The post Trendline Rejection Deepens While AI Narrative Fails To Lift Price appeared on BitcoinEthereumNews.com. FET fails to break $0.274 as the descending trendline and sloping EMAs keep sellers firmly in control. Triangle compression tightens between $0.267 and $0.274 as intraday momentum weakens. Strong AI narrative from ASI One fails to move price as spot demand stays muted. FET price today trades near $0.269 after failing to break above the short term descending trendline that has capped each rebound in November. The token remains stuck below the 20 day EMA at $0.282 and the 50 day EMA at $0.325, keeping buyers pinned under a heavy technical ceiling. Trendline Pressure And Sloping EMAs Maintain A Downward Bias The daily chart shows FET moving within a clear descending structure. Price sits beneath a short term trendline that runs from early October toward the current level near $0.27. Each attempt to break above this line has been rejected, underscoring consistent sell pressure from traders who accumulated higher. The 20 day EMA at $0.282 and the 50 day EMA at $0.325 continue to slope lower. This EMA alignment is characteristic of markets where any upward momentum is quickly absorbed by overhead supply. Above these moving averages sits the 100 day EMA at $0.414 and the 200 day EMA at $0.545. The gap between price and these long term averages reflects the extensive overhead work buyers must overcome before achieving a structural reversal. Parabolic SAR reinforces this bias. SAR dots remain above price on the daily timeframe and have not flipped bullish since early October. As long as SAR stays overhead, any recovery attempts are likely to face resistance before trend reversal conditions emerge. The broader structure includes a major demand zone between $0.10 and $0.20, marked by repeated accumulation earlier this year. FET has not revisited that region since its sharp recovery in mid November, but it remains the… The post Trendline Rejection Deepens While AI Narrative Fails To Lift Price appeared on BitcoinEthereumNews.com. FET fails to break $0.274 as the descending trendline and sloping EMAs keep sellers firmly in control. Triangle compression tightens between $0.267 and $0.274 as intraday momentum weakens. Strong AI narrative from ASI One fails to move price as spot demand stays muted. FET price today trades near $0.269 after failing to break above the short term descending trendline that has capped each rebound in November. The token remains stuck below the 20 day EMA at $0.282 and the 50 day EMA at $0.325, keeping buyers pinned under a heavy technical ceiling. Trendline Pressure And Sloping EMAs Maintain A Downward Bias The daily chart shows FET moving within a clear descending structure. Price sits beneath a short term trendline that runs from early October toward the current level near $0.27. Each attempt to break above this line has been rejected, underscoring consistent sell pressure from traders who accumulated higher. The 20 day EMA at $0.282 and the 50 day EMA at $0.325 continue to slope lower. This EMA alignment is characteristic of markets where any upward momentum is quickly absorbed by overhead supply. Above these moving averages sits the 100 day EMA at $0.414 and the 200 day EMA at $0.545. The gap between price and these long term averages reflects the extensive overhead work buyers must overcome before achieving a structural reversal. Parabolic SAR reinforces this bias. SAR dots remain above price on the daily timeframe and have not flipped bullish since early October. As long as SAR stays overhead, any recovery attempts are likely to face resistance before trend reversal conditions emerge. The broader structure includes a major demand zone between $0.10 and $0.20, marked by repeated accumulation earlier this year. FET has not revisited that region since its sharp recovery in mid November, but it remains the…

Trendline Rejection Deepens While AI Narrative Fails To Lift Price

  • FET fails to break $0.274 as the descending trendline and sloping EMAs keep sellers firmly in control.
  • Triangle compression tightens between $0.267 and $0.274 as intraday momentum weakens.
  • Strong AI narrative from ASI One fails to move price as spot demand stays muted.

FET price today trades near $0.269 after failing to break above the short term descending trendline that has capped each rebound in November. The token remains stuck below the 20 day EMA at $0.282 and the 50 day EMA at $0.325, keeping buyers pinned under a heavy technical ceiling.

Trendline Pressure And Sloping EMAs Maintain A Downward Bias

The daily chart shows FET moving within a clear descending structure. Price sits beneath a short term trendline that runs from early October toward the current level near $0.27. Each attempt to break above this line has been rejected, underscoring consistent sell pressure from traders who accumulated higher.

