AI Insights
Scientists create biological ‘artificial intelligence’ system

Australian scientists have successfully developed a research system that uses ‘biological artificial intelligence’ to design and evolve molecules with new or improved functions directly in mammal cells. The researchers said this system provides a powerful new tool that will help scientists develop more specific and effective research tools or gene therapies. Named PROTEUS (PROTein Evolution Using Selection) the system harnesses ‘directed evolution’, a lab technique that mimics the natural power of evolution. However, rather than taking years or decades, this method accelerates cycles of evolution and natural selection, allowing them to create molecules with new functions in weeks. This could have a direct impact on finding new, more effective medicines. For example, this system can be applied to improve gene editing technology like CRISPR to improve its effectiveness.
Funder: Declaration: Alexandar Cole, Christopher Denes, Daniel Hesselson and Greg Neely have filed a provisional patent application on this technology The remaining authors declare no competing interests.
Media release
From: The University of Sydney
Australian scientists have successfully developed a research system that uses ‘biological artificial intelligence’ to design and evolve molecules with new or improved functions directly in mammal cells. The researchers said this system provides a powerful new tool that will help scientists develop more specific and effective research tools or gene therapies.
Named PROTEUS (PROTein Evolution Using Selection) the system harnesses ‘directed evolution’, a lab technique that mimics the natural power of evolution. However, rather than taking years or decades, this method accelerates cycles of evolution and natural selection, allowing them to create molecules with new functions in weeks.
This could have a direct impact on finding new, more effective medicines. For example, this system can be applied to improve gene editing technology like CRISPR to improve its effectiveness.
“This means PROTEUS can be used to generate new molecules that are highly tuned to function in our bodies, and we can use it to make new medicine that would be otherwise difficult or impossible to make with current technologies.” says co-senior author Professor Greg Neely, Head of the Dr. John and Anne Chong Lab for Functional Genomics at the University of Sydney.
“What is new about our work is that directed evolution primarily work in bacterial cells, whereas PROTEUS can evolve molecules in mammal cells.”
PROTEUS can be given a problem with uncertain solution like when a user feeds in prompts for an artificial intelligence platform. For example the problem can be how to efficiently turn off a human disease gene inside our body.
PROTEUS then uses directed evolution to explore millions of possible sequences that have yet to exist naturally and finds molecules with properties that are highly adapted to solve the problem. This means PROTEUS can help find a solution that would normally take a human researcher years to solve if at all.
The researchers reported they used PROTEUS to develop improved versions of proteins that can be more easily regulated by drugs, and nanobodies (mini versions of antibodies) that can detect DNA damage, an important process that drives cancer. However, they said PROTEUS isn’t limited to this and can be used to enhance the function of most proteins and molecules.
The findings were reported in Nature Communications, with the research performed at the Charles Perkins Centre, the University of Sydney with collaborators from the Centenary Institute.
Unlocking molecular machine learning
The original development of directed evolution, performed first in bacteria, was recognised by the 2018 Noble Prize in Chemistry.
“The invention of directed evolution changed the trajectory of biochemistry. Now, with PROTEUS, we can program a mammalian cell with a genetic problem we aren’t sure how to solve. Letting our system run continuously means we can check in regularly to understand just how the system is solving our genetic challenge,” said lead researcher Dr Christopher Denes from the Charles Perkins Centre and School of Life and Environmental Sciences
The biggest challenge Dr Denes and the team faced was how to make sure the mammalian cell could withstand the multiple cycles of evolution and mutations and remain stable, without the system “cheating” and coming up with a trivial solution that doesn’t answer the intended question.
They found the key was using chimeric virus-like particles, a design consisting of taking the outside shell of one virus and combining it with the genes of another virus, which blocked the system from cheating.
The design used parts of two significantly different virus families creating the best of both worlds. The resulting system allowed the cells to process many different possible solutions in parallel, with improved solutions winning and becoming more dominant while incorrect solutions instead disappear.
“PROTEUS is stable, robust and has been validated by independent labs. We welcome other labs to adopt this technique. By applying PROTEUS, we hope to empower the development of a new generation of enzymes, molecular tools and therapeutics,” Dr Denes said.
“We made this system open source for the research community, and we are excited to see what people use it for, our goals will be to enhance gene-editing technologies, or to fine tune mRNA medicines for more potent and specific effects,” Professor Neely said.
