AI Trading: Bitcoin, Stocks & Investing with ChatGPT & LLMs
Improve your trading and investment strategies by incorporating AI technologies and language learning models for analysis, automation, and risk management.
Description for AI Trading: Bitcoin, Stocks & Investing with ChatGPT & LLMs
AI Tools for Financial Analysis: Acquire the skills necessary to analyze business reports, financial metrics, and generate investment ideas using AI tools such as ChatGPT, Bing, Bard, and Claude.
In-depth Understanding of Language Learning Models (LLMs): Acquire a comprehensive understanding of LLMs, their function in AI, and their influence on trading and investment strategies.
AI-Driven Trading Systems: Discover the process of incorporating AI tools into trading system programming, automating trading by programming a trading agent, and connecting it to a broker.
Prompt Engineering and Risk Management: Enhance your abilities in the development of effective prompts for AI tools, the application of AI for risk management, and the assessment of the risks associated with an excessive reliance on AI in trading.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On Udemy provided by Arnold Oberleiter
Duration: 8h 49m
Schedule: Full lifetime access
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