Testing and quality assurance tasks take a significant amount of time. According to experts and academics, testing consumes 20 to 30% of total development time and contributes to 40 to 50% of the entire project cost.
Moreover, data science experts and practitioners commonly lament the absence of teams to assist them in testing ready-for-production data science systems, developing evaluation criteria, and creating report templates. This paves the door to testing as a full-fledged career path in data science.
Machine Learning (ML) testing is an operation that processes data, identifies schemes and patterns, and evaluates tests without the assistance of humans.
Metrics used in standard software testing include lines of code (LOC), software lines of code (SLOC), and McCabe complexity. However, setting measurements for penetration for ML model parameters becomes more difficult.
In this situation, the only viable option is to maintain model logits and capabilities for all tests conducted, as well as quantify the region each test covers around these output layers. There must be complete transparency between behavioural test cases and the system logit and capabilities.
Nonetheless, an industry-wide standard in this aspect is lacking. And because testing for ML systems is still in its infancy, professionals aren't adopting test coverage seriously.
Machine Learning (ML) models created by data scientists are a tiny component of an enterprise production distribution pipeline. To implement ML models, data scientists must work closely with a range of other divisions, like business, engineering, and operations.
A good testing team must verify the model's findings to guarantee that it works as expected. The model will change when a new customer wants, revisions, and executions are received, therefore the more the organization improves the model, the finer the results will appear. The process of refining and improving continues depending on the requirement of the consumer.
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