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Executive Report - 2026

The State of AI/ML in Drug Discovery

A business & commercial perspective

Author: Vikash Peesapati (Director, Strategy & Corporate Development)

After more than a decade of development and over $20 billion in cumulative investment, AI in drug discovery stands at a critical inflection point. We separate the signal from the noise — what’s working, what’s not, and where the next 24 months will define winners.

$16–25

projected market by 2034–2035

80–90

phase I success rate vs. 40–65% industry avg

3

faster preclinical discovery cycles

30

M&A transactions since 2018

What this report is — and what it isn't.

This is not another hype piece on AI drug discovery. It’s a clear-eyed commercial read on a sector at the maturity inflection point.

We track the four waves of AI in drug R&D, dissect four viable business models (SaaS, AI-CRO, AI-first biotech, and hybrid) with their actual P&Ls, and map the partnership economics — from $50–100M+ upfronts to billion-dollar milestone structures.

We benchmark validated performance metrics, examine clinical setbacks honestly, and pressure-test what proprietary data moats really look like in 2026. And we name the companies — Insilico, Recursion, Schrödinger, Xaira, Nabla Bio, Isomorphic Labs — with the financials, deal structures, and pipeline data behind every claim.

Built for leaders who need to make portfolio, partnership, and investment decisions before the 2026–2027 Phase 2 readouts reshape the field.

What you’ll walk away knowing

  • How leading AI platforms cut preclinical discovery from 2.5–4 years to 12–18 months — and how Insilico’s INS018_055 went concept-to-Phase 1 in under 30 months at <$2.5M.
  • Why no AI-discovered drug has been approved yet, and how Phase II/III data through 2026–2027 will separate validated platforms from overpromised ones.
  • What 30+ M&A transactions since 2018 — including Recursion–Exscientia — reveal about market consolidation, and how Big Tech (NVIDIA, Alphabet, Microsoft, AWS) is now a direct competitor.
  • Why hybrid models are winning commercially — Insilico hit $85.8M revenue at +68% YoY — while pure pipeline plays have lost 80–90% of peak valuations.
  • Why data moats now matter more than algorithms, with 3 of pharma’s top 4 adoption barriers being data-related as foundation models commoditize.
  • How Genentech, AstraZeneca, Lilly, and Novo Nordisk are scaling internal AI from millions to billions — opening a 5-year gap between leaders and laggards as the pilot era ends.

Get the full report

Detailed company financials, deal structures, business model P&Ls, and stakeholder-specific recommendations — for pharma leaders, AI-biotech founders, investors, and CROs.

  • Independent research · 23 cited sources
  • Trusted by ~15 of the top 20 pharma

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