JasmyCoin is approaching a critical technical zone as it retests long-standing channel support, with signs that selling pressure is beginning to fade. Market indicatorsJasmyCoin is approaching a critical technical zone as it retests long-standing channel support, with signs that selling pressure is beginning to fade. Market indicators

JASMY Price Prediction: Channel Support Test Signals Relief Rally to $0.040

  • JASMY is retesting key channel support on the 2-day chart, with selling pressure easing.
  • Indicators point to a possible short-term bounce if buyers step in with volume.
  • A rebound could target $0.008–$0.011 first, with higher resistance at $0.014, $0.019, and $0.032–$0.040.

JasmyCoin is approaching a critical technical zone as it retests long-standing channel support, with signs that selling pressure is beginning to fade. Market indicators suggest the asset may be entering a consolidation phase, raising the possibility of a short-term relief bounce if buyer interest strengthens.

At the time of writing, the token is trading at $0.005905, supported by a 24-hour trading volume of $22.54 million and a market capitalization of $292.02 million. Its price has declined by 3.57% over the last 24 hours and 18.42% over the last week.

Source: CoinMarketCap

JASMY Tests Critical Support and Eyes Possible Rebound

JasmyCoin (JASMY) is now testing a major level after returning to the lower boundary of its descending channel on the 2-day chart. This level has served as strong support in the past, and reversal signals indicate that the market is entering into a consolidation phase rather than continuing lower.

Technically speaking, maintaining this channel support level could just be the beginning of this correction trend. The momentum indicators are signaling that there might be a shift in short to medium-term market sentiment, particularly if buyers make their presence felt with larger volumes. When this level starts to see a confirmed reversal, it would further validate that the overall downtrend momentum has weakened, at least for now.

Source: Jonathan Carter

However, if the rebound does come, JASMY might start focusing on overcoming resistance levels at higher tiers. The initial targets for upside rallies are pegged at approximately $0.008 and $0.011, while the stronger resistance is at $0.014 and $0.019. On the more extended rally, the JasmyCoin might reach $0.023, $0.032, and even $0.040, bringing the cryptocurrency to the technical level of importance within the present market structure.

Also Read: JASMY Breakout Alert: Massive Wedge Pattern Signals Potential Towards $0.2785

The weekly chart shows a strong downtrend for JasmyCoin, as it is below all the major moving averages (20, 50, 100, and 200 SMA). The underlying MA Ribbon is also bearish and trending downwards, implying consistent selling pressure. The price is also trending along the Lower Bollinger Band, implying strong bearish dominance rather than a breakout.

Source: Tradingview

Nonetheless, price is about to reach a significant level of demand around previous lows and the lower Bollinger Band, where a weakening level of selling pressure may be observed. Such extreme conditions are typical precursors for a technical rebound or a ranging market. A genuine trend change would call for a reoccupation of both 20-50 week SMAs, whereas any improvement will be considered corrective.

Also Read: JasmyCoin (JASMY) Holds Key Support as Accumulation Signals $0.04 Rally

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