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--- |
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base_model: |
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- genbio-ai/AIDO.Protein-16B |
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license: other |
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--- |
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# Protein Inverse Folding |
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We finetune the [AIDO.Protein-16B](https://huggingface.co/genbio-ai/AIDO.Protein-16B) model with LoRA on the [CATH 4.2](https://pubmed.ncbi.nlm.nih.gov/9309224/) benmark dataset. We use the same train, validation, and test splits used by the previous studies, such as [LM-Design](https://arxiv.org/abs/2302.01649), and [DPLM](https://arxiv.org/abs/2402.18567). Current version of ModelGenerator contains the inference pipeline for protein inverse folding. Experimental pipeline on other datasets (both training and testing) will be included in the future. |
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#### Setup: |
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Install [ModelGenerator](https://github.com/genbio-ai/modelgenerator). |
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- It is **required** to use [docker](https://www.docker.com/101-tutorial/) to run our inverse folding pipeline. |
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- Please set up a docker image using our provided [Dockerfile](https://github.com/genbio-ai/ModelGenerator/blob/main/Dockerfile) and run the inverse folding inference from within the docker container. |
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- Here is an example bash script to set up and access a docker container: |
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``` |
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# clone the ModelGenerator repository |
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git clone https://github.com/genbio-ai/ModelGenerator.git |
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# cd to "ModelGenerator" folder where you should find the "Dockerfile" |
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cd ModelGenerator |
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# create a docker image |
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docker build -t aido . |
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# create a local folder as ModelGenerator's data directory |
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mkdir -p $HOME/mgen_data |
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# run a container |
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docker run -d --runtime=nvidia -it -v "$(pwd):/workspace" -v "$HOME/mgen_data:/mgen_data" aido /bin/bash |
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# find the container ID |
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docker ps # this will print the running containers and their IDs |
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# execute the container with ID=<container_id> |
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docker exec -it <container_id> /bin/bash # now you should be inside the docker container |
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# test if you can access the nvidia GPUs |
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nvidia-smi # this should print the GPUs' details |
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``` |
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- Execute the following steps from **within** the docker container you just created. |
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#### Download model checkpoints: |
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- Download all the 15 model checkpoint chunks (named as `chunk_<chunk_ID>.bin`) from [here](https://huggingface.co/genbio-ai/AIDO.ProteinIF-16B/tree/main). Place them inside the directory `${MGEN_DATA_DIR}/modelgenerator/huggingface_models/protein_inv_fold/AIDO.ProteinIF-16B/model_chunks`. |
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**Alternatively**, you can simply run the following script to do this (Note: this script uses the [wget](https://www.gnu.org/software/wget/) tool): |
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``` |
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mkdir -p ${MGEN_DATA_DIR}/modelgenerator/huggingface_models/protein_inv_fold/AIDO.ProteinIF-16B/model_chunks |
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bash download_model_chunks.sh ${MGEN_DATA_DIR}/modelgenerator/huggingface_models/protein_inv_fold/AIDO.ProteinIF-16B/model_chunks |
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``` |
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#### Download data: |
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- Download the preprocessed CATH 4.2 dataset from [here](https://huggingface.co/datasets/genbio-ai/protein-inverse-folding/tree/main/cath-4.2). You should find two files named [chain_set_map.pkl](https://huggingface.co/datasets/genbio-ai/protein-inverse-folding/blob/main/cath-4.2/chain_set_map.pkl) and [chain_set_splits.json](https://huggingface.co/datasets/genbio-ai/protein-inverse-folding/blob/main/cath-4.2/chain_set_splits.json). Place them inside the directory `${MGEN_DATA_DIR}/modelgenerator/datasets/protein_inv_fold/cath_4.2/`. (Note that it was originally preprocessed by [Generative Models for Graph-Based Protein Design (Ingraham et al, NeurIPS'19)](https://papers.nips.cc/paper_files/paper/2019/file/f3a4ff4839c56a5f460c88cce3666a2b-Paper.pdf), and we further preprocessed it to suit our pipeline.) |
