Canton Network surges on SEC-linked boost – Can CC extend gains?

ambcryptoPublished on 2025-12-21Last updated on 2025-12-21

Abstract

The Canton Network's native token CC surged 11% in 24 hours, becoming the top daily gainer, following a key regulatory development. The U.S. SEC issued a non-action letter to the Depository Trust & Clearing Corporation (DTCC), clearing the path for tokenized treasury infrastructure on the network. This sparked significant bullish sentiment, with 89% of voters expecting further price gains. The news adds to a series of partnerships that have historically supported CC's price, including a recent integration that previously pushed it up 5%. Market data shows strong bullish positioning. Open interest-weighted funding rates remain positive, indicating long dominance, with $14.28 million flowing into long contracts. Spot markets also saw net inflows of $6.40 million over the past week. However, liquidation heatmaps suggest caution, showing heavier liquidity clusters below the current price, which could lead to a short-term pullback. Despite this, overall sentiment remains constructive due to regulatory clarity, institutional partnerships, and sustained capital inflows.

Canton Network, which focuses on blockchain infrastructure for institutional and corporate use cases, has continued to secure notable partnerships.

The network’s native token, CC, has emerged as the immediate beneficiary of these developments. The token gained 11% over the past 24 hours, making it the top daily gainer, according to CoinMarketCap data.

Investor sentiment has also reached its most bullish level since CC’s launch. CoinMarketCap data showed that 89% of voters expect further price appreciation.

With momentum building, market participants had been increasingly betting on a continuation of the rally into the weekend.

Partnerships continue to support price action

Canton Network is drawing renewed market attention after The Depository Trust & Clearing Corporation (DTCC) received a non-action letter from the U.S. Securities and Exchange Commission (SEC), clearing the path for tokenized treasury infrastructure on the network.

The regulatory green light allowed DTCC to tokenize assets from its Depository Trust Company (DTC) on the Canton Network. The development has sparked bullish interest across the market, with investors positioning for potential upside into the weekend.

In fact, the collaboration adds to a growing list of strategic partnerships that have historically supported CC’s price performance.

Canton Network has previously recorded notable gains following key integrations, a trend that has helped cushion price action during periods of weaker sentiment across the broader crypto market.

Earlier this week, a partnership with modular blockchain oracle RedStone [RED] pushed CC up by 5%, while trading volume surged 288% to $21.79 million.

At press time, volume had moderated to $28.69 million, with market capitalization standing at $3.13 billion.

Liquidity builds across spot and derivatives markets

Market positioning suggested growing conviction among both retail and Derivatives traders.

In the perpetual market, the Open Interest–Weighted Funding Rate remained positive at approximately 0.0060%, indicating that long positions continue to dominate.

Combined recent and existing capital showed that $14.28 million has flowed into long contracts, with traders paying higher fees to maintain upside exposure.

Spot market data mirrored this trend.

Retail investors recorded net purchases of $61,640 over the past day, while weekly net inflows show that $6.40 million has been deployed into CC over the past seven days.

Heatmap signals caution despite bullish structure

Despite the strong bullish setup, liquidation data suggested that traders remain cautious.

The Liquidation Heatmap showed heavier liquidity clusters positioned below the current price level than above it. These clusters, often highlighted in green and yellow, tend to attract price action over time.

With more downside liquidity in place, CC could see a pullback toward lower levels. Such a move would not necessarily invalidate the broader bullish trend and could instead act as a short-term retracement before a renewed push higher.

Overall, market sentiment remains constructive, supported by regulatory clarity tied to the SEC’s non-action letter, continued institutional partnerships, and sustained capital inflows in the derivatives market.


Final Thoughts

  • Securities and Exchange Commission (SEC) regulatory clearance paves the way for the launch of tokenized treasuries on the Canton Network.
  • Investors across multiple market segments continue to position for upside in CC, expecting gains to build in the near term.

Related Questions

QWhat recent regulatory action by the SEC has benefited the Canton Network?

AThe U.S. Securities and Exchange Commission (SEC) issued a non-action letter to The Depository Trust & Clearing Corporation (DTCC), clearing the path for tokenized treasury infrastructure on the Canton Network.

QHow much did the price of CC (Canton Network's token) increase in the 24 hours prior to the article?

AThe token CC gained 11% over the past 24 hours, making it the top daily gainer.

QWhat does a positive Open Interest–Weighted Funding Rate in the perpetual market indicate for CC?

AA positive Open Interest–Weighted Funding Rate of approximately 0.0060% indicates that long positions continue to dominate the market.

QDespite the bullish structure, what does the Liquidation Heatmap data suggest about potential price movement?

AThe Liquidation Heatmap shows heavier liquidity clusters positioned below the current price level, suggesting CC could see a pullback toward lower levels as a short-term retracement.

QWhat was the total amount of net inflows from retail investors into CC over the past seven days?

AWeekly net inflows show that $6.40 million has been deployed into CC over the past seven days.

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