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TRX outperforms BTC as Tron Inc continues to accumulate the token

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TRX cryptocurrency coin displayed on a trading desk with stacked coins and digital market charts in the background.
TRX cryptocurrency coin displayed on a trading desk with stacked coins and digital market charts in the background.
  • Tron (TRX) outperforms Bitcoin (BTC) despite recent market volatility.
  • Tron Inc. keeps accumulating TRX, boosting token support.
  • Key resistance for Tron sits at $0.2846 while the immediate support is at $0.2758.

Of late, Tron (TRX) has demonstrated remarkable resilience in the volatile cryptocurrency market.

Despite overall market weakness, TRX has outperformed Bitcoin over the past few weeks.

The token has only seen a modest decline of around 2.3% in the past 24 hours, compared to Bitcoin’s sharper drop of 7.3%.

At press time, TRX traded at approximately $0.2797, maintaining a stable position within its 24-hour range of $0.2799 to $0.2868.

This strong performance is closely linked to the continued accumulation strategy by Tron Inc., the company behind the TRX ecosystem.

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Tron Inc.’s strategic TRX purchases

Tron Inc., a Nasdaq-listed firm focused on crypto treasury strategies, has been actively increasing its TRX holdings in recent months.

The company’s treasury currently holds nearly 680 million TRX tokens after recent purchases amounting to around 175,000 TRX (worth approximately $49,000).

Notably, Justin Sun, the founder of Tron, has publicly endorsed the company’s buy-the-dip strategy, encouraging continued accumulation.

Tron Inc.’s approach mirrors strategies seen in other corporate crypto treasuries, such as MicroStrategy’s Bitcoin holdings.

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By holding TRX as a core asset, Tron Inc. signals long-term confidence in the token and the broader Tron ecosystem.

The accumulation also serves as a stabilizing factor, providing underlying support to TRX during periods of market volatility.

TRX technical outlook and the key levels to watch

From a technical perspective, TRX faces important resistance and support levels.

The first major resistance, according to analysts, is at $0.2846, which, if broken, could push the token toward $0.2944.

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The third resistance level lies at $0.3012, offering a potential upside target for bullish traders.

On the downside, TRX must maintain support at $0.2758 to avoid further decline.

Technical indicators, however, signal a possible continuation of the current bearish trend with TRX currently below its 50-day and 200-day EMAs, reflecting short-term bearish momentum.

The MACD also remains on the negative side, and the RSI is hovering near 35, indicating persistent selling pressure.

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A drop below this level could see the token fall to the next support near $0.2635.

However, the strong accumulation by Tron Inc. provides a stabilizing force, which could help the token recover and surpass resistance levels.

Market sentiment

Market sentiment for TRX remains cautiously optimistic.

Even though the token has slipped for several consecutive days, the accumulation trend suggests institutional confidence.

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Derivatives data show negative funding rates, implying that traders are willing to pay to hold short positions.

Tron funding rate chart
Source: Coinglass

Futures open interest has slightly declined, signaling reduced speculative activity.

This environment may allow TRX to consolidate before attempting another upward move.

Analysts suggest that maintaining above $0.2758 is critical for short-term momentum.

Breaking above $0.2846 could reignite bullish sentiment, while failure to hold support may trigger deeper corrections.

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Overall, TRX’s relative outperformance against Bitcoin, combined with Tron Inc.’s treasury strategy, points to a token with strong institutional backing.

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Fidelity Launches Digital Dollar Stablecoin FIDD

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Crypto Breaking News

Fidelity Investments has entered the stablecoin market with the launch of Fidelity Digital Dollar (FIDD), marking a significant step by one of the world’s largest asset managers into on-chain dollar instruments. Announced on February 4, 2026, the new stablecoin is issued by Fidelity Digital Assets, National Association, and is available to both retail and institutional clients. Each token is redeemable at a 1:1 ratio with the U.S. dollar, positioning FIDD as a regulated, institutionally managed alternative in a stablecoin market that now exceeds $316 billion in total capitalization.

