#airconcurrentmap search results
@myfear #AirConcurrentMap is a ConcurrentNavigableMap 4x to 7x faster parallel scan than streams, 50% to 70% smallr
@hansolo #AirConcurrentMap is a ConcurrentNavigableMap 4x to 7x faster parallel scan than streams, 50% to 70% smallr
#InternetOfThings #AirConcurrentMap is a #Java ConcurrentNavigableMap 4x to 7x faster parallel scan, 50% to 70% smal
#AirConcurrentMap Iterates faster than #Java #HashMap #ConcurrentHashMap #ConcurrentSkipListMap and #TreeMap
#AirConcurrentMap fastest smallest #Java ConcurrentNavigableMap free non-commercial no source #JavaConcurrency
#AirConcurrentMap #JavaConcurrency free for non-commercial no source fastest smallest #Java ConcurrentNavigableMap
New article: #AirConcurrentMap parallel vs #Java #ConcurrentSkipListMap #JavaConcurrency bit.ly/1UqDVXl
Test #AirConcurrentMap and compare to standard #Java Maps to see extreme improvement in speed & reliability
Free trial #Java maps equivalent #AirConcurrentMap runs faster in medium to large maps. Compare and see our tests.
Compatible with #Java Maps, #AirConcurrentMap is far faster in med-to-large map sizes. Faster Iterator in any map size.
#AirConcurrentMap 100% compatible with #Java Maps, but faster in med-to-large map sizes. Iterates faster in any map size.
#AirConcurrentMap replaces the standard #Java maps when you need greater speed and memory use in med-to-large maps
#AirConcurrentMap alternative to standard #Java Maps when medium to large map size is used. Iterator is faster in any size.
#AirConcurrentMap fully compatible with standard #Java Maps, but it runs longer and faster when map is medium to large.
#AirConcurrentmap faster and more memory efficient than standard #Java Maps when med-to-large memory is used. Iterator always faster.
#AirConcurrentMap compatible with standard #Java Maps, but much faster and more memory efficient in medium to large map sizes.
#AirConcurrentMap substitutes for standard #Java Maps to gain faster/more memory efficient performance in med-to-large map sizes.
#AirConcurrentMap fully compatible with standard #Java Maps, but it runs longer and faster when map is medium to large.
#AirConcurrentMap 100% compatible with #Java Maps, but faster in med-to-large map sizes. Iterates faster in any map size.
#AirConcurrentMap 100% compatible with standard #Java Maps, but it is faster for medium to large map sizes. Iterator faster in any map size.
multi-cord design makes all cores work at once, safely. #AirConcurrentMap is compatible with standard #Java Maps
#AirConcurrentMap replaces the standard #Java maps when you need greater speed and memory use in med-to-large maps
#AirConcurrentMap runs all cores simultaneously for maximum speed in medium to large maps. #Java
#AirConcurrentMap substitutes for standard #Java Maps to gain faster/more memory efficient performance in med-to-large map sizes.
#AirConcurrentMap compatible with standard #Java Maps, but much faster and more memory efficient in medium to large map sizes.
#internetofthings #java #AirConcurrentMap is more efficient than jdk Maps, has faster iterators, parallel scan
@IoTJournal #AirConcurrentMap is more memory efficient than any standard #java Map over 1K entries. see boilerbay.com. Faster too!
@JavaPerformance #AirConcurrentMap beats Java 8 streams for parallel scan. Internal threads use lock-free techniques boilerbay.com
MultiCore design makes #AirConcurrentMap and #InfinityDB faster. Simultaneous use of multiple cores @JavaPerformance #Java
#AirConcurrentmap faster and more memory efficient than standard #Java Maps when med-to-large memory is used. Iterator always faster.
#AirConcurrentMap alternative to standard #Java Maps when medium to large map size is used. Iterator is faster in any size.
#AirConcurrentMap has faster iterator for any size map & faster for all other capabilities in med-to-large maps. Use instead of #Java map
Alternative to standard #Java Maps, #AirConcurrentMap is faster in medium to large map sizes due to multi-core design. @performancejava
@JavaPerformance #AirConcurrentMap standard ordered Map now includes #JMH performance tests #java #iot
Compatible with #Java Maps, #AirConcurrentMap is far faster in med-to-large map sizes. Faster Iterator in any map size.
#AirConcurrentMap uses Multi-Core design to load all cores simultaneously to out perform #Java Maps in med. to large maps.
#AirConcurrentMap Iterates faster than #Java #HashMap #ConcurrentHashMap #ConcurrentSkipListMap and #TreeMap
#AirConcurrentMap fastest smallest #Java ConcurrentNavigableMap free non-commercial no source #JavaConcurrency
#AirConcurrentMap for #Android provides a parallel scan on #Java 1.6 that beats #JavaPerformance 1.8 parallel stream
#InternetOfThings #AirConcurrentMap is a #Java ConcurrentNavigableMap 4x to 7x faster parallel scan, 50% to 70% smal
@jbaruch #AirConcurrentMap is a ConcurrentNavigableMap 4x to 7x faster than streams, 50% to 70% smaller
@johanvos #AirConcurrentMap is a ConcurrentNavigableMap, parallel scan 4x to 7x over streams, 50% to 70% smaller
@myfear #AirConcurrentMap is a ConcurrentNavigableMap 4x to 7x faster parallel scan than streams, 50% to 70% smallr
@hansolo #AirConcurrentMap is a ConcurrentNavigableMap 4x to 7x faster parallel scan than streams, 50% to 70% smallr
@arungupta #AirConcurrentMap is a ConcurrentNavigableMap 4x to 7x faster parallel scan vs streams, 50% to 70% smallr
@MkHeck #AirConcurrentMap is a ConcurrentNavigableMap 4x to 7x faster parallel scan than streams, 50% to 70% smallr
New article: #AirConcurrentMap parallel vs #Java #ConcurrentSkipListMap #JavaConcurrency bit.ly/1UqDVXl
#AirConcurrentMap #JavaCurrency has transparent parallel entry scan, beats streams by 4x to 7x and 10x vs #Java 1.6
#AirConcurrentMap #JavaConcurrency free for non-commercial no source fastest smallest #Java ConcurrentNavigableMap
#JavaConcurrent #JavaPerformance parallel #AirConcurrentMap scan: new Summer().getSum(map).bit.ly/1UaGFWn
Compare 100% compatible #AirConcurrentMap.com with the #Java Maps for speed, iterator speed, and map efficiency
Test #AirConcurrentMap and compare to standard #Java Maps to see extreme improvement in speed & reliability
Something went wrong.
Something went wrong.
United States Trends
- 1. Grammy 409K posts
- 2. #FliffCashFriday 2,171 posts
- 3. Dizzy 10.8K posts
- 4. James Watson 9,444 posts
- 5. #NXXT 1,185 posts
- 6. Clipse 23.7K posts
- 7. Kendrick 66.6K posts
- 8. #GOPHealthCareShutdown 10.6K posts
- 9. Darryl Strawberry 1,462 posts
- 10. MANELYK EN COMPLICES 12.6K posts
- 11. Chase 89.1K posts
- 12. Orban 52.1K posts
- 13. Thune 80.2K posts
- 14. #FursuitFriday 12.6K posts
- 15. Klay 5,801 posts
- 16. Capitol Police 13.6K posts
- 17. #tnwx N/A
- 18. Carmen 48.1K posts
- 19. Laporta 14.3K posts
- 20. Bijan 3,231 posts