We Built It Because We Had To - Tech Founder Backstories

Inside the 64 Billion Identity Breach Data Lake — Andres Andreu, CEO of Constella Intelligence

21 min · Ayer
Portada del episodio Inside the 64 Billion Identity Breach Data Lake — Andres Andreu, CEO of Constella Intelligence

Descripción

Andres Andreu sits on one of the richest datasets in cybersecurity — nearly 64 billion breached identities — and for years growth still stalled. The problem was never the data. It was who Constella was selling it to. In this episode of We Built It Because We Had To, Andres Andreu, CEO of Constella Intelligence, walks through the breach-data lake his company has amassed over 16-plus years and how it now feeds OEM cybersecurity vendors like Norton LifeLock and intelligence agencies across Europe, including Europol. You'll hear how a single ICP mistake — pitching CISOs who had no team to operationalize the data — held the company back, and how the shift to an OEM model drove 17% revenue growth in a single year. Andres also traces his arc from building federal law enforcement wiretap systems in the 1990s, to taking Bayshore Networks from employee number three to exit in 2021, to stepping into the CEO seat at Constella just six months after joining as COO. Along the way he shares the "fail fast" moment that forced his team to scrap part of their product and build a machine learning engine that earned an internationally granted patent — and saved the company. If you're a founder or operator wrestling with product-market fit, ICP, or when to kill what you've built, this one is for you. Chapters 00:00 What Constella Intelligence actually does 03:09 Why passwords barely change over 15 years 04:34 Inside the 24/7 breach-hunting program 05:18 Two ICPs: OEM vendors and intelligence agencies 05:47 From 90s federal wiretap systems to founding Bayshore Networks 09:20 The ICP mistake: selling to CISOs who couldn't use the data 10:25 OEM partners: Norton LifeLock, Europol, and beyond 13:07 "My vendor has 17 billion identities." "I have 64." 15:38 The fail-fast moment that led to a patent — and saved the company 19:13 What's driving growth now: customer-driven APIs and ICP focus About the guest Andres Andreu is the CEO of Constella Intelligence, a cyber-intelligence company operating one of the world's largest breach-data lakes. He brings 33 years in cybersecurity, from federal law enforcement to a 2021 startup exit with Bayshore Networks, and is the author of an internationally granted machine learning patent. Connect with Andres: https://www.linkedin.com/in/andresandreu/ Learn more about Constella Intelligence: https://constella.ai/ Subscribe to We Built It Because We Had To for new founder stories every Tuesday and Thursday. Hosted by Jonathan Buckley of The Artesian Network — fractional CMO guidance for early-stage tech founders. Learn more at https://www.artesiannetwork.com

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17 episodios

Portada del episodio Inside the 64 Billion Identity Breach Data Lake — Andres Andreu, CEO of Constella Intelligence

Inside the 64 Billion Identity Breach Data Lake — Andres Andreu, CEO of Constella Intelligence

Andres Andreu sits on one of the richest datasets in cybersecurity — nearly 64 billion breached identities — and for years growth still stalled. The problem was never the data. It was who Constella was selling it to. In this episode of We Built It Because We Had To, Andres Andreu, CEO of Constella Intelligence, walks through the breach-data lake his company has amassed over 16-plus years and how it now feeds OEM cybersecurity vendors like Norton LifeLock and intelligence agencies across Europe, including Europol. You'll hear how a single ICP mistake — pitching CISOs who had no team to operationalize the data — held the company back, and how the shift to an OEM model drove 17% revenue growth in a single year. Andres also traces his arc from building federal law enforcement wiretap systems in the 1990s, to taking Bayshore Networks from employee number three to exit in 2021, to stepping into the CEO seat at Constella just six months after joining as COO. Along the way he shares the "fail fast" moment that forced his team to scrap part of their product and build a machine learning engine that earned an internationally granted patent — and saved the company. If you're a founder or operator wrestling with product-market fit, ICP, or when to kill what you've built, this one is for you. Chapters 00:00 What Constella Intelligence actually does 03:09 Why passwords barely change over 15 years 04:34 Inside the 24/7 breach-hunting program 05:18 Two ICPs: OEM vendors and intelligence agencies 05:47 From 90s federal wiretap systems to founding Bayshore Networks 09:20 The ICP mistake: selling to CISOs who couldn't use the data 10:25 OEM partners: Norton LifeLock, Europol, and beyond 13:07 "My vendor has 17 billion identities." "I have 64." 15:38 The fail-fast moment that led to a patent — and saved the company 19:13 What's driving growth now: customer-driven APIs and ICP focus About the guest Andres Andreu is the CEO of Constella Intelligence, a cyber-intelligence company operating one of the world's largest breach-data lakes. He brings 33 years in cybersecurity, from federal law enforcement to a 2021 startup exit with Bayshore Networks, and is the author of an internationally granted machine learning patent. Connect with Andres: https://www.linkedin.com/in/andresandreu/ Learn more about Constella Intelligence: https://constella.ai/ Subscribe to We Built It Because We Had To for new founder stories every Tuesday and Thursday. Hosted by Jonathan Buckley of The Artesian Network — fractional CMO guidance for early-stage tech founders. Learn more at https://www.artesiannetwork.com

