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Evidence-backed analysis of how AI automation affects Investment Bankers. Scores derived from published research — McKinsey, BLS, Stack Overflow, and industry data.
Automation Risk
Defensive Strength
Estimated Runway
4–6 YearsMarket Intelligence
Goldman Sachs, Morgan Stanley, and JPMorgan have all deployed AI tools automating pitch book creation, LBO model templating, and comparable company analysis — functions that historically occupied 60–70% of analyst hours. Goldman's internal AI platform reportedly handles first-draft CIM generation as of Q3 2025. Junior IB analyst class sizes at bulge-bracket banks decreased ~20% in the 2025 recruitment cycle, with AI cited as a contributing factor. However, deal sourcing via executive relationships, board-level advisory conversations, and cross-border M&A negotiation remain staunchly human-dependent. Senior MD-level bankers with deep sector relationships are in higher demand than ever.
Source: Based on Bloomberg Intelligence 'AI on Wall Street' (Q3 2025), Financial Times IB hiring coverage (2025), Dealogic M&A volume data (2025), and bank-specific investor presentations (2025).
Task Breakdown — Time Allocation vs. Vulnerability
Highest Exposure Areas
Analysis / Reporting
Standard analysis and reporting is already being absorbed by AI at the enterprise level. McKinsey notes analysis tasks among the sharpest automation increases. The defensible remainder is interpretation requiring proprietary context — that window is closing.
Customer / Stakeholder Communication
AI agents are now handling routine customer communication autonomously. The protection in this task comes from novel relationship context and trust — which erodes when your client interactions become standardised or when AI gains sufficient context to replicate the pattern.
Writing / Summarising / Documentation
GPT-5 Deep Research and Claude already produce publication-quality reports, emails, and documentation. By 2027, AI writing assistants will handle first-draft creation for virtually all standard business documents with minimal human input.
Strongest Defenses
Decision-Making Under Uncertainty
This remains one of the most defensible task categories — AI struggles with genuine novelty and accountability. The erosion condition: as AI decision-support tools become standard, the bar for what counts as 'genuine uncertainty' rises, and roles that mostly execute defined playbooks lose this protection.
Negotiation / Persuasion
Live negotiation remains human-critical due to real-time reading of counterparties and credibility. The near-future pressure comes from AI handling preparation, concession modelling, and post-deal documentation — compressing the human portion to the actual negotiation moment only.
Relationship Management / Trust Building
This is the false moat most people rely on. Relationship trust is real protection today — it erodes when: (a) clients become comfortable trusting AI-mediated interactions, (b) your relationship context becomes standardisable, or (c) your firm deploys AI account management tools that clients prefer for speed.
This is the average. What about you?
The average Investment Banker scores 38/100 risk. But your specific role, environment, and task allocation could be higher or lower. Get your personalised score in ~10 minutes.