ohlc_model
Maximum number of data periods: 10000
This function maps the directional evolution of the selected timeframe within the larger causal chain. This function serves to verify the platform’s understanding of the time series structure. It is not autoregressive and does not rely on the time series’ own past values for prediction.
Function Parameters
Parameter | Type | Required | Description |
---|---|---|---|
data_input | object | True | The financial time series data to be analysed. This can be a file path (e.g., ‘folder/ohlc_data.csv’) or a pandas DataFrame. Supported file formats include CSV, TSV, Parquet, Excel, JSON, and HTML. |
interval | int | True | The frequency of the time series data. Use in conjunction with interval_unit . |
interval_unit | string | True | The unit of time for the interval. Accepts one of the following values: ‘seconds’, ‘minutes’ and ‘days’. |
reasoning_mode | string | True | The reasoning strategy the algorithms use to make decisions: ‘proactive’ acts early with minimal information while ‘reactive’ waits for sufficient evidence before acting. |
output_file | string | False | The name of the file where the output will be saved. The output is a CSV file. For example, ‘saved_output’ will create saved_output.csv. |
Data Columns
Your input data (file or DataFrame) must contain the following columns:- datetime (string): A timestamp for each data point.
- open (float): The opening price for the interval.
- high (float): The highest price reached during the interval.
- low (float): The lowest price reached during the interval.
- close (float): The closing price for the interval.