README.md 17.5 KB
Newer Older
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
1
![header ](imgs/of_banner.png)
2

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
3
4
# OpenFold

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
5
A faithful but trainable PyTorch reproduction of DeepMind's 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
6
7
[AlphaFold 2](https://github.com/deepmind/alphafold).

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
8
9
10
## Features

OpenFold carefully reproduces (almost) all of the features of the original open
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
11
source inference code (v2.0.1). The sole exception is model ensembling, which 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
12
fared poorly in DeepMind's own ablation testing and is being phased out in future
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
13
DeepMind experiments. It is omitted here for the sake of reducing clutter. In 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
14
cases where the *Nature* paper differs from the source, we always defer to the 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
15
latter.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
16

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
17
18
19
20
21
22
OpenFold is trainable in full precision or `bfloat16` with or without DeepSpeed, 
and we've trained it from scratch, matching the performance of the original. 
We've publicly released model weights and our training data &mdash some 400,000 
MSAs &mdash under a permissive license. Model weights are available from 
scripts in this repository while the MSAs are hosted by the 
[Registry of Open Data on AWS (RODA)](registry.opendata.aws/openfold). 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
23

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
24
25
26
OpenFold is built to support inference with AlphaFold's official parameters. 
Try it out for yourself with our 
[Colab notebook](https://colab.research.google.com/github/aqlaboratory/openfold/blob/main/notebooks/OpenFold.ipynb).
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
27

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
28
Additionally, OpenFold has the following advantages over the reference implementation:
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
29

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
30
- **Faster inference** on GPU for chains with < 1500 residues.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
31
- **Inference on extremely long chains**, made possible by our implementation of low-memory attention 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
32
([Rabe & Staats 2021](https://arxiv.org/pdf/2112.05682.pdf)). OpenFold can predict the structures of
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
33
  sequences with more than 4000 residues on a single A100, and even longer ones with CPU offloading.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
34
35
- **Custom CUDA attention kernels** modified from [FastFold](https://github.com/hpcaitech/FastFold)'s 
kernels support in-place attention during inference and training. They use 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
36
37
4x and 5x less GPU memory than equivalent FastFold and stock PyTorch 
implementations, respectively.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
38
- **Efficient alignment scripts** using the original AlphaFold HHblits/JackHMMER pipeline or [ColabFold](https://github.com/sokrypton/ColabFold)'s, which uses the faster MMseqs2 instead. We've used them to generate millions of alignments.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
39

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
40
## Installation (Linux)
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
41

42
43
44
45
All Python dependencies are specified in `environment.yml`. For producing sequence 
alignments, you'll also need `kalign`, the [HH-suite](https://github.com/soedinglab/hh-suite), 
and one of {`jackhmmer`, [MMseqs2](https://github.com/soedinglab/mmseqs2) (nightly build)} 
installed on on your system. Finally, some download scripts require `aria2c`.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
46

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
47
For convenience, we provide a script that installs Miniconda locally, creates a 
48
49
`conda` virtual environment, installs all Python dependencies, and downloads
useful resources (including DeepMind's pretrained parameters). Run:
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
50
51

```bash
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
52
53
54
scripts/install_third_party_dependencies.sh
```

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
55
To activate the environment, run:
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
56
57

```bash
sft-managed's avatar
sft-managed committed
58
source scripts/activate_conda_env.sh
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
59
60
```

61
To deactivate it, run:
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
62
63

```bash
sft-managed's avatar
sft-managed committed
64
source scripts/deactivate_conda_env.sh
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
65
66
```

67
68
69
70
71
72
With the environment active, compile OpenFold's CUDA kernels with

```bash
python3 setup.py install
```

73
74
75
76
77
78
To install the HH-suite to `/usr/bin`, run

```bash
# scripts/install_hh_suite.sh
```

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
79
## Usage
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
80

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
81
To download the databases used to train OpenFold and AlphaFold run:
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
82
83

```bash
Eric Ma's avatar
Eric Ma committed
84
bash scripts/download_data.sh data/
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
85
86
```

