AI Revolution model basket

AI in Drug Discovery

If computational screening lifts preclinical-to-Phase-II success by even a few hundred basis points, the economics rewrite.

What is the thesis for AI in Drug Discovery?

A diversified book of biopharma, tooling, and diagnostics names with credible exposure to the computational discovery stack. We are not buying pure-play AI-native platforms with no clinical assets; the thesis is that the margin of safety lives in cash-generating incumbents whose pipelines benefit from better molecule selection, not in pre-revenue platform stories.

This is a curated QuantLink model basket. It is not a filed portfolio, not a fund, and not investment advice.

Published Apr 14, 2026. Updated Apr 14, 2026. Source: QuantLink curated model basket and FastAPI ideas endpoint.

Holdings
12
Benchmark
SPY
Status
New
1Y model return
+44.6%

Performance as of Jul 11, 2026.

Thesis narrative

The question

If computational methods lift the conditional probability of a preclinical asset reaching Phase II by 300-500 basis points, which incumbents capture the resulting expected-value lift, and are they priced for it?

Base rates

The reference class is pharmaceutical productivity regimes. Industry preclinical-to-approval success rates have declined from roughly 10% in the 1990s to roughly 5-7% by the late 2010s, with cost-per-approved-drug roughly doubling per decade (Eroom's Law). The base rate for a technology claim reversing Eroom's Law is low -- high-throughput screening, combinatorial chemistry, and genomics-era target identification all produced smaller effect sizes than promoters forecast. Roughly the 20th percentile for technology-driven productivity claims in pharma.

However, the reference class for structure-prediction and generative-chemistry tools is narrower and more encouraging: in published retrospectives, campaigns using structure-based design plus ML-guided candidate ranking show hit-rate improvements at the lead-optimization stage of roughly 2-4x versus historical controls. Whether that translates to approval-rate lifts is the open question, and the answer will take 4-7 years of clinical read-outs to settle.

The imputed probability in consensus biopharma numbers is that computational methods add roughly zero to pipeline expected value. That is a reasonable prior given Eroom. It is likely wrong at the margin, and the margin is where the money is.

Why the consensus view is wrong (or incomplete)

The bear case says drug discovery is constrained by biology, not by chemistry, and better molecule selection does not help if the target is wrong. That is partially correct. The causal mechanism we think consensus misses is that computational methods change the economics of failing earlier. If screening moves 20% of failures from Phase I to preclinical, per-program cost falls by roughly 30-40% even if overall approval rates are unchanged. That flows directly to pipeline NPV without requiring any claim about biology.

The second mechanism is platform leverage at the tooling layer. Sequencing read volume and the associated assay consumables are inputs to every computational campaign; tools vendors capture a royalty on industry-wide activity regardless of which therapeutic bet wins.

Position construction

Three 20% anchors: GILD, ALNY, and REGN. All three have durable cash-generative franchises that fund pipeline regardless of the thesis, mid-cycle pipelines where computational methods apply directly, and valuations that do not require the thesis to work for the position to survive. This is the margin of safety in the book.

NTRA (~12%) is the diagnostics lever -- MRD and NIPT volume is the data substrate for translational ML. ILMN (~7%) is the sequencing oligopoly; EXAS (~5.6%) is screening adjacency; CRL (~4.2%) is the preclinical services layer that runs the experiments computational candidates ultimately need. MRNA (~5%) is the mRNA platform exposure with a cash cushion and a credible computational-design workflow for antigen selection.

The gene-editing tail -- CRSP (~3%), NTLA (~1.3%), BEAM (~1.3%) -- is deliberately small. These are binary clinical-outcome names, and the book's AI thesis does not require them to work. They are held as right-tail optionality on the same platform that benefits from better in silico target engagement. ABCL (~0.8%) is a token position in antibody discovery; small because the platform's commercial model is still unsettled.

Asymmetric payoff

Base case: GILD/ALNY/REGN compound modestly (high-single-digit to low-teens) while one or two mid-cap positions rerate on clinical read-outs aided by computational design. Book returns roughly 12-18% annualized. Bear case: Eroom's Law continues, the thesis fails, and the book returns 0-5% annualized on the cash-generative anchors while the tail goes to zero; overall -5 to +3%. Bull case: a credible approval-rate signal emerges and the tooling/diagnostic layer rerates; 30-45% annualized on a 2-3 year horizon.

