Nordnet One Financials

0P0001PDHZ   125.95  0.00  0.00%   
Nordnet One Forsiktig does not presently have any fundamentals for analysis.
  
Please note that you must use caution to infer results of funds future performance. Investment returns and principal value will fluctuate so that investors' shares, when sold, may be worth more or less than their original cost.

Nordnet One Thematic Clasifications

Nordnet One Forsiktig is part of Commodities Funds investing theme. If you are a theme-oriented, socially responsible, and at the same time, a result-driven investor, you can align your investing habits with your values without jeopardizing your expectations about returns. You can easily create an optimal portfolio of stocks, ETFs, funds, or cryptocurrencies based on a specific theme of your liking. Funds investing in commodities. Funds or Etfs investing in commodities such as oil, gold, corn, soy, and agricultural goods
Commodities FundsView
This theme covers Funds investing in commodities. Funds or Etfs investing in commodities such as oil, gold, corn, soy, and agricultural goods. Get More Thematic Ideas

Nordnet One December 18, 2024 Opportunity Range

Along with financial statement analysis, the daily predictive indicators of Nordnet One help investors to analyze its daily demand and supply, volume, patterns, and price swings to determine the real value of Nordnet One Forsiktig. We use our internally-developed statistical techniques to arrive at the intrinsic value of Nordnet One Forsiktig based on widely used predictive technical indicators. In general, we focus on analyzing Nordnet Fund price patterns and their correlations with different microeconomic environment and drivers. We also apply predictive analytics to build Nordnet One's daily price indicators and compare them against related drivers.
Analyst Advice
Analyst recommendations and target price estimates broken down by several categories
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