Hoe ver zijn landen echt met crypto? Dat is de centrale vraag in het nieuwe World Crypto Rankings-rapport van Bybit en DL Research. Op basis van 28 indicatoren Hoe ver zijn landen echt met crypto? Dat is de centrale vraag in het nieuwe World Crypto Rankings-rapport van Bybit en DL Research. Op basis van 28 indicatoren

Bybit Crypto Report 2025: Singapore domineert wereldwijd en Nederland sluipt top 10 binnen

Hoe ver zijn landen echt met crypto? Dat is de centrale vraag in het nieuwe World Crypto Rankings-rapport van Bybit en DL Research. Op basis van 28 indicatoren en 92 datapunten onderzocht men hoe 79 landen crypto integreren in hun economie. De conclusie? Singapore voert de lijst aan, gevolgd door de Verenigde Staten en Litouwen. Nederland staat op een sterke achtste plek. Check onze Discord Connect met "like-minded" crypto enthousiastelingen Leer gratis de basis van Bitcoin & trading - stap voor stap, zonder voorkennis. Krijg duidelijke uitleg & charts van ervaren analisten. Sluit je aan bij een community die samen groeit. Nu naar Discord Wat meet het rapport precies? De World Crypto Rankings 2025 biedt geen overzicht van de grootste markten, maar vergelijkt landen op basis van relatieve adoptie. Het model is opgebouwd rond vier pijlers: User Penetration: Hoeveel mensen gebruiken crypto? Denk aan wallet-gebruik, handelsactiviteit en acceptatie bij merchants. Transactional Use: In hoeverre wordt crypto daadwerkelijk gebruikt voor betalingen, remittances, spaargeld of DeFi? Institutional Readiness: Hoe duidelijk is het beleid? Zijn er vergunningen, banktoegang en infrastructuur voor grootschalige adoptie? Cultural Penetration: Hoe zichtbaar is crypto in het dagelijks leven, in zoekopdrachten, educatie en media? Elke pijler weegt mee in de totaalscore, waarbij gebruik en transacties zwaarder tellen dan sentiment of regulering. Bybit released a report showing a World Crypto Adoption Top 20 Index. pic.twitter.com/KQrCUczLTY — Sjuul | AltCryptoGems (@AltCryptoGems) December 10, 2025 Toplanden en opvallende crypto trends Singapore scoort een perfecte 1.00 op gebruikerspenetratie en blinkt uit in beleid, infrastructuur én cultuur. De VS volgt met sterke scores op institutioneel vlak en DeFi-volumes, terwijl Litouwen op plek drie uitblinkt als licentie- en toegangspoort voor Europese exchanges. Andere koplopers: Zwitserland (#4) blinkt uit in culturele legitimiteit en bankintegratie. VAE (#5) combineert remittance-gebruik met progressieve VARA-regelgeving. Vietnam (#9) scoort opvallend hoog op gebruik, ondanks beperkte infrastructuur. Opvallend is de opkomst van stablecoins als universele use case, van spaargeld en betalingen tot payrolls. Ook tokenisatie van echte activa (zoals obligaties en vastgoed) groeit sterk, vooral in markten als Singapore en Hongkong. LEES HIER MEER OVER SEC keurt tokenisatie van aandelen goed via DTCC-platform Raul Gavira • 12-12-2025 DTCC mag van de SEC aandelen, ETF’s en Treasuries tokeniseren op goedgekeurde blockchains. De tokenisatie start in H2 2026. Lees verder → Nederland scoort hoog op crypto adoptie en nieuwsgierigheid Nederland staat achtste in de wereldranglijst, vooral dankzij hoge scores op culturele adoptie (3e) en gebruikerspenetratie (10e). Nederlanders zoeken bovengemiddeld veel naar crypto, downloaden veel apps en gebruiken actief handelsplatforms. Ook merchant-acceptatie is bovengemiddeld. Waar nog ruimte voor groei zit: Stablecoin-gebruik blijft relatief laag Institutionele integratie is minder sterk dan in landen als de VS of Canada Toch laat de ranglijst zien dat Nederland een volwassen cryptomarkt is, gedragen door een digitaal vaardige bevolking en open betaalsystemen. 🇳🇱 Netherlands #8 worldwide for crypto readiness ahead of Germany, Hong Kong, Australia and most of Europe. Is Dutch crypto adoption about to accelerate? What do you guys think? pic.twitter.com/YKnCh06QHa — Bitcoin Magazine NL (@BitcoinMagNL) December 10, 2025 Crypto-adoptie verschilt wereldwijd De World Crypto Rankings 2025 laat zien hoe blockchain langzaam verweven raakt met het dagelijks leven. Stablecoins worden gebruikt voor transacties, tokenisatie verandert hoe kapitaal markten werkt, en steeds meer bedrijven betalen lonen uit via onchain wallets. Landen met heldere regels en toegankelijke infrastructuur nemen het voortouw. Voor beleidsmakers biedt het rapport een blauwdruk om innovatie en bescherming te balanceren. Voor gebruikers laat het zien: crypto is niet overal hetzelfde, maar overal in beweging. Best wallet - betrouwbare en anonieme wallet Best wallet - betrouwbare en anonieme wallet Meer dan 60 chains beschikbaar voor alle crypto Vroege toegang tot nieuwe projecten Hoge staking belongingen Lage transactiekosten Best wallet review Koop nu via Best Wallet Let op: cryptocurrency is een zeer volatiele en ongereguleerde investering. Doe je eigen onderzoek.

Het bericht Bybit Crypto Report 2025: Singapore domineert wereldwijd en Nederland sluipt top 10 binnen is geschreven door Raul Gavira en verscheen als eerst op Bitcoinmagazine.nl.

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Turn lengthy earnings call transcripts into one-page insights using the Financial Modeling Prep APIPhoto by Bich Tran Earnings calls are packed with insights. They tell you how a company performed, what management expects in the future, and what analysts are worried about. The challenge is that these transcripts often stretch across dozens of pages, making it tough to separate the key takeaways from the noise. With the right tools, you don’t need to spend hours reading every line. By combining the Financial Modeling Prep (FMP) API with Groq’s lightning-fast LLMs, you can transform any earnings call into a concise summary in seconds. The FMP API provides reliable access to complete transcripts, while Groq handles the heavy lifting of distilling them into clear, actionable highlights. In this article, we’ll build a Python workflow that brings these two together. You’ll see how to fetch transcripts for any stock, prepare the text, and instantly generate a one-page summary. 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Medium2025/09/18 14:40