651-905-3729 Microsoft Silver Learning Partner EC Counsel Reseller compTIA Authorized Partner

Introduction to AI, Data Science & Machine Learning with Python Virtual Classroom Live October 27, 2025

Price: $3,200

This course runs for a duration of 5 Days.

The class will run daily from 10 AM ET to 5:30 PM ET.

Class Location: Virtual LIVE Instructor Led - Virtual Live Classroom.

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Description

Data science is a field that has exploded in popularity in recent years, and for good reason. Companies across industries are increasingly relying on data to inform their decision-making, and skilled data scientists are in high demand. In this comprehensive course, you'll learn the foundational skills and techniques you need to succeed in this exciting field.

You'll start by exploring the role of a data scientist and the lifecycle of data science efforts within an organization. Then, you'll dive into the technical skills you need, such as using Python and its relevant libraries for data analysis and visualization, preprocessing unstructured data, and building AI/ML models.

You'll also explore key machine learning algorithms, including linear regression, decision tree classifiers, and clustering algorithms. And, you'll learn how to apply these techniques to real-world problems, such as predicting customer churn and building recommendation engines.

Throughout the data science training, you'll have the opportunity to work on hands-on exercises and projects, allowing you to practice your skills and build your portfolio. By the end of the course, you'll have a deep understanding of the data science process, the tools and techniques used by data scientists, and the ability to apply these skills to real-world problems.

Objectives:

  • Consider how traditional Predictive Machine Learning techniques combine Generative AI, Agentic AI, Multimodal AI and Deepseek-R1 approaches in the current Data Science landscape.
  • Translate everyday business questions and problems into Machine Learning tasks to make data-driven decisions.
  • Use Python Pandas, Matplotlib & Seaborn libraries to explore, analyze, and visualize data from various sources, including the web, word documents, email, NoSQL stores, databases, and data warehouses.
  • Explore the concepts behind Foundation Models, Generative Pre-trained Transformers (GPTs), and Retrieval Augmented Generation (RAGs).
  • Train a Machine Learning Classifier using different algorithmic techniques from the Scikit-Learn library, such as Decision Trees, Logistic Regression, and Neural Networks.
  • Re-segment your customer market using K-Means and Hierarchical algorithms to better align products and services to customer needs.
  • Discover hidden customer behaviors from Association Rules and build a Recommendation Engine based on behavioral patterns.
  • Investigate relationships & flows between people and business-relevant entities using Social Network Analysis.
  • Build predictive models of revenue and other numeric variables using Linear Regression.
  • Test your knowledge with the included end-of-course exam.
  • Leverage continued support with after-course one-on-one instructor coaching and computing sandbox.

Course Overview

Module 1: The Role of a Data Scientist: Combining Technical and Non-Technical Skills

What is the required skillset of a Data Scientist?
Combining the technical and non-technical roles of a Data Scientist
The difference between a Data Scientist and a Data Engineer
Exploring the entire lifecycle of Data Science efforts within the organization
Turning business questions into Machine Learning (ML) and Artificial Intelligence (AI) models
Exploring diverse and wide-ranging data sources that you can use to answer business questions
​Explore the concepts behind Foundation Models, Generative Pre-trained Transformers (GPTs), and Retrieval Augmented Generation (RAGs) 

Module 2: Data Manipulation and Visualization using Python's Pandas and Matplotlib Libraries

Introducing the features of Python that are relevant to Data Scientists and Data Engineers
Viewing Data Sets using Python’s Pandas library
Importing, exporting, and working with all forms of data, from Relational Databases to Google Images
Using Python Selecting, Filtering, Combining, Grouping, and Applying Functions from Python's Pandas library
Dealing with Duplicates, Missing Values, Rescaling, Standardizing, and Normalizing Data
Visualizing data for both exploration and communication with the Pandas, Matplotlib, and Seaborn Python libraries

​Module 3: Preprocessing and Analyzing Unstructured Data with Natural Language Processing

Preprocessing Unstructured Data such as web adverts, emails, and blog posts for AI/ML models
Exploring the most popular approaches to Natural Language Processing (NLP), such as stemming and "stop" words
Preparing a term-document matrix (TDM) of unstructured documents for analysis
Review the architectures of Foundation Models, Generative Pre-trained Transformers (GPTs), and Retrieval Augmented Generation
RAGs)
​Look at how Data Scientists can integrate Large Language Models (LLMs) in their work

Module 4: Linear Regression and Feature Engineering for Business Problem Solving

Expressing a business problem, such as customer revenue prediction, as a linear regression task
Assessing variables as potential Predictors of the required Target (e.g., Education as a predictor of Salary Build)
Interpreting and Evaluating a Linear Regression model in Python using measures such as RMSE
​Exploring the Feature Engineering possibilities to improve the Linear Regression model

Module 5: Classification Models and Evaluation for Predictive Analysis

Learning how AI/ML Classifiers are built and used to make predictions such as Customer Churn
Exploring how AI/ML Classification models are built using Training, Test, and Validation
​Evaluating the strength of a Decision Tree Classifier

Module 6: Alternative Approaches to Classification and Model Evaluation

Examining alternative approaches to classification
Considering how Activation Functions are integral to Logistic Regression Classifiers
Delve into the architecture of Neural Networks and investigate the explosive growth of Deep Learning approaches in AI 
Exploring the probability foundations of Naive Bayes classifiers
Reviewing different approaches to measuring the performance of AI/ML Classification Models
​Reviewing ROC curves, AUC measures, Precision, Recall, and Confusion Matrices

Module 7: Clustering Techniques for Customer and Product Segmentation

Uncovering new ways of segmenting your customers, products, or services using clustering algorithms
Exploring what the concept of similarity means to humans and how you can implement it programmatically through distance measures on
escriptive variables
Performing top-down clustering with Python’s Scikit-Learn K-Means algorithm
Performing bottom-up clustering with Scikit-Learn’s hierarchical clustering algorithm
​Examining clustering techniques on unstructured data (e.g., Tweets, Emails, Documents, etc.)

Module 8: Association Rules and Recommender Systems for Business Applications

Building models of customer behaviors or business events from logged data using Association Rules
Evaluating the strength of these models through probability measures of support, confidence, and lift
Employing feature engineering approaches to improve the models
​Building a recommender for your customers that is unique to your product/service offering

Module 9: Network Analysis for Organizational Insights

Analyzing your organization, its people, and its environment as a network of inter-relationships
Visualizing these relationships to uncover previously unseen business insights
Exploring ego-centric and socio-centric methods of analyzing connections critical to your organization

Module 10: Big Data Analytics, Communication, and Ethics

Examining Cloud (Microsoft, Amazon, Google) approaches to handling Big Data analytics
Exploring the communications and ethics aspects of being a Data Scientist
Discuss the ethical implications of recent developments in AI
​Surveying the paths of continual learning for a Data Scientist

Prerequisites

None

Other Available Dates for this Course

Virtual Classroom Live
September 08, 2025

$3,200.00
  Featured Class 5 Days    10 AM ET - 5:30 PM ET
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Virtual Classroom Live
September 15, 2025

$3,200.00
  Featured Class 5 Days    9 AM ET - 4:30 PM ET
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Virtual Classroom Live
September 22, 2025

$3,200.00
  Featured Class 5 Days    9 AM ET - 4:30 PM ET
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Virtual Classroom Live
October 06, 2025

$3,200.00
  Featured Class 5 Days    9 AM ET - 4:30 PM ET
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Virtual Classroom Live
October 20, 2025

$3,200.00
5 Days    9 AM ET - 4:30 PM ET
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