TLDR Cardano proposes naming its 2026 hard fork after DRep Max van Rossem to honor his contributions to the blockchain’s governance. The proposed name for the hardTLDR Cardano proposes naming its 2026 hard fork after DRep Max van Rossem to honor his contributions to the blockchain’s governance. The proposed name for the hard

Cardano to Honor DRep Max van Rossem with Proposed 2026 Hard Fork Name

2026/01/14 06:59
4 min read
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TLDR

  • Cardano proposes naming its 2026 hard fork after DRep Max van Rossem to honor his contributions to the blockchain’s governance.
  • The proposed name for the hard fork, “van Rossem,” continues Cardano’s tradition of naming upgrades after impactful community members.
  • Max van Rossem played a crucial role in drafting Cardano’s constitution and co-led the Constitutional Committee Election Working Group.
  • The upcoming upgrade will improve Plutus performance, node security, and ledger consistency without transitioning to a new ledger era.
  • Voting on the proposed name for the hard fork runs from January 13 to February 14, 2026, with DReps required to stake 100,000 ADA to participate.

Cardano’s Hard Fork Working Group has proposed naming the 2026 hard fork “van Rossem,” honoring late DRep Max van Rossem. The proposed Protocol Version 11 upgrade continues Cardano’s tradition of naming upgrades after impactful community members. Voting is ongoing and requires participation from DReps with a minimum deposit of 100,000 ADA.

“van Rossem” Hard Fork Proposal Honors Governance Leader

Cardano’s proposal to name its next hard fork after Max van Rossem follows a tradition dating back to Byron and Shelley. Previous names like Vasil, Chang, and Plomin were chosen to honor DReps who passed away while contributing to Cardano’s governance. The Hard Fork Working Group highlighted van Rossem’s work on the constitution and governance processes.

Van Rossem served as co-lead of the Constitutional Committee Election Working Group and helped form the first elected committee. He also represented the Dutch Cardano community during the Constitutional Convention in Buenos Aires, Brazil. The group credits him with helping author Article VIII in the Cardano constitution.

Intersect described Max as a “sharp-minded and deeply committed DRep” who shaped Cardano’s early governance structures. He helped improve dialogue across communities and drafted foundational documents that define the blockchain’s evolving democratic structure. “Those who worked with him attest to his lasting impact,” Intersect noted.

Technical Details of Protocol Version 11 Upgrade

Protocol Version 11 introduces updates to Plutus performance, ledger consistency, and node security without moving to a new era. The upgrade will take place within the current Conway era, so it will not require a full transition. Developers confirmed updates to reference input rules, VRF key uniqueness, and Plutus primitives.

The intra-era upgrade supports better governance tools, expanded builder capabilities, and lower execution costs for smart contracts. Intersect emphasized that it will also fix bugs and improve transaction correctness across the network. These changes aim to streamline Cardano’s infrastructure while maintaining backward compatibility.

The upgrade marks the next round of treasury-funded development and aligns with Cardano’s roadmap to enhance its smart contract layer. Developers and validators will prepare in advance through coordination with the Hard Fork Working Group. The integration burden is expected to be lower compared to era-shifting upgrades.

Voting and Community Coordination Underway

Voting on the proposed name started on January 13 and will close on February 14, 2026, via a dedicated Intersect poll. DReps are required to stake at least 100,000 ADA to vote, and eight have voted YES so far. These votes represent 1.57% of the total 14.16 billion ADA stake.

The Hard Fork Working Group will send final results to the Technical Steering Committee (TSC) for review and ratification. A new think tank will form to support ongoing technical and coordination discussions leading up to the hard fork. Meetings will be held every two weeks to address development progress and readiness.

Intersect confirmed that more updates will be published through the Intersect Knowledge Base ahead of the final deployment. The group also plans to create an open working group for Cardano users interested in joining future hard fork discussions. This will give the broader community a chance to contribute directly to protocol upgrades.

The post Cardano to Honor DRep Max van Rossem with Proposed 2026 Hard Fork Name appeared first on Blockonomi.

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