The post Japan’s PM Calls Web3 the Next Industrial Revolution — But With a Twist appeared on BitcoinEthereumNews.com. BlockchainFintech Japan is turning to Web3 as a potential lifeline for its slowing economy. Prime Minister Shigeru Ishiba used the stage at the WebX conference in Tokyo to frame decentralized technologies as a force that could transform his country’s future, calling the shift “no less significant than the Industrial Revolution.” Rather than casting Web3 in terms of global dominance, Ishiba argued its greatest value lies in revitalizing local economies. He highlighted regional experiments like Shimane Prefecture’s digital coin program, which rewards people for solving community problems with tokens that can be spent locally. The government is also weaving Web3 tools into the Osaka-Kansai Expo, signaling that blockchain infrastructure will be tied directly to Japan’s domestic development strategy. Ishiba positioned these efforts as a response to two of Japan’s biggest challenges: an aging population and sluggish growth. By encouraging startups and embedding digital tools into regional economies, he said, Japan can spark new momentum from within. Cooperation Abroad, Focus at Home Though he acknowledged the importance of global partnerships — pointing to agreements forged with dozens of countries at the recent TICAD summit — Ishiba made clear his priority is to use Web3 as a domestic engine for innovation. That contrasts sharply with U.S. President Donald Trump’s approach. Trump has consistently tied crypto policy to America’s geopolitical ambitions, pushing for looser regulations and even proposing to use government Bitcoin reserves to cement U.S. supremacy in digital finance. Two Visions, One Technology Both leaders agree that Web3 and digital assets will shape the future economy, but they are steering their countries in different directions. Ishiba sees blockchain as a tool for grassroots revitalization and national resilience, while Trump frames it as a lever to secure global leadership. The divergence underscores a widening strategic split: Japan is betting on Web3 to solve domestic… The post Japan’s PM Calls Web3 the Next Industrial Revolution — But With a Twist appeared on BitcoinEthereumNews.com. BlockchainFintech Japan is turning to Web3 as a potential lifeline for its slowing economy. Prime Minister Shigeru Ishiba used the stage at the WebX conference in Tokyo to frame decentralized technologies as a force that could transform his country’s future, calling the shift “no less significant than the Industrial Revolution.” Rather than casting Web3 in terms of global dominance, Ishiba argued its greatest value lies in revitalizing local economies. He highlighted regional experiments like Shimane Prefecture’s digital coin program, which rewards people for solving community problems with tokens that can be spent locally. The government is also weaving Web3 tools into the Osaka-Kansai Expo, signaling that blockchain infrastructure will be tied directly to Japan’s domestic development strategy. Ishiba positioned these efforts as a response to two of Japan’s biggest challenges: an aging population and sluggish growth. By encouraging startups and embedding digital tools into regional economies, he said, Japan can spark new momentum from within. Cooperation Abroad, Focus at Home Though he acknowledged the importance of global partnerships — pointing to agreements forged with dozens of countries at the recent TICAD summit — Ishiba made clear his priority is to use Web3 as a domestic engine for innovation. That contrasts sharply with U.S. President Donald Trump’s approach. Trump has consistently tied crypto policy to America’s geopolitical ambitions, pushing for looser regulations and even proposing to use government Bitcoin reserves to cement U.S. supremacy in digital finance. Two Visions, One Technology Both leaders agree that Web3 and digital assets will shape the future economy, but they are steering their countries in different directions. Ishiba sees blockchain as a tool for grassroots revitalization and national resilience, while Trump frames it as a lever to secure global leadership. The divergence underscores a widening strategic split: Japan is betting on Web3 to solve domestic…

Japan’s PM Calls Web3 the Next Industrial Revolution — But With a Twist

BlockchainFintech

Japan is turning to Web3 as a potential lifeline for its slowing economy. Prime Minister Shigeru Ishiba used the stage at the WebX conference in Tokyo to frame decentralized technologies as a force that could transform his country’s future, calling the shift “no less significant than the Industrial Revolution.”

Rather than casting Web3 in terms of global dominance, Ishiba argued its greatest value lies in revitalizing local economies. He highlighted regional experiments like Shimane Prefecture’s digital coin program, which rewards people for solving community problems with tokens that can be spent locally. The government is also weaving Web3 tools into the Osaka-Kansai Expo, signaling that blockchain infrastructure will be tied directly to Japan’s domestic development strategy.

Ishiba positioned these efforts as a response to two of Japan’s biggest challenges: an aging population and sluggish growth. By encouraging startups and embedding digital tools into regional economies, he said, Japan can spark new momentum from within.

Cooperation Abroad, Focus at Home

Though he acknowledged the importance of global partnerships — pointing to agreements forged with dozens of countries at the recent TICAD summit — Ishiba made clear his priority is to use Web3 as a domestic engine for innovation.

That contrasts sharply with U.S. President Donald Trump’s approach. Trump has consistently tied crypto policy to America’s geopolitical ambitions, pushing for looser regulations and even proposing to use government Bitcoin reserves to cement U.S. supremacy in digital finance.

Two Visions, One Technology

Both leaders agree that Web3 and digital assets will shape the future economy, but they are steering their countries in different directions. Ishiba sees blockchain as a tool for grassroots revitalization and national resilience, while Trump frames it as a lever to secure global leadership.

The divergence underscores a widening strategic split: Japan is betting on Web3 to solve domestic problems, while the U.S. is wielding it to expand influence abroad.


The information provided in this article is for informational purposes only and does not constitute financial, investment, or trading advice. Coindoo.com does not endorse or recommend any specific investment strategy or cryptocurrency. Always conduct your own research and consult with a licensed financial advisor before making any investment decisions.

Author

Alex is an experienced financial journalist and cryptocurrency enthusiast. With over 8 years of experience covering the crypto, blockchain, and fintech industries, he is well-versed in the complex and ever-evolving world of digital assets. His insightful and thought-provoking articles provide readers with a clear picture of the latest developments and trends in the market. His approach allows him to break down complex ideas into accessible and in-depth content. Follow his publications to stay up to date with the most important trends and topics.



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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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