|By Business Wire||
|April 29, 2014 05:01 PM EDT||
Watts Water Technologies, Inc. (NYSE: WTS) today declared a quarterly dividend of fifteen cents ($0.15) per share on each outstanding share of the Company’s Class A Common Stock and Class B Common Stock, said dividend to be paid on May 30, 2014 to stockholders of record at the close of business on May 19, 2014.
Watts Water Technologies, Inc., through its subsidiaries, is a world leader in the manufacture of innovative products to control the efficiency, safety, and quality of water within residential, commercial, and institutional applications. Watts’ expertise in a wide variety of water technologies enables Watts to be a comprehensive supplier to the water industry.
Sep. 27, 2016 08:15 AM EDT Reads: 2,608
Sep. 27, 2016 08:00 AM EDT Reads: 2,466
Sep. 27, 2016 08:00 AM EDT Reads: 2,166
Sep. 27, 2016 08:00 AM EDT Reads: 3,642
Sep. 27, 2016 08:00 AM EDT Reads: 2,773
Sep. 27, 2016 08:00 AM EDT Reads: 1,088
Sep. 27, 2016 08:00 AM EDT Reads: 1,980
Sep. 27, 2016 07:45 AM EDT Reads: 2,479
Sep. 27, 2016 07:45 AM EDT Reads: 3,232
Sep. 27, 2016 07:30 AM EDT Reads: 2,955
Sep. 27, 2016 07:15 AM EDT Reads: 2,786
Sep. 27, 2016 07:15 AM EDT Reads: 1,114
Sep. 27, 2016 07:00 AM EDT Reads: 2,178
IoT offers a value of almost $4 trillion to the manufacturing industry through platforms that can improve margins, optimize operations & drive high performance work teams. By using IoT technologies as a foundation, manufacturing customers are integrating worker safety with manufacturing systems, driving deep collaboration and utilizing analytics to exponentially increased per-unit margins. However, as Benoit Lheureux, the VP for Research at Gartner points out, “IoT project implementers often ...
Sep. 27, 2016 06:45 AM EDT Reads: 3,322
So, you bought into the current machine learning craze and went on to collect millions/billions of records from this promising new data source. Now, what do you do with them? Too often, the abundance of data quickly turns into an abundance of problems. How do you extract that "magic essence" from your data without falling into the common pitfalls? In her session at @ThingsExpo, Natalia Ponomareva, Software Engineer at Google, provided tips on how to be successful in large scale machine learning...
Sep. 27, 2016 06:30 AM EDT Reads: 1,840