Ai/Data Scientist – Python/R/Big Data Master Class 2023
Ai/Data Scientist – Python/R/Big Data Master Class 2023, available at $59.99, has an average rating of 4.35, with 217 lectures, based on 29 reviews, and has 238 subscribers.
You will learn about Analytics For Beginners: Learn the interdisciplinary concepts of analytics with the help of success stories. Analytics For Beginners: Become familiar of other companies using analytics as a core part of success stories. Analytics For Beginners: Understand why and how analytics is so important in every profession. Analytics For Beginners: Do data exploration and manipulation like transpose, remove duplicates, pivot table, manipulate data with time & Filter using Excel Advance data manipulation like Merge and Unmerge, cells Text To Column Function, Vlookup, Data Scaling, Consolidation, Conditional Operator If-Else and more. Analytics For Beginners: Even perform Ai in excel using built-in predictive analytics. Data Science: like Binomial, Poisson, Hyper Geometric, Negative Binomial, Geometric discrete probability distributions Normal distribution and T-dist Data Science: Perform hypothesis testing with Normal Distribution and T-distribution using One-Tail and Two-Tail Directional hypothesis. Data Science: Chi-square Test-Of-Association, Goodness-Of-Fit and more. Follow the program syllabus in our course curriculum to know more in detail. Perform Anova for multiple levels with and without replication and for count and categorical data using Chi-square Test-Of-Association & Goodness-Of-Fit Big Data Analytics: The architecture of Hadoop, Map Reduce, YARN, Hadoop Distribution File System, Name node check-pointing, Hadoop Rack Awareness in detail. Master and perform big data analysis with on-demand big data tools like PIG, HIVE, Impala and automate to stream live data & workflow with Flume and Scoop. Big Data Analytics: Control parallel processing and create User Define Functions to automate the scripting language without writing a line of code. Master and perform External Table to share the data among different applications and even partition the table for faster processing. R-programming: Learn and master how to manipulate data, impute missing values and visualization using base graphics, ggplot & geo-spatial plots. R-programming: Learn and perform exploratory analysis and work with different file type & data sources. Machine Leaning: Master how to create supervised models like linear and logistic regression, support vector machine and more to solve real world problems. Also master to create unsupervised models like k-means and hierarchical clustering, decision trees, random forest to automate solutions for real world problems. Learn and implement the concepts of Feature Engineering, Principle Component Analysis, Times and more. NLP: Learn and master data transformation, create text corpus, remove spare terms with Tm package and manipulate text data using regular expression. Sentiment analysis to negative or the positive response and topic modeling using LDA to identify the topics of 1000 documents without being going through each Understand the connection of each words using Network analysis or cluster the words used to solve problems like search keywords used to arrive on the website Bonus: Machine Learning, Deep Learning with Python – Premium Self Learning Resource Pack Free Full Guide to Linear Regression, Polynomial Regression, Support Vector Regression, Decision Trees Regression, Random Forest Regression and more. Full guide to knn, logistic, support vector machine, kernel svm, naive bayes, decision tree classification, random forest classification. Let’s Develop Artificial Neural Network in 30 lines of code. Simple yet Complete Guide on how to apply ANN for classification Let’s Develop Artificial Neural Network in 30 lines of code — II. Part — II Complete Guide to apply ANN for Regression with K-Fold Validation for accuracy. Reinforcement Learning in 31 Steps. using Upper Confidence Bound(UCB) & Thompson Sampling for Social Media Marketing Campaign Click Through Rate Optimization What is PCA and How can we apply Real Quick and Easy Way? Learn how to apply Principal Component Analysis (PCA) using python What is Supervised Linear Discriminant Analysis(LDA) ~ PCA. Let’s understand and perform supervised dimensionality reduction What is Kernel PCA? using R & Python. 