{"id":"PYSEC-2020-242","details":"netius prior to 1.17.58 is vulnerable to HTTP Request Smuggling. HTTP pipelining issues and request smuggling attacks might be possible due to incorrect Transfer encoding header parsing which could allow for CL:TE or TE:TE attacks.","aliases":["CVE-2020-7655","GHSA-wm2m-xrrp-j74c","SNYK-PYTHON-NETIUS-569141"],"modified":"2025-10-09T06:53:15.231501Z","published":"2020-05-21T15:15:00Z","references":[{"type":"ADVISORY","url":"https://snyk.io/vuln/SNYK-PYTHON-NETIUS-569141"},{"type":"ADVISORY","url":"https://github.com/advisories/GHSA-wm2m-xrrp-j74c"}],"affected":[{"package":{"name":"netius","ecosystem":"PyPI","purl":"pkg:pypi/netius"},"ranges":[{"type":"ECOSYSTEM","events":[{"introduced":"0"},{"fixed":"1.17.58"}]}],"versions":["0.1.0","0.1.1","0.1.10","0.1.11","0.1.12","0.1.13","0.1.14","0.1.15","0.1.16","0.1.17","0.1.18","0.1.19","0.1.2","0.1.20","0.1.21","0.1.22","0.1.23","0.1.24","0.1.3","0.1.4","0.1.5","0.1.6","0.1.7","0.1.8","0.1.9","0.2.0","0.2.1","0.2.2","0.2.3","0.2.4","0.2.5","0.2.6","0.2.7","0.2.8","0.2.9","0.3.0","0.3.1","0.3.10","0.3.11","0.3.12","0.3.13","0.3.2","0.3.3","0.3.4","0.3.5","0.3.6","0.3.7","0.3.8","0.3.9","0.4.0","0.4.1","0.4.10","0.4.12","0.4.13","0.4.14","0.4.15","0.4.16","0.4.17","0.4.18","0.4.19","0.4.2","0.4.3","0.4.4","0.4.5","0.4.6","0.4.7","0.4.8","0.4.9","0.5.0","0.5.1","0.5.10","0.5.11","0.5.12","0.5.2","0.5.3","0.5.4","0.5.5","0.5.7","0.5.8","0.5.9","0.6.0","0.6.1","0.6.10","0.6.2","0.6.3","0.6.4","0.6.5","0.6.6","0.6.7","0.6.8","0.6.9","0.7.0","0.7.1","0.7.10","0.7.11","0.7.12","0.7.13","0.7.14","0.7.2","0.7.3","0.7.4","0.7.5","0.7.6","0.7.7","0.7.8","0.7.9","0.8.0","0.8.1","0.8.10","0.8.11","0.8.12","0.8.13","0.8.14","0.8.15","0.8.16","0.8.17","0.8.18","0.8.19","0.8.2","0.8.20","0.8.21","0.8.22","0.8.23","0.8.25","0.8.26","0.8.3","0.8.4","0.8.5","0.8.6","0.8.7","0.8.8","0.8.9","0.9.0","0.9.1","0.9.10","0.9.11","0.9.12","0.9.13","0.9.14","0.9.15","0.9.16","0.9.17","0.9.18","0.9.19","0.9.2","0.9.20","0.9.21","0.9.22","0.9.23","0.9.24","0.9.25","0.9.26","0.9.27","0.9.28","0.9.29","0.9.3","0.9.30","0.9.31","0.9.32","0.9.33","0.9.34","0.9.35","0.9.36","0.9.37","0.9.38","0.9.39","0.9.4","0.9.40","0.9.41","0.9.42","0.9.43","0.9.44","0.9.45","0.9.46","0.9.47","0.9.48","0.9.49","0.9.5","0.9.50","0.9.51","0.9.52","0.9.53","0.9.54","0.9.55","0.9.56","0.9.57","0.9.58","0.9.59","0.9.6","0.9.60","0.9.61","0.9.62","0.9.63","0.9.64","0.9.65","0.9.66","0.9.67","0.9.7","0.9.8","0.9.9","1.0.0","1.0.1","1.0.10","1.0.11","1.0.12","1.0.13","1.0.2","1.0.3","1.0.4","1.0.5","1.0.6","1.0.7","1.0.8","1.0.9","1.1.0","1.1.1","1.1.2","1.1.3","1.10.0","1.10.1","1.10.10","