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About us

This group is for sharing ideas and experience in the field of computer vision from both industry and academic experts.
Join to share your inspiring ideas, connect, and create new opportunities within members.

Sponsors

Versatile

Versatile

Hosting April 2021 event

Cloudinary

Cloudinary

Sponsoring Sep 2018 meetup

Healthy.io

Healthy.io

Sponsoring Aug 2018 meetup

LEO pharma

LEO pharma

Sponsoring our July 2018 meetup

Upcoming events

9

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  • Network event
    March 12 - Agents, MCP and Skills Virtual Meetup

    March 12 - Agents, MCP and Skills Virtual Meetup

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    Online
    Online
    802 attendees from 48 groups

    Join us for a special edition of the AI, ML and Computer Vision Meetup where we will focus on Agents, MCP and Skills!

    Date, Time, Location

    Mar 12, 2026
    9 - 11 AM PST
    Online.
    Register for the Zoom!

    Agents Building Agents on the Hugging Face Hub

    Discover how coding agents can run or support your fine-tuning experiments. From quick dataset validation and preprocessing, to optimal GPU hardware selection, to automated job submission based on metric tracking, to evaluation. Ben will demonstrate how Hugging Face skills can be used to define best practices for agents to support machine learning experiments. Bring Claude, Codex, or Mistral Vibes, and we’ll show you to get it training models with GRPO, SFT, and DPO.

    About the Speaker

    Ben Burtenshaw is a Machine Learning Engineer at Hugging Face, focusing on building agents with fine-tuning and reinforcement learning. He led educational projects like the Agents Course, the MCP Course, and the LLM course, which bridge the gap between complex Reinforcement Learning (RL) techniques and practical application. Ben focuses on democratizing access to efficient AI, empowering the community to align, evaluate, and deploy transparent agentic systems.

    Claude Code Templates

    This talk explores how to configure and align Claude Code agents using templates and custom components. I'll demonstrate practical configuration patterns that ensure your CLI agent executes exactly what you intend, covering Skills setup, hooks implementation, and template customization. Drawing from real-world examples building Claude Code Templates, attendees will learn how to structure their agent configurations for consistent, reliable behavior and create reusable components that maintain alignment across different use cases.

    About the Speaker

    Daniel Avila is an AI Engineer at Hedgineer building agentic systems and creator of Claude Code Templates.

    Move Faster in Computer Vision by Teaching Agents to See Your Data

    Computer vision teams spend too much time writing scripts just to find bad labels, blurry images, and edge cases. In this talk, I’ll show how to move that work to agents by using FiftyOne as a visual operating system. With Skills and MCP, agents can see inside your datasets, explore them visually, and handle common data cleanup tasks, so you can spend less time on data and more time shipping models.

    About the Speaker

    Adonai Vera - Machine Learning Engineer & DevRel at Voxel51. With over 7 years of experience building computer vision and machine learning models using TensorFlow, Docker, and OpenCV. I started as a software developer, moved into AI, led teams, and served as CTO. Today, I connect code and community to build open, production-ready AI, making technology simple, accessible, and reliable.

    Skills As Documentation

    Skills are self-contained recipes - each one a piece of a larger puzzle. Instead of trying to modify human-centric documentation to better fit agents, skills let us build capabilities into our agents directly. This talk will showcase how to think about leveraging skills to enhance how users interact with your software!

    About the Speaker

    Chris Alexiuk is a deep learning developer advocate at NVIDIA, working on creating technical assets that help developers use the incredible suite of AI tools available at NVIDIA. Chris comes from a machine learning and data science background, and he is obsessed with everything and anything about large language models.

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    34 attendees from this group
  • Network event
    March 18 - Vibe Coding Production-Ready Computer Vision Pipelines Workshop

    March 18 - Vibe Coding Production-Ready Computer Vision Pipelines Workshop

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    Online
    Online
    352 attendees from 48 groups

    Join us for an interactive workshop where we'll build production-ready computer vision pipelines using vibe coded FiftyOne plugins.

    Register for the Zoom

    Plugins enable you to customize the open-source FiftyOne computer vision app to match your exact workflow by easily incorporating data annotation, curation, model evaluation and inference.

    We'll demonstrate how FiftyOne Skills and the MCP Server can streamline the journey from prototype to production-ready pipelines, keeping your development flow intact.

    Perfect for open-source contributors, researchers, and enterprise teams seeking hands-on experience. All participants receive slides, notebooks, and access to GitHub repositories and videos from the workshop.

