Genre: eLearning | MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.37 GB | Duration: 4h 47m
Bootcamp of the hottest topics including visualization, machine learning, Apache Spark, SQL, NLP, MatDescriptionlib and more!
What you’ll learn
Data science concepts & real world applications
Practice for real world projects such as: learn how to find data on a house when looking to become a homeowner. You will be able to look through house data to find useful
What Will I Learn?
Use real world examples of data mining and datasets.
Practice for real world projects such as: learn how to find data on a house when looking to become a homeowner. You will be able to look through house data to find useful information from a text dataset.
Clean data, filter noise, make data available for analysis.
Perform cluster analysis, classification and regression, including logistic regression
Use the K-NN classifier and SVM.
Detect outliers in univariate, multivariate and high dimensional spaces
Learn how to use Apache Spark, the number one framework used for distributed processing.
And many more topics explained with concrete examples
All levels welcome!
Install the free package manager Anaconda. We will show you how to install necessary packages from there.
Learn Data Mining With Fascinating Examples
Do you want to learn data science? You’ve come to the right place.
Learn To Build Predictive Models
Not a single second is wasted in this engaging course. Our amazing instructor Koyuki Nakamori explains everything from a basic, beginner level to make each step understandable to all. You will learn to create, evaluate and use data models to make predictions. And so much more.
This is an incredible course full of cutting-edge information. Grow your skills and become an indispensable data scientist today in one compact, no-nonsense 5 hour masterclass.
Grab The Future By Understanding Data
What is data mining? Data mining is getting useful actionable insights from data. Whoever owns data owns the future. But owning data is not good enough. You need to know how to draw insights from a dataset, draw useful insights, look at statistics, and find patterns using a dataset.
Gain An Empowering, Competitive Skillset
Learning data science is empowering because you will get competitive advantages as a company or individual. Everyone should know how to create basic visualizations from data to help you predict the future.
Use a practical dataset to learn data wrangling. You will learn how to clean data, filter noise, make data available for analysis. You will learn about statistics and perform simple statistics with a range of examples.
Practice With Realistic Projects
You will use real world examples of data mining and datasets to learn each topic step by step.
You will learn cluster analysis, classification and regression, including logistic regression. You will be able to use the K-NN classifier and SVM. You will learn association, correlation, and detecting outliers in univariate, multivariate and high dimensional spaces. You will also learn dimensionality reduction.
Practice with pop quizzes embedded in lectures for you to test yourself along the way. You will be challenged to complete more complex tasks on your own.
You will be introduced to frameworks, including Apache Spark, the number one framework used for distributed processing. It is a streamlined alternative to Map-Reduce. Spark applications can be written in Scala, Java or Python.
Learn Machine Learning for Data Science
Let’s design chains of transformations together! You will learn how to chain Spark dataframe methods together to perform data munging. You will understand the Spark-ML API, and recognize the differences from SK-Learn.
With concrete examples you will chain Spark-ML Transformers and Estimators together to compose Machine Learning pipelines. You will learn how to mine and store data. We cover text mining, network mining, the Python Matrix library, and mining a database-SQL.
You will also learn natural language processing from scratch, including how to clean text data. You will learn how to use the Count Vectorizer and TFIDF. You will also complete a practical example using Spam data.
You will learn how to continue your data science journey on your own. You will be able to find challenges and train yourself to learn more in the field. You will be equipped with all the tools to ready you in the field.