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Ledger CEO: The collapse of banks is a ‘crash course to Bitcoin’ | PBW 2023

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Ledger CEO Pascal Gauthier said that anyone trying to centralize crypto will fail, saying that centralization and crypto are “two magnets that’s just not going to stick together.”

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Bitcoin 'short squeeze' or $87K dip next? BTC price predictions vary

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Key points:

Bitcoin is setting up a showdown with leveraged shorts immediately above its yearly open price.

That key level near $93,500 is the main target for traders hoping that BTC/USD will cement its latest breakout.

The next support retest could involve $87,000, analysis suggests.

Bitcoin (BTC) consolidated below a key resistance target on April 24 as a BTC price forecast brought sub-$90,000 levels into play.

BTC/USD 1-hour chart. Source: Cointelegraph/TradingView

Analyst: BTC price correction “fairly normal”

Data from Cointelegraph Markets Pro and TradingView showed BTC/USD retesting $92,000 as support overnight.

The pair broadly maintained six-week highs while global markets remained at a loss over the trajectory of the ongoing US trade war.

“The market is now up over +1% on the day on no news at all,” trading resource The Kobeissi Letter summarized alongside a chart of the S&P 500 in part of its latest analysis on X.

“As we have seen multiple times this year, it almost feels like someone is front-running something right now. We expect to see some sort of bullish announcement soon.”S&P 500 4-hour chart. Source: Cointelegraph/TradingView

Bitcoin continued to brush off news events, leaving volatility to equities, while gold attempted to stabilize after slipping from record highs earlier in the week.

“Fairly normal to have a slight correction here on Bitcoin as it’s just had a massive breakout,” crypto trader, analyst and entrepreneur Michaël van de Poppe told X followers on the day.

“Buyers likely going to step in and then we’ll be continuing our path towards a new ATH.”BTC/USDT 12-hour chart with RSI data. Source: Michaël van de Poppe/X

Others increasingly entertained the idea of a deeper correction following brisk gains for BTC/USD, potentially taking the market back below the $90,000 mark.

“A dip to 88k would be lovely,” popular trader Inmortal argued. 

A dip to 88k would be lovely.

If the market gives it, I will probably play one of these two setups, or both.$BTC pic.twitter.com/ysqiheds7X

— Inmortal (@inmortalcrypto) April 24, 2025

Trader and analyst Rekt Capital had a similar conception of the potential support retest move.

BTC price action, he observed, was closely copying behavior from the middle of its previous bull market in 2021.

“Part of Bitcoin continuing to repeat mid-2021 price tendencies relative to the Bull Market EMAs would be a dip into the $87000 (green EMA) level for a post-breakout retest, if at all needed,” he commented on a weekly chart showing two exponential moving averages (EMAs).

“Depends on how BTC Weekly Closes relative to $93500.”BTC/USD 1-week chart. Source: Rekt Capital/X

Bitcoin bulls seek leveraged shorts wipeout

The main target for bulls thus remained the yearly open level just above $93,000, one which remained intact as resistance at the time of writing.

Related: Bitcoin exchange outflows mimic 2023 as whales buy retail ‘panic’

This coincided with a block of potential liquidation levels on exchange order books, providing fertile conditions for a “short squeeze” should price attack them.

$BTC Liquidation heatmap shows that liquidity of leveraged positions is building up on both sides.
Leveraged longs mainly around $91,400.
Leveraged shorts around $93,500-$94,500. pic.twitter.com/d2jCyO2FdC

— chad. (@chad_ventures) April 24, 2025

The latest data from monitoring resource CoinGlass showed the largest concentration of liquidation leverage centered around $93,600.

Earlier, Cointelegraph reported on a large trading entity dubbed “Spoofy the Whale” removing a wall of asks at $90,000.

BTC liquidation leverage data. Source: CoinGlass

This article does not contain investment advice or recommendations. Every investment and trading move involves risk, and readers should conduct their own research when making a decision.

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Bitcoin supply on exchanges is falling ‘due to public company purchases’ — Fidelity

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Bitcoin reserves on cryptocurrency exchanges have dropped to their lowest level in more than six years, as publicly traded companies ramp up their accumulation of the digital asset following the US presidential election, according to Fidelity Digital Assets. 

“We have seen Bitcoin supply on exchanges dropping due to public company purchases — something we anticipate accelerating in the near future,” Fidelity reported on the X social media platform.

Source: Fidelity Digital Assets

Fidelity said the supply of Bitcoin (BTC) on exchanges had fallen to roughly 2.6 million BTC, the lowest since November 2018. More than 425,000 BTC have moved off exchanges since November, a trend often viewed as a signal of long-term investment rather than short-term trading.

Over the same period, publicly-traded companies acquired nearly 350,000 BTC, Fidelity said.

