Applied Machine Learning| 3 Real-World Projects using Python
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“Data Science and Machine Learning are one of the hottest tech fields to be in right now! The field is exploding with opportunities and career prospects. It is widely used in several sectors nowadays such as banking, healthcare technology etc..
As there are tonnes of courses on Machine Learning already available over Internet , this is not One of them..
The purpose of this course is to provide you with knowledge of key aspects of data science applications in business in a practical, easy and fun way. The course provides students with practical hands-on experience using real-world datasets.
1.Task #1 @Predict Ratings of Application : Develop an Machine Learning model to predict Ratings of Play-store applications.
2.Task #2 @Predict Rent of an apartment : Predict the Rent of an apartment using machine learning Regression algorithms..
3.Task #3 @Predict Sales of a Super-market: Develop an Machine Learning model to predict sales of a Super-Market..
Why should you take this Course?
- It explains Projects on real Data and real-world Problems. No toy data! This is the simplest & best way to become a Data Scientist/AI Engineer/ ML Engineer
- It shows and explains the full real-world Data. Starting with importing messy data, cleaning data, merging and concatenating data, grouping and aggregating data, Exploratory Data Analysis through to preparing and processing data for Statistics, Machine Learning , NLP & Time Series and Data Presentation.
- It gives you plenty of opportunities to practice and code on your own. Learning by doing.
- In real-world projects, coding and the business side of things are equally important. This is probably the only course that teaches both: in-depth Python Coding and Big-Picture Thinking like How you can come up with a conclusion
- Guaranteed Satisfaction: Otherwise, get your money back with 30-Days-Money-Back-Guarantee.
Who this course is for:
- Data Scientists who want to apply their knowledge on Real World Case Studies
- Data Analyst who want to get more Practical Assignments..
- Machine Learning Enthusiasts who look to add more projects to their Portfolio
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5Introduction to Problem StatementVideo lesson
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6How to access Datasets & ResourcesText lesson
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7Understand the big Idea- how to collect data !Video lesson
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8Perform descriptive analysis on Data !Video lesson
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9Perform Exploratory Data Analysis to understand PatternsVideo lesson
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10How to Automate your code !Video lesson
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11Automate your data Visualisation code ..Video lesson
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12Understand Hidden patterns from data..Video lesson
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13Analyse whether Google is Bias or not !Video lesson
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14Analysing distrbution of RatingsVideo lesson
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15Perform Data Preparation for Analysing App CategoryVideo lesson
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16Analysing Android version of dataVideo lesson
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17Lets Perform Data Cleaning..Video lesson
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18Lets Clean & ready our Rating & Installs featureVideo lesson
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19Perform Data-Preparation on Size Feature..Video lesson
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20Perform Feature Selection algorithms to select important featuresVideo lesson
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21How Feature selection works..Video lesson
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22What are outliers & how to find it..Video lesson
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23Outliers Detection using IQR..Video lesson
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24Outlier Detection in Install featureVideo lesson
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25How to Impute OutliersVideo lesson
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26what is Data TransformationVideo lesson
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27What are Missing Values & how to fill Missing values ?Video lesson
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28What is Data Discretization & how to apply it in real-world ?Video lesson
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29What is Mean Encoding & how to apply it in real world?Video lesson
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30What is Target Guided Mean Encoding ?Video lesson
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31What is Label Encoding & how to apply it in real-worldVideo lesson
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32Datasets & ResourcesText lesson
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33How to load data & fill missing values in data !Video lesson
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34Fix Missing values of Data !Video lesson
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35How to fill Missing values using Random Value ImputationVideo lesson
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36Perform Wordcloud AnalysisVideo lesson
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37Lets Clean Description FeatureVideo lesson
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38Lets Prepare Description Feature using nltk !Video lesson
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39Perform Unigram , bigram & trigram analysis..Video lesson
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40Perform GeoSpatial AnalysisVideo lesson
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41Obtaining label distribution of dataVideo lesson
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42how to visualize outliers..Video lesson
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43Imputing the outliers..Video lesson
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44Perform In-depth analysis on dataVideo lesson
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45Extract important features using Co-relation..Video lesson
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46Most suitable Feature encoding technique In real-world ?Video lesson
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47Lets pre-process our data for Feature Encoding..Video lesson
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48Automate your Data Preparation stuffs !Video lesson
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49What is Frequency Encoding & how to apply it in Real-World ?Video lesson
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50Lets Build a Decision Tree ModelVideo lesson
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51Playing with Multiple Algorithms..Video lesson
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52Lets Hypertune our model..Video lesson
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