NVDA — NVIDIA Corporation

Report date: 2026-05-26  |  Sector: Technology  |  Last price: $215.33  |  Horizon: 30d  |  Generated: 2026-05-26T07:12:28.584710Z

Forecast summary

Ensemble point +6.59%
80% CI [-2.54%, +16.80%]
95% CI [-6.90%, +22.63%]
Method dispersion 0.0657
Beats RW baseline YES
MC drift (annual) 106.54%
MC sigma (annual) 34.97%
MC paths 1000
Bull target (90th pct) +31.11% -> $282.32
Base target (50th) +12.78% -> $242.86
Bear target (10th pct) -3.46% -> $207.87
Macro regime risk_on_growth
10y yield 4.56%
3m yield 3.59%
Yield-curve slope +0.97%
VIX level 16.59
VIX z-score (252d) -0.48
Sector ETF XLK
Sector relative (90d) -7.24%

Forecast plot (interactive)

Realised volatility

Yang-Zhang annualized (60d) 34.97%
Close-to-close annualized (60d) 37.25%

Per-method comparison

MethodWeightPoint80% lo80% hi95% lo95% hi
linear 25.0% +13.52% +9.84% +17.18% +8.27% +19.19%
monte_carlo 25.0% +12.78% -3.46% +31.11% -11.37% +41.34%
ar1 25.0% +0.04% -2.66% +2.81% -4.06% +4.31%
random_walk 25.0% +0.00% -13.88% +16.12% -20.43% +25.67%

Factor contributions (interactive waterfall)

Factor contribution table

FactorLoadingTicker valueContribution
value_score +0.0495 -0.7351 -0.0364
quality_score +0.0192 +3.0000 +0.0577
momentum_score +0.0286 +1.7383 +0.0497
lowvol_score +0.0173 -0.3625 -0.0063
revisions_score +0.0236 +3.0000 +0.0709
news_activity_score +0.0402 +0.0000 +0.0000
(intercept) - - -0.0005

Factor decay over horizon

Factor IC over time

Per-factor IC backtest summary

FactorMean ICICIR% positiveCumulative attributionn periods
value_score +0.2563 +2.690 100.0% +0.5383 252
quality_score +0.1105 +1.096 86.5% +0.2401 252
momentum_score +0.1428 +1.354 92.5% +0.2460 252
lowvol_score +0.0878 +0.887 82.1% +0.1870 252
revisions_score +0.1375 +1.319 88.9% +0.2738 252
news_activity_score +0.3540 +3.832 100.0% +1.0893 252

Snapshot — fundamentals + technical

Market cap $5.22T
P/E (trailing) 33.0
P/B 33.3
Forward P/E 17.0
PEG 0.66
Dividend yield 2.00%
Beta 2.24
52w high / low $236.54 / $132.92
Distance from 52w high -8.97%
Cross-sectional rank 57 / 92 below median
Panel source (trained model: 2026-05-26 (0d old), universe_size=92, lookback_days=252)
RSI(14) 53.7
SMA50 / SMA200 $196.81 / $187.02
ATR(14) $7.59
Avg volume (20d) 162.60M
Profit margin 62.97%
ROE 114.29%
Revenue growth (YoY) +85.20%
Earnings growth (YoY) +214.50%
Debt/Equity 6.6
Current ratio 3.44
Short ratio 1.84

Forecast accuracy — walk-forward backtest (60d lookback)

Horizonn predictionsDirectional accuracyMAE (return)RMSE80% CI hit ratePearson(pred, real)
1d 691 52.2% 2.24% 3.10% 81.3% -0.029
30d 662 53.3% 16.01% 20.17% 73.3% -0.032
60d 632 57.3% 27.85% 35.50% 64.1% -0.014

Volume momentum (Granville / CGW / Quong-Soudack)

Composite z +0.477
Active signals 7 of 7
MFI(14) 58.19
CMF(20) -0.0198
OBV z (252d) +1.704
VPT z (252d) +1.452
VW-momentum z -0.051
Volume z (60d) +0.200
Relative volume (vs 20d ADV) 1.04x
CMF z (252d) -0.438

Sector rotation & AI-spillover (v6)

Sector ETF XLK
Rel-return 5d / 20d / 60d -6.85% / -8.52% / -9.51%
Sector mom-z 1m / 3m / 6m +2.27 / +2.72 / +1.64
Rotation phase cyclical
AI-factor beta (60d) +0.588
AI spillover score +0.0541
Risk-off corr regime (60d) 0.33 (>0.6 = risk-off; <0.35 = stock-picking)
Sector breadth (% > SMA50) -
Sector dispersion 20d -

Peer comparison (sector-relative valuation & momentum)

Peer signal
MIXED
score +0.25 (4 peers)
P/E percentile
25% (25% cheaper than this)
20d momentum percentile
50% (50% lag this)
Market-cap percentile
100%
Peer set (mcap band 0.2x-5x, same sector)
AAPL MSFT TSM AVGO
4 peers in Technology (mcap band 0.2x-5x); signal=mixed; score=+0.25
Decision input: cheap_leader → nudge bias one bucket toward LONG; expensive_laggard → nudge toward SHORT; cheap_laggard = value-trap (neutralize); expensive_leader = crowding risk (neutralize). Folded into Claude critique and one-line PM summary.

