Glossary
Synthetic media — typically video or audio — generated by AI to convincingly depict events that did not occur, raising concerns in fraud, evidence, and defamation.
AI in Financial Services
from AI & Law
The financial sector is one of the most intensive users of AI, from algorithmic trading systems executing thousands of trades per second to credit scoring models that determine who can borrow. The FCA and PRA are focused on model risk management — ensuring firms understand, validate, and can explain the AI models they rely on. Robo-advisers offering automated investment recommendations must comply with the same suitability and disclosure requirements as human advisers. The emergence of AI-driven fraud — deepfake audio for CEO impersonation, synthetic identity creation — is prompting regulators to consider whether existing financial crime frameworks are adequate for the AI age.
Recent Trends
from AI & Law
Generative AI — systems like large language models that create text, code, images, and audio — has moved from novelty to enterprise deployment in under three years. Law firms are building bespoke tools on top of foundation models, and the question has shifted from "should we use AI?" to "how do we govern it?" The proliferation of AI governance frameworks — internal policies covering procurement, use, data handling, and human oversight of AI tools — is creating a new area of advisory work. Deepfakes and AI-generated misinformation pose challenges for evidence law, defamation, and electoral regulation. Meanwhile, competition regulators globally are scrutinising the market structure of foundation model development, where a small number of companies control the compute, data, and distribution layers.
Large Language Model (LLM)
An AI system trained on vast text datasets to generate, summarise, and analyse human language — the technology behind tools like ChatGPT and legal AI assistants.
EU AI Act
The European Union's comprehensive regulation classifying AI systems by risk level and imposing corresponding obligations on developers and deployers.
Algorithmic Bias
Systematic errors in AI decision-making that produce unfair outcomes for particular groups, often reflecting biases present in training data.
Explainability
The degree to which the internal logic of an AI model can be understood and communicated to humans — a key requirement for high-risk AI under many regulatory frameworks.
Training Data
The dataset used to teach an AI model to recognise patterns and generate outputs — its quality and composition directly determine the model's capabilities and biases.
Model Risk
The risk of adverse consequences arising from decisions based on AI or statistical models that are incorrect, misused, or inadequately understood.
AI Governance
The internal policies, processes, and controls an organisation puts in place to manage the development, procurement, and use of AI systems responsibly.