External reviews
External reviews are not included in the AWS star rating for the product.
Unlocking the Power of Data: A Deep Dive into Databricks Lakehouse Platform
What do you like best about the product?
Unified platform for Data & AI with workspace for data engineering, data science & SQL analysis
Autoloader with Schema evolution make easier for incremental de-duplicated feeds
Delta Live Table pipelines works both batch/stream pipelines helps to build the serverless lakehouse without much capacity planning
Data Quality expectation & observability are in-built in DLT pipelines and ready to use
Unity Catalog solves the data silos problems by providing the fine grained access control & unified governance
Good Databricks community support exists for Databricks partners & databricks customers
Ease of use to build the metadata driven frameworks
Good integration with lot of tools for different segments using partner connect
Azure Repos is another cool feature
Autoloader with Schema evolution make easier for incremental de-duplicated feeds
Delta Live Table pipelines works both batch/stream pipelines helps to build the serverless lakehouse without much capacity planning
Data Quality expectation & observability are in-built in DLT pipelines and ready to use
Unity Catalog solves the data silos problems by providing the fine grained access control & unified governance
Good Databricks community support exists for Databricks partners & databricks customers
Ease of use to build the metadata driven frameworks
Good integration with lot of tools for different segments using partner connect
Azure Repos is another cool feature
What do you dislike about the product?
Managing Cost is complicated when comes to non-DLT based pipleines in terms of capapcity planning of teh clusters, but can be solved through DLT & SQL warehouse endpoints
Vendor-lock in terms of using DELTA format with DLT based pipelines but soon this fomrats will be supported in otehr platforms
Databricks is not GUI based drag-drp ETL framework tool, learning curve in terms of spark, scal, python or SQL programming language is required
Vendor-lock in terms of using DELTA format with DLT based pipelines but soon this fomrats will be supported in otehr platforms
Databricks is not GUI based drag-drp ETL framework tool, learning curve in terms of spark, scal, python or SQL programming language is required
What problems is the product solving and how is that benefiting you?
Unifying the batch & streaming data ino single paltform
Bringing the data lake & data warehouse together with the data lakehouse platform
Data colloboration, Data federation, data mesh can be achieved through unity catalog unified governance
Performing the CDC was earlier complicated in data lake but now that is solved through autoloader with change data feed & DLT for real time changes
Multi-cloud - no cloud provider lock-in for compute resourcing (control plane & data plane is seperated)
Numerous integrations are possible with easy connectivity options
Bringing the data lake & data warehouse together with the data lakehouse platform
Data colloboration, Data federation, data mesh can be achieved through unity catalog unified governance
Performing the CDC was earlier complicated in data lake but now that is solved through autoloader with change data feed & DLT for real time changes
Multi-cloud - no cloud provider lock-in for compute resourcing (control plane & data plane is seperated)
Numerous integrations are possible with easy connectivity options
- Leave a Comment |
- Mark review as helpful
Best tool available in market for data management
What do you like best about the product?
It combines the best elements of data lakes and data warehouses. Storage formats are standard and it provides API to access the data directly. Real-time reports are also very good feature that eliminates the need for separate systems to serving real-time data applications.
What do you dislike about the product?
It can be difficult for new users to get hands on. UI can be improvise to benefit new user to navigate easily.
What problems is the product solving and how is that benefiting you?
Combines the best of both Lake House and databricks.
APIs to work with third party tools.
Data sharing with external user/customers.
APIs to work with third party tools.
Data sharing with external user/customers.
Lake House platform review
What do you like best about the product?
It's ease of use and optimisation databricks offers for big data test cases
What do you dislike about the product?
Some times it's slow and initial learning should be encouraged
What problems is the product solving and how is that benefiting you?
Solved customer feedback through audio video then fed the data to Lakehouse platform to generate insights for a multinational company
Unified analytics platform
What do you like best about the product?
ACID tansaction support to delta lake.
it is a platform for both data engineering and data science.
flexibility with different tpe of data.
scalability and performance.
Integration with cloud services
collabration features
warehousing for real time or nearly real time data
it is a platform for both data engineering and data science.
flexibility with different tpe of data.
scalability and performance.
Integration with cloud services
collabration features
warehousing for real time or nearly real time data
What do you dislike about the product?
Cost will be the primary concern, that can make serveral firms to go for other optins.
maintenance for the complex deployments
maintenance for the complex deployments
What problems is the product solving and how is that benefiting you?