Key takeaways

  • Fidelity has launched its first U.S. dollar-backed stablecoin, Fidelity Digital Dollar (FIDD), available to retail and institutional clients.
  • FIDD can be purchased or redeemed directly through Fidelity platforms at a fixed rate of $1 per token.
  • Reserve assets are managed internally, leveraging Fidelity’s long-standing asset management infrastructure.
  • The stablecoin operates on the Ethereum mainnet and can be transferred to any compatible address.
  • Daily disclosures provide transparency on circulating supply and reserve net asset value.
  • The launch follows new U.S. regulatory clarity for payment stablecoins.

Sentiment: Neutral

Market context: The launch comes as regulatory clarity in the United States improves and traditional financial institutions increase their participation in tokenized cash, custody, and blockchain-based settlement infrastructure.

Why it matters

Fidelity’s move into stablecoin issuance signals a broader shift in how traditional asset managers approach blockchain-based financial infrastructure. Rather than relying solely on third-party stablecoins, Fidelity is now offering a proprietary digital dollar backed by its own balance sheet processes and operational standards.

For institutional investors, the availability of a stablecoin issued and managed by a globally recognized financial institution may reduce counterparty concerns that have historically limited stablecoin adoption in regulated environments. Retail users, meanwhile, gain access to an on-chain dollar that integrates directly with existing Fidelity platforms.

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More broadly, the launch highlights how stablecoins are increasingly viewed as foundational financial plumbing rather than speculative crypto assets. As asset managers, banks, and payment firms adopt similar models, competition may shift toward transparency, reserve management, and regulatory alignment.

What to watch next

  • Whether FIDD expands beyond Ethereum to additional blockchain networks.
  • Potential exchange listings and liquidity growth outside Fidelity platforms.
  • Regulatory reporting standards applied to Fidelity-issued stablecoins.
  • Adoption by wealth managers and institutional treasury operations.

Sources & verification

  • Fidelity’s official announcement dated February 4, 2026.
  • Daily reserve and supply disclosures published on Fidelity’s website.
  • Statements from Fidelity Digital Assets leadership regarding regulatory alignment.

Fidelity Digital Dollar enters the regulated stablecoin landscape

Fidelity Investments’ decision to issue a proprietary stablecoin represents a notable evolution in the firm’s digital asset strategy. The new token, Fidelity Digital Dollar (FIDD), is designed to function as a blockchain-based representation of the U.S. dollar while remaining closely integrated with Fidelity’s existing financial infrastructure.

Issued by Fidelity Digital Assets, National Association, FIDD is available to eligible retail and institutional investors through Fidelity Digital Assets, Fidelity Crypto, and Fidelity Crypto for Wealth Managers. Clients can purchase or redeem the stablecoin directly with Fidelity at a fixed price of one U.S. dollar per token, a structure intended to mirror the operational simplicity of traditional cash balances.

Unlike many stablecoins that rely on external reserve managers or opaque custodial arrangements, FIDD’s reserve assets are managed by Fidelity Management & Research Company LLC. This internal structure allows Fidelity to apply the same portfolio oversight, risk controls, and compliance standards used across its traditional asset management business.

Transparency is a central component of the product’s design. Fidelity publishes daily disclosures detailing FIDD’s circulating supply and the net asset value of its reserves as of each business day’s close. This approach aligns with growing regulatory expectations for stablecoin issuers and aims to address long-standing concerns around reserve sufficiency and disclosure practices in the sector.

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From a technical perspective, FIDD is issued on the Ethereum mainnet, enabling holders to transfer tokens to any compatible Ethereum address. This design choice allows the stablecoin to integrate with existing decentralized finance infrastructure while remaining accessible through centralized platforms.

