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The integration between the Snorkel Flow AI data development platform and AWS’s robust AI infrastructure empowers enterprises to streamline LLM evaluation and fine-tuning, transforming raw data into actionable insights and competitive advantages.
Here’s what that looks like in practice.

Snorkel Flow accelerates AI development by focusing on data development. The platform enables organizations to curate, label, and refine datasets programmatically. This reduces the reliance on manual data labeling and significantly speeds up the model training process.
At its core, Snorkel Flow empowers data scientists and domain experts to encode their knowledge into labeling functions, which are then used to generate high-quality training datasets. This approach not only enhances the efficiency of data preparation but also improves the accuracy and relevance of AI models.
Snorkel Flow’s integration with AWS SageMaker provides a seamless AI development workflow.
The SageMaker Jumpstart machine learning hub offers a suite of tools for building, training, and deploying machine learning models at scale. When combined with Snorkel Flow, it becomes a powerful enabler for enterprises seeking to harness the full potential of their proprietary data.
To illustrate how enterprises can leverage Snorkel Flow and Amazon SageMaker Jumpstart integrations, let’s walk through a high-level workflow. This will demonstrate the process of evaluating and fine-tuning large language models:

Begin by uploading raw or generated AI pipeline data to Snorkel Flow via native S3 integration. Then, develop your evaluators and data slices to build your first LLM evaluation report. This establishes a baseline for the current system’s performance, providing a starting point for further refinement and evaluation.
Using the baseline report from Step 1, precisely identify where your model needs the most help. Use Snorkel Flow and your experts’ knowledge and intuition to develop labeling functions to address these issues. This curated dataset forms the foundation for subsequent model training and evaluation.
Integrate an open-source LLM, such as one from Meta’s Llama herd, with SageMaker using the SageMaker SDK. This setup provides the infrastructure necessary for model training and fine-tuning, leveraging AWS’s robust machine-learning capabilities.
Send the curated dataset from Snorkel Flow to SageMaker JumpStart for in-place LLM fine-tuning. This process refines the model, aligning it with the organization’s specific data and requirements.
Return prompt responses from the newly fine-tuned model to Snorkel Flow. Run another evaluation report to identify where the model improved and where it needs more work. Continue this iterative loop until the model meets production-quality standards.
Finally, deploy the fine-tuned model to production using JumpStart Inference Endpoints. This deployment ensures that the model is ready to deliver actionable insights and drive business value in real-world scenarios.
The integration of Snorkel Flow with AWS SageMaker offers a powerful solution for enterprises seeking to unlock the full potential of their proprietary data through LLM evaluation and fine-tuning.
By streamlining the data preparation, model training, and deployment processes, this integration enables organizations to develop AI systems that are not only accurate and efficient but also aligned with their specific business needs. As enterprises continue to navigate the complexities of AI development, the partnership between Snorkel and AWS provides the tools and infrastructure necessary to transform raw data into a strategic asset, driving innovation and competitive advantage in the digital age.
Deploy production AI and ML applications 10-100x faster with Snorkel’s experts, using our proprietary technology.
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