**25. May 2021 - 9:00

## Data Science Certification Training in Parkersburg, WV | Business Hotel | Tuesday, 25. May 2021

Key Features:

32 hours of Classroom training

100% Money Back Guarantee

Real-life case studies

Life time access to Learning Management System (LMS)

Practical Assignments

Certification: Trainerkart certifies you based on the project.

24/7 customer support

About Data Science Certification Training

Trainerkart’s Data Science course helps you gain expertise in Machine Learning Algorithms like K-Means Clustering, Decision Trees, Random Forest, Naive Bayes using R. You’ll learn the concepts of Statistics, Time Series, Text Mining and an introduction to Deep Learning. You’ll solve real life case studies on Media, Healthcare, Social Media, Aviation, HR.

Who Should Apply?

The training is a best fit for:

IT professionals interested in pursuing a career in analytics

Graduates looking to build a career in analytics and data science

Experienced professionals who would like to harness data science in their fields

Anyone with a genuine interest in the field of data science

Data Science Certification Training - Course Agenda

Introduction to Data Science

Goal – Get an introduction to Data Science in this Module and see how Data Science helps to analyze large and unstructured data with different tools.

Objectives – At the end of this Module, you should be able to:

• Define Data Science

• Discuss the era of Data Science

• Describe the Role of a Data Scientist

• Illustrate the Life cycle of Data Science

• List the Tools used in Data Science

• State what role Big Data and Hadoop, R, Spark and Machine Learning play in Data Science

Topics:

• What is Data Science?

• What does Data Science involve?

• Era of Data Science

• Business Intelligence vs Data Science

• Life cycle of Data Science

• Tools of Data Science

• Introduction to Big Data and Hadoop

• Introduction to R

• Introduction to Spark

• Introduction to Machine Learning

Statistical Inference

Goal – In this Module, you should learn about different statistical techniques and terminologies used in data analysis.

Objectives – At the end of this Module, you should be able to:

• Define Statistical Inference

• List the Terminologies of Statistics

• Illustrate the measures of Center and Spread

• Explain the concept of Probability

• State Probability Distributions

Topics:

• What is Statistical Inference?

• Terminologies of Statistics

• Measures of Centers

• Measures of Spread

• Probability

• Normal Distribution

• Binary Distribution

Data Extraction, Wrangling and Exploration

Goal – Discuss the different sources available to extract data, arrange the data in structured form, analyze the data, and represent the data in a graphical format.

Objectives – At the end of this Module, you should be able to:

• Discuss Data Acquisition techniques

• List the different types of Data

• Evaluate Input Data

• Explain the Data Wrangling techniques

• Discuss Data Exploration

Topics:

• Data Analysis Pipeline

• What is Data Extraction

• Types of Data

• Raw and Processed Data

• Data Wrangling

• Exploratory Data Analysis

• Visualization of Data

Hands-On/Demo:

• Loading different types of dataset in R

• Arranging the data

• Plotting the graphs

Introduction to Machine Learning

Goal – Get an introduction to Machine Learning as part of this Module. You will discuss the various categories of Machine Learning and implement Supervised Learning Algorithms.

Objectives – At the end of this module, you should be able to:

• Define Machine Learning

• Discuss Machine Learning Use cases

• List the categories of Machine Learning

• Illustrate Supervised Learning Algorithms

Topics:

• What is Machine Learning?

• Machine Learning Use-Cases

• Machine Learning Process Flow

• Machine Learning Categories

• Supervised Learning

Linear Regression

Logistic Regression

Hands-On/Demo:

• Implementing Linear Regression model in R

• Implementing Logistic Regression model in R

Classification

Goal – In this module, you should learn the Supervised Learning Techniques and the implementation of various Techniques, for example, Decision Trees, Random Forest Classifier etc.

Objectives – At the end of this module, you should be able to:

• Define Classification

• Explain different Types of Classifiers such as,

Decision Tree

Random Forest

Naïve Bayes Classifier

Support Vector Machine

Topics:

• What is Classification and its use cases?

• What is Decision Tree?

• Algorithm for Decision Tree Induction

• Creating a Perfect Decision Tree

• Confusion Matrix

• What is Random Forest?

• What is Navies Bayes?

• Support Vector Machine: Classification

Hands-On/Demo:

• Implementing Decision Tree model in R

• Implementing Linear Random Forest in R

• Implementing Navies Bayes model in R

• Implementing Support Vector Machine in R

Unsupervised Learning

Goal – Learn about Unsupervised Learning and the various types of clustering that can be used to analyze the data.

