By: Andy Toizer - Head of Growth at Freckle.io
Your team's LinkedIn posts are racking up likes and comments every month — hundreds, maybe thousands of them. But those little dopamine hits aren't turning into conversations. Nobody on your team is systematically checking whether the people engaging with your content are actually potential buyers, and by the time anyone thinks to follow up, the moment is gone. You're sitting on a pile of warm intent signals and doing nothing with them.
For: B2B teams that are actively posting on LinkedIn (at least a few times per week), generating meaningful engagement, and want a repeatable system to convert that attention into outbound pipeline. Best for teams of 1–10 sellers where LinkedIn is already a channel — you just haven't closed the loop between content and pipeline.
Not for: Teams that aren't posting consistently on LinkedIn yet. If you're getting fewer than 20 engagements per post on average, fix the content engine first. This workflow amplifies what's already working — it doesn't create engagement from scratch. Also not for enterprise orgs with strict compliance around automated LinkedIn outreach.
Most teams treat LinkedIn engagement as a vanity metric. The marketing team celebrates the like count, maybe screenshots it for the Slack channel, and everyone moves on. The more "sophisticated" version is when a rep manually scrolls through their notifications, spots a familiar company name, and fires off a half-hearted DM three days later.
Andy Toizer's take: the engagement is the signal. People who like and comment on your posts have self-identified as at least mildly interested in what you do. The question isn't whether to follow up — it's which of those people are actually worth your time, and how to reach them fast enough that the context is still fresh. That requires automation, not willpower.
Connect your LinkedIn profile (and your team's profiles, if applicable) to Trigify.io. It automatically tracks who likes and comments on your posts — giving you a structured feed of engagement data instead of relying on LinkedIn's notification scroll.
Why it matters: LinkedIn's native notifications are a firehose. Trigify turns that firehose into a usable dataset you can act on programmatically.
What good looks like: Every post's engagement shows up as a clean list of people with their profile data, ready to be sent downstream.
Set up a simple webhook from Trigify to Freckle.io. For each person who engages, Freckle checks your CRM to see if they're already a known prospect or customer. If they're new, Freckle enriches their company and contact info automatically.
Why it matters: This is where you separate signal from noise. Half your likes are from friends, peers, and people outside your ICP. Without this filter step, you'd be DMing everyone — including your investors and your mom.
What good looks like: New contacts get created with full enrichment data, and existing CRM records get flagged with the engagement event.
Inside Freckle, define your ideal customer profile using natural language scoring — the same way you'd describe your best customer in a conversation. Weight criteria like sub-industry, company size, funding stage, or any custom signal that matters to your business.
Why it matters: Traditional lead scoring is rigid and binary. Natural language scoring lets you express nuance (e.g., "Series A to Series C SaaS companies in vertical software, not agencies") without building complex boolean logic.
What good looks like: Each enriched lead gets an ICP fit score. You set a threshold — anyone above it moves to the next step. Anyone below gets logged but not pursued.
The profile view as a first touch is smart. It creates a "hey, I noticed you" signal before any ask lands. And branching on connection status prevents the awkward "send a connection request to someone you've been connected with for two years" move.
What good looks like: Outreach fires within hours of someone engaging with your content, while the context is still warm. Response rates should be meaningfully higher than cold outbound because these people already showed interest.
Build short delays into the HeyReach sequence between the profile view, connection request, and message. The engagement happened on LinkedIn — if your outreach feels like it was triggered by a bot watching their every click, it kills the vibe.
Why it matters: Timing matters. An immediate profile view + connection request + message within 60 seconds of a like screams automation. A profile view a few hours later, followed by a connection request the next day, feels natural.
What good looks like: Recipients don't realize the outreach was triggered by their engagement. It just feels like a well-timed, relevant connection.
This workflow uses four tools, each handling a specific piece of the pipeline:
The workflow is tool-specific but the pattern is transferable. If you already have preferred tools for engagement tracking, enrichment, or outreach, the same four-step logic applies: capture signal → enrich and qualify → automate outreach → manage conversations.
Scoring too loosely. If your ICP criteria are vague, you'll end up reaching out to everyone who likes your posts, which defeats the purpose. The fine-tuning of your scoring prompts in Freckle is where this workflow lives or dies. Spend real time defining what "qualified" means for your business.
Sounding automated. The outreach message itself still needs to feel personal and relevant. Don't use a generic template that could apply to anyone. Reference the content they engaged with, or at least make it clear you have context on who they are.
Skipping the delay step. Teams get excited about speed and remove the delays. Then prospects get a profile view, connection request, and pitch within minutes of liking a post. That's not "fast follow-up" — that's surveillance.
Not feeding results back to content strategy. If you notice that certain post topics generate higher-ICP engagement, that's incredibly valuable signal for what to write about next. Teams often set up the automation but forget to close the feedback loop to content.
Ignoring existing CRM contacts. The CRM check step is critical. If someone who's already in an active sales cycle likes your post and gets a generic cold outreach sequence, your AE is going to have words with you.
Andy's team generates thousands of engagement signals per month on LinkedIn and uses this workflow to convert the qualified ones into pipeline. The key metrics to track:
The magic is in the ICP scoring step, not the automation. Anyone can set up a webhook and an outreach sequence. What separates this workflow from "spray and pray with extra steps" is how well you define your ideal customer in Freckle's natural language prompts. Andy's team weights signals like sub-industry and funding patterns — one user even scored based on college football win/loss records for their niche. The point is: get creative and specific with your scoring criteria. The more precisely you can define "this is my person," the better your conversion rates downstream and the less noise your sales team has to deal with.
Resources:
Source post: Andy Toizer's original LinkedIn post on converting LinkedIn engagement to pipeline.