It takes the average reader and 47 minutes to read Performance and Capacity Implications for Big Data by Dave Jewell
Assuming a reading speed of 250 words per minute. Learn more
Big data solutions enable us to change how we do business by exploiting previously unused sources of information in ways that were not possible just a few years ago. In IBM® Smarter Planet® terms, big data helps us to change the way that the world works. The purpose of this IBM RedpaperTM publication is to consider the performance and capacity implications of big data solutions, which must be taken into account for them to be viable. This paper describes the benefits that big data approaches can provide. We then cover performance and capacity considerations for creating big data solutions. We conclude with what this means for big data solutions, both now and in the future. Intended readers for this paper include decision-makers, consultants, and IT architects.
Performance and Capacity Implications for Big Data by Dave Jewell is 46 pages long, and a total of 11,776 words.
This makes it 16% the length of the average book. It also has 14% more words than the average book.
The average oral reading speed is 183 words per minute. This means it takes 1 hour and 4 minutes to read Performance and Capacity Implications for Big Data aloud.
Performance and Capacity Implications for Big Data is suitable for students ages 8 and up.
Note that there may be other factors that effect this rating besides length that are not factored in on this page. This may include things like complex language or sensitive topics not suitable for students of certain ages.
When deciding what to show young students always use your best judgement and consult a professional.
Performance and Capacity Implications for Big Data by Dave Jewell is sold by several retailers and bookshops. However, Read Time works with Amazon to provide an easier way to purchase books.
To buy Performance and Capacity Implications for Big Data by Dave Jewell on Amazon click the button below.
Buy Performance and Capacity Implications for Big Data on Amazon