I have the following data:

List<Map<String, Object>> products = new ArrayList<>();

Map<String, Object> product1 = new HashMap<>();
product1.put("Id", 1);
product1.put("number", "123");
product1.put("location", "ny");

Map<String, Object> product2 = new HashMap<>();
product2.put("Id", 1);
product2.put("number", "456");
product2.put("location", "ny");

Map<String, Object> product3 = new HashMap<>();
product3.put("Id", 2);
product3.put("number", "789");
product3.put("location", "ny");

products.add(product1);
products.add(product2);
products.add(product3);

I'm trying to stream over the products list, group by the id and for each id have a list on number, while returning a Map that contains three keys: Id, List of number, and a location.

So my output would be:

List<Map<String, Object>>> groupedProducts
map[0]
    {id:1, number[123,456], location:ny}
map[1]
    {id:2, number[789], location:ny}

I have tried:

Map<String, List<Object>> groupedProducts = products.stream()
      .flatMap(m -> m.entrySet().stream())
      .collect(groupingBy(Entry::getKey, mapping(Entry::getValue, toList())));

which prints:

{number=[123, 456, 789], location=[ny, ny, ny], Id=[1, 1, 2]}

I realise Map<String, List<Object>> is incorrect, but it's the best I could achieve to get the stream to work. Any feedback is appreciated.

  • What should happen if two maps have the same ID but different locations? For example, if there was a 4th map {Id:2, number:101, location:ma}. – Radiodef Jan 24 at 21:28
  • In this scenario the third key will always be the same ...Its just there to show the map will have three keys – rogger2016 Jan 24 at 21:38
up vote 2 down vote accepted

In your case grouping by Id key with Collectors.collectingAndThen(downstream, finisher) could do the trick. Consider following example:

Collection<Map<String, Object>> finalMaps = products.stream()
        .collect(groupingBy(it -> it.get("Id"), Collectors.collectingAndThen(
                Collectors.toList(),
                maps -> (Map<String, Object>) maps.stream()
                        .reduce(new HashMap<>(), (result, map) -> {
                            final List<Object> numbers = (List<Object>) result.getOrDefault("number", new ArrayList<>());

                            result.put("Id", map.getOrDefault("Id", result.getOrDefault("Id", null)));
                            result.put("location", map.getOrDefault("location", result.getOrDefault("location", null)));

                            if (map.containsKey("number")) {
                                numbers.add(map.get("number"));
                            }
                            result.put("number", numbers);

                            return result;
                        }))
                )
        )
        .values();

System.out.println(finalMaps);

In the first step you group all maps with the same Id value to a List<Map<String,Object>> (this is what Collectors.toList() passed to .collectingAndThen() does). After creating that list "finisher" function is called - in this case we transform list of maps into a single map using Stream.reduce() operation - we start with an empty HashMap<String,Object> and we iterate over maps, take values from current map in iteration and we set values according to your specification ("Id" and "location" gets overridden, "number" keeps a list of values).

Output

[{number=[123, 456], location=ny, Id=1}, {number=[789], location=ny, Id=2}]

To make code more simple you can extract BiOperator passed to Stream.reduce to a method and use method reference instead. This function defines what does it mean to combine two maps into single one, so it is the core logic of the whole reduction.

  • Hey @Szymon...Big thanks for taking the time to help me. The code works great!. Time to knuckle down and understand it a bit more :) you've gave me some direction, now its time to create that BiFunction +1 – rogger2016 Jan 24 at 22:11
  • 2
    @rogger2016 Consider even extracting a class Product instead of a map, so you can end up with Collection<Product>. Then you could encapsulate merging two products in method like Product merge(Product other) and make the whole stream part even much simpler. Good luck! I'm glad I could help you – Szymon Stepniak Jan 24 at 22:14
  • Could you shed some light on what (a, b) -> a) references? – rogger2016 Jan 25 at 10:17
  • 1
    @rogger2016 It was a combiner function that takes two maps, but in your case it is not used, so (a,b) -> a was always returned an accumulated map. I've updated code sample to use Stream.reduce(T identity, BinaryOperator<T> accumulator) which is all you need. It produces same result, less code. And in this case accumulator is expressed as BiOperator and not BiFunction since it requires two paramters with the same type and returns an object of the same as parameters type. – Szymon Stepniak Jan 25 at 10:49

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