Objectives – At the end of this module, you should be able to:

• Define Unsupervised Learning

• Discuss the following Cluster Analysis

K – means Clustering

C – means Clustering

Hierarchical Clustering

Topics:

• What is Clustering & its Use Cases?

• What is K-means Clustering?

• What is C-means Clustering?

• What is Canopy Clustering?

• What is Hierarchical Clustering?

Hands-On/Demo:

• Implementing K-means Clustering in R

• Implementing C-means Clustering in R

• Implementing Hierarchical Clustering in R

Recommender Engines

Goal – In this module, you should learn about association rules and different types of Recommender Engines.

Objectives – At the end of this module, you should be able to:

• Define Association Rules

• Define Recommendation Engine

• Discuss types of Recommendation Engines

Collaborative Filtering

Content-Based Filtering

• Illustrate steps to build a Recommendation Engine

Topics:

• What is Association Rules & its use cases?

• What is Recommendation Engine & it’s working?

• Types of Recommendation Types

• User-Based Recommendation

• Item-Based Recommendation

• Difference: User-Based and Item-Based Recommendation

• Recommendation Use-case

Hands-On/Demo:

• Implementing Association Rules in R

• Building a Recommendation Engine in R

Text Mining

Goal – Discuss Unsupervised Machine Learning Techniques and the implementation of different algorithms, for example, TF-IDF and Cosine Similarity in this Module.

Objectives – At the end of this module, you should be able to:

• Define Text Mining

• Discuss Text Mining Algorithms

Bag of Words Approach

Sentiment Analysis

Topics:

• The concepts of text-mining

• Use cases

• Text Mining Algorithms

• Quantifying text

• TF-IDF

• Beyond TF-IDF

Hands-On/Demo:

• Implementing Bag of Words approach in R

• Implementing Sentiment Analysis on twitter Data using R

Time Series

Goal – In this module, you should learn about Time Series data, different component of Time Series data, Time Series modelling – Exponential Smoothing models and ARIMA model for Time Series forecasting.

Objectives – At the end of this module, you should be able to:

• Describe Time Series data

• Format your Time Series data

• List the different components of Time Series data

• Discuss different kind of Time Series scenarios

• Choose the model according to the Time series scenario

• Implement the model for forecasting

• Explain working and implementation of ARIMA model

• Illustrate the working and implementation of different ETS models

• Forecast the data using the respective model

Topics:

• What is Time Series data?

• Time Series variables

• Different components of Time Series data

• Visualize the data to identify Time Series Components

• Implement ARIMA model for forecasting

• Exponential smoothing models

• Identifying different time series scenario based on which different Exponential Smoothing model can be applied

• Implement respective ETS model for forecasting

Hands-On/Demo:

• Visualizing and formatting Time Series data

• Plotting decomposed Time Series data plot

• Applying ARIMA and ETS model for Time Series forecasting

• Forecasting for given Time period

Deep Learning

Goal – Get introduced to the concepts of Reinforcement learning and Deep learning in this Module. These concepts are explained with the help of Use cases. You will get to discuss Artificial Neural Network, the building blocks for artificial neural networks, and few artificial neural network terminologies.

Objectives – At the end of this module, you should be able to:

• Define Reinforced Learning

• Discuss Reinforced Learning Use cases

• Define Deep Learning

• Understand Artificial Neural Network

• Discuss basic Building Blocks of Artificial Neural Network

• List the important Terminologies of ANN’s

Topics:

• Reinforced Learning

• Reinforcement learning Process Flow

• Reinforced Learning Use cases

• Deep Learning

• Biological Neural Networks

• Understand Artificial Neural Networks

• Building an Artificial Neural Network

• How ANN works

• Important Terminologies of ANN’s

Why Trainerkart?

Trainerkart's training is the best and value for time & money invested. We stand out because our customers

Get trained at the best price compared to other training providers.

Get trained by the best trainer in the industry.

Get accesses to course specific learning videos.

Get 100% Money back guarantee*.

Training Fee: $ 2499

Early Bird: Booking at least one month prior to the class start date

Training Venue:

Venue will be confirmed to the classroom participants one week prior to the workshop start date and online participants will get the session attendance link before 4- 5 days of the training start date. Venue is finalized one week prior to the start date so that we can accommodate last minute rescheduling from the participants and we do not incur additional cost for rescheduling or cancellation.

