cool-responsive-portfolio-main.zip
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Source Code of PORTFOLIO WEBSITE β€οΈπ
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βΎHANDWRITTEN NOTES βοΈ βΎοΈ
πΊDATA STRUCTURE SHORT NOTES
πΊDATA STRUCTURE
INTERVIEW SERIES πΉ(PART - 1)
πΊDATA STRUCTURE
INTERVIEW SERIES πΉ(PART - 2)
πΊDATA STRUCTURE
INTERVIEW SERIES πΉ(PART - 3)
πΊDBMS (DATABASE MANAGEMENT SYSTEM)NOTES
πΊC PROGRAMMING SHORT NOTES
πΊDATA STRUCTURE SHORT NOTES
πΊDATA STRUCTURE
INTERVIEW SERIES πΉ(PART - 1)
πΊDATA STRUCTURE
INTERVIEW SERIES πΉ(PART - 2)
πΊDATA STRUCTURE
INTERVIEW SERIES πΉ(PART - 3)
πΊDBMS (DATABASE MANAGEMENT SYSTEM)NOTES
πΊC PROGRAMMING SHORT NOTES
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How to enter into Data Science
πStart with the basics: Learn programming languages like Python and R to master data analysis and machine learning techniques. Familiarize yourself with tools such as TensorFlow, sci-kit-learn, and Tableau to build a strong foundation.
πChoose your target field: From healthcare to finance, marketing, and more, data scientists play a pivotal role in extracting valuable insights from data. You should choose which field you want to become a data scientist in and start learning more about it.
πBuild a portfolio: Start building small projects and add them to your portfolio. This will help you build credibility and showcase your skills.
πStart with the basics: Learn programming languages like Python and R to master data analysis and machine learning techniques. Familiarize yourself with tools such as TensorFlow, sci-kit-learn, and Tableau to build a strong foundation.
πChoose your target field: From healthcare to finance, marketing, and more, data scientists play a pivotal role in extracting valuable insights from data. You should choose which field you want to become a data scientist in and start learning more about it.
πBuild a portfolio: Start building small projects and add them to your portfolio. This will help you build credibility and showcase your skills.
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Most Asked Interview Questions with Answers π»β
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Three different learning styles in machine learning algorithms:
1. Supervised Learning
Input data is called training data and has a known label or result such as spam/not-spam or a stock price at a time.
A model is prepared through a training process in which it is required to make predictions and is corrected when those predictions are wrong. The training process continues until the model achieves a desired level of accuracy on the training data.
Example problems are classification and regression.
Example algorithms include: Logistic Regression and the Back Propagation Neural Network.
2. Unsupervised Learning
Input data is not labeled and does not have a known result.
A model is prepared by deducing structures present in the input data. This may be to extract general rules. It may be through a mathematical process to systematically reduce redundancy, or it may be to organize data by similarity.
Example problems are clustering, dimensionality reduction and association rule learning.
Example algorithms include: the Apriori algorithm and K-Means.
3. Semi-Supervised Learning
Input data is a mixture of labeled and unlabelled examples.
There is a desired prediction problem but the model must learn the structures to organize the data as well as make predictions.
Example problems are classification and regression.
Example algorithms are extensions to other flexible methods that make assumptions about how to model the unlabeled data.
1. Supervised Learning
Input data is called training data and has a known label or result such as spam/not-spam or a stock price at a time.
A model is prepared through a training process in which it is required to make predictions and is corrected when those predictions are wrong. The training process continues until the model achieves a desired level of accuracy on the training data.
Example problems are classification and regression.
Example algorithms include: Logistic Regression and the Back Propagation Neural Network.
2. Unsupervised Learning
Input data is not labeled and does not have a known result.
A model is prepared by deducing structures present in the input data. This may be to extract general rules. It may be through a mathematical process to systematically reduce redundancy, or it may be to organize data by similarity.
Example problems are clustering, dimensionality reduction and association rule learning.
Example algorithms include: the Apriori algorithm and K-Means.
3. Semi-Supervised Learning
Input data is a mixture of labeled and unlabelled examples.
There is a desired prediction problem but the model must learn the structures to organize the data as well as make predictions.
Example problems are classification and regression.
Example algorithms are extensions to other flexible methods that make assumptions about how to model the unlabeled data.
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