The interview process consisted of multiple rounds. First, there was an online assessment including aptitude, logical reasoning, and coding questions. Candidates who cleared the assessment were shortlisted for the technical interview, where questions were asked about programming, projects, and basic computer science concepts. Finally, there was an HR round focusing on communication skills, career goals, and willingness to learn.
First round they will conduct exam we need to qualify .Then they conducted interview asked about the introduction and basic questions like how you know about our company salary expectations
Interview questions [1]
Question 1
Introduction about me , experience and salary expectations
I applied through a staffing agency. I interviewed at Wipro (Bengaluru) in Feb 2026
Interview
First round will be proctored interview with AI assistant based on your resume, experience, projects, challenges.
Second round will be face to face technical on Python and Data Science questions. Then final manager round.
Interview questions [1]
Question 1
Python:
Sum of Diagonals of a Matrix
How to Evaluate LLM or RAG
Different Evaluation metrics
Types of RAG
how to evaluate LLM model output
Difference between Feedforward network and ANN
Difference between Bagging and boosting
Working of Xgboost Adaboost Gradient Boost
Difference between various Boosting models
Types of Embeddings and mathematics
What is Encoder in transformer
Difference between Self Attention and Masked Attention
Working of LSTM, RNN
Latency of RAG system
How to handle Hallucinations in Gen AI
Different ways to do so
What if we Normalise at Layer instead of Batch Normalisation
Assumptions of Linear Regression and how to Handle them ,
How to check them if passed or not
Homoscedasticity vs Heteroscadasticity
What to do if not passed
What to do on the Data side and Algorithm side
Different Methods and Mathematics of Embeddings
Guardrails for LLM
How they work
How to create Guardrails
Different tools for Guardrails
How to train them
Types of RAG, Attention mechanisms, Guardrails, Embeddings, Retrieval Methods
How to get relevant data
How to do Searching from Embeddings
Classical ML, Maths behind ML algo, Behaviour of ML algos, Data Preprocessing, Stats
Different ways of Handling Hallucinations
How to prevent from passing sensitive information to LLM