At a 60% base, 25% bear, 15% bull, expected value is roughly +11 to +16% annualized. The book is structured so that the margin of safety sits in the anchors; the asymmetric payoff comes from the smaller positions, and the bear case is survivable.

Three things that would change our mind

  1. A large-cap pharma pulling out of a headline AI-discovery partnership after two cycles with no candidate advancing to IND.
  2. Illumina consumables revenue growth decelerating below 5% for two consecutive quarters, indicating underlying research activity is not expanding.
  3. A clean Phase II failure from an asset widely branded as AI-discovered, with no credible mechanistic alternative explanation.

What we are explicitly NOT betting on

We are not buying pure-play AI-native drug discovery platforms with no marketed products or late-stage pipeline. The historical base rate for pre-revenue platform stories in biotech is poor, and the valuation levels required to hold them imply imputed probabilities of success materially above observed clinical base rates. The book expresses the same thesis through names where the downside is bounded by existing franchise cash flow. That is a deliberately more conservative expression of the idea, and we accept a lower right tail in exchange for a survivable left tail.

Model basket holdings

Model basket: curated equal or target weighting, not a filed portfolio. Weights are the target basket weights returned by the live ideas endpoint.

NameSymbolModel weight
Moderna, Inc.MRNA4.86%
Illumina, Inc.ILMN7.04%
Natera, Inc.NTRA11.97%
AbCellera Biologics Inc.ABCL0.80%
Gilead Sciences, Inc.GILD19.99%
Alnylam Pharmaceuticals, Inc.ALNY20.00%
Regeneron Pharmaceuticals, Inc.REGN20.00%
Exact Sciences CorporationEXAS5.56%
Charles River Laboratories International, Inc.CRL4.22%
CRISPR Therapeutics AGCRSP3.02%
Intellia Therapeutics, Inc.NTLA1.28%
Beam Therapeutics Inc.BEAM1.26%

Backtested performance vs SPY

Performance is backtested from the returned tearsheet series. It reflects the model basket methodology and benchmark series, not live fund returns or a filed portfolio track record. Performance as of Jul 11, 2026.

Total Return

+44.6%

SPY +20.5%

Ann. Return

+45.4%

SPY +20.9%

Ann. Vol

22.2%

SPY 12.6%

Sharpe

2.04

SPY 1.65

Max Drawdown

-13.2%

SPY -9.1%

Alpha vs SPY

+25.1%

hit rate 48.8%

Performance as of Jul 11, 2026.

Rolling Performance vs Benchmark

Portfolio Holdings

Holding
Weight
Country
Exchange
Sector
Industry
Mkt Cap
Price
1Y
1Y Trend
ALNY
ALNYAlnylam Pharmaceuticals, Inc.
20.0%
REGN
REGNRegeneron Pharmaceuticals, Inc.
20.0%
GILD
GILDGilead Sciences, Inc.
20.0%
NTRA
NTRANatera, Inc.
12.0%
ILMN
ILMNIllumina, Inc.
7.0%
EXAS
EXASExact Sciences Corporation
5.6%
MRNA
MRNAModerna, Inc.
4.8%
CRL
CRLCharles River Laboratories International, Inc.
4.2%
CRSP
CRSPCRISPR Therapeutics AG
3.0%
NTLA
NTLAIntellia Therapeutics, Inc.
1.3%
BEAM
BEAMBeam Therapeutics Inc.
1.3%
ABCL
ABCLAbCellera Biologics Inc.
0.8%

SSR performance series fallback

The table below is the server-rendered reference series behind the interactive chart. Values show the wealth index level from a 1.00 starting value, not a second 1Y return figure. Series as of Jul 11, 2026.

