PODCAST · business
The Unlearning Room by Forg3t
by Forg3t Protocol
The Unlearning Room by Forg3t is a biweekly AMA series about one questionthat the AI industry keeps avoidingHow do machines truly forgetIn each session we take real questions from researchers, builders, regulators and founders, and answer them with brutal honesty. We talk about AI unlearning, the right to be forgotten, GDPR and global privacy rules, proof of deletion, and what it actually takes to turn forgetting into a verifiable protocol, not a marketing slide.
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10
Why AI must be verifiable, not believable.
AI systems were built in a trust based era. We trusted companies when they said data was removed. We trusted models when they claimed compliance. We trusted internal audits.But AI is now infrastructure. Infrastructure cannot run on belief.In this episode of The Unlearning Room by Forget, we explore why trust is collapsing and proof is becoming the new standard. We examine what verifiable behavior means, why observable silence can matter more than explanation, and how the Forget Protocol represents an attempt to replace trust with cryptographic evidence.This episode connects the entire season into one question: can AI move from promise to proof?
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9
Designing AI That Can Change Its Mind
Most AI systems are designed to accumulate. Few are designed to reverse.In this episode of The Unlearning Room by Forget, we explore what it means to design AI systems that can change their mind. Not through full retraining, but through structured, selective reversibility built into architecture from day one.We examine how editability, modular memory, and influence isolation could reshape how AI is built. We also discuss how the Forget Protocol represents one approach to embedding reversible memory into production systems.This episode is about building AI that remains adaptable, accountable, and controllable over time.
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Legal responsibility in the age of persistent machine memory.
When AI systems retain information they should not, the damage is not abstract. It can affect hiring decisions, credit approvals, healthcare outcomes, and reputation.In this episode of The Unlearning Room by Forget, we explore liability in the age of AI memory. If a model recalls deleted data, reinforces bias, or exposes sensitive information, who carries the risk? The developer, the deployer, the enterprise, or the infrastructure provider?We also examine how the Forget Protocol introduces verifiable unlearning as a way to reduce exposure and demonstrate responsible model governance.
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7
Why AI systems are built to remember, and what it costs to forget.
AI systems remember because memory creates advantage. Better personalization, stronger predictions, higher retention. But that same memory also creates legal, ethical, and long term strategic risk.In this episode of The Unlearning Room by Forget, we examine the economic incentives behind AI memory. Why do companies accumulate more data than they need? Why is forgetting treated as cost instead of value?We also explore how the Forget Protocol changes the economics by making unlearning measurable, operational, and compatible with enterprise workflows.
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6
Who Owns AI Memory?
“Welcome to The Unlearning Room by Forget, where we sit down with the people who are quietly rebuilding AI around one hard promise: when data must disappear, models must forget.”It is 2026. AI systems influence hiring, loans, medical decisions, and public discourse. But almost no one asks clearly: who owns what these systems remember?Today we talk about control, power, and responsibility inside AI memory.
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Attacking AI Models to Prove Unlearning
Most AI systems look safe until you start pushing them.In this episode of The Unlearning Room by Forget, we explore what happens when AI models are put under pressure. Not normal usage, but adversarial questioning, repeated probing, and edge case attacks designed to make models reveal what they should no longer know.We talk about why compliance claims often collapse under stress, how deleted data can resurface through indirect prompts, and why silence, refusal, or hesitation can be more meaningful than confident answers. The episode also looks at how the Forget Protocol is used to test AI behavior under pressure, treating adversarial attacks as a verification method rather than a threat.If you build, audit, or deploy AI systems, this episode explains why unlearning is not proven until someone actively tries to break it.
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4
The Hidden Technical Debt Inside AI Memory
AI systems do not just learn. They accumulate memory over time.In this episode of The Unlearning Room by Forget, we talk about a problem most teams do not notice until it is too late: memory related technical debt inside AI models. As models are fine tuned, connected to new data sources, and shipped faster, they become harder to change, harder to clean, and harder to forget.We explore why unlearning gets more expensive the longer a model runs, how forgotten data becomes embedded in weights and representations, and why designing for reversibility early matters. The episode also looks at how the Forget Protocol can be used as infrastructure to pay down memory debt and keep AI systems editable over time, not just compliant in emergencies.This conversation is for anyone building AI systems that are meant to live longer than a demo.
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3
2026: The Year AI Became Accountable
2026 is not just another year for artificial intelligence. It is the moment trust stopped being enough.In this episode of The Unlearning Room by Forget, we explore why AI systems are now expected to prove how they behave, not just explain how they were built. We talk about audits that test models instead of reading policies, why regulators are shifting from intent to evidence, and what accountability really means for teams shipping AI today.This conversation looks at the growing gap between internal compliance claims and external verification, and how protocols like Forget are emerging to make AI unlearning and model behavior observable, testable, and provable in the real world.If you build, deploy, or regulate AI, this episode explains why 2026 quietly changed the rules.
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2
Why Forgetting Matters in the Age of Artificial Intelligence
Today, we are talking about something most people building AI are actively trying to avoid thinking about.Forgetting.Not human forgetting. Not memory fading over time. But artificial forgetting. Intentional, provable, accountable forgetting inside machine learning systems.This episode is about why AI unlearning exists, why regulation is forcing it into the spotlight, and why companies that ignore it today will face real consequences tomorrow.
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Episode 1 - Do Machines Ever Truly Forget
What does it really mean for an AI system to forget you? In this episode we unpack the gap between deletion and true unlearning, and introduce Forg3t, a protocol that both untrains models on demand and proves that forgetting actually happened.
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ABOUT THIS SHOW
The Unlearning Room by Forg3t is a biweekly AMA series about one questionthat the AI industry keeps avoidingHow do machines truly forgetIn each session we take real questions from researchers, builders, regulators and founders, and answer them with brutal honesty. We talk about AI unlearning, the right to be forgotten, GDPR and global privacy rules, proof of deletion, and what it actually takes to turn forgetting into a verifiable protocol, not a marketing slide.
HOSTED BY
Forg3t Protocol
CATEGORIES
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