Quantitative Data management, analysis and Visualization with Python
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Quantitative Data management, analysis and Visualization with Python

10 Days Online - Virtual Training

NB: HOW TO REGISTER TO ATTEND

Please choose your preferred schedule.Fill out the form with your personal and organizational details and submit it. We will promptly process your invitation letter and invoice to facilitate your attendance at our workshops. We eagerly anticipate your registration and participation in our Skill Impact Trainings. Thank you.

# Start Date End Date Duration Location Registration
50 18/11/2024 29/11/2024 10 Days Live Online Training
51 09/12/2024 20/12/2024 10 Days Live Online Training
52 09/12/2024 20/12/2024 10 Days Live Online Training
53 09/12/2024 20/12/2024 10 Days Live Online Training
54 23/12/2024 03/01/2025 10 Days Live Online Training
55 06/01/2025 17/01/2025 10 Days Live Online Training
56 06/01/2025 17/01/2025 10 Days Live Online Training
57 20/01/2025 31/01/2025 10 Days Live Online Training
58 03/02/2025 14/02/2025 10 Days Live Online Training
59 17/02/2025 28/02/2025 10 Days Live Online Training
60 03/03/2025 14/03/2025 10 Days Live Online Training
61 17/03/2025 28/03/2025 10 Days Live Online Training
62 31/03/2025 11/04/2025 10 Days Live Online Training
63 14/04/2025 25/04/2025 10 Days Live Online Training
64 05/05/2025 16/05/2025 10 Days Live Online Training
65 19/05/2025 30/05/2025 10 Days Live Online Training

Introduction:

Welcome to the dynamic and comprehensive course on "Quantitative Data Management, Analysis, and Visualization with Python." In today's data-centric world, the ability to extract meaningful insights from vast datasets is a critical skill. Python, with its rich ecosystem of libraries and tools, has emerged as a powerhouse for handling, analyzing, and visualizing quantitative data. This course is designed to be your guide through the intricate landscape of data management, statistical analysis, and the creation of compelling visualizations. Whether you're a seasoned data professional or just starting your journey, this course provides a holistic exploration of Python's capabilities, offering hands-on experience and practical skills essential for anyone working with quantitative data.

Navigating the Python Data Universe:

As we embark on this learning adventure, we'll delve into the fundamentals of Python programming, ensuring a solid foundation for subsequent explorations. From the essentials of data importation and cleaning to advanced statistical modeling and machine learning, each module of this course is crafted to enhance your proficiency in quantitative analytics. The course is not just about syntax and libraries; it's a journey into the strategies and methodologies employed in real-world data projects. Through engaging case studies and practical exercises, you'll gain the confidence to navigate the Python data universe, making informed decisions, and deriving actionable insights from diverse datasets.

Practical Expertise for Today's Challenges:

The course goes beyond theory, focusing on equipping you with practical expertise that aligns with the demands of contemporary data analysis. Whether you are aiming to enhance your career prospects, embark on a data science journey, or bolster your decision-making capabilities, this course is your gateway to a deeper understanding of Python's role in quantitative data management, analysis, and visualization. From statistical inference and machine learning to advanced visualization techniques, each module contributes to a holistic skill set. Get ready to unlock the full potential of Python and elevate your capabilities in the quantitative data landscape.

Course Objectives:

1.      Foundations of Python Programming: Establish a solid understanding of Python fundamentals, including syntax, variables, and data types.

2.      Data Import and Cleaning: Master techniques for importing data from various sources and implementing effective data cleaning strategies.

3.      Data Manipulation with Pandas: Gain proficiency in using the Pandas library for efficient data manipulation, including filtering, grouping, and merging datasets.

4.      Exploratory Data Analysis (EDA): Develop skills in exploratory data analysis, utilizing statistical and visual techniques to uncover patterns and relationships.

5.      Statistical Inference with Scipy: Understand principles of statistical inference using the Scipy library, including hypothesis testing and confidence intervals.

6.      Linear Regression with Statsmodels: Delve into linear regression analysis, covering model formulation, diagnostics, and interpretation.

