# market-news-analyst
Market News Analyst Overview This skill enables comprehensive analysis of market-moving news events from the past 10 days, focusing on their impact on US equity markets and commodities. The skill automatically collects news from trusted sources via SkillBoss API Hub search and scraping capabilities (/v1/pilot, type: "search" / type: "scraping"), evaluates market impact magnitude, analyzes actual market reactions, and produces structured English reports ranked by market impact significance. When to Use This Skill Use this skill when: User requests analysis of recent major market news (past 10 days) User wants to understand market reactions to specific events (FOMC decisions, earnings, geopolitical) User needs comprehensive market news summary with impact assessment User asks about correlations between news events and commodity price movements User requests analysis of how central bank policy announcements affected markets Example user requests: "Analyze the major market news from the past 10 days" "How did the latest FOMC decision impact the market?" "What were the most important market-moving events this week?" "Analyze recent geopolitical news and commodity price reactions" "Review mega-cap tech earnings and their market impact" Analysis Workflow Follow this structured 6-step workflow when analyzing market news: Step 1: News Collection via SkillBoss API Hub
Objective: Gather comprehensive news from the past 10 days covering major market-moving events.
Search Strategy: Execute parallel search queries via SkillBoss API Hub (POST https://api.heybossai.com/v1/pilot, type: "search", auth: SKILLBOSS_API_KEY) covering different news categories: Monetary Policy:
Search: "FOMC meeting past 10 days", "Federal Reserve interest rate", "ECB policy decision", "Bank of Japan"
Target: Central bank decisions, forward guidance changes, inflation commentary
Inflation/Economic Data:
Search: "CPI inflation report [current month]", "jobs report NFP", "GDP data", "PPI producer prices"
Target: Major economic data releases and surprises
Mega-Cap Earnings:
Search: "Apple earnings [current quarter]", "Microsoft earnings", "NVIDIA earnings", "Amazon earnings", "Tesla earnings", "Meta earnings", "Google earnings"
Target: Results, guidance, market reactions for largest companies
Geopolitical Events:
Search: "Middle East conflict oil prices", "Ukraine war", "US China tensions", "trade war tariffs"
Target: Conflicts, sanctions, trade disputes affecting markets
Commodity Markets:
Search: "oil prices news past week", "gold prices", "OPEC meeting", "natural gas prices", "copper prices"
Target: Supply disruptions, demand shifts, price movements
Corporate News:
Search: "major M&A announcement", "bank earnings", "tech sector news", "bankruptcy", "credit rating downgrade"
Target: Large corporate events beyond mega-caps
Recommended News Sources (Priority Order): Official sources: FederalReserve.gov, SEC.gov (EDGAR), Treasury.gov, BLS.gov Tier 1 financial news: Bloomberg, Reuters, Wall Street Journal, Financial Times
Specialized: CNBC (real-time), MarketWatch (summaries), S&P Global Platts (commodities)
Search Execution: Use SkillBoss API Hub type: "search" for broad topic searches (result path: result) Use SkillBoss API Hub type: "scraping" for specific URLs from official sources or major news outlets (result path: result) Collect publication dates to ensure news is within 10-day window
Capture: Event date, source, headline, key details, market context (pre-market, trading hours, after-hours)
Filtering Criteria: Focus on Tier 1 market-moving events (see references/market_event_patterns.md) Prioritize news with clear market impact (price moves, volume spikes)
Exclude: Stock-specific small-cap news, minor product updates, routine filings
Think in English throughout collection process. Document each significant news item with: Date and time Event type (monetary policy, earnings, geopolitical, etc.) Source reliability tier Initial market reaction (if observable) Step 2: Load Knowledge Base References
Objective: Access domain expertise to inform impact assessment.
