Disruption Selection: Choose a specific disruption to focus on, such as a recent economic crisis, a major technological innovation, or a significant shift in consumer preferences. Keyword Identification: Identify relevant keywords and hashtags associated with the chosen disruption. This could include the name of the event, industry-specific terms, and brand mentions of key companies involved. Data Collection Tools: Utilize Twitter's search functionalities or employ social media listening tools to collect tweets containing the identified keywords and hashtags. Define a timeframe for data collection, encompassing the period before, during, and after the disruption. Data Preprocessing: Clean and pre-process the collected data. This may involve removing irrelevant tweets, correcting typos, and standardizing language. Sentiment Analysis: Apply sentiment analysis techniques to gauge the emotional tone of the tweets. This can reveal whether companies are communicating with a sense of urgency, optimism, or negativity in response to the disruption. Topic Modeling: Employ topic modeling algorithms to identify recurring themes within the tweets. This can help uncover the key communication strategies and priorities adopted by businesses during the disruption.