Fidelity Digital Assets is a subsidiary of Fidelity Investments, the $5.8 trillion asset manager headquartered in Boston, Massachusetts. The Fidelity Digital subsidiary was established in 2018, long before cryptocurrency was considered an institutional asset class. 

Fidelity is the issuer of the Fidelity Wise Origin Bitcoin Fund, one of the first 11 spot Bitcoin exchange-traded funds approved in the United States.

Related: Bitcoin exchange buying is back as ‘Spoofy the Whale’ lifts $90K asks

Strategy dominates public company purchases

While Fidelity noted significant corporate Bitcoin purchases, most of the accumulation has been driven by Strategy, the business intelligence firm-turned-Bitcoin bank co-founded by Michael Saylor.

Since November, Strategy has acquired 285,980 BTC, accounting for 81% of the approximately 350,000 BTC purchased by publicly traded companies.

A snapshot of some of Strategy’s Bitcoin purchases over the past six months. Source: Strategy

Strategy’s latest purchase of 6,556 BTC was disclosed on April 21. 

Outside the United States, publicly traded companies in Asia have adopted a similar Bitcoin treasury strategy, with Japan’s Metaplanet and Hong Kong’s HK Asia Holdings increasing their Bitcoin allocations

Metaplanet currently holds 5,000 BTC, with CEO Simon Gerovich saying his goal is to double that amount this year.

Meanwhile, HK Asia Holdings announced plans to raise roughly $8.35 million to potentially increase its Bitcoin reserves. 

Magazine: Altcoin season to hit in Q2? Mantra’s plan to win trust: Hodler’s Digest, April 13 – 19

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How to set up and use AI-powered crypto trading bots

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Key takeaways

AI-powered crypto trading bots use machine learning to make smarter, faster trading decisions — without emotions.

Setting up a bot involves choosing a platform, connecting your exchange, configuring strategies and running backtests.

Bots can run 24/7, react to data instantly and are ideal for passive income seekers and active traders.

While powerful, they’re not “set-it-and-forget-it” tools. You’ll need to monitor performance and tweak strategies over time.

Understanding your goals (long-term investing, day trading, etc.) helps you choose the right bot and strategy.

Crypto markets move fast and rarely sleep. That’s why AI-powered crypto trading bots are no longer a novelty. These bots use machine learning to analyze data, identify patterns and execute trades in real time, often faster and with more discipline than human traders.

From beginners looking to automate simple strategies to professionals deploying predictive models, AI bots offer a scalable way to participate in volatile markets.

This guide explains how to build the best AI trading bots for crypto, how AI trading bots work, how to set them up correctly and what to avoid for long-term performance, not just short-term automation.

What are AI-powered crypto trading bots?

AI-powered crypto trading bots are programs that automatically buy and sell crypto assets based on machine learning algorithms, rather than fixed rules. These bots ingest large volumes of historical and real-time data — price action, order book depth, volatility, even social sentiment — and use that information to detect opportunities.

Unlike traditional bots that act only when predefined conditions are met, AI bots can adjust dynamically. For example, a bot trained on past market behavior might delay execution during uncertain conditions or increase position sizing during high-confidence periods. This adaptability makes them particularly useful in high-frequency, volatile environments where speed and objectivity matter.

Advanced platforms like Freqtrade and Trality allow users to import custom-trained models, while others like Stoic by Cindicator use in-house quant research to automate portfolio balancing. The core advantage lies in their ability to reduce emotional trading and operate around the clock without fatigue.

How to set up an AI crypto trading bot

Getting started with an AI-powered crypto trading bot is easier than ever, especially with today’s user-friendly platforms. 

But behind the ease of clicking “Start” lies a setup process that determines whether the bot performs reliably or becomes a source of costly errors. Proper setup ensures alignment with market conditions, trading goals and risk tolerance.

Below are a few key points to bear in mind while setting up crypto trading bots:

Choose a platform that supports AI functionality. Tools like Freqtrade, Trality and Jesse AI allow importing machine learning models. Others like 3Commas, Pionex and Cryptohopper focus on user-friendly automation and visual strategy builders.

Connect the bot to an exchange using API keys. Security settings should always disable withdrawal permissions, enable 2FA and restrict access via IP whitelisting where possible.

Configure the strategy. This includes defining trade pairs, order sizes, stop-loss and take-profit rules, cooldowns and maximum concurrent positions. Some platforms support prebuilt logic, while others allow full scripting with Python.

Backtest the strategy using historical data. Platforms like 3Commas, Cryptohopper and Freqtrade support robust backtesting to measure risk-adjusted performance across different market phases.

Deploy in live conditions with minimal capital. Initial live testing should include real-time monitoring of execution logs, fill prices, slippage and fees. Alerts should be set for failed orders or drawdowns. Most bots support integrations with Telegram, Slack or email for notifications.