For more details please contact us at Email: alex.matthews@trainer-kart.com

For group discount please contact us by email, chat. or Click here

32 hours of Classroom training

100% Money Back Guarantee

Real-life case studies

Life time access to Learning Management System (LMS)

Practical Assignments

Certification: Trainerkart certifies you based on the project.

24/7 customer support

About Data Science Certification Training

Trainerkart’s Data Science course helps you gain expertise in Machine Learning Algorithms like K-Means Clustering, Decision Trees, Random Forest, Naive Bayes using R. You’ll learn the concepts of Statistics, Time Series, Text Mining and an introduction to Deep Learning. You’ll solve real life case studies on Media, Healthcare, Social Media, Aviation, HR.

Who Should Apply?

The training is a best fit for:

IT professionals interested in pursuing a career in analytics

Graduates looking to build a career in analytics and data science

Experienced professionals who would like to harness data science in their fields

Anyone with a genuine interest in the field of data science

Data Science Certification Training - Course Agenda

Introduction to Data Science

Goal – Get an introduction to Data Science in this Module and see how Data Science helps to analyze large and unstructured data with different tools.

Objectives – At the end of this Module, you should be able to:

• Define Data Science

• Discuss the era of Data Science

• Describe the Role of a Data Scientist

• Illustrate the Life cycle of Data Science

• List the Tools used in Data Science

• State what role Big Data and Hadoop, R, Spark and Machine Learning play in Data Science

Topics:

• What is Data Science?

• What does Data Science involve?

• Era of Data Science

• Business Intelligence vs Data Science

• Life cycle of Data Science

• Tools of Data Science

• Introduction to Big Data and Hadoop

• Introduction to R

• Introduction to Spark

• Introduction to Machine Learning

Statistical Inference

Goal – In this Module, you should learn about different statistical techniques and terminologies used in data analysis.

Objectives – At the end of this Module, you should be able to:

• Define Statistical Inference

• List the Terminologies of Statistics

• Illustrate the measures of Center and Spread

• Explain the concept of Probability

• State Probability Distributions

Topics:

• What is Statistical Inference?

• Terminologies of Statistics

• Measures of Centers

• Measures of Spread

• Probability

• Normal Distribution

• Binary Distribution

Data Extraction, Wrangling and Exploration

Goal – Discuss the different sources available to extract data, arrange the data in structured form, analyze the data, and represent the data in a graphical format.

Objectives – At the end of this Module, you should be able to:

• Discuss Data Acquisition techniques

• List the different types of Data

• Evaluate Input Data

• Explain the Data Wrangling techniques

• Discuss Data Exploration

Topics:

• Data Analysis Pipeline

• What is Data Extraction

• Types of Data

• Raw and Processed Data

• Data Wrangling

• Exploratory Data Analysis

• Visualization of Data

Hands-On/Demo:

• Loading different types of dataset in R

• Arranging the data

• Plotting the graphs

Introduction to Machine Learning

Goal – Get an introduction to Machine Learning as part of this Module. You will discuss the various categories of Machine Learning and implement Supervised Learning Algorithms.

Objectives – At the end of this module, you should be able to:

• Define Machine Learning

• Discuss Machine Learning Use cases

• List the categories of Machine Learning

• Illustrate Supervised Learning Algorithms

Topics:

• What is Machine Learning?

• Machine Learning Use-Cases

• Machine Learning Process Flow

• Machine Learning Categories

• Supervised Learning

Linear Regression

Logistic Regression

Hands-On/Demo:

• Implementing Linear Regression model in R

• Implementing Logistic Regression model in R

Classification

Goal – In this module, you should learn the Supervised Learning Techniques and the implementation of various Techniques, for example, Decision Trees, Random Forest Classifier etc.

Objectives – At the end of this module, you should be able to:

• Define Classification

• Explain different Types of Classifiers such as,

Decision Tree

Random Forest

Naïve Bayes Classifier

Support Vector Machine

Topics:

• What is Classification and its use cases?

• What is Decision Tree?

• Algorithm for Decision Tree Induction

• Creating a Perfect Decision Tree

• Confusion Matrix

• What is Random Forest?

• What is Navies Bayes?

• Support Vector Machine: Classification

Hands-On/Demo:

• Implementing Decision Tree model in R

• Implementing Linear Random Forest in R

• Implementing Navies Bayes model in R

• Implementing Support Vector Machine in R

Unsupervised Learning

Goal – Learn about Unsupervised Learning and the various types of clustering that can be used to analyze the data.

