π Large language models can help people who struggle with writing English prose, but they may give a false impression of understanding.
π‘ Using large language models can spread misinformation and have a negative impact on brands, businesses, individuals, and society.
π‘οΈ The risks of using large language models include hallucinations, bias, consent, and security concerns.
π Large language models predict the next best word, not accurate answers based on understanding.
β These models can give incorrect answers due to statistical errors and lack of understanding.
β οΈ Inaccuracies in large language models can be dangerous and potentially harmful.
π Large language models lack proof and can provide factually wrong answers, posing a risk in call center scenarios.
β οΈ Explainability is a key mitigation strategy for large language models, allowing users to understand the source of the model's answers.
π« Bias is another risk associated with large language models, potentially leading to biased outputs and a lack of representativeness.
π Culture and audits are important mitigation strategies for risks associated with large language models.
π₯ Diverse and multidisciplinary teams are necessary to address biases in AI and improve organizational culture.
π Consent, representative data, and copyright issues should be considered when curating data for language models.
π The origin of training data for large language models is often unclear and raises consent-related risks.
π Accountability in AI governance processes is crucial for compliance with laws and regulations and incorporating feedback from users.
π Security risks associated with large language models include leaking private information, enabling malicious activities, and the potential for unauthorized alteration of AI behavior.
π Training large language models has a significant environmental cost.
β οΈ Malicious tampering of large language models' training data can influence their behavior.
π§ Education about data and AI is crucial for responsible and empowering use.
β οΈ There is a need for diversity and inclusion in the development of large language models.
π The topic of large language models is highly significant.