Gustaf's avatar
Gustaf committed
87
88
89
You have two choices for downloading protein databases, depending on whether 
you want to use DeepMind's MSA generation pipeline (w/ HMMR & HHblits) or 
[ColabFold](https://github.com/sokrypton/ColabFold)'s, which uses the faster
90
MMseqs2 instead. For the former, run:
Gustaf's avatar
Gustaf committed
91
92

```bash
Eric Ma's avatar
Eric Ma committed
93
bash scripts/download_alphafold_dbs.sh data/
Gustaf's avatar
Gustaf committed
94
95
96
97
98
```

For the latter, run:

```bash
Eric Ma's avatar
Eric Ma committed
99
100
bash scripts/download_mmseqs_dbs.sh data/    # downloads .tar files
bash scripts/prep_mmseqs_dbs.sh data/        # unpacks and preps the databases
Gustaf's avatar
Gustaf committed
101
102
103
104
105
106
```

Make sure to run the latter command on the machine that will be used for MSA
generation (the script estimates how the precomputed database index used by
MMseqs2 should be split according to the memory available on the system).

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
107
Alternatively, you can use raw MSAs from our aforementioned MSA database or
108
[ProteinNet](https://github.com/aqlaboratory/proteinnet). After downloading
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
109
110
111
112
113
the latter database, use `scripts/prep_proteinnet_msas.py` to convert the data 
into a format recognized by the OpenFold parser. The resulting directory 
becomes the `alignment_dir` used in subsequent steps. Use 
`scripts/unpack_proteinnet.py` to extract `.core` files from ProteinNet text 
files.
114

115
116
117
For both inference and training, the model's hyperparameters can be tuned from
`openfold/config.py`. Of course, if you plan to perform inference using 
DeepMind's pretrained parameters, you will only be able to make changes that
118
119
do not affect the shapes of model parameters. For an example of initializing
the model, consult `run_pretrained_openfold.py`.
120

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
121
### Inference
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
122

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
123
124
To run inference on a sequence or multiple sequences using a set of DeepMind's 
pretrained parameters, run e.g.:
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
125

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
126
```bash
127
python3 run_pretrained_openfold.py \
128
    fasta_dir \
129
    data/pdb_mmcif/mmcif_files/ \
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
130
131
132
133
    --uniref90_database_path data/uniref90/uniref90.fasta \
    --mgnify_database_path data/mgnify/mgy_clusters_2018_12.fa \
    --pdb70_database_path data/pdb70/pdb70 \
    --uniclust30_database_path data/uniclust30/uniclust30_2018_08/uniclust30_2018_08 \
134
135
    --output_dir ./ \
    --bfd_database_path data/bfd/bfd_metaclust_clu_complete_id30_c90_final_seq.sorted_opt \
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
136
    --model_device "cuda:0" \
sft-managed's avatar
sft-managed committed
137
138
139
140
    --jackhmmer_binary_path lib/conda/envs/openfold_venv/bin/jackhmmer \
    --hhblits_binary_path lib/conda/envs/openfold_venv/bin/hhblits \
    --hhsearch_binary_path lib/conda/envs/openfold_venv/bin/hhsearch \
    --kalign_binary_path lib/conda/envs/openfold_venv/bin/kalign
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
141
142
    --config_preset "model_1_ptm"
    --openfold_checkpoint_path openfold/resources/openfold_params/finetuning_2_ptm.pt
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
143
```
144

Gustaf's avatar
Gustaf committed
145
146
147
where `data` is the same directory as in the previous step. If `jackhmmer`, 
`hhblits`, `hhsearch` and `kalign` are available at the default path of 
`/usr/bin`, their `binary_path` command-line arguments can be dropped.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
148
If you've already computed alignments for the query, you have the option to 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
149
skip the expensive alignment computation here with 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
150
151
152
153
154
155
156
157
158
159
160
`--use_precomputed_alignments`.

