The financial industry continues to evolve rapidly with technological advancements reshaping how trading is conducted. At last week’s 25th Anniversary TradeTech Europe conference in Paris, industry experts shared valuable insights on how machine learning is transforming transaction cost analysis (TCA) and execution strategies.
This blog highlights the key takeaways from an enlightening discussion featuring Mark Montgomery, CCO from big xyt, and a senior execution trader from a leading European buy-side institution.
Traditional Trading Reinforcement Lifecycle
While traders have long been familiar with balancing single stock orders between market impact and opportunity cost, the challenge is amplified when dealing with large portfolios. The discussion revealed how clustering techniques are now replacing traditional market cap or country subdivisions.
Cluster Spread vs ADV
One of the most significant innovations highlighted was the use of advanced clustering techniques to identify patterns across securities with similar trading characteristics. Rather than simply categorising stocks by country or market cap, big xyt’s approach incorporates:
This multidimensional approach creates more meaningful groupings that can inform smarter execution decisions.
An experienced trader shared insights into how their automation journey began in 2014, initially using static data such as average volume, spread and nominal trading instructions. Their collaboration with big xyt enhanced this automation through machine learning.
Their methodology follows a structured approach:
Cluster big xyt Dashboard
The discussion revealed several critical parameters used in the clustering algorithm:
These parameters help the machine learning algorithms using K-means to determine appropriate clusters that share similar trading characteristics.
Cluster big xyt Strategy Dashboard
The real-world benefits of this approach were clearly articulated:
The presenters didn’t shy away from discussing challenges:
Looking ahead, the speakers highlighted several areas for potential expansion:
The overarching message was clear: machine learning in trading requires a pragmatic approach. While these techniques offer powerful new capabilities, they must be implemented thoughtfully, with appropriate validation, reasonable training frequencies, and clean input data to avoid “garbage in, garbage out” scenarios.
As markets evolve, trading desks increasingly rely on transparent, consistent and granular market data to maintain a competitive edge in execution quality and cost efficiency. Our independent approach to data normalisation and market analytics – reinforced by our formal bid to deliver the EU Consolidated Tape – positions us to meet this growing demand, especially as machine learning models become integral to modern trading strategies.
This blog post is based on the discussion: Auto-Execution & TCA Case Study at TradeTech Europe, May 14, 2025.