[{"id":"42a32a07-cfe9-453b-83bd-4f95ec7c1c52","name":"Agentic Development Stack","slug":"agentic-development-stack","tagline":"Interactive coding and autonomous task execution in one workflow.","description":"Cursor handles interactive, foreground development — real-time code suggestions, multi-file edits, and conversational debugging directly in your IDE. Devin handles planned, longer-running tasks autonomously — given a GitHub ticket it writes code, runs tests, reads error logs, and creates a pull request while your team focuses elsewhere. Many engineering teams run both in parallel: Cursor for daily flow, Devin for background delegation.","workflow_goal":"Automate software development and code review workflows","primary_category":"ai-coding-agents","team_size":"b2b","difficulty":"complex","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":1,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T13:18:42.476787+00:00","updated_at":"2026-04-12T13:18:42.476787+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"50a8ab89-66aa-42b0-bf33-b731e289710b","stack_id":"42a32a07-cfe9-453b-83bd-4f95ec7c1c52","agent_slug":"cursor","role_in_stack":"Interactive IDE-based coding and real-time assistance","step_order":1,"connection_description":"Cursor handles daily interactive development — inline suggestions, multi-file edits, and real-time debugging in the IDE","created_at":"2026-04-12T13:19:11.92355+00:00"},{"id":"590cab38-e54a-4ccd-a2a2-36a35f723fc4","stack_id":"42a32a07-cfe9-453b-83bd-4f95ec7c1c52","agent_slug":"devin","role_in_stack":"Autonomous background task execution and PR generation","step_order":2,"connection_description":"Devin receives planned tasks via GitHub or Slack, executes them autonomously in a sandboxed environment, and submits pull requests for review","created_at":"2026-04-12T13:19:11.92355+00:00"}]},{"id":"1b6b1857-0824-468b-a351-745646f84488","name":"SEO Content Production Stack","slug":"seo-content-production-stack","tagline":"Keyword research to published draft, no guesswork required.","description":"Surfer SEO analyses top-ranking pages for your target keyword and produces a data-driven content brief with recommended structure, word count, and semantic terms. Jasper uses that brief to generate a first draft matched to your brand voice. The workflow is manual between tools — draft in Jasper, optimise in Surfer — but eliminates the blank page problem and ensures every piece of content is structured to rank from the start.","workflow_goal":"Automate SEO content creation and optimisation","primary_category":"ai-marketing-agents","team_size":"smb","difficulty":"easy","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":1,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T13:18:42.476787+00:00","updated_at":"2026-04-12T13:18:42.476787+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"5b4b80af-f998-47a9-8299-80eb9354dac8","stack_id":"1b6b1857-0824-468b-a351-745646f84488","agent_slug":"surfer-seo","role_in_stack":"Keyword analysis and content brief creation","step_order":1,"connection_description":"Surfer analyses top-ranking pages and generates a data-driven brief with structure, keywords, and word count targets","created_at":"2026-04-12T13:19:11.92355+00:00"},{"id":"2600d290-7592-4c97-b448-ccdaead9fd13","stack_id":"1b6b1857-0824-468b-a351-745646f84488","agent_slug":"jasper","role_in_stack":"Brand-voice content generation from SEO brief","step_order":2,"connection_description":"Jasper uses the Surfer brief to generate a first draft in your brand voice — the draft is then pasted back into Surfer for final optimisation scoring","created_at":"2026-04-12T13:19:11.92355+00:00"}]},{"id":"25b0624a-fc0f-45fe-87e3-82005319d289","name":"Full Outbound Sales Stack","slug":"full-outbound-sales-stack","tagline":"From prospecting to booked meeting, fully automated.","description":"The most commonly deployed outbound sales automation stack. Apollo.io identifies and enriches prospects from a 275M+ contact database, Instantly.ai runs personalised email sequences with inbox rotation for deliverability, and Lemlist adds LinkedIn touchpoints and personalised visuals to increase reply rates. Together they