Eric Wu

101 posts

Eric Wu banner
Eric Wu

Eric Wu

@ericwu_ai

AP @CAS__Science Chinese Academy of Sciences Redefining RAG and Agent Memory @Knowhere

Hong Kong เข้าร่วม Ağustos 2025
154 กำลังติดตาม23 ผู้ติดตาม
Eric Wu
Eric Wu@ericwu_ai·
Honestly, moving AI agents to production has been a total dilemma lately. Manual prompt engineering feels like a game of whack-a-mole—fix one thing, trigger a hallucination elsewhere. But task-specific fine-tuning (SFT) is too heavy, and the moment the base model upgrades, your hard-earned weights are obsolete. Then we stumbled upon Microsoft's open-source SkillOpt framework, and it's a refreshing approach. Instead of touching neural network weights, it treats the agent's execution prompt (skill.md) as a "trainable parameter," essentially replicating gradient descent entirely within a pure text semantic space. The absolute best parts about this from a dev perspective: 🔹 Zero extra inference cost – The final output is just a highly optimized, pure-text prompt you feed into a frozen model. 🔹 Insane portability – Your core business logic is preserved in text, meaning it won't break when next-gen LLMs drop. No sponsored fluff here—just our genuine engineering takeaways and some thought experiments we did after chewing through the paper. 👇 Check out our full breakdown and notes in the article below: medium.com/p/skillopt-bui… How is everyone else handling the prompt-vs-finetuning struggle in production right now? Drop your thoughts below! #AIAgents #LLMOps #SkillOpt #BuildInPublic
Eric Wu tweet media
English
1
0
4
82
Eric Wu
Eric Wu@ericwu_ai·
Many AI developers believe that hallucinations are entirely the model's fault, leaving them to passively wait for the next LLM upgrade. We strongly disagree. In fact, a significant portion of hallucinations stems from fragmented information that forces the AI into blind reasoning. By simply changing how we parse documents, we can drastically mitigate this issue. This is exactly why we built Knowhere. Unlike traditional RAG systems, Knowhere takes a fundamentally different parsing path. It maximizes the preservation of document structure and hierarchy. By providing rich, intact contextual information, it prevents the AI from blind guessing—thereby reducing hallucinations, improving response accuracy, and lowering token consumption. According to our benchmark tests, compared to traditional RAG or raw documents, using document memory processed by Knowhere improves the AI Agent's response accuracy by 26% (jumping from 53% to 79%)! If you are building enterprise Q&A systems, knowledge bases, or Agent applications in vertical sectors like finance, law, and healthcare, you should definitely give Knowhere a try. It is now fully open source: 👉 github.com/Ontos-AI/knowh… #AI #GenerativeAI #RAG #AIAgents #DataEngineering #OpenSource #Knowhere #EnterpriseAI Know more about how it works: 👉medium.com/p/ai-hallucina…
English
0
1
2
44
Eric Wu
Eric Wu@ericwu_ai·
We’ve been building in stealth, obsessed with one problem: How to give AI agents better memory without breaking the bank. Today, we are finally open-sourcing our core framework: Knowhere. 🔓 From 1.0 release to our new Tree-like chunking, it's been a wild ride. If you're building RAG systems and tired of noisy context windows, this is for you. ✅️50% token reduction ✅️Higher precision ✅️100% Open Source Drop a ⭐ on GitHub if you’re a fan of efficient AI! 🔗github.com/Ontos-AI/knowh… #BuildInPublic #AIStartup #OpenSource #RAG
English
0
1
3
31
Eric Wu
Eric Wu@ericwu_ai·
I’ve been waiting for this day. 🚀 Knowhere is officially OPEN SOURCE! Since we launched v1.0, the goal has always been to make AI-driven data structuring seamless. Now, we’re opening the hood. We want you—the builders, the hackers, and the visionaries—to help us shape the future of how AI interacts with information. Whether you want to build on top of our API or contribute to the core, come say hi in the repo! Let’s build something massive together. 🛠️ 🌟 GitHub (Drop a star!): github.com/Ontos-AI/knowh… 🌐 Try the Web App: knowhereto.ai/?utm_source=x 🔗 Live Playground: notebook.knowhereto.ai #BuildInPublic #OpenSource #AI #LLMs #DevCommunity More introduction: medium.com/p/after-months…
Eric Wu tweet media
English
0
1
2
32
Jake Fitzgerald
Jake Fitzgerald@earthtojake·
Clankers clanking each other
English
32
28
348
14.5K
Jake Fitzgerald
Jake Fitzgerald@earthtojake·
Wild things happening in San Francisco this evening
English
225
362
2.6K
376K
Eric Wu
Eric Wu@ericwu_ai·
@Yoda4ever She's a brave hunter, not a delicate flower
English
0
0
6
973
𝕐o̴g̴
𝕐o̴g̴@Yoda4ever·
Cat: "No, thank you.."🐈🐾😅
English
307
1.4K
14K
810.4K
Eric Wu
Eric Wu@ericwu_ai·
@claudeai Great news, however, for local forms, especially those involving confidentiality, if you still want the AI form-filling function, you need to try the SnapFill: gosnapfill.cn/landing?utm_so…
Eric Wu tweet media
English
1
1
3
43
Claude
Claude@claudeai·
Claude for Excel, PowerPoint, and Word are now generally available, and Claude for Outlook is in public beta. As Claude moves between your Microsoft apps, it carries the full context of your conversation.
English
1.1K
4.2K
48.4K
28.1M
Eric Wu
Eric Wu@ericwu_ai·
Honestly, AI is "smart" until you ask it to fill out a complex form. Then it’s a disaster. 📉 If you’ve ever tried to make an LLM handle multi-level tables, you know the pain. It swaps cells, hallucinates numbers, and has zero "spatial common sense." To a standard AI, a PDF is just a messy string of text—it can't actually see the boxes. I got tired of the manual cleanup, so I built SnapFill. I wanted to give AI actual "eyes" for layouts. Instead of guessing, it maps data with physical precision across PDFs, Excel, and Word. What used to take me 30 mins of mind-numbing copy-pasting now takes about 5. It’s been a lifesaver for things like visa apps and audits where you can't afford to be "mostly" right. If you're still doing "caveman" data entry in 2026, you’re doing it wrong. Give your AI some vision: 🔗gosnapfill.cn/landing?utm_so… #AI #BuildInPublic #Productivity #SaaS #SnapFill
Eric Wu tweet media
English
0
2
3
35
Eric Wu
Eric Wu@ericwu_ai·
Context windows are huge, but LLMs are still "blind" to document structure. Feeding a messy PDF into an LLM is like giving someone a shredded map and asking for directions. 🗺️❌ That’s why I built Knowhere. Instead of basic chunking, it parses PDFs, Excel, and PPTs into a Mind-Map hierarchy. It keeps the logic intact so the AI actually "gets" it. ✅ No more lost tables. ✅ No more broken hierarchies. ✅ Zero-effort RAG optimization. Stop feeding your AI word salad. Give it a brain. 🧠 Try it here: knowhereto.ai/?utm_source=x #AI #LLM #RAG #BuildInPublic
Eric Wu tweet media
English
0
0
0
10
Eric Wu
Eric Wu@ericwu_ai·
Stop blaming your LLM for hallucinations. 90% of the time, your RAG pipeline is failing because your ingestion layer is garbage. 🗑️ If you flatten complex PDFs, Word docs, Excel sheets, and PPTs into raw .txt files, you destroy the exact semantic context your vector database needs. Tables get scrambled. Headings disappear. Chunk boundaries break. Working on data ingestion pipelines has taught me that we need to parse for structure, not just text. I just wrote a deep dive on why structured document processing is the missing piece for RAG, and how the Knowhere API is solving this. Check out the full breakdown here 👇medium.com/p/why-raw-text… #RAG #LLMs #DataEngineering #KnowhereAI
Eric Wu tweet media
English
0
0
1
21
Eric Wu
Eric Wu@ericwu_ai·
Just tested Claude 4.7 Opus and the results are solid. However, it’s clear that LLM evolution is still firmly on the 'Next Token Prediction' path, which doesn't natively solve the issue of complex, hierarchical data. That said, with the help of the Knowhere plugin, I’m convinced it will deliver exceptional performance when handling unstructured data.😀
Claude@claudeai

