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AI, ML and Computer Vision Meetup

July 17, 2025 | 10:00 AM Pacific

When and Where

July 17, 2025 | 10:00 – 11:30 AM Pacific

Virtually over Zoom. Sign up!

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Using VLMs to Navigate the Sea of Data

Daniel Fortunato

SEA.AI

At SEA.AI, we aim to make ocean navigation safer by enhancing situational awareness with AI. To develop our technology, we process huge amounts of maritime video from onboard cameras. In this talk, we’ll show how we use Vision-Language Models (VLMs) to streamline our data workflows; from semantic search using embeddings to automatically surfacing rare or high-interest events like whale spouts or drifting containers. The goal: smarter data curation with minimal manual effort.

Building Efficient and Reliable Workflows for Object Detection

Sage Elliot

Union AI

Training complex AI models at scale requires orchestrating multiple steps into a reproducible workflow and understanding how to optimize resource utilization for efficient pipelines. Modern MLOps practices help streamline these processes, improving the efficiency and reliability of your AI pipelines.

Your Data Is Lying to You: How Semantic Search Helps You Find the Truth in Visual Datasets

Paula Ramos, PhD

Voxel51

High-performing models start with high-quality data—but finding noisy, mislabeled, or edge-case samples across massive datasets remains a significant bottleneck. In this session, we’ll explore a scalable approach to curating and refining large-scale visual datasets using semantic search powered by transformer-based embeddings. By leveraging similarity search and multimodal representation learning, you’ll learn to surface hidden patterns, detect inconsistencies, and uncover edge cases. We’ll also discuss how these techniques can be integrated into data lakes and large-scale pipelines to streamline model debugging, dataset optimization, and the development of more robust foundation models in computer vision. Join us to discover how semantic search reshapes how we build and refine AI systems.