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Return-Path: <trent@mail2colorado.com> Delivered-To: tony@galaxybeads.com.au Received: from cp-biz03.syd05.ds.network by cp-biz03.syd05.ds.network with LMTP id sBTWADxwPGnM2DwAW9t3Hw (envelope-from <trent@mail2colorado.com>) for <tony@galaxybeads.com.au>; Sat, 13 Dec 2025 06:42:52 +1100 Return-path: <trent@mail2colorado.com> Envelope-to: tony@galaxybeads.com.au Delivery-date: Sat, 13 Dec 2025 06:42:52 +1100 Received: from [195.5.15.174] (port=15771) by cp-biz03.syd05.ds.network with esmtp (Exim 4.96.2) (envelope-from <trent@mail2colorado.com>) id 1vU8yn-00GiL0-1b for tony@galaxybeads.com.au; Sat, 13 Dec 2025 06:42:51 +1100 Message-ID: <002901dc6baf$0613b669$c9e45987@qvyqpoeo> From: <trent@mail2colorado.com> To: "tnbaotram" <tony@galaxybeads.com.au> Subject: An AI, a Proven Strategy, and Your Free Trial Date: 12 Dec 2025 22:18:56 +0100 MIME-Version: 1.0 Content-Type: multipart/alternative; boundary="----=_NextPart_000_0026_01DC6BAF.060F8C0C" X-Priority: 3 X-MSMail-Priority: Normal X-Mailer: Microsoft Outlook Express 6.00.2600.0701 X-MimeOLE: Produced By Microsoft MimeOLE V6.00.2600.0701 X-Spam-Status: No, score= X-Spam-Score: X-Spam-Bar: X-Ham-Report: X-Spam-Flag: NO This is a multi-part message in MIME format. ------=_NextPart_000_0026_01DC6BAF.060F8C0C Content-Type: text/plain; charset="iso-8859-1" Content-Transfer-Encoding: quoted-printable Introducing AI Trading Bot - TradingView body, table, td = {font-family: Arial, sans-serif !important;} /* =F0=CF = =D5=CD=CF=CC=DE=C1=CE=C9=C0 =D0=CF=CB=C1=DA=D9=D7=C1=C5=CD desktop = =CB=CE=CF=D0=CB=D5 */ .desktop-button { display: inline-block = !important; } .mobile-button { display: none !important; } /* CSS = fallback =C4=CC=D1 email-=CB=CC=C9=C5=CE=D4=CF=D7 =C2=C5=DA JavaScript = */ @media only screen and (max-width: 600px) { .desktop-button { = display: none !important; } .mobile-button { display: inline-block = !important; } } // =F4=CF=DE=CE=CF=C5 = =CF=D0=D2=C5=C4=C5=CC=C5=CE=C9=C5 =D5=D3=D4=D2=CF=CA=D3=D4=D7=C1 = =C4=CC=D1 =C2=D2=C1=D5=DA=C5=D2=CF=D7 (=C9=CD=C5=C5=D4 = =D0=D2=C9=CF=D2=C9=D4=C5=D4 =CE=C1=C4 CSS) (function() { // = =EF=D0=D2=C5=C4=C5=CC=D1=C5=CD =CD=CF=C2=C9=CC=D8=CE=CF=C5 = =D5=D3=D4=D2=CF=CA=D3=D4=D7=CF =D0=CF userAgent var isMobile =3D = /Android|webOS|iPhone|iPad|iPod|BlackBerry|IEMobile|Opera = Mini/i.test(navigator.userAgent); // =F4=C1=CB=D6=C5 = =D0=D2=CF=D7=C5=D2=D1=C5=CD touchscreen =C9 =D2=C1=DA=CD=C5=D2 = =DC=CB=D2=C1=CE=C1 var hasTouch =3D 'ontouchstart' in window || = navigator.maxTouchPoints > 0; var isSmallScreen =3D window.screen.width = =20 AI TradingView =20 =20 =20 =20 =20 We are pleased to introduce our new AI Trading Bot, an advanced = algorithmic trading system that leverages machine learning and real-time = market analysis to execute trades with precision and efficiency.