Data Science

what-is-data-science

At Divine Tech Skills, our Data Science course is designed to equip professionals and aspiring data enthusiasts with the most in-demand skills in today’s data-driven world. This comprehensive program blends theory with practical learning, enabling learners to extract valuable insights from complex datasets and make data-driven decisions confidently.

The course covers key areas such as Python for Data Science, data visualization, statistics, machine learning, data wrangling, and model deployment, ensuring a complete skill set. Whether you’re a beginner or looking to upskill, our hands-on projects and real-world case studies provide practical experience that aligns with industry needs.

Delivered by industry experts, this course also emphasizes corporate application of data science—helping organizations make strategic decisions backed by data. With personalized mentorship, project-based learning, and post-course career guidance, learners will be ready to take on roles like Data Analyst, Data Scientist, Machine Learning Engineer, or Business Analyst.

Join Divine Tech Skills to unlock the power of data and accelerate your career in the evolving world of analytics and artificial intelligence.

  • What is Data Science?
  • Data Science workflow
  • Applications in various industries
  • Role of a Data Scientist
  • Installing Python & Jupyter Notebooks (Anaconda, VS Code)
  • Python Basics:
         1. Variables, Data types
        2.Control structures (if, for, while)
        3. Functions & lambda
        4. List, Tuple, Dictionary, Set
  • File handling (CSV, TXT, JSON)
  • Exception handling
  • Introduction to NumPy
  • Arrays and Vectorized computation
  • Array indexing and slicing
  • Mathematical and statistical operations
  • Broadcasting
  • Series and DataFrames
  • Reading/writing data (CSV, Excel, SQL)
  • Data cleaning & wrangling:
          1. Handling missing values
         2. Filtering, sorting, groupby
         3. Merging, joining, concatenation
  • Date/time handling
  • Matplotlib:
          1. Line, bar, scatter plots
         2. Customizing plots
  • Seaborn:
         1. Histograms, boxplots, violin plots
        2. Correlation heatmaps
        3. Pairplots and categorical plots
  • Intro to Plotly (for interactive visuals)
  • Descriptive statistics
  • Probability concepts
  • Distributions (normal, binomial, etc.)
  • Inferential statistics:
          1. Hypothesis testing
         2. t-tests, chi-square
  • Confidence intervals
  • Understanding the dataset
  • Univariate & multivariate analysis
  • Outlier detection
  • Feature relationships
  • Visual storytelling with data
  • ML Workflow (Problem → Data → Model → Evaluate)
  • Supervised Learning:
          1. Linear/Logistic Regression
         2. Decision Trees & Random Forest
         3. K-Nearest Neighbors
         4. SVM
  • Unsupervised Learning:
         1. K-Means Clustering
        2. Hierarchical Clustering
        3. PCA (Dimensionality Reduction)
  • Model Evaluation:
        1. Confusion matrix
       2. Accuracy, precision, recall, F1 score
       3. Cross-validation
  • Handling categorical data (Label Encoding, One-Hot Encoding)
  • Scaling and normalization
  • Feature selection methods
  • Hyperparameter tuning (GridSearchCV, RandomizedSearchCV)
  • Pipeline creation
  • Kaggle Datasets / UCI Datasets
  • End-to-end project walkthrough
  • Cleaning, EDA, Modeling, Deployment (basic)
  • What is Deep Learning?
  • Intro to TensorFlow / Keras
  • Simple Neural Networks
  • Image/Text classification basics
  • Choosing a domain
  • Project planning and execution
  • GitHub portfolio setup
  • Resume building for Data Science roles
  • Preparing for interviews
  • Python
  • Jupyter Notebook
  • NumPy, Pandas
  • Matplotlib, Seaborn, Plotly
  • Scikit-learn
  • TensorFlow/Keras (optional)
  • Git & GitHub
  • Streamlit (for app deployment, optional)

Duration: 40 hours

  • Complete training in Python, statistics, machine learning, and data visualization
  • Real-world projects and case studies for hands-on experience
  • Industry-relevant tools: Pandas, NumPy, Matplotlib, Scikit-learn, and more
  • Practical exposure to data cleaning, modeling, and deployment techniques
  • Expert-led sessions with mentorship from data professionals
  • Designed for beginners and professionals looking to upskill
  • Focus on real-time business problem solving with data
  • Interactive Q&A sessions and performance assessments
  • Certification upon completion
  • Career guidance and job readiness support

Curious? Let’s Talk – Enquire Now!