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I'm trying to learn a bit about functional programming and Ramda and am using an old favorite data structure manipulation of mine to attempt some point free stuff. With few or no loops. My input data:

const data = [{
    timeline_map: {
        "2017-05-06": 770,
        "2017-05-07": 760,
        "2017-05-08": 1250,
    }
}, {
    timeline_map: {
        "2017-05-06": 590,
        "2017-05-07": 210,
        "2017-05-08": 300,
    }
}, {
    timeline_map: {
        "2017-05-06": 890,
        "2017-05-07": 2200,
        "2017-05-08": 1032,
    }
}]

Desired output:

[
  ["2017-05-06", 770, 590, 890, ...],
  ["2017-05-07", 760, 210, 2200, ...],
  ["2017-05-08", 1250, 300, 1032, ...]
]

Here is my code:

const condense = x => x.timeline_map
var rest = []
const pluckDate = (obj, i) => {
  return [Object.keys(obj)[i]]
}
const getValues = value => {
  data.map(function () {
    return data.timeline_map
  })
}
const result = R.compose(
  R.values,
  R.mapObjIndexed(pluckDate),
  R.map(condense)
)
console.log(result(data))

So far all I've got is just the dates extracted:

[["2017-05-06"], ["2017-05-07"], ["2017-05-08"]]

Which is still pretty far from the solution and I don't know if I've even done it in a "good" way. What would be the "functional"/"ramda"/"point free" way to solve this?

JSBIN

  • 1
    Object.entries([].concat(...data.map(i => Object.entries(i.timeline_map))).reduce((acc, [k, v]) => Object.assign({}, acc, { [k]: k in acc ? acc[k].concat(v) : [v] }), {})).map(([k, v]) => [k, ...v]) --- just for fun - a pure ES solution – zerkms Jul 24 '17 at 0:22
  • I do find the ability to do this last bit -- .map(k, v) => [k, ...v] -- one of the nicests features of ES6 – Scott Sauyet Jul 24 '17 at 0:43
3

Here's one approach. There may be a simpler one:

const convert = pipe(
  pluck('timeline_map'), //=> [{"2017-05-06": 770, "2017-05-07": 760, ...}, ...]
  map(toPairs),          //=> [[["2017-05-06", 770], ["2017-05-07", 760], ...], ...]
  unnest,                //=> [["2017-05-06", 770], ["2017-05-07", 760], ...]
  groupBy(head),         //=> {"2017-05-06": [["2017-05-06", 770], ["2017-05-06", 590], ...], "2017-05-07": [...], ...}
  map(map(last)),        //=> {"2017-05-06": [770, 590, 890], "2017-05-07": [760, 210, 2200], ...]
  toPairs,               //=> [["2017-05-06", [770, 590, 890]], ["2017-05-07", [760, 210, 2200]], ...]
  map(apply(prepend))    //=> [["2017-05-06", 770, 590, 890], ["2017-05-07", 760, 210, 2200], ...]
)
convert(data)

This involves a number of distinct steps, and I've shown the sort of data each one generates.

You can see this in action on the Ramda REPL.

2

Just for fun, I wanted to try and do it in one loop with two nested reducers. Three reasons I'd thought I'd share what I came up with:

  • I think the best starting point is always to write it without worrying about style until you get the result you want, before trying to go for "point free" :)
  • It's nice to see that the transformation is basically a combination of two reduce operations: from { timeline_map } to [entries], and from [entries] to [[key, ...values]]
  • It shows that wanting to do everything in one loop requires you to do ugly things :D

Might be interesting to see if the two-reduce, mutating Map approach can also be composed into a point free Ramda function... But I wouldn't be the right person to figure that out.

// from [[key, value]] to Map(key, [key, values])
const timeLineReducer = (map, [key, value]) => 
  map.set(
    key, 
    (map.get(key) || [key]).concat(value)
  );

// From [{ key: value }] to Map(key, [key, values])
const dataReducer = (map, { timeline_map }) =>
   Object
      .entries(timeline_map)
      .reduce(timeLineReducer, map);

const transformData = data => Array.from(
    data
      .reduce(dataReducer, new Map())
      .values()
  );
  
console.log(transformData(getData()))
  


// data
function getData() { return [{timeline_map:{"2017-05-06":770,"2017-05-07":760,"2017-05-08":1250}},{timeline_map:{"2017-05-06":590,"2017-05-07":210,"2017-05-08":300}},{timeline_map:{"2017-05-06":890,"2017-05-07":2200,"2017-05-08":1032}}]; }

EDIT: out of curiosity, I wanted to have a go at point free programming. A fun puzzle, but I can't say I really appreciate the outcome.

