Arya.ai Deep Learning Engineer interview questions
based on 1 rating - Updated 8 Aug 2022
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Arya.ai interviews FAQs
Candidates applying for Deep Learning Engineer roles take an average of 14 days to get hired, when considering 1 user submitted interviews for this role. To compare, the hiring process at Arya.ai overall takes an average of 26 days.
Common stages of the interview process at Arya.ai as a Deep Learning Engineer according to 1 Glassdoor interviews include:
One on one interview: 50%
Skills test: 50%
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I applied online. The process took 2 weeks. I interviewed at Arya.ai
Interview
The interviewer asks questions about the projects done. They focus more about the methods used for data transformation and why was a particular algorithm or method used. It was a pretty boring interview. The company could have send an online assessment in the third round as well. If they wanted to ask me these kind of dumb headed online questions from portals.
Arya.AI deep learning rounds-
1. Online assessment (Beginner level)
2. Zoom call
3. HR round
3. Manager round
4. Negotiation email
5. Offer slip
6. Decline the offer and join better company for mental peace and career growth
Interview questions [1]
Question 1
1. Why did you use tree based algorithms for financial prediction modelling?
2. What are some methods used for categorical feature engineering?
3. How is big data modelling done? What does your dataset look like?
4. How to transform textual big data into training data ? { Explain NLP terminologies]
5. Can we replace precision or accuracy instead of Cost function while training deep learning models?
6. If data is imbalanced, then what are some methods to make data balanced before model training?
7. Why is PCA used for dimensionality reduction when we can undersample the data? If we are using PCA in small datasets, to visualize linearity and correlation or reduce dimensions. Then would just correlation function and manual feature engineering be good?
8. What are some methods to balance the data if model is underfitting?
9. What are features and attributes in your dataset? Did you use classification or regression? What kind of statistical feature engineering used?
10. How does your final prediction look like? How did you engineer your target variable in live streaming big dataset?