Load relevant reference files based on collected news types: Always Load: references/market_event_patterns.md - Comprehensive patterns for all major event types references/trusted_news_sources.md - Source credibility assessment Conditionally Load (Based on News Collected): If monetary policy news found: Focus on: market_event_patterns.md → Central Bank Monetary Policy Events section Key frameworks: Interest rate hike/cut reactions, QE/QT impacts, hawkish/dovish tone If geopolitical events found:
Load: references/geopolitical_commodity_correlations.md
Focus on: Energy Commodities, Precious Metals, regional frameworks matching event If mega-cap earnings found:
Load: references/corporate_news_impact.md
Focus on: Specific company sections, sector contagion patterns If commodity news found:
Load: references/geopolitical_commodity_correlations.md
Focus on: Specific commodity sections (Oil, Gold, Copper, etc.) Knowledge Integration: Compare collected news against historical patterns to: Predict expected market reactions Identify anomalies (market reacted differently than historical pattern) Assess whether reaction was typical magnitude or outsized Determine if contagion occurred as expected Step 3: Impact Magnitude Assessment
Objective: Rank each news event by market impact significance.
Impact Assessment Framework: For each news item, evaluate across three dimensions:
Index-level: S&P 500, Nasdaq 100, Dow Jones
Severe: ±2%+ in day
Major: ±1-2%
Moderate: ±0.5-1%
Minor: ±0.2-0.5%
Negligible: <0.2%
Sector-level: Specific sector ETFs
Severe: ±5%+
Major: ±3-5%
Moderate: ±1-3%
Minor: <1%
Stock-specific: Individual mega-caps
Severe: ±10%+ (and index weight causes index move)
Major: ±5-10%
Moderate: ±2-5%
Commodity Markets: Oil (WTI/Brent):
Severe: ±5%+
Major: ±3-5%
Moderate: ±1-3%
Gold:
Severe: ±3%+
Major: ±1.5-3%
Moderate: ±0.5-1.5%
Base Metals (Copper, etc.):
Severe: ±4%+
Major: ±2-4%
Moderate: ±1-2%
Bond Markets: 10-Year Treasury Yield:
Severe: ±20bps+ in day
Major: ±10-20bps
Moderate: ±5-10bps
Currency Markets: USD Index (DXY):
Severe: ±1.5%+
Major: ±0.75-1.5%
Moderate: ±0.3-0.75%
Examples: FOMC surprise, banking crisis, major war outbreak
Cross-Asset (2x multiplier): Equities + commodities, or equities + bonds
Examples: Inflation surprise, geopolitical supply shock
Sector-Wide (1.5x multiplier): Entire sector or related sectors
Examples: Tech earnings cluster, energy policy announcement
Stock-Specific (1x multiplier): Single company (unless mega-cap with index impact)
Examples: Individual company earnings, M&A
Examples: Fed pivot from hiking to cutting, major geopolitical realignment
Trend Confirmation (+25%): Reinforces existing trajectory
Examples: Consecutive strong inflation prints, sustained earnings beats
Isolated Event (0%): One-off with limited forward signal
Examples: Single data point within range, company-specific issue
Contrary Signal (-25%): Contradicts prevailing narrative
Examples: Good news ignored by market, bad news rallied
Impact Score Calculation: Impact Score = (Price Impact Score × Breadth Multiplier) + Forward-Looking Modifier Price Impact Score:
Breadth: Systemic (equities, bonds, USD, commodities all moved) = 3x
Forward: Trend confirmation (ongoing tightening) = +25%
Score: (10 × 3) × 1.25 = 37.5
NVIDIA Earnings Beat: Price Impact: NVDA +15%, Nasdaq +1.5% (Severe = 10 points)
Breadth: Sector-wide (semis, tech broadly) = 1.5x
Forward: Trend confirmation (AI demand) = +25%
Score: (10 × 1.5) × 1.25 = 18.75
Geopolitical Flare-up (Middle East): Price Impact: Oil +8%, S&P -1.2% (Severe = 10 points)
Breadth: Cross-asset (oil, equities, gold) = 2x
Forward: Isolated event (no escalation) = 0%
Score: (10 × 2) × 1.0 = 20
Single Stock Earnings (Non-Mega-Cap): Price Impact: Stock +12%, no index impact (Major = 7 points)
Breadth: Stock-specific = 1x
Forward: Isolated = 0%
Score: (7 × 1) × 1.0 = 7
Ranking:
After scoring all news items, rank from highest to lowest impact score. This determines report ordering. Step 4: Market Reaction Analysis
Objective: Analyze how markets actually responded to each event.
