Data Science Course
Data Science course provides a deep dive into the field of data science, covering a wide range of topics and skills required for collecting, analyzing, and extracting valuable insights from data. From data wrangling and statistical analysis to machine learning and data visualization. I-Tech System cover most of the topics of Data Science as per industry requirements. This course will prepare you for a successful career in data science.
Enrolling in a Data Science course offers numerous benefits, including acquiring highly demanded skills that can open doors to a range of career opportunities. This field’s growth ensures better job prospects and potentially higher earning potential. Data science equips you with the ability to solve complex problems, make data-driven decisions, and enhance critical thinking. Its versatility extends across various industries, while staying current with evolving techniques and networking opportunities can significantly boost your professional prospects. The certification gained can further validate your expertise, and it’s intellectually stimulating, fostering personal growth and enabling you to address real-world issues effectively.
Data Science Course Details:
Introduction to Data Science
- What is Data Science?
- The Data Science Lifecycle
- The Role of Data Scientists
- Key Skills and Tools
Data Acquisition and Cleaning
- Data Sources and Types
- Data Collection and Storage
- Data Cleaning and Preprocessing
- Dealing with Missing Data
- Data Ethics and Privacy
Exploratory Data Analysis (EDA)
- Exploring Data Distributions
- Data Visualization Techniques
- Summary Statistics
- Detecting Outliers and Anomalies
Data Analysis and Statistics
- Statistical Inference
- Hypothesis Testing
- Regression Analysis
- Correlation and Causation
- Time Series Analysis
Machine Learning Fundamentals
- Introduction to Machine Learning
- Supervised, Unsupervised, and Reinforcement Learning
- Model Evaluation and Validation
- Feature Engineering
Supervised Learning
- Linear Regression
- Logistic Regression
- Decision Trees and Random Forests
- Support Vector Machines
- Neural Networks and Deep Learning
Unsupervised Learning
- Clustering Techniques (K-Means, Hierarchical, DBSCAN)
- Dimensionality Reduction (PCA, t-SNE)
- Anomaly Detection
- Recommender Systems
Natural Language Processing (NLP)
- Text Preprocessing
- Text Classification
- Sentiment Analysis
- Language Modeling
- Named Entity Recognition
Big Data and Distributed Computing
- Introduction to Big Data
- Hadoop and MapReduce
- Apache Spark
- Data Processing in the Cloud
Data Visualization and Communication
- Data Visualization Principles
- Tools and Libraries (e.g., Matplotlib, Seaborn, Tableau)
- Storytelling with Data
- Communicating Data Insights
Real-world Data Science Projects
- Solving Real-world Data Challenges
- Team Collaboration and Project Management
- Presentation of Findings
Ethics and Best Practices in Data Science
- Data Ethics and Bias
- Data Security and Privacy
- Best Practices in Data Science
Course Benefits:
- Hands-on projects and coding exercises
- Real-world datasets and case studies
- Quizzes and assessments for tracking progress
- Access to a community forum for support
- Completion certificate
Duration: 6 Months
- Daily 2 Hrs
- Week End Extra Practice
- Career Guidance sessions
- Week End Batches are also available.
Prerequisites: Basic knowledge of programming (Python is recommended) and mathematics (statistics, linear algebra) is helpful but not required. This course is suitable for beginners and those with some data-related experience.
Target Audience:
- Aspiring data scientists
- Analysts looking to transition into data science
- Software engineers interested in data analysis
- Anyone wanting to harness the power of data for insights and decision-making
Career Opportunities:
Taking a Data Science course provides in-demand skills, enhances career opportunities, fosters data-driven decision-making, and keeps you current in a constantly evolving field.