Best Event Stream Processing Software in Mexico - Page 2

Find and compare the best Event Stream Processing software in Mexico in 2025

Use the comparison tool below to compare the top Event Stream Processing software in Mexico on the market. You can filter results by user reviews, pricing, features, platform, region, support options, integrations, and more.

  • 1
    Pathway Reviews
    Scalable Python framework designed to build real-time intelligent applications, data pipelines, and integrate AI/ML models
  • 2
    Tray.ai Reviews
    Tray.ai serves as an API integration platform that empowers users to innovate, integrate, and automate their organizations without the need for developer expertise. With Tray.io, users can independently connect their entire cloud ecosystem. The platform features an intuitive visual workflow editor that makes it simple for users to construct and optimize processes. Additionally, Tray.io enhances the workforce's efficiency through automation of various tasks. At the core of the first iPaaS designed for universal accessibility is the intelligence that allows users to execute business processes through natural language commands. Tray.ai is a low-code automation solution tailored for both technical and non-technical users, enabling the creation of complex workflow automations that streamline data transfer and actions across diverse applications. By leveraging our low-code builder and the innovative Merlin AI, users can revolutionize their automation journey, combining the flexibility of scalable automation with advanced business logic and integrated generative AI features that are user-friendly and accessible to all. This makes Tray.ai an invaluable tool for organizations aiming to enhance operational efficiency.
  • 3
    Striim Reviews
    Data integration for hybrid clouds Modern, reliable data integration across both your private cloud and public cloud. All this in real-time, with change data capture and streams. Striim was developed by the executive and technical team at GoldenGate Software. They have decades of experience in mission critical enterprise workloads. Striim can be deployed in your environment as a distributed platform or in the cloud. Your team can easily adjust the scaleability of Striim. Striim is fully secured with HIPAA compliance and GDPR compliance. Built from the ground up to support modern enterprise workloads, whether they are hosted in the cloud or on-premise. Drag and drop to create data flows among your sources and targets. Real-time SQL queries allow you to process, enrich, and analyze streaming data.
  • 4
    Upsolver Reviews
    Upsolver makes it easy to create a governed data lake, manage, integrate, and prepare streaming data for analysis. Only use auto-generated schema on-read SQL to create pipelines. A visual IDE that makes it easy to build pipelines. Add Upserts to data lake tables. Mix streaming and large-scale batch data. Automated schema evolution and reprocessing of previous state. Automated orchestration of pipelines (no Dags). Fully-managed execution at scale Strong consistency guarantee over object storage Nearly zero maintenance overhead for analytics-ready information. Integral hygiene for data lake tables, including columnar formats, partitioning and compaction, as well as vacuuming. Low cost, 100,000 events per second (billions every day) Continuous lock-free compaction to eliminate the "small file" problem. Parquet-based tables are ideal for quick queries.
  • 5
    Crosser Reviews

    Crosser

    Crosser Technologies

    Analyze and utilize your data at the Edge to transform Big Data into manageable, pertinent insights. Gather sensor information from all your equipment and establish connections with various devices like sensors, PLCs, DCS, MES, or historians. Implement condition monitoring for assets located remotely, aligning with Industry 4.0 standards for effective data collection and integration. Merge real-time streaming data with enterprise data for seamless data flows, and utilize your preferred Cloud Provider or your own data center for data storage solutions. Leverage Crosser Edge's MLOps capabilities to bring, manage, and deploy your custom machine learning models, with the Crosser Edge Node supporting any machine learning framework. Access a centralized library for your trained models hosted in Crosser Cloud, and streamline your data pipeline using a user-friendly drag-and-drop interface. Easily deploy machine learning models to multiple Edge Nodes with a single operation, fostering self-service innovation through Crosser Flow Studio. Take advantage of an extensive library of pre-built modules to facilitate collaboration among teams across different locations, effectively reducing reliance on individual team members and enhancing organizational efficiency. With these capabilities, your workflow will promote collaboration and innovation like never before.
  • 6
    Confluent Reviews
    Achieve limitless data retention for Apache Kafka® with Confluent, empowering you to be infrastructure-enabled rather than constrained by outdated systems. Traditional technologies often force a choice between real-time processing and scalability, but event streaming allows you to harness both advantages simultaneously, paving the way for innovation and success. Have you ever considered how your rideshare application effortlessly analyzes vast datasets from various sources to provide real-time estimated arrival times? Or how your credit card provider monitors millions of transactions worldwide, promptly alerting users to potential fraud? The key to these capabilities lies in event streaming. Transition to microservices and facilitate your hybrid approach with a reliable connection to the cloud. Eliminate silos to ensure compliance and enjoy continuous, real-time event delivery. The possibilities truly are limitless, and the potential for growth is unprecedented.
  • 7
    SAS Event Stream Processing Reviews
    The significance of streaming data derived from operations, transactions, sensors, and IoT devices becomes apparent when it is thoroughly comprehended. SAS's event stream processing offers a comprehensive solution that encompasses streaming data quality, analytics, and an extensive selection of SAS and open source machine learning techniques alongside high-frequency analytics. This integrated approach facilitates the connection, interpretation, cleansing, and comprehension of streaming data seamlessly. Regardless of the velocity at which your data flows, the volume of data you manage, or the diversity of data sources you utilize, you can oversee everything effortlessly through a single, user-friendly interface. Moreover, by defining patterns and addressing various scenarios across your entire organization, you can remain adaptable and proactively resolve challenges as they emerge while enhancing your overall operational efficiency.
  • 8
    Azure Event Hubs Reviews

    Azure Event Hubs

    Microsoft

    $0.03 per hour
    Event Hubs serves as a fully managed service for real-time data ingestion, offering simplicity, reliability, and scalability. It enables the streaming of millions of events per second from diverse sources, facilitating the creation of dynamic data pipelines that allow for immediate responses to business obstacles. In times of emergencies, you can continue processing data thanks to its geo-disaster recovery and geo-replication capabilities. The service integrates effortlessly with other Azure offerings, unlocking valuable insights. Additionally, existing Apache Kafka clients and applications can connect to Event Hubs without the need for code modifications, providing a managed Kafka experience without the burden of handling your own clusters. You can enjoy both real-time data ingestion and microbatching within the same stream, allowing you to concentrate on extracting insights from your data rather than managing infrastructure. With Event Hubs, you can construct real-time big data pipelines and swiftly tackle business challenges as they arise, ensuring your organization remains agile and responsive in a fast-paced environment.
  • 9
    Eclipse Streamsheets Reviews
    Create advanced applications that streamline workflows, provide ongoing operational monitoring, and manage processes in real-time. Your solutions are designed to operate continuously on cloud servers as well as edge devices. Utilizing a familiar spreadsheet interface, you don't need to be a programmer; instead, you can simply drag and drop data, enter formulas into cells, and create charts in an intuitive manner. All the essential protocols required for connecting to sensors and machinery, such as MQTT, REST, and OPC UA, are readily available. Streamsheets specializes in processing streaming data, including formats like MQTT and Kafka. You can select a topic stream, modify it as needed, and send it back into the vast world of streaming data. With REST, you gain access to a multitude of web services, while Streamsheets enables seamless connections both ways. Not only do Streamsheets operate in the cloud and on your servers, but they can also be deployed on edge devices, including Raspberry Pi, expanding their versatility to various environments. This flexibility allows businesses to adapt their systems according to their specific operational needs.
  • 10
    IBM Event Streams Reviews
    IBM Event Streams is a comprehensive event streaming service based on Apache Kafka, aimed at assisting businesses in managing and reacting to real-time data flows. It offers features such as machine learning integration, high availability, and secure deployment in the cloud, empowering organizations to develop smart applications that respond to events in real time. The platform is designed to accommodate multi-cloud infrastructures, disaster recovery options, and geo-replication, making it particularly suitable for critical operational tasks. By facilitating the construction and scaling of real-time, event-driven solutions, IBM Event Streams ensures that data is processed with speed and efficiency, ultimately enhancing business agility and responsiveness. As a result, organizations can harness the power of real-time data to drive innovation and improve decision-making processes.
  • 11
    Spring Cloud Data Flow Reviews
    Microservices architecture enables efficient streaming and batch data processing specifically designed for platforms like Cloud Foundry and Kubernetes. By utilizing Spring Cloud Data Flow, users can effectively design intricate topologies for their data pipelines, which feature Spring Boot applications developed with the Spring Cloud Stream or Spring Cloud Task frameworks. This powerful tool caters to a variety of data processing needs, encompassing areas such as ETL, data import/export, event streaming, and predictive analytics. The Spring Cloud Data Flow server leverages Spring Cloud Deployer to facilitate the deployment of these data pipelines, which consist of Spring Cloud Stream or Spring Cloud Task applications, onto contemporary infrastructures like Cloud Foundry and Kubernetes. Additionally, a curated selection of pre-built starter applications for streaming and batch tasks supports diverse data integration and processing scenarios, aiding users in their learning and experimentation endeavors. Furthermore, developers have the flexibility to create custom stream and task applications tailored to specific middleware or data services, all while adhering to the user-friendly Spring Boot programming model. This adaptability makes Spring Cloud Data Flow a valuable asset for organizations looking to optimize their data workflows.
  • 12
    Spark Streaming Reviews