For each significant news item (Impact Score >5), conduct detailed reaction analysis: Immediate Reaction (Intraday):
Direction: Positive, negative, mixed
Magnitude: Align with price impact categories
Timing: Pre-market, during trading, after-hours
Volatility: VIX movement, bid-ask spreads
Multi-Asset Response:
Equities:
Index performance (S&P 500, Nasdaq, Dow, Russell 2000) Sector rotation (which sectors outperformed/underperformed) Individual stock moves (mega-caps, relevant companies) Growth vs Value, Large vs Small Cap divergences Fixed Income: Treasury yields (2Y, 10Y, 30Y) Yield curve shape (steepening, flattening, inversion) Credit spreads (IG, HY) TIPS breakevens (inflation expectations)
Commodities:
Energy: Oil (WTI, Brent), Natural Gas
Precious Metals: Gold, Silver Base Metals: Copper, Aluminum (if relevant)
Agricultural: Wheat, Corn, Soybeans (if relevant)
Currencies:
USD Index (DXY) EUR/USD, USD/JPY, GBP/USD Emerging market currencies Safe havens (JPY, CHF)
Derivatives:
VIX (volatility index) Options activity (put/call ratio, unusual volume) Futures positioning Pattern Comparison: Compare observed reaction against expected pattern from knowledge base:
Consistent: Reaction matched historical pattern
Example: Fed hike → Tech stocks down, USD up (as expected)
Amplified: Reaction exceeded typical pattern
Example: Inflation print +0.3% above consensus → Selloff 2x typical
Investigate: Positioning, sentiment, cumulative factors
Dampened: Reaction less than historical pattern
Example: Geopolitical event → Oil barely moved
Investigate: Already priced in, other offsetting factors
Inverse: Reaction opposite of historical pattern
Example: Good news ignored, bad news rallied
Investigate: "Good news is bad news" dynamics, Fed pivot hopes
Anomaly Identification: Flag reactions that deviate significantly from patterns: Market shrugged off typically market-moving news Overreaction to typically minor news Contagion failed to spread as expected Safe havens didn't work (correlations broke) Sentiment Indicators: Risk-On vs Risk-Off: Which regime dominated
Positioning: Evidence of crowded trades unwinding
Momentum: Follow-through in subsequent sessions or reversal
Step 5: Correlation and Causation Assessment
Objective: Distinguish direct impacts from coincidental timing.
Multi-Event Analysis: When multiple significant events occurred in the 10-day period, assess interactions: Reinforcing Events: Same directional impact
Example: Hawkish FOMC + hot CPI → Both bearish for equities, amplified move
Combined impact often non-linear (greater than sum of parts) Offsetting Events: Opposite directional impacts
Example: Strong earnings (positive) + geopolitical tensions (negative) → Muted net reaction
Identify which factor dominated Sequential Events: One event set up reaction to next
Example: First rate hike modest reaction, second rate hike severe (cumulative tightening concerns)
Path dependence matters Coincidental Timing: Events unrelated but occurred simultaneously Difficult to isolate individual impacts Note uncertainty in attribution Geopolitical-Commodity Correlations: For geopolitical events, specifically analyze commodity market reactions using geopolitical_commodity_correlations.md:
Energy:
Map conflict/sanction to supply disruption risk Assess actual vs feared supply impact
Duration: Temporary spike vs sustained elevation
Precious Metals: Safe-haven flows vs real rate drivers Gold response to risk-off events Central bank buying implications Industrial Metals: Demand destruction from economic slowdown fears Supply chain disruptions China factor in copper, aluminum
Agriculture:
Black Sea grain exports (Russia-Ukraine) Weather overlays Food security policy responses Transmission Mechanisms: Trace how news impacts flowed through markets: Direct Channel: News → Immediate asset price reaction
Example: OPEC cuts → Oil prices up immediately
Indirect Channels: News → Economic impact → Asset prices
Example: Rate hike → Mortgage rates up → Housing slows → Homebuilder stocks down
Sentiment Channel: News → Risk appetite shift → Broad asset reallocation
Example: Banking crisis → Flight to quality → Treasuries rally, stocks sell
Feedback Loops: Initial reaction creates secondary effects
Example: Stock selloff → Margin calls → Forced selling → Deeper selloff
Step 6: Report Generation
Objective: Create structured English Markdown report ranked by market impact.
