Nav Toor Profile picture
Feb 19 β€’ 17 tweets β€’ 13 min read β€’ Read on X
🚨 BREAKING: AI can now build trading algorithms like Goldman Sachs' algorithmic trading desk (for free).

Here are 15 insane Claude prompts that replace $500K/year quant strats (Save for later) Image
1. The Goldman Sachs Quant Strategy Architect

"You are a managing director on Goldman Sachs' algorithmic trading desk who designs systematic trading strategies managing $10B+ in institutional capital across global equity markets.

I need a complete quantitative trading strategy designed from scratch.

Architect:

- Strategy thesis: the specific market inefficiency or pattern this strategy exploits
- Universe selection: which instruments to trade and why (stocks, ETFs, futures, options)
- Signal generation logic: the exact mathematical rules that produce buy and sell signals
- Entry rules: precise conditions that must all be true before opening a position
- Exit rules: profit targets, stop losses, time-based exits, and signal reversal exits
- Position sizing model: how much capital to allocate per trade based on conviction and risk
- Risk parameters: maximum drawdown, position limits, sector exposure caps, and correlation limits
- Backtesting framework: how to properly test this strategy against historical data
- Benchmark selection: what to measure performance against and why
- Edge decay monitoring: how to detect when the strategy stops working

Format as a Goldman Sachs-style quantitative strategy memo with mathematical formulas, pseudocode logic, and risk parameter tables.

My trading focus: [DESCRIBE YOUR CAPITAL, PREFERRED MARKETS, TIME HORIZON, RISK TOLERANCE, AND ANY STRATEGIES YOU'VE EXPLORED]"
2. The Renaissance Technologies Backtesting Engine

"You are a senior quantitative researcher at Renaissance Technologies who builds rigorous backtesting systems that separate real alpha from overfitted noise across decades of market data.

I need a complete backtesting framework that gives me honest, reliable results.

Build:

- Data requirements: which historical data feeds I need, minimum time periods, and data quality checks
- Backtesting engine architecture: event-driven or vectorized with pros and cons for my strategy type
- Transaction cost modeling: commissions, slippage, bid-ask spread, and market impact estimates
- Lookahead bias prevention: safeguards that ensure no future data leaks into past decisions
- Survivorship bias handling: accounting for delisted stocks and failed companies in historical data
- Walk-forward optimization: train on past data, test on unseen data in rolling windows
- Out-of-sample testing protocol: how to split data so results aren't just curve-fitting
- Monte Carlo simulation: randomize trade sequences to understand the range of possible outcomes
- Statistical significance tests: is the backtest return real or could it happen by random chance
- Complete Python backtesting code ready to run with sample data and visualization

Format as a quantitative research document with full Python code, statistical validation methodology, and result interpretation guidelines.

My strategy: [DESCRIBE YOUR TRADING STRATEGY, PREFERRED MARKET, TIME FRAME, AND AVAILABLE HISTORICAL DATA]"
3. The Two Sigma Risk Management System

"You are a senior portfolio risk manager at Two Sigma who builds risk management frameworks protecting $60B+ in assets from catastrophic losses during black swan events and market crashes.

I need a complete risk management system for my trading operations.

Build:

- Position sizing algorithm: Kelly Criterion or fractional Kelly with exact implementation
- Stop-loss framework: fixed, trailing, volatility-adjusted, and time-based stops with rules for each
- Maximum drawdown controls: hard limits that automatically reduce position size or halt trading
- Correlation monitoring: detect when supposedly uncorrelated positions start moving together
- Value at Risk (VaR) calculation: estimate maximum daily loss at 95% and 99% confidence levels
- Stress testing scenarios: simulate portfolio behavior during 2008 crash, COVID crash, and flash crashes
- Leverage limits: maximum margin utilization rules with automatic deleveraging triggers
- Sector and factor exposure caps: prevent hidden concentration risk across positions
- Liquidity risk assessment: ensure every position can be exited within acceptable timeframe and cost
- Daily risk dashboard: every metric I should check every morning before markets open

Format as a Two Sigma-style risk management specification with formulas, Python implementation code, and a daily risk monitoring checklist.

My portfolio: [DESCRIBE YOUR TRADING CAPITAL, STRATEGY TYPES, POSITION COUNT, LEVERAGE USAGE, AND BIGGEST RISK CONCERN]"
4. The Citadel Alpha Signal Research Lab

"You are a senior quantitative researcher at Citadel who discovers and validates new alpha signals by analyzing alternative data, market microstructure, and statistical patterns across thousands of securities.

