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Data binning in Hadoop

Although the tags where I usually post do not get much attention, there is one answer I am really proud of. One year ago, a question about data binning in a mapreduce jobdata binning in a mapreduce job came across, and I tried my best to help this user. Since he didn't seem to need code, just a guidance on how to achieve it, I answered as best as I couldI answered as best as I could. I tried to teach him about one of the design patterns that are not so common for Hadoop newbies, such as in-mapper combiners.

What the user wanted was to find the minimum and maximum values of different values from a CSV in a MapReduce job as efficiently as possible, so I talked about how to store in each mapper the local minimum and maximum and only emit one max,min pair when the mapper ended processing the data, using the cleanup method. This would avoid having to send millions of values to the reducers, so that they would try to find the maximum and minimum values of huge lists. With this approach, only one pair for each mapper (and for each column of the data) would be sent.

After my first attempt, the answer was not clear enough, so when the user asked for further clarification I edited the answer to explain it better. However, the user still asked for more information which I tried to answer in another comment. Finally, the user decided to continue the discussion in chat since we were flooding the answer with comments. Luckily, he was able to understand the problem and to code himself the concept we had been discussing.

It doesn't have many upvotes or many views, but it is by far the answer I am more proud of, due to the effort I put into it.

Data binning in Hadoop

Although the tags where I usually post do not get much attention, there is one answer I am really proud of. One year ago, a question about data binning in a mapreduce job came across, and I tried my best to help this user. Since he didn't seem to need code, just a guidance on how to achieve it, I answered as best as I could. I tried to teach him about one of the design patterns that are not so common for Hadoop newbies, such as in-mapper combiners.

What the user wanted was to find the minimum and maximum values of different values from a CSV in a MapReduce job as efficiently as possible, so I talked about how to store in each mapper the local minimum and maximum and only emit one max,min pair when the mapper ended processing the data, using the cleanup method. This would avoid having to send millions of values to the reducers, so that they would try to find the maximum and minimum values of huge lists. With this approach, only one pair for each mapper (and for each column of the data) would be sent.

After my first attempt, the answer was not clear enough, so when the user asked for further clarification I edited the answer to explain it better. However, the user still asked for more information which I tried to answer in another comment. Finally, the user decided to continue the discussion in chat since we were flooding the answer with comments. Luckily, he was able to understand the problem and to code himself the concept we had been discussing.

It doesn't have many upvotes or many views, but it is by far the answer I am more proud of, due to the effort I put into it.

Data binning in Hadoop

Although the tags where I usually post do not get much attention, there is one answer I am really proud of. One year ago, a question about data binning in a mapreduce job came across, and I tried my best to help this user. Since he didn't seem to need code, just a guidance on how to achieve it, I answered as best as I could. I tried to teach him about one of the design patterns that are not so common for Hadoop newbies, such as in-mapper combiners.

What the user wanted was to find the minimum and maximum values of different values from a CSV in a MapReduce job as efficiently as possible, so I talked about how to store in each mapper the local minimum and maximum and only emit one max,min pair when the mapper ended processing the data, using the cleanup method. This would avoid having to send millions of values to the reducers, so that they would try to find the maximum and minimum values of huge lists. With this approach, only one pair for each mapper (and for each column of the data) would be sent.

After my first attempt, the answer was not clear enough, so when the user asked for further clarification I edited the answer to explain it better. However, the user still asked for more information which I tried to answer in another comment. Finally, the user decided to continue the discussion in chat since we were flooding the answer with comments. Luckily, he was able to understand the problem and to code himself the concept we had been discussing.

It doesn't have many upvotes or many views, but it is by far the answer I am more proud of, due to the effort I put into it.

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Data binning in Hadoop

Although the tags where I usually post do not get much attention, there is one answer I am really proud of. One year ago, a question about data binning in a mapreduce job came across, and I tried my best to help this user. Since he didn't seem to need code, just a guidance on how to achieve it, I answered as best as I could. I tried to teach him about one of the design patterns that are not so common for Hadoop newbies, such as in-mapper combiners.

What the user wanted was to find the minimum and maximum values of different values from a CSV in a MapReduce job as efficiently as possible, so I talked about how to store in each mapper the local minimum and maximum and only emit one max,min pair when the mapper ended processing the data, using the cleanup method. This would avoid having to send millions of values to the reducers, so that they would try to find the maximum and minimum values of huge lists. With this approach, only one pair for each mapper (and for each column of the data) would be sent.

After my first attempt, the answer was not clear enough, so when the user asked for further clarification I edited the answer to explain it better. However, the user still asked for more information which I tried to answer in another comment. Finally, the user decided to continue the discussion in chat since we were flooding the answer with comments. Luckily, he was able to understand the problem and to code himself the concept we had been discussing.

It doesn't have many upvotes or many views, but it is by far the answer I am more proud of, due to the effort I put into it.