DateModel basket wealth indexSPY
Jul 14, 20251.0000x1.0000x
Jul 15, 20250.9682x0.9957x
Jul 16, 20250.9796x0.9991x
Jul 17, 20250.9753x1.0052x
Jul 18, 20250.9674x1.0044x
Jul 21, 20250.9671x1.0063x
Jul 22, 20250.9925x1.0065x
Jul 23, 20251.0075x1.0150x
Jul 24, 20251.0094x1.0154x
Jul 25, 20251.0146x1.0197x
Jul 28, 20251.0024x1.0194x
Jul 29, 20250.9990x1.0167x
Jul 30, 20251.0044x1.0154x
Jul 31, 20251.0117x1.0116x
Aug 1, 20251.0142x0.9951x
Aug 4, 20251.0370x1.0102x
Aug 5, 20251.0324x1.0051x
Aug 6, 20251.0164x1.0128x
Aug 7, 20251.0198x1.0119x
Aug 8, 20251.0429x1.0198x
Aug 11, 20251.0399x1.0178x
Aug 12, 20251.0478x1.0286x
Aug 13, 20251.0615x1.0321x
Aug 14, 20251.0667x1.0322x
Aug 15, 20251.0822x1.0298x
Aug 18, 20251.0794x1.0296x
Aug 19, 20251.0763x1.0240x
Aug 20, 20251.0836x1.0213x
Aug 21, 20251.0826x1.0172x
Aug 22, 20251.0828x1.0328x
Aug 25, 20251.0616x1.0283x
Aug 26, 20251.0740x1.0326x
Aug 27, 20251.0728x1.0349x
Aug 28, 20251.0692x1.0386x
Aug 29, 20251.0667x1.0324x
Sep 2, 20251.0652x1.0247x
Sep 3, 20251.0621x1.0303x
Sep 4, 20251.0694x1.0389x
Sep 5, 20251.0861x1.0359x
Sep 8, 20251.0799x1.0384x
Sep 9, 20251.0986x1.0408x
Sep 10, 20251.0801x1.0439x
Sep 11, 20251.1057x1.0525x
Sep 12, 20251.0788x1.0522x
Sep 15, 20251.0865x1.0578x
Sep 16, 20251.0928x1.0563x
Sep 17, 20251.0933x1.0550x
Sep 18, 20251.1179x1.0599x
Sep 19, 20251.1149x1.0622x
Sep 22, 20251.1181x1.0673x
Sep 23, 20251.0977x1.0615x
Sep 24, 20251.0923x1.0581x
Sep 25, 20251.0679x1.0532x
Sep 26, 20251.0719x1.0592x
Sep 29, 20251.0759x1.0622x
Sep 30, 20251.0852x1.0662x
Oct 1, 20251.1216x1.0698x
Oct 2, 20251.1253x1.0711x
Oct 3, 20251.1343x1.0711x
Oct 6, 20251.1302x1.0749x
Oct 7, 20251.1326x1.0709x
Oct 8, 20251.1387x1.0773x
Oct 9, 20251.1399x1.0742x
Oct 10, 20251.1285x1.0451x
Oct 13, 20251.1338x1.0612x
Oct 14, 20251.1387x1.0599x
Oct 15, 20251.1548x1.0646x
Oct 16, 20251.1572x1.0573x
Oct 17, 20251.1699x1.0633x
Oct 20, 20251.1967x1.0744x
Oct 21, 20251.1897x1.0744x
Oct 22, 20251.1740x1.0688x
Oct 23, 20251.1798x1.0751x
Oct 24, 20251.1814x1.0839x
Oct 27, 20251.1815x1.0967x
Oct 28, 20251.1920x1.0996x
Oct 29, 20251.1887x1.1002x
Oct 30, 20251.1824x1.0881x
Oct 31, 20251.2155x1.0916x
Nov 3, 20251.1976x1.0937x
Nov 4, 20251.1783x1.0807x
Nov 5, 20251.1949x1.0845x
Nov 6, 20251.1974x1.0728x
Nov 7, 20251.1873x1.0739x
Nov 10, 20251.1904x1.0906x
Nov 11, 20251.2204x1.0931x
Nov 12, 20251.2240x1.0937x
Nov 13, 20251.2171x1.0756x
Nov 14, 20251.2165x1.0754x
Nov 17, 20251.2255x1.0654x
Nov 18, 20251.2484x1.0564x
Nov 19, 20251.2547x1.0605x
Nov 20, 20251.2620x1.0444x
Nov 21, 20251.2816x1.0548x
Nov 24, 20251.2907x1.0703x
Nov 25, 20251.3090x1.0804x
Nov 26, 20251.3200x1.0878x
Nov 28, 20251.3246x1.0938x
