IBM
IBM AI Engineering Professional Certificate
IBM

IBM AI Engineering Professional Certificate

Get job-ready as an AI engineer. Build the AI engineering skills and practical experience you need to catch the eye of an employer in less than 4 months. Power up your resume!

Sina Nazeri
Fateme Akbari
Wojciech 'Victor' Fulmyk

Instructors: Sina Nazeri +12 more

131,712 already enrolled

Included with Coursera Plus

Earn a career credential that demonstrates your expertise
4.5

(7,343 reviews)

Intermediate level

Recommended experience

Flexible schedule
4 months, 10 hours a week
Learn at your own pace
Build toward a degree
Earn a career credential that demonstrates your expertise
4.5

(7,343 reviews)

Intermediate level

Recommended experience

Flexible schedule
4 months, 10 hours a week
Learn at your own pace
Build toward a degree

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 

Skills you'll gain

  • Category: Machine Learning
  • Category: Deep Learning
  • Category: Machine Learning Algorithms
  • Category: Python Programming
  • Category: Artificial Neural Networks
  • Category: Applied Machine Learning
  • Category: Human Learning
  • Category: Computer Vision
  • Category: Data Visualization
  • Category: Algorithms
  • Category: Big Data
  • Category: Data Analysis

Details to know

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Taught in English

Advance your career with in-demand skills

  • Receive professional-level training from IBM
  • Demonstrate your technical proficiency
  • Earn an employer-recognized certificate from IBM
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Get exclusive access to career resources upon completion

  • Resume review

    Improve your resume and LinkedIn with personalized feedback

  • Interview prep

    Practice your skills with interactive tools and mock interviews

  • Career support

    Plan your career move with Coursera's job search guide

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Professional Certificate - 13 course series

Machine Learning with Python

Course 120 hours4.7 (17,175 ratings)

What you'll learn

  • Job-ready foundational machine learning skills in Python in just 6 weeks, including how to utilizeScikit-learn to build, test, and evaluate models.

  • How to apply data preparation techniques and manage bias-variance tradeoffs to optimize model performance.

  • How to implement core machine learning algorithms, including linear regression, decision trees, and SVM, for classification and regression tasks.

  • How to evaluate model performance using metrics, cross-validation, and hyperparameter tuning to ensure accuracy and reliability.

Skills you'll gain

Category: Transformers
Category: Performance Tuning
Category: Generative AI
Category: Natural Language Processing
Category: Time Series Analysis and Forecasting
Category: Generative Adversarial Networks (GANs)
Category: Keras (Neural Network Library)
Category: Convolutional Neural networks CNN
Category: Artificial Intelligence
Category: Unsupervised Learning
Category: Reinforcement Learning
Category: Artificial Neural Networks
Category: Deep Learning
Category: Tensorflow
Category: Computer Vision
Category: TensorFlow Keras

Introduction to Deep Learning & Neural Networks with Keras

Course 29 hours4.7 (1,781 ratings)

What you'll learn

Skills you'll gain

Category: Databases
Category: Retrieval augmented generation (RAG)
Category: Gradio
Category: Natural Language Processing
Category: Generative AI
Category: User Interface (UI)
Category: Document Management
Category: Generative AI applications
Category: Artificial Intelligence
Category: Application Development
Category: Data Storage
Category: LangChain
Category: Unstructured Data
Category: Vector database

Deep Learning with Keras and Tensorflow

Course 323 hours4.4 (934 ratings)

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: Activation functions
Category: Artificial Neural Networks
Category: Deep Learning
Category: PyTorch (Machine Learning Library)
Category: Softmax regression
Category: Supervised Learning
Category: Computer Vision
Category: Neural Networks
Category: PyTorch
Category: Convolutional Neural Networks
Category: Machine Learning

Introduction to Neural Networks and PyTorch

Course 417 hours4.4 (1,816 ratings)

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: Artificial Intelligence and Machine Learning (AI/ML)
Category: PyTorch (Machine Learning Library)
Category: Artificial Neural Networks
Category: Deep Learning
Category: Artificial Neural Network
Category: Tensorflow
Category: Natural Language Processing
Category: Computer Vision
Category: Keras (Neural Network Library)
Category: Artificial Intelligence (AI)
Category: keras
Category: Machine Learning
Category: Unsupervised Learning

Deep Learning with PyTorch

Course 520 hours4.4 (39 ratings)

What you'll learn

  • Key concepts on Softmax regression and understand its application in multi-class classification problems.

