Data Science Foundations II

Data Science Foundations II

Continue your journey by diving into more complex machine learning models, natural language processing, and time series analysis

Financing and flexible payment options available. Learn more

Upcoming Course Start Dates

New courses start the first Monday of every month.

January 5, 2026
February 2, 2026
March 2, 2026

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Master the tools of the trade

Immerse yourself in the most challenging aspects of data science. Learn to develop sophisticated machine learning models. including neural networks, dive into natural language processing, and gain expertise in time series analysis. These courses will equip you with the skills to solve complex problems and develop data-driven solutions that meet the needs of today’s businesses. By mastering these tools and techniques, you’ll position yourself as a leader in the field of data science, capable of tackling the most pressing challenges with confidence and precision.

The U of U // Flatiron School difference 

Be mentored by a world-class data scientist

Small group classes (max 5 students)

100% online programs

Prerequisites: Data Science Essentials, Data Science Foundations I

Curriculum

Industry-approved curriculum to support your journey into data science

Introduction to Machine Learning - 3 weeks

This course introduces the fundamentals of AI and machine learning, covering core concepts like statistical learning theory and supervised learning. You'll explore models such as logistic regression, decision trees, and support vector machines, and learn to evaluate them using metrics like ROC AUCs. The course concludes with a project where you'll select and deploy the ideal model for a specific task, demonstrating your mastery of the data science pipeline.

What you'll learn: 

  • Utilize foundational machine learning modeling like decision trees and supervised learning
  • Prepare data for machine learning modeling with preprocessing (feature extraction) and normalization
  • Utilize mathematics, statistics, & probability for data science methodologies to derive insights

Machine Learning with Scikit-Learn - 3 weeks

This course covers both supervised and unsupervised machine learning models. You'll learn about distance metrics and k-Nearest Neighbors for classification, recommender systems using SVD, clustering techniques like k-means, and dimensionality reduction with PCA. The course concludes with a project where you'll build and demonstrate both a supervised (k-Nearest Neighbors) and an unsupervised (k-means) learning model, showcasing your skills in classification and clustering tasks.

What you'll learn: 

  • Utilize foundational machine learning modeling like decision trees and supervised learning
  • Prepare data for machine learning modeling with preprocessing (feature extraction) and normalization
  • Integrate mathematics, statistics, & probability for data science methodologies to derive insights 

Natural Language Processing, Time Series & Neural Networks - 3 weeks

This course teaches skills to build advanced models, focusing on natural language processing (NLP) with techniques like text classification and vectorization, time series analysis for managing and visualizing trends, and neural networks using Keras. The course culminates in a project where you'll build and showcase three models: a language model, a time series model, and a basic neural network.

What you'll learn: 

  • Develop insights from language, time, and image data using neural networks and Natural Language Processing (NLP)
  • Integrate mathematics, statistics, & probability for data science methodologies to derive insights

Neural Networks & Similar Models - 3 weeks

This course builds on neural network fundamentals, teaching optimization techniques like normalization and regularization. You'll explore Convolutional Neural Networks (CNNs) for image classification, Recurrent Neural Networks (RNNs) for forecasting and sequence data, and advanced models like transformers and BERT. The course concludes with a project where you'll demonstrate your expertise by building an advanced neural network application.

What you'll learn: 

  • Create an advanced neural network application
  • Integrate mathematics, statistics, & probability for data science methodologies to derive insights

Tuition

Upfront - Save 9%

$4,700

Pay as You Go

$5,200

3 monthly payments of $1,733

FAQs

Can I study part-time while keeping my current job?

Yes. The AI & Data Science Certificate (Part-Time) is designed exactly for this. At 20 hours per week over 15 months, you can stay fully employed while building AI fluency at a sustainable pace. It’s built for working professionals who want to upskill into AI and add technical depth to an existing career without stepping away from their current role.

How does the apprenticeship work in work-integrated programs?

Flatiron facilitates the employer match. You’ll work approximately 20 hours per week in a production-aligned environment alongside your coursework. Apprenticeships are paid and supervised by a workplace supervisor.

How do I know if I qualify for the Accelerated track?

If you have production coding experience – frontend, backend, or full-stack, and you feel the pressure of AI reshaping what it means to be a strong engineer, you likely qualify. This isn’t a beginner course; it’s a rigorous upskilling path for engineers who don’t want to lose momentum. Speak with an Admissions rep to confirm. If you don’t have that background, the Work-Integrated: AI Engineering Immersive is the right work-integrated option for you.

Do I need prior experience to apply?

Most programs have no prerequisites. You just need to be 18+, have a high school diploma or equivalent, and have English proficiency. Whether you’re a recent grad, someone transitioning from a non-technical field, or a working professional looking to pivot, you’re eligible. The one exception is the Accelerated AI Engineering Immersive, which requires existing software engineering experience (midlevel or higher) because it’s built for engineers who are already in production environments.

What’s the difference between a certificate program and a work-integrated program?

Certificate programs are purely educational. You learn, build a portfolio, and graduate ready for the job search. If you’re entering the workforce or transitioning from a non-technical field and want a clear, structured path, this is for you. Work-integrated programs combine coursework with a paid apprenticeship, so you gain work experience and income during the program. This is a strong fit for professionals who need income continuity during a pivot, or experienced engineers who want production AI exposure from day one. Both award the same professional certificate upon completion.

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