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Systematic Alpha Generation • SEBI Registered

INTELLIGENT
CAPITAL.
SYSTEMATIC
RETURNS.

Wealthnomics deploys AlphaGod™, our proprietary systematic trading infrastructure, to capture alpha across US and Indian equity and derivatives markets through machine learning-driven, volatility-adaptive strategies.

Audited Track Record
Institutional Infrastructure
Independent Custody

Fund Performance Snapshot

Live
48%
Net CAGR (2019-2025)
4.1
Sharpe Ratio
15.7
Sortino Ratio
0.023
Beta to Nifty
22.8
Calmar Ratio
-0.37% Max Drawdown Capital Preservation First
AlphaGod™ Active Systematic Execution
18.8% Annual Alpha vs Nifty 50 Benchmark
4,792 Trades Executed 56.6% Win Rate

QUANTITATIVE EXCELLENCE

Research-driven alternative asset management with institutional-grade systematic strategies across liquid US and Indian markets.

Systematic Alpha.
Institutional Rigor.

Wealthnomics is a research-driven alternative asset manager specializing in systematic, rules-based investment strategies across liquid US and Indian markets. Founded by practitioners with deep expertise in quantitative finance, machine learning, and risk management.

Our mandate is to deliver consistent, uncorrelated returns through our proprietary AlphaGod™ system—a multi-factor, volatility-adaptive trading infrastructure that has been rigorously validated across multiple market regimes.

Research-First

500+ validation trials per strategy

Capital Preservation

Max DD under 1% all periods

Systematic Execution

Zero discretionary intervention

Adaptive Intelligence

ML-driven regime detection

Risk-Adjusted Focus

We optimize for Sharpe ratio, not absolute returns. Superior risk-adjusted performance compounds more efficiently over time.

Anti-Fragile Design

Our systems are designed to perform better during volatility, not despite it. Market stress is an opportunity, not a threat.

Scientific Rigor

Every hypothesis is tested on out-of-sample data. We reject strategies that show any signs of overfitting.

Operational Excellence

Institutional-grade infrastructure with independent custody, third-party audit, and segregated accounts.

THE ALPHAGOD™ ARCHITECTURE

Multi-layered systematic platform combining volatility-adaptive execution, machine learning regime detection, and rigorous risk management.

Volatility-Adaptive Execution

Dynamic position sizing and exit management calibrated to real-time market volatility.

  • Proprietary volatility normalization
  • Asset-class specific parameters
  • Adaptive profit-taking mechanism
  • Trailing protection system

Multi-Factor Signal Engine

Composite scoring combining orthogonal factors with ML-optimized weights.

  • 5-factor composite scoring
  • Regime-adaptive weighting
  • Entry threshold optimization
  • Signal quality validation

Machine Learning Layer

Gradient boosting models evaluate factor importance and adapt to market regimes.

  • Real-time regime classification
  • Dynamic factor weighting
  • Anomaly detection system
  • Continuous model retraining

Capital Allocation Framework

Tranche-based position management with dynamic rebalancing.

  • 32 discrete capital tranches
  • Zero capital shortage design
  • Automatic reallocation
  • Leverage optimization (3x max)

Universe & Instruments

Focused exposure to liquid Indian equities, derivatives, and commodities.

  • Nifty 50 & select large-caps
  • Index futures & options
  • Gold & commodity ETFs
  • Minimum liquidity thresholds

Execution Infrastructure

Institutional-grade execution with smart order routing and real-time controls.

  • Co-located execution servers
  • Sub-second order latency
  • Real-time P&L monitoring
  • Automated circuit breakers

VALIDATED PERFORMANCE

Audited results across multiple market regimes. All returns net of fees.

