AMD / SOXS - Trading Results AI Trading Double Agent, 15min
Description:
Overview: BUY LONG: (AMD) Advanced Micro Devices designs a variety of digital semiconductors for markets such as PCs, gaming consoles, data centers, industrial, and automotive applications. AMD’s traditional strength was in central processing units and graphics processing units used in PCs and data centers. Additionally, the firm supplies the chips found in prominent game consoles such as the Sony PlayStation and Microsoft Xbox. In 2022, the firm acquired field-programmable gate array leader Xilinx to diversify its business and augment its opportunities in key end markets such as data center and automotive.
BUY LONG AS A HEDGE: SOXS, "Direxion Daily Semiconductor Bear 3x Shares" ETF, is an exchange-traded fund that aims to deliver three times the inverse daily performance of the PHLX Semiconductor Sector Index.
Inverse ETF: An inverse ETF (Exchange-Traded Fund) is a type of investment fund designed to deliver the opposite performance of a specific index or benchmark on a daily basis. If the tracked index falls by 1% in a day, an inverse ETF linked to it is designed to rise by approximately 1%, making it a popular tool for investors looking to profit from or hedge against short-term declines in the market. These funds typically use financial derivatives like swaps or futures contracts to achieve their inverse exposure. However, due to daily rebalancing and compounding effects, inverse ETFs are generally not suitable for long-term holding, especially in volatile markets.
Suitability: This robot is built to analyze and trade (AMD, SOXS), making stock trading easier for beginners. It uses a combination of intraday and daily timeframes to provide a clear, structured, and user-friendly trading experience.
15-Minute ML Overview:
In a 15-minute briefing, one can gain a solid understanding of how Tickeron’s Financial Learning Models (FLMs) revolutionize trading strategies by combining artificial intelligence and machine learning with technical market analysis. These models analyze real-time data to detect bullish and bearish patterns, empowering traders with actionable insights. Tickeron offers intuitive trading agents for beginners and more sophisticated high-liquidity robots for active traders, all powered by AI that adapts to market shifts. The platform’s real-time analytics and dual-perspective signal system (bullish vs. bearish) give users greater confidence and control in their decisions. This mid-level overview would also introduce the practical benefits of using FLMs, such as reducing emotional trading, optimizing entry/exit points, and staying aligned with broader market trends through AI-driven foresight.
Strategic Features and Technical Basis
The AI Double Trading Agent combines advanced pattern recognition with cutting-edge Machine Learning Models (MLMs) and Financial Learning Models (FLMs) to deliver precise and adaptive trading strategies.
- 15-Minute Pattern Recognition: Entry signals are generated on the 15-minute (M15) chart based on high-frequency pattern analysis.
- FLM-Based Trend Filtering: Financial Learning Models validate price trends and reduce market noise, increasing the accuracy of trade signals.
- ML-Powered Optimization: Machine Learning enhances the detection of tradeable patterns and refines strategy execution for optimal performance.
- Smart Swing Trading Strategy: The agent employs a swing trading approach—holding trades to capitalize on larger market moves, with exit signals confirmed on the daily timeframe.
- Automated Risk Management: Trade activity is capped at 10 open positions simultaneously, supported by real-time data monitoring and decision support.
Position and Risk Management:
Designed with novice traders in mind, the robot’s strategic integration of daily timeframe filters ensures reduced emotional trading and improved stability. Its AI-powered FLMs systematically assess market data, minimizing risks and maximizing gains by dynamically responding to market shifts. Users can develop confidence and skills while the system handles complex technical aspects.
Trading Dynamics and Specifications:
- Maximum Open Positions: High, enabling the robot to diversify across numerous trades and reduce risk through market exposure.
- Robot Volatility: Medium, offering a balanced approach between capturing significant market movements and mitigating sharp declines.
- Universe Diversification Score: Low, indicating a narrow array of instruments to hedge against sector-specific downturns and enhance profit opportunities.
- Profit to Dip Ratio (Profit/Drawdown): Medium, offering a balanced profit vs. drawdown scenario that makes it an ideal intermediates and experts.
- Optimal Market Condition Medium: If the current market volatility is Medium, then you should use the Best Robots in Medium Volatility Market (VIX is Medium - this indicator is coming soon).
Disclaimer: Disclaimers and Limitations
Simulated Performance: All simulated performance results are derived solely from real-time calculations using historical data. Algorithms receive minute-by-minute historical prices and other data from Morningstar and generate trades in real time based on these historical inputs, effectively eliminating any hindsight bias.
Actual Performance: All actual performance results are derived solely from real-time calculations using current data. Algorithms receive minute-by-minute current prices and other data from Morningstar and generate trades in real time based on these current inputs, effectively eliminating any hindsight bias.
Gross Performance: Gross performance results do not deduct any fees or expenses. These results reflect the total returns generated by the AI Robots without considering the costs associated with accessing the service.
Net Performance (current performance chart): Net performance results deduct fees to provide a more accurate representation of returns experienced by the user. These deductions can include: Model Fee Deduction: Net performance results may deduct a model fee equivalent to the highest subscription fee charged to the intended audience. Actual Subscription Fees: Net performance results may also deduct the actual subscription fees paid by the user for access to AI Robots
Actual Performance (232 days)
Simulated Performance
This Robot is recommended to be used when the markets are growing in general. The core algorithm makes only long The core algorithm makes only long