
Welcome to our Use Case Demo for Service Advisor Assist!
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About this Demo: Example Application NHTSA Safety Data
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The National Highway Traffic Safety Administration (NHTSA) maintains public data base for consumer reported safety issues. NHTSA uses this information as a basis for investigation into defects and potential vehicle safety recalls.
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This Demo Dashboard is configured to answer safety and quality related questions and shows aggregated insights extracted from these customer complaints on a Year, Make, Model, Engine and even Parts level.
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These insights include:
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Top Customer reported concerns ("symptoms")
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Top Technician reported failures
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Top replaced parts & parts failure rates
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Mileage distribution
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Geo Information​
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Vehicle Make and Year Filter​
In total, the NHTSA data base contains more than 1.2 Million records on real life vehicle issues, safety & quality concerns, and component failure. This POC Dashboard is based on 9,656 (customer-reported) extracted symptoms and 11,299 (technician-reported) failures across 268 makes¹ and 6,138 models.
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Simply filter for Makes, Models, and Vehicle Year for refinement.
​¹total of extracted makes: 1056 incl. trucks, trailers, RV. For quality of the analysis we considered all makes with records >10
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Top (Driver-reported) Customer Concerns
​'Customer verbatim’ data is extremely hard to translate into usable analytics. Customer complaints consist of textual data, real life human language, which is unstructured, messy, and contains very domain-specific automotive terminology.
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Predii’s Natural Language Processing engine has been purpose-built to extract predictive and prescriptive insights from unstructured textual, sensor, and procedural automotive data; our algorithm has been fine-tuned to understand automotive jargon for 10+ years.
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This allows us to translate the entirety of individual records into classified, categorized symptoms as shown in the example.
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Top (Technician-reported) Vehicles Failures​
In additional to verbatim data ('technician notes)', Technician-reported failures contain Diagnostic Trouble Cdes, Part numbers, ACES/PIE definitions, and more. The Predii technology is able to capture these data points, categorize them, and translate them into actionable insights.
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Top Technician Reported Failures for this POC data set include: Check Engine Light, specifically defined noises heard from different parts of the vehicle ("knocking", "grinding", "clicking").
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Top Contributing Makes & Models​
Allows viewers to break to aggregated views across all symptoms and failures and narrow down to specific Makes and Models.
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Mileage Distribution​
Odometer readings show the mileage distribution for each concern/failure per make and model, allowing users to identify patterns and trends. Mileage distribution is crucial for advanced analytics including prediction of quality issues.