# Architecture

Source: [https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html](https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html)

The TensorFlow Lite framework runs models on devices with low-power requirements,
        such as mobile, embedded, and edge platforms by optimizing them for latency, model size, and
        power consumption.

The framework runs models with the help of delegates. Delegates are software layers that
            use libraries written to execute a neural network model efficiently on a specific
            hardware.

Figure : TensorFlow Lite Runtime architecture
            
            <?xml version="1.0" encoding="UTF-8" standalone="no"?>
<!DOCTYPE svg PUBLIC "-//W3C//DTD SVG 1.1//EN" "http://www.w3.org/Graphics/SVG/1.1/DTD/svg11.dtd">
<!-- Generated by Microsoft Visio, SVG Export qualcomm-tensorflow-lite-sdk-architecture.svg Page-1 -->
<svg xmlns="http://www.w3.org/2000/svg" xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:ev="http://www.w3.org/2001/xml-events" xmlns:v="http://schemas.microsoft.com/visio/2003/SVGExtensions/" width="8.88542in" height="4.63542in" viewbox="0 0 639.75 333.75" xml:space="preserve" color-interpolation-filters="sRGB" class="st10"><v:documentproperties v:langid="1033" v:viewmarkup="false">	<v:userdefs>		<v:ud v:nameu="msvNoAutoConnect" v:val="VT0(1):26"></v:ud>	</v:userdefs></v:documentproperties>
<style>.svg-1 .st1 { fill: #f7f8fa; stroke: none; stroke-linecap: round; stroke-linejoin: round; stroke-width: 1 }
.svg-1 .st2 { fill: none; stroke: #3253dc; stroke-width: 1 }
.svg-1 .st3 { fill: none; stroke: #3253dc; stroke-linecap: round; stroke-linejoin: round; stroke-width: 1 }
.svg-1 .st4 { fill: #000000; font-family: Arial; font-size: 1.00001em }
.svg-1 .st5 { font-size: 1em }
.svg-1 .st6 { marker-end: url("#mrkr5-38"); stroke: #000000; stroke-linecap: round; stroke-linejoin: round; stroke-width: 1 }
.svg-1 .st7 { fill: #000000; fill-opacity: 1; stroke: #000000; stroke-opacity: 1; stroke-width: 0.28409090909091 }
.svg-1 .st8 { marker-end: url("#mrkr5-64"); stroke: #000000; stroke-linecap: round; stroke-linejoin: round; stroke-width: 1 }
.svg-1 .st9 { fill: none; stroke: none; stroke-linecap: round; stroke-linejoin: round; stroke-width: 0.75 }
.svg-1 .st10 { fill: none; fill-rule: evenodd; font-size: 12px; overflow: visible; stroke-linecap: square; stroke-miterlimit: 3 }</style>
