Zimbabwe's AI Strategy Must Put Women at the Centre, Not the Margins - eyetrodigital.com
<a href="https://news.google.com/rss/articles/CBMirgFBVV95cUxNbmRsSG1zOGNncjhLckhqNFI1d0N5aFFCS0hUSjBwaGJYUFd3bk1RS2R3OGY3d1JjTEVlR1VaRWZGVkxCOGFOaDNfSjZwN3ljSG9VaWh2dmNxdmViODlXZkFpODExMl9hRmdQUWZ2blM0aEhaYktFSzM2U0RBcUNmYnY3S0FrVS1QdFBOREFndGczSTk0bDZ6Qlk5bExYOFBYbUl5QVpDcVVXaTJZSmc?oc=5" target="_blank">Zimbabwe's AI Strategy Must Put Women at the Centre, Not the Margins</a> <font color="#6f6f6f">eyetrodigital.com</font>
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