Joined December 2024
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Ditto MCP is free Adderall for AI Agents. 1. Maximized Agent Memory 2. Shared Agent Memory 3. Auto Backup Files You will objectively accomplish more with Claude / Codex / Hermes if you connect the Ditto MCP. See it for yourself 👇
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Ditto retweeted
New Ditto research: Teaching Memory to Find Itself. We tested Seed Memories v4 on 2,200 memories. Result? Personalized retrieval that improves Recall@1 by 7.6pp, without needing a massive model. Better long-term memory is about grounding, not just scale. Read more (click to enlarge images): heyditto.ai/blog/teaching-me… (Coming soon to all users.)
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Woah 😮
Ditto Code just got an upgrade: > Model Selector (GPT-5.5, Opus 4.8, Kimi Code, etc.) > Custom Instructions (Global system prompts for your specific coding style & conventions) Stop fighting your agent’s output; start defining it. Give it a spin! I love coding from my phone 📱 @heydittoai
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Ditto retweeted
Ditto Code just got an upgrade: > Model Selector (GPT-5.5, Opus 4.8, Kimi Code, etc.) > Custom Instructions (Global system prompts for your specific coding style & conventions) Stop fighting your agent’s output; start defining it. Give it a spin! I love coding from my phone 📱 @heydittoai
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Fusion is LIVE on Ditto! assistant.heyditto.ai

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Fusion mode live in @heydittoai Pick a council of up to 5 models for Fable level intelligence for half the cost. Mix and match.
Jaw drop this makes sense
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Use @heydittoai for your loop knowledge graph
Karpathy said something you'll regret ignoring: "Remove yourself as the bottleneck. Maximize your leverage. Put in very few tokens, and a huge amount of stuff happens on your behalf." Loop engineering is the exact thing that does that. In a hand-run session, the operator handles two things: - deciding what the agent runs next - and checking its output before the next step Both are manual, and both decide how far the agent gets on its own without the operator. Loop engineering moves both steps into the system. A core operating structure surrounds the loop, and the diagram below depicts it. - A schedule decides what to run - Loop is the maker that produces the work - A separate checker agent grades the output - A file on disk holds the state they both read. The loop runs until either done, max iterations, or an exhausted budget. Here are some practical engineering considerations: 1) A model grading its own output justifies what it already did instead of catching where it failed. That's why a separate checker's findings return to the maker as the next instruction. And the cycle repeats until the checker finds nothing left to fix. 2) A loop with no stop condition burns tokens, and the cost climbs fast once sub-agents and long runs add up. That's why the exit must be set before the loop runs, not while it is running. A simple exit could be: ↳ fix only the major issues, run one final pass, and stop after two loops, with "all tests pass and lint clean" as the rule that ends it. 3) State has to live on disk, not in context. The model forgets everything between runs, so an MD file or a knowledge graph holds what is done and what is still open. Each run reads it and writes back to it, which lets a loop pick up again after days. 4) The lower the verification bar, the safer the loop. Boring, repetitive checks like a stale version string or a missing test are trivial to verify, so a loop runs them with little risk while the operator is away. Judgment-heavy work is loopable too, but only as far as the checker can confirm the result. Let's look at how an unattended loop fails in two ways. 1) It reports done when nothing is actually verified. The separate checker exists to prevent it, but it merges code faster than anyone reads it, so over weeks, the team stops understanding its own codebase while every check stays green. Green tests say the code passed the tests, not that anyone knows what shipped. Someone still has to read what the loop merges. 2) The checker keeps a running loop honest, but it only catches failures inside a run. The harness around the loop, like the prompts, tools, and checks wrapped around the model, still drifts and breaks in production as models change. That repair loop is usually run by hand based on observability traces. My co-founder wrote a detailed walkthrough (with code) on making that harness repair itself, where a failing trace gets diagnosed, the fix is verified against the exact input that failed, and the failure is locked as a regression test so it cannot recur. Read it below.
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Open memory and open models have never been more important. On uncensorable blockchains. This is the bittensor moment. The Ditto moment. We will win.
This shouldn’t phase you. You have Ditto. We built Ditto to offer Fable level inference, with open models. 1. They can’t take open models from us. 2. Ideal memory creates ideal inference… and we cracked the code on memory.
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💥 @heydittoai MCP supercharges your agents. I plugged it into my stack and stopped re explaining my project every morning. Same model. Sharper outputs. Context compounds instead of resetting. Files persist. Memory sticks. My agent actually improves with use. Over 1000 users already running real workflows. No ads. Just word of mouth. This is what it looks like when memory sits on top of models and actually works.
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This shouldn’t phase you. You have Ditto. We built Ditto to offer Fable level inference, with open models. 1. They can’t take open models from us. 2. Ideal memory creates ideal inference… and we cracked the code on memory.
The US government, citing national security authorities, has issued an export control directive to suspend all access to Fable 5 and Mythos 5 by any foreign national, whether inside or outside the United States, including foreign national Anthropic employees. The net effect of this order is that we must abruptly disable Fable 5 and Mythos 5 for all our customers to ensure compliance. Access to all other Claude models is not affected. We apologize for this disruption to our customers. We believe this is a misunderstanding and are working to restore access as soon as possible. Read our full statement: anthropic.com/news/fable-myt…
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Own your intelligence on Ditto! Powered by Bittensor. >>assistant.heyditto.ai

