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      Colloquio per Data Scientist

      8 mag 2025
      Candidato anonimo a colloquio
      Bengaluru

      Altre recensioni di colloqui per Data Scientist presso BizViz Technologies

      Colloquio per Data Scientist

      25 ago 2024
      Dipendente anonimo
      Hyderabad
      Offerta accettata
      Nessuna offerta
      Esperienza negativa
      Colloquio nella media

      Candidatura

      Ho sostenuto un colloquio presso BizViz Technologies (Bengaluru)

      Colloquio

      Stage 1: HR/Recruiter Screening Call (15–30 minutes) Objective: Assess communication skills, motivation, and culture fit. Questions: Why are you interested in this role? Tell us about a recent data project you worked on. What are your salary expectations and notice period? Stage 2: Technical Assessment (Take-Home or Online Test) Objective: Evaluate coding ability, data wrangling, and problem-solving skills. Format: Could include a case study or dataset analysis with deliverables (code, notebook, and brief report). Typical Tasks: Data cleaning and EDA. Feature engineering. Model building (e.g., regression, classification). Result interpretation and communication. Stage 3: Technical Interview ( 45 minutes) Objective: Deep dive into technical knowledge and approach. Topics: Python, SQL queries, Pandas, NumPy. Machine learning algorithms and model evaluation. Probability, statistics, and hypothesis testing. Business case discussion or live coding. Sometimes includes a whiteboard/diagramming session. Stage 4: Case Study or Business Problem Discussion Objective: Assess analytical thinking and ability to connect technical work to business outcomes. Example Format: Present a problem (e.g., churn prediction or sales forecasting). Ask candidate to explain how they would approach the solution, what data they would need, potential pitfalls, etc. Stage 5: Final Interview / Cultural Fit Objective: Gauge alignment with company values and team dynamics. Interviewers: Team lead, manager Topics: Past experiences and team collaboration. Ethical considerations in data use. Career aspirations and long-term goals.

      Domande di colloquio [1]

      Domanda 1

      How do you handle missing data in a dataset? Explain the difference between apply(), map(), and applymap() in Pandas. What is the difference between INNER JOIN, LEFT JOIN, and FULL OUTER JOIN? How do you find duplicates in a table? How do you interpret a p-value? How do you prevent overfitting in a machine learning model? Explain precision, recall, and F1-score. When would you use a decision tree over logistic regression? How would you measure the success of a recommendation system? Imagine you're given messy, real-world data with missing values and outliers. Walk me through how you'd clean and prepare the data.
      Rispondi alla domanda
      Esperienza positiva
      Colloquio difficile

      Candidatura

      Ho presentato la mia candidatura tramite segnalazione di un dipendente. La procedura ha richiesto 4 settimane. Ho sostenuto un colloquio presso BizViz Technologies (Hyderabad) nel mese di mar 2021

      Colloquio

      Solve a data science problem in 3 days. Share the solution with the company. If the solution is correct then 2 rounds of interview. One round would be technical and the subsequent round would be HR round.

      Domande di colloquio [1]

      Domanda 1

      About weights and biases in Neural networks.
      Rispondi alla domanda