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190,808 tools. Last updated 2026-06-11 04:16

"performance" matching MCP tools:

  • Polymarket category activity breakdown: volume, liquidity, market count, and top market per category (crypto, politics, sports, ai, macro, equities). Shows where trading activity is concentrated. Optionally filter to one category. $0.004/call — 20% below closest x402 competitor. Source: Polymarket public API (no key required).
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  • Fetch full details of a federal award by its generated unique award ID. Returns contract or assistance award data including recipient info, agency hierarchy, period of performance, place of performance, funding account linkages (account_obligations_by_defc), parent IDV information, and subaward count. Use generated_internal_id values from usaspending_search_awards as input. Recipient hashes can be passed to usaspending_get_recipient; NAICS codes can be used in usaspending_search_awards filters. For IDV-category awards (category="idv"), use usaspending_get_idv_awards to list the child contracts and task/delivery orders placed under them.
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  • Discover and filter a daily list of attractive tokens using Nansen Score Indicators weighted by coefficients (= Performance Score). Use this tool when you don't know which tokens to buy and need recommendations based on backtested indicators. For specific token analysis (e.g., "should I buy AAVE?"), use token_quant_scores instead. **When to use this tool vs token_discovery_screener**: - Use **this tool** when you want **pre-scored buying recommendations** without specifying criteria. It answers "what should I buy?" by returning tokens that already meet a quantitative buying threshold (Performance Score ≥15) based on alpha indicators like price momentum, chain fees, and protocol fees. Data is updated in batches. - Use **token_discovery_screener** when you want **live data** or to **explore tokens by specific criteria** like sectors (e.g., "AI memecoins"), token age (e.g., "new launches"), smart money activity, or custom volume/liquidity thresholds. It's a filtering tool with real-time metrics where you define what you're looking for. Returns tokens pre-filtered by: performance_score >= 15 (buying threshold). **Example queries**: "what tokens should I buy?", "which tokens look good?", "best tokens to buy today" **Scoring:** - **Performance Score** (range -60 to +75): Higher = better alpha opportunity. **Buy threshold: ≥15** - **Risk Score** (range -60 to +80): Higher = safer token. >0 indicates low to medium risk. Every time you give the Performance Score to the user, explain the scoring thresholds above. Same for the Risk Score. Every time quote the underlying indicators that contributed the most to the Performance/ Risk score and recall their definition to the user. Returns: A list of tokens with the highest Performance Score as markdown. Core fields: Token Address, Token Symbol, Chain, Performance Score, Risk Score. Indicator columns are included dynamically based on data availability (columns with all zeros are excluded).
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  • Get Hyperliquid perpetual futures trader leaderboard with performance metrics. Returns: Trader performance rankings as markdown. Columns returned: - **Address**: Trader's wallet address - **Label**: Nansen label of the trader (if available) - **Total PnL**: Total profit/loss in USD (currency formatted, can be negative) - **ROI**: Return on investment as percentage (percentage formatted) - **Account Value**: Total account value in USD (currency formatted) **Sorting and Filtering Options**: You can sort and filter (from/to amounts) on these fields: totalPnl, accountValue, roi Example: ``` { "date": {"from": "7D_AGO", "to": "NOW"}, "accountValue": {"from": 100000, "to": 1000000}, "totalPnl": {"from": 10000}, "order_by": "total_pnl", "orderByDirection": "DESC" } ``` Notes: - Hyperliquid-specific endpoint (perpetual futures only)
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  • Discover and filter a daily list of attractive tokens using Nansen Score Indicators weighted by coefficients (= Performance Score). Use this tool when you don't know which tokens to buy and need recommendations based on backtested indicators. For specific token analysis (e.g., "should I buy AAVE?"), use token_quant_scores instead. **When to use this tool vs token_discovery_screener**: - Use **this tool** when you want **pre-scored buying recommendations** without specifying criteria. It answers "what should I buy?" by returning tokens that already meet a quantitative buying threshold (Performance Score ≥15) based on alpha indicators like price momentum, chain fees, and protocol fees. Data is updated in batches. - Use **token_discovery_screener** when you want **live data** or to **explore tokens by specific criteria** like sectors (e.g., "AI memecoins"), token age (e.g., "new launches"), smart money activity, or custom volume/liquidity thresholds. It's a filtering tool with real-time metrics where you define what you're looking for. Returns tokens pre-filtered by: performance_score >= 15 (buying threshold). **Example queries**: "what tokens should I buy?", "which tokens look good?", "best tokens to buy today" **Scoring:** - **Performance Score** (range -60 to +75): Higher = better alpha opportunity. **Buy threshold: ≥15** - **Risk Score** (range -60 to +80): Higher = safer token. >0 indicates low to medium risk. Every time you give the Performance Score to the user, explain the scoring thresholds above. Same for the Risk Score. Every time quote the underlying indicators that contributed the most to the Performance/ Risk score and recall their definition to the user. Returns: A list of tokens with the highest Performance Score as markdown. Core fields: Token Address, Token Symbol, Chain, Performance Score, Risk Score. Indicator columns are included dynamically based on data availability (columns with all zeros are excluded).
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  • Pause a Performance Max asset group. When paused, Google stops serving ads from this asset group while the campaign and other asset groups remain active. Use getPmaxAssetGroups to find asset group IDs. Returns a changeId for undo support.
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  • Predict times across 5K / 10K / Half / Marathon from a known race result, using the Riegel exponent (1.06) and age-graded performance scores against IAAF world records. Source: ham.run race predictor. Pass useMyData:true to overlay age + sex from the connected athlete profile.
