/
fleet_utilisation_quantity_timeseries.py
248 lines (188 loc) · 15.1 KB
/
fleet_utilisation_quantity_timeseries.py
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"""
Try me out in your browser:
[![Binder](https://img.shields.io/badge/try%20me%20out-launch%20notebook-579ACA.svg?logo=data:image/png;base64,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)](https://mybinder.org/v2/gh/VorTECHsa/python-sdk/master?filepath=docs%2Fexamples%2Ftry_me_out%2Futilisation_quantity_timeseries.ipynb)
"""
from datetime import datetime
from typing import List, Union
from vortexasdk.endpoints.breakdown_result import BreakdownResult
from vortexasdk.endpoints.endpoints import FLEET_UTILISATION_TIMESERIES_QUANTITY
from vortexasdk.api.shared_types import Tag, to_ISODate
from vortexasdk.api import ID
from vortexasdk.operations import Search
from vortexasdk.utils import convert_to_list, sts_param_value
class FleetUtilisationQuantityTimeseries(Search):
"""
Please note: you will require a subscription to our Freight module to access this endpoint.
"""
def __init__(self):
Search.__init__(self, FLEET_UTILISATION_TIMESERIES_QUANTITY)
# noinspection PyUnresolvedReferences
def search(
self,
timeseries_frequency: str = None,
timeseries_unit: str = None,
timeseries_property: str = None,
filter_products: Union[ID, List[ID]] = None,
filter_charterers: Union[ID, List[ID]] = None,
filter_owners: Union[ID, List[ID]] = None,
filter_origins: Union[ID, List[ID]] = None,
filter_destinations: Union[ID, List[ID]] = None,
filter_vessels: Union[ID, List[ID]] = None,
filter_vessel_classes: Union[ID, List[ID]] = None,
filter_vessel_flags: Union[ID, List[ID]] = None,
filter_vessel_ice_class: Union[ID, List[ID]] = None,
filter_vessel_propulsion: Union[ID, List[ID]] = None,
filter_vessel_tags: Union[List[Tag], Tag] = None,
filter_vessel_risk_levels: Union[ID, List[ID]] = None,
filter_vessel_scrubbers: str = "disabled",
filter_vessel_age_min: int = None,
filter_vessel_age_max: int = None,
filter_vessel_dwt_min: int = None,
filter_vessel_dwt_max: int = None,
filter_ship_to_ship: bool = None,
filter_charterer_exists: bool = None,
filter_activity: str = None,
filter_time_min: datetime = datetime(2019, 10, 1, 0),
filter_time_max: datetime = datetime(2019, 10, 1, 1),
filter_vessel_status: Union[ID, List[ID]] = None,
exclude_origins: Union[ID, List[ID]] = None,
exclude_destinations: Union[ID, List[ID]] = None,
exclude_products: Union[ID, List[ID]] = None,
exclude_vessels: Union[ID, List[ID]] = None,
exclude_vessel_classes: Union[ID, List[ID]] = None,
exclude_charterers: Union[ID, List[ID]] = None,
exclude_owners: Union[ID, List[ID]] = None,
exclude_vessel_flags: Union[ID, List[ID]] = None,
exclude_vessel_ice_class: Union[ID, List[ID]] = None,
exclude_vessel_propulsion: Union[ID, List[ID]] = None,
exclude_vessel_tags: Union[List[Tag], Tag] = None,
exclude_vessel_risk_levels: Union[ID, List[ID]] = None,
) -> BreakdownResult:
"""
Sum of cargoes quantity for each day. For frequencies other than ‘day’, the values returned are
calculated by summing each daily cargo quantity bucket and returning the total.
