Global Certificate in Urban Mobility Data Analytics

-- ViewingNow

The Global Certificate in Urban Mobility Data Analytics is a comprehensive course designed to equip learners with essential skills in urban mobility data analytics. This course is crucial in today's world, where smart cities and sustainable transportation solutions are in high demand.

4.0
Based on 6,684 reviews

4,500+

Students enrolled

GBP £ 140

GBP £ 202

Save 44% with our special offer

Start Now

이 과정에 대해

This certificate program provides learners with a deep understanding of data analytics techniques and tools, enabling them to analyze and interpret urban mobility data effectively. It covers topics such as data collection, cleaning, and visualization, as well as predictive modeling and machine learning techniques. Upon completion of this course, learners will be able to use data to inform transportation policies and infrastructure decisions, improving the quality of life in cities around the world. With the growing importance of data-driven decision-making in urban planning and mobility, this course is an excellent investment in career advancement for professionals in this field.

100% 온라인

어디서든 학습

공유 가능한 인증서

LinkedIn 프로필에 추가

완료까지 2개월

주 2-3시간

언제든 시작

대기 기간 없음

과정 세부사항

• Introduction to Urban Mobility Data Analytics: Defining urban mobility, data analytics, and their intersection. Understanding the importance of data-driven decision making in urban mobility planning.
• Data Collection and Management: Identifying and gathering relevant data from various sources (e.g., public transportation, ride-sharing, GPS, sensors). Ensuring data quality, consistency, and completeness.
• Data Cleaning and Pre-processing: Techniques for handling missing values, outliers, and incorrect entries. Normalizing and transforming data for further analysis.
• Data Visualization: Exploratory data analysis using visual methods. Presenting data in charts, graphs, and maps to reveal patterns, trends, and correlations.
• Statistical Analysis: Applying statistical methods to analyze urban mobility data. Hypothesis testing, regression analysis, and time-series analysis.
• Predictive Modeling: Building predictive models using machine learning algorithms. Identifying patterns and relationships between variables to forecast future trends.
• Transportation Mode Detection: Detecting transportation modes in multi-modal datasets. Distinguishing between walking, cycling, public transportation, and private vehicle usage.
• Traffic Flow and Simulation: Modeling traffic flow, congestion, and public transportation systems. Understanding the impact of infrastructure changes on urban mobility.
• Ethics and Privacy in Urban Mobility Data Analytics: Addressing ethical concerns, ensuring data privacy, and complying with regulations. Understanding the potential impact of data analytics on society and individuals.

경력 경로

SSB Logo

4.8
새 등록