Fidelity Digital Assets President Mike O’Reilly described the launch as the result of years of internal research into stablecoins and blockchain-based financial systems. According to the firm, the goal is to provide investors with on-chain utility without sacrificing the stability and operational rigor associated with traditional financial products.

The timing of the launch is closely tied to regulatory developments in the United States. Recent legislation establishing clearer rules for payment stablecoins has reduced legal uncertainty for large financial institutions considering issuance. Fidelity has positioned FIDD as a response to this evolving framework, emphasizing compliance and investor protection alongside technological innovation.

Stablecoins have become a critical component of digital asset markets, facilitating trading, settlement, and cross-border transfers. With total market capitalization now exceeding $316 billion, the sector has attracted increasing scrutiny from regulators and policymakers. Fidelity’s entry reflects a broader trend of established financial firms seeking to bring stablecoin activity within regulated, institutionally managed environments.

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Fidelity’s broader digital asset strategy provides important context for the move. The firm has been building blockchain-related infrastructure since 2014, long before digital assets became mainstream. Its offerings now include custody, trading, research, and investment products tailored to institutional clients, intermediaries, and retail investors.

By adding a proprietary stablecoin to this lineup, Fidelity is effectively extending its ecosystem into on-chain cash management. For wealth managers and institutional clients already using Fidelity’s digital asset services, FIDD may serve as a settlement layer that reduces reliance on external stablecoin issuers.

The launch also raises questions about how competition in the stablecoin market may evolve. As more traditional financial institutions issue their own tokens, differentiation may increasingly depend on regulatory status, transparency, and integration with existing financial services rather than yield incentives or aggressive growth strategies.

While Fidelity has not disclosed immediate plans for expanding FIDD beyond Ethereum or adding advanced programmable features, the infrastructure chosen leaves room for future development. Potential use cases could include on-chain settlement for tokenized securities, collateral management, or integration with institutional payment systems.

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For now, Fidelity Digital Dollar stands as a signal that stablecoins are moving deeper into the core of traditional finance. Rather than operating at the margins of the financial system, regulated digital dollars issued by major asset managers may become standard tools for both crypto-native and traditional investors navigating an increasingly hybrid financial landscape.

Risk & affiliate notice: Crypto assets are volatile and capital is at risk. This article may contain affiliate links. Read full disclosure

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How to Choose the Right AI Development Partner for Enterprises in 2026

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Core Criteria for Selecting an AI Development Partner

Key Takeaways:

  • Enterprises need production-ready, scalable AI systems to drive real business impact.
  • Clarify business problems, workflows, and success metrics before choosing a partner.
  • Look for technical expertise, domain knowledge, and co-development capabilities.
  • Ensure data protection, governance, and ongoing support are built in.
  • Evaluate use cases, conduct technical assessments, run PoCs, and finalize IP and support models.

The landscape of enterprise technology has shifted. In 2026, artificial intelligence is no longer an experimental feature; it is the core engine of corporate strategy. According to Gartner, by 2026, more than 80% of enterprises will have moved from basic generative AI pilots to production-grade systems, including multi-agent architectures and domain-specific models.

As the global AI market is projected to reach $312 billion in 2026, the pressure to choose a capable AI development partner has never been higher. This guide provides a strategic framework for identifying, evaluating, and onboarding the right AI development company to lead your digital transformation.

Understanding Your AI Requirements Before Engaging a Partner

Before evaluating any AI development company, enterprises must clearly define their internal objectives and constraints. As AI systems become more complex, success increasingly depends on aligning technical architecture with measurable business outcomes.

1. Clarify the Business Problem

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Enterprises should begin by identifying the exact problem AI is expected to solve. This may include reducing operational inefficiencies, improving decision accuracy, automating high-volume workflows, or enabling new revenue models. Leading organizations are shifting away from bottom-up experimentation toward targeted, high-impact transformations aligned with strategic priorities.

