Ejemplo n.º 1
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    def from_mm(cls, path, content=None):
        if content is None:
            with open(path, 'r') as f:
                content = f.readlines()

        content = pt.TupList(content)
        index_prec = \
            content. \
            index('PRECEDENCE RELATIONS:\n')

        index_requests = \
            content.index('REQUESTS/DURATIONS:\n')

        index_avail = \
            content.\
            index('RESOURCEAVAILABILITIES:\n')

        # precedence.
        precedence = content[index_prec + 2:index_requests - 1]
        successors = pt.SuperDict()
        for line in precedence:
            _, job, modes, num_succ, *jobs, _ = re.split('\s+', line)
            successors[int(job)] = pt.TupList(jobs).vapply(int)
        successors = successors.kvapply(lambda k, v: dict(successors=v, id=k))

        # requests/ durations
        requests = content[index_requests + 3:index_avail - 1]
        resources = re.findall(r'[RN] \d', content[index_requests + 1])
        needs = pt.SuperDict()
        durations = pt.SuperDict()
        last_job = ''
        for line in requests:
            if line[2] == ' ':
                job = last_job
                _, mode, duration, *consumption, _ = re.split('\s+', line)
            else:
                _, job, mode, duration, *consumption, _ = re.split('\s+', line)
                last_job = job
            key = int(job), int(mode)
            needs[key] = \
                {v: int(consumption[k]) for k, v in enumerate(resources)}
            needs[key] = pt.SuperDict(needs[key])
            durations[key] = int(duration)

        # resources / availabilities
        line = content[index_avail + 2]
        _, *avail, _ = re.split('\s+', line)
        availability = {k: int(avail[i]) for i, k in enumerate(resources)}
        availability = pt.SuperDict(availability).kvapply(
            lambda k, v: dict(available=v, id=k))
        data = dict(resources=availability,
                    jobs=successors,
                    durations=durations.to_dictdict(),
                    needs=needs.to_dictdict())
        return cls(data)
Ejemplo n.º 2
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 def download_backup_static(self):
     stations = self.get_stations(cache=False)
     static = pt.TupList(stations).apply(self.get_static)
     ts = self.get_timestamp(format="%Y-%m-%dT%H%M%S")
     self.set_cache(self.all_stations + '/static/' + ts,
                    static,
                    ext='.json')
Ejemplo n.º 3
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 def to_dict(self):
     routes = pt.SuperDict()
     for k, v in self.data["routes"].items():
         routes[k] = pt.TupList(v).kvapply(lambda k, v: (k, v))
     routes = routes.to_tuplist().vapply(
         lambda v: dict(route=v[0], pos=v[1], node=v[2]))
     return pt.SuperDict(routes=routes)
Ejemplo n.º 4
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    def from_dict(cls, data) -> "Instance":
        demand = pt.SuperDict({v["n"]: v for v in data["demand"]})

        weights = (pt.TupList(data["arcs"]).vapply(
            lambda v: v.values()).vapply(lambda x: list(x)).to_dict(
                result_col=2, is_list=False))
        datap = {**data, **dict(demand=demand, arcs=weights)}
        return cls(datap)
Ejemplo n.º 5
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        def read_file(filePath):
            with open(filePath, "r") as f:
                contents = f.read().splitlines()

            pairs = (pt.TupList(
                contents[1:]).vapply(lambda v: v.split(" ")).vapply(
                    lambda v: dict(n1=int(v[0]), n2=int(v[1]))))
            return dict(pairs=pairs)
Ejemplo n.º 6
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    def solve(self, options: dict):
        model = cp_model.CpModel()
        input_data = pt.SuperDict.from_dict(self.instance.data)
        pairs = input_data["pairs"]
        n1s = pt.TupList(pairs).vapply(lambda v: v["n1"])
        n2s = pt.TupList(pairs).vapply(lambda v: v["n2"])
        nodes = (n1s + n2s).unique2()
        max_colors = len(nodes) - 1

        # variable declaration:
        color = pt.SuperDict({
            node: model.NewIntVar(0, max_colors, "color_{}".format(node))
            for node in nodes
        })
        # TODO: identify maximum cliques and apply constraint on the cliques instead of on pairs
        for pair in pairs:
            model.Add(color[pair["n1"]] != color[pair["n2"]])

        obj_var = model.NewIntVar(0, max_colors, "total_colors")
        model.AddMaxEquality(obj_var, color.values())
        model.Minimize(obj_var)
        solver = cp_model.CpSolver()
        solver.parameters.max_time_in_seconds = options.get("timeLimit", 10)
        status = solver.Solve(model)
        status_conv = {
            cp_model.OPTIMAL: STATUS_OPTIMAL,
            cp_model.INFEASIBLE: STATUS_INFEASIBLE,
            cp_model.UNKNOWN: STATUS_UNDEFINED,
            cp_model.MODEL_INVALID: STATUS_UNDEFINED,
        }
        if status not in [cp_model.OPTIMAL, cp_model.FEASIBLE]:
            return dict(status=status_conv.get(status),
                        status_sol=SOLUTION_STATUS_INFEASIBLE)
        color_sol = color.vapply(solver.Value)

        assign_list = color_sol.items_tl().vapply(
            lambda v: dict(node=v[0], color=v[1]))
        self.solution = Solution(dict(assignment=assign_list))

        return dict(status=status_conv.get(status),
                    status_sol=SOLUTION_STATUS_FEASIBLE)
Ejemplo n.º 7
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def get_distance_dict(complete_graph, max_dist_km_walk):
    complete_graph['distance'] = \
        haversine_np(complete_graph.stop_lon_x, complete_graph.stop_lat_x,
                    complete_graph.stop_lon_y, complete_graph.stop_lat_y)
    complete_graph['distance'] = complete_graph['distance'].round(4)
    complete_graph = complete_graph[complete_graph.distance < max_dist_km_walk]

