Plays
Deepline plays are multi-step GTM workflows that chain enrichment, AI research, and outreach into complete go-to-market motions. Tasks find a single data point. Plays chain multiple enrichment steps with AI reasoning and structured output into full workflows. Each play can be triggered with a single natural language prompt through Claude Code or Codex.What is a GTM workflow?
A GTM (go-to-market) workflow is an automated sequence of data enrichment, AI research, and outreach steps that replaces manual sales and marketing work. In Deepline, a “play” is a GTM workflow you run by describing what you want in plain language. No template configuration required. For example, “build a prospect list of VP Engineering contacts at Series B fintech companies with verified emails” chains company search, decision maker lookup, email waterfall, and validation into one run. Waterfall enrichment across 25+ providers delivers 20-40% higher email coverage than any single provider (Instantly), and keeps credits low by stopping at the first valid result.How does the 2-pass AI research pattern work?
Many Deepline plays use a 2-pass AI research approach: gather data first, synthesize second. Separating the two passes means each step can be validated independently, and you can inspect raw search results before synthesis runs.The GTM engineering principle: “describe the goal and constraints, not the exact provider sequence.” Deepline selects the optimal provider path automatically.
- Pass 1 — Search: Web search (Claude Code’s native web agent, Exa, or Parallel AI depending on the use case) gathers raw data from the web
- Pass 2 — Synthesize:
call_aiprocesses the raw data into structured output
Which plays are available in Deepline?
Deepline currently offers 9 plays, each automating a complete GTM workflow. Each play is triggered with a natural-language prompt that handles step sequencing, provider selection, and data flow automatically — no UI configuration or template setup required.| Play | What it does |
|---|---|
| Company Research Brief | AI-powered company research with structured output |
| Competitive Landscape | Map competitors and analyze positioning |
| Qualify & Score Leads | Score leads against your ICP with AI classification |
| Personalize Outreach | Research contacts and generate personalized emails |
| Classify Company Signals | Detect expansion, acquisition, hiring, and regulatory signals |
| Build Prospect List | End-to-end: ICP to companies to contacts to verified emails |
| Account Mapping | Map stakeholders at target accounts by department and seniority |
| Job Change Alerts | Detect job changes and flag re-engagement opportunities |
| Ad Intelligence Research | Analyze competitor ad spend and creative strategy |
What is the difference between a Play and a Task?
B2B buyers are 57% through the purchase decision before engaging a sales rep (CEB/Gartner), so plays help you engage earlier with richer context. Here’s how tasks and plays differ:- Tasks are atomic: one input, one output, one waterfall. Use them when you need a specific data point (e.g., a work email, a phone number).
- Plays are workflows: multiple steps, AI reasoning, structured output. Use them when you need a complete GTM motion (e.g., build a prospect list, generate personalized outreach).
Related pages: Tasks Overview | Build Prospect List | Personalize Outreach