Report Structure:
# Market News Analysis Report - [Date Range]
## Executive Summary
[3-4 sentences covering:]
## Market Impact Rankings
[Table format, sorted by Impact Score descending]
| Rank | Event | Date | Impact Score | Asset Classes Affected | Market Reaction |
|---|---|---|---|---|---|
| 1 | [Event] | [Date] | [Score] | [Equities, Commodities, etc.] | [Brief reaction] |
| 2 | ... | ... | ... | ... | ... |
## Detailed Event Analysis
[For each event in rank order, provide comprehensive analysis]
### [Rank]. [Event Name] (Impact Score: [X])
Event Date: [Date, Time] Event Type: [Monetary Policy / Earnings / Geopolitical / Economic Data / Corporate] News Source: [Source, with credibility tier]
#### Event Summary
[3-4 sentences describing what happened]
#### Market Reaction
Immediate (Day-of):
#### Impact Assessment Detail
Asset Price Impact: [Severe/Major/Moderate/Minor] - [Justification] Breadth: [Systemic/Cross-Asset/Sector/Stock-Specific] - [Affected markets] Forward Significance: [Regime Change/Trend Confirmation/Isolated/Contrary] - [Rationale] Calculated Score: ([Price Score] × [Breadth Multiplier]) × [Forward Modifier] = [Total]
#### Sector-Specific Impacts
[If relevant, detail which sectors/industries were most affected]
#### Geopolitical-Commodity Correlation Analysis
[Include this section only for geopolitical events]
## Thematic Synthesis
### Dominant Market Narrative
[Identify overarching theme across the 10-day period]
### Interconnected Events
[Analyze how events related or compounded]
### Market Regime Assessment
Risk Appetite: [Risk-On / Risk-Off / Mixed] Evidence:
### Anomalies and Surprises
[Highlight unexpected market reactions]
## Commodity Market Deep Dive
[Dedicated section for commodity movements]
### Energy
### Precious Metals
### Base Metals
### Agricultural (If Relevant)
## Forward-Looking Implications
### Market Positioning Insights
[What the news suggests for current market positioning]
### Upcoming Catalysts
[Events on horizon that may be set up by recent news]
### Risk Scenarios
[Based on recent news, identify key risks]
## Data Sources and Methodology
### News Sources Consulted
[List primary sources used, organized by tier]
### Analysis Period
### Market Data
### Knowledge Base References
market_event_patterns.md - Historical reaction patternsgeopolitical_commodity_correlations.md - Geopolitical-commodity frameworkscorporate_news_impact.md - Mega-cap impact analysistrusted_news_sources.md - Source credibility assessmentAnalysis Date: [Date report generated] Language: English Analysis Thinking: English File Naming Convention: market_news_analysis_[START_DATE]to[END_DATE].md
Example: market_news_analysis_2024-10-25_to_2024-11-03.md
Report Quality Standards: Objective, fact-based analysis (no speculation beyond probability-weighted scenarios) Quantify price movements with specific percentages Cite sources for major claims Distinguish between correlation and causation Acknowledge uncertainty when attributing market moves to specific news Use proper financial terminology Maintain consistent English throughout Key Analysis Principles When conducting market news analysis: Impact Over Noise: Focus on truly market-moving news, filter out minor events Multi-Asset Perspective: Analyze across equities, bonds, commodities, currencies to understand full impact Pattern Recognition: Compare against historical precedents while noting unique aspects Causation Discipline: Be rigorous about attributing market moves to specific news vs coincidental timing
Forward-Looking: Emphasize implications for future market behavior, not just backward-looking description
Objectivity: Separate market reaction (what happened) from personal market view (what should happen)
Quantification: Use specific numbers (%, bps) rather than vague terms ("significant," "large")