replace 80% of manual BDR work.","workflow_goal":"Automate outbound prospecting and email outreach","primary_category":"ai-sales-agents","team_size":"smb","difficulty":"moderate","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":1,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T13:18:42.476787+00:00","updated_at":"2026-04-12T13:18:42.476787+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"6ed767de-f6b1-451b-9eef-e8b0bd5e690f","stack_id":"25b0624a-fc0f-45fe-87e3-82005319d289","agent_slug":"apollo-io","role_in_stack":"Prospect identification and contact enrichment","step_order":1,"connection_description":"Apollo identifies and enriches target prospects from its 275M+ database, then exports verified contact lists via CSV or API","created_at":"2026-04-12T13:19:11.92355+00:00"},{"id":"da71d312-e1d0-4598-8da8-cd81fb9e1de5","stack_id":"25b0624a-fc0f-45fe-87e3-82005319d289","agent_slug":"instantly-ai","role_in_stack":"Personalised email sequencing and inbox management","step_order":2,"connection_description":"Instantly imports the Apollo contact list and runs multi-step email sequences with inbox rotation to protect deliverability","created_at":"2026-04-12T13:19:11.92355+00:00"},{"id":"b3e7cae6-4a29-43fe-9763-b52bce931388","stack_id":"25b0624a-fc0f-45fe-87e3-82005319d289","agent_slug":"lemlist","role_in_stack":"LinkedIn outreach and multichannel personalisation","step_order":3,"connection_description":"Lemlist adds LinkedIn touchpoints and personalised image/video steps to contacts who have not replied to email sequences","created_at":"2026-04-12T13:19:11.92355+00:00"}]},{"id":"3e4f6d11-9184-417b-b8a0-22e2c1561f9c","name":"Self-Serve Support Stack","slug":"self-serve-support-stack","tagline":"Let customers find answers before they open a ticket.","description":"Chatbase sits at the front line — trained on your documentation, help articles, and FAQs, it resolves common questions instantly via chat on your website or app. When Chatbase cannot resolve an issue it escalates to Intercom Fin, which handles more complex queries with access to live customer data and business logic. Together they create a two-tier autonomous support layer that handles the majority of volume before a human needs to step in.","workflow_goal":"Automate self-serve customer support with AI knowledge base","primary_category":"ai-customer-support-agents","team_size":"smb","difficulty":"easy","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T16:25:03.976328+00:00","updated_at":"2026-04-12T16:25:03.976328+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"6241cfc1-5538-4459-9dcd-7f2568225dc0","stack_id":"3e4f6d11-9184-417b-b8a0-22e2c1561f9c","agent_slug":"chatbase","role_in_stack":"Front-line knowledge base resolution","step_order":1,"connection_description":"Chatbase resolves common questions from your documentation — unresolved queries escalate to Intercom Fin with full context","created_at":"2026-04-12T16:25:27.512348+00:00"},{"id":"4170111e-65c0-492f-97a8-86c5d6c6e465","stack_id":"3e4f6d11-9184-417b-b8a0-22e2c1561f9c","agent_slug":"intercom-fin","role_in_stack":"Complex query resolution and live data access","step_order":2,"connection_description":"Fin handles escalations from Chatbase, accessing live customer data to resolve issues that require business logic or account context","created_at":"2026-04-12T16:25:27.512348+00:00"}]},{"id":"1558f9c9-3e66-489c-8e6b-307e1dc4f1f9","name":"Outbound Enrichment Stack","slug":"outbound-enrichment-stack","tagline":"Find the right prospects, then reach them with the right message.","description":"Clay pulls from 150+ data providers to enrich prospect lists with firmographic data, intent signals, and technographic information — building detailed profiles of your ideal buyers. Those enriched lists flow into Lemlist for personalised multichannel outreach, where dynamic variables pull from the Clay enrichment data to make every email feel individually researched. The combination replaces hours of manual research with automated, high-quality personalisation at scale.","workflow_goal":"Automate prospect research and personalised outbound