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Introduction to swing trading

Introducing world of Swingsets

You probably haven’t come across the term “Swingset” in broader discussions yet, and that’s because we coined it to enhance the efficiency of portfolio management.
Swingset is a universe of assets cherry-picked by their industry domain, market capitalisation, volatility, and other defining characteristics, both predefined and customer-requested.
Traders often choose specific market segments according to their expertise and preferences. To cater to the diverse needs of market participants, we’ve crafted a range of portfolios designed for distinct goals and strategies.
In the realm of traditional strategic medium-term portfolio management, the arrangement and allocation of assets in a portfolio are predetermined and generally remain constant over a specific period, like a quarter. This approach relies on strategic analysis and forecasting, empowering market participants to adeptly navigate their portfolios in alignment with long-term investment objectives and prevailing market conditions.
At AlphaGrail.ai, we employ swing trading methodologies that centre around pinpointing the most opportune times to initiate and conclude positions within a designated set of assets known as the “Swingset.” Our approach hinges on analysing intra-week or intra-month fluctuations in assets, enabling the system to adeptly recognise periods that align with a swing trading strategy, thereby optimising portfolio performance.

How does an AI agent operate?

By leveraging reinforcement learning technology, the algorithms at AlphaGrail.ai showcase an exploratory nature, continuously learning and evolving to craft their unique trading strategies. This dynamic approach is designed to eradicate future bias and mitigate risks, safeguarding against potential deposit losses stemming from shifts in market conditions. AlphaGrail.ai conducts in-depth analyses of financial data, technical indicators, and fundamental analysis components, and considers long-term historical behaviour (spanning at least 20 trading days) to inform optimal trading decisions.

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