Rated Excellent

250+ Courses

30,000+ Learners

95+ Countries

USD $0.00
Cart

No products in the cart.

AI Model Deployment and Serving Course – 3 Weeks

USD $78.00

This program focuses on the end-to-end process of AI model deployment, exploring cloud-based platforms, containerization, and model serving frameworks like TensorFlow Serving, Flask, and Kubernetes. Participants will gain hands-on experience in deploying models and managing them post-deployment for real-time or batch predictions.

Aim

The program aims to provide advanced knowledge on deploying and serving machine learning models in production environments. Participants will learn best practices to ensure scalability, real-time inference, and continuous model management, focusing on the practical aspects of AI model deployment.

Program Objectives

  • End-to-End Model Deployment: Learn the full process of deploying machine learning models in production.
  • Scalable and Secure Serving Systems: Implement scalable systems for secure model serving.
  • Real-Time vs. Batch Inference: Understand the differences and best practices for each.
  • Cloud and Containerization: Explore solutions using cloud platforms, Docker, and Kubernetes.
  • Post-Deployment Challenges: Manage model drift, retraining, and ongoing maintenance.

Program Structure

Module 1: Introduction to AI Model Deployment

  • Overview of Model Deployment and Serving
  • Key Challenges: From Development to Deployment
  • Concepts: Latency, Scalability, and Monitoring

Module 2: Model Serving Architectures

  • Batch vs. Real-Time Serving: Pros and Cons
  • REST APIs for Model Deployment
  • Microservices Architecture for Scaling AI Models

Module 3: Deploying Models on Cloud Platforms

  • Deploying Models in the Cloud (AWS, Google Cloud, Azure)
  • Introduction to Machine Learning as a Service (MLaaS)
  • Docker and Kubernetes for Model Deployment
  • Case Study: Deploying a Model on AWS SageMaker

Module 4: Continuous Integration and Continuous Deployment (CI/CD) for Machine Learning

  • Understanding CI/CD Pipelines for AI
  • Automating the Model Deployment Workflow
  • Integrating CI/CD with Model Retraining
  • Tools: Jenkins, GitHub Actions, CircleCI

Module 5: Model Monitoring and Maintenance

  • Monitoring Model Performance in Production
  • Drift Detection: Data Drift vs. Concept Drift
  • Automating Model Retraining and Updates
  • Logging, Metrics, and Alerts for Model Health

Module 6: Model Optimization for Serving

  • Techniques for Model Compression (Quantization, Pruning)
  • Optimizing Models for Edge Devices
  • Reducing Latency with Batch Inference
  • Tools: TensorRT, ONNX

Module 7: Security and Privacy in Model Deployment

  • Securing Deployed Models: Authentication and Encryption
  • Handling Sensitive Data in Model Serving
  • Data Privacy Concerns: GDPR, CCPA, etc.
  • Case Studies: Secure Model Deployment in AI

Module 8: Final Project

  • Design and Deploy a Machine Learning Model for Real-Time Serving
  • Focus: Cloud Deployment, CI/CD Pipeline, or Model Monitoring
  • Present Deployment Strategy, Challenges, and Solutions

Participant’s Eligibility

  • Data scientists, AI engineers, DevOps professionals, and cloud engineers interested in model deployment and serving.

Program Outcomes

  • Master Model Deployment: Master deploying AI models using Docker, Kubernetes, and cloud platforms.
  • Scalable Inference Systems: Implement real-time and batch inference for high-demand environments.
  • Post-Deployment Maintenance: Gain expertise in monitoring, managing, and retraining models in production.
  • Model Optimization: Learn techniques for compressing and optimizing models for faster performance.

Program Deliverables

  • e-LMS Access: All course materials available online.
  • Real-Time Project: Practical project on deploying AI models in production.
  • Guidance: Project and dissertation guidance from industry experts.
  • Certification: Upon successful completion of all assessments.

Future Career Prospects

  • AI DevOps Engineer
  • Cloud AI Engineer
  • Model Deployment Engineer
  • AI Infrastructure Specialist
  • AI Solutions Architect

Job Opportunities

  • Cloud Computing Firms: Companies offering AI deployment services.
  • AI Startups: Companies needing scalable model serving solutions.
  • Large Enterprises: Businesses deploying AI models for real-time applications.
  • Data Science Teams: Teams focused on model maintenance, drift detection, and monitoring.
MODE

Online/ e-LMS

TYPE

Self Paced

LEVEL

Moderate

DURATION

3 Weeks

Reviews

There are no reviews yet.

Be the first to review “AI Model Deployment and Serving Course – 3 Weeks”

Your email address will not be published. Required fields are marked *

Certification

  • Upon successful completion of the workshop, participants will be awarded a Certificate of Completion, validating their skills and knowledge in advanced AI ethics and regulatory frameworks. This certification can be added to your LinkedIn profile or shared with employers to demonstrate your commitment to ethical AI practices.

Achieve Excellence & Enter the Hall of Fame!

Elevate your research to the next level! Get your groundbreaking work considered for publication in  prestigious Open Access Journal (worth USD 1,000) and Opportunity to join esteemed Centre of Excellence. Network with industry leaders, access ongoing learning opportunities, and potentially earn a place in our coveted 

Hall of Fame.

Achieve excellence and solidify your reputation among the elite!

14 + years of experience

over 400000 customers

100% secure checkout

over 400000 customers

Well Researched Courses

verified sources