Overview
This service delivers a production-ready computer vision system designed to operate continuously in real-world environments.
The deployment includes data ingestion, dataset management, model training, inference pipelines, monitoring, and alerting workflows, all structured as a unified system. This ensures performance can be maintained and improved over time as conditions change.
Unlike traditional efforts that stop at model delivery, this service focuses on operational capability. Systems are built to handle variability in environment, lighting, distance, and scene complexity, and are designed for long-term use rather than one-time performance.
The base package supports focused deployments with clearly defined scope. Expanded deployments enable multi-source ingestion, hybrid cloud and edge environments, and advanced lifecycle automation.
AWS Architecture and Lifecycle Operations This service is delivered within AWS-hosted compute environments (including Amazon EC2) and uses Amazon S3 for storage of datasets, model artifacts, and operational outputs. Model lifecycle workflows are implemented based on customer requirements and may use AWS-native services (such as Amazon SageMaker and related AWS messaging/monitoring services) or custom pipeline frameworks deployed within AWS infrastructure. This approach supports flexible integration with existing MLOps processes while maintaining AWS-compatible deployment and operations.
Highlights
- Deploy a complete vision system from ingestion to inference with no workflow gaps
- Maintain performance over time with monitoring and alerting workflows
- Deliver operational capability designed for real-world environments
Details
Introducing multi-product solutions
You can now purchase comprehensive solutions tailored to use cases and industries.
Pricing
Custom pricing options
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Support Email: support@iriscomputervision.ai