Etf Price on June 26, 2017 Breakdown

GAZ -- USA iPath Bloomberg Natural Gas Subindex Total Return ETN  

USD 2,990  2,990  1,263,102%

Use Etf price on June 26, 2017 concurrently with your other holdings, portfolios, and investing ideas to enhance returns of your portfolios and to back test it against optimization strategy that fits your risk preferences.  

Etf Valuation Near June 26, 2017

 Open High Low Close Volume
  0.29    0.31    0.29    0.29    9,568  
 06/26/2017 
  0.31    0.33    0.31    0.33    23,866  
  0.34    0.34    0.32    0.32    7,228  
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June 26, 2017
0.31
Open Value
 
Downside
0.0033
0.3299
Closing Value
Target Odds
  
1,509
Upside
 

Etf Trading Date Momentum on June 26, 2017

On June 27 2017 Etf was traded for 0.32  at the closing time. Highest Etf's price during the trading hours was 0.34  and the lowest price during the day was  0.32 . The net volume was 7.2 K. The overall trading history on 27 of June contributed to the next trading period closing price depreciation. The overall trading delta to the next next day price was 2.67% . The overall trading delta to current price is 16.97% .

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Price Boundaries

Etf Period Price Range
Low
June 26, 2017
High
 0.31 
  
 0.33 
0.02  6.45%

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