We will highlight what people are building with Inflectiv datasets, share final submission reminders, and preview the next step for the Startup Program.
1️⃣ Grant finder data 2️⃣ Crypto security incidents 3️⃣ Local business intelligence 4️⃣ Legal template library 5️⃣ Product review database 6️⃣ Research notes 7️⃣ Startup resources 8️⃣ DeFi risk signals 9️⃣ Community knowledge base 🔟 Agent memory pack
Pick one and start building 👉 https://www.inflectiv.ai/campaigns
Think local knowledge, DeFi risk signals, founder resources, research archives, legal templates, grant databases, community intelligence, or agent memory.
How it works: 1. Get a global API key (inf_global_*) 2. Call the cross-query endpoint 3. Inflectiv searches across all your datasets simultaneously 4. Get a unified, sourced answer
Your compliance docs + product docs + SOPs, all queryable in one shot.
Run any Web3 AI agent twice. Most of them forget you exist.
Five builders. Five completely different angles. One shared realization this week: the agent is not the bottleneck. The intelligence layer underneath is.
Full thread 👉https://x.com/inflectivAI/status/2063600744918335559
We Built an Agentic Web3 BD App in Under 30 Minutes With a $1 Build Budget
Most agentic apps look impressive until you realize they have no real brain. They generate answers, then the knowledge disappears when the session ends. The dataset never improves. The agent never makes the system smarter. That is the exact gap we tested with EasyBD. EasyBD is a functional Web3 partner-match showcase app. Enter any project website and it scans it, creates a structured profile, matches it against a living Web3 intelligence dataset, scores partner fit, explains collaboration angles, flags risks, and generates ready-to-send BD briefs. We built the first version in under 30 minutes using ChatGPT, Emergent, and Inflectiv. It is still a showcase, not production, but the core loop already works. The Stack The build was simple: ChatGPT free version for the product blueprint and prompts. Emergent’s $1 first-month offer with 100 credits for the app layer. Inflectiv’s free starting tier with 500 credits and 10 API credits for the intelligence layer. Small budget. Real agentic product. Step 1: ChatGPT Created the Blueprint Web3 BD is still painfully manual. Teams waste hours jumping between websites, docs, X, GitHub, CoinGecko, ecosystem pages, funding news, and old partnership posts, only to still ask the same question: Who should we actually partner with? ChatGPT turned that chaos into a clean flow: Scan a project website → understand what it does → build a structured profile → match against a Web3 dataset → return fit scores, risks, BD angles, and ready-to-send briefs. Step 2: Emergent Built the App Layer Emergent turned the blueprint into a working app in minutes: homepage, partner match flow, scanned profile view, match cards, score UI, and BD brief generator. The speed was impressive, but the UI was not the unlock. The unlock was what the app was connected to. Step 3: Inflectiv Gave EasyBD a Brain EasyBD runs on a living, structured Web3 project intelligence dataset. Check it here: https://app.inflectiv.ai/marketplace/211 The agent does not just read from it. It writes back too. Scan a project → the agent checks Inflectiv. Doesn’t exist? It creates a new structured profile. Data changed? It updates the record automatically. Every user query becomes new intelligence. A scan becomes a profile. A match becomes a signal. The dataset compounds with every run. What the Output Looks Like Instead of a random list of “possible partners,” you get something like: “92% fit. Shared developer audience. Strong co-marketing angle around data infrastructure. Suggested approach: joint builder campaign. Risk: limited recent public activity, verify before outreach.” That is a real BD starting point. Why This Pattern Matters Most AI apps are one-way: read context, generate an answer, stop. EasyBD shows the other pattern: read structured data, reason, then write learnings back through Inflectiv’s bi-directional API. The same architecture works for grant discovery, VC matching, compliance, customer intelligence, internal knowledge bases, and any vertical where data gets smarter over time. The Takeaway We did not build another pretty wrapper. We built a showcase of what happens when an app is connected to a living intelligence layer from day one. ChatGPT gave the blueprint. Emergent gave the app layer. Inflectiv gave it memory and the ability to improve. Try it here: https://partner-match-13.emergent.host/ Should we finish EasyBD and give it away free to every Web3 BD team? Let us know
Models get copied overnight. Structured data does not.
Builders on Inflectiv proved that again this week, from 46,000 health records turned into a live agent in a weekend, to Indian wedding costs mapped across every city and budget tier, to consumer decision signals hiding behind simple bike purchases.
The edge was never the model. It was always what the model could actually see.
See what they built 👉 https://x.com/inflectivAI/status/2060638757129195608
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