Big Data V's
Across
- 2. How does data spread among other users and applications?
- 4. Data science continues to provide ever-increasing value for users as more data becomes available and new techniques are developed.
- 5. Big data allows us a privileged view of complex systems.
- 6. As an increasing number of people are affected by models’ decisions Veracity and Validity become ever more important.
- 8. for accurate analysis.
- 10. In data science we work with many data formats
- 12. Data science often models variable data sources. Models deployed into production can encounter especially wild data.
- 14. With the advent of the Internet of Things (IoT) the “bigness” of big data is accelerating.
Down
- 1. Data science provides the capability to peer behind the curtain and examine the effects of latent variables in the data.
- 2. With many data science applications based on large and often sensitive data sets data security is increasingly important.
- 3. The meaning of found data is often very unclear regardless of how much data is available.
- 4. Rigor in analysis is essential for valid predictions
- 5. A thriving data science community is vital and it provides insights ideas and support in all of our endeavors.
- 7. Reproducibility is
- 9. How end-users interact with our work matters and polish counts.
- 10. Not only is the volume of data ever increasing but the rate of data generation (from the Internet of Things social media etc.) is increasing as well.
- 11. Data science can aid decision making by pointing in the correct direction.
- 12. It is difficult to build robust models and it’s harder still to build systems that will be viable in production.
- 13. Data science work takes place in different locations and under different arrangements Locally on customer workstations and in the cloud.