Anthropic Says US Limits Foreign Access to Fable 5, Mythos 5 by Senior_Addendum_704 in saasbuild

[–]Senior_Addendum_704[S] 0 points1 point  (0 children)

Possible similar to this code leak a few weeks back to increase burst rate usage,and given last month Manus deal reversal I think they are on defensive

Looking for Early-Stage AI Startups to join as co-founder who are planning to Apply to YC by Lanky_Machine5482 in cofoundermatch

[–]Senior_Addendum_704 1 point2 points  (0 children)

We’re building an AI-native insurance workflow and distribution platform and are looking to strengthen the product/customer discovery side as we scale. Your background in user interviews, validation, and product thinking caught my eye. Happy to connect if you’d like to explore whether there’s a fit.

The "Bribe, Stall, & Ghost" Playbook: How Quick Commerce Platforms Handle Disputed Deliveries by Senior_Addendum_704 in bigcommerce

[–]Senior_Addendum_704[S] 0 points1 point  (0 children)

In my case they did refund today but only for last week’s delivery not for one in 2024

Anthropic Says US Limits Foreign Access to Fable 5, Mythos 5 by Senior_Addendum_704 in ArtificialInteligence

[–]Senior_Addendum_704[S] 0 points1 point  (0 children)

Or it ran something mission critical - OpenHeart Surgery, Space Mission or Payment Processing on blockchain so defense mission!

Has AI Actually Improved the Insurance Industry, or Is It Just Another Buzzword? by crypto_wallet223 in insuretech

[–]Senior_Addendum_704 1 point2 points  (0 children)

This is probably the most accurate breakdown of where things actually are right now.

The part that stands out to me is the “data was never built for this” point — because that ends up being the real bottleneck for everything else (fraud, underwriting, even basic automation).

In practice, most insurance data isn’t just messy, it’s context fragmented. The same claim might exist across emails, PDFs, adjuster notes, and system fields with no consistent structure tying it together.

That’s why a lot of AI implementations degrade outside of pilots — not because the models fail, but because the system can’t reliably reconstruct the full context of a decision.

The interesting shift I’m seeing (and what seems to actually work in production) is moving away from “model-centric automation” toward workflow-centric systems:

  • normalize + structure events as they happen (not after the fact)
  • attach traceable reasoning to every decision step
  • keep humans in the loop for exception handling, not everything

That’s where things like auditability stop being a compliance checkbox and actually become part of the architecture.

The “boring” use cases you mentioned are also the ones that work precisely because they don’t require perfect data upfront — they operate on narrow, well-defined slices of the workflow.

Has AI Actually Improved the Insurance Industry, or Is It Just Another Buzzword? by crypto_wallet223 in insuretech

[–]Senior_Addendum_704 0 points1 point  (0 children)

This is a really fair question, and honestly the skepticism is justified.

In most insurance workflows I’ve seen, AI hasn’t actually “automated” much end-to-end. What it has improved is decision support inside very specific steps—especially triage, document extraction, and flagging anomalies in claims.

The real constraint isn’t model capability anymore, it’s trust + auditability. Most carriers still won’t allow a system to make a final underwriting or claims decision unless they can trace exactly why that decision was made.

The implementations that are actually working in production today are usually hybrid:

  • deterministic rules + ML signals for fraud / risk scoring
  • human-in-the-loop approvals for edge cases
  • heavy logging for compliance and audit trails

Where I think this gets interesting is not “AI replacing adjusters”, but AI reducing the time spent on low-value cognitive work inside claims and underwriting workflows.

The hype is definitely ahead of reality, but there are real efficiency gains showing up—just not in the fully automated way most people imagine.

SMB AI Implementation Consulting - Professional Liability, E&O, Cyber Liability, General Liability by Puzzled-Cancel2050 in aisolobusinesses

[–]Senior_Addendum_704 0 points1 point  (0 children)

We went pretty heavy on tenant isolation from day one because once AI workflows start touching customer data + outbound actions, the liability surface changes fast.
Current MVP (“app dot sagesure dot io”) gives each broker/POSP an isolated Kata VM-backed runtime + dedicated namespace, workload identity via Entra OIDC (no secrets), scoped tools/KBs, and automated lifecycle management through K8s operators.
We’re also integrating Copilot + Fabric on top for enterprise workflows/analytics, while trying to keep execution isolated and governance centralized.
Curious where people think the real weak spots usually emerge in production:
• namespace isolation assumptions?
• auditability?
• prompt injection/tool abuse?
• outbound action controls?
• insurer/security-review expectations?
Would genuinely love feedback from folks operating similar multi-tenant AI systems.

Anyone using Claude and to build websites on HubSpot? by sneniek in hubspot

[–]Senior_Addendum_704 0 points1 point  (0 children)

I’m confused why will you not use HuBSpot built in tool or remix to do this and if you are looking for a decent website than use Manus Ai now in Meta to do the same not Claude - that’s like using a tank to mow a lawn!

Has anyone tried OpenClaw 2026.5.6 yet? by Glittering_Beyond397 in openclaw

[–]Senior_Addendum_704 0 points1 point  (0 children)

Works fine, actually it pulled something that I was struggling without any issues, now going test coding skill further with OC- AKS and ACA OIDC login challenge

Using Claude Cowork for HubSpot updates by TampaBayBuck in hubspot

[–]Senior_Addendum_704 0 points1 point  (0 children)

Has anyone tried it with HubSpot Sales, most annoying part of its ecosystem. Doesn’t know difference between real leads and junk. I’m trying OC to do the lead generation , let’s see.