I need a systematic process for discovering profitable trading signals.

Research:

- Signal idea generation framework: 20 categories of potential alpha signals to investigate
- Data source inventory: price data, fundamental data, sentiment data, and alternative data sources
- Feature engineering pipeline: transform raw data into testable trading signals step by step
- Signal strength testing: information coefficient, hit rate, and risk-adjusted return for each signal
- Decay analysis: how quickly each signal loses its predictive power after formation
- Correlation check: ensure new signals aren't just repackaging existing known factors
- Signal combination methodology: how to blend multiple weak signals into one strong composite
- Regime detection: identify which signals work in trending vs mean-reverting vs volatile markets
- Turnover analysis: how often the signal forces trades and whether the alpha survives transaction costs
- Signal monitoring dashboard: track live signal performance against backtested expectations

Format as a Citadel-style quantitative research report with signal definitions, statistical test results, and Python code for signal generation.

My focus: [DESCRIBE YOUR MARKET, AVAILABLE DATA SOURCES, TRADING FREQUENCY, AND TYPES OF SIGNALS YOU'RE INTERESTED IN]"
5. The Jane Street Market Making Engine

"You are a senior quantitative trader at Jane Street who designs market-making algorithms that profit from bid-ask spreads while managing inventory risk across thousands of trades per day.

I need a complete market-making strategy framework.

Design:

- Spread calculation model: how to set bid and ask prices based on volatility, volume, and inventory
- Inventory management: rules for staying neutral and avoiding large directional bets
- Quote adjustment logic: how to shift prices when inventory builds up on one side
- Adverse selection detection: identify when informed traders are picking off your quotes
- Speed and latency requirements: how fast order placement and cancellation need to be
- Hedging strategy: when and how to offset accumulated directional risk
- Market microstructure analysis: understanding order book dynamics, tick sizes, and queue priority
- PnL decomposition: separate profit from spread capture vs directional moves vs hedging costs
- Risk limits: maximum inventory, maximum loss per day, and automatic shutdown triggers
- Performance metrics: spread captured, inventory turnover, Sharpe ratio, and fill rate targets

Format as a Jane Street-style trading system specification with mathematical models, pseudocode, and risk parameter tables.

My interest: [DESCRIBE THE MARKET YOU WANT TO MAKE IN, YOUR CAPITAL, TECHNOLOGY AVAILABLE, AND EXPERIENCE LEVEL WITH MARKET MAKING]"
6. The AQR Factor Model Builder

"You are a senior researcher at AQR Capital Management who builds multi-factor models used to construct portfolios that systematically harvest risk premiums across global markets.

I need a complete factor model for portfolio construction.

Build:

- Factor selection: which factors to include (value, momentum, quality, size, low volatility) with evidence
- Factor definition: exact calculation formula for each factor using available financial data
- Factor portfolio construction: how to build long-short portfolios for each individual factor
- Factor exposure measurement: how to calculate my current portfolio's exposure to each factor
- Factor correlation matrix: how factors move relative to each other and diversification benefits
- Multi-factor combination: how to weight and blend factors into a single composite score
- Rebalancing methodology: when to rebalance factor portfolios and how to minimize turnover
- Factor timing analysis: can we increase exposure to factors when conditions favor them
- Performance attribution: decompose returns into factor contributions and stock-specific alpha
- Complete Python implementation with data loading, factor calculation, and portfolio construction

Format as an AQR-style factor research paper with mathematical definitions, empirical results framework, and production-ready code.

My investment universe: [DESCRIBE YOUR MARKET (US STOCKS, GLOBAL, ETFs), CAPITAL SIZE, REBALANCING FREQUENCY, AND FACTOR PREFERENCES]"
7. The D.E. Shaw Statistical Arbitrage System

"You are a senior portfolio manager at D.E. Shaw who builds statistical arbitrage systems that exploit pricing relationships between related securities using advanced statistical methods.

I need a complete pairs trading and statistical arbitrage framework.

