search optimization, functional programming, NLP
Data Scientist Senior Interview Questions
3,382 data scientist senior interview questions shared by candidates
Can you explain your projects in detail? Technology used?
Descrever os projetos ao qual participei.
Metric power analysis and bootstrapping
Bias Variance tradeoff Random forest Hyper-parameter tuning How to build Random forest pandas based python queries Linear regression assumptions Precision Vs Recall Cloud related Pandas group-by, average, sum queries entropy, info gain Random Search CV Bagging Boosting
Stats: 1. Fundamental laws 1.1. Explain Central Limit Theorem (CLT)? 1.2. Explain Law of Large Number (LLN)? 1.3. What are their differences? How are they beneficial? 2. Statistical Tests 2.1. Tell me the differences/conditions between T-Test vs Z-Test are? When is each of them used? 2.2. When is t-distribution used as opposed to normal distribution? 2.3. How many data points are considered good enough to use each of them? 2.4. How does each distribution look like? (skewness and kurtosis viewpoint) 2.5. Explain p-value in a layman language with a simple example. 2.6. If we run the t-test multiple times, what will happen to the strength of the statistical test? (Bonferroni Correction) 2.7. When is the Chi-Squared test used? How does the distribution look like?
ML: 1. Linear Regression: 1.1. Explain L1 vs L2? 1.2. How does each affect the coefficients? 1.3. Explain assumptions of linear regression. 1.4. How is each assumption tested? 1.5. If each assumption is violated, what are their remedies? 2. PCA 2.1. Explain PCA. 2.2. Walk me through the algorithm step by step. 2.3. How is the formula constructed? 2.4. What is the relationship between PC1 and PC2? 2.5. How is orthogonality preserved in the mapped feature space? 2.6. How do you run the feature importance in PC-mapped feature space? 3. ML Algorithm 3.1. Explain the ensembling method. 3.2. Explain the differences between XGBoost and Random Forest? 3.3. When is each used? Pros and cons? 3.4. Which one is computationally expensive and why? 3.5. What are the feature selection methodologies? 3.6. Imagine we have a multivariate KPI that most of the features are correlated. Now we are noticing a spike in the KPI, how do you determine which feature has the highest effect on it? (Feature importance analysis for Temporal shock)
what my main Motivation to work there was
Typical behaviour skill questions. Business case : graph with price sensitivity against customer expenditures.. talk how to improve Second was a time series forecasting chart
HR questions : Salary expectations Question on Data science experience. Technical Questions: From resume and then the chain of questions to check your foundation skills as well
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