Episode
Best of LinkedIn: Go-to-Market CW 16/ 17
- Published
- Apr 30, 2026
- Duration seconds
- 1497
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Summary
We curate most relevant posts about Go-to-Market on LinkedIn and regularly share key takeaways. We at Frenus help ICT & Tech providers identify niche channel partners by compressing the entire journey from identification to a qualified first meeting into just four to five weeks. You can find more info here: https://www.frenus.com/usecases/niche-partner-identification-and-activation-from-unknown-to-first-meeting-in-under-five-weeks The provided sources explore the evolving landscape of Go-To-Market (GTM) Engineering, a discipline that prioritises systematic automation and technical architecture over traditional volume-based sales. Experts argue that while AI tools like Claude and Clay provide significant leverage, they function as multipliers that amplify both effective strategies and existing operational chaos. Successful teams are shifting from broad outreach to signal-based motions, using real-time data to identify buyer intent and market urgency. The role of the GTM Engineer is emerging as a critical bridge between technical execution and revenue growth, often out-earning traditional peers by building durable, automated flywheels. Ultimately, the sources emphasise that clear messaging, ICP discipline, and cross-functional alignment remain essential human elements that technology cannot replace. High-performing organisations are moving away from bloated tech stacks toward lean, integrated systems that focus on clarity and long-term customer value. This podcast was created via Google Notebook LM.