Modern enterprises require a comprehensive, high-throughput, and low-latency real-time data feeds platform for operational intelligence. Kafka is beneficial for managing complex data pipelines and real-time data streams due to its ability to handle high-throughput data feeds with low latency times without occupying valuable computing resources. An optimal enterprise data observability solution should incorporate a Spark engine and treat Kafka as a first-class citizen with exclusive privileges, complementing Kafka's advanced data pipeline and analysis capabilities. Kafka can efficiently handle real-time data streams within milliseconds, manage continuously changing data using change data capture techniques, and work with microservices to handle complex data pipelines at scale. Combining Kafka with a multidimensional data observability solution like Acceldata allows businesses to make effective data-driven decisions in real-time by improving data quality, creating effective pipelines, automating processes, and analyzing data.