HYPE Price Rises as Trading Activity and Open Interest Increase

TheNewsCryptoОпубліковано о 2026-01-28Востаннє оновлено о 2026-01-28

Анотація

Hyperliquid's native token HYPE has risen to approximately $32.90, marking a 15.67% gain in the past 24 hours, with trading volume reaching $912 million. Market capitalization stands at around $9.93 billion. Open interest on the platform has surged to $790 million, up significantly from $260 million a month prior, driven by increased trading in commodity-linked perpetuals and strong derivatives activity. Technical indicators suggest a short-term recovery after a prolonged consolidation below $30. The RSI nears 70, indicating strong buying momentum, while the MACD and Bull Bear Power Trend also signal growing bullish pressure. Key support is near $28, with resistance in the $34–$36 range. A break above could target $38–$40, though the broader trend depends on sustained market participation.

Hyperliquid’s native token HYPE is trading at around $32.90, showing a 15.67% gain over the past 24 hours. During this period, the price ranged between an intraday low of $27.48 and a high of $34.64. The token’s market capitalization is about $9.93 billion, and 24-hour trading volume is near $912 million, reflecting increased participation in HYPE markets.

Recent activity on Hyperliquid has picked up, with open interest on the platform’s HIP-3 module rising to around $790 million, compared to roughly $260 million a month earlier. The increase has been supported by higher trading in commodity-linked perpetual contracts and steady participation across derivatives markets, alongside strong overall volume on the Hyperliquid decentralized exchange.

HYPE Shows Short-Term Recovery After Extended Consolidation

Looking at the daily chart, HYPE shows a sharp move higher after an extended period of sideways trading below $30. Price had been range-bound for several weeks, with resistance near the mid-$20 levels. The recent breakout above this range aligns with a rebound from earlier lows.

The RSI (14) currently sits near 70, indicating that buying momentum has increased relative to recent weeks. This higher reading suggests that demand has picked up, though it also reflects conditions that may lead to short pauses in upward movement if the indicator stays near the upper zone.

Momentum indicators on the chart also show a shift. The MACD line has moved above the signal line, and the histogram shows rising green bars. That highlighting a pickup in short-term buying interest. At the same time, the Bull Bear Power Trend indicator has turned positive, suggesting that bullish pressure is increasing relative to bearish pressure.

Zooming in, trend-strength readings such as the ADX are moderate, which suggests that while upward momentum is present, the move is not yet part of a prolonged trend. Price action continues to form higher lows after recent basing, but strong resistance remains ahead.

In the near term, key support is seen near $28, where price paused before the recent rally, while resistance lies in the $34–$36 area. A move beyond this zone could open the path toward $38–$40, where selling pressure has been noted in the past.

Overall, Hyperliquid’s price action reflects a short-term recovery phase with higher activity. But the broader trend remains dependent on continued participation and volume in the derivatives markets.

TagsAltcoinCrypto MarketHYPEHyperliquidHyperliquid (HYPE)

Пов'язані питання

QWhat is the current trading price of Hyperliquid's native token HYPE and what is its 24-hour gain?

AHYPE is currently trading at around $32.90, showing a 15.67% gain over the past 24 hours.

QHow much has the open interest on Hyperliquid's HIP-3 module increased compared to a month ago?

AThe open interest on Hyperliquid's HIP-3 module has risen to around $790 million, compared to roughly $260 million a month earlier.

QWhat does the RSI (14) level near 70 indicate about the HYPE token?

AThe RSI (14) level near 70 indicates that buying momentum has increased relative to recent weeks, suggesting higher demand but also potential for short pauses in upward movement.

QWhat are the key support and resistance levels for HYPE mentioned in the analysis?

AKey support is seen near $28, while resistance lies in the $34–$36 area. A move beyond this zone could open the path toward $38–$40.

QWhat do the momentum indicators, specifically the MACD and Bull Bear Power Trend, show for HYPE?

AThe MACD line has moved above the signal line with rising green bars on the histogram, indicating a pickup in short-term buying interest. The Bull Bear Power Trend indicator has turned positive, suggesting increasing bullish pressure.

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