Based on the best-selling book, Becoming a Data Head, by Alex J. Gutman and Jordan Goldmeier. This course provides learners with the foundational skills to think critically about data and turn insights into actionable decisions. It covers key areas in data science, statistics, and machine learning, helping learners analyze data confidently and communicate findings effectively in diverse professional settings.
Data Science and Machine Learning for Business Professionals
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Data Science and Machine Learning for Business Professionals

Instructeur : Wiley-Expert Edge Course Instructors
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Ce que vous apprendrez
Evaluate machine learning techniques and their appropriate use cases
Challenge assumptions and identify biases in data and analysis
Communicate data insights effectively to non-technical stakeholders
Compétences que vous acquerrez
- Catégorie : Statistical Inference
- Catégorie : Data Science
- Catégorie : Predictive Modeling
- Catégorie : Machine Learning Methods
- Catégorie : Exploratory Data Analysis
- Catégorie : Business Analytics
- Catégorie : Business Communication
- Catégorie : Unsupervised Learning
- Catégorie : Data Analysis
- Catégorie : Machine Learning
- Catégorie : Communication
- Catégorie : Data Literacy
- Catégorie : Deep Learning
- Catégorie : Data Visualization
- Catégorie : Data-Driven Decision-Making
- Catégorie : Statistics
- Catégorie : Probability & Statistics
- Catégorie : Data Collection
- Catégorie : Text Mining
- Catégorie : Probability
Détails à connaître

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mars 2026
15 devoirs
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Il y a 15 modules dans ce cours
In this section, we learn to define business problems with clear objectives, identify affected stakeholders, and assess data readiness to ensure data projects deliver measurable value and avoid wasted resources.
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2 vidéos3 lectures1 devoir
In this section, we define data as encoded information, classify data types using standard terminology, and differentiate observational and experimental data collection methods, establishing a foundation for accurate analysis and informed decision-making.
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1 vidéo2 lectures1 devoir
In this section, we develop statistical thinking by recognizing variation in data, applying skepticism to claims, and interpreting probabilities in context. These skills enable informed decision-making in business and everyday life.
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1 vidéo2 lectures1 devoir
In this section, we learn to critically assess data quality by questioning its origin, collection methods, and representativeness. We evaluate validity, detect bias and missing data, ensuring reliable insights for informed decision-making.
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1 vidéo4 lectures1 devoir
In this section, we explore exploratory data analysis (EDA) to uncover insights, identify outliers and missing values, and interpret correlations while avoiding causation errors, enabling data-driven decisions through iterative, evidence-based discovery.
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1 vidéo2 lectures1 devoir
In this section, we explore probability notation, conditional reasoning, and common fallacies to enhance critical thinking about uncertainty. You will learn to interpret and challenge probabilistic claims in professional contexts with greater clarity and confidence.
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1 vidéo6 lectures1 devoir
In this section, we examine statistical inference by evaluating sample size, significance levels, null hypotheses, and assumptions of causality. You'll learn to challenge data claims and make informed, evidence-based decisions.
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1 vidéo5 lectures1 devoir
In this section, we explore unsupervised learning to discover hidden patterns in unlabeled data, applying PCA for dimensionality reduction and K-Means clustering to identify natural groupings with practical applications in customer segmentation and media organization.
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1 vidéo3 lectures1 devoir
In this section, we explore linear regression as a foundational method for predicting numerical outcomes. We learn to implement least squares regression, evaluate performance using R-squared and residuals, and identify critical pitfalls like multicollinearity, omitted variables, and data leakage.
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1 vidéo4 lectures1 devoir
In this section, we explore classification models for predicting categorical outcomes using logistic regression, decision trees, and ensemble methods. Key concepts include evaluating performance with confusion matrices and avoiding pitfalls like data leakage and misinterpreted accuracy.
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1 vidéo5 lectures1 devoir
In this section, we transform unstructured text into numerical features using N-grams, word embeddings, and topic modeling. We apply Naïve Bayes for sentiment analysis, enabling actionable insights from customer feedback and textual data.
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1 vidéo6 lectures1 devoir
In this section, we explore how artificial neural networks underpin deep learning, enabling complex tasks like image and language processing. We examine their structure, applications, and the ethical challenges of deploying opaque, black box models in real-world systems.
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1 vidéo6 lectures1 devoir
In this section, we identify common data pitfalls such as survivorship bias, Simpson's Paradox, and algorithmic bias. You'll learn to apply proper train-test splits, detect regression to the mean, and avoid misleading conclusions in real-world data projects.
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1 vidéo3 lectures1 devoir
In this section, we explore how interpersonal dynamics and communication breakdowns impact data projects. By identifying personality types, recognizing red flags, and applying empathy, teams improve collaboration and achieve better outcomes.
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1 vidéo1 lecture1 devoir
In this section, we explore applying statistical thinking to real-world decisions, interpreting ML and AI results critically, and avoiding common data pitfalls. You'll gain the skills to drive informed, evidence-based change in complex environments.
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1 vidéo1 lecture1 devoir
Instructeur

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