    Spark Streaming

    Apache Software Foundation

    Spark Streaming extends the capabilities of Apache Spark by integrating its language-based API for stream processing, allowing you to create streaming applications in the same manner as batch applications. This powerful tool is compatible with Java, Scala, and Python. One of its key features is the automatic recovery of lost work and operator state, such as sliding windows, without requiring additional code from the user. By leveraging the Spark framework, Spark Streaming enables the reuse of the same code for batch processes, facilitates the joining of streams with historical data, and supports ad-hoc queries on the stream's state. This makes it possible to develop robust interactive applications rather than merely focusing on analytics. Spark Streaming is an integral component of Apache Spark, benefiting from regular testing and updates with each new release of Spark. Users can deploy Spark Streaming in various environments, including Spark's standalone cluster mode and other compatible cluster resource managers, and it even offers a local mode for development purposes. For production environments, Spark Streaming ensures high availability by utilizing ZooKeeper and HDFS, providing a reliable framework for real-time data processing. This combination of features makes Spark Streaming an essential tool for developers looking to harness the power of real-time analytics efficiently.
  • 13
    InfinyOn Cloud Reviews
    InfinyOn has developed a cutting-edge platform for continuous intelligence that operates on data as it flows. Different from conventional event streaming platforms that utilize Java, Infinyon Cloud leverages Rust to provide exceptional scalability and security for applications requiring real-time processing. The platform offers readily available programmable connectors that manipulate data events instantaneously. Users can establish intelligent analytics pipelines to enhance, secure, and correlate events in real-time. Furthermore, these programmable connectors facilitate the dispatch of events and keep relevant stakeholders informed. Each connector functions either as a source to bring in data or as a sink to send out data. These connectors can be implemented in two primary configurations: as a Managed Connector, where the Fluvio cluster handles provisioning and management, or as a Local Connector, which requires users to launch the connector manually as a Docker container in their preferred environment. Moreover, connectors are organized into four distinct stages, each with specific roles and responsibilities that contribute to the overall efficiency of data handling. This multi-stage approach enhances the adaptability and effectiveness of the platform in addressing diverse data needs.
  • 14
    Pandio Reviews

    Pandio

    Pandio

    $1.40 per hour
    It is difficult, costly, and risky to connect systems to scale AI projects. Pandio's cloud native managed solution simplifies data pipelines to harness AI's power. You can access your data from any location at any time to query, analyze, or drive to insight. Big data analytics without the high cost Enable data movement seamlessly. Streaming, queuing, and pub-sub with unparalleled throughput, latency and durability. In less than 30 minutes, you can design, train, deploy, and test machine learning models locally. Accelerate your journey to ML and democratize it across your organization. It doesn't take months or years of disappointment. Pandio's AI driven architecture automatically orchestrates all your models, data and ML tools. Pandio can be integrated with your existing stack to help you accelerate your ML efforts. Orchestrate your messages and models across your organization.
  • 15
    Red Hat OpenShift Streams Reviews
    Red Hat® OpenShift® Streams for Apache Kafka is a cloud-managed service designed to enhance the developer experience for creating, deploying, and scaling cloud-native applications, as well as for modernizing legacy systems. This service simplifies the processes of creating, discovering, and connecting to real-time data streams, regardless of their deployment location. Streams play a crucial role in the development of event-driven applications and data analytics solutions. By enabling seamless operations across distributed microservices and handling large data transfer volumes with ease, it allows teams to leverage their strengths, accelerate their time to value, and reduce operational expenses. Additionally, OpenShift Streams for Apache Kafka features a robust Kafka ecosystem and is part of a broader suite of cloud services within the Red Hat OpenShift product family, empowering users to develop a diverse array of data-driven applications. With its powerful capabilities, this service ultimately supports organizations in navigating the complexities of modern software development.
  • 16
    TIBCO Platform Reviews

