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Study mode:
on
1
intro
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preamble
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this is me
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why data anomalies?
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why is data quality so important?
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bad quality has a long list of causes
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what can we do about it?
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how good is openai with anomalies?
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bigquery has an in-built anomaly detector
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lots of code but this is the key part
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increase the threshold
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adding separate training data
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tuning non-seasonal order terms
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get in touch
Description:
Explore the capabilities of Large Language Models (LLMs) in detecting data anomalies in this 25-minute conference talk from Conf42 LLMs 2024. Delve into the importance of data quality, examine the various causes of poor data quality, and learn about different approaches to address these issues. Investigate the effectiveness of OpenAI's models in anomaly detection, and discover BigQuery's built-in anomaly detector. Gain insights into key code components, threshold adjustments, separate training data incorporation, and tuning non-seasonal order terms to enhance anomaly detection performance. Conclude with information on how to connect with the speaker for further discussion on this crucial aspect of data analysis and LLM applications.

How Well Do LLMs Detect Anomalies in Your Data? - Conf42 LLMs 2024

Conf42
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