Build:

- Pair selection methodology: how to find stocks that move together using correlation and cointegration
- Cointegration testing: Engle-Granger and Johansen tests to verify the pair relationship is real
- Spread calculation: how to measure the price difference between paired securities correctly
- Z-score signal generation: when the spread deviates enough from normal to trigger a trade
- Entry and exit thresholds: exact z-score levels for opening, adding to, and closing positions
- Hedge ratio calculation: how many shares of each stock to trade to stay market-neutral
- Mean reversion speed analysis: how quickly the spread typically returns to normal
- Regime change detection: identify when a pair relationship breaks down permanently
- Portfolio of pairs: how to run 20+ pairs simultaneously with capital allocation rules
- Complete Python code with pair screening, signal generation, and backtesting

Format as a D.E. Shaw-style quantitative research document with statistical test outputs, strategy rules, and full implementation code.

My market: [DESCRIBE YOUR PREFERRED SECTOR OR MARKET, AVAILABLE DATA, TRADING CAPITAL, AND EXPERIENCE WITH PAIRS TRADING]"
8. The Bridgewater Macro Trading Strategist

"You are a senior investment strategist at Bridgewater Associates who designs systematic macro trading strategies based on Ray Dalio's economic machine framework, trading global currencies, bonds, commodities, and equities.

I need a complete systematic macro trading strategy.

Design:

- Economic indicator dashboard: 15 macro signals to monitor (GDP, inflation, employment, yield curves)
- Regime classification system: growth/inflation matrix creating 4 market environments
- Asset class behavior map: how stocks, bonds, commodities, and currencies perform in each regime
- Signal construction: how to combine macro indicators into actionable portfolio allocation signals
- All-Weather inspired allocation: a baseline portfolio designed to perform in any environment
- Tactical overlay rules: how to tilt away from baseline when regime signals are strong
- Instrument selection: specific ETFs or futures for expressing each macro view
- Rebalancing triggers: calendar-based, threshold-based, or signal-based with rules for each
- Correlation regime monitoring: how asset correlations change during crises and how to prepare
- Geopolitical risk framework: how to adjust positioning for elections, wars, and policy changes

Format as a Bridgewater-style investment strategy memo with economic frameworks, allocation tables, and Python code for regime detection.

My focus: [DESCRIBE YOUR INVESTABLE CAPITAL, PREFERRED INSTRUMENTS, RISK TOLERANCE, AND MACRO VIEWS YOU WANT TO TRADE]"
9. The Bloomberg Terminal Data Pipeline Builder

"You are a senior quantitative data engineer at Bloomberg who builds the real-time and historical data pipelines feeding algorithmic trading systems at the world's largest hedge funds.

I need a complete market data pipeline for my trading system.

Build:

- Data source architecture: free and paid sources for price, fundamental, sentiment, and alternative data
- Real-time data feed: WebSocket connections to live market data with reconnection handling
- Historical data storage: database design for efficiently storing years of tick, minute, and daily data
- Data cleaning pipeline: handle missing values, stock splits, dividends, and delistings automatically
- Corporate action adjustment: automatically adjust historical prices for splits, mergers, and spinoffs
- Feature store: pre-computed technical indicators and fundamental ratios ready for signal generation
- Data validation rules: automated checks that catch bad data before it triggers false trades
- API layer: clean endpoints your trading strategy can query for any data point instantly
- Scheduling system: automated daily updates, weekly fundamental refreshes, and monthly recalculations
- Complete Python data pipeline code with database setup, data ingestion, and API serving

Format as a data engineering specification with pipeline diagrams, database schemas, and production-ready Python code.

My needs: [DESCRIBE YOUR TRADING MARKETS, DATA SOURCES YOU HAVE ACCESS TO, UPDATE FREQUENCY NEEDED, AND STORAGE PREFERENCES]"
10. The Virtu Financial Execution Algorithm Designer

"You are a senior execution algorithm developer at Virtu Financial who builds smart order routing and execution algorithms that minimize market impact and slippage for institutional-sized orders.

I need execution algorithms that get me into and out of positions at the best possible prices.

Design:

- TWAP algorithm: split large orders evenly across a time window to reduce market impact
- VWAP algorithm: execute proportional to historical volume patterns throughout the trading day
- Implementation shortfall optimizer: balance urgency against market impact cost
- Iceberg order logic: show only a small portion of the total order to hide true size
- Smart order routing: how to choose between exchanges and dark pools for best execution
- Slippage measurement: track the difference between signal price and actual execution price
- Market impact model: estimate how my order size will move the price against me
- Execution quality analytics: metrics to evaluate whether my execution is getting better or worse
- Pre-trade cost estimation: predict total execution cost before placing the order
- Post-trade transaction cost analysis: detailed breakdown of where costs came from

Format as an execution algorithm specification with mathematical models, pseudocode for each algorithm, and performance measurement frameworks.

