KUALA LUMPUR, MALAYSIA -
Media OutReach Newswire - 17 December 2024 - 2025 is expected to be the year of increasing AI adoption. According to recent
PwC findings,
'2025 will bring significant advancements in quality, accuracy,
capability, and automation that will continue to compound on each other,
accelerating toward a period of exponential growth'. Finance, which remains one of the top three sectors with the highest AI penetration, according to
Statista and
PwC,
is no exception. Corporations and retail traders are expected to
accelerate AI deployment to increase productivity while carefully
mitigating the risks of overreliance on algorithms. In this material,
Octa, a broker with globally recognised licenses, shares insights on how
AI in trading will evolve in 2025.
Emerging AI trends in trading for 2025
Machine learning continues to redefine the trading landscape by enhancing the speed and precision of market analysis. The
2024 IMF Global Financial Stability Report,
Chapter 3, highlights that advancements in artificial intelligence are
poised to improve market efficiency. To be more precise, AI-driven tools
are expected to enable faster portfolio rebalancing and more efficient
processing of large trades in asset classes like equities and bonds.
However, the IMF also notes the potential risks associated with these
technologies, such as heightened volatility during market stress.
Neural networks, particularly large language models
(LLMs), have shown immense potential for sentiment analysis in trading.
Since their introduction in 2017, the share of AI-related patent
applications in algorithmic trading has
surged from 19% to over 50% annually.
The tools are already deployed to process market sentiment from news
and social media in near real-time, offering traders insights into
geopolitical developments and economic forecasts.
Algorithmic trading has grown substantially, with
AI-driven systems enabling faster execution and reduced operational
errors. High-frequency trading powered by AI has seen significant
adoption, particularly in liquid asset classes such as equities and
derivatives. While detailed statistics on future adoption rates remain
speculative, the World Trade Organization's focus on the digital
transformation of markets
underscores the increasing reliance on automation to enhance trading efficiency and liquidity.
Opportunities for traders in 2025
AI's capacity to process sizable quantities of historical and real-time
facts allows investors to benefit from predictive insights that had been
formerly inconceivable. Advancements in AI-powered predictive analytics
are changing how we forecast international markets by making
predictions
more accurate
and providing clear, actionable insights. These tools are transforming
financial markets, helping investors spot trends and respond to changes
with greater confidence.
Emotions can often get in the way of smart trading decisions, especially
when markets are highly volatile. AI helps solve this problem by
relying purely on data and predictive models for decision-making.
According to the IMF's Global Financial Stability Report, AI-driven
tools are already helping retail traders manage risks more effectively
and
avoid impulsive trades that could lead to losses.
As AI tool costs decrease, features like real-time portfolio
optimisation and automated trading strategies are becoming accessible to
individual traders. Previously available only to large financial
institutions, these advanced tools are levelling the playing field,
enabling retail investors to trade with more confidence and accuracy.
Risks and challenges in AI integration
AI-driven business strategies come with inherent risks. The IMF
warns
that over-reliance on algorithmic models could increase market
volatility during a global crisis. For example, AI-driven exchanges
exhibited herd-like behaviour during the March 2020 market turmoil. This
resulted in significant price volatility and required a robust
regulatory mechanism to manage the risks involved.
The integrity of AI systems faces increasing security challenges.
Research shows that the effectiveness of AI models depends on data
quality and security. Recent statistics reveal an alarming trend: cyber
threats
targeting AI are increasing by 47%. The industry requires robust security measures to protect the algorithms against data manipulation and unauthorised access.
While AI offers tremendous value, its complexity poses a challenge for
low-tech businesses. The complexity of advanced AI systems makes it
crucial to have accessible training resources and intuitive interfaces.
These tools help traders, especially newcomers, understand and use AI
effectively, paving the way for broader adoption across trading
communities.
Preparing for AI-driven transformation
Thriving in an AI-pushed trading environment requires specific training.
Otherwise, traders risk facing sophisticated systems they can't
properly handle or misusing AI-based tools, consequently missing out on
their benefits. To prepare for future AI tools, traders should try the
available software now. The safest option is to test AI deployment when
trading on a demo account. This option is available on trading platforms
provided by global brokers like Octa. For example, Octa broker
currently uses AI to facilitate graph analysis and boost pattern
identification when conducting technical analysis. Following the
increased AI adoption trend, the company will likely keep embedding more
AI-based tools on the platform.
AI is set to further redefine trading in 2025. From enhanced predictive
analytics to democratising organisational productivity tools, the
technology enables traders to make smarter, faster decisions. However,
sustainable usage should remain at the core. One should be aware of
risks such as over-reliance on algorithms and data security. To mitigate
these risks, a reasonable strategy would be to combine AI-based
analytics with human market monitoring and decision-making. AI should be
perceived as a convenient tool rather than a magic pill for making
accurate trading decisions.