
What weāre about
š This group is for data scientists, machine learning engineers, and open source enthusiasts.
Every month weāll bring you diverse speakers working at the cutting edge of AI, machine learning, and computer vision.
- Are you interested in speaking at a future Meetup?
- Is your company interested in sponsoring a Meetup?
This Meetup is sponsored by Voxel51, the lead maintainers of the open source FiftyOne computer vision toolset. To learn more, visit the FiftyOne project page on GitHub..
Upcoming events (4+)
See all- July 16 - Paris AI, ML and Computer Vision MeetupHƓtel Paris Marriott Opera Ambassador, Paris
Hear talks from experts on cutting-edge topics in AI, ML, and computer vision!
Register for the event to reserve your seat.
When and Where
July 16
5:30-8:30 PMParis Marriott Opera Ambassador
VendƓme Meeting Room
16 Bd HaussmannBuilding and working with Small Language Models
This session focuses on practical techniques for using small open-source language models (SLMs) in enterprise settings. We'll explore modern workflows for adapting SLMs with domain-specific pre-training, instruction fine-tuning, and alignment. Along the way, we will introduce and demonstrate open-source tools such as DistillKit, Spectrum, and MergeKit, which implement advanced techniques crucial for achieving task-specific accuracy while optimizing computational costs. We'll also discuss some of the models and solutions built by Arcee AI. Join us to learn how small, efficient, and adaptable models can transform your AI applications.
About the Speaker
Julien Simon, the Chief Evangelist at Arcee.ai, is dedicated to helping enterprise clients develop top-notch and cost-efficient AI solutions using small language models. With over 30 years of tech experience, including more than a decade in cloud computing and machine learning, Julien is committed to daily learning and is passionate about sharing his expertise through code demos, blogs, and YouTube videos. Before joining Arcee.ai, he was Chief Evangelist at Hugging Face and Global AI Evangelist at Amazon Web Services. He also served as a CTO at prominent startups.
Accelerating sustainable inference with Pruna AI
This talk explores how to make AI faster and more sustainable. Weāll look at the high costs and carbon impact of fine-tuning and self deploying models, and show how optimization techniques available in the Pruna library can reduce size and latency with little to no quality loss.
About the Speaker
Gabriel Tregoat is the software lead at Pruna.ai, a specialist company on model inference optimisation with an open source library called āprunaā. He previously was a leader for AI in production at Ekimetrics, and started his career as a data scientist and ml-engineer at Shell Energy. Heās passionate about tech, code and new technologies.
Visual Agents: What it takes to build an agent that can navigate GUIs like humans
Weāll examine conceptual frameworks, potential applications, and future directions of technologies that can āseeā and āactā with increasing independence. The discussion will touch on both current limitations and promising horizons in this evolving field.
About the Speaker
Harpreet Sahota is a hacker-in-residence and machine learning engineer with a passion for deep learning and generative AI. Heās got a deep interest in RAG, Agents, and Multimodal AI.
What I Learned About Systematic AI Improvement
Most AI teams go through the same story: fast early progress, and then suddenly things slow down. The AI isnāt broken, but new changes donāt seem to help, and itās not even clear how to tell if things are getting better. Iāve faced this plateau myselfāboth in my own work and while helping other teams. In this talk, Iāll share what Iāve learned about getting unstuck: how to build genuine confidence in your AI, what ātrustā really means in practice, and practical steps to move from āit kind of worksā to āthis is actually improving.ā My goal is to give you real-world ideas you can use when you hit the same wall.
About the Speaker
Louis Dupont is an AI engineer with over eight years of experience developing AI solutions across multiple industries. Currently, he work directly with companies to build and deploy AI internally, and as a consultant specializing in helping teams overcome common roadblocks in AI development.
- Network event467 attendees from 39 groups hostingJuly 17 - AI, ML and Computer Vision MeetupLink visible for attendees
When and Where
July 17, 2025 | 10:00 ā 11:30 AM Pacific
Using VLMs to Navigate the Sea of Data
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, weāll 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.
About the Speaker
Daniel Fortunato, an AI Researcher at SEA.AI, is dedicated to enhancing efficiency through data workflow optimizations. Danielās background includes a Masterās degree in Electrical Engineering, providing a robust framework for developing innovative AI solutions. Beyond the lab, he is an enthusiastic amateur padel player and surfer.
