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OPEC November oil output slips before Aramco IPO, policy meeting

OPEC oil output has fallen in November as Angolan production has slipped due to maintenance and Saudi Arabia has kept a lid on supply to support the market before the initial public offering (IPO) of state-owned Saudi Aramco, a Reuters survey found.
Reuters: Top News https://ift.tt/2R29VXV November 30, 2019 at 05:09AM

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