Cambridge, MA

LAMM: MIT Laboratory for Atomistic and Molecular Mechanics

Elite
@lamm-mit

PI: Markus J. Buehler, MIT Our research focus on developing a new paradigm that designs materials from the molecular scale, using MD, ML and other methods

PDF2Audio. Jupyter Notebook

1.4k

SciAgentsDiscovery. Python

624

GraphReasoning. Jupyter Notebook

299

PRefLexOR. Preference-based Recursive Language Modeling for Exploratory Optimization of Reasoning

244

AtomAgents. Forth

99

HyperGraphReasoning. HTML

85

MeLM. Jupyter Notebook

73

Graph-Aware-Transformers. Graph-Aware Attention for Adaptive Dynamics in Transformers

70

LifeGPT. Jupyter Notebook

69

ModeShapeDiffusionDesign. Jupyter Notebook

53

ProtAgents. Jupyter Notebook

51

MechAgents. Agent-based LLM modeling of mechanics problems

46

ProteinDiffusionGenerator. Generative method to design novel proteins using a diffusion model

43

FieldPredictorGAN. Deep learning model to predict complex stress and strain fields in hierarchical composites

31

LLM-finetuning. Python

31

HierarchicalDesign. A computational building block approach towards multiscale architected materials analysis and design with application to hierarchical metal metamaterials

28

ProteinMechanicsDiffusionDesign. Jupyter Notebook

27

Sparks. Multi-modal, multi-agent AI system capable of independently conducting research by formulating hypotheses, performing experiments, and adapting its strategy

22

MoleculeDiffusionTransformer. Molecular generation using diffusion models and autoregressive transformer models

21

FieldCompleter. GAN/convolutional and Transformer models to predict missing mechanical information given limited known data in part of the domain, and further characterize the composite geometries from the recovered mechanical fields for 2D and 3D complex microstructures

20

Cephalo-Phi-3-Vision-MoE. Python

17

MateriomicTransformer. Generative Pretrained Autoregressive Transformer Graph Neural Network applied to the Analysis and Discovery of Materials

16

atomic2field. Codes for translating structural defects to atomic properties

15

DynaGen. The DynaGen model allows the prediction of dynamical field data based on microstructure input. The model is exemplified to dynamic fracture problems in brittle materials.

12

Cephalo. Jupyter Notebook

12

PeptideMiner. Jupyter Notebook

12

ProteinSwarm. Python

12

LeafGAN. Jupyter Notebook

10

SilkomeGPT. Generative strategies for modeling, design and analysis of silk protein sequences for enhanced mechanical properties

9

GraphGeneration. GraphGeneration: Modeling and design of hierarchical bio-inspired de novo spider web structures using deep learning and additive manufacturing

9

DyFraNet. Jupyter Notebook

8

CollagenTransformer. CollagenTransformer: End-to-End Transformer Model to Predict Thermal Stability of Collagen Triple Helices Using an NLP Approach

8

BEAVER. Python

8

LLMsxPlants. Jupyter Notebook

6

SparksMatter. Python

6

graph-preflexor-grpo. Jupyter Notebook

5

MusicAnalysis. Music analysis tools especially around scales, defects and related topics

5

AttentionCrossTranslation. Unsupervised cross-domain translation via deep learning and adversarial attention neural networks and application to music-inspired protein designs

4

MolShapeGAN. Jupyter Notebook

4

SilkomeMD. Shell

3

marker. Convert PDF to markdown quickly with high accuracy

3

Falcon-Programming-Language. The Falcon Programming Language.

3

ProteinMechanicsGNN. Rapid Prediction of Protein Natural Frequencies using Graph Neural Networks

2

SpiderPDB. PDB files of spider silk structures

2

Cephalo-Idefics2-MoE. Python

2

MNNN. Python

2

InstantMesh. InstantMesh: Efficient 3D Mesh Generation from a Single Image with Sparse-view Large Reconstruction Models

1

FieldPerceiver. Field-to-field translation

1

GenerativeDiffusionImages. Jupyter Notebook

1

mergekit-Phi3-V. Tools for merging pretrained large language models.

1

fast-perceiver. Fast and memory efficient PyTorch implementation of the Perceiver with FlashAttention.

1

InterPLM. Discovering Interpretable Features in Protein Language Models via Sparse Autoencoders

1

GNN-collective-cell-dynamics. Python

1

imagen-pytorch. Implementation of Imagen, Google's Text-to-Image Neural Network, in Pytorch

1

HardnessMapDesign. Jupyter Notebook

1
55
Apply