![Page 1: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/1.jpg)
5 Crucial Considerations for Big Data Adoption:
Qubole On AWS vs. In-House Infrastructure Deployment
![Page 2: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/2.jpg)
PRESENTED BY:
![Page 3: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/3.jpg)
Only 13% of organizations achieve full-scale production for their in-house big data implementations.
13%
RISK
![Page 4: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/4.jpg)
ONLY 27% OF EXECUTIVES DESCRIBED THEIR IN-HOUSE BIG DATA INITIATIVES AS SUCCESSFUL.
![Page 5: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/5.jpg)
Boosting time-to-value with a big data project is crucial to keeping up in a fast-paced market. Consider the following factors to streamline big data adoption.
![Page 6: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/6.jpg)
Time to deployment
Average reported in-house infrastructure project build
times (not production)6-9 months.
6-9
TIME VALUE
![Page 7: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/7.jpg)
*QUBOLE AVERAGE USER TIME TO FIRST PRODUCTION QUERY = 2.8 DAYS
![Page 8: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/8.jpg)
Datasets will grow rapidly which means infrastructure will need to grow too.
LONG TERM SCALABILITY
![Page 9: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/9.jpg)
ON-PREMISE EXPANSION CAN TAKE WEEKS OR MONTHS, SO PLAN TO SCALE SEVERAL MONTHS OUT WHICH MEANS PROCURING ADDITIONAL HARDWARE.
With Qubole on Amazon Web Services, the average time it takes to spin up a 200 node cluster is 4 minutes.
200 NODES: 4 MINUTES
![Page 10: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/10.jpg)
THERE ARE 100+ PROJECTS WITHIN THE HADOOP ECOSYSTEM
Each big data tool has a specific use case and requires specialized skills to use.
Big data vendors offer varying levels of support to reduce the skills gap.
ASSEMBLY REQUIRED:WILL HADOOP CONSUME YOUR COMPANY?
![Page 11: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/11.jpg)
On-premise distributions require 5-10 staff members to manage large clusters
(1000+ nodes).
Qubole customer: a single IT manager can manage all projects regardless of
size or cluster count.
![Page 12: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/12.jpg)
INFRASTRUCTUREMANAGEMENT REQUIREMENTS
ON-PREMISE:cluster sizing, configuration management, health and performance monitoring, resource utilization and control, project management
![Page 13: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/13.jpg)
QUBOLE ON AWS:project management, vendor coordination
![Page 14: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/14.jpg)
THE MORE PEOPLE THAT HAVE ACCESS TO DATA, THE MORE USEFUL IT IS.
ACCESSIBILITY
![Page 15: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/15.jpg)
Ease of accessibility varies by vendor. Managed services offer greater
accessibility to non-IT teams.
Common Struggles: Complex Tools, Strain on IT Resources,Teams need different tools,Training takes significant time.
![Page 16: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/16.jpg)
63%
57% of organizations cite skills gap as a major inhibitor to Hadoop adoption.
*63% of Qubole users report little or no training was required for analysts
to start analysing data.
57%
![Page 17: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/17.jpg)
Interested in learning how the cloud can help
you derive faster time to value from big data?
Watch this webinar from Forrester Research.
Watch the Webinar
![Page 18: 5 Crucial Considerations for Big data adoption](https://reader033.vdocument.in/reader033/viewer/2022042907/58e5514b1a28ab5b778b457f/html5/thumbnails/18.jpg)
*SOURCE: Qubole Customer Survey April 2015
https://www.capgemini-consulting.com/resource-file-access/resource/pdf/c
racking_the_data_conundrum-big_data_pov_13-1-15_v2.pdf
http://www.gartner.com/newsroom/id/3051717
http://dataconomy.com/the-building-blocks-of-a-data-driven-enterprise/?utm_content=buffer9d010&utm_medium=social&utm_source=twitter.com&utm_campaign=buffer
https://hadoopecosystemtable.github.io/file:///Users/a97thFloor/Downloads/MapR%20TCO%20Model%20-%20Hadoop%2020%20node%20TCO%20Template%20[2015-07-02%20422pm].pdf