Close Menu
    DevStackTipsDevStackTips
    • Home
    • News & Updates
      1. Tech & Work
      2. View All

      The Ultimate Guide to Node.js Development Pricing for Enterprises

      July 29, 2025

      Stack Overflow: Developers’ trust in AI outputs is worsening year over year

      July 29, 2025

      Web Components: Working With Shadow DOM

      July 28, 2025

      Google’s new Opal tool allows users to create mini AI apps with no coding required

      July 28, 2025

      I replaced my Samsung OLED TV with this Sony Mini LED model for a week – and didn’t regret it

      July 29, 2025

      I tested the most popular robot mower on the market – and it was a $5,000 crash out

      July 29, 2025

      5 gadgets and accessories that leveled up my gaming setup (including a surprise console)

      July 29, 2025

      Why I’m patiently waiting for the Samsung Z Fold 8 next year (even though the foldable is already great)

      July 29, 2025
    • Development
      1. Algorithms & Data Structures
      2. Artificial Intelligence
      3. Back-End Development
      4. Databases
      5. Front-End Development
      6. Libraries & Frameworks
      7. Machine Learning
      8. Security
      9. Software Engineering
      10. Tools & IDEs
      11. Web Design
      12. Web Development
      13. Web Security
      14. Programming Languages
        • PHP
        • JavaScript
      Featured

      Performance Analysis with Laravel’s Measurement Tools

      July 29, 2025
      Recent

      Performance Analysis with Laravel’s Measurement Tools

      July 29, 2025

      Memoization and Function Caching with this PHP Package

      July 29, 2025

      Laracon US 2025 Livestream

      July 29, 2025
    • Operating Systems
      1. Windows
      2. Linux
      3. macOS
      Featured

      Microsoft mysteriously offered a Windows 11 upgrade to this unsupported Windows 10 PC — despite it failing to meet the “non-negotiable” TPM 2.0 requirement

      July 29, 2025
      Recent

      Microsoft mysteriously offered a Windows 11 upgrade to this unsupported Windows 10 PC — despite it failing to meet the “non-negotiable” TPM 2.0 requirement

      July 29, 2025

      With Windows 10’s fast-approaching demise, this Linux migration tool could let you ditch Microsoft’s ecosystem with your data and apps intact — but it’s limited to one distro

      July 29, 2025

      Windows 10 is 10 years old today — let’s look back at 10 controversial and defining moments in its history

      July 29, 2025
    • Learning Resources
      • Books
      • Cheatsheets
      • Tutorials & Guides
    Home»Development»Artificial Intelligence»Repurposing Protein Folding Models for Generation with Latent Diffusion

    Repurposing Protein Folding Models for Generation with Latent Diffusion

    July 29, 2025
    Repurposing Protein Folding Models for Generation with Latent Diffusion



    PLAID is a multimodal generative model that simultaneously generates protein 1D sequence and 3D structure, by learning the latent space of protein folding models.

    The awarding of the 2024 Nobel Prize to AlphaFold2 marks an important moment of recognition for the of AI role in biology. What comes next after protein folding?

    In PLAID, we develop a method that learns to sample from the latent space of protein folding models to generate new proteins. It can accept compositional function and organism prompts, and can be trained on sequence databases, which are 2-4 orders of magnitude larger than structure databases. Unlike many previous protein structure generative models, PLAID addresses the multimodal co-generation problem setting: simultaneously generating both discrete sequence and continuous all-atom structural coordinates.

    From structure prediction to real-world drug design

    Though recent works demonstrate promise for the ability of diffusion models to generate proteins, there still exist limitations of previous models that make them impractical for real-world applications, such as:

    • All-atom generation: Many existing generative models only produce the backbone atoms. To produce the all-atom structure and place the sidechain atoms, we need to know the sequence. This creates a multimodal generation problem that requires simultaneous generation of discrete and continuous modalities.
    • Organism specificity: Proteins biologics intended for human use need to be humanized, to avoid being destroyed by the human immune system.
    • Control specification: Drug discovery and putting it into the hands of patients is a complex process. How can we specify these complex constraints? For example, even after the biology is tackled, you might decide that tablets are easier to transport than vials, adding a new constraint on soluability.