48%
Net CAGR
Full period 2019-2025
4.1
Sharpe Ratio
Risk-adjusted excellence
-0.37%
Max Drawdown
Capital preservation
18.8%
Annual Alpha
vs Nifty 50

Performance by Market Regime

Stress-Tested
Period Market Condition CAGR Sharpe Max DD Win Rate Trades
Full Period All Regimes 48.0% 4.1 -0.37% 56.6% 4,792
Jan-Jun 2020 COVID Crash 61.7% 3.9 -0.37% 54.6% 337
Jul 2020 - Dec 2021 Post-COVID Bull 89.0% 4.7 -0.19% 62.6% 984
2022 Bear Market 58.5% 4.2 -0.16% 54.5% 708
2023 Recovery 37.6% 4.5 -0.24% 57.4% 704
2024 Consolidation 38.2% 4.9 -0.15% 58.8% 711

THE ALPHAGOD™ RESEARCH FRAMEWORK

Comprehensive examination of our systematic approach and the structural inefficiencies we exploit.

Investment Thesis Overview

The US and Indian equity market presents a unique opportunity for systematic alpha generation due to structural inefficiencies arising from retail investor dominance, information asymmetries, and behavioral biases that create predictable patterns in price action.

AlphaGod™ is engineered to systematically exploit these inefficiencies through a multi-layered approach combining volatility-adaptive execution, machine learning-driven factor weighting, and rigorous risk management—validated across 6+ years of live market data including multiple stress scenarios.

01

Market Inefficiency Hypothesis

The US and Indian market exhibits persistent inefficiencies that can be systematically captured by strategies optimized for local market microstructure.

Key Observations
  • Retail participation exceeds 45% of daily volume, creating predictable behavioral patterns
  • Mean-reversion dominates in large-cap equities due to institutional rebalancing
  • Momentum effects persist in mid-cap and derivative instruments
  • Volatility clustering creates exploitable regime transitions
02

Volatility-Adaptive Edge

Traditional fixed-parameter strategies underperform because they cannot adapt to the dynamic nature of market volatility.

Implementation
  • All position sizing normalized to rolling volatility measures
  • Exit thresholds calibrated as multiples of current volatility
  • Asset-class specific multipliers (equities vs. commodities)
  • Dynamic recalibration without curve-fitting
03

Multi-Factor Signal Architecture

Single-factor strategies are vulnerable to regime changes. Our composite scoring system combines orthogonal factors with ML-optimized weights.

Factor Composition
  • Momentum indicators (30% base weight) - Short-term price momentum
  • Trend strength metrics (20% base weight) - Directional conviction
  • Volume dynamics (20% base weight) - Participation confirmation
  • Mean-reversion signals (15% base weight) - Price position analysis
04

Anti-Fragile Risk Framework

The system benefits from volatility rather than suffering from it. Higher volatility increases trade frequency and profit potential.

Risk Controls
  • Maximum single-position risk capped at volatility-adjusted thresholds
  • Portfolio-level volatility targeting (2-3% daily)
  • Automatic position reduction during extreme drawdowns
  • Zero overnight exposure option in high-risk regimes

Technical Architecture Deep Dive

Detailed examination of the AlphaGod™ system components and methodology

Signal Generation Pipeline

The AlphaGod™ signal engine processes market data through a multi-stage pipeline that transforms raw price and volume information into actionable trading signals.

# Conceptual Signal Pipeline Architecture Stage 1: Data Ingestion & Normalization → Real-time price, volume, volatility feeds → Outlier detection and cleaning → Volatility normalization layer Stage 2: Factor Calculation → Momentum score (proprietary formula) → Trend strength index → Volume confirmation ratio → Mean-reversion indicator Stage 3: Composite Scoring → ML-weighted factor aggregation → Regime-adjusted multipliers → Entry threshold validation (min score: 40/100) Stage 4: Position Sizing → Volatility-adjusted position size → Capital availability check → Concentration limit validation Stage 5: Execution → Smart order routing → Slippage monitoring → Real-time P&L tracking

Machine Learning Integration

Our ML layer employs gradient boosting models to continuously evaluate factor importance and adapt strategy weights based on detected market regimes.

Regime Detection

Hidden Markov Models classify market into trending, mean-reverting, or volatile regimes in real-time.

Factor Importance

Gradient boosting evaluates which factors are predictive in current regime, adjusting weights dynamically.

Anomaly Detection

Isolation forests identify unusual market conditions that may require reduced position sizes.

