StreamSets Benefits

Reyansh Kumar - PeerSpot reviewer
Technical Specialist at Accenture

StreamSets helps us with our data engineering, creating data sets and pipelines, and streaming data sets to enable us to utilize all the databases and resources for our back-end use cases.

It saves our organization time, about 25 to 30 percent, by automating the data pipelines. And automating the data pipelines helps with our overall efficiency because we are eliminating all of our manual efforts. We have multiple ETL processes running within its pipelines, scheduled and running directly from StreamSets, and they are all running very efficiently.

And because it has built-in log analytics capabilities, you can easily analyze the logs in case a pipeline fails. That helps save time and configure them as required.

Another benefit is that now, every employee is empowered on their own to monitor the data activities within their own credentials. That helps break the data silos. It also has a dashboard in which you can monitor the progress of your data pipeline in a single place. Whenever our C-level requests data operations reports we can easily fetch them from StreamSets.

Previously, we had five to six resources dedicated to designing and deploying our data pipelines, but now we have eliminated three or four resources. We have only one working on the data pipelines and monitoring StreamSets. We used to need to hire highly skilled data engineers for these tasks, but after deploying StreamSets we saved on the cost of resources.

View full review »
Prateek Agarwal - PeerSpot reviewer
Manager at Indian Institute of Management Visakhapatnam

Previously our ETL tools were done manually by our DevOps team. But StreamSets gives us the flexibility to integrate data sets, create pipelines, design them in any way, and monitor them at any time with a single click. We are providing that to the other team members as well so that they can easily track and monitor the data pipeline in progress. And if any batch fails, it notifies us where it failed and if there were any issues with the data, which is quite a benefit for our organization.

The data drift resilience is also very effective. Sometimes we get data that is not in the proper format. It enables us to clear data ambiguity from our data sets so that all the data sets are in the proper format. We spend 70 to 80 percent of our time fixing data. StreamSets enables us to remove all the data exceptions. It is quite effective. We can't imagine working without the data drift capabilities. Before, our team spent 10 to 12 hours a week fixing data, but that has now been reduced to one to two hours. It has had a wonderful impact on our organization.

In addition, the reusable assets have reduced our workload because if you are not spending too much time on fixing data, you have sufficient time to work on other activities within the whole solution.

Before StreamSets, we had 40 to 45 people working on data engineering for data analytics. We have reduced that headcount to 25 to 30 and that has helped increase our budget for other activities.

We have also been able to break down data silos in our company. Now the team can collaborate, through StreamSets, in a very unique way. They can own the data sets and work according to the data pipelines, anywhere around the world. We have a very large, diverse, geographically dispersed team. It enables them to work from different locations on the data pipelines and integration activities.

Overall, the solution saves us 40 to 45 percent of our time because, manually, ETL jobs are very tedious.

View full review »
Nantabo Jackie - PeerSpot reviewer
Sales Manager at Soft Hostings Limited

The design experience when implementing batch streaming or ECL pipelines is very easy and straightforward.

When we initially attempted to integrate StreamSets with Kafka, it was somewhat challenging until we consulted the documentation, after which it became straightforward.

We use StreamSets to move data into modern analytics platforms. Moving the data into modern analytics platforms is still complex. It requires a lot of understanding of logic.

StreamSets enables us to build data pipelines without knowing how to code. StreamSets' ability to build data pipelines without requiring us to know complex programming is very important, as it allows us to focus on our projects without spending time writing code.

StreamSets' Transformer for Snowflake is simple to use for designing both simple and complex transformation logic. StreamSets' Transformer for Snowflake is extremely important to me as it helps me to connect external data sources and keep my internal workflow organized. Transformer for Snowflake's functionality is a perfect ten out of ten.

It is important and cost-effective that Transformer for Snowflake is a serverless engine embedded within the platform, as without this feature, it would be very expensive. This feature helps us to sell at lower budget costs, which would otherwise be at a high cost with other servers.

StreamSets has helped improve our organization. StreamSets simplified pipelines for our organization. It is easier to complete a project when we know where and how to start, and working with the team remotely makes it more efficient. This helps us to save time and be more organized when creating data pipelines. Being a structured company that produces reliable resources for our application benefits both our clients and contacts.

StreamSets' built-in data drift resilience plays a part in our ETL operations.

With prior knowledge, the built-in data drift resilience is very effective, but it can be challenging to implement without the preexisting knowledge.

The built-in data drift resilience reduced the time it takes us to fix data drift breakages by 45 percent.

