The exponential proliferation of data generated by social media platforms, Internet of Things (IoT) devices, scientific instruments, healthcare information systems, and enterprise applications has fundamentally redefined the landscape of computational analysis. Big data, characterized by the canonical five V's — volume, velocity, variety, veracity, and value — presents unprecedented opportunities for knowledge discovery while simultaneously imposing formidable challenges on existing analytical and visualization paradigms. This paper presents a comprehensive survey of the current state of big data visualization and analytics, with particular emphasis on future research challenges and emerging applications across domains such as healthcare informatics, smart cities, financial analytics, scientific computing, and edge intelligence. We systematically examine the underlying technological infrastructure, including distributed processing frameworks (Hadoop, Spark, Flink), NoSQL data stores, in-memory computing engines, and cloud-native analytics platforms. We critically analyze visualization techniques ranging from classical statistical graphics to advanced immersive and augmented-reality interfaces. Furthermore, we identify nine principal research challenges — scalability, real-time processing, heterogeneity, interactivity, security and privacy, interpretability, energy efficiency, human cognition limits, and ethical governance — and discuss promising research directions that integrate artificial intelligence, edge computing, federated learning, quantum-inspired analytics, and explainable visualization. The paper concludes that the convergence of advanced analytics with intuitive visualization will be a defining factor in transforming raw data into actionable knowledge across virtually every sector of the global economy.
Chandra Sekhar Bera (Thu,) studied this question.