Showing posts with label startups. Show all posts
Showing posts with label startups. Show all posts

Thursday

How To Make AgenticAI Startups

 

                                                           image generated by meta ai

Big AI companies (Anthropic, OpenAI, Google, Microsoft, Amazon) will build foundational models + generic agent platforms. But that does not eliminate opportunities for other — in fact, it creates MORE opportunity, just in different layers.

πŸš€ Reality: What AI Big Companies Will Do

Large players will dominate:

  • Foundation models (LLMs, multimodal AI)
  • Cloud infra (compute, vector DBs, APIs)
  • General agent frameworks (Copilot, Gemini agents, etc.)

πŸ‘‰ These are horizontal platforms (broad, generic tools)

πŸ”₯ Where Other Companies Can Win

✅ Vertical AI (Biggest Opportunity)

Instead of generic agents → build industry-specific AI systems

Examples:

  • AI for banks and financial services
  • AI for doctors (clinical notes, diagnosis support)
  • AI for manufacturing (defect detection, predictive maintenance)
  • AI for real estate brokers

πŸ‘‰ Why this works:

  • Requires domain knowledge
  • Needs custom workflows + data
  • Big AI companies won’t go deep in every niche

🧠 Data Advantage (Underdog Superpower)

Models are becoming commoditised.

πŸ‘‰ Data is the real moat

Startups can win by:

  • Gathering unique datasets
  • Fine-tuning for specific domains
  • Building proprietary knowledge graphs

✅ Whoever owns better data → builds better AI

🧩 AI Tooling & Infrastructure (Developer Tools)

Even if big players build agents, the ecosystem will need tools:

Opportunities:

  • Agent debugging tools
  • Monitoring & evaluation platforms
  • Prompt/version management tools
  • Cost optimization tools
  • AI security & guardrails

πŸ€– Multi-Agent Orchestration (Advanced Layer)

Big AI companies give base agents. Other companies can build:

  • Systems where multiple agents collaborate
  • Domain-specific agent swarms

Example:

In a logistics company:

  • Planning agent
  • Inventory agent
  • Pricing agent
  • Delivery optimization agent

πŸ‘‰ Coordinating them well is HARD → big opportunity

🧠 What Anthropic Actually Released (Reality Check)

Anthropic launched ~10 financial-service AI agents on May 5, 2026. 

These agents can:

  • Build pitch decks and financial models
  • Review earnings reports
  • Perform KYC/compliance checks
  • Audit financial statements
  • Handle month-end accounting work 

They integrate with:

  • Excel, PowerPoint, Word
  • Financial data providers (Moody’s, S&P, etc.)

πŸ‘‰ Basically: They automated “analyst work” inside finance companies

⚠️ Important Insight Most People Miss

πŸ‘‰ These are NOT “complete businesses”

They are:

Agent templates + powerful tools

Even Anthropic:

  • Provides “reference architectures”
  • Requires customization
  • Needs integration with company workflows and data

πŸ”₯ The Hidden Truth (Very Important)

Look at this:

πŸ‘‰ Companies deploying these agents need engineers + customization

  • Anthropic is sending forward-deployed engineers to implement them
  • Many enterprises struggle with data quality + integration complexity

πŸ‘‰ In fact:

Gartner predicts 70% of enterprises may fail to fully adopt these agent systems due to cost + complexity 

πŸ’‘ What This Means for Startups (CRITICAL UNDERSTANDING)

Instead of killing startups…

πŸ‘‰ This creates 3 NEW massive markets

1. πŸ› ️ “AI Implementation Companies” (Huge Opportunity)

Anthropic gives tools.

But companies need:

  • Custom workflows
  • Data cleaning
  • Integration with internal systems
  • Fine-tuning

✅ Startup opportunity:

“We implement AI agents for finance companies”

This is like:

  • SAP consultants (old world)
  • Now → AI agent consultants

2. 🧩 Vertical + Niche > Generic

Anthropic builds for: πŸ‘‰ BIG banks, asset managers, insurers

❌ They will NOT build for:

  • Indian CA firms
  • Small NBFCs
  • Local fintech startups
  • SME accounting workflows

✅ Startup opportunity:

  • AI for GST filing automation
  • AI for Indian compliance + CA workflows
  • AI for local lending underwriting

πŸ‘‰ Niche always wins against big players

3. ⚙️ Last-mile Execution is HARD

Anthropic agent:

  • Can create a financial model

But: ❌ It does NOT:

  • Talk to your CRM
  • Handle your approval flows
  • Connect to your internal dashboards
  • Manage business-specific rules

✅ Startup opportunity:

Build “end-to-end workflow systems”

🧠 The Bigger Shift Happening

We are moving from:

OLD:

Software (SaaS)

NOW:

Agent + Workflow + Data systems

Reports show:

  • Up to 75% enterprises will adopt agentic AI soon
  • AI agents are transforming how software is built and used

πŸš€ Strategic Positioning (This is GOLD)

Instead of competing with Anthropic:

πŸ‘‰ You build on top of Anthropic

Think Like This:

LayerWho playsFoundation modelsAnthropic, OpenAIAgent platformsBig tech✅ Real business systemsπŸ‘‰ STARTUPS

πŸ”₯ Real Analogy

Anthropic = builds electricity

Startup = builds:

  • Factories
  • Machines
  • Products using electricity

πŸ‘‰ Electricity companies didn’t kill startups
πŸ‘‰ They created industries

🧭 Final Answer (Clear & Honest)

✅ Yes — big AI companies will build agents
❌ No — they will NOT replace startups

πŸ‘‰ They will:

  • Provide infrastructure
  • Standardize capabilities

πŸ‘‰ Startups will still win by:

  • Deep domain expertise
  • Custom workflows
  • Proprietary data
  • Execution

πŸ’¬ One-Line Truth

“AI giants build brains. Startups build businesses.”

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