Choosing the right AI bot

Selecting the right AI-powered crypto trading bot is a foundational step toward building a sustainable, automated trading strategy

The decision should align with the desired strategy complexity, technical skill level, risk appetite and required exchange support. Bots differ not only in interface and pricing but also in how deeply they incorporate machine learning and adaptive logic.

Some bots, like Pionex and Stoic by Cindicator, prioritize simplicity and automation with minimal configuration, targeting users who prefer passive execution or prebuilt strategies. 

Others, such as Freqtrade, Trality and Jesse AI, offer full control, deep customization and support for importing externally trained AI models — catering to users with programming experience or quantitative backgrounds.

Strategy fit: Pionex and Bitsgap could be ideal for grid and dollar-cost-averaging (DCA) strategies. For trend-based or breakout strategies, 3Commas supports custom logic with popular indicators. Freqtrade and Jesse AI are best for those building predictive models with Python.

Level of AI support: Some bots like Stoic by Cindicator use built-in quant models. Others like Trality and Freqtrade allow importing externally trained machine learning models for advanced control.

User experience: No-code users can explore platforms like Cryptohopper and Kryll. Intermediate users often prefer 3Commas. Developers will benefit from Trality’s Python IDE or Freqtrade’s scripting interface.

Exchange compatibility: Most bots support Binance, Kraken, KuCoin, Coinbase and Bybit. Platforms such as 3Commas and Bitsgap offer multi-exchange support and are especially popular among copy-trading users, allowing them to mirror professional strategies across multiple accounts in real time.

Backtesting capabilities: Trality, Cryptohopper and 3Commas include visual backtesting. Jesse AI and Freqtrade offer deeper simulations with latency and slippage modeling.

Security features: Look for bots with encrypted API key storage, IP whitelisting and two-factor authentication. These are standard on 3Commas and Trality.

Pricing models: Pionex is free to use. Platforms like 3Commas and Trality run on subscriptions. Freqtrade and Jesse AI are open-source but require technical setup.

Common mistakes while using AI bots and how to avoid them

Despite the availability of powerful AI tools, some mistakes still lead to poor outcomes. These errors typically arise from misconfiguration, over-optimization or lack of oversight.

Overfitting backtests: Many bots look great on paper but fail when they go live. Use walk-forward testing and avoid strategies that only succeed in past conditions.

Relying on marketplace bots: Marketplace strategies from platforms like Kryll or Cryptohopper often lack adaptability. Always test and tweak before deployment.

Weak risk controls: Skipping stop-losses or using oversized positions can wipe out capital. Bots like Freqtrade and Trality let users define precise risk limits. Make sure to use them.

Ignoring trading costs: Backtests often ignore slippage and fees. Jesse AI and Freqtrade offer built-in tools to simulate these costs more accurately.

Lack of monitoring: Bots need regular checks. Platforms like 3Commas and Trality support real-time alerts for failed trades or sudden drawdowns.

Overleveraging: Using high leverage on exchanges like Bybit or Binance Futures (crypto derivative exchange) can lead to liquidation. Apply strict limits from the start.

Wrong market fit: DCA works well in declining markets; breakout bots don’t. Platforms like Stoic and Kryll offer filters or pause triggers to prevent misfires.

Avoiding these common errors requires thoughtful setup, continuous validation and disciplined risk controls. AI bots can enhance performance but require human oversight, strategic clarity, and technical awareness to deliver consistent results.

The future of crypto AI trading

AI crypto trading is entering a new phase where real-time learning replaces static strategy templates. Instead of relying on predefined signals, emerging trading systems use reinforcement learning and online model retraining to adapt continuously to shifting market dynamics. 

Platforms such as Freqtrade, combined with cloud-native tools like Google Vertex AI or AWS SageMaker, enable this shift by supporting pipelines that monitor live order books, price volatility and macroeconomic indicators to automatically refine decision-making thresholds during active trading.

A major evolution is the integration of large language models (LLMs) into trading workflows. Unlike traditional bots limited to charts and price data, LLM-enhanced agents interpret unstructured information — central bank statements, tokenomics updates, SEC filings or even Discord announcements — and convert it into actionable insights. 

Early implementations are emerging in institutional quant desks and experimental tools like Delphi AI and Kaito, which allow bots to pause or adjust positions based on narrative sentiment, regulatory shifts or reputational risk events in real time.

AI is also expanding its footprint onchain, with smart contract-based agents executing trades, managing liquidity and optimizing DeFi yield in a fully decentralized manner. 

Projects like Fetch.ai are developing AI agents that operate autonomously across protocols without human intervention. These agents interact directly with AMMs, lending pools and governance protocols, ushering in an era where the lines between algorithmic trading, protocol participation and AI reasoning are entirely blurred within the blockchain itself.

This article does not contain investment advice or recommendations. Every investment and trading move involves risk, and readers should conduct their own research when making a decision.

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