Certificate in Data Science (CDS)
Course Methodology
All analytical methods and solutions are elaborated with step-by-step case studies with practical, hands on experiences. An exhaustive documentation will cover analytical topics with an exclusive face-to-face comparison between SAS, SPSS, STATISTICA, Excel, R and Python.
Course Objectives
By the end of the course, participants will be able to:
- Understand and structure data for effective analysis
- Evaluate solutions for Data Analysis versus Machine Learning
- Distinguish between predictive models and pattern-detection models
- Make informed choices between proprietary and open-source technologies
- Map the modern data workflow from raw sources to finalized reports
- Oversee Data Science projects using project management best practices
Target Audience
This course is for specialists who aspire to become accustomed with data science components, and how they can be applied coordinately to solve data and business problems, as well as research issues. The course is specifically suited for managers and persons involved in marketing, CRM, research, manufacturing, quality control, app developers and IT analysts from almost any sector, such as banks, insurance companies, retail, governments, manufacturers, healthcare, telecom, transport and distributors.
Target Competencies
- Business data analysis
- Data analytic validity
- Judging AI algorithms
- Evaluating IoT platforms
- Comparing big data results
Course Outline
- Data Analysis and Visualization
- Understanding data types and visualization techniques
- Assessing the representativeness of data
- Summarizing data using descriptive statistics
- Profiling multiple groups with statistical tests
- Creating advanced visualizations with smart charts
- Simple Linear Regression and Logistic Regression
- Identifying and addressing outliers
- Machine Learning – Supervised
- Multiple Linear and Logistic Regression
- Discriminant Analysis: Functions and probabilistic models
- Decision Trees: CART, CHAID, and Random Forests
- Support Vector Machines and K-Nearest Neighbors
- Naïve Bayes
- Neural Networks, Deep Learning, and AI applications
- Business Intelligence Forecasting – R vs. Python
- Fundamentals of Business Intelligence
- Data collection and database sources
- ETL processes (Extract, Transform, Load)
- Data storage: Warehouses, marts, and lakes
- Analytics tools: BI platforms, OLAP, dashboards, etc.
- Forecasting methods and trend analysis
- Exponential smoothing (additive and multiplicative)
- Time Series Analysis and ARIMA models
- Comparison of R and Python in statistical tests and ML algorithms
- Machine Learning – Unsupervised
- Principal Component Analysis (PCA)
- Clustering techniques: Hierarchical and K-Means
- Simple Correspondence Analysis
- Multidimensional Scaling
- Quadrant Analysis
- Project Management for Data Scientists (PMP)
- Introduction to PMP for Data Science projects
- Managing integration, scope, and cost
- Handling time, quality, and communication
- Risk management, procurement, and stakeholder engagement
- IoT and Big Data Ecosystem
- Essentials of IoT, M2M, and embedded systems
- Basic IoT communication protocols
- Big Data fundamentals: “Where” and “When”
- Distributed file systems with HDFS
- Comparing MapReduce and Spark for data sharing
- Overview of the Big Data ecosystem: Spark, MongoDB, Cassandra, Flume, Cloudera, Oozie, and Mahout
2026 Schedule & Fees
Location & Date
| Date | City | Language | Price | Action |
|---|---|---|---|---|
| No upcoming sessions are currently scheduled. Contact Us | ||||
Virtual Learning
Ready to advance your career?
Join thousands of professionals who have already enhanced their skills with Al Mawred.
Register for this course