Go-To-Market AI Engineer Needed: Multi-Agent System, Dashboard, Automations & GTM Workflows
Budget: -
HOURLY / PART_TIME
⭐ 5.00 (1)
CAN
automation
Overview
I’m looking for a hands-on AI engineer to work directly with me for an intensive 4–8 hour paid sprint to audit, debug, and help get a multi-agent go-to-market system working cohesively.
We have already built most of the core pieces: multiple specialized agents, agent instructions, handoff triggers, cron logic, workflow rules, an MVP dashboard, and operating logic for a “40 meetings/month” outbound engine. The issue is that the system is not yet working together cleanly end-to-end.
The goal of this first engagement is to work live with me, understand the current architecture, identify what is broken or disconnected, and help create a clear path to make the system operational. If it goes well, this can become ongoing work because I plan to productize this system and help other companies build similar AI-powered GTM systems.
What the System Does
The system is designed to support an outbound revenue engine that can consistently generate qualified meetings. It includes agents/workflows for:
Company universe expansion and scraping
ICP qualification and lower-middle-market company filtering
Contact enrichment and validation
Campaign readiness checks
Outreach campaign monitoring
Reply monitoring and retargeting
Signal intelligence and company trigger tracking
Dashboard/reporting for campaign health, pipeline, pending volume, and agent status
Agent-to-agent handoffs, cron jobs, and task triggers
We are not starting from zero. The agents, logic, prompts, and rules already exist. I need someone technical who can help audit the actual system, connect the pieces, and make it reliable.
First Project Scope: 4–8 Hour Intensive Sprint
For the first sprint, I want to work closely together over Zoom/screen share.
The ideal outcome from the first session:
Audit the current agent stack, dashboard, automations, and workflow architecture
Identify what is working, what is broken, and what is missing
Debug any obvious issues preventing the system from running cohesively
Review cron jobs, triggers, handoff logic, and agent memory/instruction structure
Help create a prioritized technical roadmap for getting the system fully operational
Recommend the right architecture for scaling this into a repeatable GTM AI system
If possible, make immediate fixes during the working session
Technical Areas Involved
Relevant experience may include:
AI agent systems and workflow orchestration
OpenAI API / ChatGPT / Codex-style workflows
Multi-agent architectures
Cron jobs, background workers, and task scheduling
Dashboard/backend debugging
Browser automation or agent-based web workflows
CRM / outbound / sales automation systems
APIs, webhooks, and data pipelines
Clay, Apollo, HubSpot, HeyReach, Google Sheets/Drive, Telegram bots, or similar tools
Python, TypeScript, Node.js, Next.js, Supabase, Postgres, or similar stack experience
Logging, monitoring, debugging, and reliability improvements
You do not need to know every tool listed above, but you should be strong at quickly understanding an existing system, identifying failure points, and helping turn a messy MVP into a reliable operating system.
Who I’m Looking For
I’m looking for someone who is more than a prompt engineer. I need a practical AI engineer / automation engineer who understands how to connect AI agents to real business workflows.
You should be comfortable with:
Auditing an existing codebase or agent stack
Working live with a founder/operator
Asking sharp questions and identifying system bottlenecks
Turning unclear workflows into clean architecture
Debugging integrations and automation flows
Thinking about reliability, handoffs, logs, permissions, and failure recovery
Helping design something that can later be reused for other companies
Nice to Have
Experience building GTM, sales, outbound, or revenue automation systems is a major plus.
Examples:
AI SDR systems
Signal-based outbound systems
CRM enrichment workflows
LinkedIn/email campaign infrastructure
Multi-agent business operations systems
Dashboards for sales operations or revenue teams
Deliverables for First Sprint
At the end of the first session, I want:
A clear diagnosis of the current system
A list of the highest-priority fixes
A recommended architecture or system map
Any quick fixes that can be made during the session
A clear next-step plan for turning this into a reliable, scalable GTM AI operating system
Engagement Structure
This will start as a paid 4–8 hour working sprint. If it goes well, there will likely be ongoing work helping me:
Harden the system
Improve the dashboard
Add monitoring and logging
Build better handoff flows
Productize the system for other companies
Create repeatable AI GTM infrastructure
To Apply
Please include:
A short summary of your experience with AI agents or automation systems
An example of a complex workflow, agent system, or automation stack you have built or debugged
What stack/tools you are strongest with
Whether you are available for a 4–8 hour live working session
How you would approach auditing a partially built multi-agent GTM system
Please do not send a generic AI-generated proposal. I’m looking for someone who can think clearly, move fast, and help turn an existing MVP into a working system.
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