Impoved performance and scalability in processing the data.
Easier adoption of advance analytics tools.
Helps in Real Time Data processing.
Adopting ACID properties into lakehouse helps in data quality and readability.
Easier adoption of advance analytics tools.
Helps in Real Time Data processing.
Adopting ACID properties into lakehouse helps in data quality and readability.
A Robust Solution for Big Data Management and Analytics
What do you like best about the product?
I really appreciate how Databricks Lakehouse Platform merges the strengths of data lakes and data warehouses, creating a unified space for handling data tasks. It’s like having the best of both worlds which simplifies data management and analytics significantly. The collaborative notebooks are a cherry on top, fostering teamwork and making iterative development smooth among our data teams. Plus, the high-speed analytics capabilities ensure that data queries and sharing are a breeze, which is crucial for our day-to-day decision-making processes.
What do you dislike about the product?
The initial hill to climb in terms of learning can be a bit steep, especially if you're new to big data platforms. It felt like a slow start, but once past that hurdle, things started to click. The cost factor can be a bit of a pinch, especially for smaller setups or projects on a tight budget. While there's a decent amount of guidance out there, the documentation can sometimes leave you wanting more, especially when you hit complex or unique challenges that require a deeper dive to navigate through.
What problems is the product solving and how is that benefiting you?
Databricks Lakehouse Platform is tackling the headache of juggling between data lakes and data warehouses. It's kind of bundled the two into one neat package, making data management and analytics way less complicated. This fusion is cutting down on the tech pile-up in our projects big time, making it simpler to switch between data engineering and data science chores. When it comes to number crunching, the platform's speedy analytics is making queries quick and data sharing reliable, which is big for our decision-making. The collaborative notebooks are a cool feature too, they're encouraging teamwork and making back-and-forth on development ideas smoother among our data teams. There’s a bit to chew on initially learning-wise and the pricing can sting a little, but the payback in simpler data operations and better teamwork is solid.
Databricks Lakehouse Platform Advantages
What do you like best about the product?
1. Support for ACID transactions, time travelling, versioning
2.unity catalog for access control
2.unity catalog for access control
What do you dislike about the product?
As databricks Lakehouse is built on top of delta lakes, it some times throws errors that are related to storage
What problems is the product solving and how is that benefiting you?
1. Storage and retriving the data and able to perform transformation on huge amounts of data without any hiccups
Experience with databricks
What do you like best about the product?
Capability to run the sql query using spark sql to read the data from containers , which also gives the flexibility to play with data. As we are using spark which is very fast and optimize the sql query which help in getting the outputs very even the volume of data is very huge.
What do you dislike about the product?
I have mostly used azure databricks which some time takes lot of time to get started and and some time it didn't even start.
What problems is the product solving and how is that benefiting you?
Interoperability and no vendor lock-in.
End-to-end support for machine learning and faster AI delivery.
End-to-end support for machine learning and faster AI delivery.
Data quality
What do you like best about the product?
Inbluild authentication authorization/ unity catalog
What do you dislike about the product?
Would be nice if we have proper documentation and notes for every activities in databricks. Not able to get some documents via datsbricks website
What problems is the product solving and how is that benefiting you?
No need of external extraction tool to pull datas from different sources
Advance cloud
What do you like best about the product?
While processing the data from source to destination and accessing verity of data
What do you dislike about the product?
Some more features and streaming data not possible
What problems is the product solving and how is that benefiting you?
Everything is fine but other platforms are advanced now
Databricks - A breath of Fresh air in Big Data
What do you like best about the product?
The best part about the Databricks Lakehouse platform is the integration of traditional, tried and tested big data technologies with a UI that is welcoming, refined and revolutionary!
What do you dislike about the product?
The older ui for the platform had well separated elements for data science, data engineering and SQL Workspace. In an effort to combine them in the sidebar, the new UI tries too hard and ends up as a laggy and chaotic mess.
What problems is the product solving and how is that benefiting you?
the databricks lakehouse platform brings out the best of open source together, stitched beautifully in a notebook based UI that feels welcoming and way less intimidating than a traditional Spark distributions.
The platform has a solution for every data person, including but not limited to a Notebook that works with Scala, Python, R and SQL, a traditional SQL Editor, downloadable datasets and in house visualisations just a click away!
The platform has a solution for every data person, including but not limited to a Notebook that works with Scala, Python, R and SQL, a traditional SQL Editor, downloadable datasets and in house visualisations just a click away!
showing 31 - 40