<defs id="Markers">	<g id="lend5">		<path d="M 2 1 L 0 0 L 1.98117 -0.993387 C 1.67173 -0.364515 1.67301 0.372641 1.98465 1.00043 " style="stroke:none"></path>	</g>	<marker id="mrkr5-38" class="st7" v:arrowtype="5" v:arrowsize="2" v:setback="6.16" refx="-6.16" orient="auto" markerunits="strokeWidth" overflow="visible">		<use xlink:href="#lend5" transform="scale(-3.52,-3.52) "></use>	</marker>	<marker id="mrkr5-64" class="st7" v:arrowtype="5" v:arrowsize="2" v:setback="0" refx="-0" orient="auto" markerunits="strokeWidth" overflow="visible">		<use xlink:href="#lend5" transform="scale(-3.52,-3.52) "></use>	</marker></defs><g v:mid="0" v:index="1" v:groupcontext="foregroundPage">	<title>Page-1</title>	<v:pageproperties v:drawingscale="1" v:pagescale="1" v:drawingunits="19" v:shadowoffsetx="9" v:shadowoffsety="-9"></v:pageproperties>	<g id="shape19-1" v:mid="19" v:groupcontext="shape" transform="translate(18.375,-18.375)">		<title></title>		<rect x="0" y="36.75" width="603" height="297" class="st1"></rect>	</g>	<g id="shape1-3" v:mid="1" v:groupcontext="shape" transform="translate(140,-87.478)">		<title></title>		<rect x="0" y="171.75" width="360" height="162" class="st2"></rect>	</g>	<g id="shape2-5" v:mid="2" v:groupcontext="shape" transform="translate(203,-195.478)">		<title></title>		<desc>TensorFlow Lite Runtime</desc>		<v:textblock v:margins="rect(4,4,4,4)"></v:textblock>		<v:textrect cx="117" cy="315.75" width="234" height="36"></v:textrect>		<rect x="0" y="297.75" width="234" height="36" class="st3"></rect>		<text x="50.31" y="319.35" class="st4" v:langid="1033"><v:paragraph v:horizalign="1"></v:paragraph><v:tablist></v:tablist>TensorFlow Lite Runtime</text>		</g>	<g id="shape3-8" v:mid="3" v:groupcontext="shape" transform="translate(243.5,-278.728)">		<title></title>		<desc>TensorFlow Lite model</desc>		<v:textblock v:margins="rect(4,4,4,4)"></v:textblock>		<v:textrect cx="76.5" cy="318" width="153.01" height="31.5"></v:textrect>		<rect x="0" y="302.25" width="153" height="31.5" class="st3"></rect>		<text x="15.81" y="321.6" class="st4" v:langid="1033"><v:paragraph v:horizalign="1"></v:paragraph><v:tablist></v:tablist>TensorFlow Lite model</text>		</g>	<g id="shape4-11" v:mid="4" v:groupcontext="shape" transform="translate(23,-195.478)">		<title></title>		<desc>Input data</desc>		<v:textblock v:margins="rect(4,4,4,4)"></v:textblock>		<v:textrect cx="40.5" cy="315.75" width="81" height="36"></v:textrect>		<rect x="0" y="297.75" width="81" height="36" class="st3"></rect>		<text x="13.81" y="319.35" class="st4" v:langid="1033"><v:paragraph v:horizalign="1"></v:paragraph><v:tablist></v:tablist>Input data</text>		</g>	<g id="shape5-14" v:mid="5" v:groupcontext="shape" transform="translate(536,-195.478)">		<title></title>		<desc>Output result</desc>		<v:textblock v:margins="rect(4,4,4,4)"></v:textblock>		<v:textrect cx="40.5" cy="315.75" width="81" height="36"></v:textrect>		