{"id":521,"date":"2023-02-24T07:19:06","date_gmt":"2023-02-24T07:19:06","guid":{"rendered":"https:\/\/globealley.us\/blogs\/?p=521"},"modified":"2023-09-21T09:20:55","modified_gmt":"2023-09-21T09:20:55","slug":"what-is-ai-and-machine-learning-and-how-can-it","status":"publish","type":"post","link":"https:\/\/proqubix.com\/blogs\/what-is-ai-and-machine-learning-and-how-can-it\/","title":{"rendered":"What is AI and Machine Learning, and how can it help your business?"},"content":{"rendered":"<body><p><\/p>\n<h1>How AI and ML can drive resiliency for banks and customers<\/h1>\n<p><img decoding=\"async\" class=\"wp-post-image\" style=\"display: block;margin-left:auto;margin-right:auto;\" 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\/wFTfcfxjB4CpvuP4xj1D5Gsi9K53l4GGu6aB4Nm\/ao+NB4Nm+xHxo3\/wFTfcfxjB4CpvuP4xh5Gsi9K53l4DXdNA8GzftUfGg8GzftUfGjf8AwFTfcfxjB4CpvuP4xh5Gsi9K53l4DXdNA8GzfYj40Hg2b9qj40b\/AOAqb7j+MYPAVN9x\/GMPI1kXpXO8vAa7poHg2b9qj40Hg2b7EfGjf\/AVN9x\/GMHgKm+4\/jGHkayL0rneXgNd00DwbN+1R8aDwbN+1R8aN\/8AAVN9x\/GMHgKm+4\/jGHkayL0rneXgNd00DwbN9iPjQeDZv2qPjRv\/AICpvuP4xg8BU33H8Yw8jWRelc7y8BrumgeDZr2qPjQeDZvOcJz\/AJ0b\/wCAacf1n8YwtNApePzur5QxHkayJfiud5fCNd0b7wXOe1T8eK+C5w8d1HxhDhigUzH53V8c+uFJt+me4K+UV64q+hvIvSud5fCTquMboUmbz7FHxhFTSJw8gj4whyE29S\/e6uP+UPrhYt2le91fKGKPoeyFfiud5eBGq4NoKPO+1R8YQeBp7sR8YQ5wtyle4K+OqFptule4K+UV64hdD+Q+lc7y+EtqujYeBZ48kp+MIoaLP\/vPjQ6gtulZ\/tCvlFeuFi2qTnjLqP8A3h9cQ+iDIvTud5eBGq6NT4FqHtEH\/tRVNDqJOA2j44h2BbFH597K+UV64Wm2KODnvZXyivXFfJFkXp3O8vAaro03gCpe5t\/Hg8X6kf1tv48O4LXo5497K+UMLTa1G97q+UV64r5I8iX4rneXgNV0aHxfqXubfx4PF6p+5t\/Hh4UWrRDzll\/KK9cL8VaJ1S6x\/wB4r1xXySZEvxXO8vhGq6M34vVP3Nr5SDxeqZ4Btv48POm06H1yq\/lFeuFptOh44yqvlD64h9E2RL8VzvL4RqujLC3Kr7m38oIr4tVT3Nv5QQ9gtGhc+9VfKH1woWjQj\/gq\/lFeuKvonyL0rneXgNV0ZHxZqvubfxxB4sVb2jfxxD4iz6EB+dl\/KK9cLFn0P3sv5RXrinkpyJfjud5fCTqujF+LFW9o38cRXxXq3tG\/lBD7ps2g9cqr5RXrhQs2gE\/nRfyivXFfJXkXp3O8vhGq6MN4rVc8kNfdcEKFq1g\/rbPyoh+xZdvZH9iL+VV64ULLt\/PCUX8qr1w8leQ+lc7y+ETcGD8U6z7Rn5UQeKVZ9o18oIkALKt7P51c+VV64WmyLe65RfyqvXEeS3IV+KvvLwI1XSPotKse0Z+UEAtGsE43GflBEhfEi3vernyyvXC02Pbx\/wAFc+WV64zfRdkK\/FX3l4DVdI8eKFZ9za+UEHihWfc2vlBEixY1u+9HD\/3yvXFfEW3vea\/lleuI8l+Q+lX7V4DVdGwgggj7wSEEEEAEEEEAEEEEAEEe6lUOr1yYErR6e9NOk8m08E\/5x5JHnJEb3Tdn\/UGooSot06VJ5pdmskfDugj+OPxsw4hynKqvo8biaKKvNVUk\/ZzG\/UNtBDsTWzBq20yX5CmyFS3RvbkrOoCiPMHN3J83OG4rluXBbE4ZC46JPUyZBx0U3LqZJ843gN4eccItl2f5Xmz04LEUVv1VJv2STDMdBBFRzj9cgqkfxxcAhKRC0xSpkoqBFxIhKRyi6ASYqyRSRCwOuKJAhcZNsQABzF1IMJRFxI5RQkUkQsDjFE84uACM2yCo7IWBwhIEXEgRSoCgMDELSOMJHOLqQIzbAoAAQpIyYoIWkCKMCkjzwtIhIHExdSBGTAoDshaRCQCYuARRsFQMxcSISB2RcSOWYo2BSRC0iKJAhaQIo+QKgHMXUpGISgAnjFxIEZgqlPEcYuhPDnCUiLgHVGbYAcYuJEUSkdkLSBFGBSR\/FFzd88JSBC4gDGQQQR3UqEEEEAEEEEAEZCiUpdXnky\/FLKRvPLHNKfNnrPKMf58ZjbactFAoPfKyOnmhv8erPsR\/v+7HSuPeJHwzk9d+0\/8Ai1vTT6m+v9lL\/UmDdqRWpeihqlUhpLW5hJA47vw55q854w6FrOzE2lK3HlLKj1mI\/wBoFUxOha1lRUrJJ5kxI2yZQ9C35MeN8Teu4i47t6p1VPdt7tmtLlSOlbDbjQSpK1DzgxvUxbduXrTFUC86JJ1WRmE7im5hoHBPWDzSexSSCI1i2pbIQkp4kw7VBt\/vdxk1RC2W3kjccTggE8sxSzeuYetXLNTpqXJptNewsQX2g9jS5tPZlFxabyk9XrcmThTKU78xT1njurOcrbI5LxkYwe0sDPWjc1Lk3qjUqHNy0tLuKZddcRupQ4kAqST2gKSSOrI7RHYu7GpmgWNcDqcLVLUmael14BClJaUoc+wjMc5608\/cTLDk61IOS8xMoaTJpKw22mZmm1PK4gIAVhAV5W\/htICSBH1jLemrN8HZpwl63RcrpX3qtUteuGk\/1OL9PZWIWHb+1p1ftMf3Get3TS\/7u3fFu0KlUt9ovpDLOcoBIKuPVkEfci0uxLvaZdmHLbnktS7nROqLXBC84wT1ceEPFf8AULuvdm2mrVrLunjNMkc7tOBcU\/JuPOBpTo4FOWkIc3BkgOY54EeymS6btpdJknJqmyM4674CrVR33WHgjpUrbM20kqbdTu7xQ+gb2cAxz304Zp2a373ib6BmEaeXr3o\/PeLFQ73ld3pnC2N1G8neTnj1ggxi5KnTlQcmW6ZLqnjJAGa70w+JfIyA4UZCDjqVgxLavSsxc0veNm0S6qPMylTnkzrs9INqcDQWlSQ00MhW4lCUpHAnHOMNIWVeVuMyVOoV+eCl2+JB2lpbkgmTU1MSyypZa9gpeULbWVgnPHKQQYjy3Zo1\/wAtb97xCo23\/wA2GSs3RfVbUGkrrtj2BV65T231SypmSZ6RCXUgFSCQeYCknHnEZ4bLu0Qeejtzehf1x0p2S3qm\/prOTFbZpiKg5WHTMKp9NTIoWvoWfKW2hxxHSYwCpCyk4BBh7fvxm+mzNn+Wt+98Q0I42J2Xtocf4nbm9D\/ri4NmHaHHPR65vQ\/647HFWDiKZycYMV8tebdnt+\/8ROlHHVOzDtCD\/E\/c3of9cLGzHtB\/tQXL6H\/XHYg8IP8A95RD6ac2f5e373xEaEceBsybQef7kFzehf1xcTsybQQ\/xQXN6F\/XHYLe4cP5IqMnmYr5Z817Pb974idKOQA2ZtoAc9Ibl9C\/rhY2aNoD9qK5vQ\/646+E44c4N7MR5Zs1f5e373xDSjkKNmnX8f4orm9DMLGzVr6eekdzehmOvGeGQYASYq+mTNH+Xt+98Q0o5FJ2a9fP2ork9EMLGzZr3+1HcfohjriTz4E4im9xxjjEeWPNOz2\/e+IaUckk7N2vQ\/xSXIP\/AAhi4Nm7Xn9qa5PRI60580GU5AIiH0w5o\/y9v3viGlHJgbN+vHXpLcXohi4NnHXb9qa4vRDHWMFJGd37kGU8t2K+V\/M3\/wBi373xDSjk+NnLXXH9yi4vRDChs6a6D\/FRcXohjq+OXsYMdoiPK9mf\/gt+98Q0o5SJ2dtdAOGlVwj\/AMIYqrZ51ybQpxeltwJSkFRJlDwAjq0MHqjx1olFHnlDgRLOkfFMR5XcynfD2\/e+IaUcc08QFdShkHthaRDX7PNyVu6LEfnq9UHJyYZqDkuhxYGQ2G2yBwHHio+eHSSOUfa8tzC3mmDt4y0mqa0mp57lIgUB1QtI5QkDjFwDqjmMCgMdULwOyKBOeuF7vnikgYiCCCO8FAggggAggggC9JSrs9NsSbIyt9xLaeGeJOI2C5JKZU290imltyzSNxTKwtHHHDI4ZAOD5wY9OllGVW7n73ZdS28Jdbcs6sFSEzLpDDJICVcOldRngeGeBjKarT8sut1SXpaGW2pqeebZQwlIbS0lZwEAcAnAAAHVHnHpozP6bHWMBS9qFqf61cvYl\/qZfSRc+j9Unj05YcfqDaeoqiVtnU5Lcu3nniIpUi5KLpnISVfuHpFJmSoMtMo3lKKeYPUOY5w9lpa50Wbp9NqTsjMSDFVbW7JreAw8lCglZSQSMgkAjziPhtympuTk01KlaXzJU2CxLOzS5V5tKito7uRyMOfabqJ+Udo05xWwd1O92cgfuQxukV2024ajLTdOeDyUb6XAk5IIQTj+SHot+RqUhVkzs20WQ4SpW+cZB6sRl1waGy3HiZ00uWRm0slcnTZoHpj5BT0S\/Zfve3zRzer1HlZe0ZueYs+rtstvAtTbsqBLpT043crCME4xkBcdJ67Oplrdrs2joCPA8ytYeaLreUoON9CQSpPaACSOoxzRvWqVydp9VIkqBNVB6YJ6dFNStxxwv54OApVu8sDgcBXAbuTVxMhUa6pSl+Jrj9ftSynKlNXolxmVLUvMsPvS6nejYfK3Wkq3M5CULS3vZGdwKzglJbawLV1WuS76hfEhL1F\/T3xgbps7UFTjK2mmFvhTaWm1ub54KSAW0kDODgA4c7Ry5ZGsTrxuxduTkvRaRT6IuQq9Lm5rvllCHgjfQwlat9KTjJwDgHJjb7Nfe1Bteou1dcrbzdjzrVPt+ny8qppmdl1TjaelCCQchJPshkARaitN7eBaaqU6qfb\/AJ\/iLk\/b2z+L4uaZnqzUrOp8otpNPt+huopgnnmgtt114IWgKV0yFpJ4nyYx8tVpt9dO8EzrUu9zl5msMuTcuGUsqKembSoqWEELGQSCFNkEKSoRu9r6Wi8axXpmrXWuTdS4iYQlmVYWqYbeLrjjvRuhWfzUuJyE4zDZXu1WrLtZyuUJbc9MSCt5thyXUnpBxQtbgGN4pbJA4kJAITugqBpcu00J1V1TH6GljD1XFSqmqVymrqS63tso3OhOxwK4NL59q4k0Pv1quzCHDRpV2WliQywDht3yknOQc9kNb3TfWvVHRTTOzatpXd8zbs9VLiMpNTEu00tbjIlHl7n5olQA3gk8BnyRxjYO5zX3VtRdBqhc1bblkTTlzTragwCE8GmDniTxJUeuGm7sPn6kmn3H\/nUv+hPxejdqVBlXpTapqTXnXJ\/oRW0b299pZrVm0PHbV+p1WguVqUZqUnMS0qG3pZx1KHASloEeSokEEcQIlr3Tfak1F0YnLGsjSS8nqDVqm1NVaqPy7bS3BLJKG5dJDiVABa+nOQObMcun7TnUWBJ30HViUnq5P0MbowW3JeVk394HrJE59zc88O7rJqPWNrzXayVtBfhGtUy3bZXutnDE0tCEzRA5ltEw9MKz7UE5xG2lFJHY2VdsvadvPaLsC0bt1eqlWo1YrLcpOyb8tKhDrSkqyCUNBQ+EGHy7ottvaiaX3yzono7WPAs5KSLc5XKu02hx9LjwKmpZreBCCG91xSsEnpEAEYOYXbH8smT2vNN5ILKxL3Q20lWMbwSVjOPuRn+6PLWdr\/UTHEjvADzYp0viKbaiUzTJTa02pZCeTV2dfb9LqlbwL1XeeZJ7OicKmvubvbHUHufO1lcm0VYVbpuo3epua0XGhMTzQDaZ2UdCi26pA4IWChaVY8k4SoYyQMLtp0Cz5TYBUqm0mktNS1NoaqepllsBBLjAy2R1lJVxHMExGjuWa1Id1uUkkYtBojHaO+Ilw1JEmnbRPdFdbtU74qMrpNedTtWzm5ksUhqlp6CbnGQcIeddx0gU57IISU7oIGCck6Ha+2Xte6S3Ay5Pan3Y+9LqS65TLqLs028k8g4iY\/NAk9qFJOOREenuddOkqjte6cMz0u282wuefQhaQob6KfMFCsHrScKB6iAeYEdT9pTYz0v2oqvb9Yvmp1unTFAafl0rpTrTa5hlwpO4tS21exKcp7N5XbBwtieYwu1htfXzPbH+neuWjlfmbTn7qrTUrOhgNPrZKWJnppcKcQQQHWsb26CQkcskRuPcy9atUNatMbvq2qV3TNwz1LuBMpKzEw00haGTKtL3PzNKQRvKJ4jPGGn7ozpHZWheyLYem+n0lMStFpt39I0iYmVvuFbsvNuOKUtfEkrUo4GAM8ABwhq+597ZWj+zTYt1WvqUivJmqxWUVGVcp8iJhtTfQIbIJ3wQoKR2YwoceeIiVsOR5dYNsnaaoG1Zcdm0XVmoydBkL3XS2KeiVli0iVTOBoN5LZVgo4E5zxPGHv7pztG616LX3Y9E0rv+ctyUqNIm5qbRLMMLLziXkISSXEK5DOAMczECr5vSkai7TdSvygImUU24b2FSlEzKAh0MuzwWjfSCQFYIyMmJXd2I\/up6df6vzv8ASUxKXISO1d20VrNJdzNtzWyTveZYveemWZZ+sIYZ6VafCbjBO6UbgJbQATu9p64j3sp7fuuLOu1r0rWHUqbr9p1yZ8FTzU2xLoEst\/yGX0lttJG66W97JI3CvhnEb7fH958tP+EWf\/Wn457NSFS7wcrcuy+iVlZhphc02cBp5YWptO91KIacI\/zD2QopUCTpB3SPab140e1xo1qaYajT9vUp62peecYlmGFhb65iYSpZLiFH2LaRgcOEblrttEayWx3PTTPVu373mZG8LhcpTdQqzbDJddDjD63DuqQUAqU2nOE9vLMQU2qNbEa9VHTy9ZqYacrUvZMnSq4hBHkT7E1NJcUR+p6QbroHUl1MSl2k\/wC9XaMf6TRf6LNRDUQJIyp27dsJWQ3rpXVY54lJPgPkfhjd9EttLayuHWjT+3a5q9WqhTKtdNJkJ6Vdk5Xcelnpxpt1B3WQQChSuIIxzzGgbLO1XWdlyduico9iUS5fGZqSbeFTUsGX72L5HRlPIK6dW9n2ieyOmewxtRzm1PKXZPVzTuhW+\/bExJoZVIEr6UPJcOTvDKSC31Hr80TUo6iJJXJzjl\/HHhr36Cz\/APorv8wx748Fe\/QWf\/0V3+YYzLHBbZZA+pzNn\/rZ7\/ZNQ8yRxhm9lcf8nM3\/AAs9\/smoeVIwY9WcH\/8AQsL\/AEIzfMqBxi4B1xQDjyi4keaOxNkFUcoVFQOyFRQDCQQQR3ooEEEEAEEEEAbxpDcMtbt1Km5ibXLPLllCWcQ2lZU+hSVobypSQ3vlO50hI3CoKyMZjETChN15mXU2hAlEIQUpOQFYzw+\/j7kYqjlQqsnu8SH0HBPPiIyFLeD1QmJonPSPKI+DPCPNXTRgrdjNLOJonVcp3832XCIVKmR27cta360yiXrMnLTUuQCpp9tK0H7hGIz952vp25btPpcrbEpLu0kLEi8ytaOgCySoJTndwSePD\/dGn0CqdE0ndVjhHkvC432JZKUqUXJg9G2B2x8T3mDeF1kjNh2nSsjcs6y7Ol4rdLm7zCVbuP8AdG47S1J2kk15uoacycrNUzv5hLw6YCZLBX+a7iV4SCEcuJJ7MgA63sIUgmoPzE46luZ6QLPX1cjE6J+mNzVOWES6FuKfxxSCMcuRinJk81BDW3a\/rPI2Ze9Ku2kVOYo3gpyVZnJxgMOJW6taA2jfKQtXkJJIGMLENHUaXS1WAhLloJaqin1KD4Mqlx098AADDmcZ4EgHn8ESJ28KrcVFsmzLTtGeZYmpysmam3Fj2TDTayU8P8o42ezyREKaprHdFvOeCKk7JrkF1RtE6WWEtuvID4J8sc\/NkHHVHBzDAWsdicNYV2bj1VKin7y0z95vbTUk9uuPWYv6xTft6btVNt89M0\/apmqXVMNaZ2jnG5tFuWFdE3PTqqVbBYSlDCnihyWbWQounAy7jjjnxOByGYuXrp5cdHsVE5ULfEq6+9Lobe79lkOHMyjeAKXQVeSk8cZ5xlrQvibum0LirVmVmSTOSjtOaWxOhLwXkzBSQk4IKdwdfXGuaz6nXRamgjp1BqlLnrnqhlJm2mKfIdIwltM00HzMnPkq3SvAB68RycM6PrTs1UOnTGr7K691E7H7GExmIpt2cbfxNST1fcrcyl+qelzumv0LNs1enUJ92Z8FzMy0pTBLqwxNKLWFgpSsOeT5QJxyjWp+kvKLM9VpV9ulzzo394sHAWk7oxv454HHtjcNku06lqlaFQmNQGUUiYWGJinSsmhDSXKereCXik72CXA4OJB4DhGuzk9Z90VWX0\/Vck0Jhl17ebKAAkMMuEeVu\/vcefMZ3cNhW7buUV1UWaqnroSrqVCh6ri23TnrqXJH6uGzzNsHg6sBhrqu2rtp0NXVNVTbbh1zP2pS1RKWx0G2F7bl7W0dnaZKyCpRtVdmH0oIbGQpljj+Zkp6oYruw4\/5JNPuP\/Opz+gvw8\/c\/wCcmpvRKfRNKcV3pcM1LNF32XRpZY3c\/fjYNrjZXpu1faFDtWfvOZtxVDqhqbcwxJpmekJZW0UFClJxwcznPVy4xyKLeIsv6PF1aq1zfnfnOrquxcWrDUaKHyp5x6pe+xzBtHTly8O5yXrd0ojMzZGqyamvCN5S5Z6m0+VdSOwAvtuE9jMejubNipvDagpdUdYDjFq0qoVlWR7FQa6Bs\/cU+D8IB6o6L6ObEdsaUbPF8bPc1es7XZK+ZqbmpufXJpYWwp+VYlwENhSh5Il0KGVcSTyi3sk7D1u7Ks7dFWlb3m7mn7llZeS6d+QRKiVZbLiilAC1klalpKsn9bRwjR18wzl5sl\/pytPv9bR\/OXGc7osUjbD1BUogALp5Of4Pl4nFpR3MGgaXayUPVtrWCo1JVDqpqjVPVSG2g4rKiEFwOq4De4kJ446sx69onuaNC2gdWq9qq\/q3UKG5XRLh6TbpDcwlstMIZylZdSeKUA8RwJPOKurclHMq6NljXiw7NGpt2aP1WkW4W2HjVHe990Je3Q2pSUuFxO9vD2SRgnjjlEqu5SyMxVKnrLS5RO8\/OWsxLtDtWtT4A++Y6F616EU\/WTQyb0RmbjmKVLzMrJyyaihhLq0d7rbUlRQSArPRgEZHMw3OyJsSUrZPrVx1qR1Dm7leuGWl5VSXqciVSylpa1ZGFrKiSvzconVtBU5SbIeqtB0P2hbK1HvRibao9IffZqRbYK3pdt6WdYK+jHlK3FOBSkpyrCVAAqwDMvam7qC\/T7pt1nZVumm1SmSzLztaeqdCfDMy6opDbIS8GnQEgKUSjdyVgbxwQHH2k+5e2lq9eNS1D02vjxNq9YmXJyoyT9P76kZiYWSpbqQlaFtKUolSvZgkkhIJJLdae9x7LFaanNVdYm52ltEFyQodNUy6\/wCYzDqzuDHMBsnjwI65lMkwG2Lq9d2u2wXpjqje9Dp9JqtYu1fSMSAcEupDbU62hxAcUpSQoICsFRxnnDRbG+wu3tXWlcN1O6nKtdNCqaaaGUUbvwvEsodKyrp2932eMYPLOY6R7RWx7aWuWj1t6M0WtLsykWrNy8xTu85MTCW22mXGQ0UKUnPkuE729nIyc5Me3ZG2V6dspWfW7UkLzmbkNbqYqTkw\/JJlejIZQ2EBAWrqRnOeuI1bQieZxmr9jHTHaEe07NSTUfFq8G6V32Gei6foZxKOk3N5W7nGcZOO2Jd92H46p6df6vzv9JTD5Xz3L63r11qqmr7usNSlBVLhNfcpyaO2vdUXw8poO9KOGeAO7y7YcHa72HqVtX3Hbtxzmok5bT1vyT8j0bNORNJeS4tKwo5WgpIIPbnPVjiVXIQRfvj+8+2n\/CLH\/rT8NTsYaMsa76E6\/wBiolg5VG5Gj1OjLxlTc\/LmcW1u9m\/hTR6ylxQ646A1zYsotZ2SaXspG\/Z5mVpjjbya13ihTq3Ezapkks7wG6VLUnG9kDHExe2QtjSmbJpudcjfs3crlzCUCy9IJlQwGOlwAAtec9KescohVJIqcPMKSrdUDnryc4jortJ\/3q7Rj\/SKL\/RZqHI1O7k5ZN96hXDe1B1Wnrcla9UHqiKW3Rm325Vx1ZW4lCulR5G+pRCcDdBwOAEPFqPsW0bULZgtPZocvyekZe0lSS2KwmRQ4t5Uu2tHltFQACg4rkrgccT12qqTgHLnZRuLZRt6fulW1LalVrTEw1JeATIoeWmXWlT3fIWGnEHKgZfdPlewVy6517OO1dsD6d3KxYeiVv3DQZy96pJU9XSU2YUh6ZWvoWN9a3FFI3ncZHAb2TGpDuOFBIBOvtS7f\/d1s\/8A342DT7uTVAsO\/rZvr6t1SnzbdZkawmVNCbaD6pZ9DyWyvpjuhRQATg8DBw+slE\/UqChkR4a9+gs\/\/orv8wx7UHMeKvfoLP8A+iu\/zDGZY4M7Kw\/5N5s\/9cPf7JqHmAPOGb2VRnTeb\/hh7\/ZNQ8wAxHqvhB\/yLC\/0IzfMUkRcA64SkDhFwDqjsDZBVI\/jhW754EiF4EVkDAQQQR3woEEEEAEEEEAXpRe5MtLBwQsY+\/CafOd7IQjlvCEozvpwM8Rw7Y8k2hbKmneYebQ5w\/UlSQccfhjz901YZ3L+Gu2021TVO2yUqH6t3BVuBzbdmelbSd4Y5mMvSKebmuiTLWC1KOAoyMjf5ZjUbQmFuMncws7u7g+eHS0iolPdnzJ1gTjKP1LrC8EHt5R8Ar2ZyKd0mTP2fdCrfk6K7Mom56XnJxKJlb7D60FLgWFHdwRnqyOWCREmn5\/vFhtplkuK3B19fniPGkdKrEk0ym2L+YmGmd1Xek8yQVj2u8Dw+LD3VGuSNFoU7c1wvNSMvKS6piZW46ChhCU7yzvZxgAGKU0VXKlRQpb5FiHW3bqdSrVuW1KTPUhNWnVSk1OKQidVLrlgpbaUKyAoKB6NY3VAggHsiLiddmOiDfiQwcPpd4zgxhLwcxgNY6t2Nd1q1LnNX9T67fk2tfRzr\/RSLav1mUR5LSAOryRvH98pR640sJ4R6lyTovyinLbKzG23edK1tNrd7xt5uRxcTaoxVOi8tVK5Jt7OI23HGrWsBrk67NzNmU4pU0WW0F3+1pJJznc4kZ5wma1Tp83QmqYqxpRM02y0yJkzIyEoeS4QB0fDO6Bz9UN8B1woDJjn09FXC9u5XdosNOqJ+1V1ctphfsfk47h\/L8wu1XbtuHUknDaWyS2Sccl1JT1m7Paiysw\/NT7loSzkwqURLSwcmiWmikqO+UhAKjhRwMgRcntTHpulSNOTa9NzKPS7qi6reQ6lB8pCkhIOFDI55GY0pKYuhIitXRZwtXW668PLbneqpx1bb7beaOs\/Ty\/DUZXhqMLhG6aKVEJvlM7zz385I\/SPbvVs36dT1v0vRh64GHaq7UEIl6wW1oDobR0aU9AoqCdzmTnBjPfZkaqP+ijXvwwfyaIqpTg5ELxnrMfgZj0O5TibuvC3ardMcvvfvNTk5Wtt7kp\/syFWP\/RRr34ZP5NFR3Y+sHlsoV8\/\/WD+TRFpI85jE3dVJujUB+oSKkh5CkBJWneHFQB4fBH4eP6I8uy\/C3MXdxVemhOpxSpheYnUS8Pdjqzj9KfX\/wAMH8mg+zG1k8frT6\/+GD+TRAL6pV0jk9LfICFDU66x+vy3yAj519Q4V7Td7i8RJPz7MZWv3J1wfhg\/k0U+zGVr9ydcH4YP5NEBPqnXX7vLfICK\/VRu3HB+V+QER9R4V7Td7i8RJPv7MVW+rZNuH8MH8miv2Yqu8vrTLh\/C5\/JogJ9VK7vd5X5AeuFDVe7xw6eU9HER9Q4X6sTd7i8RJPr7MVXSf0pdw\/hc\/k0H2YivfuS7h\/C5\/JogMNWLw6nZT0ceuKjVm8fd5QfBLiH1HhftF3uLxEk+PsxFf\/clXF+Flfk0V+zDXB+5JuL8LK\/JogP9Vu8\/d5T0cRUau3nj88Sno4iPqPC\/aLvcXiJJ7\/Zhrg\/clXH+Fj+TRX7MJcJ\/6JFx\/hZX5NECRq\/eY\/X5T0cQfVgvXqfk\/RhEfUeGOrEXe4vEST2+zB3Hz+tHuP8ACyvyaK\/Zg7j\/AHI9yfhZX5NECRrHew5TEn6MIUNZb4H+EyfowiPqPDPabvcXiJJ6fZg7jHD60e5Pwsr8mio7sFcvVsjXJ+Flfk0QLGtF9D\/CZP0YRX6tV9D\/AAmS9FHrh9S4a7Rd7i8RJPQd2Aubq2Rbk\/CqvyaLE93Xe5pyTmJT60i5Ul5pbefCijjIxn87eeIJ\/Vrvsf4TI8f\/AIUeuL0rrtdcpMszFWellyLTiXJpLMskOFkEFYTx57ucQowHDddSpeIuL\/4XiJNt2aKPVqJYE1J1imzMk+qqvOBqYaU2opLTQzg8cZBh3QPNGNtysyly0KRr8ilxEvUGEzDSXAAoJVyBAjKAchHorJsLbwOXWcPZq1U00qH51GzKMqkGLg5QlIhYHXHPq5AqB5oWIoBiFbpigI\/QQQR9AKBBBBABBBFicn5Oms99Tz6W287ozxJPUABxJjHEYm1hLVV+\/UqaaVLb5JesHslmHpmYaYlm1uuOKwlDaSVE+bHm+9DuaJ2jbFwbDl13GmwmrluySuuSoErUel3X2e+Cx0RaG8CpXTTBQAASsKIVhPFLa29crtFkW56jrVLzs0UuCYGUutNEcUDszkg8Mn4MRm9lXVyZsqUkLXmaPNVG3LevYX5XGpJsrdbYk2VMIUtOeLKXXmlqJA4tpwezzx0t4+9jreDxFpOm3Wq0t\/vKaXLXmcJpe0q9meOhSFXoNbfoFWp03TqhKull6Vnpdcu+0odS21DeSfMYkrpQ7Ky6mu+kIJyCeww0dDti4NaLvpt2yl2+Mlz1Gkzc5U52pTTjsu2ptCn2mnC0D0bRKnEpSOIz1ZzBT7yu\/TyWtWhVSjzMxc9VkV1CoJUtDbEsyVkNAI4r31IG\/g4GFJ5YMfDri1PY2ocLc6caeVC0ZmRTNS1OlkzIYCd1LQyVknJz8GIhrtubT4uyZe0WsWdQuhyDm7WpxlZV31MoVxYSR+oQocT+qVw4bvFsNXNq3U+2LhpGmOj7SS5PuS8jUJ3ocTffqlEiVb8rdSCAlKlEZB3gCkgGHo0ytBnVO4qkxfujtuULwckImmZZRmBNKXxDgC95aMEHKgrByeHXHZ+EM1y7IMwpx+Y2Xc0\/dSaUP0mnzjqJ1atkQnTxOf5Iup5CJo6u7BzT1Pmbl0efWmYaSXl0WYcK0O45hhw+UlXDglZI6gRENZqTmafNvSU9Kuy0zLuKaeZeSUrbWk4KVJPEEHgRHqzh7inLeJ7DvYCuWoml7VL9V\/vyKtQW4WkDGYSB5ouAeaP32wKQAYuAcYoBw5QtI5cIzbAocBmFJEUxC0gmM29gKT1Rr2og\/wCKU0evfb\/niNjAxwjXtROFpzX+c3\/PEdd4rf8AI8X\/AOur+wQvZG0FpO0lrNL6X1u4Z2iyrtMm6gqalGkOOZZ3MIAX5IyVg548B90ejbF2fKPsyaxI0zodyT1clHKHKVYTU4yhtwKedfQUEI4EDoMg8PZY6slzO5YfptpP\/Vuqfysx7O6wfpsGP9TKX\/SZ2PGs\/aLwM9sj6C0raR1llNMK3cU5RZR+Qmp1c1JtIcdy0kEJAXwGSRngfVOr7Dtpl+3Ndvocr\/8AjEZ+5bD\/ANrKQIH2iqX8xMdF9onZdvTXC7afc1tbRN22CxJ01MiunUkLLLyw64vpiEut+WQ4EnIPBCYip7g58bXWwPTtn97T6mae3dWLoqt+1zwDLys8w00A+vcDW6pAGMqXg5Hn4YMSMsruQ2l0rQZcX9qPclQrK2kmZVTOhlpdtzHlBtKkLUUg8io5PPA5RHmxpC9rV7ozZmkt56l129Ze0LqLMnNVWZcXkqkVO74bUtYQrikcCfYg5iRHdSattAU6b0\/b0WmL2bZVLVRyb8XEzBHfCTL9CXCyOeCvdCuHsvPCWtiVuRd23NhVzZbpNOvy07nm7gtOozJkXROspRNSMyUKW2FKR5LiFJQsb2ElJTg5zwkJZvckNOrktGiXDN6w3S0\/VKdLTrqGpKWCErcaSshIIJwCrhkk+eHS7pf30\/sK1R6ppV34mYoS3C4nCw6ZpkLyOo+UoH4TDr37YeoepeyhT7M0tutFt3NUKBSe86iuZdl0tbiWVrBcaSpaQpCVJyAecQ24HIhBr13KKrWFZFRvTSjUSZuR6jsLm5mj1KRS0++whJUssOtnCnAASGygb3UoHAOpbGOwJaG0\/pTOajXDqJW6K8xWn6W3LSEsytG420yvfKlgkkl08sDAEdCNnWydRdAdCKlI7QmpTV1TtOenapMVBUy4+3KyG4k9CHXkpWsDccXlQH9sIHACGX7kMks7Kk224N1Td0TYUMcsSspn+SIlkQQwqOxR4B2zpDZgrlzz6KLVz3zT643LoDz8oqWW6lW4co3wttxo+dBVgAgRsms+wdaumO0fpTojTNQazOyGoanBNT0xKtB6UCHMHcCcJORyyOB7eUdE9RNJKbqTrBo1tEWg+3NKtuYmWpl1r2M1S5uVc3HM4yejd3MDh5LzhPIQx+1v+n82ZP8A5k1\/tREpy4JSIt7QGwda+j+uOjuk1H1BrE\/Kam1ByTmpyalWg7JpQ\/LNkthOAolMwefIpHPlG6bTHcxqNo1o5XdT7F1BrtenLeS3NTMhOyjKUuSm+EvKSpGCFISrf6wQhQxkgh8Nt\/8ATmbJ\/wDDs1\/S6fEzbhFr1zpLAuAy0z4fps1v093P9kyidxt\/4Ujp2wevyxEOpqGIOU2iXc9rO1V2ZBrxUdRq7IVBdOqU8mQYlWVS4VLF0JSSobxB6MZ4jmcYjUtifYRn9qGmzt+XXcz9vWhIzHebRlGkuTc\/MBKVLSgr8ltCQpOVEKJJwAMEx0Z0t0on9D9ka4dLJ+YdmPAFNuGXl5l3G\/MSxVMKZdVjA3lNqQTjgCSBDcdz3nZijdzzp9ZpznQTcsxcs024BxDqJ2bKVfc3U\/eiZYg0m+u5DaZzdvTB061IuGQrbbSlSpqgamJV1wDyUuBCEqSknhvJJxnODjB5c3\/bFcsiqXDZ10SC5Gr0N2akJ2XVxLbzZUlYB6xkZBHAggjIIjpLsN6e7cdt6cL1SsW