StreamSets helped us break down data silos within our organization.

The use of StreamSets to break down data silos enabled us to be confident in the services and products we provide, as well as the real-time streaming we offer. This has had a positive impact on our business, as it allowed us to accurately determine the analytics we need to present to stakeholders, clients, and our sources while ensuring that the process is secure and transparent.

StreamSets saved us time because anyone can use StreamSets not just developers. We can save around 40 percent of our time. StreamSets' reusable assets helped us reduce workload by around 25 percent.

StreamSets saved us money by not having to hire developers with specialized skills. We saved around $2,000 US.

StreamSets helped us scale our data operations. Since StreamSets makes it easy to scale our data operations, it enabled us to know exactly where to start at any time. We are aware of the timeline for completing the project, and depending on our familiarity with the software, we can come up with a solution quickly.

View full review »
Buyer's Guide
StreamSets
April 2024
Learn what your peers think about StreamSets. Get advice and tips from experienced pros sharing their opinions. Updated: April 2024.
769,976 professionals have used our research since 2012.
Karthik Rajamani - PeerSpot reviewer
Principal Engineer at Tata Consultancy Services

It is very easy to use when connecting to enterprise data stores such as OLTP databases or messaging systems such as Kafka. I have had integration with OLTP as well as Kafka. Until a few years ago, we didn't have a good way of connecting to the streaming databases or streaming products. This ability is important because most of our use cases in recent times are of streaming nature. We have to deliver certain messages or data as per our SLA, and the combination of Kafka and StreamSets helps us meet those timelines. I'm not sure what I would have used to achieve the same five years ago. The combination of Kafka and StreamSets has opened up a new world of opportunities to explore. I recently used orchestration wherein you can have multiple jobs, and you can orchestrate them. For example, you can specify to let Job A run first, then Job B, and then Job C in an automated fashion. You don't need any manual intervention. In one of my projects, I had a data hub from 10 different databases. It was all automated by using Kafka and StreamSets.

It enables you to build data pipelines without knowing how to code. You can build data pipelines even if you don't know how to code. You can just drag and drop. If you know how to code, you can do some custom coding as well, but you don't need to know coding to work with StreamSets, which is important if somebody in your team is not familiar with coding. The nature of coding is changing, and the number of technologies is changing. The range is so wide right now. Even if I know Java or Oracle, it may not be enough in today's times because we might have databases in Teradata. We might have Snowflake or other different kinds of databases. StreamSets is a great solution because you don't need to know all different databases or all different coding mechanisms to work with StreamSets. Rather than learning each and every technology and building your data pipelines, you can just plug and play at a faster pace.

StreamSets’ built-in data drift resilience plays a part in our ETL operations. It is a very helpful feature. Previously, we had a lot of jobs coming from different source systems, and whenever there was any change in columns, it was not informed. It required a lot of changes on our end, which would take from a couple of weeks to a month. Because of the data drift feature, which is embedded in StreamSets, we don't have to spend that much time taking care of the columns and making sure they are in sync. All this is taken care of. We don't have to worry about it. It is a very helpful feature to have.

StreamSets' data drift resilience reduces the time to fix data drift breakages. It has definitely saved around two to three weeks of development time. Previously, any kind of changes in our jobs used to require changing our code or table structure and doing some testing. It required at least two to three weeks of effort, which is now taken care of because of StreamSets.

StreamSets’ reusable assets helped to reduce workload. We can use pipeline fragments across multiple projects, which saves development time. The time saved varies from team to team.

It saves us money by not having to hire people with specialized skills. Without StreamSets, for example, I would've had to hire someone to work on Teradata or Db2. We definitely save some money on creating a new position or hiring a new developer. StreamSets provides a lot of features from AWS, Azure, or Snowflake. So, we don't have to find specialized, skilled resources for each of these technologies to create data pipelines. We just need to have StreamSets and one or two DBAs from each team to get the right configuration items, and we can just use it. We don't have to find a specialized resource for each database or technology.

It has helped us to scale our data operations. It saves the licensing costs on some legacy software, and we can reuse pipelines. Once we have a template for a certain use case, we can reuse the same template across different projects to move data to the cloud, which saves us money.

View full review »
Namanya Brian - PeerSpot reviewer
CEO-founder at Tubayo

It enables us to create data streams and pipelines that our team can use to identify areas for improvement. Our marketing team can read the data generated on sales to understand how we can integrate our product and focus on the areas in which we need more improvement. By the end of the day, we have an improved solution.

