Launched this week

StoreClaw
Grow your store profits with agents that know how to sell
2.2K followers
Grow your store profits with agents that know how to sell
2.2K followers
StoreClaw is the first AI commerce platform with agents that know how to sell, so you can make more money with less effort and less stress. Connect StoreClaw to your existing store and it will study your numbers, current sales figures, and growth trajectory, and then offer proactive suggestions that it can execute on your behalf — once you give it your approval. Ask StoreClaw how your business is doing any time, anywhere. Sell more with less stress: StoreClaw.







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Love the idea of StoreClaw. The gap between insight and execution is where most of my time goes.
StoreClaw
@mia_qiao
Totally, that’s exactly the pain point StoreClaw is aiming at.
Turning insight into execution is where most of the real time gets lost, and closing that gap is the whole value.
StoreClaw
@mia_qiao Thank you~
StoreClaw
@mia_qiao Appreciate it! That insight-to-execution gap is exactly where operators lose their week. Diagnosing is the easy 10% — shipping the fix across every channel is the other 90%. That's where the engine earns its keep.
Congrats on the launch and congrats on hitting number one on Product Hunt. I have one detailed question about how StoreClaw handles post execution tracking.
When you approve a suggestion and the agent goes ahead and makes the change does it come back afterward and show you whether the change actually worked? For example if it updates product copy to improve conversion rate will it monitor that page over the next week and report back on whether the conversion actually improved and by how much?
Closing that loop between suggestion, execution and results seems really important for building trust in the platform over time. Would love to know if that tracking is already built in or if it is on the roadmap.
DeckSpeed
Wondering how StoreClaw handles edge cases during high-volume events like Prime Day or major seasonal launches.
StoreClaw
@hanzhizhang0405 Great question.During high-volume events like Prime Day or seasonal launches, StoreClaw is designed to continuously monitor store data and react based on predefined goals, historical trends, and real-time performance signals.
For important actions, merchants can also provide specific instructions or approval preferences to maintain control during critical periods.
DeckSpeed
@lena_pan2026 Thank you for your reply. And congrats on your launch!
StoreClaw
@hanzhizhang0405
Great question — during high-volume events, StoreClaw runs with stricter guardrails, real-time monitoring, and configurable thresholds so sellers can control how autonomous it gets.
StoreClaw
@hanzhizhang0405 Peak is where the engine shines. Listing health, inventory signals, lifecycle, content — the ops layer that usually cracks under volume keeps running clean across every channel. And the post-event diagnostics that normally take a week of post-mortems? Hours. You're already shipping the next round of optimizations while everyone else is still pulling reports.
DIY UX Test
Nice launch. Curious how StoreClaw decides what to surface first — does it prioritize by revenue impact, or by how easy a change is to execute? The "study the numbers, then act on approval" flow feels like exactly the right shape for this. Congrats to the team.
StoreClaw
@oleksii_sekundant Thanks for the kind words! StoreClaw prioritizes suggestions by revenue impact first, and intelligently weights them by execution difficulty to show you the most profitable and actionable optimizations upfront. It’s perfectly aligned with the “study the numbers, then act on approval” workflow. Thanks for your congratulations, and we’d love your feedback after you try it!
StoreClaw
StoreClaw
@oleksii_sekundant Thanks — and you read the flow right. On prioritization: neither pure impact nor pure ease works on its own. Impact-only surfaces risky big swings; ease-only surfaces busywork. The engine ranks on expected impact × confidence × reversibility — so the first things surfaced are high-confidence, low-blast-radius wins that compound (listing health, content gaps, lifecycle, search visibility) before it touches load-bearing levers like pricing. Bigger swings come later in the trust curve.
Agnes AI
Huge congrats — this space definitely needs better operational tooling. Does StoreClaw eventually learn brand-specific patterns over time, or are workflows mostly template-driven today?
StoreClaw
@cruise_chen Thanks so much for the congratulations! StoreClaw offers ready-to-use intelligent templates today, while it continuously learns brand-specific patterns and data behaviors to adapt to your store style, Listing habits, pricing strategies and operational preferences over time. Feel free to try it out!
StoreClaw
StoreClaw
@cruise_chen Thanks. Honestly, both — by design. Skills give the engine a strong baseline so it's productive day one, no "wait six weeks to learn your brand" tax. Then brand-specific patterns layer in over time: voice, what's worked in your category, approval patterns, which playbooks have hit. Template-driven day one, increasingly brand-specific from there. What we deliberately avoid is making operators wait for a learning curve before the engine earns its keep.
Curious whether the platform could also be useful for offline or hybrid stores by connecting POS sales and customer trends alongside ecommerce data.
StoreClaw
@abhinav_naithani_b24es1012_ Absolutely,it’s fully applicable.
StoreClaw
@abhinav_naithani_b24es1012_
Great question, would definitely encourage you to try it out and see how it fits your setup, happy to explore your specific use case as well. Thanks for the thoughtful question and for checking us out.
StoreClaw
@abhinav_naithani_b24es1012_
it works perfectly and can be applied as needed.
Copilot is the wrong metaphor for what most sellers actually need. Autonomous crew member is closer. Seems like that's what this is.
StoreClaw
@antler_kaku
Most ecommerce tools still assume the founder wants to manually coordinate everything. This one stands out here is reducing the operational burden itself.
StoreClaw
@antler_kaku Nailed it. "Copilot" still assumes you're flying the plane. Operators don't need more suggestions in their ear — they need the work done. Crew member is the right mental model.
StoreClaw
@antler_kaku
When AI moves from recommendation to action, it fundamentally changes how teams are structured and how much work a small team can realistically handle. Really appreciate you seeing that shift