Part 1 - Mastering MLOps : Introduction

  Рет қаралды 46

AI Council

AI Council

19 күн бұрын

📢 Welcome to AICouncil! 🚀 In this first video of our MLOps tutorial series, we dive deep into the essentials of MLOps: Machine Learning + Operations. This series is designed to help you streamline the deployment and management of your ML models with ease and efficiency.
🔍 What's Inside This Video:
Understanding MLOps:
Automation: Learn how to use tools and scripts to perform repetitive tasks without human intervention, such as automatic model retraining and deployment when new data is available.
Agility: Discover how to quickly adapt and update models in response to changing data patterns and business requirements.
Collaboration: Enable seamless communication among team members using platforms like MLflow or Kubeflow.
Stages of MLOps:
Data Collection & Preparation:
Data ingestion, preparation & exploration
Defining goals and identifying data sources
Preparing, labeling, and exploring raw data
Converting raw data into features
Model Development & Training:
Getting data ready for ML models
Performing model training & validation
Evaluating ML models
ML Service Deployment:
Integrating with existing applications
Creating front ends
Containerizing applications
Setting up API services
Model endpoint creation
Continuous Feedback & Monitoring:
Tracking data & infrastructure
Monitoring models
Measuring application metrics
Essential Tools:
Git: The cornerstone of version control in MLOps.
MLflow, Jenkins, Grafana: Enhance collaboration, automation, and monitoring.
Cloud Computing: AWS, Azure, and more.
Deep Dive into Git:
Version Control: Manage changes to code, ensuring trackable updates and history.
Collaboration & Team Workflow: Facilitate team collaboration with branching, merging, and pull requests.
Experiment Tracking & Branching: Track different model versions and configurations; create branches for experimentation.
CI/CD & IaC: Automate testing and deployment; manage infrastructure through code.
Artifact Management: Store and track binaries and models.
Auditability & Compliance: Maintain detailed history for regulatory reviews.
📂 Hands-on Demo:
Triggering Python code files through the command prompt.
Creating and managing a local Git repository.
Join us on this exciting journey and empower your ML projects with the best MLOps practices!
👁️‍🗨️ Subscribe to AICouncil for more in-depth tutorials and updates!
Github - github.com/bipulshahi/Complet...
website - www.aicouncil.in , www.aieagle.in
🔔 Hit the bell icon to never miss an update.
Keywords & Hashtags:
#MLOps #MachineLearning #Automation #Agility #Collaboration #DevOps #DataScience #MLflow #Git #Jenkins #Grafana #AWS #Azure #CI #CD #MLTutorial #AI #AICouncil #Python #DataEngineering #TechTutorial #ModelDeployment #DataPreparation #ContinuousIntegration #ContinuousDeployment #ExperimentTracking

Пікірлер: 3
@kashifsadiq4145
@kashifsadiq4145 18 күн бұрын
Great Series
@kashifsadiq4145
@kashifsadiq4145 18 күн бұрын
Cover in more detail mlops tools
@aicouncil535
@aicouncil535 11 күн бұрын
Yes Will cover complete MLOps in this series
AI Learns Insane Monopoly Strategies
11:30
b2studios
Рет қаралды 10 МЛН
Вечный ДВИГАТЕЛЬ!⚙️ #shorts
00:27
Гараж 54
Рет қаралды 11 МЛН
Khóa ly biệt
01:00
Đào Nguyễn Ánh - Hữu Hưng
Рет қаралды 20 МЛН
Children deceived dad #comedy
00:19
yuzvikii_family
Рет қаралды 6 МЛН
Java Programming: Calculate Gross Salary of Employees
10:34
CODE JAVA WITH AZ
Рет қаралды 9
Generative AI in a Nutshell - how to survive and thrive in the age of AI
17:57
Build an SQL Agent with Llama 3 | Langchain | Ollama
20:28
TheAILearner
Рет қаралды 2,4 М.
Event-Driven Architecture (EDA) vs Request/Response (RR)
12:00
Confluent
Рет қаралды 118 М.
How Agile failed software developers and why SCRUM is a bad idea
11:29
Bill Gates Reveals Superhuman AI Prediction
57:18
Next Big Idea Club
Рет қаралды 24 М.
Learn the Fundamentals of Microsoft Fabric in 38 minutes
38:00
Learn Microsoft Fabric with Will
Рет қаралды 127 М.
Вечный ДВИГАТЕЛЬ!⚙️ #shorts
00:27
Гараж 54
Рет қаралды 11 МЛН