¡Soy fan de comenzar el nuevo año de manera emocionante y qué mejor manera que presentar un podcast! ¿Cuál era la frase de nuevo...? Hazlo... ¿Hazlo a lo grande o no lo hagas?
In taking on this podcast as the host going forward, I wanted to take the conversations with topics like AI to a more in depth and tangible feeling place. I’m incredibly passionate about this topic and my goal is to hold deep, useful conversations about where AI is headed and what it means for the folks who try to make it work every day, which I call the Future of Work.
Para empezar, me senté con dos personas que, a mi parecer, tienen grandes perspectivas sobre la IA en este ámbito: Patrick McGarry, Director Federal de Datos en ServiceNow, y el Dr. Jupiter Bakakeu, Tecnólogo Principal en IA Generativa en Alteryx. No son simples figuras decorativas. Están en las trincheras construyendo el futuro y reflexionando sobre cómo funciona realmente la IA, y no endulzan la realidad de lo que conlleva.
To get a taste of where this amazing conversation went, take a look at these 5 ideas from this episode that I think will shape the AI conversation this year:
1. Los agentes cambian las reglas del juego
AI agents are moving away from the perception of just being smart assistants to shifting the entire landscape of how teams are formed and work is done.
Jupiter broke it down like this: Real agents don’t just generate answers; they perceive, plan, act, and learn. Once they start taking real-world actions (like modifying records or triggering workflows), the stakes go up. Fast.
I think Patrick nailed it: ”The moment AI can take action, you have to care about governance. Mistakes aren’t just wrong answers anymore. They’re real outcomes.”
This is where a lot of the hype falls apart. Cool demos don’t mean a system is safe, auditable, or even reversible.
2. Delega sabiamente
Everyone’s excited about delegation, and for good reason, AI agents can be powerful teammates.
But just handing off everything is a sure way for disaster.
I loved Jupiter’s framework on this point: Look for tasks that are repeatable, reversible, and auditable. If it meets all three, go ahead and delegate. If not? Keep a human in the loop.
Ejemplos:
- Organizar tus archivos o clasificar documentos
- Programar reuniones o resumir informes
- Tomar decisiones financieras
- Presentar declaraciones de impuestos
Bottom line: Just because an agent can do something doesn’t mean it should. We need to be thoughtful about this part!
3. Voice is rising, but it’s not the end of the UI
We talked a lot about voice. Honestly? I’m bullish on it, especially for consumer use cases.
Voice lowers friction. It makes delegation feel more natural. And when it works, it feels like magic. But enterprise use cases? I’m willing to admit, that’s a taller order.
Patrick made a great point: ”Voice may feel natural, but governance needs the receipts.” When you’re working on regulated tasks or precision-heavy workflows, clicking a button is still safer than hoping an AI caught your meaning.
Jupiter was on the same page: “Voice should augment your interface, not replace it.”
Durante mi sesión rápida al final del podcast, ambos estuvieron de acuerdo en que la voz progresará, pero que escribir seguirá dominando por ahora. ¡Por ahora estaré del otro lado hablando con mi computadora!
4. Los grandes obstáculos no son técnicos
One of the biggest myths in AI right now is that model quality is the bottleneck. It’s just not the case.
The real blockers are trust and cost.
We’re talking massive infrastructure needs and there’s a reason compute costs are exploding. Then layer on global regulations like the EU AI Act, amongst many others in flight, and you’ll understand what real constraints look like. AI won’t move forward with out a level of trust and a lower bill.
This makes tangible sense because guardrails matter. But it’s important to recognize that the path to scalable AI runs through modernization, governance, and data quality, not just cooler models.
Patrick summed it up wisely: ”The winners in 2026 won’t chase every new feature. They’ll be boringly compliant and quietly effective.”
Estoy de acuerdo.
5. La mejor IA es invisible
One nugget of wisdom came up a few times: The most impactful AI might be the stuff we don’t even notice.
Toma este ejemplo de Jupiter: él creó un agente en segundo plano que organiza y clasifica todo su Google Drive durante la noche, todas las noches. Sin fanfarrias ni tareas adicionales, solo tareas marcadas como completadas en las que no tienes que pensar.
That’s the bar we should be aiming for. AI that fits into your life or workflow quietly doing what needs to be done, without creating new risks.
Puedes argumentar que esto no es lo suficientemente revolucionario o radical. No estoy de acuerdo. Un creciente ejército de personas que mejoran solo un 1 % cada día cambiará el mundo en muy poco tiempo.
We’re past the phase where AI is the shiny new toy. We’re in the phase where people are seeing the way forward and becoming strategic and deliberate about the path.
That shift from answers to action is what 2026 is all about.
Listen to the full episode here: 🎧 Alter Everything Podcast: What Does AI Look Like in 2026?
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