7.      Multivariate Analysis with Scikit-learn: Explore multivariate analysis techniques, including multiple regression, clustering, and dimensionality reduction.

8.      Time Series Analysis with Statsmodels: Acquire skills in time series analysis, forecasting, and identifying temporal patterns.

9.      Machine Learning Basics with Scikit-learn: Introduction to machine learning concepts and algorithms, including decision trees and support vector machines.

10.  Data Visualization with Matplotlib and Seaborn: Learn to create compelling visualizations using the Matplotlib and Seaborn libraries, enhancing data communication.

Organization Benefits:

1.      Enhanced Analytical Competence: Equip the organization with professionals proficient in Python for quantitative data management and analysis.

2.      Efficient Data Handling: Improve data handling efficiency through Python, ensuring streamlined data manipulation and cleaning processes.

3.      Informed Decision-Making: Empower decision-makers with reliable insights derived from sophisticated quantitative analyses.

4.      Cost-Efficient Analysis: Utilize Python's open-source nature to minimize software costs while maximizing analytical capabilities.

5.      Strategic Planning: Support strategic planning through statistical modeling and forecasting, aiding evidence-based decision-making.

6.      Cross-Functional Collaboration: Foster collaboration between data analysts, researchers, and decision-makers by establishing a common analytical platform.

7.      Advanced Data Visualization: Enhance data communication through advanced visualization techniques, enabling clearer insights for stakeholders.

8.      Risk Mitigation Strategies: Develop robust strategies for mitigating risks through advanced statistical analysis, enhancing organizational resilience.

9.      Customized Training: Tailor the course content to address specific organizational needs and industry applications of quantitative data analysis.

10.  Continuous Improvement: Establish a culture of continuous improvement by enabling professionals to stay abreast of the latest trends and techniques in quantitative data analysis with Python.

Target Participants:

This course is designed for professionals, analysts, researchers, and decision-makers seeking to enhance their skills in quantitative data management and analysis using Python. It is suitable for individuals from diverse industries such as finance, healthcare, marketing, and academia, where data-driven decision-making is integral. Participants should have a basic understanding of statistics and data analysis concepts, as the course delves into advanced quantitative techniques using the Python programming language.

Course Outline:

1. Foundations of Python Programming:

·         Introduction to Python Syntax and Basics

·         Variables, Data Types, and Operators

·         Control Flow and Loops

·         Functions and Modules in Python

·         Error Handling and Exception

·         List Comprehensions and Generators

·         File Handling in Python

·         Object-Oriented Programming (OOP) Concepts

·         Python Libraries Overview (NumPy, Pandas, Matplotlib, Seaborn)

·         Introduction to Jupyter Notebooks

2. Data Import and Cleaning in Python:

·         Importing Data from Different Sources (CSV, Excel, SQL)