2. Identify the Type of AI Solution Required

Different business goals require different AI approaches. Common enterprise-grade solutions in 2026 include:

  • Multi-Agent Systems (MAS): Autonomous agents that collaborate to execute complex, multi-step workflows.
  • Domain-Specific Language Models (DSLMs): Models trained or fine-tuned on industry-specific data to improve reliability and contextual understanding.
  • Recommendation and Personalization Engines: AI systems that drive individualized experiences across marketing, sales, and digital platforms.

3. Define Success Metrics Early

Traditional metrics such as model accuracy are no longer sufficient. Enterprises increasingly track performance through operational and financial indicators, including decision latency reduction, inference cost relative to business value, risk mitigation, and employee productivity gains.

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Choose a Trusted AI Development Partner

The Enterprise AI Partner Landscape in 2026

The market for custom AI development services has matured and diversified. Selecting the right AI development partner depends heavily on an organization’s scale, regulatory environment, and technical maturity.

Common Types of AI Service Providers

  • Global Consulting Firms: Suitable for large-scale digital transformation initiatives, though often slower and more expensive to execute.
  • Niche AI Specialists: Strong in advanced R&D and complex model development but may face challenges scaling enterprise-wide deployments.
  • Product-Led AI Firms: Offer faster deployment using pre-built platforms, with potential limitations in customization and IP ownership.

1. Co-Development and IP Ownership

  • Global Consulting Firms: Suitable for large-scale digital transformation initiatives, though often slower and more expensive to execute.
  • Niche AI Specialists: Strong in advanced R&D and complex model development but may face challenges scaling enterprise-wide deployments.
  • Product-Led AI Firms: Offer faster deployment using pre-built platforms, with potential limitations in customization and IP ownership.

2. Co-Development and IP Ownership

Enterprises are increasingly favoring co-development models that allow them to build proprietary intellectual property alongside their AI solutions provider. This approach reduces dependency on vendor-controlled platforms and supports long-term strategic flexibility.

3. Local vs. Distributed Delivery Models

While distributed teams offer cost efficiencies, enterprises in regulated industries often prioritize providers with a strong regional presence to address data residency, compliance, and governance requirements.

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Core Criteria for Selecting an AI Development Partner

1. Technical Capability and Innovation

An enterprise AI development partner must demonstrate hands-on expertise with modern AI architectures, including agent-based systems, retrieval-augmented generation (RAG), and vector databases. Equally important is a commitment to continuous research and experimentation with evolving open-source and commercial AI frameworks.

2. Industry and Domain Knowledge

Domain familiarity significantly accelerates development timelines and reduces operational risk. Partners with experience in regulated industries such as finance, healthcare, or logistics are better equipped to handle domain-specific data structures, compliance obligations, and validation requirements.

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3. Collaboration and Delivery Model

AI development is inherently iterative. Enterprises should look for transparent governance structures, clearly defined roles across data science and engineering teams, and agile delivery processes that emphasize frequent validation over long development cycles.

4. Security, Compliance, and Governance

In 2026, AI security and governance are non-negotiable. A qualified AI solutions provider for enterprises must demonstrate adherence to regional regulations, provide explainability mechanisms, and maintain full data lineage across training and deployment pipelines.

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5. Pricing Structure and Long-Term ROI

Enterprise AI investments typically extend beyond initial development. Organizations should assess the total cost of ownership, including infrastructure usage, ongoing monitoring, retraining, and performance optimization. Flexible pricing models—such as dedicated teams or hybrid engagement structures—often provide better long-term value than rigid fixed-price contracts.

Core Criteria for Selecting an AI Development Partner

A Step-by-Step Enterprise AI Partner Selection Process

Step 1: Identify High-Value Use Cases

Rather than pursuing broad AI initiatives, enterprises should prioritize workflows where AI can deliver measurable operational impact. High-value use cases often involve decision automation, exception handling, or high-volume manual processes.

