问题
I have incoming objects with a flat de-normalized structure which I instantiated from a JDBC resultset. The incoming objects mirror the resultset, there's loads of repeated data so I want to convert the data into a list of parent objects with nested child collections, i.e. an object graph, or normalized list.
The incoming object's class looks like this:
class IncomingFlatItem {
String clientCode;
String clientName;
String emailAddress;
boolean emailHtml;
String reportCode;
String reportLanguage;
}
So the incoming data contains multiple objects for each client, which I'd like to aggregate into one client object, which contains a list of email address objects for the client, and a list of report objects.
So the Client object would look like this:
class Client {
String clientCode;
String clientName;
Set<EmailAddress> emailAddresses;
Set<Report> reports;
}
Strangely I can't find an existing answer for this. I am looking at nesting streams or chaining streams but I'd like to find the most elegant approach and I definitely want to avoid a for-loop.
回答1:
You can use this:
List<Client> clients = items.stream()
.collect(Collectors.groupingBy(i -> Arrays.asList(i.getClientCode(), i.getClientName())))
.entrySet().stream()
.map(e -> new Client(e.getKey().get(0), e.getKey().get(1),
e.getValue().stream().map(i -> new EmailAddress(i.getEmailAddress(), i.isEmailHtml())).collect(Collectors.toSet()),
e.getValue().stream().map(i -> new Report(i.getReportCode(), i.getReportLanguage())).collect(Collectors.toSet())))
.collect(Collectors.toList());
At the beginning you group your items by clientCode
and clientName
. After that you map the results to your Client
object.
Make sure the .equals()
and hashCode()
methods are implemented for EmailAddress
and Report
to ensure they are distinct in the set.
回答2:
One thing you can do is use constructor parameters and a fluent API to your advantage. Thinking "nested" flows and the stream API (with dynamic data) can get complex very quickly.
This just uses a fluent API to simplify things (you can use a proper builder pattern instead)
class Client {
String clientCode;
String clientName;
Set<EmailAddress> emailAddresses = new HashSet<>();
Set<Report> reports = new HashSet<>();
public Client(String clientCode, String clientName) {
super();
this.clientCode = clientCode;
this.clientName = clientName;
}
public Client emailAddresses(String address, boolean html) {
this.emailAddresses =
Collections.singleton(new EmailAddress(address, html));
return this;
}
public Client reports(String... reports) {
this.reports = Arrays.stream(reports)
.map(Report::new)
.collect(Collectors.toSet());
return this;
}
public Client merge(Client other) {
this.emailAddresses.addAll(other.emailAddresses);
this.reports.addAll(other.reports);
if (null == this.clientName)
this.clientName = other.clientName;
if (null == this.clientCode)
this.clientCode = other.clientCode;
return this;
}
}
class EmailAddress {
public EmailAddress(String e, boolean html) {
}
}
class Report {
public Report(String r) {
}
}
And...
Collection<Client> clients = incomingFlatItemsCollection.stream()
.map(flatItem -> new Client(flatItem.clientCode, flatItem.clientName)
.emailAddresses(flatItem.emailAddress, flatItem.emailHtml)
.reports(flatItem.reportCode, flatItem.reportLanguage))
.collect(Collectors.groupingBy(Client::getClientCode,
Collectors.reducing(new Client(null, null), Client::merge)))
.values();
Or you can also just use mapping functions that convert IncomingFlatItem
objects to Client
.
回答3:
You can do something on the lines of using mapping function to convert List<IncomingFlatItem>
to Set<Reports/EmailAddress>
as:
Function<List<IncomingFlatItem>, Set<EmailAddress>> inferEmailAddress =
incomingFlatItems -> incomingFlatItems.stream()
.map(obj -> new EmailAddress(obj.getEmailAddress(),
obj.isEmailHtml()))
.collect(Collectors.toSet());
Function<List<IncomingFlatItem>, Set<Report>> inferReports =
incomingFlatItems -> incomingFlatItems.stream()
.map(obj -> new Report(obj.getReportCode(),
obj.getReportLanguage()))
.collect(Collectors.toSet());
and further using groupingBy
and mapping the entries to List<Client>
as:
List<Client> transformIntoGroupedNormalisedContent(
List<IncomingFlatItem> incomingFlatItemList) {
return incomingFlatItemList.stream()
.collect(Collectors.groupingBy(inc ->
Arrays.asList(inc.getClientCode(), inc.getClientName())))
.entrySet()
.stream()
.map(e -> new Client(e.getKey().get(0),
e.getKey().get(1),
inferEmailAddress.apply(e.getValue()),
inferReports.apply(e.getValue())))
.collect(Collectors.toList());
}
回答4:
Thanks to all the answerers who mentioned Collectors.groupingBy()
. This was key to setting up a stream where I could use reduce()
. I had erroneously believed I should be able to use reduce
on its own to solve the problem, without groupingBy
.
