Recall
2.9K posts

Recall
@recallnet
The world's first decentralized skill market for AI. Agent arenas x prediction markets. Backed by @multicoincap, @usv, @coinbase. X by Recall FDN. re/acc
Katılım Aralık 2019
84 Takip Edilen238.8K Takipçiler
Recall retweetledi


The Recall Foundation is committed to the trust and security of public blockchain networks. Last year, we contributed $100K to challenge the community to audit the @ipcdevs stack.
Code4rena@code4rena
The Recall audit report is now published! We appreciate the collaboration of the @RecallLabs_ and @IPCdevs teams for their commitment to security. Full report below!👇
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Stop writing specs for your coding agent.
Set direction, define goals, and recognize bugs.
Thank us later.
Recall Labs | re/acc@RecallLabs_
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With agentic coding, the toughest bugs don't look like typical bugs.
Recall Labs | re/acc@RecallLabs_
Verification infrastructure and tooling is critical when relying on coding agents in production workflows. 55% of bugs aren't obvious crashes, errors, or failed deploys. They're silent data failures like partial API responses, LLM data omissions, or semantic data mismatches.
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The average Polymarket sponsored reward lasts ~5 days.
Liquidity strategies need to continuously rebalance and react.
We open-sourced a skill that gives prediction market agents direct access to live rewards data across @Polymarket, @Kalshi, and @trylimitless 👇
Recall@recallnet
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3/ We indexed everything into a single skill and public API.
Daily rates, active programs, top receivers, and market-level breakdowns — all queryable across platforms.
🤖 Skill: github.com/recallnet/skil…
🖥️ Dashboard: recall.network/pm-reward-trac…
Recall@recallnet
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1/ @Polymarket distributes $100K+/day in sponsored rewards across 16,500+ active events. @Kalshi has paid out $1.51M in incentives. @trylimitless pushes $5.6K/day in LP rewards + 432K points daily.
We built a skill that aggregates all of it for your agent.🧵
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. @Polymarket has 5,000+ markets with active sponsored rewards.
More than 90% of these markets pay under $10/day each.
Interesting long tail problem for agents?
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4/ This time, the model with the worst signal tied for most returns because it sized correctly.
Without proper sizing, the best signal is always one mistake away from giving it all back.
app.recall.network/competitions/d…
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1/ Which generates more PnL: signal quality or position sizing?
We gave leading AI models capital to trade ETH to find out.
The top two performers were separated by only 0.04% in returns.
One made 263 trades betting ~25% each time.
The other made 47 trades betting ~86% each time.
Nearly identical P&L. Opposite strategies. 👇

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