The lack of coding makes work easier and faster, and after creating a template you can immediately transform any source. It saves a lot of time and makes things efficient. You complete things on time.

The impact that it has had on my company is that when we have a variety of data that we want to convert or transform, StreamSets is helpful. We can store a maximum amount of data, and transfer various data from different departments and use the analysis to understand how to improve our business.

And because it's a service, it's very helpful to me as a CEO. It's serverless and secure.

In addition, the data drift resilience has reduced the time it takes to fix data drift breakages by 35 percent. Overall, StreamSets, as a solution, saves me about 45 percent of time, and has reduced workload by 25 percent. It also saves me about $500 a month.

Another benefit is that breaking down sums of data gives you the ability to create graphical reports and present them to any team, and they will be understood.

View full review »
Saket Pandey - PeerSpot reviewer
Product Manager at a hospitality company with 51-200 employees

We could bifurcate the datasets that we received from different hospitals. We could bifurcate it on the basis of the medical requirements of the hospitals, and sometimes, on the basis of the schedule or purpose. We were obtaining data that we could then supply to some consulting firms or other sources.

StreamSets saved us time. The accuracy was pretty good, and it was definitely better than what we were using previously. Earlier, we had hired two people who were doing the job manually, and we were also using some other platform. We had to pay for them. Overall, we have saved a lot of time, and the accuracy has improved as well. We didn't calculate the time savings, but I believe we saved about three days in a week, so there were about 30% to 40% time savings.

StreamSets reduced the workload. There was a 10% to 15% reduction in the workload.

StreamSets helped us to scale our data operations. The limit at which we purchased this solution was incredible. We were never able to reach the limit that we purchased, but it helped us to increase or scale our operation. Especially in months when we received a higher number of entries, we were able to perform our work on time.

View full review »
MI
Software Engineer at Soft Hostings Limited

StreamSets is straightforward to use for implementing batch, streaming, or ETL pipelines once you know how to use it. The pipeline can be integrated with Azure Key Vault, which eliminates the need of sharing credentials with developers. The same goes for parameters. It's very easy and straightforward.

It's easy for me to connect StreamSets to enterprise data stores such as OLTP databases and Hadoop, or messaging systems such as Kafka. I've got a good experience with it, and I've been working with it for a long time. It's very easy to connect and integrate for me. However, if you are a beginner, it might not go that well in the first step.

It's easy to move data into analytics platforms using StreamSets.

StreamSets enables us to build data pipelines without knowing how to code. We don't require the best coding skills. We can use the code-free environment to quickly create pipelines. It's very helpful for that.

StreamSets is a helpful tool for pipelines. It's very easy, so we can register data collectors to control hubs using provisioning agents. 

StreamSets has helped to break down data silos within our organization. It hasn't negatively affected our business. It has fortunately enhanced our development time. We are able to develop secure, stable platforms faster and even remotely.

StreamSets has saved us a lot of time. It saved us the time that we were spending developing applications manually. One budget can be used by the team to come up with a stable solution. Our time savings are 30%. Out of five hours, it has saved us around two hours.

StreamSets has reduced our workload by 35%. It has also saved us money. When you subscribe to StreamSets, it seems very expensive, but when you get to know how their integration and documentation are and how things move, it's definitely efficient. It saves a lot of money. Before implementing it, we spent around 10,000 USD to hire experts. It has saved us 10,000 USD that we would have spent on hiring experts.

View full review »
AbhishekKatara - PeerSpot reviewer
Technical Lead at Sopra Steria

We can securely fetch the passwords and credentials stored in Azure Key Vault. This is a fundamentally very strong feature that has improved our day-to-day life.

View full review »
JA
Technical Architect at Orange España

The learning curve, the overall design and implementation processes, are easy, so we didn't need to spend a lot of money on the implementation or for the PoC.

Also, the effectiveness of the built-in data drift resilience is quite impressive when it comes to ETL operations. It has reduced the time it takes to fix data drift breakages by about 15 to 20 percent. Previously, all those tasks were done manually by our teams. It has helped maximize human effort, time, and cost.

Another benefit is that it helps in reducing data silos because all the data from the different sources is now integrated by StreamSets. We don't have to worry about looking into all the various data sources, data sets, and master data, as well as the transformation of that data. StreamSets does it all.

Overall, it has saved 30 to 40 percent of our time and we have been able to reduce the headcount for which we specifically hired people to do these manual tasks. After integrating the data and creating our own pipelines, we can easily manage it. Because we have automated our pipelines, all our tasks are automated now.