4 easy line of codes to apply the most advanced PCA for non-linearly separable data. Association Rule Learning using Apriori and Eclat (R Studio) to predict Shopping Behavior. Multi-Layer Perception Time Series Apply State of the Art Deep Learning MLP models for predicting sequence of numbers/time series data. LSTMs for regression. Quick and easy guide to solve regression problems with Deep Learnings’ different types of LSTMs Uni-Variate LSTM Time Series Forecasting. Apply State Of The Art Deep Learning Time Series Forecasting with the help of this template. Multi-variate LSTM Forecasting. Apply state of the art deep learning time series forecasting using multiple inputs together to give a powerful prediction. Multi-Step LSTM Time Series Forecasting. Apply Advanced Deep Learning Multi-Step Time Series Forecasting with the help of this template. Grid Search For ML & Deep Learning Models. Full guide to grid search on finding the best hyper parameters for our regular ml models to deep learning models 7 types of Multi*-Classification using python LSTM MultiVariate MultiStep, Auto TS, Thymeboost, NeuralProphet, FbProphet, Synthetic Data Evaluation, OSS, NCR, SMOTE, CouplaGAN, TVAE, A-Z Clustering Isolation Forest, LOF, Bagging Classifier, Boost Classifier, Auto-TS-Ensemble, Calibrated Classifier, Genetic Algorithms, AutoML, Semi AutoML and more. This course is ideal for individuals who are Anyone looking for a career to machine learning and artificial intelligence. or Anyone looking for a career to Big Data Engineer or Anyone looking for a career to Data Scientist, Business analyst, Data Engineer, Analyst It is particularly useful for Anyone looking for a career to machine learning and artificial intelligence. or Anyone looking for a career to Big Data Engineer or Anyone looking for a career to Data Scientist, Business analyst, Data Engineer, Analyst.
Enroll now: Ai/Data Scientist – Python/R/Big Data Master Class 2023
Summary
Title: Ai/Data Scientist – Python/R/Big Data Master Class 2023
Price: $59.99
Average Rating: 4.35
Number of Lectures: 217
Number of Published Lectures: 207
Number of Curriculum Items: 217
Number of Published Curriculum Objects: 207
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
- Analytics For Beginners: Learn the interdisciplinary concepts of analytics with the help of success stories.
- Analytics For Beginners: Become familiar of other companies using analytics as a core part of success stories.
- Analytics For Beginners: Understand why and how analytics is so important in every profession.
- Analytics For Beginners: Do data exploration and manipulation like transpose, remove duplicates, pivot table, manipulate data with time & Filter using Excel
- Advance data manipulation like Merge and Unmerge, cells Text To Column Function, Vlookup, Data Scaling, Consolidation, Conditional Operator If-Else and more.
- Analytics For Beginners: Even perform Ai in excel using built-in predictive analytics.
- Data Science: like Binomial, Poisson, Hyper Geometric, Negative Binomial, Geometric discrete probability distributions Normal distribution and T-dist
- Data Science: Perform hypothesis testing with Normal Distribution and T-distribution using One-Tail and Two-Tail Directional hypothesis.
- Data Science: Chi-square Test-Of-Association, Goodness-Of-Fit and more. Follow the program syllabus in our course curriculum to know more in detail.
- Perform Anova for multiple levels with and without replication and for count and categorical data using Chi-square Test-Of-Association & Goodness-Of-Fit
- Big Data Analytics: The architecture of Hadoop, Map Reduce, YARN, Hadoop Distribution File System, Name node check-pointing, Hadoop Rack Awareness in detail.
- Master and perform big data analysis with on-demand big data tools like PIG, HIVE, Impala and automate to stream live data & workflow with Flume and Scoop.
- Big Data Analytics: Control parallel processing and create User Define Functions to automate the scripting language without writing a line of code.
- Master and perform External Table to share the data among different applications and even partition the table for faster processing.
- R-programming: Learn and master how to manipulate data, impute missing values and visualization using base graphics, ggplot & geo-spatial plots.
