skills evaluated in this interview

Interview experience
1
Bad
Difficulty level
Easy
Process Duration
Less than 2 weeks
Result
Not Selected

I applied via Referral and was interviewed in Apr 2024. There was 1 interview round.

Round 1 - Technical 

(1 Question)

  • Q1. Time Series forecasting questions

Interview Preparation Tips

Interview preparation tips for other job seekers - They are happy with me send an intent to offer, but later declined as requirements changed (time waste)

I applied via LinkedIn and was interviewed in Sep 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 Resume tips
Round 2 - Home Assignment 

(5 Questions)

  • Q1. What is shebang in bash scripting
  • Ans. 

    Shebang is a special character sequence used in Unix-based systems to indicate the interpreter for a script file.

    • Shebang starts with #! and is followed by the path to the interpreter

    • It is used to specify the interpreter for a script file

    • It allows the script to be executed without explicitly invoking the interpreter

    • Example: #!/bin/bash specifies that the script should be run using the bash interpreter

  • Answered by AI
  • Q2. Explain vector projection
  • Ans. 

    Vector projection is the process of projecting a vector onto another vector.

    • It involves finding the component of one vector that lies along another vector.

    • The result is a scalar value that represents the length of the projection.

    • The projection can be calculated using the dot product of the two vectors.

    • The formula for vector projection is proj_u(v) = (u . v / ||u||^2) * u.

    • Vector projection is used in various fields such

  • Answered by AI
  • Q3. Who is a leader and qualities of leader.
  • Ans. 

    A leader is someone who guides and inspires others towards a common goal.

    • A leader possesses strong communication skills and can effectively convey their vision and goals to their team.

    • A leader is able to motivate and inspire their team members, encouraging them to perform at their best.

    • A leader is knowledgeable and experienced in their field, earning the respect and trust of their team.

    • A leader is able to make tough de...

  • Answered by AI
  • Q4. A week to spend on answering a question on Probability of collision of two objects.
  • Q5. How do you convert 3d object collision problem to 2d collision problem
  • Ans. 

    3D object collision problem can be converted to 2D by projecting the objects onto a 2D plane.

    • Project the 3D objects onto a 2D plane using a projection matrix.

    • Calculate the 2D coordinates of the projected objects.

    • Perform collision detection in 2D using standard algorithms.

    • Example: projecting a sphere onto a 2D plane results in a circle.

    • Example: projecting a cube onto a 2D plane results in a square.

  • Answered by AI

Interview Preparation Tips

Topics to prepare for Digantara Data Scientist interview:
  • Orbital Mechanics
Interview preparation tips for other job seekers - Watch out folks, this company ghosts candidates, each interview takes place after almost an entire month!

Skills evaluated in this interview

Interview experience
5
Excellent
Difficulty level
-
Process Duration
2-4 weeks
Result
Not Selected

I was interviewed in Sep 2023.

Round 1 - HR 

(2 Questions)

  • Q1. Why are you interested in smartsheet
  • Q2. Tell me about your ds background
Round 2 - Technical 

(1 Question)

  • Q1. Case interview question.
Interview experience
4
Good
Difficulty level
Moderate
Process Duration
2-4 weeks
Result
Selected Selected

I applied via Referral and was interviewed before Jun 2023. There was 1 interview round.

Round 1 - Technical 

(2 Questions)

  • Q1. Model evaluation methods to check model performance
  • Ans. 

    Various model evaluation methods are used to check the performance of a data science model.

    • Cross-validation: splitting data into multiple subsets for training and testing

    • Confusion matrix: evaluating classification models based on true positives, true negatives, false positives, and false negatives

    • ROC curve: plotting the true positive rate against the false positive rate

    • Precision, recall, and F1 score: metrics for evalu...

  • Answered by AI
  • Q2. Projects done so far with tech explanation
  • Ans. 

    I have worked on projects involving machine learning algorithms for predictive analytics and natural language processing.

    • Developed a predictive model using random forest algorithm to forecast customer churn in a telecom company.

    • Implemented sentiment analysis using natural language processing techniques to analyze customer reviews for a retail company.

    • Utilized deep learning techniques such as LSTM for time series foreca

  • Answered by AI

Skills evaluated in this interview

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

(1 Question)

  • Q1. Explain LLms and its working
  • Ans. 

    LLms stands for Locally Linear Mapping System, a method for dimensionality reduction.

    • LLms is a technique used for reducing the dimensionality of data while preserving the local structure.

    • It works by finding a low-dimensional representation of the data that maintains the local linear relationships between data points.

    • LLms is commonly used in machine learning and data visualization tasks.

    • An example of LLms is the Locally

  • Answered by AI
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MiQ Digital Interview FAQs

How many rounds are there in MiQ Digital Data Scientist interview?
MiQ Digital interview process usually has 1-2 rounds. The most common rounds in the MiQ Digital interview process are Aptitude Test and Coding Test.
How to prepare for MiQ Digital Data Scientist interview?
Go through your CV in detail and study all the technologies mentioned in your CV. Prepare at least two technologies or languages in depth if you are appearing for a technical interview at MiQ Digital. The most common topics and skills that interviewers at MiQ Digital expect are Data Science, Healthcare, Machine Learning, Python and Analytical.

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MiQ Digital Data Scientist Interview Process

based on 2 interviews

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MiQ Digital Data Scientist Salary
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₹12 L/yr - ₹21 L/yr
9% more than the average Data Scientist Salary in India
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2.9/5

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2.3

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3.2

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3.0

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