knowledge from data through algorithm, statistical model and machine learning techniques. Computer science, statistics and domain combines expertise. The large dataset focuses on patterns and trends
data. Searching data analysis (EDA): Understanding the data pattern. Data cleaning: handling missing or inconsistent data. Modelling and algorithms: Building Predictive Model. •Data visualization: presenting visually insight.
business problem. •Prepare the Data: Collect, clean, and process the data. •Explore the Data: Perform EDA and visualize trends. •Build Models: Create machine learning or statistical models. •Evaluate Models: Assess accuracy and refine the models. •Deploy Models: Implement the model for real-world use.
of AI that uses algorithms to analyze data and make predictions or decisions without explicit programming. Key Types: •Supervised Learning: Learning from labeled data. •Unsupervised Learning: Identifying patterns in unlabeled data. •Reinforcement Learning: Learning based on feedback and reward.
•Data Privacy: Protecting user information and complying with regulations. •Interpretability: Making models understandable to non-experts. •Bias and Fairness: Addressing biases in data and ensuring fairness. •Visual: A list with icons representing each challenge.
more automated. •AI Integration: Deeper collaboration between AI and data science. •Quantum Computing: The next frontier for data processing. •Ethics: Increased focus on data privacy, fairness, and accountability. •Visual: A futuristic graphic, possibly illustrating AI, quantum computing, and automation.
studying Data Science course in Kerala, We should see some factors like reputation for Data Science programs, Placement records, accreditation, and the course duration and fess,