Determine which inputs need complex, deep analysis, and reserve compute-time for those inputs.
Drop-in Model Optimization and Replacement. No Retraining. No Accuracy Loss. No New Hardware.
Every inference has a cost in dollars, based on the number of computations that need to be executed.
For text classification, inference costs $1/1M inferences. At scale, with 1B inferences / day, this costs $365k / year.
moco analyzes model behavior and automatically routes easy predictions through cheaper decision paths. This increases computational capacity for the difficult cases, results in throughput improvements, or latency reductions or can be accepted as cost-savings.
The bottom line: moco reduces the cost per inference from $1 / 1M inferences to $0.5 - $0.8 / 1M inferences, saving 20-50% of compute-time related costs, in this case $72,000-$183,000 a year.
moco reduces unnecessary inference computation in both real-time and batched machine learning systems operating at production scale.
The largest infrastructure savings occur in systems processing massive request volumes, expensive transformer inference, or strict latency constraints.
Transformer moderation systems processing billions of events per day.
Large-scale indexing and retrieval pipelines operating on billions of assets.
Real-Time and Batched Fraud Detection is latency constrained and compute-constrained respectively.
moco supports embedded inference pipelines where compute and power are constrained.
Edge inference systems benefit from lower power consumption and reduced average computation.
Latency-sensitive systems benefit from avoiding unnecessary expensive computation.
Large offline inference jobs directly benefit from lower compute-time per prediction.
I will analyze historical inference logs, model outputs, or representative datasets to identify unnecessary model computation and estimate potential savings.
The audit evaluates: