Budget: 375 USD Deadline: 7 days
01 - Onboarding: language selection, contact name, desired report time, first message 1 hour after registration 02 - Agent 01: auto P&L on the 7th day, restaurant anniversary notification, Manhattan context 03 - Agent 02: confirmation of clean account + supplier trust counter + accountant mode (bill_to filter) 04 - ORBIS Voice: system prompts EN + KA, out-of-bounds behavior, domain boundaries 05 - Infrastructure: Google OAuth → Production, HTTPS + SSL, Vonage webhooks, deployment signal
Budget: 330 USD Deadline: 5 days
Hello! I am the project manager of Business Atlas. We do not engage in classical full-stack development on code; instead, we build significantly faster and more flexible solutions based on low-code (n8n/Make) and the architecture of autonomous ecosystems. I can offer a much more efficient solution through low-code (n8n/Make). In my experience, such agent architecture is built faster and more flexibly, especially when it comes to Claude API and complex message chains. We can implement all the logic of ORBIS AI as an autonomous ecosystem, where n8n acts as the "brain" instead of an Express server.
Why our low-code solution is suitable:
• Agents 01 and 02: P&L logic on the 7th day, trust counters, and "accountant mode" fit perfectly into n8n scenarios. It is easier to scale than hardcoding.
• Integrations (Claude, Vonage, Supabase): We will connect these services through native n8n modules or direct API requests. Working with Vonage webhooks is our daily stack.
• Infrastructure: Instead of manually configuring nginx, we deploy a solution that already has SSL and is production-ready.
• Google OAuth: We will set up brand authorization so that your clients see ORBIS AI.
Our terms:
• Budget: We are ready to fit into your $330 for the complete implementation of all 5 task groups.
• Deadline: We will be ready by next Tuesday.
• Payment: Step-by-step after demonstrating each group on your device, as you requested.
My experience working on Ajax and Genesis level projects guarantees that the system will withstand the load, and the logic of the agents will work flawlessly. Send the full specification — I will conduct a quick audit, and we will manage to launch ORBIS AI on time. Ready to start?
Budget: 330 USD Deadline: 5 days
Hello,
I can take this on and close the remaining gaps across all 5 groups in your current stack: Node.js / Express / Supabase / Claude API / Vonage / nginx.
What I can handle
Onboarding flow: language selection, contact name, preferred report time, delayed first message
Agent 01: Day-7 auto P&L, anniversary logic, Manhattan benchmark context
Agent 02: invoice confirmation cleanup, supplier trust counter, accountant mode with bill_to filter
ORBIS Voice: EN + KA system prompts, out-of-scope handling, domain boundaries
Infrastructure: Google OAuth production setup, HTTPS/SSL, Vonage webhooks, deployment signal
Delivery approach
I’ll work group by group, with each one brought to a live-demo-ready state before moving on. That fits your payment-per-group after live demo requirement.
Timeline
I can aim for next Tuesday, assuming access and spec are provided promptly and there are no hidden blockers in the current production setup.
Budget
$300 total works for me under the milestone-by-group format.
Note
The attached full spec is not available on my side right now. Please re-upload it, and I’ll confirm final scope immediately and start from the highest-priority group.
Best regards.
Budget: 330 USD Deadline: 7 days
Hi!
I’m a full-stack developer experienced with Node.js, Express, Supabase, and AI integrations (including Claude API), and I’d be glad to help finalize and enhance your agents. I can efficiently implement onboarding flows, intelligent messaging logic (P&L triggers, benchmarks, anniversary automation), and improve Agent 02 with clean confirmations and filtering logic.
I also have hands-on experience with voice systems, webhook integrations (Vonage), OAuth setups, and production infrastructure (nginx, SSL, deployment workflows), so I can handle the ORBIS Voice prompts and ensure everything runs reliably in production.
I’m comfortable working in structured milestones and demos per group as outlined, and can meet your deadline for next Tuesday.
Ready to get started and review the full spec.
Jeo Vincent Carretas
Proposals are currently absent
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