T Price on December 31, 2016 Breakdown

T -- USA Stock  

USD 32.04  0.35  1.08%

Use T (US00206R1023) price on December 31, 2016 together with your other stock asset holdings to protect against small markets fluctuations as well as to check it against diversification policy that fits your risk preferences.  

T Valuation Near December 31, 2016

 Open High Low Close Volume
  41.18    41.29    40.98    41.11    11,431,989  
 12/28/2016 
  41.11    41.27    40.93    40.98    11,025,966  
  40.99    41.25    40.99    41.12    12,389,183  
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December 28, 2016
41.1058
Open Value
 
40.9805
Closing Value
Target Odds
  
46.50
Upside
 

T Trading Date Momentum on December 31, 2016

On December 29 2016 T was traded for 41.12  at the closing time. The highest price during the trading period was 41.25  and the lowest recorded bid was listed for  40.99 . The volume for the day was 12.4 M. This history from December 29, 2016 contributed to the next trading day price increase. The trading price change to the next closing price was 0.33% . The trading price change to the current price is 1.74% .

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Price Boundaries

T Period Price Range
Low
December 28, 2016
High
 41.11 
  
 40.98 
0.13  0.32%

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