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Today, the entire timeline is filled with @StandX_Official's content (although I also posted one, haha), so now everyone should be "trading aggressively" or "calmly analyzing" to see if there are any "golden opportunities" in other projects.
I'm still very used to using Xhunt, where you can see the most lively directions in the daily "information flow": "DeFi" is shrinking towards execution layers and capital efficiency, "AI" is shifting towards verifiable reasoning, "Memes" are no longer just about emotional fluctuations, and "Privacy" is being pulled back into system-level design.
So today, I’ve grouped these four projects together to see if we can uncover more valuable information.
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1️⃣ Ferra @ferra_protocol
As the foundational infrastructure for DeFi execution layers in the Sui ecosystem, Ferra @ferra_protocol has recently focused updates around transaction pathways and capital efficiency.
The parallel design of DLMM, CLMM, and DAMM enables higher composability of liquidity across different scenarios, with more stable slippage control.
I believe the value of Ferra @ferra_protocol lies in integrating execution quality, real-time data, and incentive structures into a unified trading gateway, strengthening its infrastructure attributes.
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2️⃣ Inference @inference_labs
Recently, Inference @inference_labs has concentrated its information on the systematic implementation of verifiable reasoning.
Through zkML and distributed reasoning architecture, model slicing, reasoning execution, and verification mechanisms are split and run collaboratively.
I think this design by Inference @inference_labs turns the trust issue of AI into an issue of auditability and verifiable computation, with reasoning results first achieving an engineering-level verification loop.
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3️⃣ MemeMax @MemeMax_Fi
It has been observed that MemeMax @MemeMax_Fi’s recent updates point more towards behavior-driven incentive restructuring.
As a Perp DEX in the MemeCore ecosystem, MemeMax @MemeMax_Fi filters noise trades through AI Agents, consolidating genuine actions into long-term rights, reshaping the on-chain usage of Memes.
Let’s see whether this MemeMax @MemeMax_Fi incentive structure can achieve long-term alignment and sustainable participation in high-volatility environments.
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4️⃣ Miden @0xMiden
Recently, discussions around Miden @0xMiden have focused on programmable privacy and transparent rewards.
Miden @0xMiden uses ZK-STARK to achieve private execution and local computation migration, with the chain only responsible for proof verification, significantly reducing data exposure.
I believe that clarifying the reward structure and distribution logic in advance is a form of trust; I hope Miden @0xMiden can perform even more brilliantly in the future.
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