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    20 attendees from this group
  • Network event
    March 26 - Advances in AI at Northeastern University

    March 26 - Advances in AI at Northeastern University

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    Online
    Online
    160 attendees from 48 groups

    Join us to hear about the latest advances in AI at Northeastern University!

    Date, Time and Location

    March 26, 2026
    9 - 11 AM Pacific
    Online.
    Register for the Zoom!

    Scalable and Efficient Deep Learning: From Understanding to Generation

    In an era where model complexity and deployment constraints increasingly collide, achieving both scalability and efficiency in deep learning has become essential. Scalable and efficient deep learning ensures that powerful models can be trained, deployed, and adapted under limited computational and data resources, enabling broader accessibility and practical application. From understanding to generation, this talk unifies methods that cut costs while preserving capability.

    About the Speaker

    Yitian Zhang is a fifth-year PhD student at Northeastern University, advised by Prof. Yun Raymond Fu. His research interests center around Efficient and Scalable AI, spanning Generative Models, Multimodal Large Language Models, and Foundation Models.

    Grounding Visual AI Models in Real-World Physics

    Generative video models have made rapid progress in visual realism, yet they frequently violate basic physical laws, producing implausible motion and incorrect cause-effect relationships. This talk presents MoReGen, a physics-grounded, agentic text-to-video generation framework that integrates Newtonian physics directly into the generation process via executable physics-engine code.

    By coupling vision–language models with trajectory-based physical evaluation and iterative feedback, MoReGen produces videos that are both visually coherent and physically consistent. We further introduce MoRe Metrics and MoReSet, a benchmark and dataset designed to evaluate physics fidelity beyond appearance-based metrics such as FID and FVD. Together, this work demonstrates a path toward visual AI systems that reason about motion, interaction, and causality in the real world rather than hallucinating them.

    About the Speakers

    Professor Sarah Ostadabbas is an Associate Professor of Electrical and Computer Engineering at Northeastern University, where she directs the Augmented Cognition Lab (ACLab) and serves as Director of Women in Engineering. Her research focuses on computer vision and machine learning, with an emphasis on motion-centric representation learning, small-data AI, and applications in healthcare, defense, and behavior understanding under privacy and data constraints. She has authored over 130 peer-reviewed publications and received numerous honors, including the NSF CAREER Award, Sony Faculty Innovation Award, and the Cade Prize for Inventivity, along with multiple industry and federal research awards.

    Xiangyu Bai is a third-year PhD student in the ACLab and leads the lab's work on physics-aware visual intelligence, with several publications in top-tier computer vision and robotics conferences.

    WorldFormer: Diffusion Transformer World Models with Mixture-of-Experts for Embodied Physical Intelligence

    World models have emerged as a foundational paradigm for enabling agents to simulate, predict, and reason about complex environments. Recent advances driven by diffusion transformer (DiT) architectures have dramatically expanded the fidelity, scalability, and physical plausibility of learned world models. In this work, we present a world model framework built upon the diffusion transformer paradigm, following the design philosophy of state-of-the-art systems such as NVIDIA Cosmos. Our approach comprises three core components: (1) a spatiotemporal variational autoencoder (VAE) that compresses high-resolution video into a compact continuous latent space with strong temporal causality, enabling efficient encoding and decoding of long-horizon video sequences; (2) a transformer-based diffusion backbone that operates on 3D-patchified latent tokens, leveraging self-attention and cross-attention with text embeddings to iteratively denoise Gaussian noise into physically coherent future video states using a flow matching objective; and (3) a scalable pre-training and post-training pipeline that first trains a generalist world foundation model on large-scale, diverse video data and then specializes it to target physical AI domains — such as robotic manipulation, autonomous driving, or embodied navigation — through task-specific fine-tuning.

    Our model supports both text-to-world and video-to-world generation, enabling action-conditioned future state prediction for downstream planning and policy learning. We discuss implications for synthetic data generation, sim-to-real transfer, and the integration of world models into vision-language-action (VLA) pipelines for physical AI.

    About the Speaker

    Yanzhi Wang joined the Electrical & Computer Engineering department in August 2018 as an Assistant Professor. He earned his PhD at University of Southern California. His research interests include energy-efficient and high-performance implementations of deep learning and artificial intelligence systems; neuromorphic computing and non-von Neumann computing paradigms; cyber-security in deep learning systems; emerging deep learning algorithms/systems such as Bayesian neural networks, generative adversarial networks (GANs) and deep reinforcement learning.

