Hybrid Technology

To speed up your workflows, our hybrid approach leverages the best of human intelligence and deep learning.
The platform takes on repetitive data labeling, data monitoring, and data extraction tasks and leaves
only the challenging cases to your team.

How It Works

Before

After

With our hybrid approach, tasks can be automated step-by-step. Only in special cases, where complex problems arise, the model passes the decision to humans. The feedback from these manual cases are stored and used to continuously improve the model - which ultimately reduces the human workload.

Use Cases

If you have a process for which accuracy is more important than full automation and where human-AI-interaction is possible, then our hybrid technology is the optimal solution.

There is a broad range of applications for our hybrid technology.
Here are examples including different data types that can be applied across industries.

Standard Workflow

Hybrid Workflow

We built a model that automatically scans nudity in media content and gets feedback from humans to keep learning and improving. These tedious tasks requires a large amount of time and classification may be subjective depending on the individual. Our hybrid platform completes most of the work and passes only a few cases to employees, substantially reducing their workload and improving the quality of their checks.

Standard Workflow

Hybrid Workflow


Another avenue where our hybrid technology comes in handy is categorising documents. Typically, insurance companies employ hundreds of workers to classify incoming documents and extract relevant information. With our hybrid technology, most of the work is done automatically and only a small number of cases are flagged to be examined by employees. Similar to other cases, our model learns from the employee's decision.

Standard Workflow

Hybrid Workflow


Text processing can be another tedious workflow, however our hybrid technology is able to identify and extract relevant texts in different forms such as documents or emails. Our trained models are able to convey any given dataset, present it in a comprehensible format with the appropriate texts and categorise them accordingly. Hence majority of the work is done and only a few outlier cases will be highlighted to be reviewed.

Increased Productivity

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Save time and let your team focus on complex tasks.

Increased Profitability

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Reduce labor costs and scale your operation.

Improved Accuracy

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Eliminate human errors and improve client confidence.

Easy Deployment

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Our platform seamlessly blends with your team and infrastructure.

Automatically Improving

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Our platform's performance improves continuously, no manual revision required.

Seamless Integration

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We can provide light-weight interface for you or integrate into your current workflows.

A Deep Dive into the Hybrid Framework

We are the proud recipients of the

BMBF Grant

The BMBF Grant has provided us the opportunity to boost the research and development of our Hybrid Approach and technology. Our specific infrastructure allows us to accelerate repetitive human workflows with an end-to-end human-AI hybrid approach, which augments human intelligence.

Recent Examples of our Work

For Image Processing

IDnow logo

IDnow verifies ID documents. In the past, they did this by live video authentication with human experts. Our solution checks the validity of holograms from video to prevent fraud. It contributes to IDnow’s new product line “AutoIdent” and decreased the costs per ID by 96% (from €2.5 to €0.1).

For Text Processing

IDnow logo

Previously, lawyers at DataGuard manually classify email texts into tickets to delegate them to the right person. In a bid to increase the efficiency of this manual workflow, we have supported this process with our hybrid technology. Our model converts the internal structure of the dataset into a convenient format (e.g. class with typed attributes). As a result, only the 3 most relevant ticket types for them to pick from are presented - decreasing time needed to go through the list of more than 15 ticket types before picking gout a suitable one.

For Image Processing

ProSieben logo

ProSiebenSat 1, the largest German media company, needs to scan all media content for nudity. With humans, they do it by sampling and risk incurring huge fines. We built a model that automatically scans nudity in all media content and gets feedback from humans to keep learning. Our ready-to-deploy model achieved an automation rate of 30% already in the first model. Based on the success of the first project, we continue a co-development of our hybrid deep learning platform.

Supercharge Your Processes

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