Ayer21 min
Portada del episodio Exploitation Validation: Beyond Blinking Red Dots (Karen Nguyen)

Exploitation Validation: Beyond Blinking Red Dots (Karen Nguyen)

Most companies build their front door out of glass — and the guard dog is asleep all day.That's how Karen Nguyen describes the security gap her company exists to close. In this episode, Karen — co-founder and CEO of OFFENSAI — joins Jonathan Buckley on the morning she launched v2 of her autonomous cybersecurity platform. We get into what "exploitation validation" actually means and why it's not just another vulnerability scanner, how she's funding the company with paying customers and pre-seed angels instead of chasing a bloated Series A, and the over-hiring failure that taught her the most honest lesson we've had on the show: undershoot or overshoot, and nobody wins — land exactly where you said you would. It's a candid conversation about building lean, selling to skeptical CISOs, and the discipline of capacity planning in a market drunk on nine-figure rounds.What you'll learn:- Why "blinking red dots everywhere" is a noise problem, and how attack-chain validation cuts through it- How to run product-led growth in a category where CISOs say no to PLG by default- The case for paying customers over a giant Series A, and when institutional money actually helps- How an over-hire cycle right before the bubble burst reshaped how Karen plans capacity- What 15 years in startup go-to-market taught her about handling fundraising rejectionTimestamps:(00:00) Meet Karen Nguyen and OFFENSAI's v2 launch day(01:55) From immigrant kid to 15 years in startup go-to-market(03:29) Female founders, fundraising, and not taking "no" personally(06:47) Pre-seed angels and the trust behind early funding(07:51) Bootstrapping vs. a Series A market gone inflationary(09:51) Building a lean go-to-market system(12:00) PLG for CISOs: getting to value in the first 15 minutes(14:35) Exploitation validation and the "front door of glass"(16:38) Defying the odds: the first-generation immigrant arc(20:06) The over-hire failure right before the bubble burst(24:11) Capacity planning and "Build It. Test It. Prove It."(26:41) Why a nine-figure Series A sets a trapAbout the guest:Karen Nguyen is co-founder and CEO of OFFENSAI, an AI-powered cloud security testing platform built around autonomous red teaming and continuous exploitation validation. She spent 15 years in startup go-to-market and eight years selling cybersecurity to CISOs before co-founding the company.Connect with Karen Nguyen: https://www.linkedin.com/in/knguyen4/OFFENSAI: https://www.offensai.comWe Built It Because We Had To is hosted by Jonathan Buckley, fractional CMO at The Artesian Network. New founder stories every Tuesday and Thursday — subscribe so you never miss one. Learn more at https://www.artesiannetwork.com

4 de jun de 202626 min
Portada del episodio The 272-Day B2B Sales Cycle (Nick Turner)

The 272-Day B2B Sales Cycle (Nick Turner)

The B2B sales cycle just hit 272 days. That is not friction. That is a buying committee with a new veto holder back at the table.In this episode of We Built It Because We Had To, I sit down with Nick Turner, CEO of Dreamdata, the Copenhagen-founded B2B revenue attribution platform that closed a $55M Series B in October. Nick spent twenty years in MarTech sales before joining Dreamdata as CRO to open the US market, and recently stepped into the CEO seat. We get into the counter-intuitive move that preceded the round — narrowing the ICP and the user persona instead of broadening it — and what Dreamdata's latest LinkedIn benchmark data is telling us about how B2B buying actually works in 2026.You will learn why the average B2B sales cycle stretched from roughly 205 days a year ago to 272 days today, why finance teams are reasserting veto power inside the buyer, why roughly eight different people are active in every account every week, and why Nick cut the Dreamdata product roadmap to six months in an Anthropic-funded world where assumptions expire fast. Nick explains why his North Star metric is the tenure of the CMO who uses the platform, and why you should never ask a marketer to manufacture demand for a deal that has to close this quarter. He closes with three lessons that shaped his path: you are a product of your failures more than your successes, all you need is one yes (he pitched 74 investors to close the round), and know yourself — he once joined a pre-revenue company and fell flat because scaling, not zero-to-one, was his game.If you run revenue, sit in the CMO chair, or own a number that depends on a buying committee saying yes, this one is for you.GuestNick Turner — Chief Executive Officer, DreamdataLinkedIn: https://www.linkedin.com/in/cnickturner/Company: https://dreamdata.ioAbout the showWe Built It Because We Had To is a podcast about early-stage tech founders, the spark behind what they built, and the journey to make it exist. Hosted by Jonathan Buckley of The Artesian Network, where we have helped founders scale companies and have seen more than half of our clients reach an IPO or acquisition.Subscribe wherever you listen, follow the show on YouTube for the full video, and learn more at https://artesiannetwork.com.— Jonathan Buckley, The Artesian Network

