Built by Deep Learning Engineers, for Deep Learning Engineers

We faced these same problems and created Deci to help. Our proprietary Automated Neural Architecture Construction
(AutoNAC) engine helps deep learning engineers in the development and optimization process,
so you can automatically create state-of-the-art models that will run faster and more
accurately on whatever production hardware you’ve selected.

DEVELOPMENT
Data Pre-processing &<br />
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Data Pre-processing &
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Model Architecture<br />
Selection

Model Architecture
Selection

Hyperparameter<br />
Selection

Hyperparameter
Selection

Model<br />
Training

Model
Training

Model Optimization<br />
for Inference

Model Optimization
for Inference

PRODUCTION
Deployment

Deployment

Serving

Serving

Monitoring<br />
& Explainability

Monitoring
& Explainability

Automatic Optimization

reduction<br />
in cost-to-serve

reduction
in cost-to-serve

of models to inference<br />
hardware

of models to inference
hardware

latency reduction,<br />
without compromising<br />
accuracy

latency reduction,
without compromising
accuracy

use within your<br />
current CI/CD

use within your
current CI/CD

Automatic Development (AutoDL)

Automatic Development (AutoDL)

  • AutoML for deep learning
  • Data augmentation and enrichment
  • Automatic architecture selection
  • Automatic training with hyperparameter adaptation
One-click cloud deployment

One-click cloud deployment

  • Deploy deep learning models to any cloud environment
  • Easy containerization
  • Support for AWS, Azure, GCP
Preserve Privacy & Security

Preserve Privacy & Security

  • Self-service platform
  • Your data and model never leave your premises
  • Process is 100% automatic, no human data manipulation whatsoever
Continuously Monitor <br> Model Quality & Explainability

Continuously Monitor
Model Quality & Explainability

  • Sends real-time alerts for concept drift and out-of-distribution
  • Recommends when you can migrate to a more cost-effective AI accelerator
  • Provides feedback-loop from production to development

Deep Learning Engineers Thrive with Deci

Any Model/DL Framework
TensorFlow, Keras, Pytorch, Caffe, ONNX, MXNet...

Any Task
Vision, NLP, Voice, Tabular Data...

Any Hardware
GPU, CPU, TPU, FPGA, ASIC...

Any Environment
Cloud, On-prem or Edge

Any Workload
Real-time or Batch Processing