My trading: [DESCRIBE YOUR AVERAGE ORDER SIZE, TRADING FREQUENCY, MARKETS TRADED, AND CURRENT EXECUTION CHALLENGES]"
11. The Point72 Machine Learning Alpha Researcher

"You are a senior ML researcher at Point72's Cubist division who builds machine learning models that predict short-term stock price movements using hundreds of features and alternative data signals.

I need a complete ML-based trading signal using modern machine learning techniques.

Build:

- Feature engineering: 50+ features from price, volume, fundamental, and technical data
- Label construction: how to define the target variable (future returns, direction, or risk-adjusted returns)
- Model selection: compare gradient boosting (XGBoost, LightGBM), random forests, and neural networks
- Cross-validation strategy: purged k-fold that prevents lookahead bias in time-series data
- Hyperparameter tuning: systematic search with proper out-of-sample validation
- Feature importance analysis: which inputs drive predictions and which are noise
- Overfitting prevention: regularization, early stopping, and ensemble techniques
- Prediction-to-signal conversion: transform raw model scores into portfolio weights
- Model monitoring: detect model degradation and trigger retraining alerts
- Complete Python ML pipeline: data prep, model training, evaluation, and signal generation code

Format as a Point72-style ML research report with feature definitions, model comparison tables, and a complete reproducible Python pipeline.

My data: [DESCRIBE YOUR MARKET, AVAILABLE DATA SOURCES, PREDICTION HORIZON, AND MACHINE LEARNING EXPERIENCE LEVEL]"
12. The Man Group Portfolio Optimization Engine

"You are a senior portfolio manager at Man Group who builds portfolio optimization systems that allocate capital across multiple strategies and assets to maximize risk-adjusted returns.

I need a complete portfolio optimization system for multi-asset or multi-strategy allocation.

Optimize:

- Mean-variance optimization: classic Markowitz with expected returns, covariance matrix, and constraints
- Black-Litterman model: combine market equilibrium with my personal views on specific assets
- Risk parity allocation: equal risk contribution from each asset or strategy
- Hierarchical risk parity: cluster-based allocation that avoids unstable covariance matrix inversion
- Constraint framework: position limits, sector caps, turnover constraints, and long-only rules
- Robust optimization: techniques that work even when return estimates are noisy or wrong
- Rebalancing optimizer: minimize trading costs while keeping portfolio close to optimal weights
- Scenario analysis: how the optimal portfolio changes under different market assumptions
- Performance attribution: decompose returns into allocation effect, selection effect, and timing
- Complete Python optimization code with visualization of efficient frontiers and allocation recommendations

Format as a Man Group-style portfolio construction document with optimization methodology, constraint specifications, and interactive Python code.

My portfolio: [DESCRIBE YOUR ASSETS OR STRATEGIES, CAPITAL, CONSTRAINTS, RISK TARGET, AND RETURN EXPECTATIONS]"
13. The Millennium Management Live Trading System

"You are a senior systems architect at Millennium Management who builds production trading systems that execute algorithmic strategies in real-time with institutional-grade reliability and monitoring.

I need a complete live trading system architecture that executes my strategy in real markets.

Build:

- System architecture: how the signal generator, order manager, and execution engine connect
- Broker API integration: connect to Interactive Brokers, Alpaca, or other broker with order placement
- Order management system: track every order from creation to fill with state machine logic
- Position tracking: real-time portfolio state showing current holdings, P&L, and exposure
- Real-time signal processing: consume market data, calculate signals, and generate orders automatically
- Paper trading mode: test everything with simulated money before risking real capital
- Kill switch: one-click emergency shutdown that cancels all orders and flattens all positions
- Reconciliation engine: compare your internal records against broker statements to catch discrepancies
- Alerting system: SMS and email alerts for fills, errors, drawdown breaches, and system failures
- Logging and audit trail: record every decision, order, and fill for post-trade analysis

Format as a trading system architecture document with component diagrams, API specifications, and complete Python implementation code.

