Skip to main content

A restful client library, designed to access predictnow restful API.

Project description

TO BEGIN ANY WORK WITH PREDICTNOW.AI CLIENT, WE START BY IMPORTING AND CREATING A CLASS INSTANCE

from predictnow.pdapi import PredictNowClient
import pandas as pd

api_key = "KeyProvidedToEachOfOurSubscriber"   
api_host = "http://%VMIP%"  

# Initial variables
username = "user1"  
email = "xxxx@gmail.com"
client = PredictNowClient(api_host,api_key)

YOU WILL NEED TO EDIT THIS INPUT DATASET FILE PATH, LABELNAME AND MODELNAME!

file_path = 'my_amazing_features.xlsx'  
labelname = 'futreturn' #might need to change this name accordingly 
modelname = 'model1' # 
import os

NOW YOUR PREDICTNOW.AI CLIENT HAS BEEN SETUP.

# For classification problem
params = {"timeseries": "yes", "weights": "no", "prob_calib": "no", "eda": "no", "type": "classification", "feature_selection": "shap", "analysis": "small", "boost": "gbdt", "mode": "train", "testsize": "1"}

# For regression problems
params = {"timeseries": "yes", "weights": "no", "prob_calib": "no", "eda": "no", "type": "regression", "feature_selection": "shap", "analysis": "small", "boost": "gbdt", "mode": "train", "testsize": "1"}

print("THE PARAMS", params)

LET'S CREATE THE MODEL BY SENDING THE PARAMETERS TO PREDICTNOW.AI

response = client.create_model
                   (
                    username=username, # only letters, numbers, or underscores
                    model_name=modelname,
                    params=params,
                   )

print(response)

LET'S LOAD UP THE FILE TO PANDAS IN THE LOCAL ENVIRONMENT

from pandas import read_csv  # If you have the Excel file, replace read_csv with read_excel
from pandas import read_excel
df = read_excel(file_path)  # Same here
df.name = "testdataframe"  # Optional, but recommended

print(df)

START TRAINING MODEL

NOTE: THIS MAY TAKE UP TO several minutes

response = client.train
                    (
                        model_name=modelname,
                        input_df=df,
                        label=labelname,
                        username=username,
                        email=email,
                        return_output=False
                    )

print("THE CLIENT HAS SENT THE DATASET TO THE SERVER AND TRIGGERED THE TRAINING MODEL TASK")
print(response)

CHECK THE STATUS OF THE MODEL

status = client.getstatus(
                            username=username,
                            train_id=response["train_id"]
                         )

print("Current status:")
print(status)

NOW WE WILL DOWNLOAD FILES

if status["state"] == "COMPLETED":

    response = client.getresult(
        model_name=modelname,
        username=username,
    )

    import pandas as pd
    predicted_prob_cv = pd.read_json(response.predicted_prob_cv)
    print("predicted_prob_cv")
    print(predicted_prob_cv)

    predicted_prob_test = pd.read_json(response.predicted_prob_test)
    print("predicted_prob_test")
    print(predicted_prob_test)


    predicted_targets_cv = pd.read_json(response.predicted_targets_cv)
    print("predicted_targets_cv")
    print(predicted_targets_cv)

START PREDICTING USING THE TRAINED MODEL

if status["state"] == "COMPLETED":

    df = read_excel("example_input_live_latest.xlsx")
    df.name = "myfirstpredictname"  # optional, but recommended

    # Predict demo
    response = client.predict(
        model_name=modelname,
        input_df=df,
        username=username,
        eda=params["eda"],
        prob_calib=params["prob_calib"]
    )

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

predictnow-2.0.1.tar.gz (12.9 kB view hashes)

Uploaded Source

Built Distribution

predictnow-2.0.1-py3-none-any.whl (12.1 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page