The 20 day EMA at $0.282 and the 50 day EMA at $0.325 continue to slope lower. This EMA alignment is characteristic of markets where any upward momentum is quickly absorbed by overhead supply. Above these moving averages sits the 100 day EMA at $0.414 and the 200 day EMA at $0.545. The gap between price and these long term averages reflects the extensive overhead work buyers must overcome before achieving a structural reversal.

Parabolic SAR reinforces this bias. SAR dots remain above price on the daily timeframe and have not flipped bullish since early October. As long as SAR stays overhead, any recovery attempts are likely to face resistance before trend reversal conditions emerge.

The broader structure includes a major demand zone between $0.10 and $0.20, marked by repeated accumulation earlier this year. FET has not revisited that region since its sharp recovery in mid November, but it remains the strongest support base for long term traders.

Triangle Compression Narrows Between $0.267 And $0.274

The 30 minute chart highlights an increasingly tight triangle formation. Price is being squeezed between rising support near $0.267 and a declining resistance line near $0.274. This pattern has been building for three days as volatility continues to contract.

Supertrend sits at $0.267, matching the ascending lower boundary. Price has held this level multiple times, confirming that intraday buyers are actively defending it. However, each bounce is weak and short lived. Attempts to extend toward $0.274 have been absorbed quickly, showing that short term sellers are still in control of the upper region.

RSI reinforces this compression. The indicator has oscillated between 46 and 55, never entering overbought or oversold territory. This narrow RSI band reflects neutrality among intraday traders and suggests that the next move will likely depend on a break of either the lower or upper triangle boundary.

A breakout above $0.274 would target the 20 day EMA at $0.282 and then the 50 day EMA at $0.325. A breakdown below $0.267 exposes the wider support zone around $0.260, followed by $0.245, a level tested during the November lows.

AI Narrative Strengthens As ASI One Pushes Personalized Agentic Systems

Beyond chart structure, the narrative around FET is shaped by rising interest in agentic AI systems. Fetch.ai CTO Devon Bleibtrey outlined how ASI One aims to democratize access to personalized AI and enable networks of specialized agents. The emphasis on multi agent coordination fits FET’s positioning in decentralized intelligence infrastructure.

Bleibtrey’s comments highlight how agentic systems rely on separate AI personalities working together rather than one large model controlling all tasks. This aligns with FET’s long stated objective of scaling autonomous agents and lowering the barrier for developers to create AI modules that interact across networks.

While the commentary boosts long term sentiment, the price reaction remains muted due to broader market caution. FET continues to trade in technical compression despite the improving narrative backdrop.

Key Levels To Watch

FET now trades within a clearly defined structure:

  • Resistance. $0.274: A breakout through this line confirms the triangle resolution and opens the path toward $0.282 and $0.325.
  • EMA rejection zone. $0.282 to $0.325: This area represents the first major test for buyers. Clearing it would shift momentum for the first time since September.
  • Support. $0.267: Losing this level breaks the rising boundary and places pressure back on $0.260 and then $0.245.
  • Major demand. $0.20 to $0.10: This zone anchors the long term structure.

Disclaimer: The information presented in this article is for informational and educational purposes only. The article does not constitute financial advice or advice of any kind. Coin Edition is not responsible for any losses incurred as a result of the utilization of content, products, or services mentioned. Readers are advised to exercise caution before taking any action related to the company.

Source: https://coinedition.com/fet-price-prediction-trendline-rejection-deepens-while-ai-narrative-fails-to-lift-price/

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Turn lengthy earnings call transcripts into one-page insights using the Financial Modeling Prep APIPhoto by Bich Tran Earnings calls are packed with insights. They tell you how a company performed, what management expects in the future, and what analysts are worried about. The challenge is that these transcripts often stretch across dozens of pages, making it tough to separate the key takeaways from the noise. With the right tools, you don’t need to spend hours reading every line. By combining the Financial Modeling Prep (FMP) API with Groq’s lightning-fast LLMs, you can transform any earnings call into a concise summary in seconds. The FMP API provides reliable access to complete transcripts, while Groq handles the heavy lifting of distilling them into clear, actionable highlights. In this article, we’ll build a Python workflow that brings these two together. You’ll see how to fetch transcripts for any stock, prepare the text, and instantly generate a one-page summary. 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