Exactly one of `--openfold_checkpoint_path` or `--jax_param_path` must be specified 
to run the inference script. These accept .pt/DeepSpeed OpenFold checkpoints 
and AlphaFold's .npz JAX parameter files, respectively. For a breakdown of the 
differences between the different parameter files, see the README downloaded to 
`openfold/resources/openfold_params/`. Since OpenFold was trained under a 
newer training schedule than the one from which the `model_n` config 
presets are derived, there is no clean correspondence between `config_preset`
settings and OpenFold checkpoints; the only restraint is that `*_ptm`
checkpoints must be run with `*_ptm` config presets.
161

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
162
163
Note that chunking (as defined in section 1.11.8 of the AlphaFold 2 supplement)
is enabled by default in inference mode. To disable it, set `globals.chunk_size`
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
164
165
166
167
to `None` in the config. If a value is specified, OpenFold will attempt to 
dynamically tune it, considering the chunk size specified in the config as a 
minimum. This tuning process automatically ensures consistently fast runtimes 
regardless of input sequence length, but it also introduces some runtime 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
168
169
170
variability, which may be undesirable for certain users. It is also recommended
to disable this feature for very long chains (see below). To do so, set the 
`tune_chunk_size` option in the config to `False`.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
171

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
172
173
174
175
Input FASTA files containing multiple sequences are treated as complexes. In
this case, the inference script runs AlphaFold-Gap, a hack proposed
[here](https://twitter.com/minkbaek/status/1417538291709071362?lang=en), using
the specified stock AlphaFold/OpenFold parameters (NOT AlphaFold-Multimer). To
176
177
run inference with AlphaFold-Multimer, use the (experimental) `multimer` branch 
instead.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
178

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
179
To minimize memory usage during inference on long sequences, consider the
180
following changes:
181

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
182
- As noted in the AlphaFold-Multimer paper, the AlphaFold/OpenFold template
183
184
185
186
187
188
stack is a major memory bottleneck for inference on long sequences. OpenFold
supports two mutually exclusive inference modes to address this issue. One,
`average_templates` in the `template` section of the config, is similar to the
solution offered by AlphaFold-Multimer, which is simply to average individual
template representations. Our version is modified slightly to accommodate 
weights trained using the standard template algorithm. Using said weights, we
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
189
notice no significant difference in performance between our averaged template 
190
191
embeddings and the standard ones. The second, `offload_templates`, temporarily 
offloads individual template embeddings into CPU memory. The former is an 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
192
193
194
195
approximation while the latter is slightly slower; both are memory-efficient 
and allow the model to utilize arbitrarily many templates across sequence 
lengths. Both are disabled by default, and it is up to the user to determine 
which best suits their needs, if either.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
196
197
198
199
200
201
202
- Inference-time low-memory attention (LMA) can be enabled in the model config.
This setting trades off speed for vastly improved memory usage. By default,
LMA is run with query and key chunk sizes of 1024 and 4096, respectively.
These represent a favorable tradeoff in most memory-constrained cases.
Powerusers can choose to tweak these settings in 
`openfold/model/primitives.py`. For more information on the LMA algorithm,
see the aforementioned Staats & Rabe preprint.
203
204
- Disable `tune_chunk_size` for long sequences. Past a certain point, it only
wastes time.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
205
206
207
- As a last resort, consider enabling `offload_inference`. This enables more
extensive CPU offloading at various bottlenecks throughout the model.

208
209
210
211
Using the most conservative settings, we were able to run inference on a 
4600-residue complex with a single A100. Compared to AlphaFold's own memory 
offloading mode, ours is considerably faster: the same complex takes the more 
efficent AlphaFold-Multimer more than double the time.
212

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
213
### Training
214

Gustaf's avatar
Gustaf committed
215
216
217
218
To train the model, you will first need to precompute protein alignments. 

You have two options. You can use the same procedure DeepMind used by running
the following:
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
219
220
221

```bash
python3 scripts/precompute_alignments.py mmcif_dir/ alignment_dir/ \
222
223
224
225
    --uniref90_database_path data/uniref90/uniref90.fasta \
    --mgnify_database_path data/mgnify/mgy_clusters_2018_12.fa \
    --pdb70_database_path data/pdb70/pdb70 \
    --uniclust30_database_path data/uniclust30/uniclust30_2018_08/uniclust30_2018_08 \
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
226
    --bfd_database_path data/bfd/bfd_metaclust_clu_complete_id30_c90_final_seq.sorted_opt \
sft-managed's avatar
sft-managed committed
227
228
229
230
231
    --cpus 16 \
    --jackhmmer_binary_path lib/conda/envs/openfold_venv/bin/jackhmmer \
    --hhblits_binary_path lib/conda/envs/openfold_venv/bin/hhblits \
    --hhsearch_binary_path lib/conda/envs/openfold_venv/bin/hhsearch \
    --kalign_binary_path lib/conda/envs/openfold_venv/bin/kalign
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
232
```
Gustaf's avatar
Gustaf committed
233