    Physical AI Research (PAIR) Center: Foundational Pairing of Digital Intelligence & Physical World Deployment at Northeastern University and Beyond

    The Physical AI Research (PAIR) initiative advances the next frontier of artificial intelligence: enabling systems that can perceive, reason, and act reliably in the physical world. By uniting expertise across engineering, computer science, health sciences, and the social sciences, PAIR develops safe, transparent, and human-aligned AI that bridges digital models with real-world dynamics. The initiative is organized around three intellectual pillars: Learning and Modeling the World, through physics-informed multimodal learning, realistic simulations, and digital twins; Reasoning in the World, by integrating multimodal evidence to support grounded decision-making under uncertainty; and Acting in the World, by ensuring AI systems are verifiable, explainable, energy-efficient, and trustworthy. Together, these efforts position Physical AI as a foundational science driving innovation in health, sustainability, and security.

    About the Speaker

    Edmund Yeh is the Department Chair of Electrical and Computer Engineering at Northeastern University.

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    3 attendees from this group
  • Network event
    April 2 - AI, ML and Computer Vision Meetup

    April 2 - AI, ML and Computer Vision Meetup

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    Online
    Online
    187 attendees from 48 groups

    Join our virtual Meetup to hear talks from experts on cutting-edge topics across AI, ML, and computer vision.

    Date, Time and Location

    Apr 2, 2026
    9 - 11 AM Pacific
    Online.
    Register for the Zoom!

    Async Agents in Production: Failure Modes and Fixes

    As models improve, we are starting to build long-running, asynchronous agents such as deep research agents and browser agents that can execute multi-step workflows autonomously. These systems unlock new use cases, but they fail in ways that short-lived agents do not.

    The longer an agent runs, the more early mistakes compound, and the more token usage grows through extended reasoning, retries, and tool calls. Patterns that work for request-response agents often break down, leading to unreliable behaviour and unpredictable costs.

    This talk is aimed at use case developers, with secondary relevance for platform engineers. It covers the most common failure modes in async agents and practical design patterns for reducing error compounding and keeping token costs bounded in production.

    About the Speaker

    Meryem Arik is the co-founder and CEO of Doubleword, where she works on large-scale LLM inference and production AI systems. She studied theoretical physics and philosophy at the University of Oxford. Meryem is a frequent conference speaker, including a TEDx speaker and a four-time highly rated speaker at QCon conferences. She was named to the Forbes 30 Under 30 list for her work in AI infrastructure.

    Visual AI at the Edge: Beyond the Model

    Edge-based visual AI promises low latency, privacy, and real-time decision-making, but many projects struggle to move beyond successful demos. This talk explores what deploying visual AI at the edge really involves, shifting the focus from models to complete, operational systems. We will discuss common pitfalls teams encounter when moving from lab to field. Attendees will leave with a practical mental model for approaching edge vision projects more effectively.

    About the Speaker

    David Moser is an AI/Computer Vision expert and Founding Engineer with a strong track record of building and deploying safety-critical visual AI systems in real-world environments. As Co-Founder of Orella Vision, he is building Visual AI for Autonomy on the Edge - going from data and models to production-grade edge deployments.

    Sanitizing Evaluation Datasets: From Detection to Correction

    We generally accept that gold standard evaluation sets contain label noise, yet we rarely fix them because the engineering friction is too high. This talk presents a workflow to operationalize ground-truth auditing. We will demonstrate how to bridge the gap between algorithmic error detection and manual rectification. Specifically, we will show how to inspect discordant ground truth labels and correct them directly in-situ. The goal is to move to a fully trusted end-to-end evaluation pipeline.

    About the Speaker

    Nick Lotz is an engineer on the Voxel51 community team. With a background in open source infrastructure and a passion for developer enablement, Nick focuses on helping teams understand their tools and how to use them to ship faster.

    Building enterprise agentic systems that scale

    Building AI agents that work in demos is easy, building true assistants that make people genuinely productive takes a different set of patterns. This talk shares lessons from a multi-agent system at Cisco used by 2,000+ sellers daily, where we moved past "chat with your data" to encoding business workflows into true agentic systems people actually rely on to get work done.

    We'll cover multi-agent orchestration patterns for complex workflows, the personalization and productivity features that drive adoption, and the enterprise foundations that helped us earn user trust at scale. You'll leave with an architecture and set of patterns that have been battle tested at enterprise scale.

    About the Speaker

    Aman Sardana is a Senior Engineering Architect at Cisco, I lead the design and deployment of enterprise AI systems that blend LLMs, data infrastructure, and customer experience to solve high‑stakes, real-world problems at scale. I’m also an open-source contributor and active mentor in the AI community, helping teams move from AI experimentation to reliable agentic applications in production.

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    14 attendees from this group

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