<rect x="0" y="297.75" width="81" height="36" class="st3"></rect>		<text x="6.15" y="319.35" class="st4" v:langid="1033"><v:paragraph v:horizalign="1"></v:paragraph><v:tablist></v:tablist>Output result</text>		</g>	<g id="shape6-17" v:mid="6" v:groupcontext="shape" transform="translate(156.875,-96.478)">		<title></title>		<desc>Delegates</desc>		<v:textblock v:margins="rect(4,4,4,4)" v:verticalalign="0"></v:textblock>		<v:textrect cx="163.125" cy="296.625" width="326.26" height="74.25"></v:textrect>		<rect x="0" y="259.5" width="326.25" height="74.25" class="st3"></rect>		<text x="136.11" y="274.3" class="st4" v:langid="1033"><v:paragraph v:horizalign="1"></v:paragraph><v:tablist></v:tablist>Delegates</text>		</g>	<g id="shape7-20" v:mid="7" v:groupcontext="shape" transform="translate(167,-100.875)">		<title></title>		<desc>XNNPACK delegate for CPU</desc>		<v:textblock v:margins="rect(4,4,4,4)"></v:textblock>		<v:textrect cx="40.5" cy="309.562" width="81" height="48.375"></v:textrect>		<rect x="0" y="285.375" width="81" height="48.375" class="st3"></rect>		<text x="11.49" y="298.76" class="st4" v:langid="1033"><v:paragraph v:horizalign="1"></v:paragraph><v:tablist></v:tablist>XNNPACK <tspan x="8.81" dy="1.2em" class="st5">delegate for </tspan><tspan x="27.83" dy="1.2em" class="st5">CPU</tspan></text>		</g>	<g id="shape8-25" v:mid="8" v:groupcontext="shape" transform="translate(279.375,-100.875)">		<title></title>		<desc>GPU delegate</desc>		<v:textblock v:margins="rect(4,4,4,4)"></v:textblock>		<v:textrect cx="40.5" cy="309.562" width="81" height="48.375"></v:textrect>		<rect x="0" y="285.375" width="81" height="48.375" class="st3"></rect>		<text x="27.5" y="305.96" class="st4" v:langid="1033"><v:paragraph v:horizalign="1"></v:paragraph><v:tablist></v:tablist>GPU <tspan x="17.48" dy="1.2em" class="st5">delegate</tspan></text>		</g>	<g id="shape9-29" v:mid="9" v:groupcontext="shape" transform="translate(392,-100.875)">		<title></title>		<desc>QNN delegate</desc>		<v:textblock v:margins="rect(4,4,4,4)"></v:textblock>		<v:textrect cx="40.5" cy="309.562" width="81" height="48.375"></v:textrect>		<rect x="0" y="285.375" width="81" height="48.375" class="st3"></rect>		<text x="27.17" y="305.96" class="st4" v:langid="1033"><v:paragraph v:horizalign="1"></v:paragraph><v:tablist></v:tablist>QNN <tspan x="17.48" dy="1.2em" class="st5">delegate</tspan></text>		</g>	<g id="shape12-33" v:mid="12" v:groupcontext="shape" transform="translate(649.25,55.022) rotate(90)">		<title></title>		<path d="M0 333.75 L41.09 333.75" class="st6"></path>	</g>	<g id="shape13-39" v:mid="13" v:groupcontext="shape" transform="translate(550.25,138.272) rotate(90)">		