  • How to develop and train shallow neural networks with various architectures.

  • Key concepts of deep neural networks, including techniques like dropout, weight initialization, and batch normalization.

  • How to develop convolutional neural networks, apply layers and activation functions.

Skills you'll gain

Category: Artificial Intelligence and Machine Learning (AI/ML)
Category: Retrieval augmented generation (RAG)
Category: In-context learning and prompt engineering
Category: Application Frameworks
Category: Natural Language Processing
Category: Generative AI
Category: LangChain
Category: Open Source Technology
Category: Chatbots
Category: Vector databases
Category: Artificial Intelligence
Category: Application Development

AI Capstone Project with Deep Learning

Course 616 hours4.5 (631 ratings)

What you'll learn

  • Build a deep learning model to solve a real problem.

  • Execute the process of creating a deep learning pipeline.

  • Apply knowledge of deep learning to improve models using real data.

  • Demonstrate ability to present and communicate outcomes of deep learning projects.

Skills you'll gain

Category: PyTorch (Machine Learning Library)
Category: Natural Language Processing
Category: Performance Tuning
Category: Generative AI
Category: Machine Learning
Category: Hugging Face
Category: Artificial Intelligence
Category: Instruction-tuning
Category: Reinforcement learning
Category: OpenAI
Category: Tensorflow
Category: Proximal policy optimization (PPO)
Category: Direct preference optimization (DPO)
Category: ChatGPT

Generative AI and LLMs: Architecture and Data Preparation

Course 75 hours4.7 (178 ratings)

What you'll learn

  • Differentiate between generative AI architectures and models, such as RNNs, Transformers, VAEs, GANs, and Diffusion Models.

  • Describe how LLMs, such as GPT, BERT, BART, and T5, are used in language processing.

  • Implement tokenization to preprocess raw textual data using NLP libraries such as NLTK, spaCy, BertTokenizer, and XLNetTokenizer.

  • Create an NLP data loader using PyTorch to perform tokenization, numericalization, and padding of text data.

Skills you'll gain

Category: Scikit Learn (Machine Learning Library)
Category: Data Manipulation
Category: Supervised Learning
Category: Regression Analysis
Category: Classification And Regression Tree (CART)
Category: SciPy and scikit-learn
Category: classification
Category: Machine Learning
Category: Unsupervised Learning
Category: Dimensionality Reduction
Category: Jupyter
Category: Predictive Modeling
Category: regression
Category: Matplotlib
Category: Feature Engineering
Category: Random Forest Algorithm
Category: Statistical Modeling
Category: Statistical Machine Learning
Category: Applied Machine Learning
Category: Clustering
Category: Machine Learning Algorithms
Category: Python Programming

What you'll learn

  • Explain how to use one-hot encoding, bag-of-words, embedding, and embedding bags to convert words to features.

  • Build and use word2vec models for contextual embedding.

  • Build and train a simple language model with a neural network.

  • Utilize N-gram and sequence-to-sequence models for document classification, text analysis, and sequence transformation.

Skills you'll gain

Category: Artificial Intelligence and Machine Learning (AI/ML)
Category: Deep Learning
Category: PyTorch (Machine Learning Library)
Category: Application Frameworks
Category: Natural Language Processing
Category: Performance Tuning
Category: Generative AI
Category: Pretraining transformers
Category: PyTorch
Category: Applied Machine Learning
Category: LoRA and QLoRA
Category: Hugging Face
Category: Fine-tuning LLMs

Generative AI Language Modeling with Transformers

Course 98 hours4.5 (76 ratings)

What you'll learn

  • Explain the concept of attention mechanisms in transformers, including their role in capturing contextual information.

  • Describe language modeling with the decoder-based GPT and encoder-based BERT.

  • Implement positional encoding, masking, attention mechanism, document classification, and create LLMs like GPT and BERT.

  • Use transformer-based models and PyTorch functions for text classification, language translation, and modeling.

