{"passport":{"unfragile":{"@version":"1.0","version":"2026-05","artifact":{"id":"tool_basemark","slug":"basemark","name":"Basemark","type":"benchmark","url":"https://www.basemark.com","page_url":"https://unfragile.ai/basemark","categories":["automation"],"tags":[],"pricing":{"model":"paid","free":false,"starting_price":null},"status":"active","verified":false},"capabilities":[{"id":"tool_basemark__cap_0","uri":"capability://testing.automotive.system.performance.benchmarking","name":"automotive-system-performance-benchmarking","description":"Executes standardized performance tests across automotive hardware and software systems to measure and compare system behavior against baseline metrics. Provides quantitative performance data specific to vehicle architectures and embedded systems.","intents":["I need to measure how fast my vehicle's ECU processes sensor data","I want to compare performance across different hardware configurations in our vehicles","I need to validate that our embedded systems meet performance specifications"],"best_for":["automotive OEMs","tier-1 automotive suppliers","vehicle system engineers"],"limitations":["requires automotive-specific hardware and software environments","not applicable to non-automotive systems","requires integration with existing automotive development pipelines"],"requires":["access to vehicle systems or ECU test environments","automotive domain knowledge","integration with automotive development tools"],"input_types":["vehicle system configurations","embedded software binaries","hardware specifications"],"output_types":["performance metrics","benchmark reports","comparative analysis data"],"categories":["testing","performance-analysis","automotive"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"tool_basemark__cap_1","uri":"capability://analysis.ai.driven.performance.bottleneck.identification","name":"ai-driven-performance-bottleneck-identification","description":"Uses machine learning algorithms to analyze performance test results and automatically identify system bottlenecks across hardware and software stacks. Prioritizes issues by impact and provides root cause analysis for performance degradation.","intents":["I need to find what's slowing down our vehicle's performance","I want to understand which component is causing the bottleneck","I need to prioritize which performance issues to fix first"],"best_for":["automotive performance engineers","vehicle system architects","embedded systems teams"],"limitations":["requires sufficient performance test data to train models","accuracy depends on quality of input metrics","may require domain expertise to interpret AI-generated insights"],"requires":["historical performance benchmark data","system architecture documentation","baseline performance metrics"],"input_types":["performance test results","system metrics","hardware/software configuration data"],"output_types":["bottleneck analysis reports","root cause assessments","prioritized issue lists"],"categories":["analysis","performance-optimization","ai-analysis"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"tool_basemark__cap_10","uri":"capability://optimization.performance.optimization.recommendation.engine","name":"performance-optimization-recommendation-engine","description":"Analyzes performance data and system configurations to generate specific, actionable optimization recommendations. Prioritizes recommendations by potential impact and implementation effort.","intents":["I need specific recommendations on how to improve vehicle performance","I want to know which optimizations will have the biggest impact","I need to understand the effort required for each optimization"],"best_for":["performance engineers","optimization specialists","technical decision makers"],"limitations":["recommendations are based on data patterns and may not account for all constraints","implementation feasibility depends on specific system constraints","recommendations may require validation before implementation"],"requires":["comprehensive performance data","system architecture information","knowledge of optimization techniques"],"input_types":["performance metrics","system configurations","bottleneck analysis"],"output_types":["optimization recommendations","impact assessments","implementation effort estimates","prioritized action plans"],"categories":["optimization","analysis","recommendations"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"tool_basemark__cap_2","uri":"capability://compliance.automotive.standards.compliance.validation","name":"automotive-standards-compliance-validation","description":"Validates vehicle systems and components against automotive industry standards and specifications (ISO, SAE, OEM-specific requirements). Generates compliance reports and identifies deviations from required standards.","intents":["I need to verify our vehicle meets ISO/SAE standards","I want to ensure compliance with OEM specifications","I need documentation proving our systems meet automotive requirements"],"best_for":["automotive OEMs","tier-1 and tier-2 suppliers","quality assurance teams"],"limitations":["limited to automotive industry standards","requires up-to-date standard definitions","may not cover emerging or proprietary OEM requirements"],"requires":["knowledge of applicable automotive standards","system performance data","specification documentation"],"input_types":["system performance metrics","design specifications","test results"],"output_types":["compliance reports","deviation lists","certification documentation"],"categories":["compliance","quality-assurance","automotive"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"tool_basemark__cap_3","uri":"capability://analysis.cross.hardware.configuration.performance.comparison","name":"cross-hardware-configuration-performance-comparison","description":"Compares