My setup: [DESCRIBE YOUR BROKER, STRATEGY TYPE, TRADING FREQUENCY, CAPITAL, AND CURRENT TECHNOLOGY INFRASTRUCTURE]"
14. The Dimensional Fund Advisors Factor Backtester

"You are a senior quantitative researcher at Dimensional Fund Advisors who builds long-term factor investing strategies backed by decades of academic research and institutional-grade backtesting.

I need a complete factor investing strategy backtested with rigorous academic methodology.

Backtest:

- Factor universe: define the investable stock universe with liquidity and size filters
- Factor construction: build long-short portfolios sorted by value, momentum, quality, and size
- Return calculation: daily and monthly returns with proper handling of dividends and corporate actions
- Risk-adjusted metrics: Sharpe ratio, Sortino ratio, maximum drawdown, and Calmar ratio
- Factor premium analysis: is the factor return statistically significant across multiple time periods
- Regime analysis: how factor performance changes in recessions, expansions, and crises
- Factor crowding assessment: are too many people trading this factor now, reducing future returns
- Implementation analysis: does the alpha survive realistic transaction costs and capacity limits
- Multi-factor portfolio: combine factors into a single investable portfolio with rebalancing
- Tear sheet generation: one-page performance summary with all key metrics and drawdown charts

Format as a Dimensional-style factor research paper with complete Python backtesting code and automated tear sheet generation.

My focus: [DESCRIBE YOUR INVESTMENT UNIVERSE, TIME HORIZON, FACTORS OF INTEREST, AND BACKTESTING DATA AVAILABLE]"
15. The Goldman Sachs Algorithmic Trading Compliance Framework

"You are a senior compliance technology officer at Goldman Sachs who builds regulatory compliance frameworks for algorithmic trading operations ensuring adherence to SEC, FINRA, and MiFID II regulations.

I need a complete compliance and governance framework for my algorithmic trading activities.

Build:

- Regulatory inventory: which rules apply to my trading (SEC Rule 15c3-5, Reg SHO, pattern day trader, etc.)
- Pre-trade risk controls: automated checks before every order is sent to the market
- Position limit monitoring: hard and soft limits with automatic enforcement
- Market manipulation prevention: detect and prevent wash trading, spoofing, and layering patterns
- Best execution documentation: prove you're getting fair prices on every trade
- Record keeping requirements: what data to store, for how long, and in what format
- Algorithm change management: documentation and approval process before modifying live strategies
- Incident response plan: what to do when the algorithm malfunctions or causes unintended trades
- Periodic review schedule: monthly, quarterly, and annual compliance checks and audits
- Tax lot tracking and reporting: capital gains calculation, wash sale rules, and tax document generation

Format as a compliance framework document with control specifications, monitoring checklists, and audit trail requirements.

My trading: [DESCRIBE YOUR TRADING ACTIVITY, JURISDICTION, ACCOUNT TYPE, TRADING VOLUME, AND SPECIFIC REGULATORY CONCERNS]"
These 15 prompts give you what Wall Street's best quant desks charge a fortune for:

β†’ Strategy design ($30,000 quant consulting)
β†’ Backtesting engine ($25,000 research infrastructure)
β†’ Risk management ($40,000 risk systems build)
β†’ Alpha signal research ($50,000 Citadel-level research)
β†’ Market making framework ($35,000 trading system design)
β†’ Factor models ($28,000 AQR-style research)
β†’ Statistical arbitrage ($32,000 D.E. Shaw methodology)
β†’ Macro trading strategy ($25,000 Bridgewater-level design)
β†’ Data pipeline ($22,000 Bloomberg-grade engineering)
β†’ Execution algorithms ($30,000 Virtu-level development)
β†’ ML trading models ($45,000 Point72-level ML research)
β†’ Portfolio optimization ($28,000 Man Group methodology)
β†’ Live trading system ($50,000 Millennium-grade infrastructure)
β†’ Factor backtesting ($20,000 Dimensional-level research)
β†’ Compliance framework ($35,000 Goldman regulatory consulting)

Total quant value: $495,000+
Your cost with Claude: $0.

Wall Street's biggest edge was always talent and technology.

Now you have both.

Copy. Paste. Trade smarter.

Follow me @heynavtoor for more AI prompts that level the playing field.

♻️ Repost to help your network trade like quants.

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More from @heynavtoor

Feb 20
BREAKING: AI can now build full-stack web apps like Google's senior engineering team (for free).

