Introduction: LLM agents extend language models beyond text generation into autonomous action. By connecting LLMs to tools—web search, code execution, APIs, databases—agents can gather information, perform calculations, and interact with external systems. This guide covers building tool-using agents from scratch: defining tools with schemas, implementing the reasoning loop, handling tool execution, managing conversation state, and […]
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Prompt Template Management: Engineering Discipline for LLM Prompts
Introduction: Prompts are the interface between your application and LLMs. As applications grow, managing prompts becomes challenging—they’re scattered across code, hard to version, and difficult to test. A prompt template system brings order to this chaos. It separates prompt logic from application code, enables versioning and A/B testing, and makes prompts reusable across different contexts. […]
Read more →Document Processing with LLMs: Enterprise Parsing, Chunking, and Extraction (Part 2 of 2)
Introduction: Processing documents with LLMs unlocks powerful capabilities: extracting structured data from unstructured text, summarizing lengthy reports, answering questions about document content, and transforming documents between formats. However, effective document processing requires more than just sending text to an LLM—it demands careful parsing, intelligent chunking, and strategic prompting. This guide covers practical document processing patterns: […]
Read more →Multi-Cloud AI Strategies: Avoiding Vendor Lock-in
Multi-cloud AI strategies prevent vendor lock-in and optimize costs. After implementing multi-cloud for 20+ AI projects, I’ve learned what works. Here’s the complete guide to multi-cloud AI strategies. Figure 1: Multi-Cloud AI Architecture Why Multi-Cloud for AI Multi-cloud strategies offer significant advantages: Vendor independence: Avoid lock-in to single cloud provider Cost optimization: Use best pricing […]
Read more →Natural Language Processing for Data Analytics: Trends and Applications
After two decades of building data systems, I’ve watched Natural Language Processing evolve from a research curiosity into an indispensable tool for extracting value from the vast ocean of unstructured text that enterprises generate daily. The convergence of transformer architectures, cloud-scale computing, and mature NLP libraries has fundamentally changed how we approach data analytics, enabling […]
Read more →Azure API Management for Healthcare: Security and Compliance
Healthcare API Architecture with Azure APIM HIPAA Compliance Requirements ⚖️ HIPAA Technical Safeguards for API Management ✓ Access Control (§164.312(a)(1)): Role-based access, unique user IDs, emergency access procedures ✓ Audit Controls (§164.312(b)): Log all PHI access, monitor API calls, immutable audit trails ✓ Integrity (§164.312(c)(1)): Validate data not altered, use checksums/digital signatures ✓ Transmission Security […]
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