outreach","primary_category":"ai-marketing-agents","team_size":"smb","difficulty":"moderate","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T16:25:03.976328+00:00","updated_at":"2026-04-12T16:25:03.976328+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"0b8bc2b8-4b5d-4db7-9181-4201e94a792d","stack_id":"1558f9c9-3e66-489c-8e6b-307e1dc4f1f9","agent_slug":"clay","role_in_stack":"Prospect enrichment and intent signal aggregation","step_order":1,"connection_description":"Clay enriches prospect lists with data from 150+ providers — enriched contacts export directly into Lemlist campaigns","created_at":"2026-04-12T16:25:27.512348+00:00"},{"id":"9a9e01c5-b73a-497b-ace3-7b3fd0156f88","stack_id":"1558f9c9-3e66-489c-8e6b-307e1dc4f1f9","agent_slug":"lemlist","role_in_stack":"Personalised multichannel outreach using enrichment data","step_order":2,"connection_description":"Lemlist uses Clay enrichment variables to personalise every email and LinkedIn touchpoint at scale without manual research","created_at":"2026-04-12T16:25:27.512348+00:00"}]},{"id":"cedc268c-d452-419c-ac44-649471b1de10","name":"Academic Research Stack","slug":"academic-research-stack","tagline":"Find, validate, and synthesise academic literature in hours not days.","description":"Consensus searches across 200 million peer-reviewed papers using AI to find studies that directly answer your research question — returning consensus meters showing whether the evidence supports a claim. Elicit then takes those papers further, extracting key data points, methods, and findings into structured summaries that can be compared across studies. Together they compress days of literature review into a focused, evidence-grounded research session.","workflow_goal":"Automate academic literature review and research synthesis","primary_category":"ai-research-agents","team_size":"b2b","difficulty":"easy","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T16:25:03.976328+00:00","updated_at":"2026-04-12T16:25:03.976328+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"a6d87839-971f-4a3e-88e0-6d02ff7059f9","stack_id":"cedc268c-d452-419c-ac44-649471b1de10","agent_slug":"consensus","role_in_stack":"Peer-reviewed paper discovery and evidence validation","step_order":1,"connection_description":"Consensus finds relevant studies and returns consensus scores — selected papers are imported into Elicit for deeper extraction","created_at":"2026-04-12T16:25:27.512348+00:00"},{"id":"8e3b97ae-4301-4536-b7b5-b2bf526b2e82","stack_id":"cedc268c-d452-419c-ac44-649471b1de10","agent_slug":"elicit","role_in_stack":"Structured data extraction and cross-study comparison","step_order":2,"connection_description":"Elicit extracts methods, findings, and data points from Consensus results into structured summaries for systematic comparison","created_at":"2026-04-12T16:25:27.512348+00:00"}]},{"id":"0fc4b26b-39d7-41e6-b5c7-e64eaf2986de","name":"Code Quality Stack","slug":"code-quality-stack","tagline":"Ship cleaner code with AI reviewing every pull request.","description":"GitHub Copilot provides real-time code suggestions and completions inside your IDE — reducing boilerplate and accelerating first drafts. Qodo (formerly Codium AI) then reviews pull requests autonomously, generating test cases, identifying edge cases, and flagging potential bugs before they reach production. The two tools address different points in the development cycle: Copilot accelerates writing, Qodo ensures quality before merge.","workflow_goal":"Automate code review and quality assurance in development workflows","primary_category":"ai-coding-agents","team_size":"b2b","difficulty":"easy","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T16:25:03.976328+00:00","updated_at":"2026-04-12T16:25:03.976328+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"299e77e6-e781-4af1-a4ee-9455446d8324","stack_id":"0fc4b26b-39d7-41e6-b5c7-e64eaf2986de","agent_slug":"github-copilot","role_in_stack":"Real-time code suggestions and IDE autocomplete","step_order":1,"connection_description":"Copilot accelerates writing code — completed PRs are then reviewed by Qodo before merge","created_at":"2026-04-12T16:25:27.512348+00:00"},{"id":"2fae10eb-c940-4a96-bcaf-6950fa4ce25f","stack_id":"0fc4b26b-39d7-41e6-b5c7-e64eaf2986de","agent_slug":"qodo","role_in_stack":"Automated