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GitHub / NeuronalLab / Time_Series_Forecasting-in-Python
In this tutortial we will try three different methods for time series forecasting. We will be predicting Gold Stock Price based on historical data. We will try XGBoost, Holtwinters and Facebook Prophet and compair the results:
Stars: 0
Forks: 0
Open Issues: 0
License: None
Language: Jupyter Notebook
Repo Size: 318 KB
Dependencies:
156
Created: about 1 month ago
Updated: about 1 month ago
Last pushed: about 1 month ago
Last synced: 22 days ago
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Dependencies
requirements.txt
pypi
- Jinja2 ==3.1.3
- MarkupSafe ==2.1.5
- PyMatting ==1.1.12
- PySCIPOpt ==5.0.0
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- Pygments ==2.17.2
- absl-py ==2.1.0
- adagio ==0.2.4
- antlr4-python3-runtime ==4.11.1
- anyio ==4.3.0
- appdirs ==1.4.4
- asttokens ==2.4.1
- attrs ==23.2.0
- branca ==0.7.1
- certifi ==2023.7.22
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- charset-normalizer ==3.3.2
- click ==8.1.7
- click-plugins ==1.1.1
- cligj ==0.7.2
- cloudpickle ==3.0.0
- cmdstanpy ==1.2.1
- colorama ==0.4.6
- coloredlogs ==15.0.1
- comm ==0.2.1
- contourpy ==1.2.0
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- customtkinter ==5.2.2
- cycler ==0.10.0
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- debugpy ==1.8.0
- decorator ==5.1.1
- easyocr ==1.7.1
- einops ==0.7.0
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- executing ==2.0.1
- filelock ==3.13.1
- fiona ==1.9.5
- flatbuffers ==23.5.26
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- fs ==2.4.16
- fsspec ==2024.2.0
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- geopandas ==0.14.3
- h11 ==0.14.0
- holidays ==0.45
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- httpx ==0.27.0
- huggingface-hub ==0.21.4
- humanfriendly ==10.0
- idna ==2.10
- imageio ==2.33.1
- importlib_resources ==6.4.0
- ipykernel ==6.29.0
- ipython ==8.21.0
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- jsonschema-specifications ==2023.12.1
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- mlforecast ==0.12.0
- mpmath ==1.3.0
- nest-asyncio ==1.6.0
- networkx ==3.2.1
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- numba ==0.59.0
- numpy ==1.26.4
- omegaconf ==2.3.0
- onnxruntime ==1.17.1
- opencv-python ==4.9.0.80
- opencv-python-headless ==4.8.0.74
- openpyxl ==3.1.2
- ortools ==9.8.3296
- osmnx ==1.9.1
- packaging ==23.2
- pandas ==2.2.0
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- platformdirs ==4.2.0
- plotly ==5.20.0
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- protobuf ==4.25.2
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- pyreadline3 ==3.4.1
- python-bidi ==0.4.2
- python-dateutil ==2.8.2
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- pytz ==2024.1
- pywin32 ==306
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- qpd ==0.4.4
- referencing ==0.33.0
- regex ==2023.12.25
- rembg ==2.0.55
- requests ==2.31.0
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- torch ==2.2.0
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- tornado ==6.4
- tqdm ==4.66.2
- traitlets ==5.14.1
- transformers ==4.38.2
- triad ==0.9.6
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- typing_extensions ==4.9.0
- tzdata ==2023.4
- urllib3 ==2.2.0
- utilsforecast ==0.1.1
- wcwidth ==0.2.13
- wheel ==0.43.0
- window_ops ==0.0.15
- xgboost ==2.0.3
- xyzservices ==2023.10.1