Advancing Generative AI: Seamless ACE++ and UNO Implementation

David Bressler
May 9, 2025

Eventum helped improve a leading generative AI company's creativity platform, used by professional studios to create visual media. Customers can train models on their intellectual property, control every aspect of the production process, and maintain complete ownership of their data.

Challenge

The client experienced an urgent need for a highly skilled machine learning engineer to rapidly integrate crucial new functionalities. The tasks involved advanced subject-driven image generation through ACE++, and implementation of the sophisticated UNO algorithm, both essential to elevate their generative AI platform. Quickly securing expert talent was critical to maintain innovation pace and ensure competitive advantage.

Solution

Eventum swiftly identified and placed a seasoned ML engineer with deep expertise in generative AI and seamless model integration. The engineer dove into the existing architecture, exploring open-source repositories and relevant research materials on ACE++ and UNO. They efficiently executed the integration of ACE++, enabling advanced subject-driven image generation from a single reference image. The engineer also successfully integrated the UNO algorithm to enhance controllability of in-context image generation.

How Eventum improved the genAI platform

Implementation Highlights

Repository Analysis and Strategic Planning: The engineer quickly assessed the open-source platform, pinpointing optimal integration strategies for new capabilities.
Enhanced Functionality with ACE++: Integrated ACE++ effectively, dramatically enhancing image generation and editing capacities.
UNO Algorithm Integration: Successfully implemented the UNO algorithm, establishing high consistency while ensuring controllability in both single-subject and multi-subject driven image generation.

Results

Through Eventum’s targeted placement, the engineer successfully :

Rapidly deployed advanced capabilities (ACE++, UNO), strengthening the client’s competitive market position.

Enhanced platform flexibility, significantly improving user experience and operational efficiency.

Integrated functionalities in a modular manner, ensuring compatibility and ease of use across the existing infrastructure.

Conclusion

Eventum's rapid and strategic response filled the urgent need for high-caliber ML expertise. The successful integration of advanced generative AI functionalities underscores Eventum’s commitment and capability in sourcing specialized technical talent for ambitious and strategic AI projects.

Save up to 50% on hiring World-class talent with us

Hire Elite Talent

More Resources

AI Training | DeepCell

50% model error reduction

Learn how Eventum helped DeepCell reduce manual oversight by 90%, provided R&D roadmapping & mentorship of ML team

Read the Case Study on DeepCell
AI Training | Sanas

Reduced manual oversight by 90%

Discover how Eventum helped Sanas achieve a 50% team efficiency gain and reduced model errors by 50%

Read the Case Study on Sanas
White Paper | Building a Team

Strategies for Hiring Elite ML Teams

Learn how to hire your AI team, ranging from role types & expectations, matching positions to project requirements, and interview structures.

Read the White Paper
David Bressler, PhD

Eventum’s Guide to Mastering RAG: Chunking Done Right

David Bressler, PhD

Top 10 Tips for Cutting Costs in ML Systems

Building out an ML product often feels like a whirlwind of experiments, training jobs, and quick iterations. Before you know it, you’re juggling multiple GPUs or expensive cloud instances—sometimes running idly. Suddenly, an astronomical bill arrives, pushing cost optimization to the top of your priority list.At Eventum, we’ve seen this firsthand. We helped Sanas optimize their GPU usage, implement modern MLOps practices, and drastically cut infrastructure costs—all without compromising on product innovation. Here we’ve gathered ten practical ways to keep your ML systems lean, efficient, and scalable right from the start.‍

David Bressler, PhD

Three Breakthroughs That Shaped the Modern Transformer Architecture