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
234
235
236
As noted before, you can skip the `binary_path` arguments if these binaries are 
at `/usr/bin`. Expect this step to take a very long time, even for small 
numbers of proteins.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
237

Gustaf's avatar
Gustaf committed
238
239
240
241
242
243
244
Alternatively, you can generate MSAs with the ColabFold pipeline (and templates
with HHsearch) with:

```bash
python3 scripts/precompute_alignments_mmseqs.py input.fasta \
    data/mmseqs_dbs \
    uniref30_2103_db \
Gustaf's avatar
Gustaf committed
245
    alignment_dir \
Gustaf's avatar
Gustaf committed
246
247
248
249
250
251
252
    ~/MMseqs2/build/bin/mmseqs \
    /usr/bin/hhsearch \
    --env_db colabfold_envdb_202108_db
    --pdb70 data/pdb70/pdb70
```

where `input.fasta` is a FASTA file containing one or more query sequences. To 
Gustaf's avatar
Gustaf committed
253
254
generate an input FASTA from a directory of mmCIF and/or ProteinNet .core 
files, we provide `scripts/data_dir_to_fasta.py`.
Gustaf's avatar
Gustaf committed
255

256
Next, generate a cache of certain datapoints in the template mmCIF files:
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
257
258

```bash
259
python3 scripts/generate_mmcif_cache.py \
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
260
261
262
    mmcif_dir/ \
    mmcif_cache.json \
    --no_workers 16
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
263
264
```

265
266
267
268
This cache is used to pre-filter templates. 

Next, generate a separate chain-level cache with data used for training-time 
data filtering:
269
270
271
272
273
274
275
276
277
278
279
280
281

```bash
python3 scripts/generate_chain_data_cache.py \
    mmcif_dir/ \
    chain_data_cache.json \
    --cluster_file clusters-by-entity-40.txt \
    --no_workers 16
```

where the `cluster_file` argument is a file of chain clusters, one cluster
per line (e.g. [PDB40](https://cdn.rcsb.org/resources/sequence/clusters/clusters-by-entity-40.txt)).

Finally, call the training script:
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
282
283
284
285
286
287
288
289

```bash
python3 train_openfold.py mmcif_dir/ alignment_dir/ template_mmcif_dir/ \
    2021-10-10 \ 
    --template_release_dates_cache_path mmcif_cache.json \ 
    --precision 16 \
    --gpus 8 --replace_sampler_ddp=True \
    --seed 42 \ # in multi-gpu settings, the seed must be specified
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
290
    --deepspeed_config_path deepspeed_config.json \
291
    --checkpoint_every_epoch \
292
    --resume_from_ckpt ckpt_dir/ \
293
    --train_chain_data_cache_path chain_data_cache.json
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
294
295
```

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
296
where `--template_release_dates_cache_path` is a path to the mmCIF cache. 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
297
298
Note that `template_mmcif_dir` can be the same as `mmcif_dir` which contains
training targets. A suitable DeepSpeed configuration file can be generated with 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
299
`scripts/build_deepspeed_config.py`. The training script is 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
300
301
written with [PyTorch Lightning](https://github.com/PyTorchLightning/pytorch-lightning) 
and supports the full range of training options that entails, including 
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
302
303
304
305
306
307
308
309
multi-node distributed training, validation, and so on. For more information, 
consult PyTorch Lightning documentation and the `--help` flag of the training 
script.

