Podcast Episode Details

Back to Podcast Episodes
Signal Engineering: Strategic Data Filtering for Better Ad Performance — Thomas Petit, Independent Consultant

Signal Engineering: Strategic Data Filtering for Better Ad Performance — Thomas Petit, Independent Consultant


Episode 138


On the podcast I talk with Thomas about using signal engineering to optimize ad spend, how AI is changing creative testing, and why most people should avoid app2web… for now.

Top Takeaways:

🧠 The biggest AI opportunity in ads is smarter analysis, not faster production


AI is now good enough to produce ad-quality video and variants at scale — but that’s where 95% of the industry focus stops. The underused frontier is AI for analysis: spotting winning hooks, predicting performance, and even pre-testing creatives with “AI humans” before spend. The teams that combine rapid AI production with AI-driven analysis can iterate faster and scale what works more reliably.

🔍 Signal engineering starts with fixing broken data

If the events you send to ad networks are inaccurate or poorly mapped, you’re sabotaging the algorithms. First step: make sure event counts match internal analytics within ~5–10% (not 30–50%). Then move from “normal” to “sophisticated” by filtering for quality — for example, optimizing to high-LTV trial signups instead of all trials — and sending value-adjusted revenue that reflects predicted LTV, not just day-one spend.


⚖️ Balance exploitation of winners with exploration of new concepts

When a creative crushes it, it’s tempting to flood your account with variations. But over-reliance on a single concept speeds fatigue and leaves you exposed when performance drops. Keep iterating on winners and testing new hooks in parallel — especially on fast-moving platforms like TikTok, where trends expire in weeks.


🌐 App-to-web works best for big brands with deep resources

Moving checkout to the web can bypass app store fees, but it’s a high-commitment experiment. Success usually requires brand trust, team bandwidth, and a well-tested flow — often with different plan structures than in-app. For most smaller teams, the opportunity cost outweighs the benefit. “Saying no to good ideas” is often the smarter prioritization.


💳 Hybrid monetization is powerful, but not plug-and-play

Combining subscriptions with one-time or usage-based purchases can capture more revenue from different segments — especially for AI-powered apps with real compute costs. But designing it to avoid cannibalizing subscriptions is complex. Treat hybrid as a later-stage lever: exhaust easier wins in pricing, packaging, and paywall optimization first, then experiment, possibly starting with Android or non-US markets. 


About Thomas Petit: 

👨‍💻 Independent app growth consultant helping subscription apps like Lingokids, Deezer, and Mojo.


📈 Thomas is passionate about helping subscription apps optimize their ad spend and increase ROI through smarter testing.


💡 “The whole idea of signal engineering and optimization of the data that you're sending back is: send the network something better, and they're gonna do a better job. They are doing a better job — it's you who are not doing yours.”


👋  LinkedIn



Follow us on X:


Episode Highlights:
 

[1:21] Testing smarter: How AI may be changing the game for testing ads.

[13:09] Untangling the web: App-to-web can work for some, but it’s not a slam dunk.

[21:19] Hedge your bets


Published on 2 months, 3 weeks ago






If you like Podbriefly.com, please consider donating to support the ongoing development.

Donate