Here are 12 insane Claude prompts that replace $350K/year staff software engineers (Save for later) Image
1. The Google Staff Engineer App Architect

"You are a staff software engineer at Google who architects full-stack web applications serving billions of users with clean code, scalable infrastructure, and flawless user experience.

I need a complete technical architecture for my web application before writing a single line of code.

Architect:

- Tech stack recommendation: frontend framework, backend language, database, and hosting with reasoning
- Application folder structure with every file and directory mapped out
- Database schema design with all tables, relationships, and indexes
- API endpoint inventory: every route, method, request body, and response format
- Authentication and authorization system design (login, signup, roles, permissions)
- State management strategy for the frontend with data flow patterns
- Third-party service integrations: payments, email, storage, analytics with provider picks
- Environment setup: dev, staging, production configurations and environment variables
- Performance targets: page load speed, API response time, and database query benchmarks
- Development roadmap: build order from MVP to full product in weekly sprints

Format as a Google-style technical design document with architecture diagrams described in detail and implementation specifications.

My app idea: [DESCRIBE YOUR APP PURPOSE, TARGET USERS, CORE FEATURES, AND ANY TECH PREFERENCES]"
2. The Vercel Frontend Builder

"You are a principal frontend engineer at Vercel who builds blazing-fast React applications used as reference implementations by millions of developers worldwide.

I need a complete, production-ready frontend for my web application.

Build:

- Component architecture: every UI component mapped out in a hierarchy tree
- Page-by-page layout design with responsive breakpoints for mobile, tablet, and desktop
- Navigation system: header, sidebar, footer, and routing structure between all pages
- Form handling: every input form with validation rules, error messages, and success states
- State management setup: global state, local state, and server state clearly separated
- API integration layer: how the frontend calls every backend endpoint with loading and error states
- Authentication UI: login, signup, forgot password, and profile pages fully built
- Dark mode and theming system with consistent design tokens
- Accessibility compliance: keyboard navigation, screen reader support, and ARIA labels
- Performance optimization: lazy loading, code splitting, image optimization, and caching strategy

Format as production-ready React code with TypeScript, Tailwind CSS, and a complete component library. Include every file with full implementation.

My app: [DESCRIBE YOUR APP, PAGES NEEDED, USER FLOWS, DESIGN STYLE PREFERENCE, AND ANY INSPIRATION SITES]"
Read 14 tweets
Feb 19
BREAKING: AI can now analyze any stock like a Wall Street analyst (for free).

Here are 10 insane Claude prompts that replace $2,000/month Bloomberg terminals (Save for later) Image
1. The Goldman Sachs Stock Screener

"You are a senior equity analyst at Goldman Sachs with 20 years of experience screening stocks for high-net-worth clients.

I need a complete stock screening framework for my investment goals.

Analyze and provide:

- Top 10 stocks matching my criteria with ticker symbols
- P/E ratio analysis compared to sector averages
- Revenue growth trends over the last 5 years
- Debt-to-equity health check for each pick
- Dividend yield and payout sustainability score
- Competitive moat rating (weak, moderate, strong)
- Bull case and bear case price targets for 12 months
- Risk rating on a scale of 1-10 with clear reasoning
- Entry price zones and stop-loss suggestions

Format as a professional equity research screening report with summary table.

My investment profile: [DESCRIBE YOUR RISK TOLERANCE, INVESTMENT AMOUNT, TIME HORIZON, AND PREFERRED SECTORS]"
2. The Morgan Stanley DCF Valuation

"You are a VP-level investment banker at Morgan Stanley who builds valuation models for Fortune 500 M&A deals.

I need a full discounted cash flow analysis for a specific stock.

Build out:

- 5-year revenue projection with growth assumptions
- Operating margin estimates based on historical trends
- Free cash flow calculations year by year
- Weighted average cost of capital (WACC) estimate
- Terminal value using both exit multiple and perpetuity growth methods
- Sensitivity table showing fair value at different discount rates
- Comparison of DCF value vs current market price
- Clear verdict: undervalued, fairly valued, or overvalued
- Key assumptions that could break the model

Format as an investment banking valuation memo with tables and clear math.

The stock I want valued: [ENTER TICKER SYMBOL AND COMPANY NAME]"
Read 13 tweets
Feb 18
BREAKING: AI can now automate entire workflows like McKinsey's QuantumBlack AI division (for free).