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AI Insights
Albania Turns to Artificial Intelligence in EU-Pressured Reforms

TLDRs;
- Albania introduces Diella, an AI “minister,” to oversee public procurement amid EU pressure for anti-corruption reforms.
- Prime Minister Edi Rama says Diella will make tenders faster, more efficient, and corruption-free.
- Supporters see the AI as a step toward EU integration; critics dismiss it as unconstitutional and symbolic.
- Global examples show AI can help fight corruption but also risks bias and ineffective outcomes.
Albania has taken an unprecedented step in its long fight against corruption, introducing Diella, an artificial intelligence system tasked with overseeing public procurement.
Prime Minister Edi Rama unveiled the virtual minister as part of reforms tied to the nation’s bid for European Union membership.
Although not legally a minister under Albanian law, which requires cabinet members to be human citizens, Diella is being presented as the country’s first fully AI-powered figure in government. Her mission is clear, to bring transparency, efficiency, and accountability to one of Albania’s most corruption-prone areas.
Diella’s role in public procurement
Diella is no stranger to Albanian citizens. She first appeared as a virtual assistant on the government’s e-Albania platform, helping more than a million people navigate bureaucratic processes such as applying for official documents. Now, her responsibilities have expanded dramatically.
Rama explained that Diella’s core task will be supervising public tenders. “We want to ensure a system where public procurement is 100% free of corruption,” he said
By automating oversight and decision-making, Diella is expected to limit human interference in sensitive processes, while also making procurement faster and more transparent.
To develop this AI system, Albania is collaborating with both local and international experts, hoping to set a global precedent for AI governance.
🇦🇱 ALBANIA HIRES AI MINISTER TO FIGHT GOVERNMENT CORRUPTION
Albania has appointed Diella, an AI-powered virtual minister, to oversee public procurement and eliminate corruption from government tenders.
Prime Minister Edi Rama announced the move at his Socialist Party… https://t.co/fjDDSjsis0 pic.twitter.com/54wr4Bl5fp
— Mario Nawfal (@MarioNawfal) September 12, 2025
Mixed reactions at home and abroad
The announcement has stirred heated debate within Albania and beyond. Supporters hail the move as a chance to rebuild public trust, especially as the country faces mounting EU pressure to eliminate systemic graft.
Dr. Andi Hoxhaj of King’s College London notes that the EU has made anti-corruption reforms a central condition for accession. “There’s a lot at stake,” he said, suggesting that Diella could serve as a tool to accelerate reforms.
However, critics see the initiative as political theatre. Opposition leaders argue that branding Diella a “minister” is unconstitutional and distracts from deeper structural issues. Some worry that AI cannot fully address entrenched human networks of influence, while others raise concerns about accountability if an algorithm makes a faulty decision.
Lessons from global experiments with AI governance
Albania’s experiment comes amid a wave of governments testing artificial intelligence in public administration. Brazil’s Alice bot has reduced fraud-related financial losses by nearly 30% in procurement audits, while its Rosie bot, which monitored parliamentary expenditures, faced limitations in producing actionable evidence.
In Europe, the Digiwhist project has shown how big data can expose procurement fraud across dozens of jurisdictions. Yet, the Netherlands’ failed attempt at AI-led welfare fraud detection, widely criticized for algorithmic bias, highlights the risks of misuse.
These examples underscore both the potential and pitfalls of AI in governance. Albania now finds itself at a critical juncture: if implemented responsibly, Diella could strengthen transparency and accelerate EU integration.
Looking ahead
Prime Minister Rama acknowledges the symbolic dimension of Diella’s appointment but insists that serious intent lies beneath the theatrics. Beyond tackling procurement fraud, he believes the AI minister will put pressure on human officials to rethink outdated practices and embrace innovation.
“Ministers should take note,” Rama said with a smile. “AI could be coming for their jobs, too.”
As Albania balances hope, skepticism, and the weight of EU expectations, Diella’s debut represents both a technological leap and a political gamble. Whether she becomes a catalyst for real reform or remains a publicity stunt will depend on execution and public trust.
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AI Insights
UW lab spinoff focused on AI-enabled protein design cancer treatments

A Seattle startup company has inked a deal with Eli Lilly to develop AI powered cancer treatments. The team at Lila Biologics says they’re pioneering the translation of AI design proteins for therapeutic applications. Anindya Roy is the company’s co-founder and chief scientist. He told KUOW’s Paige Browning about their work.
This interview has been edited for clarity.
