- Linguistic Annotation
Natural language processing: The power behind today's large language models
Large language models show incredible capabilities. Learn about the technology behind them and how they came to be the powerful machines they are today.
- AI Best Practices
How to detect and mitigate machine learning model drift
Model drift degrades the accuracy of your ML model over time. Discover some best practices for detecting and mitigating it quickly and efficiently.
- Data Annotation
Four key metrics for ensuring data annotation accuracy
High-quality data annotation is critical to the performance of your AI model. Here are four key metrics to consider for measuring annotation accuracy.
- Generative AI
Generative AI hallucinations: Why they occur and how to prevent them
Hallucinations are an obstacle to building user trust in generative AI applications. Learn about the phenomenon, including best practices for prevention.
- Generative AI
Generative AI survey results: Customers expect brands to be transparent
A survey conducted by TELUS Digital unveiled consumer concerns about misinformation and bias in generative AI. Learn more.
- Generative AI
Three ways RLHF is advancing large language models
Learn how reinforcement learning from human feedback helps AI models respond to complex human preferences, reduce bias and decrease the occurrence of hallucinations.
- Data Collection
Data governance with AI data collection
Robust data governance not only improves data quality, it offers a standard to ensure that data is consistent, complete and accurate. Find out more.
- Generative AI
Artificial intelligence, real benefits: Applying generative AI in CX
Generative AI has seemingly limitless potential for brands who lead with their digital CX. Investigate the benefits of AI customer service.
- Generative AI
Generative AI 101
Generative AI is a type of AI that can be used to generate new content such as text, images, audio, video, code or synthetic data. Discover exactly how generative AI works and what you can do with it.
- Responsible AI
The critical role of impact sourcing on AI model expansion
Addressing bias in AI models is a key principle of responsible AI. Discover how diversifying your team of AI contributors through impact sourcing can help.
- Linguistic Annotation
Are we headed for an AI data shortage?
Discover how a potential AI training data shortage for language models could affect your business, and what you can do to offset its impact.
- AI Use CasesFinancial Services & Fintech
Six AI technologies set to define the future of banking
Artificial intelligence is set to define the future of banking. Learn about how banks are using machine learning, RPA and other AI-powered tech.
Check out our solutions
Enrich your data with our range of human-annotation services at scale.
Learn more