MLOps Community
The MLOps Community is where machine learning practitioners come together to define and implement MLOps.
Our global community is the default hub for MLOps practitioners to meet other MLOps industry professionals, share their real-world experience and challenges, learn skills and best practices, and collaborate on projects and employment opportunities. We are the world's largest community dedicated to addressing the unique technical and operational challenges of production machine learning systems.
Events
6:55 PM - 8:00 PM, Jan 23 GMT
Agent Hour
AI Agents: Talks and Virtual RoundtablesWe're on a roll in 2025! Join us for our fourth bi-weekly Agent Hour as we continue the conversation about AI agents. Agent Hour Part #4 kicks off with 2 talks from Nirodya Pussadeniya and Zach Wallace wrapping up w
3:00 PM - 8:00 PM, Nov 13 GMT
Agents in Production
5:00 PM - 6:00 PM, Oct 30 GMT
Productionalizing AI: Driving Innovation with Cost-Effective Strategies
4:00 PM - 5:00 PM, Sep 25 GMT
Boosting LLMs: Performance, Scaling, and Structured Outputs
Content
video
Qualcomm® AI Hub helps to optimize, validate, and deploy machine learning models on-device for vision, audio, and speech use cases.
With Qualcomm® AI Hub, you can:
Convert trained models from frameworks like PyTorch and ONNX for optimized on-device performance on Qualcomm® devices.
Profile models on-device to obtain detailed metrics including runtime, load time, and compute unit utilization.
Verify numerical correctness by performing on-device inference.
Easily deploy models using Qualcomm® AI Engine Direct, TensorFlow Lite, or ONNX Runtime.
The Qualcomm® AI Hub Models repository contains a collection of example models that use Qualcomm® AI Hub to optimize, validate, and deploy models on Qualcomm® devices.
Qualcomm® AI Hub automatically handles model translation from source framework to device runtime, applying hardware-aware optimizations, and performs physical performance/numerical validation. The system automatically provisions devices in the cloud for on-device profiling and inference. The following image shows the steps taken to analyze a model using Qualcomm® AI Hub.
Jan 17th, 2025 | Views 21
Blog
This blog compares three popular machine learning workflow orchestration tools: ZenML, Flyte, and Metaflow. It explores their features, use cases, and strengths, helping data scientists and engineers choose the best option for building and managing efficient ML pipelines.
Jan 15th, 2025 | Views 244
video
Demetrios chats with Zach Wallace, engineering manager at Nearpod, about integrating AI agents in e-commerce and edtech. They discuss using agents for personalized user targeting, adapting AI models with real-time data, and ensuring efficiency through clear task definitions. Zach shares how Nearpod streamlined data integration with tools like Redshift and DBT, enabling real-time updates. The conversation covers challenges like maintaining AI in production, handling high-quality data, and meeting regulatory standards. Zach also highlights the cost-efficiency framework for deploying and decommissioning agents and the transformative potential of LLMs in education.
Jan 14th, 2025 | Views 209