1.10.11","1.10.2","1.10.3","1.10.4","1.10.5","1.10.6","1.10.7","1.10.8","1.10.9","1.11.0","1.11.1","1.11.10","1.11.11","1.11.12","1.11.13","1.11.14","1.11.15","1.11.16","1.11.17","1.11.18","1.11.19","1.11.2","1.11.20","1.11.21","1.11.22","1.11.23","1.11.24","1.11.25","1.11.3","1.11.4","1.11.5","1.11.6","1.11.7","1.11.8","1.11.9","1.12.0","1.12.1","1.12.10","1.12.11","1.12.12","1.12.13","1.12.14","1.12.15","1.12.16","1.12.17","1.12.18","1.12.19","1.12.2","1.12.20","1.12.21","1.12.22","1.12.23","1.12.24","1.12.25","1.12.26","1.12.27","1.12.28","1.12.29","1.12.3","1.12.30","1.12.31","1.12.32","1.12.33","1.12.34","1.12.35","1.12.36","1.12.37","1.12.4","1.12.5","1.12.6","1.12.7","1.12.8","1.12.9","1.13.0","1.13.1","1.13.10","1.13.11","1.13.2","1.13.3","1.13.4","1.13.5","1.13.6","1.13.7","1.13.8","1.13.9","1.14.0","1.14.1","1.14.2","1.14.3","1.14.4","1.14.5","1.14.6","1.14.7","1.14.8","1.14.9","1.15.0","1.15.1","1.15.12","1.15.13","1.15.14","1.15.15","1.15.16","1.15.2","1.15.3","1.15.4","1.15.5","1.15.6","1.15.7","1.15.8","1.16.0","1.16.1","1.16.10","1.16.11","1.16.12","1.16.13","1.16.14","1.16.15","1.16.16","1.16.17","1.16.18","1.16.19","1.16.2","1.16.20","1.16.21","1.16.22","1.16.23","1.16.24","1.16.25","1.16.26","1.16.27","1.16.28","1.16.29","1.16.3","1.16.30","1.16.31","1.16.32","1.16.33","1.16.34","1.16.35","1.16.36","1.16.37","1.16.38","1.16.4","1.16.40","1.16.41","1.16.42","1.16.43","1.16.44","1.16.45","1.16.46","1.16.47","1.16.48","1.16.49","1.16.5","1.16.50","1.16.51","1.16.52","1.16.53","1.16.54","1.16.56","1.16.57","1.16.58","1.16.59","1.16.6","1.16.60","1.16.61","1.16.7","1.16.8","1.16.9","1.17.1","1.17.10","1.17.12","1.17.13","1.17.14","1.17.15","1.17.16","1.17.17","1.17.18","1.17.19","1.17.2","1.17.20","1.17.21","1.17.22","1.17.23","1.17.24","1.17.25","1.17.26","1.17.27","1.17.28","1.17.29","1.17.30","1.17.31","1.17.32","1.17.33","1.17.34","1.17.35","1.17.36","1.17.37","1.17.38","1.17.39","1.17.4","1.17.40","1.17.41","1.17.42","1.17.43","1.17.44","1.17.45","1.17.46","1.17.47","1.17.48","1.17.49","1.17.5","1.17.50","1.17.51","1.17.52","1.17.54","1.17.55","1.17.56","1.17.57","1.17.6","1.17.7","1.17.9","1.2.0","1.2.1","1.2.10","1.2.11","1.2.12","1.2.13","1.2.14","1.2.15","1.2.16","1.2.2","1.2.3","1.2.4","1.2.5","1.2.6","1.2.7","1.2.8","1.2.9","1.3.0","1.3.1","1.3.10","1.3.11","1.3.12","1.3.13","1.3.14","1.3.15","1.3.2","1.3.3","1.3.4","1.3.5","1.3.6","1.3.7","1.3.8","1.3.9","1.4.0","1.4.1","1.4.10","1.4.11","1.4.12","1.4.13","1.4.2","1.4.3","1.4.4","1.4.5","1.4.6","1.4.7","1.4.8","1.4.9","1.5.0","1.5.1","1.5.10","1.5.11","1.5.12","1.5.13","1.5.14","1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