Dec 1, 20251.2994x1.0888x
Dec 2, 20251.3001x1.0908x
Dec 3, 20251.3159x1.0946x
Dec 4, 20251.3139x1.0954x
Dec 5, 20251.3106x1.0974x
Dec 8, 20251.2858x1.0941x
Dec 9, 20251.2702x1.0932x
Dec 10, 20251.2861x1.1004x
Dec 11, 20251.3041x1.1030x
Dec 12, 20251.2833x1.0911x
Dec 15, 20251.2815x1.0895x
Dec 16, 20251.2729x1.0865x
Dec 17, 20251.2765x1.0746x
Dec 18, 20251.2803x1.0827x
Dec 19, 20251.3122x1.0893x
Dec 22, 20251.3323x1.0961x
Dec 23, 20251.3228x1.1011x
Dec 24, 20251.3259x1.1049x
Dec 26, 20251.3180x1.1048x
Dec 29, 20251.3120x1.1009x
Dec 30, 20251.3005x1.0996x
Dec 31, 20251.2937x1.0914x
Jan 2, 20261.3014x1.0934x
Jan 5, 20261.3044x1.1007x
Jan 6, 20261.3466x1.1072x
Jan 7, 20261.3841x1.1037x
Jan 8, 20261.3393x1.1036x
Jan 9, 20261.3323x1.1108x
Jan 12, 20261.3171x1.1126x
Jan 13, 20261.3260x1.1104x
Jan 14, 20261.3284x1.1049x
Jan 15, 20261.3101x1.1079x
Jan 16, 20261.3096x1.1070x
Jan 20, 20261.3126x1.0845x
Jan 21, 20261.3606x1.0970x
Jan 22, 20261.3830x1.1027x
Jan 23, 20261.3675x1.1031x
Jan 26, 20261.3765x1.1087x
Jan 27, 20261.3756x1.1131x
Jan 28, 20261.3537x1.1130x
Jan 30, 20261.3304x1.1075x
Feb 2, 20261.3349x1.1130x
Feb 3, 20261.3378x1.1036x
Feb 4, 20261.3298x1.0982x
Feb 5, 20261.2942x1.0845x
Feb 6, 20261.3078x1.1053x
Feb 9, 20261.3043x1.1107x
Feb 10, 20261.2900x1.1077x
Feb 11, 20261.3033x1.1075x
Feb 12, 20261.2789x1.0904x
Feb 13, 20261.3051x1.0911x
Feb 17, 20261.3233x1.0929x
Feb 18, 20261.3290x1.0984x
Feb 19, 20261.3373x1.0955x
Feb 20, 20261.3292x1.1034x
Feb 23, 20261.3240x1.0922x
Feb 24, 20261.3267x1.1001x
Feb 25, 20261.3252x1.1094x
Feb 26, 20261.3350x1.1032x
Feb 27, 20261.3505x1.0979x
Mar 2, 20261.3444x1.0985x
Mar 3, 20261.3205x1.0889x
Mar 4, 20261.3451x1.0965x
Mar 5, 20261.3130x1.0904x
Mar 6, 20261.3039x1.0761x
Mar 9, 20261.3318x1.0856x
Mar 10, 20261.3152x1.0838x
Mar 11, 20261.3066x1.0825x
Mar 12, 20261.2735x1.0660x
Mar 13, 20261.2702x1.0600x
Mar 16, 20261.2878x1.0708x
Mar 17, 20261.2931x1.0736x
Mar 18, 20261.2758x1.0586x
Mar 19, 20261.2746x1.0560x
Mar 20, 20261.2576x1.0380x
Mar 23, 20261.2607x1.0489x
Mar 24, 20261.2612x1.0454x
Mar 25, 20261.2907x1.0512x
Mar 26, 20261.2882x1.0325x
Mar 27, 20261.2396x1.0149x
Mar 30, 20261.2490x1.0115x
Mar 31, 20261.3031x1.0409x
Apr 1, 20261.3120x1.0487x
Apr 2, 20261.3008x1.0496x
Apr 6, 20261.3065x1.0546x
Apr 7, 20261.2994x1.0551x
Apr 8, 20261.3272x1.0819x
Apr 9, 20261.3104x1.0882x
Apr 10, 20261.2877x1.0875x
Apr 13, 20261.3150x1.0981x
Apr 14, 20261.3454x1.1115x
Apr 15, 20261.3369x1.1202x
Apr 16, 20261.3088x1.1230x
Apr 17, 20261.3162x1.1366x
Apr 20, 20261.3130x1.1343x
Apr 21, 20261.2995x1.1269x
Apr 22, 20261.3063x1.1383x
Apr 23, 20261.2975x1.1339x
Apr 24, 20261.2717x1.1427x