pull request review and test generation","step_order":2,"connection_description":"Qodo reviews every PR autonomously, generating tests and flagging bugs before code reaches production","created_at":"2026-04-12T16:25:27.512348+00:00"}]},{"id":"cf410035-8068-44a7-963f-7bd40236ffd4","name":"Talent Sourcing Stack","slug":"talent-sourcing-stack","tagline":"Find candidates your ATS would never surface.","description":"Findem uses attribute-based AI search to find candidates across the entire web — not just job boards — identifying people based on skills, career trajectory, and signals that indicate they might be open to a move. Those sourced candidates flow into Greenhouse where recruiters manage structured interview pipelines, scorecards, and offers. Findem fills the top of the funnel with candidates traditional sourcing misses; Greenhouse manages the process from there.","workflow_goal":"Automate talent sourcing and candidate pipeline management","primary_category":"ai-hr-agents","team_size":"enterprise","difficulty":"moderate","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T16:25:03.976328+00:00","updated_at":"2026-04-12T16:25:03.976328+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"16ef82e1-0275-4abf-892c-ca0153f20b6d","stack_id":"cf410035-8068-44a7-963f-7bd40236ffd4","agent_slug":"findem","role_in_stack":"Attribute-based candidate sourcing across the web","step_order":1,"connection_description":"Findem sources candidates from across the web based on skills and career signals — qualified candidates flow into Greenhouse","created_at":"2026-04-12T16:25:27.512348+00:00"},{"id":"e95b5697-ed6d-45d9-808e-7fc0c31689ad","stack_id":"cf410035-8068-44a7-963f-7bd40236ffd4","agent_slug":"greenhouse","role_in_stack":"Structured interview pipeline and hiring workflow","step_order":2,"connection_description":"Greenhouse manages the full hiring process for candidates sourced by Findem — scorecards, interviews, offers and reporting","created_at":"2026-04-12T16:25:27.512348+00:00"}]},{"id":"a0657342-6732-4432-a929-d69a78cae301","name":"Multi-Agent Feature Shipping Stack","slug":"multi-agent-feature-shipping-stack","tagline":"Write a spec, delegate to parallel agents, ship reviewed code.","description":"A three-layer coding stack that turns a plain language feature description into production-ready code without manual coordination. Intent handles orchestration and spec management, Claude Code executes in isolated worktrees, and GitHub Copilot reviews every PR before merge.","workflow_goal":"Ship complex features faster by running multiple coding agents in parallel under a shared specification — no manual context-passing, no agent conflicts.","primary_category":"ai-coding-agents","team_size":"smb","difficulty":"moderate","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-15T13:36:30.743272+00:00","updated_at":"2026-04-15T13:36:30.743272+00:00","submitter_name":null,"submitter_email":"heather@theaiagentindex.com","status":"pending","submission_agents":null,"agents":[{"id":"4c766b91-1a1f-4ef8-8a1e-40c321b622d9","stack_id":"a0657342-6732-4432-a929-d69a78cae301","agent_slug":"intent","role_in_stack":"Orchestration layer — writes the living spec, coordinates parallel agents, manages git worktrees","step_order":1,"connection_description":"Spec-driven orchestration","created_at":"2026-04-15T13:39:15.637247+00:00"},{"id":"09683909-6eb7-4962-9808-d975a483d603","stack_id":"a0657342-6732-4432-a929-d69a78cae301","agent_slug":"claude-code","role_in_stack":"Execution agent — runs inside Intent as a Specialist Agent, implements tasks in isolated worktrees","step_order":2,"connection_description":"BYOA integration","created_at":"2026-04-15T13:39:15.637247+00:00"},{"id":"291e3f35-62fc-45fa-a314-7c06d4a6a154","stack_id":"a0657342-6732-4432-a929-d69a78cae301","agent_slug":"github-copilot","role_in_stack":"Review layer — automated PR review and code quality checks before merge","step_order":3,"connection_description":"GitHub PR integration","created_at":"2026-04-15T13:39:15.637247+00:00"}]},{"id":"2dcc135a-cd89-4c18-97ff-6ec31d08417b","name":"Production-Ready