    TIBCO Platform

    Cloud Software Group

    TIBCO provides robust solutions designed to fulfill your requirements for performance, throughput, reliability, and scalability, while also offering diverse technology and deployment alternatives to ensure real-time data accessibility in critical areas. The TIBCO Platform integrates a continuously developing array of your TIBCO solutions, regardless of their hosting environment—be it cloud-based, on-premises, or at the edge—into a cohesive, single experience that simplifies management and monitoring. By doing so, TIBCO supports the creation of solutions vital for the success of major enterprises around the globe, enabling them to thrive in a competitive landscape. This commitment to innovation positions TIBCO as a key player in the digital transformation journey of businesses.
  • 17
    DataStax Reviews
    Introducing a versatile, open-source multi-cloud platform for contemporary data applications, built on Apache Cassandraâ„¢. Achieve global-scale performance with guaranteed 100% uptime while avoiding vendor lock-in. You have the flexibility to deploy on multi-cloud environments, on-premises infrastructures, or use Kubernetes. The platform is designed to be elastic and offers a pay-as-you-go pricing model to enhance total cost of ownership. Accelerate your development process with Stargate APIs, which support NoSQL, real-time interactions, reactive programming, as well as JSON, REST, and GraphQL formats. Bypass the difficulties associated with managing numerous open-source projects and APIs that lack scalability. This solution is perfect for various sectors including e-commerce, mobile applications, AI/ML, IoT, microservices, social networking, gaming, and other highly interactive applications that require dynamic scaling based on demand. Start your journey of creating modern data applications with Astra, a database-as-a-service powered by Apache Cassandraâ„¢. Leverage REST, GraphQL, and JSON alongside your preferred full-stack framework. This platform ensures that your richly interactive applications are not only elastic but also ready to gain traction from the very first day, all while offering a cost-effective Apache Cassandra DBaaS that scales seamlessly and affordably as your needs evolve. With this innovative approach, developers can focus on building rather than managing infrastructure.
  • 18
    Hazelcast Reviews
    In-Memory Computing Platform. Digital world is different. Microseconds are important. The world's most important organizations rely on us for powering their most sensitive applications at scale. If they meet the current requirement for immediate access, new data-enabled apps can transform your business. Hazelcast solutions can be used to complement any database and deliver results that are much faster than traditional systems of record. Hazelcast's distributed architecture ensures redundancy and continuous cluster up-time, as well as always available data to support the most demanding applications. The capacity grows with demand without compromising performance and availability. The cloud delivers the fastest in-memory data grid and third-generation high speed event processing.
  • 19
    Amazon Kinesis Reviews
    Effortlessly gather, manage, and evaluate video and data streams on the fly. Amazon Kinesis simplifies the collection, processing, and analysis of streaming data in real-time, allowing you to gain valuable insights swiftly and respond to emerging information without delay. With its essential features, Amazon Kinesis provides a cost-effective way to handle streaming data at any scale while offering the adaptability to select the optimal tools tailored to your application's needs. You can utilize Amazon Kinesis to ingest real-time data types, including video, audio, application logs, website clickstreams, and IoT telemetry data, for various purposes such as machine learning and analytics. This platform allows you to process and analyze incoming data immediately, eliminating the need to wait for complete data collection before starting the processing phase. Furthermore, Amazon Kinesis supports the ingestion, buffering, and processing of streaming data instantaneously, enabling you to uncover insights within seconds or minutes instead of prolonging the wait for hours or days. The ability to act quickly based on live data enhances decision-making and operational efficiency across diverse industries.
  • 20
    Google Cloud Dataflow Reviews
    Data processing that integrates both streaming and batch operations while being serverless, efficient, and budget-friendly. It offers a fully managed service for data processing, ensuring seamless automation in the provisioning and administration of resources. With horizontal autoscaling capabilities, worker resources can be adjusted dynamically to enhance overall resource efficiency. The innovation is driven by the open-source community, particularly through the Apache Beam SDK. This platform guarantees reliable and consistent processing with exactly-once semantics. Dataflow accelerates the development of streaming data pipelines, significantly reducing data latency in the process. By adopting a serverless model, teams can devote their efforts to programming rather than the complexities of managing server clusters, effectively eliminating the operational burdens typically associated with data engineering tasks. Additionally, Dataflow’s automated resource management not only minimizes latency but also optimizes utilization, ensuring that teams can operate with maximum efficiency. Furthermore, this approach promotes a collaborative environment where developers can focus on building robust applications without the distraction of underlying infrastructure concerns.
  • 21
    Informatica Data Engineering Streaming Reviews
    Informatica's AI-driven Data Engineering Streaming empowers data engineers to efficiently ingest, process, and analyze real-time streaming data, offering valuable insights. The advanced serverless deployment feature, coupled with an integrated metering dashboard, significantly reduces administrative burdens. With CLAIRE®-enhanced automation, users can swiftly construct intelligent data pipelines that include features like automatic change data capture (CDC). This platform allows for the ingestion of thousands of databases, millions of files, and various streaming events. It effectively manages databases, files, and streaming data for both real-time data replication and streaming analytics, ensuring a seamless flow of information. Additionally, it aids in the discovery and inventorying of all data assets within an organization, enabling users to intelligently prepare reliable data for sophisticated analytics and AI/ML initiatives. By streamlining these processes, organizations can harness the full potential of their data assets more effectively than ever before.
  • 22
    Radicalbit Reviews
    Radicalbit Natural Analytics (RNA) serves as a comprehensive DataOps platform designed for the integration of streaming data and the execution of real-time advanced analytics. It simplifies the process of delivering data to the appropriate users at the optimal time. RNA empowers its users with cutting-edge technologies in a self-service format for instantaneous data processing, leveraging Artificial Intelligence to derive meaningful insights from the data. This platform streamlines the traditionally labor-intensive data analysis process and presents critical findings in clear, accessible formats. Users can maintain real-time situational awareness, allowing for swift and effective responses to emerging situations. By promoting efficiency and optimization, RNA fosters collaboration among previously isolated teams. It offers a centralized dashboard for managing and monitoring models, enabling users to deploy their evolving models in mere seconds, all without experiencing any downtime. Additionally, the platform ensures that teams can stay agile and responsive in a fast-paced data environment.
  • 23
    Apache Heron Reviews

