Industry 5.0 Data Science & AI Professional Program
Published 6/2026
Created by Priya S, Shoba L.K, Jesline Daniel, Anilet Bala A
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Intermediate | Genre: eLearning | Language: English | Duration: 8 Lectures ( 5h 14m ) | Size: 2.4 GB
Complete Data Science Career Program: Python, SQL, Statistics, Machine Learning, Generative AI and Data Visualization
What you'll learn
Requirements
Description
TheIndustry 5.0 Data Science & AI Professional Program is a comprehensive, industry-driven certification program designed to equip learners with the technical knowledge, analytical mindset, and practical skills required to excel in the fields of Data Science, Artificial Intelligence (AI), Machine Learning (ML), Business Analytics, and Intelligent Automation. Structured around the latest Industry 5.0 paradigm, the program emphasizes the seamless integration of human intelligence with AI technologies to create innovative, ethical, and sustainable solutions for complex business and societal challenges.
The curriculum follows a progressive learning approach, beginning withPython programming,data science foundations, anddata acquisition techniques. Learners will gain proficiency in Python programming concepts, including object-oriented programming, exception handling, functions, and advanced data structures, while mastering powerful libraries such asNumPy andPandas for scientific computing and data manipulation. Students will also learn various methods of acquiring data from CSV, Excel, JSON files, web APIs, open datasets, and web scraping techniques, followed by exploratory data analysis (EDA) and data profiling to derive meaningful insights from raw data.
The second phase of the program focuses ondata wrangling, feature engineering, and statistical analysis, enabling learners to transform raw datasets into machine learning-ready data. Topics include data cleaning, missing value treatment, data transformation, normalization, standardization, outlier detection, anomaly detection, feature creation, feature selection, encoding techniques, and dimensionality reduction concepts. Learners will also build a strong foundation in descriptive and inferential statistics, probability distributions, hypothesis testing, confidence intervals, t-tests, chi-square tests, ANOVA, and sampling techniques. Additionally, participants will learn SQL queries, ETL concepts, data warehousing, and large-scale data processing techniques that are widely used in enterprise data engineering workflows.
The program further develops learners' ability to communicate insights throughdata visualization, business analytics, and storytelling. Using industry-standard visualization libraries such asMatplotlib andSeaborn, participants will create professional charts, statistical plots, dashboards, annotations, and multi-panel visualizations. The curriculum also covers business intelligence concepts, KPI development, customer segmentation, cohort analysis, financial analytics, marketing analytics, executive reporting, and interactive dashboard development usingPower BI andTableau. Students will learn the principles of effective data storytelling to transform analytical results into actionable business recommendations that support strategic decision-making.
The advanced component of the program introducesMachine Learning, Industry Analytics, and Generative AI. Learners will study supervised and unsupervised learning algorithms, including linear regression, logistic regression, decision trees, random forests, clustering techniques, principal component analysis (PCA), and model evaluation using confusion matrices, accuracy, precision, recall, F1-score, ROC-AUC, cross-validation, and hyperparameter tuning. The program also introducesScikit-learn, machine learning pipelines, model deployment concepts, andMLOps fundamentals for developing production-ready AI solutions. Learners will explore predictive analytics, customer analytics, fraud detection, supply chain analytics, healthcare analytics, marketing analytics, AutoML, Explainable AI (XAI), and Responsible AI to understand how machine learning is transforming modern enterprises.
Recognizing the growing impact of Artificial Intelligence, the program includes a dedicated module onGenerative AI, covering foundation models, Large Language Models (LLMs), Prompt Engineering, Retrieval-Augmented Generation (RAG), AI-powered analytics assistants, and ethical AI practices. Participants will gain practical experience in leveraging Generative AI tools to automate data analysis, improve productivity, generate business insights, and build intelligent AI-assisted applications. These skills prepare learners to effectively utilize next-generation AI technologies across multiple business domains.
A specialized module onSQL for Data Science enables learners to master relational database concepts, database design, SQL programming, advanced joins, subqueries, common table expressions (CTEs), window functions, exploratory data analysis using SQL, data transformation, and Python-SQL integration. Students will apply SQL techniques for business intelligence, dashboard development, and enterprise data analytics through comprehensive hands-on exercises and an end-to-end capstone project.
Throughout the program, learners will participate inhands-on laboratories, real-world case studies, guided assignments, and industry-oriented capstone projects involving domains such as healthcare, finance, retail, education, marketing, manufacturing, and social media analytics. These practical experiences provide exposure to the complete data science lifecycle, including data collection, preprocessing, statistical analysis, machine learning model development, visualization, deployment, and presentation of analytical findings.
Upon successful completion of the program, participants will possess the technical expertise and practical experience required to design intelligent data-driven solutions, develop AI-enabled applications, build interactive dashboards, deploy machine learning models, and support strategic business decisions using advanced analytics. Graduates of this program will be well prepared for careers asData Scientists, Data Analysts, Machine Learning Engineers, AI Engineers, Business Intelligence Developers, Analytics Consultants, Data Engineers, AI Solution Architects, and Business Analytics Professionals, enabling them to contribute effectively to digital transformation initiatives and intelligent enterprise ecosystems in theIndustry 5.0 era.
Who this course is for
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https://www.udemy.com/course/industry-data-science-ai-professional-program
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