This is the brochure for Summer School in Analytics- a ten day intensive program in classroom at Delhi, India on R, Python and SAS languages.
KDnuggets Poll -Is Rapid Miner 3 times more used as SAS
16th annual KDnuggets Software Poll continued to get huge attention from analytics and data mining community and vendors, attracting about 2,800 voters, who chose from a record number of 93 different tools.
from
http://www.kdnuggets.com/2015/05/poll-r-rapidminer-python-big-data-spark.html
What seems a rather disquieting sampling error-
RapidMiner remains the most popular suite for data mining/data science, but it got fewer votes than last year
The top 10 tools by share of users were
-
R, 46.9% share ( 38.5% in 2014)
-
RapidMiner, 31.5% ( 44.2% in 2014)
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SQL, 30.9% ( 25.3% in 2014)
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Python, 30.3% ( 19.5% in 2014)
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Excel, 22.9% ( 25.8% in 2014)
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KNIME, 20.0% ( 15.0% in 2014)
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Hadoop, 18.4% ( 12.7% in 2014)
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Tableau, 12.4% ( 9.1% in 2014)
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SAS, 11.3 (10.9% in 2014)
I really dont think Rapid Miner has three times SAS users. I have no doubts on the credibility of the poll but there seems either sampling bias or something plain wrong here
!!!!
and 44.2 % of users used Rapid Miner last year ( I dont think one in two data miners uses Rapid Miner)
So there is some error here- or maybe different ways of counting a user or not!!
Moobhi Review- Piku Emotion in Motion
Shoojit Sircar has written a love poem to the saga of probashi Bongalis, Kolkatta longing and the fine yet quixotic and sometimes insular Bong culture. He has relied on shortcuts and stereotypes to finish the story in the time alloted. Deepika looks great with Kajal laced Bengali Eyes, but someone needs to tell her to get accent training. Irrfan can act better with his eyes and mouth closed, than Karan Johar can act with his entire body.
Amitabh Bachchan just disappears into his role as Bhaskar Da. Moushmi Chatterjee lifts occasional sag into the story pace. What a nice story? If only non Bengalis knew more about their culture than just Bengali sweets.
Dealing with zip files in R #rstats
> setwd("/home/ajay/Downloads") > a=dir() > class(a) [1] "character" > grep(".zip",a) [1] 37 38 41 43 88 96 133 > b=grep(".zip",a) > a[b] [1] "alissa-coming-soon-v2-0(1).zip" [2] "alissa-coming-soon-v2-0.zip" [3] "CAX_EMC_Journalist_Data.zip" [4] "CAX_EMC_Racer_Data.zip" [5] "matlab_R2015a_glnxa64.zip" [6] "Photos.zip" [7] "unvbasicvapp__9411003__vmx__en__sp0__1.zip"
> unzip("CAX_EMC_Racer_Data.zip")
> c=dir() library(Hmisc)
> c[c %nin% a] [1] "CAX_EMC_Racer_Garmin_Camera.csv" [2] "CAX_EMC_Racer_Garmin_Watch_Data.csv" [3] "CAX_EMC_Racer_Motorcycle_Data.csv"
ps- I know Hadley's convenient wrappR packages are all the rage now, but nothing, i repeat
nothing beats Frank Harell and Ripley's cool packages
Google Plus remains a buggy shoddy social network
Mad Max Movie Review : Why Fury Road is so awesome
- They didnot use computer generated effects, they used human generated effects.
- They made sure 3D was actually realistic and not just a rip off to charge more money.
- Tom Hardy and Theron are awesome actors. So are Hoult. No the splendid wifey was not a splendid actress again.
- The same director and the same villain as 1979! movie
- Design ! Design !
- Witness the V8 riding off to Valhalla.
- The sound track was actually appropriate to the context and delivered!
- Double guitar throwing flames from a guitarist suspended in air in a truck full of speakers and drum players!
- Mechanical Engineering is much more cool than Computer Science engineering in terms of visual effects :-p
- I wish Mel Gibson had made a cameo. or Tina Turner!

DecisionStats Summer School in Delhi 2015 #rstats
This summer get a foothold in the world of data science. These are in classroom trainings for Delhi India and all prices are in INR only.
If you are interested apply here-
SUMMER SCHOOL 2015
- Bring your own device. Hardware – with >2GB RAM and >20 GB Hard Disk Free
- Eligibility Criterion – People Interested in a career as a data scientist. No prior skills are required but statistics and programming can help.
- 1 class is of 2.5 hours followed by a break of 1 hour . Each Day has two classes per batch
Course Details
| 15 – 16 June | 17- 18 June | 19 June – 22 ,23,24 June | 25 -26 June | ||
| Course Name | Introduction to
Data Science |
Introduction to Analytics
using Python |
Introduction to
Analytics using R |
SAS Language
Fundamentals |
|
| Hours | 10 | 10 | 20 | 10 | |
| Classes | 4 | 4 | 8 | 4 | |
| Days | 2 | 2 | 4 | 2 | |
| Cost | 8000 | ||||
| 10000 | |||||
| 12000 | |||||
| 15000 | |||||
| 25000 |
Taking all four courses gives you a saving of 80% with 50 hours total class time.
Instructor will teach in person and open for clearing doubts on the spot.
Course Outline
| Basics of Data Science | Introduction to Python | Introduction to R | Introduction to Interface |
| Basics of Analytics | Introduction to iPython | Introduction to R Studio | Introduction to SAS language |
| LTV Analysis | Introduction to Pandas | Introduction to R | Data Step |
| LTV Analysis Quiz | Introduction to iPython Notebook | Introduction to Rattle | Proc Print |
| RFM Analysis | IDE- IDLE and Spyder | Deducer | Proc Means and Proc Freq |
| RFM Analysis Quiz | Python 1 Quiz | R Quiz 1 | SAS Quiz 1 |
| Basic Stats | Data Input | Data Input | Proc Univariate |
| Introduction to Modeling | Data Analysis | Data Analysis | Do loops |
| Data Summarization | Data Summarization | Proc sgplot | |
| Introduction to Google Analytics | Data Visualization | Data Visualization | Proc SQL |
| Blogging | Data Output | Data Output | SAS Macro Language |
| Web Analytics Quiz | Ipython 2 Quiz | R Quiz 2 | menu driven options |
| data.table | ODS Output | ||
| ggplot | |||
| sports analytics | SAS Quiz 2 | ||
| regression model | |||
| data mining | |||
| R Quiz 3 | |||
| social network analysis | |||
| text mining | |||
| time series forecasting | |||
| Using apis | |||
| association analysis | |||
| R Quiz 4 | |||
| RODBC | |||
| sqldf | |||
| spatial analytics | |||
| RMarkDown | |||
| Using Github | |||
| R Quiz 5 |
If you are interested apply here-