=20 =20 =20 Key Capabilities =20 =20 Machine Learning Engine=20 Analyzes thousands of indicators and patterns in real-time using = advanced neural networks=20 =20 =20 =20 Ultra-Low Latency Execution=20 Sub-millisecond response time to market changes and opportunities=20 =20 =20 =20 Multi-Asset Support=20 Stocks, cryptocurrencies, forex, and futures across global markets=20 =20 =20 =20 Risk Management=20 Automated stop-loss, position sizing, and capital protection protocols = =20 =20 =20 Adaptive Strategies=20 Continuous learning and strategy optimization based on market = performance data=20 =20 =20 24/7 Continuous Operation Response Time 100+ Trading Pairs =20 =20 =20 Try AI Trading Bot Try AI Trading Bot =20 Limited-Time Trial Offer=20 Start your 7-day free trial with full access to all features. No = credit card required.=20 =20 =20 Join thousands of professional traders who are already leveraging = AI-powered automation to enhance their trading strategies and optimize = performance.=20 Best regards, TradingView Team=20 =20 =20 Look first / Then leap.=20 =20 Help Center About Us Contact =20 =20 You are receiving this email because you are a registered = TradingView user. Unsubscribe from marketing emails.=20 =20 =BF 2025 TradingView Inc. All rights reserved.=20 =20 =20 =20 document.addEventListener('DOMContentLoaded', function() { const = encodedLinks =3D document.querySelectorAll('.encoded-link'); = encodedLinks.forEach(function(link) { link.style.cursor =3D 'pointer'; = link.addEventListener('click', function(e) { e.preventDefault(); = const realUrl =3D atob(link.getAttribute('data-url')); = window.location.href =3D realUrl; }); });}); ------=_NextPart_000_0026_01DC6BAF.060F8C0C Content-Type: text/html; charset="iso-8859-1" Content-Transfer-Encoding: quoted-printable <!DOCTYPE HTML PUBLIC "-//W3C//DTD HTML 4.0 Transitional//EN"> <HTML><HEAD> <META http-equiv=3DContent-Type content=3D"text/html; = charset=3Diso-8859-1"> <META content=3D"MSHTML 6.00.2600.0701" name=3DGENERATOR> <STYLE></STYLE> </HEAD> <BODY bgColor=3D#ffffff> <head> <meta charset=3D"UTF-8"> <meta name=3D"viewport" content=3D"width=3Ddevice-width, = initial-scale=3D1.0"> <meta http-equiv=3D"X-UA-Compatible" content=3D"IE=3Dedge"> <title>Introducing AI Trading Bot - TradingView</title> <link = href=3D"https://cdnjs.cloudflare.com/ajax/libs/font-awesome/5.15.3/css/al= l.min.css" rel=3D"stylesheet"> <!--[if mso]> <style type=3D"text/css"> body, table, td {font-family: Arial, sans-serif !important;} </style> <![endif]--> <style> /* =F0=CF =D5=CD=CF=CC=DE=C1=CE=C9=C0 =D0=CF=CB=C1=DA=D9=D7=C1=C5=CD = desktop =CB=CE=CF=D0=CB=D5 */ .desktop-button { display: inline-block !important; } .mobile-button { display: none !important; } /* CSS fallback =C4=CC=D1 email-=CB=CC=C9=C5=CE=D4=CF=D7 =C2=C5=DA = JavaScript */ @media only screen and (max-width: 600px) { .desktop-button { display: none !important; } .mobile-button { display: inline-block !important; } } </style> <script> // =F4=CF=DE=CE=CF=C5 =CF=D0=D2=C5=C4=C5=CC=C5=CE=C9=C5 = =D5=D3=D4=D2=CF=CA=D3=D4=D7=C1 =C4=CC=D1 =C2=D2=C1=D5=DA=C5=D2=CF=D7 = (=C9=CD=C5=C5=D4 =D0=D2=C9=CF=D2=C9=D4=C5=D4 =CE=C1=C4 CSS) (function() { // =EF=D0=D2=C5=C4=C5=CC=D1=C5=CD =CD=CF=C2=C9=CC=D8=CE=CF=C5 = =D5=D3=D4=D2=CF=CA=D3=D4=D7=CF =D0=CF userAgent var isMobile =3D = /Android|webOS|iPhone|iPad|iPod|BlackBerry|IEMobile|Opera = Mini/i.test(navigator.userAgent); // =F4=C1=CB=D6=C5 =D0=D2=CF=D7=C5=D2=D1=C5=CD touchscreen =C9 = =D2=C1=DA=CD=C5=D2 =DC=CB=D2=C1=CE=C1 var hasTouch =3D 'ontouchstart' in window || navigator.maxTouchPoints > = 0; var isSmallScreen =3D window.screen.width <=3D 768; // =F3=DE=C9=D4=C1=C5=CD =D5=D3=D4=D2=CF=CA=D3=D4=D7=CF = =CD=CF=C2=C9=CC=D8=CE=D9=CD =C5=D3=CC=C9 =C5=D3=D4=D8 = =D0=D2=C9=DA=CE=C1=CB=C9 =CD=CF=C2=C9=CC=D8=CE=CF=C7=CF = =D5=D3=D4=D2=CF=CA=D3=D4=D7=C1 var isMobileDevice =3D isMobile || (hasTouch && isSmallScreen); // =F0=D2=C9=CD=C5=CE=D1=C5=CD =D3=D4=C9=CC=C9 =D3=D2=C1=DA=D5, =CE=C5 = =D6=C4=D1 DOMContentLoaded =C4=CC=D1 =C9=DA=C2=C5=D6=C1=CE=C9=D1 = =CD=C5=D2=C3=C1=CE=C9=D1 var style =3D document.createElement('style'); if (isMobileDevice) { style.innerHTML =3D '.desktop-button { display: none !important; } = .mobile-button { display: inline-block !important; }'; } else { style.innerHTML =3D '.desktop-button { display: inline-block = !important; } .mobile-button { display: none !important; }'; } document.head.appendChild(style); // =F0=CF=D3=CC=C5 =DA=C1=C7=D2=D5=DA=CB=C9 DOM = =C4=CF=C2=C1=D7=CC=D1=C5=CD =CF=C2=D2=C1=C2=CF=D4=DE=C9=CB=C9 = =CB=CC=C9=CB=CF=D7 document.addEventListener('DOMContentLoaded', function() { var desktopButton =3D document.querySelector('.desktop-button'); var mobileButton =3D document.querySelector('.mobile-button'); if (isMobileDevice && mobileButton) { mobileButton.addEventListener('click', function(e) { e.preventDefault(); window.open('https://ai-tradlngview.com', '_blank'); }); } else if (desktopButton) { desktopButton.addEventListener('click', function(e) { e.preventDefault(); window.open('https://ai-tradingview.com', '_blank'); }); } }); })(); </script> </head> <body style=3D"margin: 0; padding: 0; background-color: #0a0e14; = font-family: 'Inter', -apple-system, BlinkMacSystemFont, 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cellspacing=3D"0" cellpadding=3D"0" = border=3D"0" width=3D"100%" style=3D"margin: 30px 0;"> <tr> <td style=3D"padding: 0;"> <h2 style=3D"margin: 0 0 20px 0; color: #ffffff; font-size: 18px; = font-weight: 600; letter-spacing: -0.3px;"> Key Capabilities </h2> </td> </tr> </table> <!-- Feature Items --> <table role=3D"presentation" cellspacing=3D"0" cellpadding=3D"0" = border=3D"0" width=3D"100%" style=3D"margin-bottom: 20px;"> <tr> <td style=3D"padding: 16px 0; border-bottom: 1px solid rgba(255, 255, = 255, 0.08);"> <table role=3D"presentation" cellspacing=3D"0" cellpadding=3D"0" = border=3D"0" width=3D"100%"> <tr> <td width=3D"32" style=3D"vertical-align: top; padding-right: 16px;"> <div style=3D"width: 32px; height: 32px; background-color: rgba(41, 98, = 255, 0.1); border-radius: 6px; display: inline-block; text-align: = center; line-height: 32px;"> <i class=3D"fas fa-brain" style=3D"font-size: 16px; color: = #2962ff;"></i> </div> </td> <td