Thanks also to the suggestion to create a fluent API. I added IncomingFlatItem.getEmailAddress()
and IncomingFlatItem.getReport()
to fluently grab the domain objects from IncomingFlatItem
- and also a method to convert the whole flat item to a proper domain object with its email and report nested already:
public Client getClient() {
Client client = new Client();
client.setClientCode(clientCode);
client.setClientName(clientName);
client.setEmailAddresses(new ArrayList());
client.getEmailAddresses().add(this.getEmailAddress());
client.setReports(new ArrayList<>());
client.getReports().add(this.getReport());
return client;
}
I also created business ID-based .equals()
and .hashCode()
methods on Client
, EmailAddress
and Report
as recommended by @SamuelPhilip
Lastly for the domain objects, I created .addReport(Report r)
and .addEmail(EmailAddress e)
on my Client
class, which would add the child object to Client
if not already present. I ditched the Set
collection type for List
because the domain model standard is List
and Sets
would have meant lots of conversions to Lists
.
So with that, the stream code and lambdas look succinct.
There are 3 steps:
- map
IncomingFlatItems
toClients
- group the
Clients
into a map by client (relying heavily onClient.equals()
) - reduce each group to one
Client
So this is the functional algorithm:
List<Client> unflatten(List<IncomingFlatItem> flatItems) {
return flatItems.parallelStream()
.map(IncomingFlatItem::getClient)
.collect(Collectors.groupingByConcurrent(client -> client))
.entrySet().parallelStream()
.map(kvp -> kvp.getValue()
.stream()
.reduce(new Client(),
(client1, client2) -> {
client1.getReports()
.forEach(client2::addReport);
client1.getEmailAddresses()
.forEach(client2::addEmail);
return client2;
}))
.collect(Collectors.toList());
}
I took a long time due to going off on a tangent before I really understood reduce
- I found a solution which passed my tests while using .stream()
but totally failed with .parallelStream()
hence its usage here. I had to use CopyOnWriteArrayList
as well otherwise it would fall over randomly with ConcurrentModificationExceptions
回答5:
If you don't like to iterate over entry sets (don't want to handle Map.Entry
) or prefer a different solution without groupingBy
, you can also use toMap
with a merge function to aggregate your values. This approach works nicely because Client
can hold the initial single item and the accumulated collection of all EmailAddress
(Note: I used a utility function com.google.common.collectSets.union
for conciseness, but you can just work with e.g. HashSet).
The following code demonstrates how to do it (add Reports in the same manner as EmailAddress, and add the other fields you want). I left the merge function inline and did not add an AllArgsConstructor, but feel free to refactor.
static Client mapFlatItemToClient(final IncomingFlatItem item) {
final Client client = new Client();
client.clientCode = item.clientCode;
client.emailAddresses = Collections.singleton(mapFlatItemToEmail(item));
return client;
}
static EmailAddress mapFlatItemToEmail(final IncomingFlatItem item) {
final EmailAddress address = new EmailAddress();
address.emailAddress = item.emailAddress;
return address;
}
public static void example() {
final List<IncomingFlatItem> items = new ArrayList<>();
// Aggregated Client Info by Client Code
final Map<String, Client> intermediateResult = items.stream()
.collect(
Collectors.<IncomingFlatItem, String, Client> toMap(
flat -> flat.clientCode,
flat -> mapFlatItemToClient(flat),
(lhs, rhs) -> {
final Client client = new Client();
client.clientCode = lhs.clientCode;
client.emailAddresses = Sets.union(lhs.emailAddresses, rhs.emailAddresses);
return client;
}));
final Collection<Client> aggregatedValues = intermediateResult.values();
}
来源:https://stackoverflow.com/questions/56598524/transform-a-flat-list-to-domain-objects-with-child-objects-using-java-streams