Research alternative solutions to Apache Kylin on G2, with real user reviews on competing tools. Data Warehouse Solutions is a widely used technology, and many people are seeking reliable, time saving software solutions with ai/ ml integration, data lake integration, and ai text generation. Other important factors to consider when researching alternatives to Apache Kylin include integration. The best overall Apache Kylin alternative is Snowflake. Other similar apps like Apache Kylin are Databricks Data Intelligence Platform, Amazon Redshift, Google Cloud BigQuery, and IBM Db2. Apache Kylin alternatives can be found in Data Warehouse Solutions but may also be in ETL Tools or Big Data Processing And Distribution Systems.
Snowflake’s platform eliminates data silos and simplifies architectures, so organizations can get more value from their data. The platform is designed as a single, unified product with automations that reduce complexity and help ensure everything “just works”. To support a wide range of workloads, it’s optimized for performance at scale no matter whether someone’s working with SQL, Python, or other languages. And it’s globally connected so organizations can securely access the most relevant content across clouds and regions, with one consistent experience.
Making big data simple
Amazon Redshift is a fast, fully managed data warehouse that makes it simple and cost-effective to analyze all your data using standard SQL and your existing Business Intelligence (BI) tools.
IBM® Db2® is the database that offers enterprise-wide solutions handling high-volume workloads. It is optimized to deliver industry-leading performance while lowering costs.
The Teradata Database easily and efficiently handles complex data requirements and simplifies management of the data warehouse environment.
Vertica offers a software-based analytics platform designed to help organizations of all sizes monetize data in real time and at massive scale.
IBM watsonx.data is a hybrid, open data lakehouse platform designed to unify and manage enterprise data across diverse environments—cloud, on-premises, or hybrid—to support AI and analytics workloads. It combines the scalability of data lakes with the performance of data warehouses, offering a centralized solution for organizations aiming to harness their data for AI-driven insights. Key Features and Functionality: - Unified Data Access: Provides a single point of entry to access and manage structured and unstructured data across various environments, including public cloud, private cloud, hybrid cloud, and on-premises. - Built for Generative AI: Integrates and enriches data to improve the accuracy and performance of generative AI applications. - Flexible Deployment: Supports deployment across multiple infrastructures, including cloud platforms like AWS, Azure, IBM Cloud, and on-premises environments, providing flexibility to meet organizational needs. - Cost Optimization: Features a multi-engine architecture that optimizes workloads, potentially reducing data warehouse costs by up to 50% through efficient workload management. - Open Standards Compatibility: Utilizes open data formats like Apache Iceberg and integrates with Hive Metastore, facilitating interoperability with existing data tools and platforms. - Integrated Governance and Security: Offers built-in data governance tools, security features, and automation to ensure data quality, compliance, and secure access. Primary Value and Problem Solved: IBM watsonx.data addresses the challenges of managing and analyzing vast amounts of enterprise data spread across disparate sources and environments. By providing a unified, open, and governed data lakehouse, it enables organizations to: - Enhance AI and Analytics Initiatives: By unifying structured and unstructured data, organizations can improve the accuracy and performance of AI models and analytics applications. - Reduce Operational Costs: Optimizing workloads across various query engines and storage tiers helps in significantly lowering data management expenses. - Ensure Data Compliance and Security: Built-in governance and security features help maintain data integrity, compliance with regulations, and secure data access across the organization. In summary, IBM watsonx.data empowers enterprises to effectively manage their data lifecycle, enabling scalable and cost-effective AI and analytics solutions while ensuring data governance and security.
Keboola is a cloud based data platform that helps clients combine, enhance and publish crucial information for their internal analytics projects and data products.
lyftrondata modern data hub combines an effortless data hub with agile access to data sources. Lyftron eliminates traditional ETL/ELT bottlenecks with automatic data pipeline and make data instantly accessible to BI user with the modern cloud compute of Spark & Snowflake. Lyftron connectors automatically convert any source into normalized, ready-to-query relational format and provide search capability on your enterprise data catalog.