Source Credibility: Weight official sources and Tier 1 news over rumors and unverified reports Breadth Analysis: Individual stock moves only significant if mega-cap or systemic signal English Consistency: All thinking, analysis, and output in English for consistency Common Pitfalls to Avoid
Over-Attribution:
Not every market move is news-driven (technicals, flows, month-end rebalancing exist) Acknowledge when attribution is uncertain Recency Bias: Latest news isn't always most important Rank by actual impact, not chronological order Hindsight Bias: Distinguish "obvious in retrospect" from "surprising at the time" Note consensus expectations vs actual outcomes Single-Factor Analysis: Markets respond to multiple factors simultaneously Acknowledge interaction effects Ignoring Magnitude: A "hot" CPI that's 0.1% above consensus is different from 0.5% above Quantify surprise factor Resources references/ market_event_patterns.md - Comprehensive knowledge base covering: Central bank monetary policy events (FOMC, ECB, BOJ, PBOC) Inflation data releases (CPI, PPI, PCE) Employment data (NFP, unemployment, wages) GDP reports Geopolitical events (conflicts, trade wars, sanctions) Corporate earnings (mega-cap technology, banks, energy) Credit events and rating changes Commodity-specific events (OPEC, weather, supply disruptions) Recession indicators Historical case studies (2008 crisis, COVID-19, 2022 inflation) Pattern recognition framework and sentiment analysis geopolitical_commodity_correlations.md - Detailed correlations covering: Energy commodities (crude oil, natural gas, coal) and geopolitical conflicts Precious metals (gold, silver, platinum, palladium) safe-haven dynamics Base metals (copper, aluminum, nickel, zinc) and economic/political risks Agricultural commodities (wheat, corn, soybeans) and weather/policy Rare earth elements and critical minerals (China dominance, supply security) Regional geopolitical frameworks (Middle East, Russia-Europe, Asia-Pacific, Latin America) Correlation summary tables Time horizon considerations corporate_news_impact.md - Mega-cap analysis framework: "Magnificent 7" technology stocks (NVIDIA, Apple, Microsoft, Amazon, Meta, Google, Tesla) Financial sector mega-caps (JPMorgan, Bank of America, etc.) Healthcare mega-caps (UnitedHealth, Pfizer, J&J, Merck) Energy mega-caps (Exxon Mobil, Chevron) Consumer staples mega-caps (P&G, Coca-Cola, PepsiCo) Industrial mega-caps (Boeing, Caterpillar) Earnings impact frameworks, product launches, M&A, regulatory issues Sector contagion patterns Impact magnitude framework trusted_news_sources.md - Source credibility guide: Tier 1 primary sources (central banks, government agencies, SEC) Tier 2 major financial news (Bloomberg, Reuters, WSJ, FT, CNBC) Tier 3 specialized sources (energy, tech, emerging markets, China-specific, crypto) Tier 4 analysis and research (independent research, central bank publications, think tanks) Search and aggregation tools Source quality assessment criteria Speed vs accuracy trade-offs Recommended search strategies for 10-day analysis Source credibility framework Red flag sources to avoid Important Notes All analysis thinking must be conducted in English All output Markdown files must be in English Use SkillBoss API Hub (https://api.heybossai.com/v1/pilot) to collect news: type: "search" for queries (result path: result), type: "scraping" for specific URLs (result path: result); authenticate with SKILLBOSS_API_KEY Focus on trusted news sources as defined in references Rank events by impact score (price impact × breadth × forward significance) Target analysis period: Past 10 days from current date Emphasize US equity markets and commodities as primary analysis subjects FOMC and other central bank policy decisions receive highest priority analysis Distinguish between correlation and causation rigorously Quantify all market reactions with specific percentages Load appropriate reference files based on news types collected Generate comprehensive reports ranked by market impact (highest impact first)
Join 80,000+ one-person companies automating with AI