Apr 26, 2026

BioConscience Co-Pilot

Sami Ur Rehman

BioConscience Co-Pilot is a proactive, point-of-design biosecurity tool designed as a browser extension for synthetic biologists and bio-entrepreneurs. As biotechnology shifts toward cloud labs and decentralized "desktop manufacturing," the gap between digital design and biological reality is narrowing, often leaving biosecurity as an afterthought handled only at the point of purchase.

This project addresses the critical need for real-time guardrails by integrating sequence screening directly into platforms like Benchling, SnapGene, and Cloud Lab consoles. Using privacy-preserving local hashing, the Co-Pilot silently monitors design environments and highlights "Sequences of Concern" in real-time, providing practitioners with immediate access to regulatory guidelines, ethical frameworks, and responsible disclosure templates. By transforming biosecurity from a backend hurdle into a proactive design partner, BioConscience empowers researchers in emerging bioeconomies to innovate safely—ensuring that as we gain the ability to "grow almost anything," we do so with a built-in digital conscience.

Reviewer's Comments

Reviewer's Comments

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Excellent concept - and something that could be extremely useful in preventing inadvertent creation of dangerous sequences. However, it would do little to prevent intentional misuse. If a functioning prototype could have been developed, it would have been a very good application; unfortunately execution could not be rated higher at this preliminary phase.

The specific approach proposed for integrating into the design phase is novel, but the solution needs to be explored much further. Beyond just the technical implementation which has it's own set of difficult problems, the integration of this tool will prove difficult.

1. Local, fast screening on devices with limited CPU and RAM like laptops is already challenging to build with sensitive enough detection. Embedding the screening into a browser-based extension creates further limitations that may make this approach infeasible

2. The distribution of the tool is complex – how will scientists or institutions discover the tool, what are their incentives for integrating it into existing workflows, and how will the results of the tool be used to reduce risk (e.g., is research reviewed by a biosafety expert, is the research paused or completely stopped)

3. While this tool could help reduce risk from error in legitimate institutions and scientific workflows, it will likely have no effect on nefarious misuse

I appreciated your whole of research cycle approach and it is an innovative approach to attempt to augment researcher capabilities from the outset. I cannot remember ever having heard of this approach before! It is a shame that you were unable to attempt a prototype but I do hope that you get the opportunity to attempt this at some point.

Cite this work

@misc {

title={

(HckPrj) BioConscience Co-Pilot

},

author={

Sami Ur Rehman

},

date={

4/26/26

},

organization={Apart Research},

note={Research submission to the research sprint hosted by Apart.},

howpublished={https://apartresearch.com}

}

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This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.