SOTAVerified

Protein Design

Formally, given the design requirements of users, models are required to generate protein amino acid sequences that align with those requirements.

Papers

Showing 141150 of 175 papers

TitleStatusHype
Unsupervisedly Prompting AlphaFold2 for Few-Shot Learning of Accurate Folding Landscape and Protein Structure PredictionCode0
TERMinator: A Neural Framework for Structure-Based Protein Design using Tertiary Repeating Motifs0
Gate-based Quantum Computing for Protein DesignCode0
Controllable Protein Design with Language Models0
Benchmarking deep generative models for diverse antibody sequence design0
Fast fixed-backbone protein sequence and rotamer design0
Design in the Dark: Learning Deep Generative Models for De Novo Protein Design0
PDBench: Evaluating Computational Methods for Protein Sequence Design0
Deep Generative Modeling for Protein Design0
ProDCoNN-server: a web server for protein sequence prediction and design from a three-dimensional structureCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1GraphTransPerplexity6.63Unverified
2StructGNNPerplexity6.4Unverified
3AlphaDesignPerplexity6.3Unverified
4GCAPerplexity6.05Unverified
5GVPPerplexity5.36Unverified
6ProteinMPNNPerplexity4.61Unverified
7PiFoldPerplexity4.55Unverified
8Knowledge-DesignPerplexity3.46Unverified
#ModelMetricClaimedVerifiedStatus
1ESM-IFPerplexity6.44Unverified
2GVP-largePerplexity6.17Unverified