performance metrics across different hardware configurations, processor variants, and component combinations to identify optimal configurations. Generates comparative analysis showing performance deltas between configurations.","intents":["I need to decide which processor to use in our vehicle platform","I want to understand performance trade-offs between different hardware options","I need to optimize our bill of materials without sacrificing performance"],"best_for":["automotive platform engineers","vehicle architects","hardware selection teams"],"limitations":["requires testing across multiple hardware configurations","time-intensive for large configuration spaces","results are specific to tested configurations"],"requires":["access to multiple hardware variants","ability to run tests on different configurations","baseline performance targets"],"input_types":["hardware specifications","performance test results from multiple configurations","cost data"],"output_types":["comparative performance reports","configuration recommendations","performance vs. cost analysis"],"categories":["analysis","optimization","hardware-evaluation"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"tool_basemark__cap_4","uri":"capability://profiling.embedded.software.performance.profiling","name":"embedded-software-performance-profiling","description":"Profiles embedded software running on vehicle systems to measure CPU usage, memory consumption, latency, and throughput. Identifies performance characteristics of individual software components and their interactions.","intents":["I need to understand how much CPU our software is using","I want to find memory leaks in our embedded code","I need to measure latency of critical vehicle functions"],"best_for":["embedded software engineers","vehicle software teams","performance optimization specialists"],"limitations":["requires instrumentation of software or hardware probes","may introduce overhead that affects measurements","limited to systems where profiling tools can be deployed"],"requires":["access to embedded software source or binaries","vehicle test environment or simulator","profiling instrumentation capabilities"],"input_types":["embedded software binaries","system configurations","test scenarios"],"output_types":["performance profiles","resource utilization reports","latency measurements","bottleneck identification"],"categories":["profiling","performance-analysis","software-optimization"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"tool_basemark__cap_5","uri":"capability://testing.automated.regression.testing.for.vehicle.systems","name":"automated-regression-testing-for-vehicle-systems","description":"Automates performance regression testing across vehicle system updates and component changes. Continuously monitors performance metrics to detect unintended degradation and alerts teams to regressions.","intents":["I need to ensure our software updates don't degrade vehicle performance","I want to catch performance regressions before they reach production","I need continuous monitoring of system performance across releases"],"best_for":["automotive development teams","continuous integration/deployment teams","quality assurance engineers"],"limitations":["requires established baseline performance metrics","may generate false positives if thresholds not properly tuned","requires integration with development pipeline"],"requires":["baseline performance data","automated test infrastructure","integration with version control and CI/CD systems"],"input_types":["software builds","system configurations","baseline performance metrics"],"output_types":["regression reports","performance delta alerts","trend analysis"],"categories":["testing","quality-assurance","automation"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"tool_basemark__cap_6","uri":"capability://monitoring.real.time.vehicle.system.monitoring.and.diagnostics","name":"real-time-vehicle-system-monitoring-and-diagnostics","description":"Monitors vehicle system performance in real-time during operation or testing, collecting telemetry data and providing live diagnostics. Detects anomalies and performance issues as they occur.","intents":["I need to monitor vehicle performance during test drives","I want real-time alerts when systems underperform","I need to capture performance data during specific driving scenarios"],"best_for":["vehicle test engineers","field validation teams","performance monitoring specialists"],"limitations":["requires real-time data collection infrastructure","high data volume may require significant storage and processing","network connectivity may be limited in vehicle environments"],"requires":["vehicle telemetry systems","real-time data collection infrastructure","monitoring dashboard and alerting system"],"input_types":["vehicle sensor data","system telemetry","performance metrics"],"output_types":["real-time dashboards","performance alerts","telemetry logs","anomaly reports"],"categories":["monitoring","diagnostics","real-time-analysis"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"tool_basemark__cap_7","uri":"capability://integration.automotive.development.pipeline.integration","name":"automotive-development-pipeline-integration","description":"Integrates benchmarking and performance analysis into existing automotive development workflows and tools. Provides APIs and connectors to link with CAD, simulation, and testing platforms used in automotive development.","intents":["I need to integrate performance testing into our existing development tools","I want performance data to flow automatically into our design reviews","I need to connect benchmarking with our