← Back to Products
Data Science and Analytics for AI
COURSE

Data Science and Analytics for AI

INR 59
0.0 Rating
📂 Nasscom FutureSkills Prime

Description

Comprehensive data science skills including data collection, cleaning, analysis, visualization, and statistical modeling essential for AI applications.

Learning Objectives

Learners will master data collection and preprocessing techniques for AI applications, perform exploratory data analysis and statistical modeling, create effective data visualizations and dashboards, implement big data processing for large-scale AI systems, conduct A/B testing and experimental design for AI products, and apply business intelligence techniques to derive actionable insights from AI-generated data.

Topics (8)

1
Big Data Processing and Distributed Computing

Big data technologies including Apache Spark, Hadoop ecosystem, distributed computing concepts, and cloud-based big data services for processing large-scale datasets required for AI training and inference.

2
Data Collection and Preprocessing

Data collection methods including web scraping, API integration, database querying, and sensor data collection, along with preprocessing techniques for handling missing data, outliers, and data quality issues.

3
Exploratory Data Analysis and Statistical Modeling

EDA techniques including descriptive statistics, correlation analysis, hypothesis testing, regression analysis, and statistical modeling for understanding data distributions and relationships in AI datasets.

4
Data Visualization and Dashboard Development

Data visualization principles and tools including matplotlib, seaborn, plotly, Tableau, Power BI, and D3.js for creating static and interactive visualizations and dashboards for AI applications.

5
Time Series Analysis and Forecasting

Time series analysis including trend analysis, seasonal decomposition, ARIMA models, exponential smoothing, and deep learning approaches (LSTM, Prophet) for forecasting and temporal pattern recognition.

6
A/B Testing and Experimental Design

Experimental design principles including A/B testing, multivariate testing, statistical power analysis, and causal inference techniques for evaluating AI system performance and business impact.

7
Business Intelligence and Analytics

Business intelligence concepts including KPI development, performance metrics, analytics frameworks, and business analytics tools for translating AI insights into business value and strategic decisions.

8
Advanced Analytics and Predictive Modeling

Advanced analytics including predictive modeling, prescriptive analytics, optimization techniques, simulation methods, and decision support systems for AI-powered business intelligence and strategic planning.