·         Reading and Writing Data with Pandas

·         Data Cleaning Strategies: Handling Missing Data

·         Data Validation Techniques

·         Reshaping Data with Pandas

·         Handling Duplicate and Outlier Data

·         Case Study: Cleaning and Preparing Real-world Datasets

·         Data Cleaning Automation Techniques

·         Advanced Data Cleaning Strategies

·         Integrating Data Cleaning into Data Pipelines

3. Data Manipulation with Pandas:

·         Overview of Pandas Library

·         Data Indexing and Selection

·         Data Filtering and Sorting

·         Grouping and Aggregation

·         Combining and Merging DataFrames

·         Pivoting and Melting Data

·         Time Series Analysis with Pandas

·         Case Study: Efficient Data Manipulation with Pandas

·         Memory Optimization in Pandas

·         Handling Large Datasets with Pandas

4. Exploratory Data Analysis (EDA) in Python:

·         Descriptive Statistics with NumPy and Pandas

·         Data Visualization with Matplotlib and Seaborn

·         Univariate and Bivariate Analysis

·         Correlation and Covariance

·         Advanced Plot Customization

·         Interactive Data Visualization with Plotly

·         Statistical Analysis and Hypothesis Testing

·         Outlier Detection and Treatment

·         Case Study: Exploring and Visualizing Datasets

·         Advanced EDA Techniques

5. Statistical Inference with Scipy:

·         Introduction to Scipy Library

·         Sampling Distributions and Central Limit Theorem

·         Hypothesis Testing: One-sample, Two-sample

·         Confidence Intervals

·         ANOVA and Chi-Square Tests

·         Non-parametric Tests

·         Case Study: Conducting Inferential Statistics with Scipy

·         Bayesian Inference with PyMC3

·         Power Analysis and Sample Size Determination

·         Advanced Statistical Inference Techniques

6. Linear Regression with Statsmodels:

·         Simple Linear Regression

·         Multiple Linear Regression

·         Model Assumptions and Diagnostics

·         Variable Selection Techniques

·         Interaction Effects and Polynomial Regression

·         Regularized Regression (Lasso, Ridge, Elastic Net)

·         Time Series Regression

·         Case Study: Predictive Modeling with Linear Regression

·         Advanced Topics: Generalized Linear Models (GLM)

·         Bayesian Regression with PyStan

7. Multivariate Analysis with Scikit-learn:

·         Overview of Scikit-learn Library

·         Multiple Regression Analysis

·         Principal Component Analysis (PCA)

·         Factor Analysis and Canonical Correlation Analysis (CCA)

·         Discriminant Analysis: Linear and Quadratic

·         Clustering Techniques: K-Means, Hierarchical, DBSCAN

·         Case Study: Applying Multivariate Techniques

·         Ensemble Learning: Random Forest, Gradient Boosting

·         Dimensionality Reduction Techniques

·         Model Interpretability and Feature Importance

8. Time Series Analysis with Statsmodels:

·         Time Series Data and Components

·         Autocorrelation and Partial Autocorrelation

·         ARIMA and SARIMA Models

·         Exponential Smoothing Methods

·         Seasonal Decomposition of Time Series (STL)

·         Time Series Forecasting Techniques

·         Case Study: Analyzing and Forecasting Time Series Data

·         Advanced Topics: Prophet, DeepAR, LSTM Networks

·         Time Series Cross-Validation Strategies

·         Handling Irregular Time Series Data

9. Machine Learning Basics with Scikit-learn:

·         Introduction to Machine Learning

·         Supervised Learning Algorithms: Decision Trees, Random Forest, SVM

·         Unsupervised Learning Algorithms: K-Means Clustering, Hierarchical Clustering

·         Model Evaluation Metrics: Accuracy, Precision, Recall, F1 Score

·         Cross-Validation Techniques

·         Hyperparameter Tuning and Model Optimization

·         Case Study: Applying Machine Learning in Python

·         Ensemble Learning Techniques

·         Advanced Topics: Neural Networks, XGBoost, LightGBM

·         Transfer Learning and Model Interpretability

10. Data Visualization with Matplotlib and Seaborn:

·         Introduction to Matplotlib and Seaborn Libraries

·         Creating Line Plots, Bar Charts, and Scatter Plots

·         Customizing Plot Aesthetics

·         Advanced Visualization Techniques

·         Creating Interactive Visualizations with Plotly

·         Geographic Data Visualization with Geopandas

·         Network Visualization with NetworkX

·         Case Study: Designing Compelling Data Visualizations

·         Dashboard Creation with Dash or Streamlit

·         Visualizing Big Data: Handling Large Datasets in Visualization

11. Advanced Data Visualization Techniques:

·         3D Data Visualization with Matplotlib and Plotly

·         Visualizing Time Series Data

·         Animation in Data Visualization

·         Custom Plot Types: Violin Plots, Radar Charts

·         Interactive Dashboards with Tableau or Power BI

·         Designing Infographics for Data Presentation

·         Visualizing Uncertainty and Confidence Intervals

·         Case Study: Exploring Complex Data Patterns through Visualization

·         Dashboard Deployment and Sharing Strategies

·         Real-time Data Visualization Techniques

12. Web Scraping and Data Acquisition:

·         Basics of Web Scraping with Beautiful Soup

·         Extracting Data from HTML and XML

·         API Integration for Data Retrieval

·         Web Scraping Ethical Considerations and Best Practices

·         Case Study: Acquiring and Analyzing Web-based Data

·         Handling Authentication and Session Management

·         Automated Data Collection from Multiple Sources

·         Advanced Web Scraping Techniques

·         Web Scraping for Dynamic Websites

·         Web Scraping with Selenium and Headless Browsers

 

