Open Source Used in Cisco DNA Assurance Release 1.3.X

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Open Source Used in Cisco DNA Assurance Release 1.3.X Open Source Used In Cisco DNA Assurance 1.3.1.0 Cisco Systems, Inc. www.cisco.com Cisco has more than 200 offices worldwide. Addresses, phone numbers, and fax numbers are listed on the Cisco website at www.cisco.com/go/offices. Text Part Number: 78EE117C99-201368696 Open Source Used In Cisco DNA Assurance 1.3.1.0 1 This document contains licenses and notices for open source software used in this product. With respect to the free/open source software listed in this document, if you have any questions or wish to receive a copy of any source code to which you may be entitled under the applicable free/open source license(s) (such as the GNU Lesser/General Public License), please contact us at [email protected]. In your requests please include the following reference number 78EE117C99-201368696 Contents 1.1 accessors-smart 1.1 1.1.1 Available under license 1.2 animal-sniffer-annotations 1.14 1.3 annotations 2.0.1 1.3.1 Available under license 1.4 ANTLR 4 Runtime 4.5.3 1.4.1 Available under license 1.5 antlr4-runtime 4.5.1-1 1.6 Apache Commons Codec 1.9 1.6.1 Available under license 1.7 Apache Commons Collections 3.2.1. 1.7.1 Available under license 1.8 Apache Commons Compress 1.9 1.8.1 Available under license 1.9 Apache HttpClient 4.3.1 1.9.1 Available under license 1.10 Apache Shiro :: Core 1.2.2 1.10.1 Available under license 1.11 Apache Velocity 1.7 1.11.1 Available under license 1.12 Apache XML Security for Java 1.5.7 1.12.1 Available under license 1.13 apollo-cache-inmemory 1.2.5 1.14 apollo-client 2.5.1 1.14.1 Available under license 1.15 apollo-link-http 1.5.4 Open Source Used In DNA Assurance 1.3.1.0 2 1.16 apollo-link-retry 2.2.3 1.16.1 Available under license 1.17 append-react-dom 1.0.1 1.18 ASM Core 5.0.3 1.19 ASM Core 5.0.4 1.19.1 Available under license 1.20 asm-analysis 5.0.3 1.20.1 Available under license 1.21 asm-commons 5.0.3 1.21.1 Available under license 1.22 asm-tree 5.0.3 1.22.1 Available under license 1.23 asm-util 5.0.3 1.24 atlassian-gostatsd 5.1.1-patched 1.24.1 Available under license 1.25 Axiom API 1.2.5 1.25.1 Available under license 1.26 babel-standalone 6.19.0 1.26.1 Available under license 1.27 backoff 1.1.0 :master 1.27.1 Available under license 1.28 bcpkix-jdk15on 1.55 1.28.1 Available under license 1.29 bcprov-jdk15on 1.55 1.29.1 Available under license 1.30 beam 0.6.0 1.30.1 Available under license 1.31 bootstrap-select 1.12.3 1.31.1 Available under license 1.32 bootstrap.js 3.3.7 1.32.1 Available under license 1.33 Bouncy Castle PKIX, CMS, EAC, TSP, PKCS, OCSP, CMP, and CRMF APIs 1.52 1.33.1 Available under license 1.34 Bouncy Castle Provider 1.51 1.35 Bouncy Castle Provider 1.52 1.35.1 Available under license 1.36 cassandra-driver-core 3.2.0 1.36.1 Available under license Open Source Used In DNA Assurance 1.3.1.0 3 1.37 cassandra-driver-core 3.0.2 1.37.1 Available under license 1.38 checker-compat-qual 2.0.0 1.39 ClassMate 0.8.0 1.39.1 Available under license 1.40 classnames 2.2.5 1.40.1 Available under license 1.41 cli 1.20.0 1.41.1 Available under license 1.42 cloudflare-cfssl 3219cbd8b7a17f9d9a6e8a4eb425f9371cdac402 