Multi-timeframe technical analysis (1wk / 1d / 1h)

Per-timeframe verdict (TradingView-style aggregate of 17 indicators: RSI, MACD, BBands, ADX, Stoch, %R, OBV, MFI, CMF, ATR, SMA50/200, EMA9/21, Donchian, price-vs-SMA200). Counts = how many indicators fired BUY / SELL / NEUTRAL; net strength is the weight-sum delta. Crosses (golden/death, MACD signal cross, Donchian breakout) and the SMA200 trend filter carry 1.5x weight.
1wk verdict
NEUTRAL
3 buy / 3 sell / 11 neutral · net +2.0
1d verdict
NEUTRAL
1 buy / 2 sell / 14 neutral · net +1.0
1h verdict
BUY
7 buy / 3 sell / 7 neutral · net +9.0

1wk NEUTRAL 3/3/11

RSI(14) 62.1
MACD hist +3.5727
Bollinger %b 0.90
ADX(14) 22.0 RISING
ATR % 7.21%
MFI(14) / CMF(20) 51.3 / -0.080
Donchian pos / break 0.71
vs SMA200 ABOVE
n_bars521

1d NEUTRAL 1/2/14

RSI(14) 53.7
MACD hist -0.8708
Bollinger %b 0.51
ADX(14) 28.7
ATR % 3.52%
MFI(14) / CMF(20) 58.2 / -0.020
Donchian pos / break 0.49
vs SMA200 ABOVE
n_bars1253

1h BUY 7/3/7

RSI(14) 36.5
MACD hist -0.4192
Bollinger %b 0.13
ADX(14) 32.3 RISING
ATR % 1.18%
MFI(14) / CMF(20) 13.8 / -0.222
Donchian pos / break 0.03
vs SMA200 ABOVE
n_bars1729

Cross-timeframe confluence

Confluence LONG (0-1) 0.00
Confluence SHORT (0-1) 0.00
Patterns are intentionally selective (Elder triple-screen, daily/hourly divergence, BB-squeeze+breakout, SMA-alignment, MACD/OBV). Most tickers fire 0-2 patterns on any given day. Below: each pattern with its current state (✓ firing / ✗ not firing).
Long patterns
elder_triple
daily_oversold_hourly_bull
bb_squeeze_break_up
sma_align_long
macd_cross_obv
Short patterns
elder_triple
daily_overbought_hourly_div
bb_squeeze_break_dn
sma_align_short
macd_cross_obv

Intraday nowcast — 1h-bar short-horizon (v6)

Next 24h nowcast
+0.37%
over next 24h on 1h bars
80% band
[-5.68%, +6.81%]
n_bars = 1729 · sigma_1h = 0.0099
Direction vs 30d ensemble
AGREES
1h direction: LONG · 30d direction: LONG
Source: intraday_forecaster_v10_trained_lgbm.
(trained model: 2026-05-26 (0d old), mean_directional_accuracy=0.523, n_features=17) Decision input only -- the 30d ensemble + factor regression remain the primary call. Conflicts surfaced into the Claude critique as horizon_conflict flag when |1h move| > 1%.

Meta-label gate — AFML Ch.3 secondary classifier (v6)

Verdict
meta-label: TAKE
p_take = 0.63 · threshold 0.60
Bias adjustment
meta-label TAKE with p_take=0.63 -- primary bias strong_buy stands.
Method: secondary LightGBM trained on (features + primary direction) -> P(primary is right). Source: meta_labeler_v10_trained_lgbm.
(trained model: 2026-05-26 (0d old), roc_auc=0.641, accuracy=0.608, n_train_rows=8,284) When ABSTAIN with p_take < 1-threshold AND bias non-neutral, the bias is demoted one bucket and a meta_abstain flag is added to the critique. See AFML Ch.3.6 (Lopez de Prado 2018).

FMP fundamentals & analyst consensus (v7)

Quality / leverage

ROE 81.7%
ROIC -
FCF yield 2.3%
Debt / EBITDA -
Current ratio 3.44

Margins / valuation

Gross margin 74.1%
Operating margin 64.0%
Net margin 63.0%
P/E (TTM) 32.8
EV / EBITDA 27.1

Analyst consensus

Target mean $307.12
Target high / low $500.00 / $140.00
Upside vs last close +42.6%
Revisions score +0.895

Trade-bias signal — foundation for trade-guidance layer

Bias strong_buy
Composite z-score +3.393
Conviction 1.0
Recommended playbook A_strong
Suggested position size 0% (no Kelly)
no Kelly: not a conformal singleton (proxy off); singleton-proxy: news_activity_z=+0.00 (nonzero=False), wf30d_dir_acc=0.5332326283987915 (>0.55=False)
Strategies on bias side
Aggressive long-call (40-60 DTE, delta 0.55-0.70, size up)
Bull call-debit spread (long ATM + short 1 SD OTM, 40-60 DTE)
Long-dated LEAPS for thesis with multi-month conviction
Cash-secured short put as covered-position entry
Why this bias
composite_z = +3.39 | bias = strong_buy | conviction = 1.00 | macro_regime = risk_on_growth | ensemble = +6.59%