Open Source Agent Stack","slug":"open-source-typescript-agent-stack","tagline":"Build agents that reason, remember, and ship code — fully open source, zero vendor lock-in.","description":"A complete developer infrastructure for building AI agents that can reason, remember, and ship frontend code. Mastra handles agent orchestration and multi-step workflows, Cognee gives those agents persistent structured memory that improves over time, and Stagewise closes the loop by letting you visually iterate on the frontend your agents are building. The go-to stack for TypeScript developers and technical founders who want production-grade agents without paying for managed platforms or proprietary memory services.","workflow_goal":"Build and deploy production AI agents with persistent memory and visual frontend iteration using only open source tools","primary_category":"ai-coding-agents","team_size":"solo","difficulty":"complex","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-17T14:23:58.493856+00:00","updated_at":"2026-04-17T14:23:58.493856+00:00","submitter_name":null,"submitter_email":null,"status":"approved","submission_agents":null,"agents":[{"id":"a7e92b49-8ffb-4cd9-8ce0-daabea6f90a9","stack_id":"2dcc135a-cd89-4c18-97ff-6ec31d08417b","agent_slug":"mastra","role_in_stack":"Agent orchestration and workflow engine","step_order":1,"connection_description":"Mastra defines the agent loop, tools, and multi-step workflow logic — then passes execution context and results into Cognee for persistent storage","created_at":"2026-04-17T14:25:53.906807+00:00"},{"id":"deac5eab-e087-45b2-b263-83460f31677f","stack_id":"2dcc135a-cd89-4c18-97ff-6ec31d08417b","agent_slug":"cognee","role_in_stack":"Persistent memory and knowledge graph","step_order":2,"connection_description":"Cognee stores what the agent learns across sessions as a structured knowledge graph — feeding relevant context back into Mastra on each run so the agent gets smarter over time","created_at":"2026-04-17T14:25:53.906807+00:00"},{"id":"086be0d9-a682-4edf-866c-ac9a5bee0f23","stack_id":"2dcc135a-cd89-4c18-97ff-6ec31d08417b","agent_slug":"stagewise","role_in_stack":"Visual frontend coding and iteration","step_order":3,"connection_description":"Stagewise closes the loop by letting you visually click and edit the frontend your agents are building — directly in the browser against your live localhost codebase","created_at":"2026-04-17T14:25:53.906807+00:00"}]},{"id":"76825ae7-0702-4097-a40a-487cebfb53d0","name":"Full Hiring Pipeline Stack","slug":"full-hiring-pipeline-stack","tagline":"From application to qualified candidate without the admin overhead.","description":"Paradox (Olivia) handles the top of the hiring funnel conversationally — screening candidates via text or chat 24/7, validating qualifications, and scheduling interviews automatically. Qualified candidates and their structured data flow directly into Greenhouse via native integration, where recruiters manage the structured interview process, scorecards, and offers. Customers report up to 75% reduction in time-to-hire.","workflow_goal":"Automate candidate screening and interview scheduling","primary_category":"ai-hr-agents","team_size":"enterprise","difficulty":"moderate","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T13:18:42.476787+00:00","updated_at":"2026-04-12T13:18:42.476787+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"7f0f9f1b-62ab-49c4-a4b0-3d183d6f5335","stack_id":"76825ae7-0702-4097-a40a-487cebfb53d0","agent_slug":"paradox","role_in_stack":"Conversational screening and interview scheduling","step_order":1,"connection_description":"Paradox screens candidates 24/7 via text or chat, validates qualifications, and schedules interviews — syncing status back to Greenhouse automatically","created_at":"2026-04-12T13:19:11.92355+00:00"},{"id":"b327e718-6f8f-4cd9-83f3-d2407d9bf708","stack_id":"76825ae7-0702-4097-a40a-487cebfb53d0","agent_slug":"greenhouse","role_in_stack":"Structured interview management and hiring workflow","step_order":2,"connection_description":"Greenhouse receives qualified candidates from Paradox via native integration with full conversation context, managing