And because it is a UI-based platform, it reduces our app programming and developer headcounts, enabling us to invest money in other groups. It saves our organization 20 to 30 percent in costs.

View full review »
Avinash Mukesh - PeerSpot reviewer
IT Specialists at Soft Hostings

It's helping us to be more organized. It's a tool that helps a lot in easily extracting data sets from CRM tools, and it can be integrated with external sources to make sure that you are having a good platform. It has improved our organization in the way we perform tests and the way we perform data transfers and streaming.

The data collection process is straightforward and easy. It allows us to move data into modern analytics platforms.

It allows us to build data pipelines without knowing how to code. It allows developers to make sure they are getting the correct data. It works for departments that can code and that can't code. It's a universal tool.

It's very effective. It gives you a clear understanding of the architecture of the data that you have in your company.

StreamSets’ data drift resilience saved us a lot of time. If we were taking seven days previously to build something, now it takes us three days. It has saved about 30% of the time.

It has helped to break down data silos within the organization. It helps to make sure that we are on time with data analysis. It brings efficiency. Overall, it has saved us about 25% of the time.

StreamSets’ reusable assets have helped to reduce workload. There is about a 25% workload reduction.

StreamSets saves us money by not having to hire people with specialized skills. It's saving us 300 USD every month.

StreamSets has helped to scale our data operations. In our business, we process the data the whole time, and we share it with the analytics team to identify and understand what needs to be fixed and what needs to be improved. It's good for our organization.

View full review »
JM
Software Engineer at ZIDIYO

We use StreamSets' ability to connect to enterprise data stores such as Kafka. It is easy and simple to connect enterprise data stores as long as we follow the documentation.

We use StreamSets' ability to move data into the analytic platforms easily because we can use the template provided to extract data from the pipeline.

Being able to use Transformer for Snowflake to design both simple and complex transformation logic is important because it helps us break out a live amount of data interfaces that can be understood by the analytics team and identify areas of improvement. As the Transformer for Snowflake operates as a serverless engine, we can reduce our costs as we no longer need to purchase servers.

StreamSets enables us to create streams and pipelines that our analytics team can utilize to identify areas for improvement. Additionally, our marketing team can leverage the data generated from these reports to understand how we can integrate our products and services to benefit our brand.

StreamSets' data drift resilience is effective and user-friendly. We can use templates or use them from scratch. Data drift resilience saves us around 35 percent of the time fixing duplicates.

StreamSets has helped us break down data silos within our organization by providing a clear path forward and enhancing our productivity by breaking down a large amount of data that we can understand.

StreamSets saved us around 40 percent of our time.

We can use a small team using StreamSets to create data pipelines that would normally require an expert that costs around $500 per month.

StreamSets helps us scale our operations because we understand the quality of the data we have and how we can integrate the data into our marketing needs.

View full review »
Kevin Kathiem Mutunga - PeerSpot reviewer
Chief software engineer at Appnomu Business Services

Using StreamSets to create pipelines for batch streaming or ETL is easy and straightforward. However, if one is new to StreamSets, it may not be so simple and may require a lot of documentation for assistance.

We utilize StreamSets' ability to connect to enterprise data stores, making it easy to begin trading instantly without needing to be technically skilled. We use StreamSets to move data into analytics platforms. In my experience, it is initially quite easy to move data back if we have a clear understanding of data transit, importation, and exporting from external sources.

This solution enables us to build data pipelines without knowing how to code. The solution includes templates that guide us and help us customize our data easily. It is essential that StreamSets does not necessitate coding, as this saves a considerable amount of time that would otherwise be spent writing code, as well as resources that would be required to hire experts.

Transformer for Snowflake can help with both simple and complex transformation logic. For example, creating a plan to perform EPL and machine learning operations is easy and fast. However, if the same operations are performed on-site, it can be difficult to troubleshoot events due to limited visibility into the results. StreamSets' Transformer for Snowflake is important to us because it saves us a lot of time and enables us to complete a task remotely with only two or three people.

It is important that Transformer for Snowflake is a serverless engine embedded within the platform. We have the capability of creating a data operations platform, so we don't have to worry or even be aware of what we are doing at the moment. We can simply create a device and use it in the pipeline we want it to be in.

The solution improved the way we work, benefiting both our customers and our development and retainer teams. StreamSets helps us develop a platform manually, with a lot of teamwork, either remotely or on-site, depending on which option we use. This has had a significant impact on our organization in terms of how we process and transform data.

