Round 1: Breadth Assessment This round evaluated the width of my knowledge across the Data Science spectrum. The structure was: Personal introduction Project walkthrough (one detailed project explanation) Technical questions spanning: Machine Learning: Data preprocessing and model evaluation Deep Learning: Optimizers and Gradient Descent Generative AI: RAG (Retrieval-Augmented Generation) and LLMs Coding problems: Printing series patterns and list/dictionary comprehension Difficulty level: Easy to moderate. Round 2: Deep Dive Technical Round This round went significantly deeper into specialized topics: Sentence transformers and their applications Benchmarking and evaluation methodologies RAG architecture and implementation Evaluation frameworks (RAGAs, DSPy) Transformer architecture fundamentals Advanced concepts: Training different word embeddings, contextual awareness, positional encoding
Sr Data Scientist Interview Questions
3,509 sr data scientist interview questions shared by candidates
Bayes Rule and SVM
Tell us how you would tackle problem X.
1. Explain entropy and examples. 2. How will you design a system of digital art price prediction.
1.Basic of statatistics 2.Basic of ML 3.Basic of EDA
Explain current project in detail
Usual Machine Learning conceptual questions
Drawbacks and advantages of decision trees
Had an interview schedule but the interviewer never showed up. Didn't respond to emails either, ghosted
My background research.
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