ActiveBatch from Advanced Systems Concepts in New Jersey is IT workload automation software.
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Apache Airflow
Score 8.6 out of 10
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Apache Airflow is an open source tool that can be used to programmatically author, schedule and monitor data pipelines using Python and SQL. Created at Airbnb as an open-source project in 2014, Airflow was brought into the Apache Software Foundation’s Incubator Program 2016 and announced as Top-Level Apache Project in 2019. It is used as a data orchestration solution, with over 140 integrations and community support.
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Pricing
ActiveBatch Workload Automation
Apache Airflow
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ActiveBatch Workload Automation
Apache Airflow
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Free/Freemium Version
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Yes
Premium Consulting/Integration Services
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Entry-level Setup Fee
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No setup fee
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Community Pulse
ActiveBatch Workload Automation
Apache Airflow
Features
ActiveBatch Workload Automation
Apache Airflow
Workload Automation
Comparison of Workload Automation features of Product A and Product B
Any large business or organisation that wants to manage their workload effectively and with the least amount of room for error might choose the ActiveBatch Automation tool. Being a consultant I feel that It aids in task automation and has the flexibility to change in response to varying company requirements. It helps to save huge time by doing all the repetitive tasks on daily basis. During the patching activity the schedulers can be stopped. It also help by alerting us if any system/job is down so that SLA can be saved. Overall ActiveBatch Automation stands as a dependable cornerstone for ensuring the seamless operation of our tasks.
For a quick job scanning of status and deep-diving into job issues, details, and flows, AirFlow does a good job. No fuss, no muss. The low learning curve as the UI is very straightforward, and navigating it will be familiar after spending some time using it. Our requirements are pretty simple. Job scheduler, workflows, and monitoring. The jobs we run are >100, but still is a lot to review and troubleshoot when jobs don't run. So when managing large jobs, AirFlow dated UI can be a bit of a drawback.
Apache Airflow is one of the best Orchestration platforms and a go-to scheduler for teams building a data platform or pipelines.
Apache Airflow supports multiple operators, such as the Databricks, Spark, and Python operators. All of these provide us with functionality to implement any business logic.
Apache Airflow is highly scalable, and we can run a large number of DAGs with ease. It provided HA and replication for workers. Maintaining airflow deployments is very easy, even for smaller teams, and we also get lots of metrics for observability.
String handling / parsing. I find myself using PowerShell to do a fair amount of text parsing (particularly if manipulations are needed) - not necessarily a bad thing, but certainly a place where ActiveBatch could be improved.
Debugging - or lack of it! With no stepping debugger, it can be a longer process than many other programming / scripting environments: rather than simply stepping through and observing state changes, I find myself inserting logging steps to excess, then having to clean them up once the error is found.
The perennial - Documentation! While a near-universal complaint for *any* software, ActiveBatch's developer documentation is somewhat spotty - just where I need detail, I find summary-level info. There is lots of documentation (as there should be for a tool with such a wide range of applications), but it is in mixed formats (some PDF, some CHM), and the descriptions of specific fields within job steps is often little more than I can get in a tool-tip in the GUI. Allowable ranges, expected formats for string data, and similar helpful details are inconsistent.
The KnowledgeBase at ASCI's web site often has examples which answer the questions I have, but not always - and not always under the search terms one would think to use.
We can easily add new plans/jobs in our batch schedules. Also, coordination with reporting and QA jobs is simple to do. Building schedules, restarting jobs, triggering dependencies is easy to understand. The system is very stable and allows us to easily see overall processing times.
For its capability to connect with multicloud environments. Access Control management is something that we don't get in all the schedulers and orchestrators. But although it provides so many flexibility and options to due to python , some level of knowledge of python is needed to be able to build workflows.
The workload automation solution is based on the specific needs of an organization, as well as the features, capabilities, and costs of various solutions. A thorough evaluation process and consideration of these factors can help ensure the selection of a solution that aligns with overall business objectives and meets the specific needs of the organization.
Apache Airflow is suited for a much wider set of use cases compared to Databricks. You can run it anywhere, and there is also no vendor lock-in. With Airflow, we can utilize almost any compute engine. Same thing we want to do with Databricks. There might be some level of difficulty based on the support.
ActiveBatch can automate intricate procedures and minimise manual involvement, which can boost an organization's production and efficiency.
Organisations can save money by using ActiveBatch to automate operations, which lowers the expenses of manual labour and potential mistakes.
Implementing ActiveBatch could come with hefty up-front expenses including licencing, instruction, and consultancy fees, which could have a short-term negative impact on ROI.