Here are 15 insane Claude prompts that replace $500K/year automation consultants (Save for later) Image
1. The QuantumBlack Workflow Discovery Audit

"You are a senior automation strategist at McKinsey's QuantumBlack who audits Fortune 500 operations to find every workflow that can be automated, saving companies $10M+ annually.

I need a complete workflow automation audit for my business.

Discover:

- Full process inventory: list every recurring workflow in my business with estimated time spent
- Automation readiness score for each workflow (1-10) based on complexity and repetitiveness
- Quick wins: workflows that can be automated this week with existing tools and zero coding
- High-impact targets: workflows consuming the most employee hours per month
- Decision logic mapping: the if-then rules behind each workflow written out step by step
- Data dependency map: what information flows between workflows and where bottlenecks exist
- Human judgment checkpoints: which steps actually require a human brain vs just feel like they do
- Tool recommendation for each automatable workflow (Zapier, Make, n8n, custom script)
- Risk assessment: what breaks if each automation fails and how to prevent it
- ROI calculation: hours saved Γ— hourly cost = dollar value for each automation opportunity

Format as a QuantumBlack-style automation opportunity assessment with a prioritization matrix and ROI summary table.

My business: [DESCRIBE YOUR BUSINESS TYPE, TEAM SIZE, MAIN RECURRING TASKS, TOOLS YOU CURRENTLY USE, AND BIGGEST TIME WASTERS]"
2. The Accenture Process Mining Engineer

"You are a principal process mining consultant at Accenture who reverse-engineers messy business operations into clean, optimized workflows before automating them for global enterprises.

I need a complete process map of my current workflow before I automate anything.

Map:

- Step-by-step process flow with every action, decision point, and handoff documented
- Time analysis: how long each step takes on average and where delays happen
- Role assignment: who does what at each stage (person, team, or tool)
- Input and output for every step: what goes in, what comes out, what format
- Decision tree logic: every branching point mapped with the criteria for each path
- Exception handling: what happens when things go wrong at each step and how often it occurs
- Rework loops: where work gets sent back for corrections and what causes it
- Dependency chain: which steps must finish before others can start
- Waste identification: steps that add no value and could be eliminated entirely
- Optimized process design: the ideal workflow after removing waste and adding automation

Format as an Accenture-style process mining report with current-state flow, future-state flow, and a gap analysis table.

My workflow: [DESCRIBE YOUR WORKFLOW FROM START TO FINISH, WHO IS INVOLVED, TOOLS USED, AND WHERE THINGS TYPICALLY SLOW DOWN OR BREAK]"
Read 17 tweets
Feb 17
🚨BREAKING: Claude is insane for market research.

I reverse-engineered how top consultants at McKinsey, Goldman Sachs, & JP Morgan use it.

The difference is night and day.

Here are 12 insane Claude Opus 4.6 prompts they don't want you to know (Save for later) Image
1. Market Sizing (TAM/SAM/SOM) from Scratch

Most founders pay consultants $3K just for a market sizing slide.

Claude does it in 30 seconds with actual logic:

Prompt:

You are a senior market research analyst at McKinsey.

Calculate the TAM, SAM, and SOM for [YOUR PRODUCT/SERVICE] in [TARGET MARKET].

For each:
- Show your math (top-down AND bottom-up approach)
- Cite the assumptions you're making
- Flag where your estimates are weakest
- Compare to any known market reports if applicable

Format as an investor-ready slide with numbers, not paragraphs. If my market is smaller than I think, tell me now.Image
2. Customer Persona Builder (Based on Real Data, Not Guesswork)

Consultants charge $5K to interview 10 people and hand you a persona deck with stock photos.

This is better:

Prompt:

You are a consumer insights researcher at Goldman Sachs

Build 3 detailed customer personas for [YOUR PRODUCT] in [INDUSTRY]

For each persona:
- Demographics + psychographics (what do they read, follow, trust?)
- Buying trigger: What event makes them Google your solution?
- Decision process: Who else influences their purchase?
- Objections: What's their #1 reason to say no?
- Exact phrases they'd use to describe their problem (for ad copy)



- No generic "35-year-old marketing manager" personas
- Base everything on behavioral patterns, not demographics
- Each persona should suggest a different acquisition channel
Image
Read 14 tweets
Feb 17
BREAKING: AI can now build RAG pipelines like Google Brain's retrieval research team (for free).

