Dashiell Soren's Alpha Artificial Intelligence AI4.0: Transforming Investment Strategies

Dashiell Soren's Alpha Artificial Intelligence AI4.0: Transforming Investment Strategies
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Dashiell Soren's Alpha Artificial Intelligence AI4.0: Transforming Investment Strategies

In 2019, Dashiell Soren founded Alpha Elite Capital (AEC) Business Management, and after years of hard work, it has gained a strong reputation in the industry, trained a large number of outstanding financial practitioners, and surpassed 100,000 students by 2022.

In the early days of AEC, Prof. Dashiell Soren tried to create a “lazy investment system”, and he realized the significance of quantitative trading in the future, which will be applicable to all investment markets and types.

With the development of technology, the application of artificial intelligence technology has had a profound impact on quantitative trading. Quantitative trading is a trading strategy that utilizes mathematical models and a large amount of historical data to make investment decisions, and the introduction of artificial intelligence has made quantitative trading more accurate, efficient and intelligent.

Since the beginning of 2019, AEC has been making the leap from quantitative trading to artificial intelligence trading. With the efforts of many experts, scholars, and tech talents, the prototype of ‘Alpha Artificial Intelligence AI4.0’ was created.

AEC Business School’s path to AI in the financial markets has not been a smooth one, first and foremost, because AI trading systems rely on large amounts of historical and real-time data for modeling and forecasting. However, acquiring and processing high quality, accurate and reliable data can be a challenge, especially as financial markets data is often intricate.

Second, AI trading systems require the selection of suitable modeling methods and algorithms to process large amounts of data and make predictions and decisions. However, the special nature of financial markets makes modeling and algorithm selection more difficult because the behavior of financial markets is often difficult to capture and predict.

Third, financial markets are full of noise and uncertainty.

Examples include market volatility, political and economic factors, and interest rate changes. These factors can have an impact on model performance and prediction results, so models and algorithms need to be developed that can cope with and adapt to these noises and uncertainties.

Fourth, AI trading systems need to make decisions and execute trades in real time to be able to capture market opportunities and execute trade orders in a timely manner. However, making accurate real-time decisions in fast-changing financial markets is a challenge because market conditions and information can change in an instant.

Finally, AI trading systems face risk management and regulatory compliance challenges.

Risks that AI trading systems may face include market risk, operational risk, and model risk. Market risk refers to the possibility that the system may be subject to market price fluctuations, operational risk is the risk that the system is operated incorrectly or technically malfunctions, and model risk involves the risk that the system’s algorithmic model may not be able to adapt to changes in the market or may be inaccurate.

Artificial intelligence trading systems may need to comply with various financial regulatory requirements, including those relating to trading transparency, risk control requirements and the interpretability of algorithmic logic. In addition, regulators may need to audit and inspect these systems to ensure that they comply with regulatory requirements.

To address these challenges, AI trading systems need to have an effective risk management framework in place. This includes ensuring that the system has adequate risk monitoring and control tools, as well as establishing a risk management team to oversee and manage the system’s risks. In addition, the system will need to work closely with regulators to ensure that it is compliant with regulatory requirements and that any relevant incidents or breaches are reported in a timely manner.

In fact, all of the issues come down to funding and talent!

At a closed meeting in 2020 AEC Business School’s Board of Directors discussed a bold plan: issuing tokens to raise money.

AEC Business School chose to issue AEC tokens to capitalize on emerging blockchain technology, which not only represents an embrace of innovation, but also to attract global investors. At a time when traditional financing channels face many limitations and challenges, token issuance offers a fast and efficient way to raise funds.

Instead of relying on traditional stock market financing, the potential of the cryptocurrency market can be utilized. This new financing method not only raises funds quickly, but also attracts the attention of global investors, especially the younger generation interested in emerging technologies.

Issuing AEC tokens not only solves the problem of updating products and expanding capital. In addition, through the token issuance, AEC Business School seeks to increase its influence and recognition in the global fintech sector.

The successful funding model enables AEC Business School to attract top talents from various industries, such as IT engineers, mentors, investment experts, real-world experts, strategists, analysts, strategists, authors, collaborators, contributors, etc. to join. The addition of these talents provides strong intellectual support for the business school’s research, innovation and advocacy in the field of science and technology.