Webinar: MLOps automation with Git Based CI/CD for ML

Deploying AI/ML based applications is far from trivial. On top of the traditional DevOps challenges, you need to foster collaboration between multidisciplinary teams (data-scientists, data/ML engineers, software developers and DevOps), handle model and experiment versioning, data versioning, etc. Most ML/AI deployments involve significant manual work, but this is changing with the introduction of new frameworks that leverage cloud-native paradigms, Git and Kubernetes to automate the process of ML/AI-based application deployment. In this session we will explain how ML Pipelines work, the main challenges and the different steps involved in producing models and data products (data gathering, preparation, training/AutoML, validation, model deployment, drift monitoring and so on). We will demonstrate how the development and deployment process can be greatly simplified and automated. We’ll show how you can: a. maximize the efficiency and collaboration between the various teams, b. harness Git review processes to evaluate models, and c. abstract away the complexity of Kubernetes and DevOps. We will demo how to enable continuous delivery of machine learning to production using Git, CI frameworks (e.g. GitHub Actions) with hosted Kubernetes, Kubeflow, MLOps orchestration tools (MLRun), and Serverless functions (Nuclio) using real-world application examples. Presenter: Yaron Haviv, Co-Founder and CTO @Iguazio

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MLOps Explained - What It Is, Why You Need It and How It Works

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MLOps on Databricks: A How-To Guide

Jfrog | Jfrog Artifactory | Jfrog Artifactory Tutorial | Artifactory Tutorial | Intellipaat
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Jfrog | Jfrog Artifactory | Jfrog Artifactory Tutorial | Artifactory Tutorial | Intellipaat

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AWS re:Invent 2021 - Implementing MLOps practices with Amazon SageMaker, featuring Vanguard

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Дмитрий Бугайченко — Что такое MLOps и как это работает на примере Сбера

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Webinar: Local Development in The Age of Kubernetes

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Build & Deploy ML Regression model with FastAPI, MLFlow, Docker, & AWS

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MLflow Pipelines: Accelerating MLOps from Development to Production

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Why The Best Software Engineers Focus On System Design

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RAG Crash Course for Beginners

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Build & Deploy ML Churn model with FastAPI, MLFlow, Docker, & AWS

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Introduction to CI CD Pipeline | CI CD Explained | DevOps Training | Edureka Rewind

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Free Event: Power BI Beginner to Pro 2026 Edition - Full Hands-On Tutorial

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OpenShift Coffee Break: MLOps with OpenShift

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AWS re:Invent 2020: Building end-to-end ML workflows with Kubeflow Pipelines

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Build a Complete Medical Chatbot with LLMs, LangChain, Pinecone, Flask & AWS 🔥

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Git & GitHub Tutorial | Visualized Git Course for Beginner & Professional Developers in 2024

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AWS Summit ANZ 2022 - End-to-end MLOps for architects (ARCH3)

MLOps for non-DevOps folks, a.k.a. “I have a model, now what?! - Hannes Hapke - ML4ALL 2019
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MLOps for non-DevOps folks, a.k.a. “I have a model, now what?! - Hannes Hapke - ML4ALL 2019

MLflow: An Open Platform to Simplify the Machine Learning Lifecycle
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MLflow: An Open Platform to Simplify the Machine Learning Lifecycle