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ML_Internship Presentation_Infidata_2021.pptx

22 Mar 2023
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ML_Internship Presentation_Infidata_2021.pptx

  1. Internship: Final Presentation 1
  2. INTERNSHIP DOMAIN: MACHINE LEARNING Internship Work on “Your Project Name" c Student Name College Name Branch USN / Reg No Internship Duration 4 Weeks ( 1st September 2021to 30th September 2021) Company Internship Guide Your Guide Name , Designation 2
  3. Internship Tasks 3 1. About Company 2. Internship Task 3. Introduction on Project work / Roles 4. Software / Hardware Tools Details 5. Implementation Details 6. Skills Utilized 7. What I Learnt ? 8. Internship Outcomes 9. Project Demo / Screenshots 10. Conclusion
  4. About company InfiData Technologies An ISO 9001:2015 Certified IT Company, Accreditated by An International Accreditation Service (IAS). Head quartered in "silicon valley" of India Bengaluru, started in the year 2015. We are highly specialized in the design and development of websites, software application development,mobile app development,E-Commerce solutions and more. Our team of expert professionals works on the latest software tools and technologies to give the best and promising services to our customers. 4 OUR SERVICES Development | Training |Consulting Address: #1421, 1st Floor,16th B Cross, Sri Radha Building, Opp.To Dr. Agarwal Eye Hospital, Yelahanka New Town, Bengaluru-64 www.infidata.in | info@infidata.in
  5. Internship Tasks 5 1. Working with python libraries 2. Working with ML Algorithms 3. Activities on Model Building 4. Project Development with datasets 5
  6. Introduction to Project Work / Roles • Loan Approval Prediction. In this article, we are going to solve the Loan Approval Prediction. • the loan will be approved or not. This is a classification problem in which we need to classify whether the loan will be approved or not. Predicting modeling modeling Classification refers to a predictive modeling problem where a class label is predicted for a given example of input data. personal information Applicants provides the system about their personal information and according to their information system gives his status of availability of loan. • A time limit can be set for the applicant to check whether his/her loan can be sanctioned or not. • Loan Prediction is very helpful for employee of banks as well as for the applicant also. 6
  7. Software / Hardware Tools Details Software: • Python 3.6/3.7 • Anaconda Navigator • Jupyter notebook Hardware : • Minimum PC Requirements 7
  8. Implementation Details 8 8 • We have used multiple algorithms for Loan Prediction like Decision Tree, K-Nearest Neighbor(KNN) Algorithm, Logistic Regression, ... • A decision tree is a non-parametric supervised learning algorithm, which is utilized for both classification and regression tasks • Machine learning is a field of computer science that involves the learning of pattern identification and computational learning theory in artificial intelligence • Loan Dataset is very useful in our system for prediction of more accurate result. Using the loan Dataset the system will automatically predict which costumer’s loan it should approve and which to reject. • System will accept loan application form as an input. • Typically , Here the system separate a dataset into a training set and testing set ,most of the data use for training ,and a smaller portions of data is use for testing. after a system has been processed by using the training set, it makes the prediction against the test set • Data cleaning and processing:In Data cleaning the system detect and correct corrupt or inaccurate records from database and refers to identifying incomplete, incorrect, inaccurate or irrelevant parts of the data and then replacing , modifying or detecting the dirty or coarse data. I
  9. Skills Utilized 1. Software Engineering Skills 2. Algorithms and Model Building 3. Administrative and collaboration tools using Github. 9
  10. Skills Utilized 10
  11. What I learnt ? 11 Technical skills: ● Python ● ML Algorithms ● Working with Libraries and datasets ● Frameworks Soft skills: ● Teamwork in an international working environment ● Communication skills ● design Working culture Management skills: ● project management, ● time management ● and more
  12. Internship Outcomes ● Now I am able to design applications ● Working with SDLC Approach ● Growth : Critical Thinking and analysis ● Lead the team andprojects ● (Add if any) 12
  13. Project Demo / Screenshots
  14. Conclusion This internship has been an excellent and rewarding experience. It was a great opportunity to improve personal and professional skills. These valuable skills have boosted my professional skills to a higher level and prepare me for futurecareer. 14
  15. Thank You 15
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