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Step 2: Design a Future-Ready RFP

Modern RFPs should assess more than cost and timelines. Enterprises should evaluate a partner’s MLOps maturity, approach to model monitoring, explainability frameworks, and ability to support agentic workflows.

Step 3: Conduct a Technical Deep Dive

Involving senior technical stakeholders is essential. Enterprises should assess architecture design, data handling strategies, and cloud-native deployment approaches to ensure scalability and avoid vendor lock-in.

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Step 4: Run a Production-Oriented PoC

A proof of concept should reflect real-world conditions. Using unrefined enterprise data allows organizations to evaluate a partner’s ability to manage data complexity, deliver reliable performance, and meet defined KPIs within a limited timeframe.

Step 5: Finalize Governance, IP, and Support Models

Before onboarding, enterprises should clearly define IP ownership, model maintenance responsibilities, performance SLAs, and post-deployment support mechanisms to ensure long-term alignment.

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A Step by Step Enterprise AI Patner selection Process

Critical Warning Signs When Evaluating an AI Development Partner

  • Unclear System Architecture: If a provider cannot clearly explain how their AI system works end to end—including data flow, decision logic, and integration points—it’s a sign the solution may not be production-ready.
  • No Plan for Post-Deployment Maintenance: AI models require continuous monitoring, retraining, and performance evaluation. A partner that treats deployment as the finish line is likely to deliver a system that degrades quickly over time.
  • Lack of Cost Transparency: Be cautious of vendors who provide high-level estimates without detailing infrastructure usage, cloud compute requirements, data preparation costs, or long-term operational expenses.
  • Generic or Reused Demonstrations: If the same demo or example is used across industries and use cases, it suggests limited customization capability. Enterprise AI solutions should be designed around specific business and domain requirements.
  • Limited Accountability After Delivery: A weak or undefined support model—such as unclear SLAs, response times, or ownership boundaries—can create operational risk once the solution is live.

Positive Indicators When Evaluating an AI Development Partner

  • Clearly Documented Development Processes: A strong AI development partner follows well-defined, repeatable frameworks for data ingestion, model training, validation, deployment, and monitoring. This signals maturity and reduces delivery risk.
  • Deep Focus on Data Quality and Validation: Instead of starting with tools or timelines, the right partner spends time understanding your data sources, data integrity, labeling standards, and validation methods. This focus on ground truth is critical for reliable AI outcomes.
  • Security Built into the Design Phase: Trusted enterprise AI partners address data protection, access controls, and model security early in the design process—often recommending secure execution environments and governance measures without being prompted.
  • Strong Alignment with Business Objectives: A capable AI development company consistently connects technical decisions to business impact, ensuring models are designed to support measurable outcomes rather than theoretical performance.
  • Clear Ownership and Long-Term Support Model: Reliable partners define responsibilities for maintenance, updates, monitoring, and issue resolution upfront, demonstrating accountability beyond initial delivery.
Build Future-Ready AI Solutions with Us

Building Long-Term AI Capability Through the Right Partnership

Choosing the right AI development partner is no longer just a procurement decision—it’s a strategic pivot. By 2026, the gap between AI leaders and laggards will be defined by the quality of their technical partnerships.

At Antier, we help enterprises build robust, scalable, and ethically grounded AI solutions. Whether you are looking for custom AI development services or need an enterprise AI solutions provider to overhaul your operations, our team is ready to bridge the gap between vision and production.

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Here’s Why Bitcoin Analysts Say BTC Market Has Entered “Full Capitulation”

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Here’s Why Bitcoin Analysts Say BTC Market Has Entered "Full Capitulation"

Bitcoin (BTC) sellers resumed their activity on Thursday as the BTC price dropped below $69,000, the lowest since Nov. 6, 2024.

Analysts said that Bitcoin showed signs of “full capitulation” and a potential bottom forming, due to extreme market fear, panic selling by short-term holders and the relative strength index (RSI).

Key takeaways:

  • Short-term Bitcoin holders have sold nearly 60,000 BTC in 24 hours.

