What is overfitting and how to avoid or detect it? What is backpropagation?
Machine Learning Engineer Intern Interview Questions
8,207 machine learning engineer intern interview questions shared by candidates
Asked: "Can you please describe a subject or concept you've recently explored in one of your courses? What aspects of it have you found particularly engaging or challenging? " "Talk to us about a time when you had a busy schedule with competing obligations. How did you stay organized with your tasks and prioritize your workload." "We've taken a look at your resume, but we’d love to hear it in your own words. Please walk us through your background—your experiences, the skills you're proud of, and how you have gotten involved on campus and in your community." "Why SAS why this internship" Final round asked: "Tell us about your favorite project, feel free to nerd out about it" "What technologies are you excited to learn at this internship" "Tell us about a time when you had discourse between people around you and you stepped in to stop in" "What recent papers/research in the field are you most excited about"
Perguntas sobre soluções para problemas de machine learning.
Basic debugging, SQL queries, inheritance.
Exercise The attached CSV file lists the customer, date, and dollar value of orders placed at a store in 2017. The actual gender and predicted gender of each customer is also provided. Complete each of the following activities in a jupyter notebook using Python. Put your name and email at the top of the notebook and include your name in the notebook file name. Send back only your notebook file and please do not zip it. Please do not exclude $0 orders. A) Assemble a dataframe with one row per customer and the following columns: * customer_id * gender * most_recent_order_date * order_count (number of orders placed by this customer) Sort the dataframe by customer_id ascending and display the first 10 rows. B) Plot the count of orders per week for the store. C) Compute the mean order value for gender 0 and for gender 1. Do you think the difference is significant? Justify your choice of method. D) Generate a confusion matrix for the gender predictions of customers in this dataset. You can assume that there is only one gender prediction for each customer. What does the confusion matrix tell you about the quality of the predictions? E) Describe one of your favorite tools or techniques and give a small example of how it's helped you solve a problem. Limit your answer to one paragraph, and please be specific. For each question, state any considerations or assumptions you made.
Bayes theorem question Sorting Algorithms Simulate dice rolls
Real time and near real time machine learning pipelines architeture and components.
What are some challenges you faced in your previous role
What's the biggest challenge of your XX project?
Why do you want to work at SocialCops?
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