Reduce cost/joules per inference with no accuracy loss, no re-training and no new hardware. Just math.
moco automatically converts machine learning classifiers into validated cascaded systems by analyzing the dataset and model activations.
moco analyzes the dataset to find inputs (logs, transactions, events) that are easy-to-classify and can be classified with simpler models than the original model.
moco reduces the FLOPS per inference, saving your system expensive compute time, and reduces the number of GPUs you need to keep turned on.
20-50% more computationally-efficient models in high-throughput settings reduces GPU costs by 20-50% or extends battery/hardware life.
moco exposes a variety of API endpoints that optimize ML models.
These endpoints return routed systems that output the same predictions as the original model.
Teams can "plug-and-play" these routed systems into their pipelines.
A preview of the API docs is here.
The product is available for alpha testing.
moco is a post-training optimization tool that improves classification efficiency. Given a calibration dataset and a chosen representation of the data, moco identifies low-complexity rules that simplify the decision problem itself by decomposing the decision into easier-to-solve subproblems.
Can be applied in combination with quantization/pruned models. Quantization & pruning alike risk accuracy degradation.
Knowledge Distillation occurs at training time, and requires significant development cost to optimize the model for deployment, meeting both latency & accuracy targets.
Cascaded systems are great! Why evaluate a complex ML model if a simple rule will suffice? moco scales this idea and automatically generates these rules, and builds a routed system automatically.
| Task | Dataset | Base Model | Fine Tuned Model | Compute Reduction | Accuracy Change |
|---|---|---|---|---|---|
| Image Classification | CIFAR-10 | ResNet-18 | HF Model finetuned on CIFAR-10 | 34.6% | -0.3% |
| Text Classification | IMDB Reviews | BERT | Fine-Tuned TinyBERT | 21.5% | +0.1% |
Transaction risk monitoring systems make real-time decisions (100ms) to avoid business losses because of fraudulent activity, but suffer from immense operational costs due to false positives.
High-volume threat detection systems (phishing, malware, intrusion detection) must scan massive streams of events. There is a cost tradeoff between analyzing data at scale and accuracy.
Perception systems must process a large volume of continously generated sensor data under strict real-time constraints. Critical decisions rely on perception systems which constantly scan their environment for pedestrians, stoplights and obstacles.
Classifiers are commonplace in chatbots to run customer sentiment analysis, intent classification for proper routing, topic tagging, and guardrails that protect the system from out-of-bounds user queries.
Evaluation Steps