scorecards, offers, and reporting","created_at":"2026-04-12T13:19:11.92355+00:00"}]},{"id":"f445ff2f-81bc-4587-ba5d-6125ef0cc80b","name":"Hermes + Codex + Claude Code Stack","slug":"hermes-codex-claude-code-stack","tagline":"Orchestrate Hermes, Codex, and Claude Code into one autonomous development workflow.","description":"Most people try to force one model to do everything inside a single chat window. This stack splits roles instead — and works significantly better because of it. Hermes Agent acts as the always-on coordinator: it holds persistent memory, manages scheduled automations, handles tool execution on your machine, and connects through Telegram so you can interact from anywhere. OpenAI Codex runs as the main agent brain inside Hermes, handling coordination and tool use that keeps the orchestration layer running. Claude Code operates as a focused coding specialist, called from the terminal by Hermes whenever a bounded coding task needs to be completed. Hermes delegates the coding task, Claude Code writes or fixes the code, and Hermes verifies the result, runs smoke tests, and wires it into the system. The result is a practical personal operations setup: you tell Hermes what you want, it decides whether to handle it directly or delegate to Claude Code, and the system does the work across tools rather than handing you a list of instructions to run yourself. The key mental shift is treating Hermes as the manager, Codex as the agent brain, and Claude Code as the specialist — each doing what it is best at rather than one model attempting everything.","workflow_goal":"Autonomous personal operations system that handles tasks across tools without requiring manual execution of each step","primary_category":"ai-workflow-agents","team_size":"b2b","difficulty":"complex","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-05-11T15:39:09.900771+00:00","updated_at":"2026-05-11T15:39:09.900771+00:00","submitter_name":null,"submitter_email":null,"status":"pending","submission_agents":null,"agents":[{"id":"c5f514e7-a7d3-4d31-9cf0-6fb3f9c50877","stack_id":"f445ff2f-81bc-4587-ba5d-6125ef0cc80b","agent_slug":"hermes-agent","role_in_stack":"Always-on orchestrator and memory layer","step_order":1,"connection_description":"Hermes runs persistently on your server. It holds cross-session memory, manages cron-scheduled automations, connects to Telegram for remote access, and decides whether to handle tasks directly or delegate the coding work to Claude Code via terminal.","created_at":"2026-05-11T15:39:09.900771+00:00"},{"id":"c1795702-793b-488e-9ccd-b52d36697e06","stack_id":"f445ff2f-81bc-4587-ba5d-6125ef0cc80b","agent_slug":"openai-codex","role_in_stack":"Main LLM brain powering Hermes","step_order":2,"connection_description":"Codex runs as the primary model inside Hermes, handling the back-and-forth coordination, tool use, and decision-making about which tasks to handle directly and which to route to Claude Code as a specialised coding task.","created_at":"2026-05-11T15:39:09.900771+00:00"},{"id":"66bde400-d947-4171-b92a-4ddc6ce92f92","stack_id":"f445ff2f-81bc-4587-ba5d-6125ef0cc80b","agent_slug":"claude-code","role_in_stack":"Focused coding specialist","step_order":3,"connection_description":"Claude Code is called from the terminal by Hermes whenever a bounded coding task needs execution. It writes, reviews, or fixes code in a focused context, returns the result to Hermes, which then verifies the output and integrates it into the system.","created_at":"2026-05-11T15:39:09.900771+00:00"}]},{"id":"9e9d6eef-4bc7-41cf-b1a8-b55b153b34f1","name":"AI-First Tiered Support Stack","slug":"ai-first-tiered-support-stack","tagline":"Resolve up to 86% of support tickets without a human.","description":"Intercom Fin acts as the front-line AI agent, resolving customer queries autonomously across chat, email, and messaging channels. When Fin cannot resolve an issue it escalates directly into Zendesk with full conversation context, tags, and structured ticket data — no manual handoff required. Teams keep Zendesk as their system of record while Fin handles the volume.","workflow_goal":"Automate customer support ticket resolution","primary_category":"ai-customer-support-agents","team_size":"smb","difficulty":"easy","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T13:18:42.476787+00:00","updated_at":"2026-04-12T13:18:42.476787+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"e49ed383-013e-49a0-a205-f869dcaed843","stack_id":"9e9d6eef-4bc7-41cf-b1a8-b55b153b34f1","agent_slug":"intercom-fin","role_in_stack":"Front-line autonomous resolution","step_order":1,"connection_description":"Fin resolves queries autonomously across all channels — when it cannot resolve an issue it escalates with full context","created_at":"2026-04-12T13:19:11.92355+00:00"},{"id":"8c7f2bc0-b805-448f-b2bc-839fc283d381","stack_id":"9e9d6eef-4bc7-41cf-b1a8-b55b153b34f1","agent_slug":"zendesk-ai","role_in_stack":"Ticket management and human agent routing","step_order":2,"connection_description":"Zendesk receives escalated conversations from Fin with AI-generated summaries and structured ticket data via native integration","created_at":"2026-04-12T13:19:11.92355+00:00"}]},{"id":"185ace0a-c37e-4081-a669-7ad0b7f11865","name":"Small Business Social & Lead Gen Stack","slug":"small-business-social-media-lead-gen-stack","tagline":"Create content, publish automatically, find prospects, and follow up — without a marketing team.","description":"A three-agent stack that covers the full small business marketing loop: FeedHive handles AI content creation, smart scheduling, and automated publishing across all social platforms. Apollo.io identifies and enriches the right prospects from a 275M+ contact database. Lemlist runs personalised multichannel outreach sequences with LinkedIn touchpoints and email personalisation to convert those prospects into conversations.\n\nTogether these three tools replace the majority of repetitive marketing work for a small team — content goes out consistently without daily manual effort, and outbound runs on autopilot in the background. The stack is affordable at all three tiers, requires no developer to set up, and each tool works independently so you can adopt them one at a time.\n\nThis stack is well suited for: solo founders running their own marketing, small sales and marketing teams of 2-5 people, consultants and agencies managing client social and outbound, ecommerce brands building both audience and pipeline simultaneously, and B2B SaaS teams at the early growth stage who need presence and pipeline without headcount.","workflow_goal":"Automate social media publishing and outbound lead generation for a small business without a dedicated marketing team","primary_category":"ai-marketing-agents","team_size":"small-team","difficulty":"easy","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-17T16:25:59.696302+00:00","updated_at":"2026-04-17T16:25:59.696302+00:00","submitter_name":null,"submitter_email":null,"status":"approved","submission_agents":null,"agents":[{"id":"94deb398-133d-4416-a8a5-048937b3584e","stack_id":"185ace0a-c37e-4081-a669-7ad0b7f11865","agent_slug":"feedhive","role_in_stack":"AI social media content creation and automated publishing","step_order":1,"connection_description":"FeedHive runs continuously in the background — generating on-brand content, predicting post performance before publishing, scheduling to all platforms at optimal times, and recycling evergreen content automatically. No daily manual posting required. The social inbox consolidates all comments and mentions so you can engage from one place.","created_at":"2026-04-17T16:26:28.839434+00:00"},{"id":"09858c99-892c-44b7-9190-d56efc0404bf","stack_id":"185ace0a-c37e-4081-a669-7ad0b7f11865","agent_slug":"apollo-io","role_in_stack":"Prospect identification and contact enrichment","step_order":2,"connection_description":"Apollo.io identifies your ideal buyers from its 275M+ contact database using firmographic and intent filters. It enriches contacts with verified emails, phone numbers, job titles, and company data, then exports a clean prospect list ready to import directly into Lemlist for sequencing.","created_at":"2026-04-17T16:26:28.839434+00:00"},{"id":"0c394f93-31e2-4d11-947a-b426627fccd2","stack_id":"185ace0a-c37e-4081-a669-7ad0b7f11865","agent_slug":"lemlist","role_in_stack":"Personalised