49PbhpmoMizOyzF5XDVXHZVxCljplNtS6xvKychLnEBPHMQZ2u2dQ5fXHUVrVpdCXd\/fO\/VVUEOCnlxUs2pPQdIAvdDZbHlDOQckniSbcpiB1dIeOmNsfwYz\/ADY3IARp2j\/9zG2P4MZ\/kjckjjHrTJX\/AC3D\/wBFP\/5RRigBCwOqEpBzyi4keaOe2QKSkHnC90QJHmiuDFZBHmCCKgFRCRnJOAAM5j6C2qd2UKQR6UyS009yrzj7EjTmlbi5ybdDTIV7UKPslfvU5V5owSbopFUM3LWuiaqS5JAU\/OLb6GWQTnATveUrODjeCcnkDHU8742yXIE6cVeTrj7tO9X+nL94DhLc9NUqslR5ZU1POhAHsEAZWtR5BKeZMN7V7m3qmmfqCUrcbJLcso5SyjsOP1R4ZP3OWIx9cnpuTrM4K2xMy9TadcaXLvghcqQcFJSriFfcGIwOJeYUVKD6yTlRKxk\/xR554s6QMfxS1ZSVuynKpTmfM6vPHmiP1ONXdnY3N3UqpqbK2VtsKwd3o0Dh98Exttk0LQ2q2Nes\/ed83LSazJUgzFDakxvMVOpbq1KYfUGlbiDlAAJSCQrK8kJDSM0vpp2XQsuqk1LHTYO4sIzxwd1Q5deD8EbjMWJbqrAFVlb8ffrz0yf+AUU14FCOKd9x8\/mZ4Y4J7RHSsbmGLx9WrFXaq\/1bcfpPL9iFLiTPaUXxqjp9artyabXXV7ec79TLz03ITKmgGAjeUFY8k5B6+oRp9K1cvWlXzN6hS1ffXV5l5ag\/M4fyCveSkheQUpOMDGBgYjZ6VTNSJ3TOY0xtu4kKpkxMeGKjITMrKSzSN1LSd9M05+alWcBSEqCcN5OQeDQyknPVCbTLyUup8pVgBsEjn2xwkkatNokFYhqNyV+3WpmW79rtUrcrUJZL6jl19Lu+oLIIJ3uJ7ecdeaNs7hKjfMhWZmk327LDpKqytZYeWCVBt6XJ3FtBSlcBhQBOFA8Y41S1xVCwtRLBveYQQmi1KSnHUA8CW3EKUPugER9BMpPyszTpadlyC3MNJdQe1KhkfxRxr\/NNGthynJqVjzztw0l1yYkBTq5THTK1SSB4IdHWntSoELSetKhHOTbmtqt0bXmoVqo0ZmTka7LMzMg+wjCJpKEBCyo9boUPKHPBQesZ6Szj3gW8KdX0JAl6pimTpA5L4qYWfN7NGT1qTDX7amjLmqOk845SZdK6zQCqrU9O7xc3R+bMg9qmwcDrUEx3Lo7z63kOeW7l7ai59hvzS1D9qU+o3alHKtIi4kQkDjjsi4kCPXrZkVAPOLgGIoAMQoDMUZIpIi4kYEJSBwi4B1Rm+QKpEa7qMnFozR\/ftfzxGyJHZGuakEJtCb3iQN5rj\/2xHXeKk3kuKS67dX9gh1O5ZZ+u1lDxH\/FuqfysxNbay7nm1tQ6psant6tuWu41R5akLkzQROhfQuvLDgX3w1jPT43cH2Oc8cDkLbN13XZNXbuCyrorFAqjaFNtz1KnnZR9KFDCkhxpSVYPIjODG5fXJ7SGf0wup3\/nCo\/TR41ahymXknhs8bJy9k3bds63TfqbpTX7SrE8h8UrvEsdGptBQU9M7v53gc5GOPDriS20Zs0ataz3bTbi0\/2qLt0ykpKnCSeplJafUzMOhxa+nPRTTPlkLCTkK4ITgjjnjJM6060Tlwyl3Ter18P12QYXLSlVcuKcVOS7K\/ZttvlzpEIV1pCgD1iMp9cntIfuhNT\/APzhUPpoOlvcgmz9Z9cGzjtcaI31cutE9qDUbxuuaZmpiepq2JnpG5F1XSLdXMPKdJHDjjGBjhwErNq3bSsfZLft9i7rTr1bXcLM2+14MLI6JEuW97e6RaeJ6UYA7DHGar60azXBP0yrV\/V296nPUR4zNLmp24pt96QeIwXGFrcKmlkAAqQQcRjbw1C1C1Dcl3tQb7uO6HJNC25Zdaqr88plK8byUF5at0HAyBwOBmGmebJOuXdO51qp7ENeqUulSWZucoj6ArGQlc6yoA48xjbNe9U7v0b2KWdRLDm2JWtUyhURMs8+wl5COkVLtqO4rgTuqVzHOONtw6uat3dQRat2ap3lW6Ino8Uyo16amZQdH\/a\/zFxwo8nAxw4Y4RWsav6u3DbotCv6qXlU6ClDTYpU5X5p+SCG8dGnoFuFvCd1O6N3AwMcoaQde7XuaV2+diapU+WrCZK4KxTVUuqJYdLYlaxLlC91wJPBpxSW17vItOjhxxGvdyzpFWt3Z5uW3a\/TnqfVKXe9Ukp2VeGHJeYaZl0ONqx1pUkg\/BHJ60NT9T9PWZmXsDUe67YanFpcmW6LWpmRS+pIwFLDK0hRA4AnJxHtomtetVtJnkW7rDfVLTVJtyoT4krjnGO+5pzHSPu7jg6RxWBvLVlRwMk4hpEnU7uZOsi7vsO7tJqtPrfqFjVyYXKB1eVmnzTzi0AZOSEOh5I9qkoTwGIxW1t5W35syKAPBya\/2gjlda983zY9Udrtk3pcFvVOYbUy9O0mqPycw42ohSkKcaWlSklSUqIJwSAeqPdWNVtVLhr9Nuuv6l3bU63Rv0Nqc5XJl+bkvK3vzF5bhW1x4+SRx4wVMchJ1C23\/wBOVsoKxwFdmv6XT4ym3vq87odrHs+6k99OsyVNqlWaqYQo4XIuolW3wpI9kAhalAH9UhJHECOVFc1U1Uuis0y4rm1Mu6sVaiL6Wlz9Qrk1MTMgveSreYdW4VtHeQlWUEHKQeYEWbv1I1I1C71+qBqDc90d47\/evhqsTE90G\/je3OmWrczupzjGd0Z5Q0ecSfQHqi+1M6TXc\/Lupdbdt6fWhaFBSVJMssggjmCDnMRU7l\/XLbvnY8OmZnUmbo83VadUmUKAdQ1OPOPoWBzAKXyAcc0K7I5eM66a5S1CRa8vrRfzVGble8UU5FzTqZVMtu7nQhoO7gb3fJ3MYxwxiMPZF\/31ppWkXFp7dtWt2poAT3zTppTK1JHHdXg4WntSoFJ6wYafWJO1OyLs56k7NVsz9tX5rg5eVDlGW5aiSQke9JemS6CpS1eUtZyreHDOEhPM54chtsu+aFqVtBao3rbM2mapM9UnmpOZScomG2GES\/SoI4FCiyVJI5pUDHqvnay2mNSqKu3L31puSoUt1O49KNONSbbySMFLolkN9Kk+1XvDzQzdWz4LmwRn+x3P5pgqYEkq9IEn6mFsH\/qxn+bG5JH8UafpB\/cvtfz0xj+bG5AR6xyV\/wAsw\/8ART\/ZFHzFAcYWkQkDjF1MfoMCkiFbpgSIVFQMDSKTNVib72YKEJACnHFexbT2n1Q8NkUOn0nozSJRKn+G9Nuoysnr3eweaNGteQ6RSJJsZShWXCOG851n4ByHwQ+dm0UJbRlPUOqPiXSF0g4rPcVXgcHW6cNS4221x1vrjzL9+ZeimEOTbF536ilsUQVRp6ntp3RLTEo062QepSVJIUPhgltDLKuO55W61WlSKZUJdaXx4KlUSLK3R+uKba3UKXjhkj7+Y2C06At5G+holLad5RxyHKH8p9rU9NBSltgJUlAdCiPKJx1mPldVdVTbZMJnKPUvZE7+2pahYNKq1Sbos9TmrhfnJlZfmEh5RStAcXkrUXEqwpWcDnkjjIW0NgnSynsJcmramZtWB+az865xPbuggfeEPHd8umT2orXmBKtEVGyZxtCijJU9LTe8kefyXcxvqphbmVuvKKuvJi9Vx8kZK1Tu3zGlpeyxpFQxluzKKop5BTHSE\/dVmNop+jGlbIDM3p\/b77OMKbVINgEeYgZB84jbHJpLY8kARaM\/ngCIz1M1hEN9ofZZnLfvCZVYtmzFZs+pBMzKNy7ZmTKKPsmFAEqG6eRPNJHHIMN1TtA7\/kmd6laV1lCB+pbp694fAMZjoZ0yl8Eq5mNit6iTLz7c2sqSlJznMXV1op9Gpk5M2dS6Lc20vp9prfku5JyDtxSrVSYmEltYwrKWlA8RvEJSc9So7lOKLTSWkjdQhISkDgAAOQiBndD9mN+9rUY1904k0y972UlM3MKl28Oz8o0d\/e8nip1rBUnPEpCk890RJ7Zp1qp2vei1rajSxSiYqEmlqfZBz0E62Nx9v4AsEj96QYXKtaTQt06JTHOfYRUJNySWrG\/gpzwwsEKSfuKAjOzX9l0hpx1IC+AUD2ngRGIaSpKspByDEM+6e7S2pGjdj0TT2w5CZpwvNt9c3cLbpQplppSQ5LM44pcUFjK8jCVcOJyK0Jt7FqqtKlkSdWFW25qjeibSp6pGmSNwz0mmVLgX0JQ8tPAjkklKsDjjlnhGqJEaFaFzNonWalMLWZWoDopop8o5JB3vOrIB+EQ4TjSmVqSopUBjCknIUDxBHmI4x6q6OOKHnmXfVcRVN61Cb9Knqf69T+ZjRXrUlOqFIHbCQIuJHbH0VvcuKSPNFwDzRRIi4lJzmM2CqRjqhQBJ+HrghaRGdSTUNSgaE\/oZp5MvLmHqfNlbq1OKImlgZJyYoNA9OD9rZz0tcOEkRcSMR1mrhDIam28Hb7qEwN39QHTb9jpv0tcKRs\/6aHnTpv7k2uHEAzFxIjN8IZB2S33UNTG6Gz9pn+xs56Wv1wobPmmZ+1k56Wv1w4wHVFxIij4QyFcsJb7qGpjcJ2edMif0MnPTFwsbO+mHXTJz0xyHJSDyhYGYo+Eci7Jb7qGpjajZ10vJ\/Qqd9NXFxOznpaftVN+mueuHKSOMLA6oo+Esi7Jb7qGpjaDZx0uJ\/Qub9NXChs36Vn7VTvprnrhzUiLgGIo+E8i7Jb7qGpjYDZt0q\/Yqd9Nc9cXE7NmlRH6FTvprnrhzkg8ouAGK\/wAKZF2S33UNTGvGzVpQftVPemr9cKGzRpQftVPemuQ6KR1xcAOIzfCmR9kt91DUxrBszaTn7VT3prkXBsyaT8\/Bc96c5DppSRCwMRR8K5IuWFt91CWeOhUWRt6kSdCpbakScgylhlK1bygkcBknnGQA48ookdUXAkmP2aKKLVCt0KElCXqQFJHLhFxI80UA6oWkQYFCDB7IOcLiJBpenFMJaaUQScDiYkHatOKUoG7DQaasNlpn2OMCH\/teVGGxj4Y8f1bs0Q6tp08S1tOOFACpp5KB5wOP+4w8bLAapqmwOKWSPxYbmQlg1RaPLJA8pYcOOvP\/APYc9zAk3jj9bP8AJFSSMO0BVW7VvfS+6kBKHDPz1KDh\/wAqhpaR99Co3OUrtvVtsLmUmTmFYJUj2BMNftvNqa03s+vtLWhdDvykzBKTzQ50rBB82XEn4QIsUmsqLTeV58kdcT5iOsdGq05Mth2XmUvMq5ERi8+YRhJKruBO6HfJPMDrjYKO7ITryG5lwthXDPVEEl+no6V5KcgZMOpR2EtyzYSOqNFnrf8AB4TNSqytA4nzRulozff0qEK9m1zz2QBnJtpCqW+HEhSSjBSQCD8IPAxFHZtoq9nbafuzZ2aCmbL1Gl3bxs0LHkSs0hWJuSQeWAMYHMJQ3nJVxl6ZUuyjiAOaT1RHPaxkJ+37BoWtNCl3HKvpLX5O5UdGPLVIhxLU81\/mqYWSrqw2D1Ral9RDRJlrp5Z4svoOBwIPMRG3uk2m0veuzLO3GZYPP2jOMVHIHFMu4oMvEfAFpWfM3ErVLka7SJasyS0uNvsImGXE8d5Ckgj7mDGm6tUWXuvRG\/Lcm2g41UbbqUqpJ69+WcA+8cQpelpkVKaYPn7pATR6g5bzr7nRup30rUAMK5gpx1coknali3HV9CmdUnTIuMUyqeBZpqXmQ5MNoIKmnXkD2AJ3kDjyCcgYhirQsmv6gzRo1No03OT9NkXp91cs3vKblGGy64sKxjKUoOO04HXEtdDHaLc1o0Wm6W0Sfdt647SqNPvNtIU+uUrEm6t6WmnylBKd9CjgJAykkcQnj2\/hfPLvD+a2sZQ4plKrzaXs5\/uvWjiWtmNIkdkXEjlHrqNGnKV3ut4tPS84ymYlJqXcDrMyyrk42tPBQ4Y7QcggEYjzpHGPW9jEWsXapv2KlVTUpTW6aOQKSByi4BCUp64XGjYKgEmLiRCUjlwi4keaKNwBSRFzlFEjzQpI80ZyBSU9cLSBiKDlC0jzRm2BSUg4i4kDMUSPNC0jjy64zbAoDrhSRAB5oWlOYpIFJ5QtI64okRcAGOUZt7AqBxxCwMxQDzQtI5cIzmAKSIuAcYSBx5RcA80UkFUgRcAxFEjzRcA4coo2CoGYWBmKJHmhYHHlGbYKpGYuoEJSPNF1I48ozb6gVSkZhYGIoOUKHOKsFQnjwhe5AiFxSQRYt7U64qTK0+oWPWH1vE5m25laltJK17jSA0tvA4AqBQ5xzghO7xk1optF1Wq2pMXTd\/gBuRkqvKUdbrM2ELaU9vEvPpJJaaQlOSsjdySM5GDz6mr2mU0xVCpr7zEi8uXefTgArcZC9w5B5DpFHHwdgj3US57UZpMzL1gVMzaWHVyxZYaWhyZUUhKXCpYKW93eJKQVZAGOJI8l1fR1Ga10wdmqFtC2BVKza1iOOVCWuOryDVTkJDvJx1U1LLQtaFpLYUOLbRcwcEJPHjkCQFGum3rpoz87blak6iyAttSpZ9Lm4seySrdJ3VDrB4iOB+j20jeGi94TV8WqqW8IuyD1PQ1MSbbzXROpCV5JIWlXAELSoKHLJBIPqqevdMp9l2xSrCo8\/SbnllPTdy3GqYKJ+qTSlkow+2oKLQSfYrBVvcd45OcXRT1M0VVXWjpzt2VGTlNBXxNPJS4u4KKmXTnit0TrSwB2+SlRx2AxqNEnld7tHe5oEczq5rTd961ihzF9XRXqvI0idbmgzNTq5ncCVAqKErVgEgEfd5xJaQ239LZRpDblv3YSkYO7Ky308UqSS2Zelt7tEwpKePto2KnzhJGFGIaS23xpEzwVbl4n4JOV\/KIy0p3Q\/RmXIK7ZvU47JKU\/KYqWOhtnTwrFLVKzR31Njd+5jhGWswlirOS2fJIUPvRBC0e6h6C0F11U5aN\/rStISOikJInOfPNCM7SO6vbO9Pqy516zNRS2VKICadI73H\/xcAdG5ZI6JRPtTGmXNbcleVoXFaE810srXaRO055BHNDzDiCPvKiIiO7GbMyWinxH1Nzggf8ABlP\/AC2PLSu6\/bM8o4pb9j6mEFCkjFMkDxIxx\/s3lxgCY+yfcT917MmndYm\/zw5bkqy8D1ONthtX8aY2K96wbf0vu+uoWhPg6iT00CsZALcutfEdY4Rzw2du6tbPmkWjVB06uKztRJqoUlp9pbklTpFbBC3lrTgrm0q4JUkHyeeY2a4e66bLNz2jVbRnrM1VZZq8q9KPOM0ynbyUrRu8MzuOuBD5EJaCm\/rcqNq616Y1ZEpK1Z5c5NSrL56KQebdKJhp1B\/WlBRKTg+S5uxKuX1Es7Zc0aqWquzJUGX6cu7ZaYuOi1WYIfmGHUJSx0C082kkOJWndzxJON0RDmnbY98WzdVyVu33G3ZW4WHpB1makWwhMosbnRhoKUlKSnBKMkBXEE4BhpW70bZX0QXNvSakqQpp3HI\/dOT545TdNXNnGh0rZE1tn6Zmda9N9YKAmTQ7M25UPHeiIZGRLsTa3VTUs31hO6gkJ7Up6xGpgcsHh1RY2DtsDRDZfVc87qLbl3VWbrymmUCkyMq8hMshKwEKLsw2fZLVwwRGrX5tIaMTt31SesKj3VL0GZmFPSbE\/KS7b7KVcS2Qh9acJJIB3uIAzxj7L0Z8Z4PLLFzLsxu6KF9qhvlvzX+\/tNUnplm6AYhQHXDW\/XEWP+x1a+Ra+kio2irFHOn1r5Br6SPqL444e7XT7fkIHVSIuJHGGpG0bYg+19a+Qa+khQ2kLEH2urfyDX0kZvjjh5\/m6fb8hA7AHVC0iGmG0nYX7G1z5Br6SFjaUsIfa6uejtfSxR8bcPP83T\/n7CB2gOuFpGYaQbS1hD7W130dr6WFDaasEc6bXfR2vpYo+NuH+1U+35CB3hzhaR\/HDQDab0\/\/AGMr3o7P0sKG09p8PtXXvR2fpYo+Ncgf5qn2\/IQPCBnhCwCIZ4bUGnoP6GV70dn6WFfXR6e9dMr\/AKOz9LFf40yDtVPt+RMDxpEXMEwzadqTTwfau4PRmfpYUNqfTsfaq4PRmfpYo+M8h7VT7fkIHkAi6BmGXG1Tp0PtVcPo7P0sLG1ZpyPtTcPo7P0sZvjPIe1U+35EQPSkQsDrhlhtXacD7U3D6Oz9LCk7WGnA+1NxejM\/SxV8ZZE\/zVPt+QgetIhYHXDJjay03H2ouL0Zn6WFDa002H2ouP0Zj6aKfxjkXaqfb8iYHuAhYHGGQ+u201H2ouP0Zj6aFDa500HOkXH6Mx9NFHxhkXaafb8iIHxSBF1I\/ihjBteaZD7T3L6Mx9NChtf6ZD7TXL6Mx9NFXxfkfaafb8iYHz5wtKc8IYv68DTL9h7l9FY+mhSdsPTAfaa5vRWPpop\/F+Sdpp9vyIgfcDqEV3TDFDbG0vH2lub0Zj6aK\/Xj6X\/sLc3ozH00U\/i7JO00+35CCGuTBkwQR5lNQye2DJ48Tx5wQQAZPbBz4mCCACCCCACCCCACCCCADJ7YIIIACSeZMGT2mCCADeI5EwZPbBBABk9sEEEAEGTBBABk9sGT2mCCACCCCACCCCACCCCACCCCACCCCACCCCACCCCACCCCADJggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggAggggD\/\/Z\" width=\"308px\" alt=\"ai vs. ml\" loading=\"lazy\"><\/p>\n\n<p>In retail, artificial intelligence improves experiences, provides more precise forecasting, and automated inventory management. DevOps uses machine learning-based personalisation and recommendation systems to provide your consumers with innovative products. By eliminating the aspects that make your operations inefficient, our artificial intelligence and machine learning models are revolutionising the retail industry. Real-time data analytics is a fundamental component of AI and ML applications, enabling organizations to harness the power of data for immediate insights and decision-making. It involves handling PhD in data analytics as it arrives, processing it efficiently, deploying ML models in real-time, and addressing latency, scalability, and data quality challenges.<\/p>\n\n<ul>\n<li>It is widely agreed that for operators to roll out and manage next generation networks (e.g. 5G) in a cost-effective manner, automation will be required.<\/li>\n<li>Research in AI started during the 50s and is closely connected to lots of other disciplines such as\u00a0cybernetics,\u00a0cognitive science\u00a0and linguistics.<\/li>\n<li>Even though it\u2019s a small percentage of the workloads in computing today, it\u2019s the fastest growing area, so that\u2019s why everyone is honing in on that.<\/li>\n<li>Machine Learning, on the other hand, is a subset of AI that involves the development of algorithms that enable machines to learn from data and improve their performance over time.<\/li>\n<li>This type of security focuses on verifying and authenticating the identity of a human or digital user before granting access to certain systems or information.<\/li>\n<\/ul>\n<p>We spoke to Intel\u2019s Nidhi Chappell, head of machine learning to clear this up. For this reason, though Software Planet Group will always be happy to bring you the very latest in machine learning innovation, at least for now, that spanking office Jarvis will just have to wait. Much work has been done building search engines and improving how they collect their source data to respond to questions. In its more familiar forms, it isn\u2019t intelligence as such, but it is certainly clever how so much information can be distilled and delivered and used, and it\u2019s all free. It\u2019s a science of making the computer behave in such ways which are commonly thought to require human intelligence.<\/p>\n\n<h2>What is Artificial Intelligence?<\/h2>\n\n<p>An algorithm is simply a set of actions to be followed in order to get to a solution. When it comes to ML, the algorithms involve taking data and performing calculations to find an answer. The best algorithm allows you to get the right answer in the most efficient manner. Machine Learning\u00a0refers to a particular implementation of that visions that is based on a data-driven approach.<\/p>\n\n<ul>\n<li>Our expert trainers are constantly on hand to help you with any questions which may arise.