Unlock your Loyalty RewardsREM Loyalty is a blockchain based rewards ecosystem linking businesses with customers through the REM token and App wallet. We help customers unlock greater value from their loyalty points while allowing businesses improve their loyalty management strategy.
- Project TypeToken
- Platform Stellar Lumens
- Circulating SupplyNone specified
- Total SupplyNone specified
- Max Supply1,000,000,000
- Primary SectorMarketplace
Zdravko has spent the past 17 years as a Partner with Deloitte Consulting’s global executive. His work in client experience and innovative mobile platforms has been recognized with design awards (Bamboo, 2012). He has studied Design Thinking at both UC Berkeley and Stanford University has led him to co-found REM Loyalty to bring better rewards to RentalMiles’ clients. Zdravko has also spear-headed the loyalty partnership negotiations to date and has initiated card issuer agreements across North America.
Jeremy has worked as a central banker and strategist in FX and commodity markets for over 16 years with Morgan Stanley, Societe Generale and RBC in New York, Hong Kong and Toronto. Jeremy subsequently lead corporate development at BitTorrent and works on several blockchain projects. He holds an MA in Economics from McGill University.
Carmen has spent the past 15 years in partnership marketing and has worked with global organizations in multiple sectors, including professional services, not-for-profit, technology and construction. She works closely with leadership to develop and execute market strategy for new business units and to grow the expanding ecosystem of rewards partners as well as alliances with card issuers beyond those with which we have started.
Steven is REM Loyalty's digital marketer. He plays a vital role in promoting the ecosystem to both users as well as potential new rewards partners. He is also responsible for ensuring cross-marketing between ecosystem partners to create greater benefits for all stakeholders.
Jessica is the Director, Business Partnerships with REM Loyalty. She is responsible for developing the Korea market through strategic partnerships. Working alongside the VP Business Partnerships, she identifies and engages with businesses which are suited to be partners within the REM Loyalty ecosystem.
Spencer is the VP, Business Partnerships. He works closely with the leadership to develop and execute the partnership strategy as it relates to the regions in which REM Loyalty operates. He oversees the team's execution in identifying and signing on new partners to the REM Loyalty ecosystem.
Martin is senior business development executive with long standing experience working with multiple sectors in Japan. As the VP Strategic Partnerships, Japan, Martin's responsible for helping REM Loyalty expand into the Japan market, developing key partnerships with B2B companies and furthering social networks within the crypto and mainstream communities.
|Sep 2018||Loyalty token offering (token sale)|
|Oct 2018||Token redemption available|
Questions and Answers
Where to Buy and Trade RemunerorThese are the crypto exchanges where you can buy, sell and trade Remuneror, 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
|REM Loyalty||04 Sep 2018||20 Nov 2018|
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- Company Verified
- KYC Interview Conducted
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