multichannel outreach and follow-up sequences","step_order":3,"connection_description":"Lemlist imports the Apollo prospect list and runs automated multichannel sequences combining personalised emails, LinkedIn touchpoints, and follow-ups. Domain warmup and inbox rotation protect deliverability. Sequences pause automatically when a prospect replies, so conversations hand off cleanly to a human without manual monitoring.","created_at":"2026-04-17T16:26:28.839434+00:00"}]},{"id":"3d9f6420-31a4-44fe-86f4-481c0e173b8e","name":"Deep Research Stack","slug":"deep-research-stack","tagline":"From question to structured insight in under an hour.","description":"Perplexity AI hunts real-time sources across the web with proper citations, filtering for authoritative content. Those sources are imported into NotebookLM which organises, analyses, and synthesises the material — generating audio overviews, mind maps, and Q&A — without hallucinating beyond the sources you feed it. Cuts research time by 50–60% on market analysis, competitor research, and literature reviews.","workflow_goal":"Automate research and synthesis workflows","primary_category":"ai-research-agents","team_size":"b2b","difficulty":"easy","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T13:18:42.476787+00:00","updated_at":"2026-04-12T13:18:42.476787+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"d90c7a6c-e431-40d3-91b8-865de81f5de9","stack_id":"3d9f6420-31a4-44fe-86f4-481c0e173b8e","agent_slug":"perplexity-ai","role_in_stack":"Real-time source discovery and web research","step_order":1,"connection_description":"Perplexity hunts authoritative sources with citations — results are exported and imported into NotebookLM as source documents","created_at":"2026-04-12T13:19:11.92355+00:00"},{"id":"08b424f6-66b3-46b8-9876-4583117d2709","stack_id":"3d9f6420-31a4-44fe-86f4-481c0e173b8e","agent_slug":"notebooklm","role_in_stack":"Source synthesis and structured insight generation","step_order":2,"connection_description":"NotebookLM analyses the imported sources, generates audio overviews, mind maps, and answers questions grounded only in your sources","created_at":"2026-04-12T13:19:11.92355+00:00"}]},{"id":"303cc3ff-4920-4a01-a1b9-adbefa886f7f","name":"Revenue Intelligence Stack","slug":"revenue-intelligence-stack","tagline":"Turn every sales call into pipeline intelligence.","description":"Gong captures and analyses every customer conversation — surfacing deal risks, buying signals, and coaching opportunities automatically. Its native integration with Clari feeds that conversation data directly into Clari's AI forecasting engine, giving revenue leaders a forecast grounded in what was actually said in calls, not just CRM field updates. Teams using this stack report significantly improved forecast accuracy and faster deal cycles.","workflow_goal":"Automate revenue forecasting and sales conversation intelligence","primary_category":"ai-sales-agents","team_size":"enterprise","difficulty":"moderate","is_editorial":true,"is_community":false,"is_active":true,"is_approved":true,"upvote_count":0,"submitter_title":null,"submitter_company_type":null,"created_at":"2026-04-12T16:25:03.976328+00:00","updated_at":"2026-04-12T16:25:03.976328+00:00","submitter_name":"Heather","submitter_email":"heather@theaiagentindex.com","status":"approved","submission_agents":null,"agents":[{"id":"da93b05f-36af-4b4b-b5c5-6118c4920654","stack_id":"303cc3ff-4920-4a01-a1b9-adbefa886f7f","agent_slug":"gong","role_in_stack":"Conversation intelligence and deal signal capture","step_order":1,"connection_description":"Gong analyses every sales call and surfaces deal risks and buying signals which feed into Clari via native integration","created_at":"2026-04-12T16:25:27.512348+00:00"},{"id":"ed59d4d4-fa5e-485b-9040-49494e642194","stack_id":"303cc3ff-4920-4a01-a1b9-adbefa886f7f","agent_slug":"clari","role_in_stack":"AI revenue forecasting and pipeline management","step_order":2,"connection_description":"Clari receives Gong conversation data to build forecasts grounded in actual call outcomes rather than manual CRM updates","created_at":"2026-04-12T16:25:27.512348+00:00"}]}]