    Generating “useful” proteins

    Simply generating proteins is not as useful as controlling the generation to get useful proteins. What might an interface for this look like?



    For inspiration, let’s consider how we’d control image generation via compositional textual prompts (example from Liu et al., 2022).

    In PLAID, we mirror this interface for control specification. The ultimate goal is to control generation entirely via a textual interface, but here we consider compositional constraints for two axes as a proof-of-concept: function and organism:



    Learning the function-structure-sequence connection. PLAID learns the tetrahedral cysteine-Fe2+/Fe3+ coordination pattern often found in metalloproteins, while maintaining high sequence-level diversity.

    Training using sequence-only training data

    Another important aspect of the PLAID model is that we only require sequences to train the generative model! Generative models learn the data distribution defined by its training data, and sequence databases are considerably larger than structural ones, since sequences are much cheaper to obtain than experimental structure.



    Learning from a larger and broader database. The cost of obtaining protein sequences is much lower than experimentally characterizing structure, and sequence databases are 2-4 orders of magnitude larger than structural ones.

    How does it work?

    The reason that we’re able to train the generative model to generate structure by only using sequence data is by learning a diffusion model over the latent space of a protein folding model. Then, during inference, after sampling from this latent space of valid proteins, we can take frozen weights from the protein folding model to decode structure. Here, we use ESMFold, a successor to the AlphaFold2 model which replaces a retrieval step with a protein language model.



    Our method. During training, only sequences are needed to obtain the embedding; during inference, we can decode sequence and structure from the sampled embedding. ❄️ denotes frozen weights.

    In this way, we can use structural understanding information in the weights of pretrained protein folding models for the protein design task. This is analogous to how vision-language-action (VLA) models in robotics make use of priors contained in vision-language models (VLMs) trained on internet-scale data to supply perception and reasoning and understanding information.

    Compressing the latent space of protein folding models

    A small wrinkle with directly applying this method is that the latent space of ESMFold – indeed, the latent space of many transformer-based models – requires a lot of regularization. This space is also very large, so learning this embedding ends up mapping to high-resolution image synthesis.

    To address this, we also propose CHEAP (Compressed Hourglass Embedding Adaptations of Proteins), where we learn a compression model for the joint embedding of protein sequence and structure.



    Investigating the latent space. (A) When we visualize the mean value for each channel, some channels exhibit “massive activations”. (B) If we start examining the top-3 activations compared to the median value (gray), we find that this happens over many layers. (C) Massive activations have also been observed for other transformer-based models.

    We find that this latent space is actually highly compressible. By doing a bit of mechanistic interpretability to better understand the base model that we are working with, we were able to create an all-atom protein generative model.

    What’s next?

    Though we examine the case of protein sequence and structure generation in this work, we can adapt this method to perform multi-modal generation for any modalities where there is a predictor from a more abundant modality to a less abundant one. As sequence-to-structure predictors for proteins are beginning to tackle increasingly complex systems (e.g. AlphaFold3 is also able to predict proteins in complex with nucleic acids and molecular ligands), it’s easy to imagine performing multimodal generation over more complex systems using the same method.
    If you are interested in collaborating to extend our method, or to test our method in the wet-lab, please reach out!

    Further links

    If you’ve found our papers useful in your research, please consider using the following BibTeX for PLAID and CHEAP:

    @article{lu2024generating,
      title={Generating All-Atom Protein Structure from Sequence-Only Training Data},
      author={Lu, Amy X and Yan, Wilson and Robinson, Sarah A and Yang, Kevin K and Gligorijevic, Vladimir and Cho, Kyunghyun and Bonneau, Richard and Abbeel, Pieter and Frey, Nathan},
      journal={bioRxiv},
      pages={2024--12},
      year={2024},
      publisher={Cold Spring Harbor Laboratory}
    }
    
    @article{lu2024tokenized,
      title={Tokenized and Continuous Embedding Compressions of Protein Sequence and Structure},
      author={Lu, Amy X and Yan, Wilson and Yang, Kevin K and Gligorijevic, Vladimir and Cho, Kyunghyun and Abbeel, Pieter and Bonneau, Richard and Frey, Nathan},
      journal={bioRxiv},
      pages={2024--08},
      year={2024},
      publisher={Cold Spring Harbor Laboratory}
    }
    

    You can also checkout our preprints (PLAID, CHEAP) and codebases (PLAID, CHEAP).

