Mobile solutions provider Mahindra Comviva has announced that it has partnered with Gondwana-City Productions (GCP), one of the leading content aggregators in Africa. This tie-up with GCP will further strengthen Mahindra Comviva’s digital content portfolio, across video, voice and text, in the continent.
With this partnership, GCP will provide the most popular content from Francophone artists like Mamane, Digbeu Cravate, Adama Dahico, Yodé & Siro and many more local artists.
With over 250,000 tracks on board and over 140 Content Providers, Mahindra Comviva is one of the largest Content aggregator in Africa, Middle East and Asia. In Africa alone, the company has collaborated with over 70 content partners including local and international content providers/copyright bodies/ local artists and production houses in the region.
Speaking on the partnership, Atul Madan, Head of Digital Services, Mahindra Comviva said, “We are excited about this partnership as Gondwana-City Productions works closely with a number of both local and international artists to source an extensive selection of digital music and infotainment content that cater to the diverse tastes of consumer’s in Francophone region.”
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