种子简介
种子名称:
[FreeCourseLab.com] Udemy - R Programming Advanced Analytics In R For Data Science
文件类型:
视频
文件数目:
47个文件
文件大小:
1.24 GB
收录时间:
2019-10-4 13:09
已经下载:
3次
资源热度:
137
最近下载:
2024-12-15 11:12
下载BT种子文件
下载Torrent文件(.torrent)
立即下载
磁力链接下载
magnet:?xt=urn:btih:fcbcea701d9a9953bcd05112cdc1353c86b6ec3e&dn=[FreeCourseLab.com] Udemy - R Programming Advanced Analytics In R For Data Science
复制链接到迅雷、QQ旋风进行下载,或者使用百度云离线下载。
喜欢这个种子的人也喜欢
种子包含的文件
[FreeCourseLab.com] Udemy - R Programming Advanced Analytics In R For Data Science.torrent
1. Welcome To The Course/1. Welcome to the Advanced R Programming Course!.mp429.07MB
2. Data Preparation/1. Welcome to this section. This is what you will learn!.mp426.74MB
2. Data Preparation/10. What is an NA.mp413.99MB
2. Data Preparation/11. An Elegant Way To Locate Missing Data.mp448.42MB
2. Data Preparation/12. Data Filters which() for Non-Missing Data.mp430MB
2. Data Preparation/13. Data Filters is.na() for Missing Data.mp421.48MB
2. Data Preparation/14. Removing records with missing data.mp426.31MB
2. Data Preparation/15. Reseting the dataframe index.mp439.17MB
2. Data Preparation/16. Replacing Missing Data Factual Analysis Method.mp424.05MB
2. Data Preparation/17. Replacing Missing Data Median Imputation Method (Part 1).mp448.97MB
2. Data Preparation/18. Replacing Missing Data Median Imputation Method (Part 2).mp415.61MB
2. Data Preparation/19. Replacing Missing Data Median Imputation Method (Part 3).mp419.06MB
2. Data Preparation/2. Project Brief Financial Review.mp46.82MB
2. Data Preparation/20. Replacing Missing Data Deriving Values Method.mp418.45MB
2. Data Preparation/21. Visualizing results.mp431.87MB
2. Data Preparation/22. Section Recap.mp410.92MB
2. Data Preparation/3. Updates on Udemy Reviews.mp458.33MB
2. Data Preparation/4. Import Data into R.mp419.31MB
2. Data Preparation/5. What are Factors (Refresher).mp429.24MB
2. Data Preparation/6. The Factor Variable Trap.mp424.53MB
2. Data Preparation/7. FVT Example.mp422.53MB
2. Data Preparation/8. gsub() and sub().mp433.14MB
2. Data Preparation/9. Dealing with Missing Data.mp442.59MB
3. Lists in R/1. Welcome to this section. This is what you will learn!.mp417.77MB
3. Lists in R/10. Creating A Timeseries Plot.mp438.28MB
3. Lists in R/11. Section Recap.mp46.59MB
3. Lists in R/2. Project Brief Machine Utilization.mp453.14MB
3. Lists in R/3. Import Data Into R.mp415.41MB
3. Lists in R/4. Handling Date-Times in R.mp438.59MB
3. Lists in R/5. What is a List.mp435.97MB
3. Lists in R/6. Naming components of a list.mp411.67MB
3. Lists in R/7. Extracting components lists [] vs [[]] vs $.mp416.75MB
3. Lists in R/8. Adding and deleting components.mp432.55MB
3. Lists in R/9. Subsetting a list.mp424.26MB
4. Apply Family of Functions/1. Welcome to this section. This is what you will learn!.mp427.71MB
4. Apply Family of Functions/10. Using sapply().mp434.94MB
4. Apply Family of Functions/11. Nesting apply() functions.mp424.88MB
4. Apply Family of Functions/12. which.max() and which.min() (advanced topic).mp432.42MB
4. Apply Family of Functions/13. Section Recap.mp49.81MB
4. Apply Family of Functions/2. Project Brief Weather Patterns.mp425.31MB
4. Apply Family of Functions/3. Import Data into R.mp428.07MB
4. Apply Family of Functions/4. What is the Apply family.mp417.23MB
4. Apply Family of Functions/5. Using apply().mp425.69MB
4. Apply Family of Functions/6. Recreating the apply function with loops (advanced topic).mp419.76MB
4. Apply Family of Functions/7. Using lapply().mp438.72MB
4. Apply Family of Functions/8. Combining lapply() with [].mp424.81MB
4. Apply Family of Functions/9. Adding your own functions.mp428.02MB