I would say that it is very easy for us to update the template so that we can have real, actual data in APL claims and in the supply chain. StreamSets' data drift resilience is very effective and can run in the data grid. The data drift resilience has reduced the time it takes us to fix data drift breakages by approximately 25 percent.

StreamSets helped us break down data silos within our organization. The ability to break down data silos helps StreamSets to gain quick insights. In general, it is a great feature that ensures we have activities or processes in place. We know precisely what to prevent and what to implement.

StreamSets saved us around 30 percent of our time, meaning that a task that would take five hours to complete manually can now be done in around three and a half hours.

The reusable assets are reducing workload by 35 percent by allowing different people to use a single platform or resource, regardless of whether they have a similar SKU or a different SKU. This feature can help an organization simplify, implement, and transmit more easily.

It is not only the cost of one packet that we paid for, but now we are implementing a strategy using different people within the company. It would be very expensive if we had to hire a new person to manage that task and it would also take a lot of time. StreamSets is not only saving us money, but it is also ensuring that we complete strategies on time.

StreamSets as well helped us scale our operations, which has had a significant impact on our business. We now have a better understanding of how to secure data and provide reliable security for the transmission of data from internal servers to external services, as well as meeting our client's application needs.

View full review »
Sumesh Gansar - PeerSpot reviewer
Product Marketing Manager at a tech vendor with 10,001+ employees

One major benefit that we have realized with StreamSets is that we are now able to run pipelines that scale horizontally, instead of using a static service to host the service. This has improved efficiency and reduced our workload by around 85 percent. Initially, we started out with around 40 users. Now, there are 100 users. We have definitely scaled up, in terms of usage, with StreamSets.

The fact that it is a single centralized platform saves us a lot of time. It's very intuitive and very effective, saving us a lot of resources with its built-in capabilities. No manual intervention is needed, and nobody needs to oversee it. It's an "all-in-one" deal for us. We are able to save 15 to 18 hours per week. Tasks that required three people can be done with StreamSets itself.

And with its ability to integrate large data sets, we are now able to pull thousands of records instantly, thereby reducing the need to do some complex coding for this asset. That has also been a very big plus for us.

We also use it to connect our Apache Kafka with data lakes and, as a result, this connection has gotten much more efficient and quicker for us. The overall efficiency has also drastically improved for us with this. Connecting these enterprise systems using StreamSets is pretty easy. The StreamSets platform is very straightforward. There is no major coding required, so any non-technical person can also do it.

Without the need for any complex coding at all, we are able to pull records. The records are vast and very large and pulling them usually requires coding, but the fact that there is literally no coding required is a very big plus for us. Once you start to code, there is a lot of time involved and a lot of QA involved, but all of that is eliminated here.

And it has definitely helped us break down data silos. With our large amount of data, we have different data formats, and as a result, there are data silos that are present by default. With StreamSets, we were able to completely eliminate that because StreamSets has become a centralized system for us to accommodate everything. We have been able to get a single, centralized view of all our data.

We have a lot of different data formats, and transforming them manually without any tool or system is a cumbersome and frustrating process. We use StreamSets to do that. It has made that process much more elegant and efficient for us.

View full review »
SS
Senior Data Engineer at a energy/utilities company with 1,001-5,000 employees

Our time to value has increased because our development time has been considerably reduced. The major benefit that we are getting out of the solution is the ability to easily transform and upskill a person who has already worked on an ETL or BI background. We don't need to specifically look for people who know programming or worked on Python, DataOps, or a DevOps sort of functionality. In the market, it is easier to find people with ETL or BI skills than people with hardcore DevOps or programming skills. That is the major benefit that we are getting out of moving to a GUI-based tool like StreamSets. How quickly we are delivering to our customers, as well as our ability to ingest to a data lake, have actually improved a lot by using this tool.

View full review »
Al Mercado - PeerSpot reviewer
AI Engineer at Techvanguard

It's still in the trial stage. I don't get a 30-day trial period or anything like that. I just got to write about what's involved and then see if that's something that justifies the use case for going ahead and purchasing the license for it.

It enables you to build data pipelines without knowing how to code. It abstracts away the need for Spark or anything like that. This ability is highly important because it reduces development time.

It saves time because you don't have to write code. 

It saves money by not having to hire people with specialized skills. You don't need Spark or anything like that for doing the same thing.

It helps to scale your data operations. You can get to the execution engine and provision bigger machines or bigger clusters. You can scale out to however much data you need to scale out to.