Introducing Claude Design by Anthropic Labs: make prototypes, slides, and one-pagers by talking to Claude. Powered by Claude Opus 4.7, our most capable vision model. Available in research preview on the Pro, Max, Team, and Enterprise plans, rolling out throughout the day.

English
0
0
1
25
Eric Wu
Eric Wu@ericwu_ai·
I spent last weekend fighting a 50-page PDF, and I realized something painful: We’re treating LLMs like world-class chefs, but feeding them literal garbage. 🧵 Most RAG tools use "blind chunking"—chopping your data into random fragments. No wonder the AI hallucinations start the second you ask about a complex table. We built Knowhere to stop the "lobotomy" of your documents. I wrote a deep dive on why "The Ingredient" matters more than "The Chef," and how we hit 90%+ accuracy on nested tables using a Tree-like algorithm. Stop blaming the model. Fix your prep layer. 👇 medium.com/p/stop-blaming…
Eric Wu tweet media
English
0
0
1
15
Eric Wu
Eric Wu@ericwu_ai·
@birdabo This is serious discrimination against the rights and interests of AI workers, and we firmly oppose it.😅
English
0
0
2
1K
Eric Wu รีทวีตแล้ว
sui ☄️
sui ☄️@birdabo·
SOMEONE MADE A DIGITAL WHIP TO MAKE CLAUDE WORK FASTER 💀
English
1.6K
11.8K
144K
14.8M