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Thang - Quá đỉnh! Đây đúng là blueprint chuẩn bài cho anh em muốn biến mô hình AI từ “thử nghiệm vui vui” thành “sản phẩm xịn xò có người dùng thật”. Mỗi bước trong LLMOps giống như một bánh răng trong cỗ máy lớn – bỏ một cái là trật nhịp ngay. Từ việc làm sạch dữ liệu, gắn metadata, đến deployment rồi feedback loop – đều cần chăm chút kỹ càng. Tưởng mệt nhưng mà ai làm rồi sẽ thấy, nó cực kỳ đáng! 💪 LLMOps is about running LLMs like real products with feedback loops, monitoring, and continuous improvement baked in 💯 This visual breaks it down into 14 steps that make LLMs production-ready and future-proof. 🔹 Steps 1-2: Collect Data + Clean & Organize Where does any good model start? With data. You begin by collecting diverse, relevant sources: chats, documents, logs, anything your model needs to learn from. Then comes the cleanup. Remove noise, standardize formats, and structure it so the model doesn’t get confused by junk. 🔹 Steps 3-4: Add Metadata + Version Your Dataset Now that your data is clean, give it context. Metadata tells you the source, intent, and type of each data point: this is key for traceability. Once that’s done, store everything in a versioned repository. Why? Because every future change needs a reference point. No versioning = no reproducibility. 🔹 Steps 5-6: Select Base Model + Fine-Tune Here’s where the model work begins. You choose a base model like GPT, Claude, or an open-source LLM depending on your task and compute budget. Then, you fine-tune it on your versioned dataset to adapt it to your specific domain, whether that’s law, health, support, or finance. 🔹 Steps 7-8: Validate Output + Register the Model Fine-tuning done? Cool, and now test it thoroughly. Run edge cases, evaluate with test prompts, and check if it aligns with expectations. Once it passes, register the model so it’s tracked, documented, and ready for deployment. This becomes your source of truth. 🔹 Steps 9-10: Deploy API + Monitor Usage The model is ready! You expose it via an API for apps or users to interact with. Then you monitor everything: requests, latency, failure cases, prompt patterns. This is where real-world insights start pouring in. 🔹 Steps 11-12: Collect Feedback + Store in User DB You gather feedback from users: explicit complaints, implicit behavior, corrections, and even prompt rephrasing. All of that goes into a structured user database. Why? Because this becomes the compass for your next update. 🔹 Steps 13-14: Decide on Updates + Monitor Continuously Here’s the big question: Is your model still doing well? Based on usage and feedback, you decide: continue as is or loop back and improve. And even if things seem fine, you never stop monitoring. Model performance can drift fast
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