Risk Management Framework

Capital preservation is embedded at every level. The volatility-adaptive exit mechanism ensures losses are cut quickly while winners run.

# Risk Control Parameters Position Level: profit_target = 2.45 × current_volatility_measure trailing_stop = 0.5 × current_volatility_measure max_hold_period = 22 trading days Portfolio Level: max_active_positions = 23 capital_tranches = 32 max_leverage = 3.0x target_daily_vol = 2-3% Drawdown Controls: position_reduction_trigger = -0.5% daily full_deleverage_trigger = -1.0% daily

Validation Methodology

All strategies undergo rigorous out-of-sample validation with 500+ parameter trials on data the model has never seen.

Walk-Forward Testing

5-year training window, 2-year out-of-sample validation. Parameters must work on unseen data.

Monte Carlo Simulation

10,000 randomized trade sequences to validate robustness and estimate confidence intervals.

Stress Testing

Performance validated across COVID crash, 2022 bear market, and other high-volatility periods.

RISK MANAGEMENT

Comprehensive risk framework with independent oversight and institutional governance.

Portfolio Risk Controls

  • Volatility Targeting

    Portfolio volatility maintained within 2-3% daily range through dynamic position sizing.

  • Concentration Limits

    Maximum 23 concurrent positions with strict single-name and sector exposure caps.

  • Liquidity Requirements

    All instruments meet minimum volume thresholds. Full liquidation possible within 24 hours.

  • Drawdown Circuit Breakers

    Automatic position reduction at -0.5% daily, full deleverage at -1.0%.

Operational Controls

  • Segregation of Duties

    Portfolio management, risk oversight, and operations operate independently.

  • Independent Custody

    All assets held with registered custodian. Fund never takes possession of investor assets.

  • Third-Party Audit

    Annual audit by Big 4 firm. Monthly NAV verification by independent administrator.

  • Cybersecurity

    SOC 2 Type II compliant infrastructure. Multi-factor authentication throughout.

Key Risk Factors

  • Market Risk

    Systematic strategies can experience losses during regime changes or unprecedented conditions.

  • Leverage Risk

    Use of up to 3x leverage amplifies both gains and losses.

  • Model Risk

    Quantitative models may fail to capture unprecedented market dynamics.

  • Technology Risk

    System failures or connectivity issues could result in losses.

Governance Framework

  • Investment Committee

    All strategy changes require IC approval. Committee meets weekly.

  • Independent Risk Officer

    CRO reports directly to board with authority to halt trading.

  • Investor Reporting

    Monthly performance reports, quarterly risk reviews, annual audited statements.

  • Regulatory Compliance

    Full compliance with SEBI regulations. Regular compliance audits.

OUR TEAM

Multidisciplinary expertise in quantitative research, portfolio management, and technology.

AG

Ayushman Gupta, PhD

Founder & Managing Partner

Architect of AlphaGod™. Doctorate in quantitative finance with research in statistical modeling and applied computational methods.

QR

Head of Research

Quantitative Strategies

Leads model development, data engineering, and signal research. Focus on robust statistical methods.

CR

Chief Risk Officer

Independent Oversight

Oversees firm-wide market, liquidity, and operational risk. Independent reporting line to board.

CO

COO / CFO

Operations & Finance

Manages administration, finance, trade operations, and valuation frameworks.

INVESTMENT STRUCTURE

Indicative terms for qualified investors.

Minimum Investment

₹1 Cr
Qualified investors

Management Fee

2%
Annual on NAV

Performance Fee

20%
Above 8% hurdle

Lock-up

12 Mo
Quarterly after

Structure

Cat II
SEBI AIF

Custodian

HDFC
Independent

START THE CONVERSATION

We welcome inquiries from institutional investors, family offices, and qualified individuals.

Request Fund Materials

Strategy deck, due diligence questionnaire, and offering documents available to qualified investors upon completion of onboarding procedures.

Email

ayushman@wealthnomics.com

Phone

+91 8887365246

Office

Wyoming, USA

Investor Inquiry