Course

Vision

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AI & COMPUTER VISION

Accuracy

You Can Rely On

We build a full cycle of computer vision products:

from data generation and model training to

integration into business processes

LEARN MOREOUR SERVICES

AI & COMPUTER VISION

Accuracy
You Can Rely On

We build a full cycle of computer vision products: from data generation and model training to integration into business processes

Services

Our Services

Full-cycle computer vision solutions

Synthetic Data

Generation of artificial datasets from synthetic data. Build full datasets from a pair of object images or from openly available sources. Curriculum-learning sets. Automatic annotation and generation within a limited time.

Domain Adaptation

Adapting models to new conditions without full retraining. Transforming or augmenting existing datasets for specific cameras, conditions, time of day and season.

Model Development & Training

Developing models for your task and hardware, training, validation and performance evaluation. ONNX and TensorRT support.

CV Solutions

We work with complete transparency and provide real-time updates through convenient dashboards and a dedicated team.

In-house MLOps Infrastructure

CI/CD for ML, model versioning, performance monitoring. Option to train on our own compute.

Consulting & Audit

Feasibility assessment, model and dataset audit, pipeline optimization and technology stack selection.

About us

Why Course Vision?

Our strength is speed.

In today’s environment, the one who adapts to changing surroundings faster wins. For computer vision, any change in the data demands a long and complex process of preparing new datasets and committing significant resources to analysis and annotation. Creating a new dataset takes weeks, months. We create new datasets and adapt existing ones in hours.

Process

How We Work

01

TASK ANALYSIS

Feasibility assessment, defining success metrics and technical requirements

02

DATA & DATASETS

Synthetic data generation or real data preparation with automatic annotation

03

MODEL DEVELOPMENT

Architecture selection, training, optimization and validation on test data

04

INTEGRATION

Production deployment, monitoring setup and continuous improvement