Here are 12 insane Claude prompts that replace $380K/year ML engineers at top AI labs (Save for later) Image
1. The Google Brain RAG Architecture Designer

"You are a principal research engineer at Google Brain who architected the retrieval-augmented generation systems powering Google's most advanced AI search and knowledge products.

I need a complete RAG system architecture designed from scratch for my use case.

Design:

- End-to-end architecture overview with every component and how they connect
- Ingestion pipeline: how documents enter the system and get processed
- Retrieval layer: how the system finds relevant information when a user asks a question
- Generation layer: how retrieved context gets combined with the LLM to produce answers
- Technology stack recommendation for each component with reasoning
- Latency budget breakdown: maximum time allowed for each pipeline stage
- Scaling strategy: how this architecture handles 10x and 100x data growth
- Cost estimate: monthly infrastructure spend at 1K, 10K, and 100K queries per day
- Failure modes: what can go wrong at each stage and how to handle it gracefully
- Build vs buy decision for each component with vendor recommendations

Format as a Google Brain-style system design document with architecture descriptions, component specifications, and a build timeline.

My use case: [DESCRIBE YOUR DATA TYPE, QUERY PATTERNS, ACCURACY REQUIREMENTS, SCALE, AND BUDGET]"
2. The Pinecone Chunking Strategy Engineer

"You are the head of solutions architecture at Pinecone who has optimized chunking strategies for thousands of production RAG deployments across enterprise clients.

I need a complete document chunking strategy tailored to my specific content type.

Build:

- Chunking method selection: fixed-size, semantic, recursive, or document-structure-based with reasoning
- Optimal chunk size determination based on my content type and query patterns
- Overlap strategy: how many tokens to overlap between chunks and why
- Boundary rules: where to split and where to never split (sentences, paragraphs, sections)
- Metadata extraction plan: what to tag each chunk with for filtering and retrieval
- Parent-child chunking architecture: small chunks for retrieval, large chunks for context
- Special content handling: tables, code blocks, lists, images, and headers
- Chunk quality validation: how to test if your chunks actually produce good retrieval
- Pre-processing pipeline: cleaning, normalizing, and enriching text before chunking
- A/B testing framework: how to compare two chunking strategies with real queries

Format as a chunking strategy specification with decision trees, configuration examples, and a validation test suite.

My content: [DESCRIBE YOUR DOCUMENT TYPES, AVERAGE LENGTH, STRUCTURE, LANGUAGE, AND WHAT USERS TYPICALLY ASK ABOUT]"
Read 14 tweets
Feb 16
BREAKING: AI can now build ML models like Goldman Sachs' AI trading desk (for free).

Here are 12 insane Claude prompts that replace $400K/year quant researchers (Save for later) Image
1/ Time Series Forecasting Model

You are a Quantitative Researcher at Goldman Sachs Global Markets. I need a complete time series forecasting model for [STOCK/ASSET].

Please provide:

- Data preprocessing: How to clean price data and handle missing values
- Feature engineering: Technical indicators (moving averages, RSI, MACD, Bollinger Bands)
- Model selection: Compare ARIMA, LSTM neural networks, and Prophet models
- Training approach: Train-test split ratios and cross-validation strategy
- Performance metrics: MAE, RMSE, directional accuracy for predictions
- Backtesting framework: How to test strategy on historical data
- Risk management: Stop-loss rules and position sizing based on confidence
- Implementation code: Python pseudocode with library recommendations

Format as quantitative research report with model specifications and expected accuracy.

Asset: [DESCRIBE STOCK/CRYPTO/COMMODITY, TIME PERIOD, DATA SOURCE]
2/ Mean Reversion Trading Strategy

You are a VP of Quantitative Trading at JP Morgan's Systematic Trading desk. I need a mean reversion algorithm for [MARKET/ASSET].

Please provide:

- Statistical foundation: Z-score calculation and standard deviation bands
- Entry signals: When price deviates X standard deviations from mean
- Exit signals: When price returns to mean or stop-loss triggers
- Pair selection: How to find correlated assets for pairs trading
- Cointegration testing: Statistical tests to validate pair relationships
- Position sizing: Kelly Criterion or fixed-fraction approach
- Risk parameters: Maximum drawdown limits and exposure caps
- Backtesting results: Expected Sharpe ratio and win rate over 3+ years

Format as algorithmic trading strategy document with entry/exit rules.

Market: [DESCRIBE ASSET CLASS, TIMEFRAME, TRADING STYLE]
Read 15 tweets

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