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From Noise to Brilliance: Supercharge AI with Data Enrichment

On demand

Sponsored by

Speaker Tyler Dunn Sales Engineer

Tyler Dunn is a Sales Engineer at Precisely with a focus on Location Intelligence, AWS and emerging technologies. He has 13 years of architecting geospatial solutions to solve complex problems. He lives in Golden, Colorado with his wife and golden retriever.

From Noise to Brilliance: Supercharge AI with Data Enrichment

Tuesday September 19th I 4:00 PM ET

Artificial Intelligence (AI) has ignited transformative change in natural language processing, human-computer interactions, and advanced problem-solving. These models, encompassing various applications such as market forecasting, customer behavior predictions, and risk assessments, owe their prowess to the quality and diversity of the data they're trained on.

In this webinar, our exploration shifts toward the pivotal role of data enrichment in molding AI models. We will investigate the intricacies of data enrichment - infusing existing datasets with additional context and relevant information from trusted third-party sources. This approach helps AI models surpass their current capabilities, enabling them to understand complex nuances and generate contextually attuned responses.

A fundamental part of our discussion will revolve around leveraging trusted third-party datasets. These external data sources, curated by domain experts, enrich the training data with diverse perspectives and contexts. We will explain how integrating these datasets with AI models can lead to a more comprehensive understanding of intricate patterns and a heightened ability to generate insightful outputs.

Diving deep into the subject, we will examine various methodologies of data enrichment and how these techniques can breathe new life into AI models' capabilities. By the end of this session, attendees will understand the pivotal role that data enrichment and trusted third-party datasets play in enhancing the quality, efficacy, and relevance of outputs across real-world applications.

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