- R-programming: Learn and perform exploratory analysis and work with different file type & data sources.
- Machine Leaning: Master how to create supervised models like linear and logistic regression, support vector machine and more to solve real world problems.
- Also master to create unsupervised models like k-means and hierarchical clustering, decision trees, random forest to automate solutions for real world problems.
- Learn and implement the concepts of Feature Engineering, Principle Component Analysis, Times and more.
- NLP: Learn and master data transformation, create text corpus, remove spare terms with Tm package and manipulate text data using regular expression.
- Sentiment analysis to negative or the positive response and topic modeling using LDA to identify the topics of 1000 documents without being going through each
- Understand the connection of each words using Network analysis or cluster the words used to solve problems like search keywords used to arrive on the website
- Bonus: Machine Learning, Deep Learning with Python – Premium Self Learning Resource Pack Free
- Full Guide to Linear Regression, Polynomial Regression, Support Vector Regression, Decision Trees Regression, Random Forest Regression and more.
- Full guide to knn, logistic, support vector machine, kernel svm, naive bayes, decision tree classification, random forest classification.
- Let’s Develop Artificial Neural Network in 30 lines of code. Simple yet Complete Guide on how to apply ANN for classification
- Let’s Develop Artificial Neural Network in 30 lines of code — II. Part — II Complete Guide to apply ANN for Regression with K-Fold Validation for accuracy.
- Reinforcement Learning in 31 Steps. using Upper Confidence Bound(UCB) & Thompson Sampling for Social Media Marketing Campaign Click Through Rate Optimization
- What is PCA and How can we apply Real Quick and Easy Way? Learn how to apply Principal Component Analysis (PCA) using python
- What is Supervised Linear Discriminant Analysis(LDA) ~ PCA. Let’s understand and perform supervised dimensionality reduction
- What is Kernel PCA? using R & Python. 4 easy line of codes to apply the most advanced PCA for non-linearly separable data.
- Association Rule Learning using Apriori and Eclat (R Studio) to predict Shopping Behavior.
- Multi-Layer Perception Time Series Apply State of the Art Deep Learning MLP models for predicting sequence of numbers/time series data.
- LSTMs for regression. Quick and easy guide to solve regression problems with Deep Learnings’ different types of LSTMs
- Uni-Variate LSTM Time Series Forecasting. Apply State Of The Art Deep Learning Time Series Forecasting with the help of this template.
- Multi-variate LSTM Forecasting. Apply state of the art deep learning time series forecasting using multiple inputs together to give a powerful prediction.
- Multi-Step LSTM Time Series Forecasting. Apply Advanced Deep Learning Multi-Step Time Series Forecasting with the help of this template.
- Grid Search For ML & Deep Learning Models. Full guide to grid search on finding the best hyper parameters for our regular ml models to deep learning models
- 7 types of Multi*-Classification using python
- LSTM MultiVariate MultiStep, Auto TS, Thymeboost, NeuralProphet, FbProphet, Synthetic Data Evaluation, OSS, NCR, SMOTE, CouplaGAN, TVAE, A-Z Clustering
- Isolation Forest, LOF, Bagging Classifier, Boost Classifier, Auto-TS-Ensemble, Calibrated Classifier, Genetic Algorithms, AutoML, Semi AutoML and more.
Who Should Attend
- Anyone looking for a career to machine learning and artificial intelligence.
- Anyone looking for a career to Big Data Engineer
- Anyone looking for a career to Data Scientist, Business analyst, Data Engineer, Analyst
Target Audiences
- Anyone looking for a career to machine learning and artificial intelligence.
- Anyone looking for a career to Big Data Engineer
- Anyone looking for a career to Data Scientist, Business analyst, Data Engineer, Analyst
The Course is Designed from scratch for Beginners as well as for Experts.