    Apache Heron

    Apache Software Foundation

    Heron incorporates numerous architectural enhancements that lead to significant efficiency improvements. It is compatible with the API of Apache Storm, which means that migrating to Heron does not necessitate any alterations to existing code. This framework allows for straightforward debugging and issue identification within topologies, facilitating quicker iterations throughout the development process. The Heron UI provides a comprehensive visual representation of each topology, helping users to pinpoint hot spots and offering detailed metrics for monitoring progress and resolving issues. Additionally, Heron is designed to be highly scalable, capable of managing a substantial number of components for each topology as well as the execution and tracking of numerous topologies simultaneously, ensuring seamless performance in large-scale applications. This scalability makes it an ideal choice for organizations aiming to enhance their data processing capabilities.
  • 24
    Conduktor Reviews
    We developed Conduktor, a comprehensive and user-friendly interface designed to engage with the Apache Kafka ecosystem seamlessly. Manage and develop Apache Kafka with assurance using Conduktor DevTools, your all-in-one desktop client tailored for Apache Kafka, which helps streamline workflows for your entire team. Learning and utilizing Apache Kafka can be quite challenging, but as enthusiasts of Kafka, we have crafted Conduktor to deliver an exceptional user experience that resonates with developers. Beyond merely providing an interface, Conduktor empowers you and your teams to take command of your entire data pipeline through our integrations with various technologies associated with Apache Kafka. With Conduktor, you gain access to the most complete toolkit available for working with Apache Kafka, ensuring that your data management processes are efficient and effective. This means you can focus more on innovation while we handle the complexities of your data workflows.
  • 25
    Akka Reviews
    Akka serves as a comprehensive toolkit designed for creating highly concurrent, distributed, and resilient applications driven by messages, catering to both Java and Scala developers. Complementing this is Akka Insights, a specialized monitoring and observability tool crafted specifically for Akka environments. By utilizing Actors and Streams, developers can construct systems that not only optimize server resource usage but also expand seamlessly across multiple servers. Rooted in the foundational concepts of The Reactive Manifesto, Akka empowers the development of self-healing systems that maintain responsiveness even amid failures, thereby eliminating single points of failure in distributed architectures. It features capabilities for load balancing and adaptive routing among nodes, as well as integrates Event Sourcing and CQRS with Cluster Sharding techniques. Furthermore, it supports Distributed Data for achieving eventual consistency through Conflict-free Replicated Data Types (CRDTs). Akka also facilitates asynchronous, non-blocking stream processing with built-in backpressure management. The fully asynchronous and streaming HTTP server and client capabilities provide an excellent foundation for building microservices, while integrations with Alpakka enhance the streaming capabilities further, allowing for more efficient data handling in complex applications. This makes Akka a versatile choice for modern application development.