How to create successful AI agent data?
Original author: jlwhoo7, Crypto Kol
Original translation: zhouzhou, BlockBeats
Editor's note:This article shares tools and methods that help improve the performance of AI agents, with a focus on data collection and cleaning. A variety of no-code tools are recommended, such as tools for converting websites to LLM-friendly formats, and tools for Twitter data crawling and document summarization. Storage tips are also introduced, emphasizing that the organization of data is more important than complex architecture. With these tools, users can efficiently organize data and provide high-quality input for the training of AI agents.
The following is the original content (the original content has been reorganized for easier reading and understanding):
We see many AI agents launched today, 99% of which will disappear.
What makes successful projects stand out? Data.
Here are some tools that can make your AI agent stand out.

Good data = good AI.
Think of it like a data scientist building a pipeline:
Collect → Clean → Validate → Store.
Before optimizing your vector database, tune your few-shot examples and prompt words.

I view most of today’s AI problems as Steven Bartlett’s “bucket theory” — solving them piece by piece.
First, lay a good data foundation, which is the foundation for building a good AI agent pipeline.

Here are some great tools for data collection and cleaning:
Code-free llms.txt generator: convert any website to LLM-friendly text.

Need to generate LLM-friendly Markdown? Try JinaAI's tool:
Crawl any website with JinaAI and convert it to LLM-friendly Markdown.
Just prefix the URL with the following to get an LLM-friendly version:
http://r.jina.ai<URL>

Want to get Twitter data?
Try ai16zdao's twitter-scraper-finetune tool:
With just one command, you can scrape data from any public Twitter account.
(See my previous tweet for specific operations)

Data source recommendation: elfa ai (currently in closed beta, you can PM tethrees to get access)
Their API provides:
Most popular tweets
Smart follower filtering
Latest $ mentions
Account reputation check (for filtering spam)
Great for high-quality AI training data!

For document summarization: Try Google's NotebookLM.
Upload any PDF/TXT file → let it generate few-shot examples for your training data.
Great for creating high-quality few-shot hints from documents!

Storage Tips:
If you use virtuals io's CognitiveCore, you can upload the generated file directly.
If you run ai16zdao's Eliza, you can store data directly into vector storage.
Pro Tip: Well-organized data is more important than fancy schemas!

You may also like

Make Probability an Asset: A Forward-Looking Perspective on Predictive Market Agents

Consumer application issues

Arthur Hayes: The flames of war in the Middle East rise, Bitcoin is bullish

Legendary investor Naval: In the AI era, traditional software engineers have no value?

More absurd than knowing about the war in advance is knowing in advance about the assassination of Soleimani

Key Market Insights on March 2nd, how much did you miss?

How to systematically track high-performing addresses on Polymarket?

From Stanford Lab to Silicon Valley Streets: How OpenMind is Solving the "Last Mile" Problem of the Machine Economy?

PlanX: Reconstructing On-Chain Execution with AI, Moving Towards a New Paradigm

US Judge Allows Binance Unregistered Token Lawsuit to Advance
Key Takeaways: A federal judge in Manhattan dismissed Binance’s petition to resolve a securities lawsuit through private arbitration,…

Crypto VC Paradigm Plans $1.5 Billion Expansion into AI and Robotics
Key Takeaways: Paradigm is setting up a new $1.5 billion fund to explore AI, robotics, and other emerging…

Ethereum Smart Accounts Set to Launch Within a Year, According to Vitalik Buterin
Key Takeaways: Ethereum’s “account abstraction” or smart accounts might be introduced in the coming year through the Hegota…

Bitcoin Recovers After Iran Conflict Shocks Market, Reverses $5K Fall in Just 24 Hours
Key Takeaways: Bitcoin dropped to approximately $63,000 amid tensions but rebounded to $68,200 within a day. Volatility led…

Former Mt. Gox CEO Suggests Hardfork to Retrieve $5.2 Billion in Bitcoin
Key Takeaways: Mark Karpelès, former CEO of Mt. Gox, proposes a Bitcoin network hard fork to access nearly…

South Korea National Tax Service’s Mistake Resulted in $4.8 Million Crypto Loss
Key Takeaways South Korea’s National Tax Service inadvertently exposed private keys, resulting in a $4.8 million crypto loss.…

Morgan Stanley Seeks National Trust Charter for Cryptocurrency Custody
Key Takeaways: Morgan Stanley has initiated a significant step toward digital asset management by applying for a national…

Solana Price Outlook: Major ETF Inflows Hint at Institutional Moves
Key Takeaways: Solana has experienced substantial ETF inflows, prompting speculation about institutional buy-in. On February 25, Solana recorded…

Bitcoin Price Prediction: Wikipedia Founder Warns BTC Could Plunge Below $10K — Should Investors Worry?
Key Takeaways Wikipedia co-founder Jimmy Wales warns Bitcoin might decline to below $10,000, prompting a bearish outlook. Wales…