Founder | Agentic AI... • 7h
Most people studying AI agents never deploy one real system people actually use. Because they stop at prompts. Prompting is practice. Building is different. Production systems require architecture, workflows, evaluation, and real operational thinking beyond simple prompts. So here’s a practical roadmap. Three stages to reach production. Stage 1 - Foundations of GenAI systems Understand how generative models actually operate inside real applications and modern software products. Learn the fundamentals first. Study how LLM’s are trained, deployed, and integrated into modern systems. Practice structured prompting techniques that guide outputs and improve response reliability. Experiment with parameters like temperature, token limits, and sampling strategies carefully. Prepare data correctly. Break information into chunks models can retrieve efficiently during inference time. Connect language models with retrieval pipelines so responses stay grounded in external knowledge. Use vector databases. Tools like Pinecone or Chroma power semantic search across large knowledge collections. Build pipelines using orchestration frameworks such as LangChain or LlamaIndex. Enable models to call APIs Stage 2 - Agent architecture This is where systems move beyond responses and begin executing structured tasks. Agents plan actions. They observe context. They choose tools. Study frameworks like LangChain agents, CrewAI, AutoGen, or Agno. Build a task-performing agent. Design structured workflows guiding decisions across multiple reasoning steps. Add memory layers so systems remember previous interactions and contextual signals. Evaluate behavior continuously. Weak spots appear quickly. Improve reasoning through multi-step task decomposition and intermediate decision checkpoints. Experiment with multi-agent systems collaborating across specialized roles. Combine retrieval pipelines with agents for stronger contextual intelligence. Add planning layers. Define guardrails. Note: Safety matters in production. Stage 3 - Production agents The real difference appears here. Integrate agents with tools people already use like Slack, Gmail, or Notion. Expose capabilities through APIs. Build autonomous execution loops where agents observe, decide, act, and reassess. Add custom tools. Tune latency, reliability, and operational cost across repeated runs. Monitor system performance carefully with logs, metrics, and evaluation frameworks. Then deploy it. Real users. Real workflows. Prompting is the entry point. Shipping is the real skill.
Making AI tools easy... • 6m
How AI Agents Are Supercharging Business Workflows in 2025 🚀 AI agents are transforming business workflows in 2025 by automating repetitive tasks, enabling real-time decision-making, and driving efficiency across industries. Discover how multi-ag
See MoreFounder | Agentic AI... • 1d
Everyone wants AI agents. Very few understand the fundamentals behind them. Many teams imagine digital workers completing entire workflows automatically with almost zero oversight. Sounds powerful. Sometimes unrealistic. Remove the hype for a mome
See MoreFounder | Agentic AI... • 3m
If AI’s rapid pace feels overwhelming, trust me-everyone feels it. New models, new papers, new frameworks… it’s impossible to keep up with everything. And the good news is-you don’t have to. What actually helps is a clear path, not more noise. So I
See MoreFounder | Agentic AI... • 12d
What we once called Data Science is quietly transforming into something much broader today. Earlier, the formula felt simple and clearly defined for anyone entering analytics careers. Statistics plus software skills created the modern data scientist
See MoreFounder | Agentic AI... • 1m
Most people miss these principles while building AI agents. I’ve explained everything that you should keep in mind. 1. Never run an agent without clear context. 2. Define who the agent is and what it is responsible for. 3. Always log inputs, action
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Founder | Agentic AI... • 27d
Stop guessing which agentic AI tool fits your workflow. If you’re building agents, automations, or AI-powered systems in 2026, this guide will help you pick the right tool for the job. Top 10 Agentic AI Tools and Their Strengths: 1. n8n – Ideal for
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