Advanced Certificate: Machine Learning for Engineers
-- ViewingNowThe Advanced Certificate: Machine Learning for Engineers is a cutting-edge course designed to equip learners with the essential skills needed to excel in the rapidly evolving field of machine learning. This course is of paramount importance in today's industry, where machine learning has become a critical component of various applications, from self-driving cars to voice assistants.
4,514+
Students enrolled
GBP £ 140
GBP £ 202
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
⢠Advanced Mathematics for Machine Learning — This unit covers essential mathematical concepts required for understanding and implementing machine learning algorithms, including linear algebra, calculus, probability, and statistics. ⢠Data Preprocessing & Manipulation — In this unit, students learn to clean, transform, and prepare structured and unstructured data for machine learning models using libraries like NumPy, Pandas, and data wrangling techniques. ⢠Supervised Learning Algorithms — This unit delves into various supervised learning algorithms, including linear regression, logistic regression, support vector machines, and ensemble methods like Random Forest and Gradient Boosting. ⢠Unsupervised Learning Algorithms — Students will learn unsupervised learning techniques, such as clustering algorithms (k-means, hierarchical clustering, etc.) and dimensionality reduction methods (PCA, t-SNE, etc.). ⢠Neural Networks & Deep Learning — This unit explores the fundamentals of artificial neural networks and deep learning, including activation functions, backpropagation, optimization techniques, and convolutional and recurrent neural networks. ⢠Natural Language Processing & Machine Learning — Students will learn about natural language processing techniques, such as text preprocessing, tokenization, part-of-speech tagging, and sentiment analysis, using machine learning algorithms. ⢠Time Series Analysis & Machine Learning — This unit covers time series analysis and forecasting methods using machine learning algorithms, such as ARIMA, ETS, LSTM, and Prophet. ⢠Reinforcement Learning — This unit introduces reinforcement learning concepts, such as Q-learning, SARSA, policy gradients, and deep Q-networks. ⢠Evaluation Metrics for Machine Learning — This unit discusses how to evaluate the performance of machine learning models using various performance metrics, such as accuracy, precision, recall, F1 score, ROC curves, and confusion matrices. ⢠Ethics in Machine Learning — In this unit, students will learn about the ethical considerations when implementing machine learning algorithms, including bias, fairness, transparency, and privacy.
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