<title></title>		<path d="M0 333.75 L18.59 333.75" class="st6"></path>	</g>	<g id="shape14-44" v:mid="14" v:groupcontext="shape" transform="translate(649.25,138.272) rotate(90)">		<title></title>		<path d="M0 333.75 L18.59 333.75" class="st6"></path>	</g>	<g id="shape15-49" v:mid="15" v:groupcontext="shape" transform="translate(757.25,138.272) rotate(90)">		<title></title>		<path d="M0 333.75 L18.59 333.75" class="st6"></path>	</g>	<g id="shape16-54" v:mid="16" v:groupcontext="shape" transform="translate(104,-213.478)">		<title></title>		<path d="M0 333.75 L29.84 333.75" class="st6"></path>	</g>	<g id="shape17-59" v:mid="17" v:groupcontext="shape" transform="translate(500,-211.228)">		<title></title>		<path d="M0 333.75 L31.5 333.75 L36 333.75" class="st8"></path>	</g>	<g id="shape20-65" v:mid="20" v:groupcontext="shape" transform="translate(171,-23.3126)">		<title></title>		<rect v:rectcontext="foreign" x="0" y="273.813" width="289.11" height="59.9374" class="st9"></rect>		<image x="0" y="273.813" width="289.11" height="59.9374" preserveaspectratio="none" xlink:href="data:image/png;base64,					iVBORw0KGgoAAAANSUhEUgAAAUgAAABECAIAAABswzurAAAAAXNSR0IArs4c6QAAAARnQU1BAACxjwv8YQUAAAAJcEhZcwAADsMAAA7D					AcdvqGQAABJYSURBVHhe7Z3vixbXFcf3b8mrQsAXhYDQF0LAkheBgMUgNCUSMI3SIASJpAgSTCIBaQiCEBKKjUUSgnSxUcIWq7SiRQyt					KJUEXX//zmrWdf2RV/08+12/e3pmnmfXJ33qzPVZvgz33DPPzLnne8+de8/Mzozcu/+D8fd/3t708bUX3jj/zK/Gf/KLU43Cs6+dffPD					K6cv3I0Gl40hHc1B67iYDezrN+9jNzu9tOHCBztvfD52q2nAKmzDQtpg60vFkI7moKVcdAIb01dvvsRQtPfg5L++uUMzGAMe48jEqavA					JAz7yz8mKdMMN6A8mI6P/zTRZC64RNBbEAumo72h0QlsIp4q7BZPzDcaODJhEg2gbWOHOw0o+EIhOkYP3Go+F0xQ6foF0yEu2hgaI4y7					CKjFEKFPIbatUcBojBzdf4tmFLnAEx1/+PJmW7jAYMK7SDpaHRojhDvjEArFfZNNFzCSNrDF0UlVAERHu7hQoTw6Wh0aIywhsFu1KjQc					jKCMTJ+MTrBNqgIgOtrFBYUi6Wh1aIxg9N6Dk9QiqCD8+W/ff33yjsUN266+8bu5dRRLjn1HbltM2pPj05zjzvSsePHaPcSJ7x9I/GjX					dz975Yw9Rf2OPTfPXr5Xq+Ugu/bdOn5qWiLg1FrdldeTgOhIXDCzwgn2Z9WBuBcn12r51c6vbsKIRABx+NBi4g7tgaNdmeWHnCuKcEGh					SDpqQ0MdMvoTF238aG62cujYFLCYtEdOTBFZFr89V8Ps1s9mubty4/723ROeKSTt5NQDmI0roBgaIypR6wLg9Ig//eVpH5Rdn36xQyHg					fKjYwZEfteC518+h5awSl6/v5OLdPIzTwSVSj/jyxou1WmIeccmqMxKBrHeXKgw0Cha0deWydeep2fbFdxKTi9ZuuYy46p1LtVp6BuLS					NWclErdRCyJ39Fe0iO64idnFKzsJYfqiRLNQJB20qBoao/u/R4wdEhcBlbkC4S7gcTZqCWA8z889dIosIjaKZgdOEd/aerVWS39AXPHb					uVsSMTTqA1v2YRCjgmoYtn/z/mWVFdiA8aaqBYpkXCDxlbcvIjrOGXL47Xu/vy6RVqH1ZSFp1REZKSSCaL0riwGNggVtXSmCuzmQawJa					trVarg9otVYEVX9G7uiOkL5oxWlfBxKzz6/tDNnul2ahSDpoUTU0ah3o3qvAIQJ9RYxaoolZQDyaLoFjh2enA4k7XfO27Ji9RCetrnkE					l0QQQ6M+sAFjtkedKohtkCoNWsXRLdIez7SrYBjjyu/ZSBUcKuYtovWuLAZiIXHBZDv6MwHXEYcLdyBceFlUBYeKs7sEjlNdFsVCSTAL					