SAMWISE: Infusing Wisdom in SAM2 for Text-Driven Video Segmentation
Referring Video Object Segmentation (RVOS) involves segmenting objects in video based on natural language descriptions. SAMWISE builds on Segment Anything 2 (SAM2) to support RVOS in streaming settings, without fine-tuning and without relying on external large Vision-Language Models. We introduce a novel adapter that injects temporal cues and multi-modal reasoning directly into the feature extraction process, enabling both language understanding and motion modeling. We also unveil a phenomenon we denote tracking bias, where SAM2 may persistently follow an object that only loosely matches the query, and propose a learnable module to mitigate it. SAMWISE achieves state-of-the-art performance across multiple benchmarks with less than 5M additional parameters.
About the Speaker
Claudia Cuttano is a PhD student at Politecnico di Torino (VANDAL Lab), currently on a research visit at TU Darmstadt, where she works with Prof. Stefan Roth in the Visual Inference Lab. Her research focuses on semantic segmentation, with particular emphasis on multi-modal understanding and the use of foundation models for pixel-level tasks.
Building Efficient and Reliable Workflows for Object Detection
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.
About the Speaker
Sage Elliott is an AI Engineer with a background in computer vision, LLM evaluation, MLOps, IoT, and Robotics. Heās taught thousands of people at live workshops. You can usually find him in Seattle biking around to parks or reading in cafes, catching up on the latest read for AI Book Club.
Your Data Is Lying to You: How Semantic Search Helps You Find the Truth in Visual Datasets
High-performing models start with high-quality dataābut finding noisy, mislabeled, or edge-case samples across massive datasets remains a significant bottleneck. In this session, weāll 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, youāll learn to surface hidden patterns, detect inconsistencies, and uncover edge cases. Weāll 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.
About the Speaker
Paula Ramos has a PhD in Computer Vision and Machine Learning, with more than 20 years of experience in the technological field. She has been developing novel integrated engineering technologies, mainly in Computer Vision, robotics, and Machine Learning applied to agriculture, since the early 2000s in Colombia. During her PhD and Postdoc research, she deployed multiple low-cost, smart edge & IoT computing technologies, such as farmers, that can be operated without expertise in computer vision systems. The central objective of Paulaās research has been to develop intelligent systems/machines that can understand and recreate the visual world around us to solve real-world needs, such as those in the agricultural industry.
- Network event79 attendees from 39 groups hostingJuly 23 - Getting Started with FiftyOne for Healthcare Use CasesLink visible for attendees
When
Jul 23, 2025 at 9:00 - 10:30 AM Pacific
Where
Online. Register for the Zoom!
About the Workshop
Visual AI is revolutionizing healthcare by enabling more accurate diagnoses, streamlining medical workflows, and uncovering valuable insights across various imaging modalities. Yet, building trustworthy AI in healthcare demands more than powerful models ā it requires clean, curated data, strong visualizations, and human-in-the-loop understanding.
Join us for a free, 90-minute, hands-on workshop built for healthcare researchers, medical data scientists, and AI engineers working with real-world imaging data. Whether you're analyzing CT scans, radiology images, or multi-modal patient datasets, this session will equip you with the tools to design robust, transparent, and insight-driven computer vision pipelines ā powered by FiftyOne, the open-source platform for Visual AI.
By the end of the workshop, you'll be able to:
- Load and organize complex medical datasets (e.g., ARCADE, DeepLesion) with FiftyOne.
- Explore medical imaging data using embeddings, patches, and metadata filters.
- Curate balanced datasets and fine-tune models using Ultralytics YOLOv8 for tasks like stenosis detection.
- Analyze segment CT scans using MedSAM2.
- Analyze results from VLMs and foundation models like MedGEMMA, NVIDIA VISTA, and NVIDIA CRADIO.
- Evaluate model predictions and uncover failure cases using real-world clinical examples.
Why Attend?
This healthcare edition of our "Getting Started with FiftyOne" workshop connects foundational tools with real-world impact. Through curated datasets and clinical use cases, you'll see how to harness Visual AI responsibly, building data-centric pipelines that promote accuracy, interpretability, and trust in medical AI systems.
Prerequisites
Basic knowledge of Python and computer vision is recommended. No prior experience in healthcare is required ā just curiosity and a commitment to building meaningful AI.
