Question 11:
How do you select the right evaluation metric for a given machine learning problem?
How do you select the right evaluation metric for a given machine learning problem?
Question 12:
Can you walk me through a machine learning project youβve worked on? What challenges did you face, and how did you overcome them?
Can you walk me through a machine learning project youβve worked on? What challenges did you face, and how did you overcome them?
π4
Data Science Projects
Struggle of a data scientist
What's the most struggling part while learning data science as per your experience?
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Question 13:
How do you handle categorical variables in a dataset? What techniques do you use for encoding them?
How do you handle categorical variables in a dataset? What techniques do you use for encoding them?
π9
Question 14:
Explain the difference between a ROC curve and a Precision-Recall curve. When would you use one over the other?
Explain the difference between a ROC curve and a Precision-Recall curve. When would you use one over the other?
Question 15:
How do you deal with multicollinearity in regression models? What methods can be used to detect and address it?
How do you deal with multicollinearity in regression models? What methods can be used to detect and address it?
Question 16:
What is the difference between hard and soft clustering? Can you give an example of algorithms that use each approach?
What is the difference between hard and soft clustering? Can you give an example of algorithms that use each approach?
π2
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π1
Forwarded from Finance, Investing & Stock Marketing
At the age of 19, 20, 21+ you will start to realize that life ain't easy. your circle of friends will start to become smaller. you lose yourself, you become frustrated, lonely for no reason, you will develop trust issues, you cry silently at night and wake up in the morning like nothing happened. you think about giving up many times but in the end you find yourself fighting again because you realize that this is stage where you must be strong to fight your fears and possibilities that everything will leave you.
Drop β€οΈ if u felt this
Drop β€οΈ if u felt this
β€102π13π₯2π1
Which library do you use mostly for deep learning?
Anonymous Poll
60%
Tensorflow
16%
Keras
23%
Pytorch
2%
Add any other in comments
π6π1
You don't need to buy a GPU for machine learning work!
There are other alternatives. Here are some:
1. Google Colab
2. Kaggle
3. Deepnote
4. AWS SageMaker
5. GCP Notebooks
6. Azure Notebooks
7. Cocalc
8. Binder
9. Saturncloud
10. Datablore
11. IBM Notebooks
12. Ola kutrim
Spend your time focusing on your problem.πͺπͺ
There are other alternatives. Here are some:
1. Google Colab
2. Kaggle
3. Deepnote
4. AWS SageMaker
5. GCP Notebooks
6. Azure Notebooks
7. Cocalc
8. Binder
9. Saturncloud
10. Datablore
11. IBM Notebooks
12. Ola kutrim
Spend your time focusing on your problem.πͺπͺ
π27β€9
I have uploaded a lot of free resources on Linkedin as well
We're just 94 followers away from reaching 100k on LinkedIn! β€οΈ Join us and be part of this milestone!
We're just 94 followers away from reaching 100k on LinkedIn! β€οΈ Join us and be part of this milestone!
π5β€3π2
If you want to invest in the future, invest in:
β’ Machine Learning
β’ Water Technology
β’ Quantum Computing
β’ Internet of Things (IoT)
β’ Augmented Reality (AR)
β’ Quantum Information Science
β’ Agri-tech and Food Technology
β’ Next-Gen Telecommunications
β’ Autonomous Vehicles and Robotics
β’ Genomics and Personalized Medicine
β’ Advanced Materials and Manufacturing
What would you add?
β’ Machine Learning
β’ Water Technology
β’ Quantum Computing
β’ Internet of Things (IoT)
β’ Augmented Reality (AR)
β’ Quantum Information Science
β’ Agri-tech and Food Technology
β’ Next-Gen Telecommunications
β’ Autonomous Vehicles and Robotics
β’ Genomics and Personalized Medicine
β’ Advanced Materials and Manufacturing
What would you add?
π23