  • The Crypto Fear & Greed index shows “extreme fear,” signaling a potential bottom.

  • Bitcoin’s “most oversold” RSI points to seller exhaustion.

BTC/USD daily chart. Source: Cointelegraph/TradingView

Short-term holder capitulation deepens

Nearly 60,000 BTC, worth about $4.2 billion at current rates, held by short-term holders (STHs), or investors who have held the asset for less than 155 days, were moved to exchanges at a loss over the last 24 hours, according to data from CryptoQuant.

This was the largest exchange inflow year-to-date, which is contributing to selling pressure.

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“The correction is so severe that no BTC in profit is being moved by LTHs,” CryptoQuant analyst Darkfost said in a post on X, adding:

“This is a full capitulation.”

Cryptocurrencies, Bitcoin Price, Markets, Price Analysis, Market Analysis
BTC short-term holder losses to exchanges in 24 Hours. Source: CryptoQuant

When analyzing the volume of coins spent at a loss, Glassnode found that the 7-day SMA of realized losses has risen above $1.26 billion per day.

This reflects a “marked increase in fear,” Glassnode said, adding:

“Historically, spikes in realized losses often coincide with moments of acute seller exhaustion, where marginal sell pressure begins to fade.”

Bitcoin: Unrealized loss. Source: Glassnode

Bitcoin’s capitulation metric has also “printed its second-largest spike in two years,” occurrences that have previously coincided with accelerated de-risking and elevated volatility as market participants reset positioning,” Glassnode said.

Capitulation Metric & Current Price. Source: Glassnode

“Extreme fear” could signal market bottom

The Crypto Fear & Greed Index, which measures overall crypto market sentiment, posted an “extreme fear” score of 12 on Thursday.

These levels were last seen on July 22, a few months before the BTC price bottomed at $15,500 and then embarked on a bull run.

Cryptocurrencies, Bitcoin Price, Markets, Price Analysis, Market Analysis
Crypto fear and greed index. Source: Alternative.me

Data reveals that in all capitulation events where the index hit this extreme level, short-term weakness was common, but almost every event produced a rebound.

“We are at an ‘extreme fear’ level with a Crypto Fear and Greed Index of 11,” said analyst Davie Satoshi in an X post on Thursday, adding:

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“History has shown this is the time to buy and accumulate more!”

Crypto sentiment platform Santiment said in an X post on Thursday that the investor sentiment has “​​turned extremely bearish toward Bitcoin.”

“This remains a strong argument for a short-term relief rally as long as the small trader crowd continues to show disbelief toward cryptocurrency as a whole.”

Bitcoin: Positive/negative sentiment ratio. Source: Santiment

Bitcoin “most oversold” RSI signals seller exhaustion

CoinGlass‘ heatmap shows that BTC’s RSI is displaying oversold conditions on five out of six time frames.

Bitcoin’s RSI is now at 18 on the 12-hour chart, 20 on the daily chart and 23 on the four-hour chart. Other intervals also display oversold or near-oversold RSI values, such as 30 and 31 on the weekly and hourly time frames, respectively. 

Cryptocurrencies, Bitcoin Price, Markets, Price Analysis, Market Analysis
Crypto market RSI heatmap. Source: Coinglass

In fact, data from TradingView shows that the weekly RSI is at 29 on Thursday, the “most oversold” since the 2022 bear market, according to analysts. 

“Bitcoin is now the MOST oversold since the FTX crash,” CryptoXLARGE said in an X post on Wednesday, adding that it reflects panic selling among investors.

“Historically, this is where fear peaks and opportunity begins,” the analyst added.

Source: X/CryptoXLARGE

Bitcoin’s RSI is at the same oversold levels last seen around $16K in 2022, which marked the “last major capitulation,” phase, said analyst HodlFM in a recent post on X, adding:

“Not a timing signal by itself, but historically, this is where risk/reward favors the buyers.”