Professional Certificate in RNNs for Drug Discovery
-- ViewingNowThe Professional Certificate in Recurrent Neural Networks (RNNs) for Drug Discovery is a comprehensive course designed to provide learners with essential skills in applying RNNs to drug discovery. This program emphasizes the importance of RNNs in predicting drug responses, elucidating drug mechanisms, and optimizing drug design.
6,487+
Students enrolled
GBP £ 149
GBP £ 215
Save 44% with our special offer
ě´ ęłźě ě ëí´
100% ě¨ëźě¸
ě´ëěë íěľ
ęłľě ę°ëĽí ě¸ěŚě
LinkedIn íëĄíě ěśę°
ěëŁęšě§ 2ę°ě
죟 2-3ěę°
ě¸ě ë ěě
ë기 ę¸°ę° ěě
ęłźě ě¸ëśěŹí
⢠Introduction to Recurrent Neural Networks (RNNs): Understanding the basics of RNNs, their architecture, and how they differ from traditional neural networks.
⢠RNNs for Sequence Data: Learning how RNNs can process sequential data, including text and time series data.
⢠Long Short-Term Memory (LSTM) Networks: Exploring LSTM networks, a popular type of RNN that can learn long-term dependencies.
⢠Gated Recurrent Unit (GRU) Networks: Understanding GRU networks, another type of RNN that can learn long-term dependencies with fewer parameters than LSTM networks.
⢠Training RNNs for Drug Discovery: Learning how to train RNNs for drug discovery, including how to prepare data for training and how to evaluate model performance.
⢠Deep Learning for Drug Discovery: Exploring how deep learning, including RNNs, can be used for drug discovery, including target prediction, lead optimization, and drug repurposing.
⢠Applications of RNNs in Drug Discovery: Investigating the various applications of RNNs in drug discovery, including predicting drug-target interactions, identifying novel targets, and predicting drug toxicity.
⢠Challenges and Limitations of RNNs in Drug Discovery: Understanding the challenges and limitations of using RNNs for drug discovery, including the need for large amounts of data and the difficulty of interpreting model predictions.
⢠Best Practices for RNNs in Drug Discovery: Learning best practices for using RNNs in drug discovery, including data preprocessing techniques, hyperparameter tuning, and model interpretation.
ę˛˝ë Ľ 경ëĄ
ě í ěęą´
- 죟ě ě ëí 기본 ě´í´
- ěě´ ě¸ě´ ëĽěë
- ěť´í¨í° ë° ě¸í°ëˇ ě ꡟ
- 기본 ěť´í¨í° 기ě
- ęłźě ěëŁě ëí íě
ěŹě ęłľě ěę˛Šě´ íěíě§ ěěľëë¤. ě ꡟěąě ěí´ ě¤ęłë ęłźě .
ęłźě ěí
ě´ ęłźě ě ę˛˝ë Ľ ę°ë°ě ěí ě¤ěŠě ě¸ ě§ěęłź 기ě ě ě ęłľíŠëë¤. ꡸ę˛ě:
- ě¸ě ë°ě 기ę´ě ěí´ ě¸ěŚëě§ ěě
- ęśíě´ ěë 기ę´ě ěí´ ęˇě ëě§ ěě
- ęłľě ě겊ě ëł´ěě
ęłźě ě ěąęłľě ěźëĄ ěëŁí늴 ěëŁ ě¸ěŚě뼟 ë°ę˛ ëŠëë¤.
ě ěŹëë¤ě´ ę˛˝ë Ľě ěí´ ě°ëŚŹëĽź ě ííëę°
댏롰 ëĄëŠ ě¤...
ě죟 돝ë ě§ëʏ
ě˝ě¤ ěę°ëŁ
- 죟 3-4ěę°
- 쥰기 ě¸ěŚě ë°°ěĄ
- ę°ë°Ší ëąëĄ - ě¸ě ë ě§ ěě
- 죟 2-3ěę°
- ě 기 ě¸ěŚě ë°°ěĄ
- ę°ë°Ší ëąëĄ - ě¸ě ë ě§ ěě
- ě 체 ě˝ě¤ ě ꡟ
- ëě§í¸ ě¸ěŚě
- ě˝ě¤ ěëŁ
ęłźě ě ëł´ ë°ę¸°
íěŹëĄ ě§ëś
ě´ ęłźě ě ëšěŠě ě§ëśí기 ěí´ íěŹëĽź ěí ě˛ęľŹě뼟 ěě˛íě¸ě.
ě˛ęľŹěëĄ ę˛°ě ę˛˝ë Ľ ě¸ěŚě íë