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CRISP-ML(Q) - Business Understanding and Data Understanding

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4:03:03

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  • 1. Introduction about Tutor.mp4
    03:14
  • 2. Agenda and Stages of Analytics.mp4
    01:02
  • 3. What is Diagnoistic Analytics .mp4
    01:21
  • 4. What is Predicative Analytics .mp4
    01:57
  • 5. What is Prescriptive Analytics .mp4
    11:41
  • 6. What is CRISP-ML(Q) .mp4
    03:08
  • 7. Quiz Questions.html
  • 1. Business Understanding - Define the Scope of Application.mp4
    18:44
  • 2. Business Understanding - Define Success Criteria.mp4
    08:13
  • 3. Business Understanding - Use Cases.mp4
    09:59
  • 4. Quiz Question.html
  • 1. Agenda Data Understanding.mp4
    00:49
  • 2. Introduction to Data Understanding.mp4
    06:18
  • 3. Data Types - Continuous Data (vs) Discrete Data.mp4
    11:18
  • 4. Categorical Data Vs Count Data.mp4
    06:45
  • 5. Practical Data Understanding using Realtime Examples.mp4
    11:15
  • 6. Scales of Measurement.mp4
    03:34
  • 7. Quantitative (vs) Qualitative.mp4
    05:04
  • 8. Structured Vs Unstructured Data.mp4
    13:04
  • 9. Quiz.html
  • 10. Big Data Vs Not Big Data.mp4
    09:44
  • 11. Cross Sectional Vs Time Panel Vs PanelLongitudinal Data.mp4
    07:01
  • 12. Balanced Vs Imbalanced Vs Rare Events.mp4
    15:36
  • 13. Batch Data(Offline) Vs Live Streaming Data (Online).mp4
    17:39
  • 1. What is Data Collection.mp4
    04:12
  • 2. Understanding Secondary Datasources.mp4
    13:31
  • 3. Understanding Primary Datasources.mp4
    22:15
  • 4. Understanding Data Collection Using Survey.mp4
    06:46
  • 5. Understanding Data Collection Using DoE.mp4
    07:15
  • 6. Understanding Possible Error in Data Collection Stage.mp4
    16:21
  • 7. Understanding Bias & Fairness.mp4
    05:17
  • Description


    Data Science - Business Understanding and Data Understanding

    What You'll Learn?


    • Understanding project management methodology to handle data related projects.
    • Understand business problem definition.
    • Understand data types as well as data collection mechanisms.
    • Understand exploratory Data Analytics (EDA) / Descriptive statistics as well
    • Understand the various Data cleaning / Pre-processing tasks Using Python.

    Who is this for?


  • Beginners, Intermediate as well as advanced leaners.
  • Freshers who are new of data science and want to embark into the field of data science.
  • Working professionals who are working in different industries.
  • Lectures, Professors & Teachers whose primary role is to teach students on data related concepts.
  • What You Need to Know?


  • No programming and no statistics knowledge required.
  • Everything will be taught here from the very begining.
  • Basic computer Knowledge and primary school Mathematics knowledge is sufficient.
  • More details


    Description

    This course will help you understand the basics of Data Science and EDA using Python and we shall also dive deep into the Project Management Methodology, CRISP-ML(Q). Cross-Industry Standard Process for Machine Learning with Quality Assurance is abbreviated as CRISP-ML(Q). Data Science is omnipresent in every sector. The purpose of Data Science is to find trends and patterns with the data that is available through various techniques. Data Scientists are also responsible for drawing insights after analyzing data. Data Science is a multidisciplinary field that involves mathematics, statistics, computer science, Python, machine learning, etc. Data Scientists need to be adept in these topics. This course will provide you with an understanding of all the aforementioned topics.

    A detailed explanation of the 6 stages of CRISP-ML(Q) will be provided. These 6 stages are as follows:

    1. Business and Data Understanding

    2. Data Preparation

    3. Model Building

    4. Evaluation

    5. Model Deployment

    6. Monitoring & Maintenance

    The importance of Business objectives and constraints, Business success criteria, Economic success criteria, and Project charter will be thoroughly understood. Elaborate descriptions of various data types - continuous, discrete, qualitative, quantitative, structured, semi-structured, unstructured, big, and non-big data, cross-sectional, time series and panel data, balanced and unbalanced data, and finally, offline and live streaming data. Various aspects of data collection will be looked into. Primary, and secondary, data version control, description, requirements, and verification will be analyzed.

    Data Preparation involving data cleansing, EDA using Python or descriptive statistics, and feature engineering will be elaborately explained. Data cleansing involves numerous methods like typecasting, handling duplicates, outlier treatment, zero & near zero variance, missing values, discretization, dummy variables, transformation, standardization, and string manipulation. The realm of EDA using Python will be explored, This would include understanding measures of central tendency (mean, median, and mode), measures of dispersion (variance, standard deviation, and range), skewness, and kurtosis which are also termed first, second, third and fourth-moment business decisions. More about bar plots, Q-Q plots, box plots, histograms, scatter plots, etc., will be looked into in EDA using Python. Feature engineering, the last part of data cleansing, will also be given enough coverage.

    Further, the model building also known as data mining or machine learning will also be thoroughly talked about. Model building involves supervised learning, unsupervised learning, and, forecasting which will be explored. Several model-building techniques like Simple Linear regression, Multilinear regression, Logistic regression, Decision-Tree, Naive Bayes, etc.

    The last few steps of CRISP-ML(Q) are Evaluation, Model Deployment, and Monitoring & Maintenance.

    The learning journey will include CRISP-ML(Q) using Python & Data Science and EDA using Python. Having a thorough understanding of these topics will enable you to build a career in the field of data science.

    Who this course is for:

    • Beginners, Intermediate as well as advanced leaners.
    • Freshers who are new of data science and want to embark into the field of data science.
    • Working professionals who are working in different industries.
    • Lectures, Professors & Teachers whose primary role is to teach students on data related concepts.

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    Instructor's Courses
    360DigiTMG was established in 2013 as the training arm of Innodatatics Inc., USA, an IT services firm that creates innovative solutions for fundamental business issues. 360DigiTMG is a prominent training school recognized by CIO Review as one of the "20 Most Promising Data Analytics Solution Providers - 2018." The school is a Skim Bantuan Latihan (SBL) scheme-approved institution by the Human Resources Development Fund (HRDF) of Malaysia's Ministry of Human Resources.360DigiTMG provides courses in big data analytics, machine learning, data science, artificial intelligence, deep learning, internet of things, robotic process automation, Amazon Web Services (cloud computing), data visualization (business intelligence), Tableau, digital marketing, risk management, quality management, agile methodology, project management, and many others.360DigiTMG adds a holistic, global market view to its programme with headquarters in the United States and influence in India, Malaysia, East Asia, Australia, the Middle East, the United Kingdom, and the Netherlands.
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 28
    • duration 4:03:03
    • English subtitles has
    • Release Date 2023/07/29