Course Outline

Introduction to Model Optimization and Deployment

  • Overview of DeepSeek models and deployment challenges
  • Understanding model efficiency: speed vs. accuracy
  • Key performance metrics for AI models

Optimizing DeepSeek Models for Performance

  • Techniques for reducing inference latency
  • Model quantization and pruning strategies
  • Using optimized libraries for DeepSeek models

Implementing MLOps for DeepSeek Models

  • Version control and model tracking
  • Automating model retraining and deployment
  • CI/CD pipelines for AI applications

Deploying DeepSeek Models in Cloud and On-Premise Environments

  • Choosing the right infrastructure for deployment
  • Deploying with Docker and Kubernetes
  • Managing API access and authentication

Scaling and Monitoring AI Deployments

  • Load balancing strategies for AI services
  • Monitoring model drift and performance degradation
  • Implementing auto-scaling for AI applications

Ensuring Security and Compliance in AI Deployments

  • Managing data privacy in AI workflows
  • Compliance with enterprise AI regulations
  • Best practices for secure AI deployments

Future Trends and AI Optimization Strategies

  • Advancements in AI model optimization techniques
  • Emerging trends in MLOps and AI infrastructure
  • Building an AI deployment roadmap

Summary and Next Steps

Requirements

  • Experience with AI model deployment and cloud infrastructure
  • Proficiency in a programming language (eg, Python, Java, C++)
  • Understanding of MLOps and model performance optimization

Audience

  • AI engineers optimizing and deploying DeepSeek models
  • Data scientists working on AI performance tuning
  • Machine learning specialists managing cloud-based AI systems
 14 Hours

Number of participants


Price per participant

Testimonials (2)

Upcoming Courses (Minimal 5 peserta)

Related Categories