*Updated withBonus: Machine Learning, Deep Learning with Python – Premium Self Learning Resource Pack Free
Learn the skills of tomorrow, the silicon valley way
Focus on extracting insights from data of any form or shape using a multitude of statistical disciplines for the purpose of creating new products & services or improving the existing ones by predicting the probability in an event. And as the enormity of data is on the rise, there is a desperate need for professionals with data science skills to get valuable insights into it. According to NYTimes there are fewer than 10,000 qualified people in the world and universities are only graduating about 100 candidates each year.
Why data science is so important?
• TwitterSince 2015, the number of posts increased 45% to more than 850,000 tweets per minute.
• YouTube usage has more than tripled in the last two years with users uploading 400 hours of new video each minute of every day.
• Instagram users like 2.5 million posts every minute!
• Google Around 4 million Google searches are conducted worldwide each minute of every day.
• Finally, data sent and received by mobile internet users 1500 000TB.
So, with the above examples of how much data gets generated, now how many hidden insights and patterns for accurate future predictions that we can actually achieve by using data science.
According to Forbes, the annual demand for Data Scientist jobs in the United States itself will increase by 364 million by 2020.
The average salary for a Data Scientist is $170,436.
What is the career progression path for data science professionals?
• Data Scientist: with a vast knowledge of Data Science, Machine Learning, and Business Intelligence tools. Data Scientist stands high as Everest.
• Data Analyst: in 2022, the world will generate data 50times more than now, and with each day that passes by the data generated is infinite with that to analyze those data, data analyst jobs will never have to see the face of recession. On LinkedIn itself, there are average 400 new jobs every 12 hours.
• Data Science Trainer: in this present date a lack of knowledge of these advanced data science techniques gives a vast opportunity to become the fountain of data science for others.
• Business analyst: with the role of defining and managing the business requirements, the business analyst takes the lead in every business decision-making process of the organization.
Course Curriculum
Chapter 1: Program Syllabus
Lecture 1: Analytics For Beginners Program Syllabus
Lecture 2: R-programming Program Syllabus
Lecture 3: Machine Learning Program Syllabus
Lecture 4: Data Science Program Syllabus
Lecture 5: Big Data Program Syllabus
Lecture 6: Natural Language Processing (NLP) Program Syllabus
Chapter 2: Analytics For Beginners: Welcome To The World Of Analytics
Lecture 1: Introduction To Analytics
Lecture 2: Types Of Analytics & The Structure Of Data
Lecture 3: Types Of Analytics & The Structure Of Data – II
Lecture 4: Summary Statistics
Chapter 3: Analytics For Beginners: Data Exploration And Manipulation
Lecture 1: Transpose and Remove Duplicates
Lecture 2: Remove Duplicates and Data Dictionary
Lecture 3: Pivot Table and Filter
Lecture 4: Manipulate Data with Time and Filter
Chapter 4: Analytics For Beginners: Data Manipulation – II
Lecture 1: Merge and Un-merge cells
Lecture 2: Text To Column Function
Lecture 3: Vlookup
Lecture 4: Data Visualization
Lecture 5: Data Scaling
Lecture 6: Data Consolidation
Lecture 7: Conditional Operator If-Else
Chapter 5: Analytics For Beginners: Advance Analytics
Lecture 1: Regression Analysis
Lecture 2: Congrats! Here's what's next… using Excel
Lecture 3: More resources for you
Chapter 6: Ai To Restore Work Life Balance, Tokyo Japan
Lecture 1: Ai To Restore Work Life Balance, Tokyo Japan
Chapter 7: Introduction to R and R-Studio
Lecture 1: Introduction
Chapter 8: 2.R Program: Data types and Structures in R
Lecture 1: 2.Data types and Structures in R
Lecture 2: 2.Data types and Structures in R(Lab.)
Chapter 9: 3.R Program: Import and Export
Lecture 1: 3.1Import Data in R
Lecture 2: 3.2Export Data
Lecture 3: 3.Import-Export (Lab.)
