IBM
IBM AI Engineering Professional Certificate
IBM

IBM AI Engineering Professional Certificate

Launch your career as an AI engineer. Learn how to provide business insights from big data using machine learning and deep learning techniques.

Wojciech 'Victor' Fulmyk
Ricky Shi
Aman Aggarwal

Instructors: Wojciech 'Victor' Fulmyk

Access provided by Kaveri College of Arts, Science and Commerce

167,918 already enrolled

Earn a career credential that demonstrates your expertise
4.5

(7,932 reviews)

Intermediate level
Some related experience required
3 months to complete
at 10 hours a week
Flexible schedule
Learn at your own pace
Earn a career credential that demonstrates your expertise
4.5

(7,932 reviews)

Intermediate level
Some related experience required
3 months to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Describe machine learning, deep learning, neural networks, and ML algorithms like classification, regression, clustering, and dimensional reduction 

  • Implement supervised and unsupervised machine learning models using SciPy and ScikitLearn 

  • Deploy machine learning algorithms and pipelines on Apache Spark 

  • Build deep learning models and neural networks using Keras, PyTorch, and TensorFlow 

Details to know

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Taught in English

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  • Earn an employer-recognized certificate from IBM

Professional Certificate - 6 course series

Machine Learning with Python

Machine Learning with Python

Course 120 hours

What you'll learn

  • Explain key concepts, tools, and roles involved in machine learning, including supervised and unsupervised learning techniques.

  • Apply core machine learning algorithms such as regression, classification, clustering, and dimensionality reduction using Python and scikit-learn.

  • Evaluate model performance using appropriate metrics, validation strategies, and optimization techniques.

  • Build and assess end-to-end machine learning solutions on real-world datasets through hands-on labs, projects, and practical evaluations.

Skills you'll gain

Category: Regression Analysis
Category: Machine Learning
Category: Scikit Learn (Machine Learning Library)
Category: Dimensionality Reduction
Category: Supervised Learning
Category: Classification And Regression Tree (CART)
Category: Unsupervised Learning
Category: Applied Machine Learning
Category: Decision Tree Learning
Category: Feature Engineering
Category: Statistical Modeling
Category: Predictive Modeling

What you'll learn

  • Describe the foundational concepts of deep learning, neurons, and artificial neural networks to solve real-world problems

  • Explain the core concepts and components of neural networks and the challenges of training deep networks

  • Build deep learning models for regression and classification using the Keras library, interpreting model performance metrics effectively.

  • Design advanced architectures, such as CNNs, RNNs, and transformers, for solving specific problems like image classification and language modeling

Skills you'll gain

Category: Deep Learning
Category: Keras (Neural Network Library)
Category: Artificial Neural Networks
Category: Image Analysis
Category: Regression Analysis
Category: Tensorflow
Category: Natural Language Processing
Category: Machine Learning
Category: Machine Learning Methods
Category: Computer Vision
Category: Network Architecture
Category: Network Model

What you'll learn

  • Describe the applications of computer vision across different industries.

  • Apply image processing and analysis techniques to computer vision problems.

  • Utilize Python, Pillow, and OpenCV for basic image processing and perform image classification and object detection.

  • Create an image classifier using Supervised learning techniques.

Skills you'll gain

Category: Computer Vision
Category: Image Analysis
Category: Machine Learning Algorithms
Category: Algorithms
Category: Machine Learning
Category: Artificial Neural Networks
Category: Deep Learning
Category: Visualization (Computer Graphics)
Category: Cloud Applications
Category: Jupyter
Category: Computer Programming
Category: Applied Machine Learning
Category: Cloud Development
Category: Supervised Learning
Category: Artificial Intelligence and Machine Learning (AI/ML)
Category: Application Deployment
Category: Data Processing

What you'll learn

  • Job-ready PyTorch skills employers need in just 6 weeks

  • How to implement and train linear regression models from scratch using PyTorch’s functionalities

  • Key concepts of logistic regression and how to apply them to classification problems

  • How to handle data and train models using gradient descent for optimization 

Skills you'll gain

Category: PyTorch (Machine Learning Library)
Category: Regression Analysis
Category: Tensorflow
Category: Machine Learning
Category: Probability & Statistics
Category: Deep Learning
Category: Predictive Modeling
Category: Artificial Neural Networks
Category: Data Manipulation

What you'll learn

  • Create custom layers and models in Keras and integrate Keras with TensorFlow 2.x

  • Develop advanced convolutional neural networks (CNNs) using Keras

  • Develop Transformer models for sequential data and time series prediction

  • Explain key concepts of Unsupervised learning in Keras, Deep Q-networks (DQNs), and reinforcement learning

Skills you'll gain

Category: Tensorflow
Category: Keras (Neural Network Library)
Category: Deep Learning
Category: Performance Tuning
Category: Reinforcement Learning
Category: Unsupervised Learning
Category: Natural Language Processing
Category: Artificial Neural Networks
Category: Artificial Intelligence and Machine Learning (AI/ML)
Category: Artificial Intelligence
Category: Generative AI
Category: Machine Learning Methods

What you'll learn

  • Demonstrate your hands-on skills in building deep learning models using Keras and PyTorch to solve real-world image classification problems

  • Showcase your expertise in designing and implementing a complete deep learning pipeline, including data loading, augmentation, and model validation

  • Highlight your practical skills in applying CNNs and vision transformers to domain-specific challenges like geospatial land classification

  • Communicate your project outcomes effectively through a model evaluation

Skills you'll gain

Category: PyTorch (Machine Learning Library)
Category: Keras (Neural Network Library)
Category: Deep Learning
Category: Computer Vision
Category: Machine Learning Methods
Category: Python Programming
Category: Artificial Intelligence
Category: Machine Learning

Earn a career certificate

Add this credential to your LinkedIn profile, resume, or CV. Share it on social media and in your performance review.

Build toward a degree

When you complete this Professional Certificate, you may be able to have your learning recognized for credit if you are admitted and enroll in one of the following online degree programs.¹

 

Instructors

Wojciech 'Victor' Fulmyk
IBM
8 Courses83,607 learners
Ricky Shi
IBM
1 Course48,930 learners
Aman Aggarwal
IBM
1 Course37,263 learners

Offered by

IBM

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¹Career improvement (i.e. promotion, raise) based on Coursera learner outcome survey responses, United States, 2021.