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Python Language – Use in AI Course

USD $59.00 USD $249.00Price range: USD $59.00 through USD $249.00

The Python Language – Use in AI course is a 6-week program that teaches how to leverage Python for developing AI and machine learning applications. Learn to use essential libraries such as NumPy, TensorFlow, and Scikit-learn to build AI solutions.

Aim

This course focuses on the usage of Python for developing Artificial Intelligence (AI) solutions. Participants will learn how to leverage Python libraries and frameworks such as TensorFlow, PyTorch, Scikit-learn, and Keras to implement machine learning, deep learning, and AI models. By the end of this course, participants will have practical skills in AI model creation and optimization using Python.

Program Objectives

  • Learn Python fundamentals for AI development, including libraries and frameworks.
  • Understand key concepts in machine learning and deep learning algorithms.
  • Implement AI models using Python, TensorFlow, and PyTorch.
  • Apply Python for data preprocessing, model evaluation, and optimization in AI.
  • Gain hands-on experience in building AI applications and solving real-world problems using Python.

Program Structure

Module 1: Introduction to Python for AI

  • Overview of Python and its relevance to AI.
  • Setting up Python for AI development: Anaconda, Jupyter Notebooks, and IDEs.
  • Introduction to essential Python libraries for AI: Numpy, Pandas, and Matplotlib.
  • Hands-on exercise: Writing basic Python scripts for AI tasks.

Module 2: Data Preprocessing and Visualization

  • Data cleaning and preprocessing using Python (handling missing data, feature scaling, encoding categorical data).
  • Data visualization with Matplotlib and Seaborn for AI model insights.
  • Understanding data types and structures for AI applications.
  • Hands-on exercise: Preprocessing a real-world dataset and visualizing it for insights.

Module 3: Machine Learning with Python

  • Introduction to supervised learning: regression and classification algorithms.
  • Unsupervised learning techniques: clustering and dimensionality reduction.
  • Using Scikit-learn for building machine learning models: linear regression, decision trees, random forests, and k-NN.
  • Hands-on exercise: Implementing and training machine learning models on sample data.

Module 4: Introduction to Deep Learning with Python

  • Understanding neural networks and deep learning fundamentals.
  • Using Keras and TensorFlow for building deep learning models.
  • Building and training basic neural networks: multi-layer perceptrons (MLP).
  • Hands-on exercise: Building a deep learning model for image classification or text analysis.

Module 5: Advanced Deep Learning Techniques

  • Exploring convolutional neural networks (CNNs) and their applications in image processing.
  • Recurrent neural networks (RNNs) for time series prediction and sequence data analysis.
  • Implementing advanced deep learning models with Keras and TensorFlow.
  • Hands-on exercise: Implementing CNN and RNN models for real-world problems.

Module 6: Model Evaluation and Optimization

  • Evaluating AI models: accuracy, precision, recall, F1-score, and confusion matrix.
  • Hyperparameter tuning and optimization techniques for improving model performance.
  • Cross-validation and model selection techniques for better generalization.
  • Hands-on exercise: Tuning machine learning and deep learning models for optimal performance.

Module 7: AI Model Deployment with Python

  • Deploying machine learning and deep learning models using Python frameworks (Flask, FastAPI).
  • Building APIs for model inference and integration into applications.
  • Deploying models in production environments: cloud services, Docker, and Kubernetes.
  • Hands-on exercise: Deploying an AI model as a web service for real-time predictions.

Module 8: AI Ethics and Responsible AI

  • Understanding the ethical implications of AI development and deployment.
  • Ensuring fairness, transparency, and accountability in AI models.
  • Addressing bias and privacy concerns in AI systems.
  • Hands-on exercise: Evaluating and mitigating bias in AI models.

Final Project

  • Develop an end-to-end AI solution using Python, from data preprocessing to model deployment.
  • Apply machine learning or deep learning techniques to a real-world problem.
  • Example projects: Predicting house prices, building a sentiment analysis system, or creating a recommendation engine.

Participant Eligibility

  • Data science and AI professionals or enthusiasts looking to enhance their Python skills.
  • Students, researchers, or engineers interested in AI and machine learning applications.
  • Anyone looking to build, train, and deploy AI models using Python.

Program Outcomes

  • Gain proficiency in using Python for AI and machine learning tasks.
  • Develop skills to build, train, evaluate, and deploy AI models using Python libraries like TensorFlow, Keras, and Scikit-learn.
  • Learn how to preprocess data, visualize results, and improve model performance through optimization techniques.
  • Build AI-powered applications and deploy them to production environments using Python.

Program Deliverables

  • Access to e-LMS: Full access to course materials, videos, and resources.
  • Hands-on Projects: Implement machine learning and deep learning models with Python.
  • Final Project: Develop a complete AI system, including data preprocessing, model development, and deployment.
  • Certification: Certification awarded after successful completion of the course and final project.
  • e-Certification and e-Marksheet: Digital credentials awarded upon course completion.

Future Career Prospects

  • AI Developer
  • Machine Learning Engineer
  • Data Scientist
  • AI Researcher
  • Python Developer

Job Opportunities

  • AI and Data Science Companies: Building AI solutions and models for clients.
  • Tech Firms: Developing machine learning and deep learning applications using Python.
  • Startups: Designing and deploying AI-powered systems for business applications.
  • Research Institutions: Conducting AI research and applying machine learning techniques to various domains.
Category

E-LMS, E-LMS+Video, E-LMS+Video+Live Lectures

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What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

All Live Workshops

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Feedbacks

Very nice interaction, but need to clear all the doubts in all the sessions and each session should More be equally valuable for all as the 2nd day session was most informative while 1st day and 3rd day were more or less like casual.
Shuvam Sar : 10/12/2024 at 5:49 pm

In Silico Molecular Modeling and Docking in Drug Development

very interesting.


Roberta Listro : 02/16/2024 at 5:30 pm

Bacterial Comparative Genomics

good lecuture


Saravanan Navamani : 04/02/2024 at 9:32 am

In general, it seems to me that the professor knows his subject very well and knows how to explain More it well.
CARLOS OSCAR RODRIGUEZ LEAL : 01/20/2025 at 8:07 am

Biological Sequence Analysis using R Programming

Very nice presentation and helping and cool personality with sound knowledge of the subject.
Thank More you so much.

Kumari Priyanka : 02/08/2024 at 12:58 am

Prediction of Protein Structure Using AlphaFold: An Artificial Intelligence (AI) Program

Very helpful


Priyanka Saha : 07/01/2024 at 12:51 pm

Sometimes there was no pause between steps and it was easy to get lost. When teaching how to use More tools one must repeat each step more than once making sure everyone follows.
Celia Garcia Palma : 10/12/2024 at 1:05 pm

Designing and Engineering of Artificial Microbial Consortia (AMC) for Bioprocess: Application Approaches

It will be helpful to add some hands-on practice and video aid to clarify the idea better


Iftikhar Zeb : 02/22/2024 at 12:51 pm