iY7kzwSiprc2OhAieoQGgROXwwkKHF96gVjQtmtgNxbR+qQqAGKhXVzEQkkwC+2iQ9thYDcLYqFdXMRCSTAL7aJD2/rAZsLAYmD15kue					4MXsKFd/luwsJDyLiFqJS1ad4QQSWUWz8HBeUck9p21ZirNy2L57olZ75MTU4pXjXkCCaL0ri4FYiFyA97dfxwm4QmJykVbRvR3IESR+					e+4u2phxidwxh2TVt3z9Bc/VE7Nrt1yGWc/VzUKRdJiFSAcTaRwYOyRlJ4bx2/Nrz+HD6MCYFWdJjNaBg4rOn5hlLW0RbQocaw8cvQ2z					FkEMjfrAVoYAeCH9TMiOwqu03j9qAadHix0SlTDoltyjHpHOVKtVhsAiiNa7shjQKLyqrSuXruk40MGZXKR/AOh2WwHiEZ2Y/Xys82QS					kAgid8qKg9r7HYzyi1Z0krqQohqzUCQdtKgaGtUOiYvsXnEHPPZFLdGOM9H6toJ27na/A04RGUxrtfQHRMYRiSCGRn1gQ+Gmj6/FwYBh					O2ZHMYXj+nqetFxDqHHujSGH6LXIYTHOyT2uIezsRGvS4os3P7zihDCI1ruyGIiFyAVgnMVF7ivJRYeOTeEi36BKWoZmtO5J+JOrRPRn					4o6fQ303ZjkOVHq4NwtF0mEWIh3VDomLgMr4jbhwoCYtYFzAgc6ucRzo8OU9ccfwSlTj21otl320zqiDGBrDNXazIBbaxUUslASz0C46					tB0GdrMgFtrFRSyUBLPQLjq0bWJgMwOJN8mTGK13ZTEQC83hIt13TaJZKJIOs9AcOlh2ed5eFWNodA3s1ZsvOR9TFQeH9KRUEkG03pXF					QCxo68oN264uXjnuJEoSBwpOFI1Jolkokg63NDYZEAsx75DEweGjmWc0OV2tCGJoNC6wlbb1s7hJBNF6VxYDsaCtKx9jYON5jGF4rRXN					QpF0mAUXhBTJSRwcPtjZucHhW5VJBDE0mjgV33tw0k+hA7pRFKP1riwGYqE5XJwcn/Z91KpoFoqkwyw0hI47052HPnx3KYkghsYwedYs					iIV2cRELJcEstIsObYeB3SyIhXZxEQslwSy0iw5tuwY2C7l4Yz2Jg0N6guL0hc7jK17UgWi9K4uBWEhc6FlCPyWaxIEiPUHBqRH9H0Vm					oUg6zEKig1jACd3EwYFZ91tbr3ophM9Z3kfDYmh0Dez4LGFVHBy2zjwCCaK4eOXsQ3kgWu/KYkCjYEFbV6ZnCZM4UHAioLemEN4Sn+QX					LYD4lGhVHBz08PWzr82+M0PisnX1N4y6BjbXyZjrS+LgcOTE1NI1Z/3c3PFT07QkjojRelcWA7GQuEjPEiZxcLgz3fmnheXrLzhDQzeA					HecyzUKRdJiFRAdOAN3EwYFrNbHwyejsf/scOHp7yaoz8fHVGBrDNXazIBbaxUUslASz0C46tP2xgf3UU0+NPPx79933auv1Zy2qTz/9					o/cE+/66nx1iTQ9E65OqAIiF/rhYuvTncrX+/n3yG6sGRIdZKJIOs9AHHT28mmjyHzug7cHUvIih0X9g0284a7Qe8dVXf61ytWHeed6e					FB8grYrR+lhfBsTCo3IBovMBHqZGfQX0Tcfk1IP40GISzUKRdJiFPuiYt5MDdmC3WAN6MAUWHhpdA3verDgWpLFEoe6BJ9nHzoxVtarY					Zr0F0u/cTCKI1ruyGIgFbV05b1ackI5RLdjhoD86CGNWcc/MfOOmKgKzUCQdZiHRsZCseO9OLrADu8Ua0IMpvZbU50oiEAvadg1s+OuR					FVcMx8leQn89CXwy2nldrtPgSQTRelcWA7GgrSvnzYrjPY2n3dAfHVyc4Z1z6e5jEoFZKJIOWtQtNEA3UejdyQV2YLdYA3owtWnmo59O					gycRxNDoGthcn3tkxatWJiT74ry9d5u5LOzad8tv8EgiiNa7shiIhcRF76z4vFyAvuk4fqrz7QdYqBXNQpF0mIVEB7EQZ69JFPAqPqz+					xX1wO7vFGtCDKQZWhlS/USOJIIZGn2vshQT2TEPm/mxu7540L6L1SVUAxMKP4UKi/1Q5IDrMQpF0mIVHokNYiFfZgd1iDejB1LyIodFn					YHebirum2jDjx/QkEK1PqgIgFv4nXESvDogOs1AkHWbhkegQFuJVdmC3WAN6MDUvYmj0nzxj3s/sP9YATFdlD/uqP0R0C6/cuM/iwa9A					SyKI1ruyGIiFxMW8yTNcWk2eLTCwe9PBZC++3C6JZqFIOsxCouP/nDwzTl+4y4m8LE0iiKHRZ/IMyNDYJxC1ygc97NMP2UrUBcc7K1vm					bEQSQbTelcVALGjrynmTZyA6H8ir/Ensmw5OBEYffq0piWahSDpoUbfQiB0yicIgAlvZMr90JIkghkafyTOj03ce/sWLRg/7gBrpv7gn					ZtFlVz98L0QSVWPrXVkMxELiYoGPlOL/WYfO/EWv9k0HpNNr/eLrVe9ciqJZKJIOs5DoIBbi7DWJwiACe9+R24tWnCaea0UQQ6PPNfZj					