# Arguments
timeseries_unit: A numeric metric to be calculated for each time bucket. Must be one of `'b'`, `'bpd'`, `'t'`,
`'tpd'`, `'c'`, `'cpd'`, corresponding to barrels, barrels per day, metric tonnes, metric tonnes per day,
cargo movement count, cargo movement count per day, respectively.
timeseries_frequency: Frequency denoting the granularity of the time series. Must be one of the following: `'day'`, `'week'`, `'doe_week'`, `'month'`, `'quarter'`, `'year'`.
timeseries_property: Property on the vessel movement used to build the value of the aggregation. By default it is “quantity”. Must be one of the following: `'quantity’`, `‘vessel_class’`,
`‘vessel_flag’`, `‘origin_region’`, `‘origin_trading_region’`, `‘origin_trading_sub_region’`, `‘origin_country’`,
`‘origin_port’`, `‘origin_terminal’`, `‘destination_region’`, `‘destination_trading_region’`,
`‘destination_trading_sub_region’`, `‘destination_country’`, `‘destination_port’`, `‘destination_terminal’`,
`'product_group'`, `'product_group_product'`, `'product_category'`, `'product_grade'`.
filter_time_min: The UTC start date of the time filter.
filter_time_max: The UTC end date of the time filter.
filter_products: A product ID, or list of product IDs to filter on.
filter_charterers: A charterer entity ID, or list of product IDs to filter on.
filter_owners: An owner ID, or list of owner IDs to filter on.
filter_origins: A geography ID, or list of geography IDs to filter on.
filter_destinations: A geography ID, or list of geography IDs to filter on.
filter_vessels: A vessel ID, or list of vessel IDs to filter on.
filter_vessel_classes: A vessel class, or list of vessel classes to filter on.
filter_vessel_flags: A vessel flag ID, or list of vessel flag IDs to filter on.
filter_vessel_ice_class: A vessel ice class ID, or list of vessel ice class IDs to filter on.
filter_vessel_propulsion: A vessel propulsion ID, or list of vessel propulsion IDs to filter on.
filter_vessel_tag: A time bound vessel tag, or list of time bound vessel tags to filter on.
filter_vessel_risk_levels: A vessel risk level, or list of vessel risk levels to filter on.
filter_vessel_scrubbers: Either inactive 'disabled', or included 'inc' or excluded 'exc'.
filter_vessel_age_min: A number between 1 and 100 (representing years).
filter_vessel_age_max: A number between 1 and 100 (representing years).
filter_vessel_age_min: A number between 0 and 550000.
filter_vessel_age_max: A number between 0 and 550000.
filter_activity: Movement activity on which to base the time filter. Must be one of: `'loading_state'`,
`'oil_on_water_state'`, `'unloading_state'`, `'ship_to_ship'`, `'storing_state'`, `'transiting_state'`
filter_vessel_status: The vessel status on which to base the filter. Enter 'vessel_status_ballast' for ballast vessels, 'vessel_status_laden_known' for laden vessels with known cargo (i.e. a type of cargo that Vortexa currently tracks) or 'any_activity' for any other vessels.
filter_charterer_exists: A boolean to include or exclude the records to those that have a charterer.
filter_ship_to_ship: A boolean to include or exclude the records to those that are involved in an STS.
exclude_filter_products: A product ID, or list of product IDs to exclude.
exclude_filter_charterers: A charterer entity ID, or list of product IDs to exclude.
exclude_filter_owners: An owner ID, or list of owner IDs to exclude.
exclude_filter_origins: A geography ID, or list of geography IDs to exclude.
exclude_filter_destinations: A geography ID, or list of geography IDs to exclude.
exclude_filter_vessels: A vessel ID, or list of vessel IDs to exclude.
exclude_filter_vessel_classes: A vessel class, or list of vessel classes to exclude.
exclude_filter_vessel_ice_class: A vessel ice class ID, or list of vessel ice class IDs to exclude.
exclude_filter_vessel_propulsion: A vessel propulsion ID, or list of vessel propulsion IDs to exclude.
exclude_filter_vessel_tag: A time bound vessel tag, or list of time bound vessel tags to exclude.
exclude_filter_vessel_risk_levels: A vessel risk level, or list of vessel risk levels to exclude.
