93 Reviews and Ratings
7 Reviews and Ratings
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Apache Cassandra is a NoSQL database and well suited where you need highly available, linearly scalable, tunable consistency and high performance across varying workloads. It has worked well for our use cases, and I shared my experiences to use it effectively at the last Cassandra summit! http://bit.ly/1Ok56TK It is a NoSQL database, finally you can tune it to be strongly consistent and successfully use it as such. However those are not usual patterns, as you negotiate on latency. It works well if you require that. If your use case needs strongly consistent environments with semantics of a relational database or if the use case needs a data warehouse, or if you need NoSQL with ACID transactions, Apache Cassandra may not be the optimum choice. Incentivized
kdb is well suited for real time tick data and time series analytics.Incentivized
Continuous availability: as a fully distributed database (no master nodes), we can update nodes with rolling restarts and accommodate minor outages without impacting our customer services.Linear scalability: for every unit of compute that you add, you get an equivalent unit of capacity. The same application can scale from a single developer's laptop to a web-scale service with billions of rows in a table.Amazing performance: if you design your data model correctly, bearing in mind the queries you need to answer, you can get answers in milliseconds.Time-series data: Cassandra excels at recording, processing, and retrieving time-series data. It's a simple matter to version everything and simply record what happens, rather than going back and editing things. Then, you can compute things from the recorded history.Incentivized
Time series analysis. The built-in vector operations are extremely fast. Also with the q language you can code up any customized analytical ideas quickly.The database are all file based, very easy to maintain.Very solid and fast interface to websocket, so you can interface with javascript easily.Incentivized
Cassandra runs on the JVM and therefor may require a lot of GC tuning for read/write intensive applications.Requires manual periodic maintenance - for example it is recommended to run a cleanup on a regular basis.There are a lot of knobs and buttons to configure the system. For many cases the default configuration will be sufficient, but if its not - you will need significant ramp up on the inner workings of Cassandra in order to effectively tune it.Incentivized
Run time error message readability, particularly for new users.Backwards compatibility between versions.Incentivized
I would recommend Cassandra DB to those who know their use case very well, as well as know how they are going to store and retrieve data. If you need a guarantee in data storage and retrieval, and a DB that can be linearly grown by adding nodes across availability zones and regions, then this is the database you should choose.Incentivized
switching costsIncentivized
It’s great tool but it can be complicated when it comes administration and maintenance.Incentivized
its okIncentivized
Sometimes instead giving straight answer, we ‘re getting transfered to talk professional service.Incentivized
We don't use it.Incentivized
We evaluated MongoDB also, but don't like the single point failure possibility. The HBase coupled us too tightly to the Hadoop world while we prefer more technical flexibility. Also HBase is designed for "cold"/old historical data lake use cases and is not typically used for web and mobile applications due to its performance concern. Cassandra, by contrast, offers the availability and performance necessary for developing highly available applications. Furthermore, the Hadoop technology stack is typically deployed in a single location, while in the big international enterprise context, we demand the feasibility for deployment across countries and continents, hence finally we are favor of Cassandra Incentivized
Python is very commonly used for large data analysis and in general is much easier to pickup than kdb+. The biggest drawback of kdb+ is the learning curve.Incentivized
I have no experience with this but from the blogs and news what I believe is that in businesses where there is high demand for scalability, Cassandra is a good choice to go for.Since it works on CQL, it is quite familiar with SQL in understanding therefore it does not prevent a new employee to start in learning and having the Cassandra experience at an industrial level.Incentivized
It perfectly solves most of our real time tick data needs.Finding good kdb resources is slightly difficult. Also new people trying to learn kdb experience a relatively longer learning curve.Incentivized