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fix: rewrite readme #7

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May 31, 2024
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86 changes: 67 additions & 19 deletions README.md
Original file line number Diff line number Diff line change
Expand Up @@ -8,44 +8,92 @@

```python
# Regression train
from moltx import tokenizers
from dooc import models, datasets, nets
import random
import torch
from torch import nn
import torch.optim as optim

from moltx import tokenizers as tkz
from moltx.models import AdaMRTokenizerConfig

tk = tokenizers.MoltxTokenizer.from_pretrain(models.AdaMRTokenizerConfig.Prediction)
ds = datasets.MutSmiXAttention(tokenizer=tk, device=torch.device('cpu'))
from dooc import models, datasets


# datasets
tokenizer = tkz.MoltxTokenizer.from_pretrain(
conf=AdaMRTokenizerConfig.Prediction
)
ds = datasets.MutSmi(tokenizer)
smiles = ["c1cccc1c", "CC[N+](C)(C)Cc1ccccc1Br"]
mutations = [[1, 0, 0, ...], [1, 0, 1, ...]]
# e.g.
# import random
# [random.choice([0, 1]) for _ in range(3008)]
mutations = [[random.choice([0, 1]) for _ in range(3008)],
[random.choice([0, 1]) for _ in range(3008)]]
# mutations contains 0/1 encoding information of the genome
values = [0.85, 0.78]
smiles_src, smiles_tgt, mutations_src, out = ds(smiles, mutations, values)

model = models.MutSmiXAttention()
# MutSmiFullConnection train
model = models.MutSmiFullConnection()
model.load_pretrained_ckpt('/path/to/drugcell.ckpt', '/path/to/moltx.ckpt')
mse_loss = nn.MSELoss()
optimizer = optim.Adam(model.parameters(),
lr=1e-04,
foreach=False
)

optimizer.zero_grad()
pred = model(smiles_src, smiles_tgt, mutations_src)
loss = mse_loss(pred, out)
loss.backward()
optimizer.step()

torch.save(model.state_dict(), '/path/to/mutsmifullconnection.ckpt')

crt = nn.MSELoss()
# MutSmiXAttention train
model = models.MutSmiXAttention()
model.load_pretrained_ckpt('/path/to/drugcell.ckpt', '/path/to/moltx.ckpt')
mse_loss = nn.MSELoss()
optimizer = optim.Adam(model.parameters(),
lr=1e-04,
foreach=False
)

optim.zero_grad()
optimizer.zero_grad()
pred = model(smiles_src, smiles_tgt, mutations_src)
loss = crt(pred, out)
loss = mse_loss(pred, out)
loss.backward()
optim.step()
optimizer.step()

torch.save(model.state_dict(), '/path/to/mutsmixattention.ckpt')
```

### Inference

```python
import random
from moltx import tokenizers as tkz
from moltx.models import AdaMRTokenizerConfig
from dooc import pipelines, models
# dooc
model = models.MutSmiXAttention()
model.load_ckpt('/path/to/mutsmixattention.ckpt')
pipeline = pipelines.MutSmiXAttention()
pipeline([1, 0, 0, ...], "C=CC=CC=C")
# 0.85


# MutSmiFullConnection
tokenizer = tkz.MoltxTokenizer.from_pretrain(
conf=AdaMRTokenizerConfig.Prediction
)
model = models.MutSmiFullConnection()
model.load_ckpt('/path/to/mutsmifullconnection.ckpt')
pipeline = pipelines.MutSmiFullConnection(smi_tokenizer=tokenizer, model=model)
mutations = [random.choice([0, 1]) for _ in range(3008)]
smiles = "CC[N+](C)(C)Cc1ccccc1Br"
predict = pipeline(mutations, smiles) # e.g. 0.85

# MutSmiXAttention
tokenizer = tkz.MoltxTokenizer.from_pretrain(
conf=AdaMRTokenizerConfig.Prediction
)
model = models.MutSmiXAttention()
model.load_ckpt('/path/to/mutsmixattention.ckpt')
pipeline = pipelines.MutSmiXAttention(smi_tokenizer=tokenizer, model=model)
mutations = [random.choice([0, 1]) for _ in range(3008)]
smiles = "CC[N+](C)(C)Cc1ccccc1Br"
predict = pipeline(mutations, smiles) # e.g. 0.85
```
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