2 de jun de 202621 min
Portada del episodio The AI Pushing Back on Insurance Denials (Michael Riley of Gabeo.ai)

The AI Pushing Back on Insurance Denials (Michael Riley of Gabeo.ai)

On his fourth B2B SaaS company, Michael Riley walked into the most crowded corner of healthcare tech — claim denials — and walked right back out. He pivoted Gabeo.ai into a niche almost no one was working: claim write-offs, the revenue hospitals and provider groups have already given up on. In the first 90 days at a large Midwest hospital group, his agentic AI layer pulled back $1.2 million.In this episode of We Built It Because We Had To, Michael and host Jonathan W. Buckley get into the mechanics of finding a niche inside a saturated market, the two-product strategy at Gabeo (Zoey for fee-for-service, Aria for value-based care), and why value-based care flips the economic incentives of US healthcare. Michael walks through how their AI agents cut through hundreds of pages of contract language that "you'd need a team of lawyers and months to decode."Then they rewind to his arc — learning to program at seven, co-founding Simple Post, surviving a year of failure-after-failure at Funnl before landing on an analytics product that got acquired. Michael gets candid about a 45x-ROI pilot he renegotiated DOWN to a fairer 5-10x, why his entire GTM at Gabeo is warm intros (no paid ads, no sales team), and the single biggest tell that you've actually hit product-market fit: the body language in the room.What you'll hear:- Why Gabeo abandoned denials and chased write-offs instead- How agentic AI cuts through 100s of pages of contract language in minutes- The pricing lesson behind the 45x ROI pilot they renegotiated- 12 product pivots, one acquisition — and what Michael learned about MVPs- Why "selling is asking questions" beats pitching, every time- What he wishes he'd known 15 years agoConnect with Michael Riley: https://www.linkedin.com/in/themichaelriley/Learn more about Gabeo.ai: https://gabeo.aiSubscribe to We Built It Because We Had To for new episodes every Tuesday and Thursday. More from Jonathan W. Buckley and The Artesian Network: https://artesiannetwork.comIf this episode hit, share it with a founder who's still trying to brute-force product-market fit with a bigger sales team.#FounderStory #HealthcareAI #B2BSaaS #ProductMarketFit #AgenticAI

28 de may de 202633 min
Portada del episodio AGE: The 4th Axis the AGI Conversation Is Missing | Rana Gujral

AGE: The 4th Axis the AGI Conversation Is Missing | Rana Gujral

🎙 Season 1, Episode 13Rana Gujral thinks the AGI conversation is missing a fourth axis: Artificial General Experience (AGE). On this episode of We Built It Because We Had To, the founder of Behavioral Signals and author of the upcoming book The AI Instinct: The Future of AI and Human Decision Making explains why intelligence without experience, memory, valence, or a persistent self-model is hollow — and why superintelligence won't arrive as an external god-like machine. It will emerge from hybrid cognition: the tight loop between a human's priors and a machine's scale.We also get into the through line from founding TIZE (acquired), leading Smart Home at Logitech, and helping rebuild Cricut during a near-bankruptcy stretch that turned into a successful IPO. Rana explains why Behavioral Signals doesn't use third-party LLMs and how its paralinguistic models read tone, pitch, prosody, and micro-pauses to extract the signal under the words. He breaks down the company's two business lines (CCaaS and national security, where they're backed by In-Q-Tel), and how their new behavioral mapping approach to deepfake audio detection works at half-second granularity and 98–99% accuracy when classical artifact analysis has stopped working.🎙 In this episode:→ AGE: Artificial General Experience as the missing AGI axis→ Why Behavioral Signals refuses to use third-party LLMs→ Paralinguistic models that read tone, prosody, and micro-pauses→ Deepfake audio detection by behavioral mapping (98–99% accuracy)→ In-Q-Tel backing and the national security business line→ From Logitech Smart Home to Cricut's IPO turnaround→ "Measure what the system does to the person, not just for them"📌 Connect with Rana Gujral:LinkedIn: https://www.linkedin.com/in/ranagujral/🎧 About "We Built It Because We Had To"The Artesian Network's podcast — hosted by CEO Jonathan Buckley. Real founder stories about the spark, the struggle, and the strategy behind building a tech company. More than half of our clients reach IPO or acquisition.→ Subscribe for new episodes every Tuesday and Thursday at 11 AM ET→ More from Jonathan: https://artesiannetwork.com→ Connect with Jonathan: https://www.linkedin.com/in/jonathanwbuckley/⏱ Chapters:00:00 Intro01:08 From Cricut's near bankruptcy to a successful IPO02:30 Behavioral Signals as research roots, not chatbot05:19 Two equal legs: call centers and national security06:56 Why old deepfake detection broke07:43 The cybersecurity manipulation problem10:12 Series A in 2019, before Transformers12:33 Inventing the category nobody had a bucket for16:09 Artificial general experience explained18:50 The chess engine that lives through nothing20:02 Hybrid cognition and the new unit24:23 Measure what the system does to the person#FounderStories #AI #AGI #VoiceAI #DeepfakeDetection

26 de may de 202623 min