Data Engineering has come a long way! From simple databases to massive-scale data pipelines, this field has shaped the way businesses operate today. But how did it all begin? Let's take a journey through time! β³
π 1960s - 1980s: The Era of Databases
πΎ IBM introduced hierarchical databases.
π’οΈ Relational Databases (RDBMS) revolutionized data storage (Oracle, MySQL, PostgreSQL).
π Structured data became the norm for enterprises.
π 1990s - 2000s: The Rise of Big Data
π Google introduced MapReduce, changing how data is processed.
π Hadoop & NoSQL databases (MongoDB, Cassandra) emerged.
π Data grew exponentially with the rise of the internet.
π₯ 2010s: The Cloud & Real-time Revolution
βοΈ Cloud computing (AWS, Azure, GCP) made data storage & processing scalable.
β‘ Real-time streaming (Kafka, Spark) became a game-changer.
π Data pipelines & ETL tools (Airflow, Snowflake) evolved.
π€ 2020s & Beyond: AI & Automation-Driven Data Engineering
π Data Mesh & Data Fabric models introduced.
π€ AI-powered automation in data pipelines.
π Companies leveraging data as an asset like never before!
π‘ What's Next? With the rise of AI & ML, Data Engineering is more critical than ever! As technology advances, we will see self-optimizing data pipelines, decentralized data architectures, and real-time AI-driven insights. π
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