Chapter 10: 4.R Program: Import-Export Big Data
Lecture 1: 4.Import and Export Big Data using R
Lecture 2: 4.Import and Export Big Data using R(Lab.)
Chapter 11: 5.R Program: Import-Export Excel files
Lecture 1: 5.1.XLConnect
Lecture 2: 5.2.Troubleshooting XLConnect
Lecture 3: 5.3.OpenXLSX
Lecture 4: 5.Import and Export excel files using openxlsx(lab.)
Chapter 12: 6.R Program: Import using RODBC
Lecture 1: 6.Import Database Data using RODBC
Lecture 2: 6.Import Database Data using RODBC(Lab.)
Chapter 13: 7.R Program: Import Web Data
Lecture 1: 7.Import Web Data
Lecture 2: 7.Import Web Data(Lab.)
Chapter 14: 8.R Program: Manipulating Data
Lecture 1: 8.Manipulating Data Using base R package
Lecture 2: 8.Manipulating Data Using base R package(Lab.)
Chapter 15: 9.R Program: Manipulating Data using DPLYR
Lecture 1: 9.Manipulate Data using DPLYR()
Lecture 2: 9.Manipulate Data using DPLYR() Lab.
Chapter 16: 10.R Program: Manipulating Dates
Lecture 1: 10.Manipulating Dates
Lecture 2: 10.Manipulating Dates (Lab.)
Chapter 17: 11.R Program: Merging Tables
Lecture 1: 11.Merging Tables
Lecture 2: 11.Merging Tables (Lab.)
Chapter 18: 12.R Program: Missing Value Treatment
Lecture 1: 12.Missing Value Treatment
Lecture 2: 12.Missing Value Treatment(Lab.)
Chapter 19: 13.R Program: Transpose and Pattern Matching Replacement
Lecture 1: 13.Transpose and Pattern Matching Replacement
Lecture 2: 13.Transpose and Pattern Matching Replacement(Lab.)
Chapter 20: 14.R Program: Data Visualization
Lecture 1: 14.1.Data Visualization using base graphics
Lecture 2: 14.2.Data Visualization using the Grammar of Graphics
Lecture 3: 14.3.Data Visualization with multiple groups using ggplot2
Lecture 4: 14.4.Data Visualization using case study(Lab.)
Chapter 21: 15.R Program: Geo-Spatial Plots
Lecture 1: 15.Geo-Spatial Plots
Lecture 2: 15.Geo-Spatial Plots(Lab.)
Lecture 3: R Capstone Project
Chapter 22: Introduction To Machine Learning
Lecture 1: Machine Learning Solving Problems Big, Small, and Prickly
Lecture 2: 1 Introduction To Machine Learning
Lecture 3: 2.1 Data Preparation – Analytics Methodology
Lecture 4: 2.2 Impute Missing Values for Continuous/Categorical variables
Lecture 5: 2.3 Create Train and Test Data set
Chapter 23: Linear Regression
Lecture 1: 3.1 Regression Anlaysis
Lecture 2: 3.2 Linear Regression Part- I
Lecture 3: 3.2 Linear Regression Part – II
Lecture 4: 3.2 Linear Regression Part – III
Lecture 5: 3.3 Handling Singularity Issue
Lecture 6: 3.4 Linear Regression Lab. Part – I
Lecture 7: 3.4 Linear Regression Lab. Part – II
Lecture 8: 3.4 Linear Regression Lab. Part- III
Lecture 9: 3.4 Linear Regression Lab. Part- IV
Chapter 24: Logistic Regression
Lecture 1: 4.1 Logistic Regression Part – I
Lecture 2: 4.1 Logistic Regression Part – II
Instructors
-
Rupak Bob Roy
Data Scientist For Advanced Analytics
Rating Distribution
- 1 stars: 1 votes
- 2 stars: 1 votes
- 3 stars: 6 votes
- 4 stars: 5 votes
- 5 stars: 16 votes
Frequently Asked Questions
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