About the Program
The program on ‘Applied Data Science with Python’ covers a wide range of topics in applied data science, statistical intuitions, Python programming, data manipulation techniques, data engineering foundations, ML algorithms, data storytelling, visualizations, and model deployment. L&T collaborates with indus_x0002_try experts to ensure that the course content is up-to-date and relevant to current industry trends and practices. The course likely includes practical, hands-on projects that allow students to apply their learning in real-world scenarios.
Courses
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Credits Semester
- Data Science Fundamentals and Statistical Intuitions with Python Programming 3 III
- Data Manipulation and Analysis Techniques using Python Libraries 3 IV
- Data-Engineering Foundations with SQL and Hadoop Eco System Tools 3 V
- ML Algorithms Intuition and Model Building with Hyper-Parameter Tuning Techniques 3 V
- Data Storytelling, Visualizations, and Model Deployment 3 VI
- External Data Handling with Sqoop, Flume, and ETL Process with Hive 3 VII
- Project Work - The Data Science Capstone: Exploring the Data Lifecycle with Best Practices 3 VIII
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Credits Semester
- IT World Essentials: Your Digital Entrypoint 3 I
- Critical Thinking, Design Thinking, Leadership and Teamwork 3 II
- Project Work - The Data Science Capstone: Exploring the Data Lifecycle with Best Practices 3 VIII
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Credits Semester
- Critical Thinking, Design Thinking, Leadership and Teamwork 3 II
- Career Readiness in Digital Era 3 VI
Mode of Delivery
- Self-paced learning – 12 hours
- Expert sessions + Project work – 33 hours
- Face-to-face instructor led sessions / VILT sessions (including project work) – 45 hours
- Self-paced learning + Expert session – 45 hours
Job Roles
- Machine Learning Engineer
- Data Scientist
- AI Research Scientist
- Data Engineer
- Data Science Consultant
- Data Analyst
- Business Intelligence Analyst
Software Tools
- Python
- Jupyter
- SQL
- Hadoop MapReduce
- Apache Spark
- Apache Pig
- Apache Hive
- Microsoft Excel
- Scala
- Power BI
- PyTorch
- Tableau
- TensorFlow
Skills
- Analyzing and interpreting data science concepts and statistical methods using Python.
- Manipulating and cleaning datasets with Python libraries like pandas, NumPy, and SciPy.
- Performing exploratory data analysis (EDA) and hypothesis testing to extract insights from data.
- Implementing large-scale data processing using Hadoop ecosystem tools (HDFS, MapReduce, Hive).
- Building and training machine learning models using algorithms like regression, classification, and clustering.
- Visualizing data and presenting insights using Power BI, Tableau, and Python visualization libraries.
- Deploying machine learning models to production environments using frameworks like Flask, Django, or FastAPI.
- Handling external data integration with Sqoop, Flume, and managing ETL processes in Hadoop with Hive.