RLQ+qQqAWGgXF7FQEsxCu+jQdhjYzYJYaBcXsVASzEK76NC2BYEdn2EE0fpYXwbEQmO5uDPdgUWzUCQdZqGxdPQIja6BPW9WfEBg/cYC					0q9oO3C0s5CIp47Wu7IYiIXExbxZ8cEBIqADb0tctu48a2x/k8QsFEmHWUh0LCQrPgjsPTj59ItzX5L/fOwW4paHX88GMTS6Bjb89c6K					Dwj0VyyhM0mkEyMOHymlxj6pzYoPCJwI6M0KXB/07a5hVhx0EweHNz+8giX+WBejCWJrXrRw8do9Ytt5VzoTYjQsWu/KYiAWEhcLzIoP					AsQwY6un32OHJzn78JHSOIVM4uBwcnyaWPAzpEQKl2s87x1iaAyTZ82CWGgXF7FQEsxCu+jQdhjYzYJYaBcXsVASzEK76NC2ccmz6zfv					79gz9z8rSQTRelcWA7GQuHiMyTPm3szG41Q8imahSDrMQqLjcSXPmHtv3z3hj+YnEcTQaGjybMnDb/okEUTrXVkMxIK2rnxcybMrN+5D					OufS65+TCMxCkXTQom6hEbNlSRwclDzzDaMkghgajUue6f6Wn4BNIojWu7IYiIXExWNMnuF5gtnGJNEsFEmHWUh0EAtx9prEwUH3t/x4					dRJBDI0mrrGZfsenIJIYrXdlMRALzeEC4P9uolkokg6z0Bw60kvOkhhDY5g8axbEQru4iIWSYBbaRYe2w8BuFsRCu7iIhZJgFtpFh7b1					gT059WDbF9+NHZ77YGrKiu/86qa/SACSdu/ByS07bkw8fJCVwyJ62pCSuifHpzd9fA1rarX86v3t15/wFy3IgZ4DVx2I1o95Vh3IatxH					4yCooj8jdyx54B1ya7WAdR3nepKz4nLgoWOzD1CBmBXHM/jfn0BKWoBv8bAdSKRs/WwuUsQdNRKPnJgiNBKz1lIPs4/2ooXRmZf+sjR3					Mj1mxb89dxct2Hdkdv+oBYtXdt5liR0Sl645i0gLJWIcopO6Su698vbsV/WTdviiBbBk5nPzDHASk4twHeICHbhjz03ERStOe5iI3Mmr					gEJVC6R9kh8p1Ut/cYsfv6Ns9zJiogW+QRu1QFrdViC89Ygux5Q2cffShguI3QKnnxctXLx2j2jkN7aeYdtZcQx6eeNFepvHkqgFb229					isWMRhKxG2sY7CWmpC6NZGf32qTFSvzyhL9ogYskTrA/k4u4PiB6IK86ENEOZFCG2XiPJHLHpeP5teeefe2swz4xS5mjPckvWjh+apoA					8zAKcBFQGb8RNTjQ89OoBelNFVzMEX2BTNwxKBMa23fPTo2Tll8hxulADI3hGrtZEAvt4iIWSoJZaBcd2g4Du1kQC+3iIhZKglloFx3a					dg1sVtde01fBTIPpeqo0mMDHJ92YuvvDq7VgZ6cTquBE0ZJovSuLgVhIXOCc+FBtFb21ONBLKsACqgezTCY9jayC40TezUKRdJiFRAcO					jP5MoDN7IVMFno8O5Dhez9ait5ZzRUtiaNQHNnHI5J6lgn8Ws6P0s8Urx9nB4Rq1gJUYR3OKZe2Wjrhjz2yuNaVtd37VSec4Q5C0LCSe					fvHUc6/P/g8qiNa7shjQKFjQ1pWskKlxrjW5iKUXWicpah3oNeGhY1Pyp0fSyB0dhd+ycuvGLItzfu6csFkokg6z4AKggAeWr59LUuAi					L3RxIN4jOhzbUQuWres8umcHchwO7jW2uHO6ZMuODrNOrSWtAieu9mNo1Ac2J0YEto8lPgapzIhOVMf9oxYoDY4dEpXc8+sUMQ6R9kvU					h/n92b2k5SCIVEoE0XpXFgMahVe1dSW9gRrHaq0DnR5LWoW9/zt/7PAkIvR5yI7cfX2y41XE46fmkrqRWcrs8CQ/K87wiohbJALKFvEb					WtAtK54cyLUT0XeOE3cvb+zc7/C4kLTUI5pZEENjhLPKaBcEzu2BBDBsx+woezrLDZKWQ9N+XxMYxjDdY0RK7jEz4VCenyQtB+FQHFAi					kN0YwNaVxUAsJC64fuJAz5+Ti3AsWpxcq+VXuDcuhRDjwRN3kN6Dd0Z8d0ogLigUSUe30OBS6bQ2wEXA4t6DnX+As5i0yYHE//bdEx5k					E3ewBlndeK8yG0Nj5IU3zmvAYPDwyNFk0BiZGu/gFQPR0S4uKBRJR6tDY4QZsrhxoeFgYo+p2iZVARAL7eIiFkqCWWgXHdqOMJHjws38					QYWG08M6k3mR0gZxdlQMxMKufZ0n/1rBBdM/zf3Ko6PVodH55ggWU3X6wl0xpBkI7WkUNMHAzj98eVPXtNiqkiA6Rvd3kjQN54K5H52+					YDraGxqzHxPi8o2C0Rfo4e2mAfMwkgEJ02kG/UmWFwnRMXrgVpO50LW6eDpaGhpzXwmT0as3X2rgmAQ8LNGGsqNaGNLRHLSRi//6/B8D					MG1gD40EjYLsxsJocNkY0tEctIyL+z/8B7ItkZ9CAU3DAAAAAElFTkSuQmCC"></image>		<rect v:rectcontext="foreign" x="0" y="273.813" width="289.11" height="59.9374" class="st9"></rect>	</g></g>
</svg>