1.42.1 Available under license 1.43 Codec 1.2 1.43.1 Notifications 1.43.2 Available under license 1.44 com.cisco.xmp.osgi.commons.logging 1.0.4 1.44.1 Available under license 1.45 Commons BeanUtils 1.8.3 1.45.1 Available under license 1.46 Commons Collections 3.2.1 1.46.1 Available under license 1.47 commons compress 1.9 1.47.1 Available under license 1.48 Commons Lang 2.6 1.48.1 Available under license 1.49 Commons Lang 3.0 1.49.1 Available under license 1.50 Commons Logging 1.1.3 1.50.1 Available under license 1.51 Commons Validator 1.4.0 1.51.1 Available under license 1.52 commons-beanutils 1.8.3 1.52.1 Available under license 1.53 commons-codec 1.6 1.53.1 Available under license 1.54 commons-collections4 4.1 1.54.1 Available under license 1.55 commons-csv 1.1 1.55.1 Available under license 1.56 commons-digester 1.6.0 Open Source Used In DNA Assurance 1.3.1.0 4 1.56.1 Available under license 1.57 commons-io 2.5 1.57.1 Available under license 1.58 commons-jexl3 3.1 1.58.1 Available under license 1.59 commons-lang 2.6 1.59.1 Available under license 1.60 commons-lang3 3.4 1.60.1 Available under license 1.61 commons-net 3.6 1.61.1 Available under license 1.62 commons-pool2 2.4.2 1.62.1 Available under license 1.63 commons-validator 1.6 1.63.1 Available under license 1.64 commons-validator 1.4.0 1.64.1 Available under license 1.65 core-decorators 0.20.0 1.65.1 Available under license 1.66 cssmin 0.2.0 :6 1.66.1 Available under license 1.67 d3-array 1.2.0 1.67.1 Available under license 1.68 d3-axis 1.0.8 1.68.1 Available under license 1.69 d3-brush 1.0.4 1.69.1 Available under license 1.70 d3-collection 1.0.4 1.70.1 Available under license 1.71 d3-color 1.0.3 1.71.1 Available under license 1.72 d3-contour 1.3.2 1.72.1 Available under license 1.73 d3-force 1.1.0 1.73.1 Available under license 1.74 d3-format 1.2.0 1.74.1 Available under license 1.75 d3-hierarchy 1.1.5 1.75.1 Available under license Open Source Used In DNA Assurance 1.3.1.0 5 1.76 d3-legend 1.0.0 1.77 d3-polygon 1.0.5 1.77.1 Available under license 1.78 d3-sankey 0.7.1 1.78.1 Available under license 1.79 d3-scale 1.0.6 1.79.1 Available under license 1.80 D3-scale-chromatic.js 1.1.0 1.80.1 Available under license 1.81 d3-selection 1.1.0 1.81.1 Available under license 1.82 d3-shape 1.2.0 :org.checkerframework 1.82.1 Available under license 1.83 d3-svg-annotation 2.1.0 1.83.1 Available under license 1.84 d3-voronoi 1.1.4 1.84.1 Available under license 1.85 d3-zoom 1.7.3 1.85.1 Available under license 1.86 datadog-go 1.1.0 1.86.1 Available under license 1.87 DataStax Java Driver for Apache Cassandra - Core 2.1.0 1.88 del 2.2.2 1.88.1 Available under license 1.89 Digester 1.8 1.89.1 Available under license 1.90 easyjson da37f6c1e4819c2ed4be6542856f9c0f0560348d 1.90.1 Available under license 1.91 EasyMock 3.2 1.91.1 Available under license 1.92 Elasticsearch Transport 6.3.1 1.92.1 Available under license 1.93 eslint 4.19.1 1.93.1 Available under license 1.94 eslint 4.18.2 1.94.1 Available under license 1.95 eslint-plugin-react 7.11.1 1.95.1 Available under license 1.96 eslint-plugin-react 7.7.0 Open Source Used In DNA Assurance 1.3.1.0 6 1.96.1 Available under license 1.97 gcsio 1.4.5 1.97.1 Available under license 1.98 go-reuseport gx/v0.1.9 1.98.1 