    Some bonus protein generation fun!



    Additional function-prompted generations with PLAID.




    Unconditional generation with PLAID.



    Transmembrane proteins have hydrophobic residues at the core, where it is embedded within the fatty acid layer. These are consistently observed when prompting PLAID with transmembrane protein keywords.



    Additional examples of active site recapitulation based on function keyword prompting.



    Comparing samples between PLAID and all-atom baselines. PLAID samples have better diversity and captures the beta-strand pattern that has been more difficult for protein generative models to learn.

    Acknowledgements

    Thanks to Nathan Frey for detailed feedback on this article, and to co-authors across BAIR, Genentech, Microsoft Research, and New York University: Wilson Yan, Sarah A. Robinson, Simon Kelow, Kevin K. Yang, Vladimir Gligorijevic, Kyunghyun Cho, Richard Bonneau, Pieter Abbeel, and Nathan C. Frey.

    Source: Read More 

    Facebook Twitter Reddit Email Copy Link
    Previous ArticleDefending against Prompt Injection with Structured Queries (StruQ) and Preference Optimization (SecAlign)
    Next Article Scaling Up Reinforcement Learning for Traffic Smoothing: A 100-AV Highway Deployment

    Related Posts

    Artificial Intelligence

    Scaling Up Reinforcement Learning for Traffic Smoothing: A 100-AV Highway Deployment

    July 29, 2025
    Defending against Prompt Injection with Structured Queries (StruQ) and Preference Optimization (SecAlign)
    Artificial Intelligence

    Defending against Prompt Injection with Structured Queries (StruQ) and Preference Optimization (SecAlign)

    July 29, 2025
    Leave A Reply Cancel Reply

    For security, use of Google's reCAPTCHA service is required which is subject to the Google Privacy Policy and Terms of Use.

    Continue Reading

    Steam Deck OLED falls out of stock in US & Canada due to “supply chain constraints” presumably triggered by tariffs — but the price won’t increase

    News & Updates

    CVE-2025-47859 – Apache HTTP Server Information Disclosure

    Common Vulnerabilities and Exposures (CVEs)

    The Return of the UX Generalist

    Web Development

    Quale distribuzione GNU/Linux è migliore per giocare?

    Linux

    Highlights

    CVE-2025-5173 – HumanSignal Label Studio ML Backend Deserialization Vulnerability

    May 26, 2025

    CVE ID : CVE-2025-5173

    Published : May 26, 2025, 7:15 a.m. | 1 hour, 56 minutes ago

    Description : A vulnerability has been found in HumanSignal label-studio-ml-backend up to 9fb7f4aa186612806af2becfb621f6ed8d9fdbaf and classified as problematic. Affected by this vulnerability is the function load of the file label-studio-ml-backend/label_studio_ml/examples/yolo/utils/neural_nets.py of the component PT File Handler. The manipulation of the argument path leads to deserialization. An attack has to be approached locally. This product takes the approach of rolling releases to provide continious delivery. Therefore, version details for affected and updated releases are not available.

    Severity: 5.3 | MEDIUM

    Visit the link for more details, such as CVSS details, affected products, timeline, and more…

    CVE-2025-5633 – Content Management System and News-Buzz SQL Injection Vulnerability

    June 5, 2025

    CVE-2025-48331 – Vanquish WooCommerce Orders & Customers Exporter Sensitive Data Exposure

    May 30, 2025

    I can’t believe this long-lost Halo level has finally been found — and you might be able to play it soon

    May 6, 2025
    © DevStackTips 2025. All rights reserved.
    • Contact
    • Privacy Policy

    Type above and press Enter to search. Press Esc to cancel.