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Ditto retweeted
The more I integrate Claude and Codex into my daily workflows, the more I realize memory will be one of the biggest markets in AI. That's the exact problem @heydittoai is solving. An agent that doesn't have context and forgets everything isn't much use. Ditto supercharges AI agents to have better memory and context, not just for you, but across teams as well. The just hit 1,000 users and no doubt 10,000 is the next milestone!
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1000 users yesterday ✅ 1000 followers today ✅ Must. Keep. Growing.
Ditto reached 1000 users! 304 New users in the last 30 days alone. Ditto MCP is the stand out feature but we expect more platform adoption with V2 Coming in July. Just the start. Stay tuned.
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Conviction Update: To make up for the delay, we have completed a lock of 59,000 Ditto Tokens. This makes a total of 117K Tokens being locked to the Team. More locked in than ever!
Ditto will be locking 40,000 alpha into conviction. For context, this is 100% of the alpha owned by the team. Ditto is forever. This is our conviction.
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AI experience can be frustrating some times We chat with it today, but have to keep repeating the instruction next time we wanna use it @heydittoai makes AI agents more smarter by giving them permanent memory instead of them starting over anytime we gotta use them, makes them alot more useful that way Its built on Bittensor so can even share knowledge across different tools with our Claude/Codex/Hermes agents since its decentralized and open source, just by connecting the Ditto MCP to it with a single prompt
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NEW: Ditto hit 1000 users, becoming one of the fastest growing consumer products on Bittensor. Are you using @heydittoai, if so, what for?
Ditto reached 1000 users! 304 New users in the last 30 days alone. Ditto MCP is the stand out feature but we expect more platform adoption with V2 Coming in July. Just the start. Stay tuned.
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Friendly reminder to claim your free Ditto username today! assistant.heyditto.ai Powered by Bittensor

Introducing the Hermes Agent Profile Builder You can now build a complete profile in the dashboard with full control over identity/name/description, model/provider, built-in optional skills, skills-hub installs, and MCP servers in one easy flow
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Ditto retweeted
Jun 11
This should give you confidence in @heydittoai We did this 1 month ago and added native Fable 5 faster. It’s only a matter of time before Bittensor has it’s Deepseek moment with @heydittoai
Introducing the Hermes Agent Profile Builder You can now build a complete profile in the dashboard with full control over identity/name/description, model/provider, built-in optional skills, skills-hub installs, and MCP servers in one easy flow
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Jun 10
All roads lead to @heydittoai 1. Build a business on Ditto 2. Access capital on @zipcodenetwork Success coded.
All roads lead to self-hosted local models.
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Ditto retweeted
Ditto is looking good. I'm one of the users. Love it.
Ditto reached 1000 users! 304 New users in the last 30 days alone. Ditto MCP is the stand out feature but we expect more platform adoption with V2 Coming in July. Just the start. Stay tuned.
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Ditto reached 1000 users! 304 New users in the last 30 days alone. Ditto MCP is the stand out feature but we expect more platform adoption with V2 Coming in July. Just the start. Stay tuned.
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