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  • Create a proactive monitoring subscription to a live-data event stream. Returns the new subscription id. Requires a Pipeworx OAuth account (anonymous + BYO cannot persist subscriptions). Supported types: "sec_8k" (8-K filings matching ticker + item codes — e.g. items:["5.02"] = officer change), "polymarket_edge" (Polymarket↔Kalshi cross-venue mispricings — params:{topic:"fed"}), "fred_series" (new FRED observations — params:{series_id:"UNRATE"}). Delivery channels: feed (always on — pull via recent_alerts or GET registry.pipeworx.io/alerts.json), and optionally email (set delivery:{email:"you@x.com"}) or sms (delivery:{sms:"+15551234567"} — phone must be verified at /account first; 10/day cap).
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  • Cancel a subscription by id. Ownership is enforced — you can only cancel your own subscriptions. The row is deactivated (not deleted) so its historical events stay available via recent_alerts.
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  • Get live DPX performance analytics. Returns current stability score, ESG composite scores, live fee breakdown, oracle health across all data sources, and a settlement readiness assessment. Use for dashboards, reporting, and AI-driven monitoring of protocol health.
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  • Aggregate engagement metrics for a Page post (typically the post backing a boosted-post ad). Returns impressions, reach, reactions, and aggregate like / comment / share counts — never individual user data. Pair with `getInsights` to compare paid + organic performance on a boosted post.
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  • <tool_description> Get aggregated performance report for a media buy. Shows spend, impressions, clicks, conversions with time-series breakdown. </tool_description> <when_to_use> To check campaign performance metrics after activation. Supports period filtering and granularity control. </when_to_use> <combination_hints> list_media_buys → get_campaign_report for performance analysis. Pair with get_compliance_status for full campaign overview. </combination_hints> <output_format> Totals (spend, impressions, clicks, conversions) + time-series breakdown. </output_format>
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  • Get network performance data from the browser. Returns resource timing entries (URLs, durations, sizes) sorted by duration (slowest first), plus page navigation timing. Use this to find slow API calls, large assets, or overall page load performance. Requires a connected browser session. If you get BROWSER_NOT_CONNECTED, call check_session first and wait for "connected" status. Args: key: The sncro session key secret: The session secret from create_session limit: Max resources to return (default 50) type: Filter by initiator type (e.g. "fetch", "xmlhttprequest", "img", "script", "css")
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  • What can I ask Pipeworx? / what is Pipeworx good for? / what can you do? / give me ideas / show me examples / getting started / what data do you have? — the onboarding entry point for an agent that just connected and wants to know what is worth asking. Returns category-bucketed example questions (company financials, drugs & clinical trials, economics, real estate, prediction markets, weather, government & patents, science & academia, news) — each with the exact tool + argument shape that answers it, drawn from the live catalog of thousands of tools. Call with no arguments for the full spread, or pass `topic` (e.g. "finance", "pharma", "betting") to focus. Use this FIRST when you do not yet know what Pipeworx can do for you, or to learn how to call the meta-tools (ask_pipeworx, entity_profile, compare_entities, etc.).
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  • Hallucination-resistant answer mode for high-stakes reads. Same routing as ask_pipeworx — picks the right tool from 3,683 across 865 sources, fills arguments, fetches the data — then EXTRACTS the answer using ONLY what the tool result contains. Returns {answer, evidence (verbatim quote), confidence, source, fetched_at, refusal_reason:null} on success, OR an explicit refusal {answer:null, refusal_reason:"not_in_source"|"no_tool_match"|"tool_error"|"data_truncated"|"llm_error"} when the data doesn't directly answer. Use whenever an answer will be quoted, cited, or acted on, and the agent must not invent facts (financial verdicts, legal claims, medical lookups, public statements). Costs one extra LLM call vs ask_pipeworx — prefer ask_pipeworx for casual lookups.
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  • Get details and metrics for a specific team including DORA performance, cycle time, and member count. Use this when asked about a specific team's engineering health. Combines DORA and flow metrics in a single response. Read-only.
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  • Fetch OHLCV price history for multiple tickers in a single call. Returns a flattened table with columns like 'AAPL_Close', 'SPY_Volume', etc. Use this tool when: - You are comparing performance across multiple securities - You need correlated price data for a portfolio or basket of tickers - You want to compute relative performance or correlation matrices Pass symbols as a space-separated or comma-separated string: 'AAPL MSFT GOOGL' or 'SPY,QQQ,IWM'. Source: Yahoo Finance via yfinance. No API key required.
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  • Get attribution performance by individual creative variant. Links creative execution to attribution outcomes: which creative variant drove the most store visits? WHEN TO USE: - Comparing creative A/B/C test performance on attribution outcomes - Finding the optimal creative x venue_type x daypart x weather combination - Identifying the creative with the highest visit rate RETURNS: Array of creatives ranked by store visits, each with: - creativeId, variant, totalVisits, avgVisitRate - attention: avgScore, avgDwell, avgEmotion, dominantEmotion - avgLiftPct, avgCostPerVisit - bestContext: { venueType, daypart, weather } - dateRange: { first, last, daysMeasured }
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  • List the caller's active subscriptions. Returns id, type, params, created_at, last_fired_at, fire_count for each. Use this to review what you're monitoring before adding more or to find an id to cancel.
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  • Narrator profile + audiobooks they have read. Czech audiobook listeners often choose by narrator (performance quality often matters more than the underlying text).
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