Thanks. Will look into it!
Thanks. Will look into it!
𧬠Hiring Postdocs at @astar_gis !
We need Computer Scientists and Computational Biologists to develop novel algorithms for de novo assembly of cancer genomes or to help us reconstruct them.
Experience in sequence alignment/assembly algorithms or assembly of complex genomes required
Please RT! π
Join us this week for the RNA Salon at the Genome Institute of Singapore! Speakers from @boxiangliu.bsky.social (NUS) Dahai Luo and @msikic.bsky.social labs. Thanks for support by @rnasociety.bsky.social!
In accordance with Croatian laws, the funding is secured for up to six years.
Please share with strong candidates.
#AI #phd #RNA
The position offers close mentorship in a leading AI-for-RNA biology lab, access to substantial GPU resources, and full support to attend top international AI and ML conferences. There is also an opportunity to spend 1 to 2 years at
@astar-gis.bsky.social. 2/n
We are hiring a PhD student at the University of Zagreb, FER
for a project aimed at developing AI models to predict RNA structure and generate new RNA molecules.
We are looking for outstanding undergraduates in computer science, physics, or mathematics with demonstrated experience in AI. 1/n
7/ Interested?
π© Send CV + short research plan
Please RT & share π
#AI4Biology #AI4Genomics #ComputationalBiology #RNA #SingleCell #Hiring #PIPositions
6/ Who should apply?
Researchers with a strong computational background and a genuine interest in biologyβfrom foundations to translation.
5/ Strong ecosystem π€
β’ Close collaboration with Institute of Molecular and Cell Biology (IMCB)
β’ Stable, long-term research funding in Singapore
4/ At scale βοΈ
β’ Automated experimental platforms
β’ Dedicated GPU clusters
β’ Access to A*STAR & National Supercomputing Centre Singapore compute resources
3/ What youβll have access to π§¬
β’ DNA & direct RNA sequencing
β’ Single-cell & spatial transcriptomics
β’ Gene editing & RNA structure probing
2/ Our goal:
Build a place where AI scientists work tightly with experimentalists to create biologically verifiable models
1/ Weβre hiring PIs in AI Γ Biology
The @astar-gis.bsky.social Genome Institute of Singapore (GIS) is expanding its AI & Computation domain and recruiting junior & senior PIs.
7/
Yes, many routine tasks will disappear.
But for hard biology, we will still need:
1οΈβ£ judgment and taste for what problems matter
2οΈβ£ genuinely new wet-lab techniques
3οΈβ£ new AI ideas inspired by biology itself
6/
This is the next battlefieldβnot just for agentic AI, but for biology itself.
Hard biological problems demand more than automation.
5/
Tang ends with the most provocative idea:
AI agents integrated with robotic wet-lab systems.
Closed-loop: hypothesis β experiment β data β model β next experiment.
4/
My take: many of these issues are solvable within ~3 years.
The more interesting question is economic & organizational:
Will this space be dominated by a few large playersβor by open platforms where labs plug in their own protocols?
3/
Key obstacles remain:
β’ hallucinations that look correct but arenβt
β’ difficulty adapting agents to specific biological tasks
These are real, but largely technical problems.
2/
Core promise: AI agents can
β’ lower the barrier to complex, multistep analyses
β’ save time & boost efficiency
β’ enable standardized, reproducible workflows
This is not incrementalβitβs structural.
1/
In an excellent Nature Methods editorial, Lin Tang outlines the future of AI agents in biology.
www.nature.com/articles/s41...
Shall we check whether we have, e.g., acrocentric chromosomes in all of them? Also, we want to learn from genomes, so it is important to include whole-genome sequences in the dataset. Shall we then train on different genomes?
Happy to hear your experience :)
When you train your AI on genomes (ie. genome language models), what is the best split for train/validation/test? Most people split chromosomes, but is that the best way? 1/3
Iβm recruiting a postdoc to work on algorithms for cancer genome reconstruction. We have access to a rich set of tumour samples sequenced across multiple technologies. If interested, feel free to DM. Please share.
Weβre also hiring at @astar-gis.bsky.social (Singapore):
β’ PhD students
β’ Postdocs
β’ AI engineers
β’ Interns in AI & genomics
If youβd like to chat about joining us or collaborating, send me a DM.
Open to conversations on:
β’ #BioML for RNA structure prediction + optimisation
β’ Improving genome and cell foundation models
β’ AI-enabled genome assembly
3/4
Iβll also be giving a keynote on Dec 7 at @workshopmlsb.bsky.social (co-located with NeurIPS),
speaking about the next wave of RNA structure prediction.
π mlsb.io 2/4
On my way to @neuripsconf.bsky.social in San Diego βοΈ
Really excited that Joel Bonnie and Tin Vlasic will present on Dec 7 at the ML4LS workshop:
βFrom Base Pairs to Functions: Rich RNA Representations via Multimodal Language Modeling.β
π neurips.cc/virtual/2025... 1/4
One last point: AI conferences are now so massive that genuine discovery is getting lost. It might be time for a specialised AI-in-biology conference with a tighter scope.
Breakthroughs will come from biology-native AI architectures. But we should also unapologetically borrow from other fieldsβcopy β adapt β innovate. 11/12
And we have to protect room for weird, unconventional early-stage ideas. Biology rewards creativity, not just incremental optimisations. 10/12