The post Immutable and Polygon (MATIC) Labs Forge New Gaming Hub to Revolutionize Web3 Gaming appeared on BitcoinEthereumNews.com. Luisa Crawford Oct 01, 2025 11:48 Immutable and Polygon (MATIC) Labs team up to launch a Gaming on Polygon hub, aiming to enhance Web3 gaming with cross-chain benefits and a $100,000 reward pool. Immutable and Polygon (MATIC) Labs have announced a strategic partnership to launch a dedicated Gaming on Polygon hub within Immutable Play, their upcoming platform for Web3 games. This collaboration aims to expand the reach and accessibility of blockchain-based gaming, according to Polygon Technology. Expanding the Web3 Gaming Landscape The Gaming on Polygon hub is set to bring multiple AAA games to life on the Polygon PoS (Proof of Stake) network. By launching several Polygon-powered titles simultaneously, the initiative is designed to enhance player engagement through quests, leaderboards, and a substantial $100,000 reward pool. This initiative underscores a long-term commitment to the sustainable growth of the Web3 gaming ecosystem. Immutable and Polygon Labs aim to provide game developers with enterprise-grade tools and support, allowing them to create high-quality gaming experiences enriched with Web3-native digital ownership features. This collaboration is expected to bring more value to games, attract more players, and strengthen the connection to Immutable zkEVM, which will soon integrate with Agglayer. Enhanced Player Experience With the launch of the Gaming on Polygon hub, players will gain access to a broader array of games and have the opportunity to capture more value from their gaming experiences. The initiative is designed to keep gamers engaged by offering a variety of games and shared rewards and quests. Immutable, a significant player in the Web3 gaming sector, boasts over 250,000 monthly active users, 5.5 million Passport signups, and $40 million in total value locked (TVL). The new hub on Polygon seeks to leverage this expertise and focus it on the Polygon network. Agglayer… The post Immutable and Polygon (MATIC) Labs Forge New Gaming Hub to Revolutionize Web3 Gaming appeared on BitcoinEthereumNews.com. Luisa Crawford Oct 01, 2025 11:48 Immutable and Polygon (MATIC) Labs team up to launch a Gaming on Polygon hub, aiming to enhance Web3 gaming with cross-chain benefits and a $100,000 reward pool. Immutable and Polygon (MATIC) Labs have announced a strategic partnership to launch a dedicated Gaming on Polygon hub within Immutable Play, their upcoming platform for Web3 games. This collaboration aims to expand the reach and accessibility of blockchain-based gaming, according to Polygon Technology. Expanding the Web3 Gaming Landscape The Gaming on Polygon hub is set to bring multiple AAA games to life on the Polygon PoS (Proof of Stake) network. By launching several Polygon-powered titles simultaneously, the initiative is designed to enhance player engagement through quests, leaderboards, and a substantial $100,000 reward pool. This initiative underscores a long-term commitment to the sustainable growth of the Web3 gaming ecosystem. Immutable and Polygon Labs aim to provide game developers with enterprise-grade tools and support, allowing them to create high-quality gaming experiences enriched with Web3-native digital ownership features. This collaboration is expected to bring more value to games, attract more players, and strengthen the connection to Immutable zkEVM, which will soon integrate with Agglayer. Enhanced Player Experience With the launch of the Gaming on Polygon hub, players will gain access to a broader array of games and have the opportunity to capture more value from their gaming experiences. The initiative is designed to keep gamers engaged by offering a variety of games and shared rewards and quests. Immutable, a significant player in the Web3 gaming sector, boasts over 250,000 monthly active users, 5.5 million Passport signups, and $40 million in total value locked (TVL). The new hub on Polygon seeks to leverage this expertise and focus it on the Polygon network. Agglayer…

Immutable and Polygon (MATIC) Labs Forge New Gaming Hub to Revolutionize Web3 Gaming



Luisa Crawford
Oct 01, 2025 11:48

Immutable and Polygon (MATIC) Labs team up to launch a Gaming on Polygon hub, aiming to enhance Web3 gaming with cross-chain benefits and a $100,000 reward pool.





Immutable and Polygon (MATIC) Labs have announced a strategic partnership to launch a dedicated Gaming on Polygon hub within Immutable Play, their upcoming platform for Web3 games. This collaboration aims to expand the reach and accessibility of blockchain-based gaming, according to Polygon Technology.

Expanding the Web3 Gaming Landscape

The Gaming on Polygon hub is set to bring multiple AAA games to life on the Polygon PoS (Proof of Stake) network. By launching several Polygon-powered titles simultaneously, the initiative is designed to enhance player engagement through quests, leaderboards, and a substantial $100,000 reward pool. This initiative underscores a long-term commitment to the sustainable growth of the Web3 gaming ecosystem.

Immutable and Polygon Labs aim to provide game developers with enterprise-grade tools and support, allowing them to create high-quality gaming experiences enriched with Web3-native digital ownership features. This collaboration is expected to bring more value to games, attract more players, and strengthen the connection to Immutable zkEVM, which will soon integrate with Agglayer.

Enhanced Player Experience

With the launch of the Gaming on Polygon hub, players will gain access to a broader array of games and have the opportunity to capture more value from their gaming experiences. The initiative is designed to keep gamers engaged by offering a variety of games and shared rewards and quests.

Immutable, a significant player in the Web3 gaming sector, boasts over 250,000 monthly active users, 5.5 million Passport signups, and $40 million in total value locked (TVL). The new hub on Polygon seeks to leverage this expertise and focus it on the Polygon network.

Agglayer Integration

The upcoming integration of Immutable zkEVM with Agglayer, Polygon’s protocol for cross-chain unified liquidity and interoperability, is another key development. Agglayer aims to create a unified crypto environment, supporting seamless asset and gameplay experiences across various ecosystems.

This integration will enable players to experience seamless gameplay and asset transfers across different gaming chains. Other gaming chains, such as Moonveil, are also set to connect to Agglayer, facilitating a more interconnected and dynamic gaming ecosystem.

Implications for the Gaming Industry

The collaboration between Immutable and Polygon Labs marks a significant milestone in the evolution of Web3 gaming. For players, this means access to higher-quality games and more rewards, along with the future potential to carry digital ownership across a growing network of titles.

For developers, the partnership offers a promising opportunity to engage with a large base of crypto-native users, ensuring that games can scale effectively without encountering silos. Immutable and Polygon are thus building the foundational infrastructure for a scalable and interconnected Web3 gaming landscape.

Image source: Shutterstock


Source: https://blockchain.news/news/immutable-polygon-labs-gaming-hub-web3

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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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