Advanced Certificate in Data Science Programming Techniques: Efficient Coding
-- ViewingNowThe Advanced Certificate in Data Science Programming Techniques: Efficient Coding is a certificate course designed to equip learners with essential skills for career advancement in the data science industry. This program focuses on teaching efficient coding techniques, which are crucial for handling large datasets and creating robust data models.
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⢠Advanced Python for Data Science:
Explore advanced concepts of Python programming language, including decorators, generators, context managers, and error handling, specifically tailored for data science applications.
⢠Efficient Data Manipulation with Pandas:
Dive into advanced features of Pandas library, such as vectorized operations, efficient data alignment, and reshaping, to optimize data manipulation and preprocessing for data science projects.
⢠Numpy for Data Science:
Understand the internal workings and advanced features of the Numpy library to optimize numerical computations, array manipulation, and linear algebra for large datasets.
⢠Data Visualization with Matplotlib and Seaborn:
Create advanced visualizations for data exploration, analysis, and presentation using Matplotlib and Seaborn libraries, including interactive visualizations and statistical graphics.
⢠Parallel and Distributed Computing with Dask:
Leverage the Dask library to perform parallel and distributed computations, enabling efficient processing and analysis of large datasets on multi-core systems and clusters.
⢠Advanced Machine Learning with Scikit-Learn:
Explore advanced machine learning algorithms and techniques, including ensemble methods, hyperparameter tuning, and model evaluation, using the Scikit-Learn library.
⢠Deep Learning with TensorFlow and Keras:
Understand the fundamentals and applications of deep learning with TensorFlow and Keras libraries, including neural network architectures, optimization techniques, and transfer learning.
⢠Big Data Processing with PySpark:
Leverage PySpark to process and analyze large-scale dataset using distributed computing, including data manipulation, transformation, and machine learning algorithms.
⢠Cloud Computing for Data Science with AWS and GCP:
Explore the use of cloud computing platforms, such as AWS and GCP, for data science applications, including virtual machines, containers, and serverless computing.
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