- Project TypeToken
- Platform Ethereum
- Circulating Supply608,221,473
- Total SupplyNone specified
- Max SupplyNone specified
- Primary SectorEnergy & Utilities
- JurisdictionNone specified
Arturas is practicing law at one of the biggest law firms in the Baltics, where he is responsible for all fintech blockchain and cryptocurrency related businesses and regulations. He is also Lithuanian fintech association chairman and two times recognised as the Lithuanian crowdfunding patron by the EU Commission.
Kaspar has been a leader in the European Utility and DSO sector for the last 10 years. Most recently he was CTO of Elektrilevi – Estonians largest DSO. Holding the position of CTO had been a natural progression given his previous positions and duties inside Elektrilevi. He was responsible for development and execution of the Strategic Plan and technology roadmap of the company.
Questions and Answers
Where to Buy and Trade WePowerThese are the crypto exchanges where you can buy, sell and trade WePower, ordered by exchange popularity. You should try the ones on the top first, but also look out for the "Recommended" badge as those are reliable exchanges that we have partnered with and are comfortable recommending them to our users.
1. Live token offeringsNo live token offerings
2. Upcoming token offeringsNo upcoming token offerings
3. Past token offerings
|WePower Pre-ICO||22 Sep 2017||22 Oct 2017|
|WePower ICO||01 Feb 2018||02 Feb 2018|
|WePower||22 Sep 2017||02 Feb 2018|
- 8 of 27 Team Members Verified
- Company Verified
- KYC Interview Conducted
Detailed due diligence exclusive to subscribers
Our proprietary TrustScore algorithm uses artificial intelligence machinery and combines dozens of data points including ID verification of every team member, company verification data, video interview with the project directors and dozens of additional data points offered by the projects such as social media profiles, white paper, questions and answers and many more to calculate the TrustScore.
A = Excellent
B = Good
C = Average
D = Below Average <- this project
E = Low