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Unit Test Sample Paper| MCA Sample Paper| Sample papers| FYMCA | Semester 2 | AIML| IOT | IS | Maths 2| DMBA | 2021 - 2022

 Hello and welcome to a new post, 




In this post you are going to find out sample papers of unit test, semester 2 of First year MCA (2 years choice based course). There are five different subjects in semester 2 of first year of MCA, The subjects are:-  

  1. Artificial Intelligence and Machine Learning
  2. Internet of things
  3. Information security
  4. Mathematical foundation for computer science -2 
  5. Digital marketing and Business analysis  
Unit test is of total 20 marks and time period is 1 hour, In this 1 hour you have to write three answers where Question contain 2 question in which you have to attend only 1 and question contain 20 marks and in Question 2 you have to write the answers of 2 question from given 4 or 5 questions and each question contain 5 marks. 

The same pattern follow for all the 5 subjects, you may see little changes or some ups and down but pattern is same across all the subjects. 

Below you will find the link to download the pdf files of those sample papers. 


Click here to download sample papers  

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