View full review »
Ramesh Kuppuswamy - PeerSpot reviewer
Senior Software Developer at a tech vendor with 10,001+ employees

The introduction of StreamSets in our organization has improved things in a significant way. The efficiency of our entire process has increased a lot and we derive high value from it. The integration of data files from multiple sources is what makes it great software for us.

The transfer of information between our teams is very smooth and efficient as well. It saves us time in transferring, collating, and integrating all of the data.

The integration part has been customized for our particular systems. Previously, we had different data silos. Now, with the introduction of StreamSets, the data silo approach has been eradicated. It has integrated all the data files into one software system, creating a central point for it.

And it has reduced our workload by 50 to 60 percent and that has definitely saved us some money on human resources.

View full review »
BahatiAsher Faith - PeerSpot reviewer
Software Developer at Appnomu Business Services

I'm using StreamSets to find issues with our software and it is helping us to do so, and to make sure that we are able to debug on time. It makes things much simpler. We can use the solution to know what issue is happening at the moment. We are able to easily identify a leak and resolve it on time.

It reduces our workload by about 30 percent. And it saves us a lot on having to hire expensive technical experts or software engineers. You purchase a package with a reasonable pricing model, and then you can use it with your team. It saves us from hiring a technical person to carry out the tasks. With StreamSets, you can do a task easily.

It also makes it easy to send data from one place to another.

StreamSets is doing a lot in our IT operations because it is simplifying the way we perform tasks and the way we engineer pipelines at all stages, including the sources, processes, and destination use. We can schedule data pipelines and that's easy.

And because it is low-code software, you don't need to develop the code and that really saves a lot of time. Using the canvas to create and engineer data pipelines is very easy. StreamSets saves me three hours that it would take me to manually do a task.

View full review »
BR
Data Engineer at a consultancy with 11-50 employees

The solution is really effective.

View full review »
SR
Product Marketer at a media company with 1,001-5,000 employees

One great thing is that now, with the implementation of StreamSets, we have been able to eliminate about 80 percent of our break/fix costs and maintenance time. It is very easy to connect with streaming platforms and streaming services.

Also, we can integrate and stream databases by connecting with multiple streaming services. Before StreamSets, data transfer from source to destination took about three hours of time and it was prone to errors. Now, with the introduction of StreamSets, we primarily use the Data Collector and this has enabled us to complete the same job in less than 30 minutes. We save that much time per day or about 15 hours per week.

Another definite benefit is that it has helped us to break down data silos within our organization. We are able to work together, with the interaction of StreamSets. Previously, the data silos were extremely perilous because data would come from multiple, scattered sources. We were not able to consolidate it on time and we were not able to exactly pinpoint errors. But StreamSets has helped us streamline the use of multiple sources and destinations, completely eliminating the silos. That saves us a lot of time and we have reduced the number of errors by a lot.

View full review »
TH
Senior Network Administrator at a energy/utilities company with 201-500 employees

We now consume many more hundreds of terabytes of data than we used to before we had StreamSets. It has definitely enabled us to do things a lot faster, and be a lot more agile, with a lot more data consumption and a lot more reporting.

Another benefit is that it has helped us to break down data silos. We now consume data across different silos and then we aggregate it together so that we can do reporting that is not just for that one silo of people but for a number of different people across the entire organization. That has had a positive effect, enabling us to save money, spend money more effectively, and have more up-to-date data in reports, as well as in auditing. Our safety processes are better too.

One way we have saved money is thanks to how the solution streamlines the data that we pull in, data that we weren't pulling in before.

StreamSets allows more people to know what's going on. It helps us with better allocation of resources, better allocation of staff, and right-sizing. We're in oil and gas and, in our case, it allows us to optimize what we're pulling out of the ground and then what we're selling.

It has helped to scale our data operations and as a result, in addition to saving money and right-sizing, it's helped our field operations and provided us with more management reporting.

Also, the data drift resilience reduces the time it takes to fix data drift breakages.

View full review »
AC
Senior Technical Manager at a financial services firm with 501-1,000 employees

It facilitates the consumption of the data in batch mode to the system where it is required. We don't do a lot of transformations or joining or forking of the information. It's more point-to-point connectivity that we implement over StreamSets.

View full review »
Buyer's Guide
StreamSets
April 2024
Learn what your peers think about StreamSets. Get advice and tips from experienced pros sharing their opinions. Updated: April 2024.
769,976 professionals have used our research since 2012.