Apr 27, 20261.2676x1.1446x
Apr 28, 20261.2544x1.1391x
Apr 29, 20261.2207x1.1389x
Apr 30, 20261.2589x1.1502x
May 1, 20261.2533x1.1534x
May 4, 20261.2730x1.1492x
May 5, 20261.2724x1.1584x
May 6, 20261.3034x1.1745x
May 7, 20261.2853x1.1709x
May 8, 20261.2748x1.1806x
May 11, 20261.2685x1.1832x
May 12, 20261.2868x1.1814x
May 13, 20261.2681x1.1881x
May 14, 20261.2584x1.1974x
May 15, 20261.2263x1.1830x
May 18, 20261.2018x1.1822x
May 19, 20261.2092x1.1743x
May 20, 20261.2358x1.1864x
May 21, 20261.2380x1.1887x
May 22, 20261.2423x1.1934x
May 26, 20261.2371x1.2013x
May 27, 20261.2467x1.2011x
May 28, 20261.2804x1.2077x
May 29, 20261.2814x1.2107x
Jun 1, 20261.2568x1.2140x
Jun 2, 20261.2297x1.2157x
Jun 3, 20261.2553x1.2072x
Jun 4, 20261.2904x1.2117x
Jun 5, 20261.2695x1.1804x
Jun 8, 20261.2449x1.1831x
Jun 9, 20261.2553x1.1796x
Jun 10, 20261.2247x1.1610x
Jun 11, 20261.2475x1.1808x
Jun 12, 20261.2323x1.1872x
Jun 15, 20261.2528x1.2081x
Jun 16, 20261.2561x1.2009x
Jun 17, 20261.2616x1.1859x
Jun 18, 20261.2651x1.1951x
Jun 22, 20261.2702x1.1914x
Jun 23, 20261.2822x1.1741x
Jun 24, 20261.3189x1.1735x
Jun 25, 20261.3201x1.1752x
Jun 26, 20261.3459x1.1667x
Jun 29, 20261.3609x1.1860x
Jun 30, 20261.3599x1.1952x
Jul 1, 20261.3714x1.1936x
Jul 2, 20261.4255x1.1920x
Jul 6, 20261.4296x1.2024x
Jul 7, 20261.4602x1.1967x
Jul 8, 20261.4376x1.1930x
Jul 9, 20261.4375x1.2031x

Themes and category

AI RevolutionAI Infrastructure

Methodology and caveats

QuantLink fetches this idea from the live FastAPI ideas endpoints and renders the returned title, thesis, holdings, themes, benchmark, and tearsheet fields directly. Missing fields are left unavailable rather than fabricated.

Holdings are a curated model basket. They are not 13F filings, not insider filings, not adviser holdings, and not a claim that any person or fund owns the basket.

Backtested performance depends on the returned basket weights, benchmark, rebalancing assumptions, available price history, and calculation choices in the tearsheet endpoint. Backtests can differ materially from live results and do not include every cost, tax, capacity, liquidity, or execution constraint an investor may face.

Equal-weight and target-weight baskets can drift between rebalance points. Rebalancing can increase turnover, and concentrated thematic baskets can have higher drawdowns than a broad market benchmark.

Frequently asked questions

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QuantLink is a research tool, not investment advice. This page shows a curated model basket and backtested performance, not a filed portfolio, fund return, or recommendation to buy or sell securities.