## TensorFlow Lite Runtime

Source: [https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html](https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html)

The TensorFlow Lite on-device inference loads the model into an interpreter, which
        parses the model and uses a delegate to run it.

The TensorFlow Lite on-device inference does the following:

1. The inference loads the TensorFlow Lite model into a TensorFlow Lite interpreter
                interface, which parses the model to identify neural network operators present
                within the model.
2. The interpreter interface is further configured to run the model by using a
                delegate.
3. The interpreter invokes a model inference on the provided inputs and saves the
                corresponding outputs of model inference into the buffers provided to the
                interpreter interface.

Qualcomm supports executing TensorFlow Lite models on the following accelerators using
            delegates:

- CPU
- Adreno GPU
- Hexagon Tensor Processor

The following table lists the delegates and its accelerators:

Table : Supported delegates and accelerators

| Delegate | Acceleration |
| --- | --- |
| XNNPACK delegate | CPU |
| GPU delegate | GPU |
| Qualcomm^®^ AI Engine direct delegate (Qualcomm^®^<br>                            Neural Network (QNN) delegate) | CPU, GPU, and Hexagon Tensor Processor |

## Delegates for TensorFlow Lite

Source: [https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html](https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html)

Delegates help you offload the TensorFlow Lite graph execution to the CPU, GPU, and
        the Hexagon Tensor Processor hardware accelerators.

Currently, the following delegates are supported.

### XNNPACK delegate for CPU 

Source: [https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html](https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html)

The XNNPACK delegate uses the XNNPACK library to accelerate TensorFlow Lite models on
        CPUs efficiently.

XNNPACK is an open-source library from Google, which does the following:

- Provides an optimized implementation of neural network operators to run on Arm
                CPUs
- Uses low-level CPU instructions such as the Arm^®^ Neon™ instruction set to
                optimize operators for efficient execution

The XNNPACK delegate can run models in both 32‑bit floating-point and INT8 formats. For
            more information, see [XNNPACK back-end for TensorFlow Lite](https://github.com/tensorflow/tensorflow/blob/master/tensorflow/lite/delegates/xnnpack/README.md).

### GPU delegate

Source: [https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html](https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html)

The GPU open-source delegate provides acceleration on various vendor-specific GPUs,
        including the Adreno GPU.

TensorFlow Lite can use the GPU delegate to improve the parallel-processing power of
            GPUs, which makes inferencing faster. The GPU delegate uses OpenCL kernels to run neural
            network ops within a TensorFlow Lite model execution graph on the GPU.

The GPU delegate is cross-compiled by default along with the TensorFlow Lite library and
            is optimized to run the following TensorFlow Lite models on the Adreno GPU:

- 16‑bit floating-point
- 32‑bit floating-point

For more information, see [GPU delegates for TensorFlow Lite](https://www.tensorflow.org/lite/performance/gpu).

### QNN delegate

Source: [https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html](https://docs.qualcomm.com/doc/80-70015-54/topic/arch.html)

The QNN delegate is a proprietary delegate for vendor-specific hardware acceleration
        to accelerate TensorFlow Lite models. The QNN delegate is designed based on the [external delegate interface](https://ai.google.dev/edge/litert/performance/implementing_delegate#option_2_leverage_external_delegate) of TensorFlow Lite.

You can use the QNN delegate to offload parts or the entire TensorFlow Lite model to
            specialized Qualcomm hardware, such as the Adreno GPU and the Hexagon Tensor
            Processor.

The QNN delegate improves the performance of model execution and power efficiency by
            decreasing the CPU workload. The QNN delegate also uses the existing Qualcomm AI Engine
            direct APIs and available back ends to accelerate models. For more information, see
                [Qualcomm AI Engine direct](bundle/publicresource/topics/80-63442-50).

The QNN delegate can execute models in 32‑bit floating-point precision and INT8 precision
            on the available hardware.

You can build applications using the following interfaces:

- Qualcomm AI Engine direct delegate interface
- TensorFlow Lite external delegate interface

You can access both the interfaces when using a standalone TensorFlow Lite application.
            However, if you deploy your TensorFlow Lite models using the IM SDK, the qtimltflite
            GStreamer plug-in for Qualcomm TensorFlow Lite Runtime uses the TensorFlow Lite external
            delegate interface. For more information, see [Leverage external delegate](https://www.tensorflow.org/lite/performance/implementing_delegate#option_2_leverage_external_delegate).

The following figure shows the directory structure of QNN delegate libraries from the
            Qualcomm AI Engine direct SDK:

Figure : QNN delegate directory structure
            
            ![](data:image/png;base64,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)

### Qualcomm AI Engine direct delegate interface

The Qualcomm AI Engine direct delegate interface, also known as the QNN delegate,
                provides the `QnnTFLiteDelegate.h` header as an interface. You can
                include this header as part of your application before linking it to the QNN
                delegate library.

You can find a compatible QNN delegate library and QNN libraries placed in the
                    `aarch64-oe-linux-gcc11.2 cross-compiler` toolchain triplet
                directory.

