Best Buy Price on August 1, 2017

Best Buy Co -- USA Stock  

USD 73.12  0.22  0.30%

Use Best Buy Co (US0865161014) price on August 1, 2017 together with your stock portfolios to protect against small markets fluctuations and to determine Stock optimization strategy that fits your criteria.  

Best Buy Valuation Near August 1, 2017

 Open High Low Close Volume
  57.68    58.78    57.68    58.34    3,036,796  
 08/01/2017 
  58.60    59.60    58.55    59.48    4,163,940  
  59.51    60.10    58.26    59.38    3,762,988  
Backtest Best Buy  |  Best Buy History  |  Best Buy Valuation   PreviousNext  
August 1, 2017
58.6
Open Value
 
59.48
Closing Value
Target Price Odds
 Above  Below  
64.97
Upside
 

Best Buy Trading Date Momentum on August 1, 2017

On August 02 2017 Best Buy Co was traded for 59.38  at the closing time. Highest Best Buy's price during the trading hours was 60.10  and the lowest price during the day was  58.26 . The net volume was 3.8 M. The overall trading history on 02 of August contributed to the next trading period closing price depreciation. The overall trading delta to the next next day price was 0.17% . The overall trading delta to current price is 0.49% .

Best Buy CoFundamentals Correlations and Trends

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Price Boundaries

Best Buy Period Price Range
Low
August 1, 2017
High
 58.60 
  
 59.48 
0.88  1.50%

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