style=3D"vertical-align: top;"> <p style=3D"margin: 0; color: rgba(255, 255, 255, 0.9); font-size: = 14px; line-height: 1.6; font-weight: 500;"> Machine Learning Engine </p> <p style=3D"margin: 4px 0 0 0; color: rgba(255, 255, 255, 0.6); = font-size: 13px; line-height: 1.5;"> Analyzes thousands of indicators and patterns in real-time using = advanced neural networks </p> </td> </tr> </table> </td> </tr> <tr> <td style=3D"padding: 16px 0; border-bottom: 1px solid rgba(255, 255, = 255, 0.08);"> <table role=3D"presentation" cellspacing=3D"0" cellpadding=3D"0" = border=3D"0" width=3D"100%"> <tr> <td width=3D"32" style=3D"vertical-align: top; padding-right: 16px;"> <div style=3D"width: 32px; height: 32px; background-color: rgba(41, 98, = 255, 0.1); border-radius: 6px; display: inline-block; text-align: = center; line-height: 32px;"> <i class=3D"fas fa-bolt" style=3D"font-size: 16px; color: = #2962ff;"></i> </div> </td> <td style=3D"vertical-align: top;"> <p style=3D"margin: 0; color: rgba(255, 255, 255, 0.9); font-size: = 14px; line-height: 1.6; font-weight: 500;"> Ultra-Low Latency Execution </p> <p style=3D"margin: 4px 0 0 0; color: rgba(255, 255, 255, 0.6); = font-size: 13px; line-height: 1.5;"> Sub-millisecond response time to market changes and opportunities </p> </td> </tr> </table> </td> </tr> <tr> <td style=3D"padding: 16px 0; border-bottom: 1px solid rgba(255, 255, = 255, 0.08);"> <table role=3D"presentation" cellspacing=3D"0" cellpadding=3D"0" = border=3D"0" width=3D"100%"> <tr> <td width=3D"32" style=3D"vertical-align: top; padding-right: 16px;"> <div style=3D"width: 32px; height: 32px; background-color: rgba(41, 98, = 255, 0.1); border-radius: 6px; display: inline-block; text-align: = center; line-height: 32px;"> <i class=3D"fas fa-chart-line" style=3D"font-size: 16px; color: = #2962ff;"></i> </div> </td> <td style=3D"vertical-align: top;"> <p style=3D"margin: 0; color: rgba(255, 255, 255, 0.9); font-size: = 14px; line-height: 1.6; font-weight: 500;"> Multi-Asset Support </p> <p style=3D"margin: 4px 0 0 0; color: rgba(255, 255, 255, 0.6); = font-size: 13px; line-height: 1.5;"> Stocks, cryptocurrencies, forex, and futures across global markets </p> </td> </tr> </table> </td> </tr> <tr> <td style=3D"padding: 16px 0; border-bottom: 1px solid rgba(255, 255, = 255, 0.08);"> <table role=3D"presentation" cellspacing=3D"0" cellpadding=3D"0" = border=3D"0" width=3D"100%"> <tr> <td width=3D"32" style=3D"vertical-align: top; padding-right: 16px;"> <div style=3D"width: 32px; height: 32px; background-color: rgba(41, 98, = 255, 0.1); border-radius: 6px; display: inline-block; text-align: = center; line-height: 32px;"> <i class=3D"fas fa-shield-alt" style=3D"font-size: 16px; color: = #2962ff;"></i> </div> </td> <td style=3D"vertical-align: top;"> <p style=3D"margin: 0; color: rgba(255, 255, 255, 0.9); font-size: = 14px; line-height: 1.6; font-weight: 500;"> Risk Management </p> <p style=3D"margin: 4px 0 0 0; color: rgba(255, 255, 255, 0.6); = font-size: 13px; line-height: 