Objectives – At the end of this module, you should be able to:

• Define Unsupervised Learning

• Discuss the following Cluster Analysis

K – means Clustering

C – means Clustering

Hierarchical Clustering

Topics:

• What is Clustering & its Use Cases?

• What is K-means Clustering?

• What is C-means Clustering?

• What is Canopy Clustering?

• What is Hierarchical Clustering?

Hands-On/Demo:

• Implementing K-means Clustering in R

• Implementing C-means Clustering in R

• Implementing Hierarchical Clustering in R

Recommender Engines

Goal – In this module, you should learn about association rules and different types of Recommender Engines.

Objectives – At the end of this module, you should be able to:

• Define Association Rules

• Define Recommendation Engine

• Discuss types of Recommendation Engines

Collaborative Filtering

Content-Based Filtering

• Illustrate steps to build a Recommendation Engine

Topics:

• What is Association Rules & its use cases?

• What is Recommendation Engine & it’s working?

• Types of Recommendation Types

• User-Based Recommendation

• Item-Based Recommendation

• Difference: User-Based and Item-Based Recommendation

• Recommendation Use-case

Hands-On/Demo:

• Implementing Association Rules in R

• Building a Recommendation Engine in R

Text Mining

Goal – Discuss Unsupervised Machine Learning Techniques and the implementation of different algorithms, for example, TF-IDF and Cosine Similarity in this Module.

Objectives – At the end of this module, you should be able to:

• Define Text Mining

• Discuss Text Mining Algorithms

Bag of Words Approach

Sentiment Analysis

Topics:

• The concepts of text-mining

• Use cases

• Text Mining Algorithms

• Quantifying text

• TF-IDF

• Beyond TF-IDF

Hands-On/Demo:

• Implementing Bag of Words approach in R

• Implementing Sentiment Analysis on twitter Data using R

Time Series

Goal – In this module, you should learn about Time Series data, different component of Time Series data, Time Series modelling – Exponential Smoothing models and ARIMA model for Time Series forecasting.

Objectives – At the end of this module, you should be able to:

• Describe Time Series data

• Format your Time Series data

• List the different components of Time Series data

• Discuss different kind of Time Series scenarios

• Choose the model according to the Time series scenario

• Implement the model for forecasting

• Explain working and implementation of ARIMA model

• Illustrate the working and implementation of different ETS models

• Forecast the data using the respective model

Topics:

• What is Time Series data?

• Time Series variables

• Different components of Time Series data

• Visualize the data to identify Time Series Components

• Implement ARIMA model for forecasting

• Exponential smoothing models

• Identifying different time series scenario based on which different Exponential Smoothing model can be applied

• Implement respective ETS model for forecasting

Hands-On/Demo:

• Visualizing and formatting Time Series data

• Plotting decomposed Time Series data plot

• Applying ARIMA and ETS model for Time Series forecasting

• Forecasting for given Time period

Deep Learning

Goal – Get introduced to the concepts of Reinforcement learning and Deep learning in this Module. These concepts are explained with the help of Use cases. You will get to discuss Artificial Neural Network, the building blocks for artificial neural networks, and few artificial neural network terminologies.

Objectives – At the end of this module, you should be able to:

• Define Reinforced Learning

• Discuss Reinforced Learning Use cases

• Define Deep Learning

• Understand Artificial Neural Network

• Discuss basic Building Blocks of Artificial Neural Network

• List the important Terminologies of ANN’s

Topics:

• Reinforced Learning

• Reinforcement learning Process Flow

• Reinforced Learning Use cases

• Deep Learning

• Biological Neural Networks

• Understand Artificial Neural Networks

• Building an Artificial Neural Network

• How ANN works

• Important Terminologies of ANN’s

Why Trainerkart?

Trainerkart's training is the best and value for time & money invested. We stand out because our customers

Get trained at the best price compared to other training providers.

Get trained by the best trainer in the industry.

Get accesses to course specific learning videos.

Get 100% Money back guarantee*.

Training Fee: $ 2499

Early Bird: Booking at least one month prior to the class start date

Training Venue:

Venue will be confirmed to the classroom participants one week prior to the workshop start date and online participants will get the session attendance link before 4- 5 days of the training start date. Venue is finalized one week prior to the start date so that we can accommodate last minute rescheduling from the participants and we do not incur additional cost for rescheduling or cancellation.

For more details please contact us at Email: alex.matthews@trainer-kart.com

For group discount please contact us by email, chat. or Click here