simulation and validation tools"],"best_for":["automotive development teams","systems integration engineers","tool administrators"],"limitations":["requires custom integration work for each tool","limited to supported automotive development platforms","integration complexity depends on tool ecosystem"],"requires":["access to development tool APIs","integration expertise","documentation of tool interfaces"],"input_types":["tool configurations","API specifications","workflow definitions"],"output_types":["integrated workflows","data connectors","automated reporting"],"categories":["integration","workflow-automation","enterprise-tools"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"tool_basemark__cap_8","uri":"capability://analysis.performance.trend.analysis.and.forecasting","name":"performance-trend-analysis-and-forecasting","description":"Analyzes historical performance data to identify trends and patterns, then forecasts future performance based on development trajectory. Helps predict when systems may fail to meet performance targets.","intents":["I need to understand how performance is trending over development cycles","I want to predict if we'll meet performance targets by launch","I need to forecast the impact of planned changes on system performance"],"best_for":["automotive program managers","performance engineers","technical leadership"],"limitations":["requires substantial historical data for accurate forecasting","forecasts become less reliable for longer time horizons","assumes development patterns remain consistent"],"requires":["historical performance data across development phases","baseline performance targets","development timeline information"],"input_types":["historical performance metrics","development milestones","planned changes"],"output_types":["trend reports","performance forecasts","risk assessments","target achievement predictions"],"categories":["analysis","forecasting","reporting"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"tool_basemark__cap_9","uri":"capability://benchmarking.multi.platform.performance.benchmarking","name":"multi-platform-performance-benchmarking","description":"Executes consistent performance benchmarks across different vehicle platforms, architectures, and generations. Enables comparison of performance characteristics across diverse automotive systems and identifies platform-specific optimizations.","intents":["I need to compare performance across our different vehicle platforms","I want to understand how performance scales across vehicle classes","I need to identify platform-specific optimization opportunities"],"best_for":["automotive OEMs with multiple platforms","platform architects","cross-platform engineering teams"],"limitations":["requires access to multiple vehicle platforms","platform differences may make direct comparisons difficult","requires standardized test scenarios across platforms"],"requires":["access to multiple vehicle platforms or simulators","standardized test scenarios","platform documentation and specifications"],"input_types":["platform configurations","test scenarios","system specifications"],"output_types":["cross-platform comparison reports","platform performance rankings","optimization recommendations"],"categories":["benchmarking","comparative-analysis","multi-platform"],"confidence":0.5,"matches":0,"success_rate":0}],"trust":{"score":50,"verified":false,"data_access_risk":"low","permissions":["access to vehicle systems or ECU test environments","automotive domain knowledge","integration with automotive development tools","historical performance benchmark data","system architecture documentation","baseline performance metrics","comprehensive performance data","system architecture information","knowledge of optimization techniques","knowledge of applicable automotive standards"],"failure_modes":["requires automotive-specific hardware and software environments","not applicable to non-automotive systems","requires integration with existing automotive development pipelines","requires sufficient performance test data to train models","accuracy depends on quality of input metrics","may require domain expertise to interpret AI-generated insights","recommendations are based on data patterns and may not account for all constraints","implementation feasibility depends on specific system constraints","recommendations may require validation before implementation","limited to automotive industry standards","builder identity is not verified yet","no observed match outcomes yet"],"rank_breakdown":{"adoption":0.39999999999999997,"quality":0.82,"ecosystem":0.15000000000000002,"match_graph":0.25,"freshness":0.75,"weights":{"adoption":0.25,"quality":0.35,"ecosystem":0.15,"match_graph":0.2,"freshness":0.05}},"observed_outcomes":{"matches":0,"success_rate":0,"avg_confidence":0,"top_intents":[],"last_matched_at":null},"maintenance":{"status":"active","updated_at":"2026-05-24T12:16:29.134Z","last_scraped_at":"2026-04-05T13:23:42.549Z","last_commit":null},"community":{"stars":null,"forks":null,"weekly_downloads":null,"model_downloads":null,"model_likes":null}},"distribution":{"claim_url":"https://unfragile.ai/submit?claim=basemark","compare_url":"https://unfragile.ai/compare?artifact=basemark"}},"signature":"EKnPls2hgSNbxXsDzPHskH+Tcrc1kZI8c0rYLCsLDcEc0jmbZBWm//akQMSsyVgaN/dFzrbDQacGKzUezR8gCw==","signedAt":"2026-06-20T14:40:33.699Z","signedBy":"unfragile.ai","version":1},"_links":{"self":"https://unfragile.ai/api/v1/passport/basemark","artifact":"https://unfragile.ai/basemark","verify":"https://unfragile.ai/api/v1/verify?slug=basemark","publicKey":"https://unfragile.ai/api/v1/trust-passport-public-key","spec":"https://unfragile.ai/trust","schema":"https://unfragile.ai/schema.json","docs":"https://unfragile.ai/docs"}}