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This suggests that today, there are many companies that face the need to make their data easily accessible, cleaned up, and regularly updated. Hiring a well-skilled dataarchitect can be very helpful for that purpose. What is a dataarchitect? Let’s discuss and compare them to avoid misconceptions.
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Wondering what is a bigdata engineer? As the name suggests, BigData is associated with ‘big’ data, which hints at something big in the context of data. Bigdata forms one of the pillars of data science. Bigdata has been a hot topic in the IT sector for quite a long time.
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As a bigdataarchitect or a bigdata developer, when working with Microservices-based systems, you might often end up in a dilemma whether to use Apache Kafka or RabbitMQ for messaging. Rabbit MQ vs. Kafka - Which one is a better message broker? Table of Contents Kafka vs. RabbitMQ - An Overview What is RabbitMQ?
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Whilst this is not a problem for data files where you can store the schema once for the entire file, providing the schema with every event in Kafka would be particularly inefficient in terms of the network and storage overhead. Java library for fetching and caching schemas.
Now, a big-data driven news app for India. 23K jobs for bigdata analytics in Bengaluru. Data analytics firms gear up to lure the best talent as the demand for specialised talent increases. TCS partners with four colleges to offer courses in BigData. June 7, 2016. Gizmodo.in Feb 23, 2016.
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5 Reasons to Learn Hadoop Hadoop brings in better career opportunities in 2015 Learn Hadoop to pace up with the exponentially growing BigData Market Increased Number of Hadoop Jobs Learn Hadoop to Make Big Money with BigData Hadoop Jobs Learn Hadoop to pace up with the increased adoption of Hadoop by Bigdata companies Why learn Hadoop?
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