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**Alternatively**, you can do it by simply running the following script: |
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``` |
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mkdir -p ${MGEN_DATA_DIR}/modelgenerator/datasets/protein_inv_fold/cath_4.2/ |
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wget -P ${MGEN_DATA_DIR}/modelgenerator/datasets/protein_inv_fold/cath_4.2/ https://huggingface.co/datasets/genbio-ai/protein-inverse-folding/resolve/main/cath-4.2/chain_set_map.pkl |
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wget -P ${MGEN_DATA_DIR}/modelgenerator/datasets/protein_inv_fold/cath_4.2/ https://huggingface.co/datasets/genbio-ai/protein-inverse-folding/resolve/main/cath-4.2/chain_set_splits.json |
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``` |
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#### Run inference: |
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- Then run the bash script for inference: |
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``` |
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bash prot_inverse_folding.sh |
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``` |
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- **Note:** Multi-GPU inference for inverse folding is not currently supported and will be included in the future. |
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#### Outputs: |
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- The evaluation score will be printed on the console. |
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- The generated sequences will be stored the folder `proteinIF_outputs/`. There will be two output files: |
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- **`./proteinIF_outputs/designed_sequences.pkl`**: This file will contain the raw token (amino-acid) IDs of the ground truth sequences (`"true_seq"`) and predicted sequences by our method (`"pred_seq"`), stored as numpy arrays. An example: |
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``` |
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{ |
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'true_seq': [ |
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array([[ 4, 8, 4, 3, 12, 5, 2, 11, 16, 15, 5, 1, 11, ...]]), ... |
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], |
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'pred_seq': [ |
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array([[ 8, 2, 4, 3, 10, 6, 2, 11, 16, 15, 6, 1, 11, ...]]), ... |
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] |
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} |
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``` |
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- **`./proteinIF_outputs/results_acc_<median_accuracy>.txt`** (where median accuracy is the median accuracy calculated over all the test samples): |
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- Here, for each protein in the test set, we have three lines of information: |
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- Line1: Identity of the protein (as '`name=<PDB_ID>.<CHAIN_ID>`'), length of the squence (as '`L=<length_of_sequence>`'), and the recovery rate/accuracy for that protein sequence (as '`Recovery=<recovery_rate_of_sequence>`') |
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- Line2: *Single-letter representation* of amino-acids of the ground truth sequences (as `true:<sequence_of_amino_acids>`) |
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- Line3: *Single-letter representation* of amino-acids of the predicted sequences by our method (as `pred:<sequence_of_amino_acids>`) |
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- An example file content: |
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``` |
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>name=3fkf.A | L=141 | Recovery=0.5957446694374084 |
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true:VTVGKSAPYFSLPNEKGEKLSRSAERFRNRYLLLNFWASWCDPQPEANAELKRLNKEYKKNKNFAMLGISLDIDREAWETAIKKDTLSWDQVCDFTGLSSETAKQYAILTLPTNILLSPTGKILARDIQGEALTGKLKELL |
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pred:TAVGDEAPYFELPDLEGKKLSLDSEEFKNKYLLLDFWASWCLPCREEIAELKELYRRFAKNKKFAILGVSADTDKEAWLKAVKEDNLRWTQVSDFKGWDSEVFKNYNVQSLPENILLSPEGKILARGIRGEALRNKLKELL |
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>name=2d9e.A | L=121 | Recovery=0.7685950398445129 |
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true:GSSGSSGFLILLRKTLEQLQEKDTGNIFSEPVPLSEVPDYLDHIKKPMDFFTMKQNLEAYRYLNFDDFEEDFNLIVSNCLKYNAKDTIFYRAAVRLREQGGAVLRQARRQAEKMGSGPSSG |
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pred:GSSGSSGRLTLLRETLEQLQERDTGWVFSEPVPLSEVPDYLDVIDHPMDFSTMRRKLEAHRYLSFDEFERDFNLIVENCRKYNAKDTVFYRAAVRLQAQGGAILRKARRDVESLGSGPSSG |
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``` |
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