13. Text Mining and Natural Language Processing (NLP):

·         Introduction to Text Mining and NLP

·         Text Preprocessing Techniques: Tokenization, Lemmatization

·         Named Entity Recognition (NER)

·         Sentiment Analysis and Text Classification

·         Document Similarity and Clustering

·         Case Study: Analyzing Textual Data with Python

·         Topic Modeling with Latent Dirichlet Allocation (LDA)

·         Text Embeddings and Word2Vec

·         Text Mining Applications in Industry

·         Advanced NLP Techniques: BERT, GPT

14. Big Data Analytics with PySpark:

·         Overview of PySpark and Spark Ecosystem

·         Working with Resilient Distributed Datasets (RDDs)

·         DataFrames and SQL Operations in PySpark

·         Machine Learning with PySpark MLlib

·         Streaming Analytics with PySpark

·         Case Study: Scaling Analytics with PySpark

·         Handling Big Data Challenges: Storage and Processing

·         PySpark Optimization Techniques

·         Real-time Analytics with Spark Streaming

·         Integration with Cloud Platforms: AWS, Azure, Google Cloud

15. Deployment and Integration:

·         Exporting Results to Different Formats (Excel, CSV, SQL)

·         Integration with Databases: SQL and NoSQL

·         Building Interactive Dashboards with Dash or Streamlit

·         Deploying Machine Learning Models with Flask or FastAPI

·         Case Study: Integrating Python Analytics into Business Processes

·         Creating RESTful APIs for Data Access

·         Containerization with Docker for Analytics Applications

·         Cloud Deployment Strategies: AWS Lambda, Google Cloud Functions

·         Continuous Integration and Deployment (CI/CD) for Analytics

·         Final Project: End-to-End Data Analysis and Visualization Project

General Information

1.      Customized Training: All our courses can be tailored to meet the specific needs of participants.

2.      Language Proficiency: Participants should have a good command of the English language.

3.      Comprehensive Learning: Our training includes well-structured presentations, practical exercises, web-based tutorials, and collaborative group work. Our facilitators are seasoned experts with over a decade of experience.

4.      Certification: Upon successful completion of training, participants will receive a certificate from Foscore Development Center (FDC-K).

5.      Training Locations: Training sessions are conducted at Foscore Development Center (FDC-K) centers. We also offer options for in-house and online training, customized to the client's schedule.

6.      Flexible Duration: Course durations are adaptable, and content can be adjusted to fit the required number of days.

7.      Onsite Training Inclusions: The course fee for onsite training covers facilitation, training materials, two coffee breaks, a buffet lunch, and a Certificate of Successful Completion. Participants are responsible for their travel expenses, airport transfers, visa applications, dinners, health/accident insurance, and personal expenses.

8.      Additional Services: Accommodation, pickup services, freight booking, and visa processing arrangements are available upon request at discounted rates.

9.      Equipment: Tablets and laptops can be provided to participants at an additional cost.

10.  Post-Training Support: We offer one year of free consultation and coaching after the course.

11.  Group Discounts: Register as a group of more than two and enjoy a discount ranging from 10% to 50%.

12.  Payment Terms: Payment should be made before the commencement of the training or as mutually agreed upon, to the Foscore Development Center account. This ensures better preparation for your training.

13.  Contact Us: For any inquiries, please reach out to us at training@fdc-k.org or call us at +254712260031.

14.  Website: Visit our website at www.fdc-k.org for more information.

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