Most AI pipelines still optimize for throughput, not verifiability.
Traditional pipelines break at scale:
- Contributor identity isn’t tied to the data
- Quality is hard to quantify consistently
- Data lineage breaks across the pipeline
So you lose visibility into what’s shaping model behavior.
Perle restructures the intelligence layer:
Experts → structured tasks capturing reasoning
Evaluation → continuous scoring + consensus
Output → high-signal datasets with traceable lineage
This is what provenance-first data infrastructure looks like.