Note that, despite its variable name, `mmcif_dir` can also contain PDB files 
or even ProteinNet .core files. To emulate the AlphaFold training procedure, 
which uses a self-distillation set subject to special preprocessing steps, use
the family of `--distillation` flags.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
310

311
312
313
314
315
316
317
318
319
## Testing

To run unit tests, use

```bash
scripts/run_unit_tests.sh
```

The script is a thin wrapper around Python's `unittest` suite, and recognizes
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
320
`unittest` arguments. E.g., to run a specific test verbosely:
321
322
323
324
325

```bash
scripts/run_unit_tests.sh -v tests.test_model
```

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
326
Certain tests require that AlphaFold (v2.0.1) be installed in the same Python
327
328
environment. These run components of AlphaFold and OpenFold side by side and
ensure that output activations are adequately similar. For most modules, we
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
329
target a maximum pointwise difference of `1e-4`.
330

331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
## Building and using the docker container

### Building the docker image

Openfold can be built as a docker container using the included dockerfile. To build it, run the following command from the root of this repository:

```bash
docker build -t openfold .
```

### Running the docker container 

The built container contains both `run_pretrained_openfold.py` and `train_openfold.py` as well as all necessary software dependencies. It does not contain the model parameters, sequence, or structural databases. These should be downloaded to the host machine following the instructions in the Usage section above. 

The docker container installs all conda components to the base conda environment in `/opt/conda`, and installs openfold itself in `/opt/openfold`,

Before running the docker container, you can verify that your docker installation is able to properly communicate with your GPU by running the following command:


```bash
docker run --rm --gpus all nvidia/cuda:11.0-base nvidia-smi
```

Note the `--gpus all` option passed to `docker run`. This option is necessary in order for the container to use the GPUs on the host machine.

To run the inference code under docker, you can use a command like the one below.  In this example, parameters and sequences from the alphafold dataset are being used and are located at `/mnt/alphafold_database` on the host machine, and the input files are located in the current working directory. You can adjust the volume mount locations as needed to reflect the locations of your data. 

```bash
docker run \
--gpus all \
-v $PWD/:/data \
-v /mnt/alphafold_database/:/database \
-ti openfold:latest \
python3 /opt/openfold/run_pretrained_openfold.py \
365
/data/fasta_dir \
366
/database/pdb_mmcif/mmcif_files/ \
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
367
368
369
370
--uniref90_database_path /database/uniref90/uniref90.fasta \
--mgnify_database_path /database/mgnify/mgy_clusters_2018_12.fa \
--pdb70_database_path /database/pdb70/pdb70 \
--uniclust30_database_path /database/uniclust30/uniclust30_2018_08/uniclust30_2018_08 \
371
372
373
374
375
376
377
--output_dir /data \
--bfd_database_path /database/bfd/bfd_metaclust_clu_complete_id30_c90_final_seq.sorted_opt \
--model_device cuda:0 \
--jackhmmer_binary_path /opt/conda/bin/jackhmmer \
--hhblits_binary_path /opt/conda/bin/hhblits \
--hhsearch_binary_path /opt/conda/bin/hhsearch \
--kalign_binary_path /opt/conda/bin/kalign \
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
378
--openfold_checkpoint_path /database/openfold_params/finetuning_2_ptm.pt
379
380
```

381
382
383
384
## Copyright notice

While AlphaFold's and, by extension, OpenFold's source code is licensed under
the permissive Apache Licence, Version 2.0, DeepMind's pretrained parameters 
385
386
fall under the CC BY 4.0 license, a copy of which is downloaded to 
`openfold/resources/params` by the installation script. Note that the latter
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
387
replaces the original, more restrictive CC BY-NC 4.0 license as of January 2022.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
388
389
390

## Contributing

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
391
392
If you encounter problems using OpenFold, feel free to create an issue! We also
welcome pull requests from the community.
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
393
394
395

## Citing this work

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
396
For now, cite OpenFold as follows:
Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
397

Gustaf Ahdritz's avatar
Gustaf Ahdritz committed
398
399
400
401
402
403
404
405
406
407
```bibtex
@software{Ahdritz_OpenFold_2021,
  author = {Ahdritz, Gustaf and Bouatta, Nazim and Kadyan, Sachin and Xia, Qinghui and Gerecke, William and AlQuraishi, Mohammed},
  doi = {10.5281/zenodo.5709539},
  month = {11},
  title = {{OpenFold}},
  url = {https://github.com/aqlaboratory/openfold},
  year = {2021}
}
```
Gustaf Ahdritz's avatar
Add DOI  
Gustaf Ahdritz committed
408
409

Any work that cites OpenFold should also cite AlphaFold.