-
1
Elasticsearch
Elastic
Transform your data into actionable insights with ease.
Elastic is a prominent search technology firm that has created a suite known as the Elastic Stack, which includes Elasticsearch, Kibana, Beats, and Logstash. These software-as-a-service solutions enable users to leverage data for real-time analytics, security measures, search functionalities, and logging at scale. With a community of over 100,000 members spread across 45 nations, Elastic's products have been downloaded more than 400 million times since their launch. Currently, numerous organizations, including notable names like Cisco, eBay, Dell, Goldman Sachs, Groupon, HP, Microsoft, Netflix, Uber, Verizon, and Yelp, rely on Elastic Stack and Elastic Cloud to enhance their critical systems, driving significant revenue growth and reducing costs. Headquartered in both Amsterdam, The Netherlands, and Mountain View, California, Elastic employs a workforce of more than 1,000 individuals across more than 35 countries, contributing to its global impact in the tech industry. This extensive reach and adoption highlight Elastic's vital role in transforming how enterprises manage and utilize their data.
-
2
Edge Delta
Edge Delta
Revolutionize observability with real-time data processing solutions!
Edge Delta introduces a groundbreaking approach to observability, being the sole provider that processes data at the moment of creation, allowing DevOps, platform engineers, and SRE teams the flexibility to direct it wherever needed. This innovative method empowers clients to stabilize observability expenses, uncover the most valuable insights, and customize their data as required.
A key feature that sets us apart is our distributed architecture, which uniquely enables data processing to occur at the infrastructure level, allowing users to manage their logs and metrics instantaneously at the source. This comprehensive data processing encompasses:
* Shaping, enriching, and filtering data
* Developing log analytics
* Refining metrics libraries for optimal data utility
* Identifying anomalies and activating alerts
Our distributed strategy is complemented by a column-oriented backend, facilitating the storage and analysis of vast data quantities without compromising on performance or increasing costs.
By adopting Edge Delta, clients not only achieve lower observability expenses without losing sight of key metrics but also gain the ability to generate insights and initiate alerts before the data exits their systems. This capability allows organizations to enhance their operational efficiency and responsiveness to issues as they arise.
-
3
Utilize the most widely adopted observability platform, built on the robust Elastic Stack, to bring together various data sources for a unified view and actionable insights. To effectively monitor and derive valuable knowledge from your distributed systems, it is vital to gather all observability data within one cohesive framework. Break down data silos by integrating application, infrastructure, and user data into a comprehensive solution that enables thorough observability and timely alerting. By combining endless telemetry data collection with search-oriented problem-solving features, you can enhance both operational performance and business results. Merge your data silos by consolidating all telemetry information, such as metrics, logs, and traces, from any origin into a platform designed to be open, extensible, and scalable. Accelerate problem resolution through automated anomaly detection powered by machine learning and advanced data analytics, ensuring you can keep pace in today’s rapidly evolving landscape. This unified strategy not only simplifies workflows but also equips teams to make quick, informed decisions that drive success and innovation. By effectively harnessing this integrated approach, organizations can better anticipate challenges and adapt proactively to changing circumstances.
-
4
Elastic APM
Elastic
Unlock seamless insights for optimal cloud-native application performance.
Achieve an in-depth understanding of your cloud-native and distributed applications, spanning from microservices to serverless architectures, which facilitates rapid identification and resolution of core issues. Seamlessly incorporate Application Performance Management (APM) to automatically spot discrepancies, visualize service interdependencies, and simplify the exploration of outliers and atypical behaviors. Improve your application code with strong support for popular programming languages, OpenTelemetry, and distributed tracing techniques. Identify performance bottlenecks using automated, curated visual displays of all dependencies, including cloud services, messaging platforms, data storage solutions, and external services alongside their performance metrics. Delve deeper into anomalies by examining transaction details and various metrics to provide a more comprehensive analysis of your application's performance. By implementing these methodologies, you can guarantee that your services operate efficiently, ultimately enhancing the overall user experience while making informed decisions for future improvements. This proactive approach not only resolves current issues but also fosters continuous improvement in application performance management.
-
5
Langtrace
Langtrace
Transform your LLM applications with powerful observability insights.
Langtrace serves as a comprehensive open-source observability tool aimed at collecting and analyzing traces and metrics to improve the performance of your LLM applications. With a strong emphasis on security, it boasts a cloud platform that holds SOC 2 Type II certification, guaranteeing that your data is safeguarded effectively. This versatile tool is designed to work seamlessly with a range of widely used LLMs, frameworks, and vector databases. Moreover, Langtrace supports self-hosting options and follows the OpenTelemetry standard, enabling you to use traces across any observability platforms you choose, thus preventing vendor lock-in. Achieve thorough visibility and valuable insights into your entire ML pipeline, regardless of whether you are utilizing a RAG or a finely tuned model, as it adeptly captures traces and logs from various frameworks, vector databases, and LLM interactions. By generating annotated golden datasets through recorded LLM interactions, you can continuously test and refine your AI applications. Langtrace is also equipped with heuristic, statistical, and model-based evaluations to streamline this enhancement journey, ensuring that your systems keep pace with cutting-edge technological developments. Ultimately, the robust capabilities of Langtrace empower developers to sustain high levels of performance and dependability within their machine learning initiatives, fostering innovation and improvement in their projects.
-
6
Cribl AppScope
Cribl
Revolutionize performance monitoring with seamless, universal application insights.
AppScope presents an innovative approach to black-box instrumentation, delivering thorough and uniform telemetry from any Linux executable by simply prefixing the command with "scope." Customers engaged in Application Performance Management frequently share their appreciation for the tool while expressing concerns about its limited applicability to additional applications, with typically only about 10% of their software portfolio integrated with APM, leaving the remaining 90% relying on rudimentary metrics. This naturally leads to the inquiry: what is the fate of that other 80%? Here, AppScope plays a crucial role, as it removes the necessity for language-specific instrumentation and does not depend on contributions from application developers. Functioning as a language-agnostic solution that operates entirely in userland, AppScope can be applied to any application and effortlessly scales from command-line utilities to extensive production systems. Users have the flexibility to direct AppScope data into any established monitoring tool, time-series database, or logging framework. Additionally, AppScope equips Site Reliability Engineers and Operations teams with the capability to meticulously examine live applications, providing valuable insights into their functionality and performance across diverse deployment environments, such as on-premises, in the cloud, or within containerized applications. This feature not only improves the monitoring process but also promotes a richer comprehension of application dynamics, ultimately leading to enhanced performance management and optimization strategies for organizations.