# Returns
`BreakdownResult`
# Example
_Ton days demand of vessels from the Middle East over the last 7 days._
```python
>>> from vortexasdk import FleetUtilisationQuantityTimeseries
>>> from datetime import datetime
>>> search_result = FleetUtilisationQuantityTimeseries().search(
... filter_vessel_status="vessel_status_laden_known",
... filter_origins="80aa9e4f3014c3d96559c8e642157edbb2b684ea0144ed76cd20b3af75110877",
... filter_time_min=datetime(2021, 1, 11),
... filter_time_max=datetime(2021, 1, 18),
... timeseries_unit="t",
... timeseries_frequency="day",
... timeseries_property="quantity")
>>> df = search_result.to_df()
```
Gives the following:
| | key | value | count | breakdown.0.label | breakdown.0.value |breakdown.0.count |
|---:|:-------------------------|----------:|----------:|--------------------:|------------------:|-----------------:|
| 7 | 2021-01-18 00:00:00+00:00| 69661114 | 688 | "quantity" | 69661114 |688 |
| 0 | 2021-01-11 00:00:00+00:00| 73208724 | 738 | "quantity" | 73208724 |738 |
| 1 | 2021-01-12 00:00:00+00:00| 73586280 | 732 | "quantity" | 73586280 |732 |
| 2 | 2021-01-13 00:00:00+00:00| 74638888 | 736 | "quantity" | 74638888 |736 |
| 3 | 2021-01-14 00:00:00+00:00| 74958932 | 746 | "quantity" | 74958932 |746 |
| 4 | 2021-01-15 00:00:00+00:00| 74230202 | 737 | "quantity" | 74230202 |737 |
| 5 | 2021-01-16 00:00:00+00:00| 73723336 | 738 | "quantity" | 73723336 |738 |
| 6 | 2021-01-17 00:00:00+00:00| 74216473 | 751 | "quantity" | 74216473 |751 |
"""
sts_filter = sts_param_value(filter_ship_to_ship)
crossfilters = {
"filter_ship_to_ship": sts_filter["x_filter"],
# if charterer toggle is True, apply cross filter
# else make it false
"filter_charterer_exists": filter_charterer_exists == True
}
exclude_params = {
"filter_destinations": convert_to_list(exclude_destinations),
"filter_products": convert_to_list(exclude_products),
"filter_vessels": convert_to_list(exclude_vessels),
"filter_vessel_classes": convert_to_list(exclude_vessel_classes),
"filter_owners": convert_to_list(exclude_owners),
"filter_origins": convert_to_list(exclude_origins),
"filter_charterers": convert_to_list(exclude_charterers),
"filter_vessel_flags": convert_to_list(exclude_vessel_flags),
"filter_vessel_ice_class": convert_to_list(exclude_vessel_ice_class),
"filter_vessel_propulsion": convert_to_list(exclude_vessel_propulsion),
"filter_vessel_risk_levels": convert_to_list(exclude_vessel_risk_levels),
"filter_ship_to_ship": sts_filter["exclude"]
}
api_params = {
"timeseries_frequency": timeseries_frequency,
"timeseries_unit": timeseries_unit,
"timeseries_property": timeseries_property,
"filter_activity": filter_activity,
"filter_time_min": to_ISODate(filter_time_min),
"filter_time_max": to_ISODate(filter_time_max),
"filter_vessel_age_min": filter_vessel_age_min,
"filter_vessel_age_max": filter_vessel_age_max,
"filter_vessel_dwt_min": filter_vessel_dwt_min,
"filter_vessel_dwt_max": filter_vessel_dwt_max,
"filter_vessel_status": convert_to_list(filter_vessel_status),
"filter_charterers": convert_to_list(filter_charterers),
"filter_owners": convert_to_list(filter_owners),
"filter_products": convert_to_list(filter_products),
"filter_vessels": convert_to_list(filter_vessels),
"filter_vessel_classes": convert_to_list(filter_vessel_classes),
"filter_vessel_flags": convert_to_list(filter_vessel_flags),
"filter_destinations": convert_to_list(filter_destinations),
"filter_origins": convert_to_list(filter_origins),
"filter_vessel_ice_class": convert_to_list(filter_vessel_ice_class),
"filter_vessel_propulsion": convert_to_list(filter_vessel_propulsion),
"vessel_tags": convert_to_list(filter_vessel_tags),
"vessel_tags_excluded": convert_to_list(exclude_vessel_tags),
"filter_vessel_risk_levels": convert_to_list(filter_vessel_risk_levels),
"filter_vessel_scrubbers": filter_vessel_scrubbers,
"exclude": exclude_params,
"crossfilters": crossfilters,
}
return BreakdownResult(super().search(**api_params))