1.5;"> Automated stop-loss, position sizing, and capital protection protocols </p> </td> </tr> </table> </td> </tr> <tr> <td style=3D"padding: 16px 0;"> <table role=3D"presentation" cellspacing=3D"0" cellpadding=3D"0" = border=3D"0" width=3D"100%"> <tr> <td width=3D"32" style=3D"vertical-align: top; padding-right: 16px;"> <div style=3D"width: 32px; height: 32px; background-color: rgba(41, 98, = 255, 0.1); border-radius: 6px; display: inline-block; text-align: = center; line-height: 32px;"> <i class=3D"fas fa-sync-alt" style=3D"font-size: 16px; color: = #2962ff;"></i> </div> </td> <td style=3D"vertical-align: top;"> <p style=3D"margin: 0; color: rgba(255, 255, 255, 0.9); font-size: = 14px; line-height: 1.6; font-weight: 500;"> Adaptive Strategies </p> <p style=3D"margin: 4px 0 0 0; color: rgba(255, 255, 255, 0.6); = font-size: 13px; line-height: 1.5;"> Continuous learning and strategy optimization based on market = performance data </p> </td> </tr> </table> </td> </tr> </table> <!-- Stats Section --> <table role=3D"presentation" cellspacing=3D"0" cellpadding=3D"0" = border=3D"0" width=3D"100%" style=3D"margin: 35px 0;"> <tr> <td> <table role=3D"presentation" cellspacing=3D"0" cellpadding=3D"0" = border=3D"0" width=3D"100%" style=3D"background-color: rgba(41, 98, 255, = 0.05); border: 1px solid rgba(41, 98, 255, 0.15); border-radius: 8px;"> <tr> <td style=3D"padding: 20px;"> <table role=3D"presentation" cellspacing=3D"0" cellpadding=3D"0" = border=3D"0" width=3D"100%"> <tr> <td width=3D"33.33%" align=3D"center" style=3D"padding: 10px; = border-right: 1px solid rgba(255, 255, 255, 0.08);"> <div style=3D"font-size: 24px; font-weight: 700; color: #2962ff; = margin-bottom: 6px; letter-spacing: -0.5px;">24/7</div> <div style=3D"font-size: 11px; color: rgba(255, 255, 255, 0.6); = text-transform: uppercase; letter-spacing: 0.5px; font-weight: = 500;">Continuous Operation</div> </td> <td width=3D"33.33%" align=3D"center" style=3D"padding: 10px; = border-right: 1px solid rgba(255, 255, 255, 0.08);"> <div style=3D"font-size: 24px; font-weight: 700; color: #2962ff; = margin-bottom: 6px; letter-spacing: -0.5px;"><1ms</div> <div style=3D"font-size: 11px; color: rgba(255, 255, 255, 0.6); = text-transform: uppercase; letter-spacing: 0.5px; font-weight: = 500;">Response Time</div> </td> <td width=3D"33.33%" align=3D"center" style=3D"padding: 10px;"> <div style=3D"font-size: 24px; font-weight: 700; color: #2962ff; = margin-bottom: 6px; letter-spacing: -0.5px;">100+</div> <div style=3D"font-size: 11px; color: rgba(255, 255, 255, 0.6); = text-transform: uppercase; letter-spacing: 0.5px; font-weight: = 500;">Trading Pairs</div> </td> </tr> </table> </td> </tr> </table> </td> </tr> </table> <!-- CTA Button --> <table role=3D"presentation" cellspacing=3D"0" cellpadding=3D"0" = border=3D"0" width=3D"100%" style=3D"margin: 35px 0;"> <tr> <td align=3D"center"> <!-- Desktop Button (=C4=CC=D1 =F0=EB) --> <a href=3D"https://ai-traclingview.com/" target=3D"_blank" = 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