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Hi! I'm your AI Assistant
I can help you analyze interview sessions, understand candidate performance, and provide insights about your recruitment data.

Here's the uncomfortable truth: most AI agents are fluent in everything and expert in nothing. They'll confidently tell you about "customer acquisition cost" one moment and completely butcher what "inventory turns" means the next. For solo founders betting their businesses on AI assistance, this isn't just annoying—it's expensive.
The solution isn't bigger models or more training data. It's teaching agents to speak your industry's actual language. Not in a "let me Google that for you" way, but in the same way a seasoned consultant walks into your boardroom already knowing what CAC, LTV, and churn mean in your specific context.
Let's talk about what happens when your AI assistant doesn't speak your language.
You ask your general-purpose AI about improving your SaaS metrics, and it cheerfully suggests "reducing churn by improving customer satisfaction." Technically true. Also useless. Because it doesn't understand that in your B2B SaaS context, churn is driven by three specific factors: product stickiness at the team level, integration depth, and executive sponsorship renewal cycles.
A human consultant with SaaS expertise would know this. They'd speak in terms of "logo retention vs. net dollar retention," "expansion revenue," and "negative churn." They wouldn't waste your time with generic advice.
This is the hallucination tax: not outright lies, but expensive vagueness. Death by a thousand generic responses.
The breakthrough in the AI Board Room architecture isn't just having specialized agents—it's how those agents learn to be specialists.
Enter the Skills system: modular expertise packages that teach agents the vocabulary, frameworks, and reasoning patterns of specific domains. Think of a SKILL.md file as a crash course in "how experts in this field actually think and talk."
When Cipher (your strategic advisor) loads a "SaaS Metrics" skill, here's what happens:
Vocabulary Loading: The agent doesn't just learn definitions—it learns relationships. "CAC" isn't just "customer acquisition cost." It's understood in relation to LTV (lifetime value), payback period, and unit economics. The agent learns that a SaaS founder asking about CAC is really asking about capital efficiency and growth sustainability.
Context Constraints: The skill defines valid ranges and relationships. When discussing SaaS metrics, monthly churn rates above 10% trigger different reasoning than 2% churn. The agent knows that B2B SaaS and B2C SaaS speak different dialects of the same language.
Framework Integration: Skills embed industry-standard frameworks. For retail, that's inventory turns, sell-through rates, and days of supply. For marketplaces, it's take rate, GMV, and liquidity. These aren't just buzzwords—they're the lenses through which agents analyze your problems.
Here's where it gets interesting. The Model Context Protocol (MCP) doesn't just give agents access to tools—it ensures those tools understand domain language.
When Atlas (your strategy specialist) needs to analyze your market data, the MCP connection to your analytics platform isn't just pulling raw numbers. It's pulling semantically meaningful data: "enterprise customers with >$50K ACV showing usage decline over 30 days"—not just "accounts with decreasing activity."
The tool layer speaks the same domain-specific language as the agent layer. No translation errors. No generic output.
The A2A (Agent-to-Agent) protocol becomes exponentially more powerful when agents share domain vocabulary.
Imagine this delegation chain:
You to Cipher: "I'm worried about our burn rate relative to runway."
Cipher to Atlas: "Priority analysis needed: current monthly burn vs. cash position, with scenario modeling for 18-month runway at current CAC and conversion rates."
Atlas to Nova: "Data request: last 6 months OpEx by category, current cash and receivables, CAC trend with 90-day MA."
Notice what didn't happen? No agent asked "what do you mean by burn rate?" No generic financial analysis. Each agent understood the specific SaaS context and used precise terminology to coordinate action.
This is linguistic precision creating operational efficiency.
Here's the provocative bit: most AI systems are too flexible. They'll happily reinterpret "gross margin" based on context clues, sometimes getting it right, sometimes catastrophically wrong.
The Google ADK-powered deterministic backbone in the AI Board Room takes the opposite approach: when an agent uses domain-specific terminology, it means exactly what the skill definition specifies.
"Inventory turns" in a retail context triggers a specific calculation: COGS ÷ Average Inventory. Not "approximately that," not "something similar"—that exact formula. The Critic Agent validates that all uses of domain terminology maintain this precision.
This determinism is what separates "interesting AI demo" from "I'm betting my business on this."
Voice mode isn't just typing with your mouth. When you're talking through strategy with your AI board room, domain-specific language becomes even more critical.
Native Audio processing understands that "cack" (how people actually pronounce CAC) and "customer acquisition cost" are the same thing in a SaaS conversation. It knows that "inventory turns" and "turn rate" are synonymous in retail contexts.
More importantly, the Action Extraction system pulling tasks from these conversations maintains domain precision. When you say "let's reduce our cack by optimizing the funnel," the resulting action items use proper terminology: "Analyze CAC by channel" and "Model conversion rate improvements," not vague "reduce costs" tasks.
Every business has its own dialect. Your "qualified lead" might be different from another SaaS company's definition. Your "high-value customer" has specific criteria.
The User Dossier doesn't just store preferences—it stores your business's linguistic fingerprint. Over time, the AI Board Room learns your specific vocabulary within your industry's broader language.
This creates a compounding advantage. The more you use the system, the more precisely it speaks your specific version of your industry's language. Generic AI assistants start from zero every conversation. Your AI board room gets more fluent in your business every day.
We're at an inflection point. The first wave of AI tools gave everyone access to general intelligence. The second wave—happening right now—is about specialized intelligence that speaks your language.
For solo founders and small teams, this is existential. You don't have the luxury of a 10-person executive team, each with deep domain expertise. You need AI advisors who can think and speak like specialists without the generic hallucination tax.
Domain-specific languages for agents aren't a nice-to-have feature. They're the difference between AI that sounds smart and AI that makes you money.
The future of AI assistance isn't more general-purpose chatbots. It's specialized agents with deep domain fluency, communicating in precise industry language, coordinating through shared vocabulary, and maintaining deterministic accuracy when terminology matters.
The Skills architecture makes this modular and extensible. As your business evolves, your agents' vocabulary evolves. Enter new markets? Load new skills. Pivot your model? Update the domain language.
This is how solo founders compete with enterprises: by having a board room full of specialists who speak every relevant industry language fluently, available 24/7, for the cost of a few API calls.
Stop paying the hallucination tax. Stop translating between generic AI-speak and your industry's actual language.
Experience an AI board room that speaks your business's language from day one. Atlas, Cipher, and Nova are ready to discuss your strategy using the precise vocabulary that matters in your industry.
Try the AI Board Room at JobInterview.live and discover what it's like when your AI advisors actually speak the lingo.
Because in business, words mean things. Your AI should know that.