Enhance your running performance with tailored physical therapy at District Performance & Physio in Washington DC. Personalized programs target biomechanical imbalances to prevent injuries and improve efficiency.
If you plan to store UUID values in a Primary Key column, then you are better off using a TSID (time-sorted unique identifier).
One such implementation is offered by the Hypersistence TSID OSS library, which provides a 64-bit TSID that’s made of two parts:
a 42-bit time component
a 22-bit random component
The random component has two parts:
a node identifier (0 to 20 bits)
a counter (2 to 22 bits)
The node identifier can be provided by the tsid.node system property when bootstrapping the application:
-Dtsid.node="12"
Currently adding a column to a table with a non-NULL default results in
a rewrite of the table. For large tables this can be both expensive and
disruptive. This patch removes the need for the rewrite as long as the
default value is not volatile. The default expression is evaluated at
the time of the ALTER TABLE and the result stored in a new column
(attmissingval) in pg_attribute, and a new column (atthasmissing) is set
to true. Any existing row when fetched will be supplied with the
attmissingval. New rows will have the supplied value or the default and
so will never need the attmissingval.
Thousands of students and teachers across Wales will benefit from cutting-edge data analytics technology to improve student engagement, retention and performance as a result of a funding boost to be announced today by the Higher Education Funding Council for Wales (HEFCW) and Jisc.
The training impulse (TRIMP), the heart rate stress score (HRSS) and the running stress score (rTSS) are all measures of training load but are just one piece of the puzzle. Empower yourself to train smart with exercise science articles from Thomas Solomo
P. Rygielski, M. Seliuchenko, and S. Kounev. Proceedings of the Ninth International Conference on Simulation Tools and Techniques (SIMUTools 2016), page 66--75. (August 2016)
C. Müller, P. Rygielski, S. Spinner, and S. Kounev. Electronic Notes in Theoretical Computer Science, (2016)The 8th International Workshop on Practical Application of Stochastic Modeling, PASM 2016.
S. Spinner, J. Walter, and S. Kounev. Proceedings of the 2016 Workshop on Challenges in Performance Methods for Software Development (WOSP-C'16) co-located with 7th ACM/SPEC International Conference on Performance Engineering (ICPE 2016), (March 2016)
J. von Kistowski, and S. Kounev. Proceedings of the 9th EAI International Conference on Performance Evaluation Methodologies and Tools (VALUETOOLS 2015), (December 2015)
N. Huber, J. Walter, M. Bähr, and S. Kounev. Proceedings of the 2015 IEEE International Conference on Cloud and Autonomic Computing (ICCAC), IEEE, (September 2015)
F. Willnecker, M. Dlugi, A. Brunnert, S. Spinner, S. Kounev, and H. Krcmar. Computer Performance Engineering - Proceedings of the 12th European Workshop (EPEW 2015), volume 9272 of Lecture Notes in Computer Science, page 115-129. Springer, (August 2015)
J. von Kistowski, J. Beckett, K. Lange, H. Block, J. Arnold, and S. Kounev. Proceedings of the IEEE 23nd International Symposium on Modeling, Analysis and Simulation of Computer and Telecommunication Systems (MASCOTS 2015), IEEE, (October 2015)Full paper acceptance rate: 19\%.
J. Walter, S. Spinner, and S. Kounev. Proceedings of the Eighth EAI International Conference on Simulation Tools and Techniques (SIMUTools 2015), (August 2015)