Machine Learning and Data Science Essentials with Python & R
MP4 | Video: AVC 1280x720 | Audio: AAC 44KHz 2ch | Duration: 5.5 Hours | Lectures: 24 | 883 MB
Genre: eLearning | Language: English
Master Machine Learning with Python, Tensorflow & R. Data Science is the most in-demand and Highest Paying Job of 2018 Machine_Learning_and_Data_Science_Essentials_with_Python___R.part1.rar - 250.0 MB
Meet Machine Learning, the in-demand and Highest Paying job skill of 2018 and beyond. Machine learning is increasingly shaping future of work and jobs. With an average salary of $120,000 (Glassdoor and Indeed), Machine Learning will help you to get one of the top-paying jobs.
Machine Learning, provides computers the ability to automatically learn and improve from experience.
Today, data scientists are generally divided among two languages , some prefer R, some prefer Python. The course touches both R and Python implementations of Machine Learning.
By the end of the course you will be able to
Master Machine Learning using Python and R
Understand Linear Algebra
Matrix Operations in R and Python
Implement Linear Regression with R, Python & Tensorflow
Logistic Regression with R, Python & Tensorflow
Practical Machine Learning Problems and solution
Implement K-means and K-NN algorithm on R
Implement K-NN on python using tensorflow
Learning Machine Learning is a definite way to advance your career and will open doors to new Job opportunities.
Feel forward to have a look at course description and demo videos and we look forward to see you inside.
Machine_Learning_and_Data_Science_Essentials_with_Python___R.part2.rar - 250.0 MB
Machine_Learning_and_Data_Science_Essentials_with_Python___R.part3.rar - 250.0 MB
Machine_Learning_and_Data_Science_Essentials_with_Python___R.part4.rar - 133.2 MB
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