Below you can find the description of a coding challenge that we ask people to perform when applying for a job in our team.
The goal of this coding challenge is to provide the applicant some insight into the business we're in and as such provide the applicant an indication about the challenges she/he will be confronted with. Next, during the first interview we will use the applicant's implementation as a seed to discuss all kinds of interesting software engineering topics.
We are the IS team of the 'Short-term Power as-a-Service' (a.k.a. SPaaS) team within GEM.
GEM, which stands for 'Global Energy Management', is the energy management arm of ENGIE, one of the largest global energy players, with access to local markets all over the world.
SPaaS is a team consisting of around 100 people with experience in energy markets, IT and modeling. In smaller teams consisting of a mix of people with different experiences, we are active on the day-ahead market, intraday markets and collaborate with the TSO to balance the grid continuously.
Calculate how much power each of a multitude of different powerplants need to produce (a.k.a. the production-plan) when the load is given and taking into account the cost of the underlying energy sources (gas, kerosine) and the Pmin and Pmax of each powerplant.
The load is the continuous demand of power. The total load at each moment in time is forecasted. For instance for Belgium you can see the load forecasted by the grid operator here.
At any moment in time, all available powerplants need to generate the power to exactly match the load. The cost of generating power can be different for every powerplant and is dependent on external factors: The cost of producing power using a turbojet, that runs on kerosine, is higher compared to the cost of generating power using a gas-fired powerplant because of gas being cheaper compared to kerosine and because of the thermal efficiency of a gas-fired powerplant being around 50% (2 units of gas will generate 1 unit of electricity) while that of a turbojet is only around 30%. The cost of generating power using windmills however is zero. Thus deciding which powerplants to activate is dependent on the merit-order.
When deciding which powerplants in the merit-order to activate (a.k.a. unit-commitment problem) the maximum amount of power each powerplant can produce (Pmax) obviously needs to be taken into account. Additionally gas-fired powerplants generate a certain minimum amount of power when switched on, called the Pmin.
Build a REST API exposing an endpoint /productionplan
that accepts a POST with a payload as you can
find in the example_payloads
directory and that returns a json with the same structure as
in example_response.json
and that manages and logs run-time errors.
For calculating the unit-commitment, we prefer you not to rely on an existing (linear-programming) solver but instead write an algorithm yourself.
Implementations can be coded in either in C#, Go or Python as these are (currently) the main languages we use in SPaaS. Along with the implementation should be a README that describes how to compile (if applicable) and launch the application.
- C# implementations should contain a solutions file to compile the application.
- Python implementations should contain
a
requirements.txt
or apyproject.toml
(for use with poetry) to install all needed dependencies.
The payload contains 3 types of data:
- load: The load is the amount of energy (MWh) that need to be generated during one hour.
- fuels: based on the cost of the fuels of each powerplant, the merit-order can be determined which is the starting
point for deciding which powerplants should be switched on and how much power they will deliver.
Wind-turbine are either switched-on, and in that case generate a certain amount of energy
depending on the % of wind, or can be switched off.
- gas(euro/MWh): the price of gas per MWh. Thus if gas is at 6 euro/MWh and if the efficiency of the powerplant is 50% (i.e. 2 units of gas will generate one unit of electricity), the cost of generating 1 MWh is 12 euro.
- kerosine(euro/Mwh): the price of kerosine per MWh.
- co2(euro/ton): the price of emission allowances (optionally to be taken into account).
- wind(%): percentage of wind. Example: if there is on average 25% wind during an hour, a wind-turbine with a Pmax of 4 MW will generate 1MWh of energy.
- powerplants: describes the powerplants at disposal to generate the demanded load. For each powerplant.
is specified:
- name:
- type: gasfired, turbojet or windturbine.
- efficiency: the efficiency at which they convert a MWh of fuel into a MWh of electrical energy. Wind-turbines do not consume 'fuel' and thus are considered to generate power at zero price.
- pmax: the maximum amount of power the powerplant can generate.
- pmin: the minimum amount of power the powerplant generates when switched on.
The response should be a json as in example_response.json
, specifying for each powerplant how much
power each powerplant should deliver. The power produced by each powerplant has to be a multiple
of 0.1 Mw and the sum of the power produced by all the powerplants together should
equal the load.
Having fun with this challenge and want to make it more realistic. Optionally, do one of the extra's below:
Provide a Dockerfile along with the implementation to allow deploying your solution quickly.
Taken into account that a gas-fired powerplant also emits CO2, the cost of running the powerplant should also take into account the cost of the emission allowances. For this challenge, you may take into account that each MWh generated creates 0.3 ton of CO2.
Provide a websocket server connection that will emit after every post the input of the POST together with the response to every client connected on the websocket.
For a submission to be reviewed as part of an application for a position in the team, the project needs to:
- contain a README.md explaining how to build and launch the API
- expose the API on port
8888
- return a result where the sum of the power generated by each of the different powerplants is exactly equal to the load specified in the payload for at least the example payloads provided.
Failing to comply with any of these criteria will automatically disqualify the submission.
For more info on energy management, check out:
- Global Energy Management Solutions
- COO hydroelectric power station
- Management of supply - video made during winter 2018-2019
Implementations should not rely on an external solver and thus contain an algorithm written from scratch (clarified in the text as of version v1.1.0)