Certificates & Achievements
DeepLearning.ai MCP Course Certificate
Successfully completed the DeepLearning.ai Model Context Protocol (MCP) course, gaining comprehensive knowledge of MCP's theoretical foundations and practical implementations. The course provided hands-on experience with both high-level concepts and low-level protocol details, enabling the creation of powerful AI applications through standardized context management.
Key Learnings:
- Protocol Fundamentals: Mastered MCP architecture including host, client, and server components and their interactions
- Tool Development: Created custom MCP tools and resources for enhanced AI capabilities
- Implementation: Gained experience with both local (stdio) and remote (HTTP/SSE) transport protocols
- Integration: Extended Claude Desktop's functionality by integrating community MCP servers
- Practical Application: Applied MCP concepts to enhance LLM capabilities through structured context management
🤗 HuggingFace MCP Course Certificate
Successfully completed the HuggingFace Model Context Protocol (MCP) course, mastering the standardized approach to integrating external data and tools with large language models. This comprehensive program provided hands-on experience with MCP SDKs and frameworks, enabling the creation of powerful, context-aware AI applications.
Key Learnings:
- MCP Fundamentals: Gained deep understanding of the Model Context Protocol standard and its role in AI application development
- Technical Implementation: Mastered MCP SDKs and frameworks for building context-aware AI applications
- Practical Applications: Developed real-world solutions using MCP to integrate external data sources and tools with LLMs
- Community Collaboration: Engaged with the MCP community, sharing projects and learning from industry implementations
- Best Practices: Learned to design scalable and maintainable AI applications using MCP standards
🤗 HuggingFace AI Agent Course Certificate
Successfully completed the HuggingFace AI Agents course, a comprehensive program that combines theoretical foundations with hands-on implementation of AI agents. Through this course, I gained practical experience with cutting-edge agent frameworks and contributed to the open-source AI community by sharing my work on the Hugging Face Hub.
Key Learnings:
- Core Frameworks: Mastered smolagents, LlamaIndex, and LangGraph for building sophisticated AI agents
- Agent Architecture: Designed and implemented autonomous agents with capabilities for complex decision-making
- Practical Implementation: Developed and deployed agents in real-world scenarios
- Community & Collaboration: Participated in challenges and engaged with the AI community
- Model Fine-tuning: Specialized in fine-tuning LLMs for function-calling and optimizing agent performance