Available under license 1.99 go.uuid 1.2.0 1.99.1 Available under license 1.100 goavro 2.9.0 1.100.1 Available under license 1.101 gobrake 3.7.4 1.101.1 Available under license 1.102 gogen-avro.v5 5.2.3 1.102.1 Available under license 1.103 golang-lru 0fb14efe8 1.104 google-api-client-jackson2 1.20.0 1.104.1 Available under license 1.105 google-api-client-java6 1.20.0 1.105.1 Available under license 1.106 google-api-services-bigquery v2-rev295-1.22.0 1.106.1 Available under license 1.107 google-api-services-pubsub v1-rev10-1.22.0 1.107.1 Available under license 1.108 google-auth-library-oauth2-http 0.4.0 1.108.1 Available under license 1.109 google-http-client 1.22.0 1.109.1 Available under license 1.110 google-http-client-jackson 1.22.0 1.110.1 Available under license 1.111 google-http-client-jackson2 1.22.0 1.112 google-http-client-protobuf 1.22.0 1.112.1 Available under license 1.113 google-oauth-client 1.22.0 1.114 google-oauth-client-java6 1.22.0 1.114.1 Available under license 1.115 gopkg.in/yaml.v2 v2.2.2 1.115.1 Available under license 1.116 graphql 0.13.2 1.116.1 Available under license 1.117 graphql-request 1.8.2 Open Source Used In DNA Assurance 1.3.1.0 7 1.117.1 Available under license 1.118 graphql-tag 2.9.2 1.118.1 Available under license 1.119 gridster 0.5.6 1.119.1 Available under license 1.120 grpc-all 0.12.0 1.120.1 Available under license 1.121 grpc-okhttp 0.12.0 1.122 grpc-protobuf-nano 0.12.0 1.123 gson 2.7 1.123.1 Available under license 1.124 Guava 19.0 1.124.1 Available under license 1.125 guava 25.0 1.126 Guava: Google Core Libraries for Java 15.0 1.126.1 Available under license 1.127 gulp 3.9.1 1.127.1 Available under license 1.128 gulp-git 1.14.0 1.128.1 Available under license 1.129 gulp-less 3.3.2 1.130 gulp-shell 0.5.2 1.130.1 Available under license 1.131 gulp-shell 0.6.3 1.131.1 Available under license 1.132 hamcrest-all 1.3 1.132.1 Available under license 1.133 handlebars 4.0.6 1.134 handlebars.js 4.0.5 1.135 hashicorp/go-version 1.0.0 1.135.1 Available under license 1.136 hibernate-validator 5.0.0.Final 1.137 history 4.7.2 1.137.1 Available under license 1.138 httpclient 4.5.3 1.138.1 Available under license 1.139 HttpClient 3.0.1 1.139.1 Available under license 1.140 HttpCore 4.3 Open Source Used In DNA Assurance 1.3.1.0 8 1.140.1 Available under license 1.141 httpmime 4.3.6 1.141.1 Available under license 1.142 immutability-helper 2.5.0 1.142.1 Available under license 1.143 immutable 3.8.2 1.143.1 Available under license 1.144 isomorphic-fetch 2.2.1 1.144.1 Available under license 1.145 istanbul-instrumenter-loader 3.0.1 1.145.1 Available under license 1.146 Jackson-annotations 2.6.0 1.146.1 Available under license 1.147 jackson-annotations 2.8.0 1.147.1 Available under license 1.148 jackson-annotations 2.6.3 1.148.1 Available under license 1.149 jackson-annotations 2.7.0 1.149.1 Available under license 1.150 jackson-core 2.8.4 1.150.1 Available under license 1.151 jackson-core 2.7.9 1.151.1 Available under license 1.152 jackson-core 2.7.4 1.152.1 Available under license 1.153 jackson-core 2.6.3 1.153.1 Available under license 1.154 jackson-databind 2.6.3 1.154.1 Available under license 1.155 jackson-databind 2.7.4
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