Remove programmatic-labeling
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How Foundation Models bolster programmatic labeling

Snorkel AI

In the video above, Alex talks with Mayee Chen about the work she did on improving the effectiveness of programmatic labeling through foundation models on both NLP and vision tasks. But the challenge there is that it’s not really clear how to apply these foundation models when we don’t have any labeled data at all.

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How Foundation Models bolster programmatic labeling

Snorkel AI

In the video above, Alex talks with Mayee Chen about the work she did on improving the effectiveness of programmatic labeling through foundation models on both NLP and vision tasks. But the challenge there is that it’s not really clear how to apply these foundation models when we don’t have any labeled data at all.

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Never-ending Learning of User Interfaces

Machine Learning Research at Apple

Currently, most models rely on datasets that are collected and labeled by human crowd-workers, a process that is costly and surprisingly error-prone for certain tasks. a view hierarchy), but one way to know for certain is to programmatically tap the UI element and…

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Introducing Snorkel’s Foundation Model Data Platform

Snorkel AI

For every model development step in the modern journey of building AI applications, there is a critical but often underappreciated data development step, where the data that actually informs the model is selected, labeled, cleaned, shaped, and curated. For every traditional “model-centric” step (e.g.,

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Introducing Snorkel’s Foundation Model Data Platform

Snorkel AI

For every model development step in the modern journey of building AI applications, there is a critical but often underappreciated data development step, where the data that actually informs the model is selected, labeled, cleaned, shaped, and curated. For every traditional “model-centric” step (e.g.,

AI 141
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Crossing the demo-to-production chasm with Snorkel Custom

Snorkel AI

Combining our programmatic data development platform, Snorkel Flow, with hands-on support from our team of AI experts, Snorkel Custom engagements start with co-development of custom, use-case specific evaluation benchmarks, and end with a production quality LLM tuned on your unique data, and optimized for your unique use case.

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Walking safely before building flying saucer seatbelts: introducing Enterprise Alignment

Snorkel AI

Snorkel’s new programmatic AI data development techniques enable enterprises to align LLMs to their specific policies and objectives–a practical and necessary step on the pathway to enterprise superalignment, and superalignment more generally. The key blocker to enterprise alignment today is labeling and developing preference data.

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