All participants will receive access to workshop notebooks, code examples, and extended resources to continue their journey in healthcare AI.
- Network event123 attendees from 39 groups hostingJuly 24 - Women in AILink visible for attendees
Hear talks from experts on cutting-edge topics in AI, ML, and computer vision!
When
Jul 24, 2025 at 9 - 11 AM Pacific
Where
Online. Register for the Zoom
Exploring Vision-Language-Action (VLA) Models: From LLMs to Embodied AI
This talk will explore the evolution of foundation models, highlighting the shift from large language models (LLMs) to vision-language models (VLMs), and now to vision-language-action (VLA) models. We'll dive into the emerging field of robot instruction followingāwhat it means, and how recent research is shaping its future. I will present insights from my 2024 work on natural language-based robot instruction following and connect it to more recent advancements driving progress in this domain.
About the Speaker
Shreya Sharma is a Research Engineer at Reality Labs, Meta, where she works on photorealistic human avatars for AR/VR applications. She holds a bachelorās degree in Computer Science from IIT Delhi and a masterās in Robotics from Carnegie Mellon University. Shreya is also a member of the inaugural 2023 cohort of the Quad Fellowship. Her research interests lie at the intersection of robotics and vision foundation models.
Farming with CLIP: Foundation Models for Biodiversity and Agriculture
Using open-source tools, we will explore the power and limitations of foundation models in agriculture and biodiversity applications. Leveraging the BIOTROVE dataset. The largest publicly accessible biodiversity dataset curated from iNaturalist, we will showcase real-world use cases powered by vision-language models trained on 40 million captioned images. We focus on understanding zero-shot capabilities, taxonomy-aware evaluation, and data-centric curation workflows.
We will demonstrate how to visualize, filter, evaluate, and augment data at scale. This session includes practical walkthroughs on embedding visualization with CLIP, dataset slicing by taxonomic hierarchy, identification of model failure modes, and building fine-tuned pest and crop monitoring models. Attendees will gain insights into how to apply multi-modal foundation models for critical challenges in agriculture, like ecosystem monitoring in farming.
About the Speaker
Paula Ramos has a PhD in Computer Vision and Machine Learning, with more than 20 years of experience in the technological field. She has been developing novel integrated engineering technologies, mainly in Computer Vision, robotics, and Machine Learning applied to agriculture, since the early 2000s in Colombia. During her PhD and Postdoc research, she deployed multiple low-cost, smart edge & IoT computing technologies, such as farmers, that can be operated without expertise in computer vision systems. The central objective of Paulaās research has been to develop intelligent systems/machines that can understand and recreate the visual world around us to solve real-world needs, such as those in the agricultural industry.
Multi-modal AI in Medical Edge and Client Device Computing
In this live demo, we explore the transformative potential of multi-modal AI in medical edge and client device computing, focusing on real-time inference on a local AI PC. Attendees will witness how users can upload medical images, such
as X-Rays, and ask questions about the images to the AI model. Inference is executed locally on Intel's integrated GPU and NPU using OpenVINO, enabling developers without deep AI experience to create generative AI applications.About the Speaker
Helena Klosterman is an AI Engineer at Intel, based in the Netherlands, Helena enables organizations to unlock the potential of AI with OpenVINO, Intel's AI inference runtime. She is passionate about democratizing AI, developer experience, and bridging the gap between complex AI technology and practical applications.
The Business of AI
The talk will focus on the importance of clearly defining a specific problem and a use case, how to quantify the potential benefits of an AI solution in terms of measurable outcomes, evaluating technical feasibility in terms of technical challenges and limitations of implementing an AI solution, and envisioning the future of enterprise AI.
About the Speaker
Milica Cvetkovic is an AI engineer and consultant driving the development and deployment of production-ready AI systems for diverse organizations. Her expertise spans custom machine learning, generative AI, and AI operationalization. With degrees in mathematics and statistics, she possesses a decade of experience in education and edtech, including curriculum design and machine learning instruction for technical and non-technical audiences. Prior to Google, Milica held a data scientist role in biotechnology and has a proven track record of advising startups, demonstrating a deep understanding of AI's practical application.
Past events (32)
See all- Network event156 attendees from 37 groups hostingJuly 11 - Best of CVPR Virtual EventThis event has passed