Nico Schmidt
Intelligent Data Selection for Continual Learning of AI Functions
#1about 3 minutes
Understanding the core use cases for data selection
Data selection is crucial for creating diverse datasets, enabling active learning, detecting corner cases, and building new AI functions.
#2about 4 minutes
Comparing data sources for machine learning models
Data can be sourced from data lakes with heavy compute, targeted test fleets, or the vast customer fleet which offers real-world scenarios but has limited compute.
#3about 2 minutes
Identifying informative data in long-tail distributions
Informative data lies in the long tail of the data distribution, including rare scenarios, weak sensor signals, and atypical class distributions.
#4about 3 minutes
Overview of methods for intelligent data selection
Key methods for selecting valuable data include uncertainty estimation, temporal analysis of predictions, anomaly detection, and using model ensembles.
#5about 3 minutes
Using softmax uncertainty for traffic light detection
An uncertainty trigger aggregates softmax scores from a traffic light detection model to identify and record challenging images like false positives or distant objects.
#6about 4 minutes
Evaluating model improvements from selected data
Proper model evaluation requires testing against not just random data but also corner-case datasets to prevent performance regressions in specific scenarios.
#7about 5 minutes
Deploying data selection triggers to the vehicle fleet
An in-vehicle module called "Instinct" filters data streams in real-time, enabling continual learning by collecting data from new regions to expand a model's operational domain.
#8about 5 minutes
Building a universal data selection framework
A universal framework uses a plugin architecture to support various trigger types and treats perception functions as black boxes by using a framework-independent format like ONNX.
#9about 21 minutes
Overcoming challenges in automotive software deployment
Deploying data science code to vehicles requires bridging Python and C++, ensuring high code quality, and maintaining full traceability from requirements to artifacts.
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