Sensitivity (OFAT tornado ±1 sd) and stress scenarios

FactorLoading wiTicker z-value+1 sd impact-1 sd impact
value_score +0.0495 -0.735 +0.0495 -0.0495
news_activity_score +0.0402 +0.000 +0.0402 -0.0402
momentum_score +0.0286 +1.738 +0.0286 -0.0286
revisions_score +0.0236 +3.000 +0.0236 -0.0236
quality_score +0.0192 +3.000 +0.0192 -0.0192
lowvol_score +0.0173 -0.362 +0.0173 -0.0173

Stress scenarios (forecast shift from base point)

ScenarioDescriptionStressed pointDelta vs base
rates_+100bps Yield curve +100bps (lowvol -1sd, value -0.5sd) +9.32% -4.20%
recession_risk_off Recession (momentum -1.5sd, lowvol +1sd, news -1sd) +6.94% -6.58%
quality_flight Quality flight (quality +1sd, revisions +1sd, momentum -0.5sd) +16.38% +2.86%

Multi-source live sentiment (free real-time)

Composite z-score -0.718
Active signals 3 of 3
Sources stocktwits, apewisdom, iv_skew
StockTwits bull 10
StockTwits bear 2
StockTwits net +0.67
Message volume 30
ApeWisdom mentions 114
24h change +18
Reddit rank 3
25-delta IV skew +1.9611
IV-skew read bearish

Analyst critique

Agreement with model agree_with_caveats
Confidence 0.5
PM one-liner NVDA Technology: quant +6.59%/30d, disp +0.0657, beats RW, macro risk_on_growth, 0 catalyst(s).
Sensitivity concern If value_score (the highest-loading factor) is mis-measured by +/-1 stdev, the bias likely flips.

What the model may have missed

Critique flags

Factor contribution methodology — where the numbers come from

Point return formula (linear factor model): r_hat = alpha + sum_i (w_i × f_i) where w_i is the cross-sectional loading for factor i (estimated from the cross-section of US large-cap names) and f_i is the z-scored factor value for this ticker (Grinold-Kahn winsorization at ±3).

Per-factor contribution shown in the waterfall above is exactly w_i × f_i (decimal-return units), so the bars sum (with intercept) to the linear forecast point. The ensemble point combines linear / Monte Carlo / AR(1) / random-walk per per-method-comparison table.

Bias mapping (composite z-score → LONG/NEUTRAL/SHORT): weighted sum of value (1.0), quality (0.7), momentum (1.0), low-vol (0.5), revisions (1.0), news-activity (0.6); thresholds ±1.0 with macro override (risk-off + LONG → reduce to NEUTRAL; risk-on-growth + SHORT → reduce to NEUTRAL). LONG → Playbook A (long-call / call-debit-spread / covered-call); SHORT → Playbook B (long-put / put-debit-spread / bear-call-spread); NEUTRAL → cash.

Sensitivity (one-factor-at-a-time tornado above): impact = w_i × 1sd per factor (MSCI / Two-Sigma Venn convention). Stress scenarios are canned multi-factor shocks (rates +100bps; recession risk-off; quality flight).

Factor decay uses exponential half-life per factor type: catalysts 7d, news 14d, revisions 30d, momentum 45d, value 90d, quality 90d (Tetlock 2007; Cohen-Malloy-Pomorski 2012). The heatmap above shows contribution × exp(-ln(2) × t / half_life) on a 5-day grid.

Factor IC backtest: Spearman rank correlation between each factor's cross-sectional ranking on day t and the realized h-day-forward return, aggregated across the panel (Grinold-Kahn 2000 ch.4 fundamental law of active management). Source for this report: synthetic_panel_252d_100tickers_seed42 (parallel runner).

Placebo audit (v6, GT-Score): GT-score = 0.52 SPURIOUS — setup likely lacks real signal . Computed from 3 seed(s) across placebo kinds: shuffled, gaussian_iid, garch. Method: real directional accuracy = 52.2%; max placebo accuracy = 54.2%; AMG = -0.019. Source: placebo_audit_v6_ar1_runner. Provenance: arXiv 2604.15531 "Spurious Predictability in Financial ML" (Paper #3). Risk-flag spurious_predictability_audit_failed added to narrative.

Catalysts in window (30d)

No catalysts within the forecast window.

Analyst narrative

Bull case

NVDA ensemble forecast is +6.59% with 80% band [-2.54%, +16.80%] over 30 days. Positive drivers: revisions_score, quality_score. 0 catalyst(s) in the window provide event-driven upside potential.

Bear case

Inter-method dispersion (+0.0657) and beats random-walk argue caution. Negative drivers: value_score. Macro regime risk_on_growth historically caps single-name conviction.

Synthesis

Weight the ensemble's +6.59% center against +0.0657 method dispersion. Risk On Growth regime + 0 catalyst(s) define the setup. Treat the 80% band as the working trade-sizing envelope.

Risk flags