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For example:

params = {'n_estimators': 200, "max_depth": 4, 'subsample': 1, 'learning_rate': 0.1, 'random_state': 1}
boost = ensemble.GradientBoostingRegressor(**params)
ghostBoost = ensemble.GradientBoostingRegressor(**params)

...

boost.fit(x, y)

indexList = range(len(x))
random.shuffle(indexList)

x = [x[i] for i in indexList]
y = [y[i] for i in indexList]

ghostBoost.fit(x, y)

...

predictionA = boost.predict(features)
predictionB = ghostBoost.predict(features)

As you can see with a different order of input training samples, output results predictionA and predictionB are different(not too much but still), what's the explanation behind this?

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A difference can be caused by a bug or by numerical stability issues, but you haven't posted data (or a way to generate it), so it's really hard to tell. –  larsmans Mar 5 at 10:38

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