Skills you'll gain

Category: Artificial Neural Networks
Category: Deep Learning
Category: PyTorch (Machine Learning Library)
Category: Natural Language Processing
Category: Generative AI
Category: PyTorch functions
Category: Positional encoding and masking
Category: Text Mining
Category: Applied Machine Learning
Category: Language transformation
Category: Generative pre-trained transformers (GPT)
Category: Bidirectional Representation for Transformers (BERT)

Generative AI Engineering and Fine-Tuning Transformers

Course 108 hours4.5 (53 ratings)

What you'll learn

  • Sought-after job-ready skills businesses need for working with transformer-based LLMs for generative AI engineering... in just 1 week.

  • How to perform parameter-efficient fine-tuning (PEFT) using LoRA and QLoRA

  • How to use pretrained transformers for language tasks and fine-tune them for specific tasks.

  • How to load models and their inferences and train models with Hugging Face.

Skills you'll gain

Category: PyTorch (Machine Learning Library)
Category: Artificial Neural Networks
Category: Deep Learning
Category: Generative AI
Category: Natural Language Processing
Category: Generative AI for NLP
Category: Feature Engineering
Category: Machine Learning Methods
Category: N-Gram
Category: Text Mining
Category: PyTorch torchtext
Category: Word2Vec Model
Category: Sequence-to-Sequence Model

Generative AI Advance Fine-Tuning for LLMs

Course 119 hours4.3 (71 ratings)

What you'll learn

  • In-demand gen AI engineering skills in fine-tuning LLMs employers are actively looking for in just 2 weeks

  • Instruction-tuning and reward modeling with the Hugging Face, plus LLMs as policies and RLHF

  • Direct preference optimization (DPO) with partition function and Hugging Face and how to create an optimal solution to a DPO problem

  • How to use proximal policy optimization (PPO) with Hugging Face to create a scoring function and perform dataset tokenization

Skills you'll gain

Category: PyTorch (Machine Learning Library)
Category: Performance Tuning
Category: Data Processing
Category: Regression Analysis
Category: Linear Regression
Category: Machine Learning
Category: Deep Learning
Category: Artificial Neural Networks
Category: TensorFlow
Category: Feature Engineering
Category: Probability Distribution
Category: Logistic Regression
Category: Gradient Descent
Category: Statistical Methods

Fundamentals of AI Agents Using RAG and LangChain

Course 126 hours4.6 (82 ratings)

What you'll learn

  • In-demand job-ready skills businesses need for building AI agents using RAG and LangChain in just 8 hours.

  • How to apply the fundamentals of in-context learning and advanced methods of prompt engineering to enhance prompt design.

  • Key LangChain concepts, tools, components, chat models, chains, and agents.

  • How to apply RAG, PyTorch, Hugging Face, LLMs, and LangChain technologies to different applications.

Skills you'll gain

Category: Artificial Neural Networks
Category: Deep Learning
Category: PyTorch (Machine Learning Library)
Category: Data Manipulation
Category: Predictive Modeling
Category: Computer Vision
Category: Data Processing
Category: Keras (Neural Network Library)
Category: Scientific Visualization
Category: Applied Machine Learning
Category: Verification And Validation
Category: Data Import/Export

What you'll learn

  • Gain practical experience building your own real-world gen AI application that you can talk about in interviews.

  • Get hands-on using LangChain to load documents and apply text splitting techniques with RAG and LangChain to enhance model responsiveness.

  • Create and configure a vector database to store document embeddings and develop a retriever to fetch document segments based on queries.

  • Set up a simple Gradio interface for model interaction and construct a QA bot using LangChain and an LLM to answer questions from loaded documents.

Skills you'll gain

Category: Artificial Intelligence and Machine Learning (AI/ML)
Category: PyTorch (Machine Learning Library)
Category: NLP Data Loader
Category: Generative AI
Category: Natural Language Processing
Category: Data Processing
Category: Hugging Face Libraries
Category: Machine Learning
Category: Tokenization
Category: Artificial Neural Networks
Category: Deep Learning
Category: Jupyter
Category: PyTorch
Category: Large Language Models

Instructors

Sina Nazeri
Sina Nazeri
IBM
2 Courses26,573 learners
Fateme Akbari
Fateme Akbari
IBM
4 Courses13,525 learners
Wojciech 'Victor' Fulmyk
Wojciech 'Victor' Fulmyk
IBM
4 Courses50,490 learners

Offered by

IBM

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

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Frequently asked questions

¹Based on Coursera learner outcome survey responses, United States, 2021.