    data_neighbors = \
        complete_graph.\
        filter(['stop_id_x', 'stop_id_y', 'distance']).\
        to_records(index=False)

    return \
        pt.TupList(data_neighbors). \
        to_dict(result_col=2, is_list=False).\
        to_dictdict()
Ejemplo n.º 8
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    def test_cases(self) -> List[Dict]:
        def read_file(filePath):
            with open(filePath, "r") as f:
                contents = f.read().splitlines()

            pairs = (pt.TupList(
                contents[1:]).vapply(lambda v: v.split(" ")).vapply(
                    lambda v: dict(n1=int(v[0]), n2=int(v[1]))))
            return dict(pairs=pairs)

        file_dir = os.path.join(os.path.dirname(__file__), "data")
        files = os.listdir(file_dir)
        test_files = pt.TupList(files).vfilter(lambda v: v.startswith("gc_"))
        return [
            read_file(os.path.join(file_dir, fileName))
            for fileName in test_files
        ]
Ejemplo n.º 9
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def generate_timetable():
    data_dir = 'data_tisseo/stops_schedules/'
    files = os.listdir(data_dir)
    _get_name = lambda v: os.path.splitext(v)[0]
    files_data = \
        pt.TupList(files). \
            to_dict(None). \
            vapply(_get_name). \
            reverse(). \
            vapply(lambda v: data_dir + v). \
            vapply(read_json)

    all_passing = \
        files_data. \
            vapply(_treat_stop_area). \
            to_dictup(). \
            to_tuplist()

    return all_passing
Ejemplo n.º 10
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def get_lats_longs(arcs, info):
    nodes = set()
    for node, neighbors in arcs.items():
        nodes.add(node)
        for node2 in neighbors:
            nodes.add(node2)
    get_lat = lambda v: float(info['stops'][v.stop]['stop_lat'])
    get_lon = lambda v: float(info['stops'][v.stop]['stop_lon'])
    get_route = lambda v: info['routes'][v.route]['route_short_name']
    get_trip = lambda v: v.trip
    get_seq = lambda v: v.seq
    get_time = lambda v: v.time.strftime('%H:%M')
    get_name = lambda v: info['stops'][v.stop]['stop_name']
    get_all = lambda v: dict(lat=get_lat(v),
                             long=get_lon(v),
                             time=get_time(v),
                             route=get_route(v),
                             name=get_name(v),
                             trip=get_trip(v),
                             seq=get_seq(v))
    return pt.TupList(nodes).to_dict(None).vapply(get_all).to_df(orient='index').reset_index(drop=True)
Ejemplo n.º 11
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def get_tables(directory = 'data_tisseo/tisseo_gtfs/'):
    names = pt.TupList(['stop_times', 'trips', 'routes', 'stops', 'calendar'])
    return names.to_dict(None).vapply(read_table, directory=directory)
Ejemplo n.º 12
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def _treat_stop_area(one_stop):
    get_line_time = lambda v: (v['line']['shortName'], v['dateTime'])
    return pt.TupList(one_stop['departures']['departure']).\
        apply(get_line_time).\
        to_dict(1).\
        vapply(sorted)
Ejemplo n.º 13
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 def get_relevant_networks(self):
     filename = os.path.join(self.cache_dir, 'v2/relevant_networks.txt')
     with open(filename, 'r') as f:
         content = f.readlines()
     return pt.TupList(content).apply(str.strip)
Ejemplo n.º 14
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# from pytups.pytups.tuplist import TupList
# from pytups.pytups.superdict import SuperDict
# from pytups import TupList, Superdict
import pytups as pt

# Data example
data = [
    dict(name="Alex", birthyear=1980, sex="M", height=175),
    dict(name="Bernard", birthyear=1955, sex="M", height=164),
    dict(name="Chloe", birthyear=1995, sex="F", height=178),
    dict(name="Daniel", birthyear=2010, sex="M", height=131),
    dict(name="Ellen", birthyear=1968, sex="F", height=158),
]

data_tl = pt.TupList(data)

# get all adult males (adults in 2021)
adults_M = data_tl.vfilter(lambda v: v["sex"] == "M").vfilter(
    lambda v: v["birthyear"] <= 2003
)
print("adults_M:", adults_M)

# get only their names and birthyear
adults_M_names_BY = adults_M.take(["name", "birthyear"])
print("adults_M_names_BY:", adults_M_names_BY)

# get only their names
adults_M_names = adults_M.take("name")
print("adults_M_names:", adults_M_names)

# get everyone age (in 2021)
Ejemplo n.º 15
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 def get_pairs(self):
     return pt.TupList((el["n1"], el["n2"]) for el in self.data["pairs"])
Ejemplo n.º 16
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    14: 72,
    15: 111,
    16: 111,
    17: 117,
    18: 69,
    19: 115,
    20: 68,
}

# Get intermediate paramters, sets.
C_max = sum(duration.values())
periods = range(C_max)
tasks = duration.keys()

# all legal combinations of task-period assignment
jk_all = pt.TupList((t, p) for t in tasks for p in periods)

# we filter the starts that are too late to be possible:
JK = jk_all.vfilter(lambda x: x[1] + duration[x[0]] <= C_max)

# we create a set of tasks that can start at time period k
K_j = JK.to_dict(result_col=1)

# all combinations (t, p, p2) such that I start a task j
# in time period k and is active in period k2
jkk2 = pt.TupList(
    (j, k, k2) for j, k in JK for k2 in range(k, k + duration[j]))

# given a period k2, what starts affect make it unavailable:
JK_k2 = jkk2.to_dict(result_col=[0, 1])