Table : QNN delegate acceleration support

| Back end name | Back end description | Target and library names | Library description |
| --- | --- | --- | --- |
| CPU | Back end for Arm CPU acceleration | <ul class="ul" id="qnn-delegate__ul_syy_45m_tbc"><br>                                    <li class="li"><code class="ph codeph">aarch64-oe-linux-gcc11.2</code><ul class="ul" id="qnn-delegate__ul_tyy_45m_tbc"><br>                                            <li class="li"><code class="ph codeph">libQnnCpu.so</code></li><br><br>                                        </ul><br></li><br><br>                                </ul> | `libQnnCpu.so`: CPU back-end library |
| GPU | Back end for the Adreno GPU hardware accelerator | <ul class="ul" id="qnn-delegate__ul_uyy_45m_tbc"><br>                                    <li class="li"><code class="ph codeph">aarch64-oe-linux-gcc11.2</code><ul class="ul" id="qnn-delegate__ul_vyy_45m_tbc"><br>                                            <li class="li"><code class="ph codeph">libQnnGpu.so</code></li><br><br>                                        </ul><br></li><br><br>                                </ul> | `libQnnGpu.so`: GPU back-end library |
| Hexagon Tensor Processor | Back end for the Hexagon Tensor Processor hardware<br>                                accelerator | <ul class="ul" id="qnn-delegate__ul_wyy_45m_tbc"><br>                                    <li class="li"><code class="ph codeph">aarch64-oe-linux-gcc11.2</code><ul class="ul" id="qnn-delegate__ul_xyy_45m_tbc"><br>                                            <li class="li"><code class="ph codeph">libQnnHtp.so</code></li><br><br>                                            <li class="li"><code class="ph codeph">libQnnHtpPrepare.so</code></li><br><br>                                            <li class="li"><code class="ph codeph">libQnnHtpV68Stub.so</code></li><br><br>                                        </ul><br></li><br><br>                                    <li class="li"><code class="ph codeph">hexagon-v68</code><ul class="ul" id="qnn-delegate__ul_yyy_45m_tbc"><br>                                            <li class="li"><code class="ph codeph">libQnnHtpV68Skel.so</code></li><br><br>                                        </ul><br></li><br><br>                                </ul> | <ul class="ul" id="qnn-delegate__ul_zyy_45m_tbc"><br>                                    <li class="li"><code class="ph codeph">libQnnHtp.so</code>: Library used for<br>                                        communication between the Arm CPU and the Hexagon Tensor<br>                                        Processor.</li><br><br>                                    <li class="li"><code class="ph codeph">libQnnHtpPrepare.so</code>: Hexagon Tensor<br>                                        Processor library running on the CPU side. This library is<br>                                        loaded to prepare the graph and optimize the execution graph<br>                                        at runtime.</li><br><br>                                    <li class="li"><code class="ph codeph">libQnnHtpV68Stub.so</code>: Hexagon Tensor<br>                                        Processor proxy library on the CPU side, communicating with<br>                                        the Skel library loaded on the Hexagon Tensor<br>                                        Processor.</li><br><br>                                    <li class="li"><code class="ph codeph">libQnnHtpV68Skel.so</code>: Hexagon Tensor<br>                                        Processor native library with optimized kernel/operator<br>                                        implementation for the Hexagon Tensor Processor.</li><br><br>                                </ul> |

Note:Select the appropriate libraries based on the Hexagon Tensor
                Processor version of the Qualcomm Linux Development Kit. The versions are as
                    follows:
- QCS6490/QCS5430: Hexagon Tensor Processor v68
- QCS9075: Hexagon Tensor Processor v73

### TensorFlow Lite external delegate interface

In an external delegate interface, the application to run TensorFlow Lite models must
                load the `libQnnTFLiteDelegate.so` QNN delegate library. The C/C++
                application and the `libQnnTFLiteDelegate.so` delegate library have
                no dependency on each other. Therefore, if the delegate changes, you do not have to
                recompile the application.

In addition to the TensorFlow Lite Android C API, integrate the following into the
                C/C++ Android application in the same way as the TensorFlow Lite Android C API:

- The external\_delegate.h header file
- The libexternal\_delegate.so shared library

The QNN delegate offers acceleration on the Hexagon Tensor Processor, GPU, and CPU.
                To customize where and how to run models using the QNN delegate when using the
                external delegate interface, you must provide additional external delegate options.
                For instructions, see [External delegate options for QNN delegate](https://docs.qualcomm.com/doc/80-70015-54/topic/sample-applications.html#external-delegate-options-for-qnn-delegate).

Last Published: Oct 09, 2024

[Previous Topic
Get started](https://docs.qualcomm.com/bundle/publicresource/80-70015-54/topics/getting-started.md) [Next Topic
TensorFlow Lite developer workflow](https://docs.qualcomm.com/bundle/publicresource/80-70015-54/topics/tensorflow-lite-developer-workflow.md)