Paige Browning: Tell us about Lila Biologics. You spun out of UW Professor David Baker’s protein design lab. What’s Lila’s origin story?
Anindya Roy: I moved to David Baker’s group as a postdoctoral scientist, where I was working on some of the molecules that we are currently developing at Lila. It is an absolutely fantastic place to work. It was one of the coolest experiences of my career.
The Institute for Protein Design has a program called the Translational Investigator Program, which incubates promising technologies before it spins them out. I was part of that program for four or five years where I was generating some of the translational data. I met Jake Kraft, the CEO of Lila Biologics, at IPD, and we decided to team up in 2023 to spin out Lila.
You got a huge boost recently, a collaboration with Eli Lilly, one of the world’s largest pharmaceutical companies. What are you hoping to achieve together, and what’s your timeline?
The current collaboration is one year, and then there are other targets that we can work on. We are really excited to be partnering with Lilly, mainly because, as you mentioned, it is one of the top pharma companies in the US. We are excited to learn from each other, as well as leverage their amazing clinical developmental team to actually develop medicine for patients who don’t have that many options currently.
You are using artificial intelligence and machine learning to create cancer treatments. What exactly are you developing?
Lila Biologics is a pre-clinical stage company. We use machine learning to design novel drugs. We have mainly two different interests. One is to develop targeted radiotherapy to treat solid tumors, and the second is developing long acting injectables for lung and heart diseases. What I mean by long acting injectables is something that you take every three or six months.
Tell me a little bit more about the type of tumors that you are focusing on.
We have a wide variety of solid tumors that we are going for, lung cancer, ovarian cancer, and pancreatic cancer. That’s something that we are really focused on.
And tell me a little bit about the partnership you have with Eli Lilly. What are you creating there when it comes to cancers?
The collaboration is mainly centered around targeted radiotherapy for treating solid tumors, and it’s a multi-target research collaboration. Lila Biologics is responsible for giving Lilly a development candidate, which is basically an optimized drug molecule that is ready for FDA filing. Lilly will take over after we give them the optimized molecule for the clinical development and taking those molecules through clinical trials.
Why use AI for this? What edge is that giving you, or what opportunities does it have that human intelligence can’t accomplish?
In the last couple of years, artificial intelligence has fundamentally changed how we actually design proteins. For example, in last five years, the success rate of designing protein in the computer has gone from around one to 2% to 10% or more. With that unprecedented success rate, we do believe we can bring a lot of drugs needed for the patients, especially for cancer and cardiovascular diseases.
In general, drug design is a very, very difficult problem, and it has really, really high failure rates. So, for example, 90% of the drugs that actually enter the clinic actually fail, mainly due to you cannot make them in scale, or some toxicity issues. When we first started Lila, we thought we can take a holistic approach, where we can actually include some of this downstream risk in the computational design part. So, we asked, can machine learning help us designing proteins that scale well? Meaning, can we make them in large scale, or they’re stable on the benchtop for months, so we don’t face those costly downstream failures? And so far, it’s looking really promising.
When did you realize you might be able to use machine learning and AI to treat cancer?
When we actually looked at this problem, we were thinking whether we can actually increase the clinical success rate. That has been one of the main bottlenecks of drug design. As I mentioned before, 90% of the drugs that actually enter the clinic fail. So, we are really hoping we can actually change that in next five to 10 years, where you can actually confidently predict the clinical properties of a molecule. In other words, what I’m trying to say is that can you predict how a molecule will behave in a living system. And if we can do that confidently, that will increase the success rate of drug development. And we are really optimistic, and we’ll see how it turns out in the next five to 10 years.
Beyond treating hard to tackle tumors at Lila, are there other challenges you hope to take on in the future?
Yeah. It is a really difficult problem to predict how a molecule will behave in a living system. Meaning, we are really good at designing molecules that behave in a certain way, bind to a protein in a certain way, but the moment you try to put that molecule in a human, it’s really hard to predict how that molecule will behave, or whether the molecule is going to the place of the disease, or the tissue of the disease. And that is one of the main reasons there is a 90% failure in drug development.
I think the whole field is moving towards this predictability of biological properties of a molecule, where you can actually predict how this molecule will behave in a human system, or how long it will stay in the body. I think when the computational tools become good enough, when we can predict these properties really well, I think that’s where the fun begins, and we can actually generate molecules with a really high success rate in a really short period of time.
Listen to the interview by clicking the play button above.
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