Never tried this before, so I'm not even sure if it is point free. But it works!

// e.g.: [2] -> [1] -> [1, 2]
const fConcat = flip(concat);

// e.g. : [1, 3] -> [1, 2] -> [1, 2, 3]
const fConcatTail = useWith(fConcat, [tail, identity]);

// e.g.: secNil(1, null) -> true
const secNil = compose(isNil, nthArg(1));

// e.g.: fConcatTailIf([0, 1], null)   -> [0, 1]
// e.g.: fConcatTailIf([0, 2], [0, 1]) -> [0, 1, 2]
const fConcatTailIf = ifElse(
  secNil,
  clone,
  fConcatTail
);

// e.g.: ["a", 1] -> lensProp("a")
const kvpKeyLensProp = compose(lensProp, head);


// e.g.: ["a", 1] -> {}              -> { a: ["a", 1] }
// e.g.: ["a", 2] -> { a: ["a", 1] } -> { a: ["a", 1, 2]}
const handleKVP = compose(
  apply(over),                          // create over that waits for {}
  ap([kvpKeyLensProp, fConcatTailIf]),  // ap with arg.
  of                                    // wrap argument in array
);

// (kvp, map) => handleKVP(kvp)(map);
const mergeKVPWithMap = uncurryN(2, handleKVP);

// Flip because reduce is inverted ((map, kvp) => ...)
// e.g.: {} -> ["a", 1] -> { a: ["a", 1]}
const entryReducer = flip(mergeKVPWithMap);
 

// e.g.: {}              -> [ ["a", 1] ] -> { a: ["a", 1] }
// e.g.: { a: ["a", 1] } -> [ ["a", 2] ] -> { a: ["a", 1, 2] }
const timelineReducer = reduce(entryReducer);

// e.g. { timeline_map: { a: 1 } } -> [ [ "a", 1 ] ]
const entriesFromData = compose(toPairs, prop("timeline_map"));

// Decorate 2nd argument of timelineReducer with entriesFromData
const dataReducer = useWith(timelineReducer, [identity, entriesFromData]);

// Return only the values from our composed object
const transformData = compose(values, reduce(dataReducer, { }));
  
// Call our transformation with our data
transformData(getData())
  


// data
function getData() { return [{timeline_map:{"2017-05-06":770,"2017-05-07":760,"2017-05-08":1250}},{timeline_map:{"2017-05-06":590,"2017-05-07":210,"2017-05-08":300}},{timeline_map:{"2017-05-06":890,"2017-05-07":2200,"2017-05-08":1032}}]; }

Try it in the Ramda REPL!

1

For demo purpose here is another solution.

 const concatAll = reduce(mergeWith(concat), {});
 const wrapInArray = value => [value];
 const zipKeysWithValues = (arr) => zip(keys(arr), values(arr));

 const res1 = pipe(
  pluck('timeline_map'),
  map(map(wrapInArray)),
  concatAll,
  zipKeysWithValues,
  map(flatten),
 )(data);

 const res2 = compose(
    map(flatten), 
    zipKeysWithValues, 
    concatAll, 
    map(map(wrapInArray)), 
    pluck('timeline_map'))(data);

You can also use both, pipe and compose. For logging use tap(console.log) in between any two steps.

  • I don't see wrapInArray or zipKeysWithVues in the docs. What version are you using? – 1252748 Jul 27 '17 at 14:06
  • 1
    defined on the first three line – eenagy Jul 27 '17 at 14:09
  • 1
    Oh sorry I'm on mobile and completely missed that, sorry. – 1252748 Jul 27 '17 at 14:13
  • Note that zipKeysWithValues can also be written as lift(zip)(keys, values). And wrapInArray is also Ramda's of. But I like this better than my answer. concatAll is a nice abstraction and map(flatten) is much cleaner than map(apply(prepend)) – Scott Sauyet Jul 28 '17 at 2:53
  • Thank you @ScottSauyet, I really appreciate that you took the time to add to my solution. :) – eenagy Jul 29 '17 at 6:53

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