<\/li>\n<li>Structuring the data in a way that allows you to apply AI and ML is 85% of the effort.<\/li>\n<li>Artificial Intelligence (AI) and Machine Learning (ML) systems work by analyzing large amounts of data and using that data to make predictions or decisions.<\/li>\n<\/ul>\n<p>Machine Learning has become increasingly popular and important in recent years due to its ability to efficiently process and learn from large amounts of data, which has led to significant advances in AI. In the fast paced world of today, understanding what both these technologies are and how they differ can help professionals and organizations build a competitive edge. Machine Learning is one of the techniques within AI, relying on statistical methods and mathematical models to enable computers to learn from data and improve their performance on tasks without explicit programming. These systems automatically learn and adapt as they process more and more data. Machine learning is a subfield of AI, which enables a computer system to learn from data. ML algorithms depend on data as they train on information delivered by data science.<\/p>\n\n<h2>What is Deep Learning?<\/h2>\n\n<p>Overall, AI is a rapidly growing field with the potential to revolutionize many aspects of our lives. As technology advances, we can expect to see more sophisticated AI systems that are capable of performing increasingly complex tasks. We utilise AI and machine learning technologies to help your financial organisation acquire a competitive advantage. We provide AI-driven fraud detection, risk management, and financial consulting models to help you understand your system and its major problem areas. Our cybersecurity solutions can help you uncover important financial factors and make data-driven decisions. Our AI &amp; ML solutions enable you to uncover hidden trends and patterns, and provide in-depth analysis and insights from vast datasets.<\/p>\n\n<p>While the future of machine learning and MLOps is being debated, practitioners still need to attend to their machine learning models in production. This is no easy task, as ML engineers must constantly assess the quality of the data that enters and exits their pipelines, and ensure <a href=\"https:\/\/www.metadialog.com\/blog\/ai-vs-ml\/\" target=\"_blank\" rel=\"noopener\">ai vs. ml<\/a> that their models generate the correct predictions. To assist ML engineers with this challenge, several AI\/ML monitoring solutions have been developed. Although often used interchangeably, ML is a subset of AI and is the process of extracting insights and learning from datasets.<\/p>\n\n<p>In light of this new interest, new AI and  ML tools are constantly being made available. Our final way that AI and ML can help your business protect itself is to enhance security. Most companies will already have strong cybersecurity measures, but unless you are keeping up with cybercriminals in the technological arms race, you are vulnerable. The samples are analysed for decomposition across a matrix of conditions, time points and potentially product formulations or packaging types.<\/p>\n\n<div itemscope itemprop=\"mainEntity\" itemtype=\"https:\/\/schema.org\/Question\">\n<div itemprop=\"name\">\n<h2>\u0427\u0442\u043e \u0442\u0430\u043a\u043e\u0435 AI \u0432 \u043a\u0430\u043c\u0435\u0440\u0435?<\/h2>\n<\/div>\n<div itemscope itemprop=\"acceptedAnswer\" itemtype=\"https:\/\/schema.org\/Answer\">\n<div itemprop=\"text\">\n<p>\u041c\u0430\u0441\u0442\u0435\u0440 \u0418\u0418 \u2013 \u043f\u0440\u0435\u0434\u0443\u0441\u0442\u0430\u043d\u043e\u0432\u043b\u0435\u043d\u043d\u0430\u044f \u0444\u0443\u043d\u043a\u0446\u0438\u044f \u043a\u0430\u043c\u0435\u0440\u044b, \u043a\u043e\u0442\u043e\u0440\u0430\u044f \u0438\u0441\u043f\u043e\u043b\u044c\u0437\u0443\u0435\u0442 \u0438\u0441\u043a\u0443\u0441\u0441\u0442\u0432\u0435\u043d\u043d\u044b\u0439 \u0438\u043d\u0442\u0435\u043b\u043b\u0435\u043a\u0442 \u0434\u043b\u044f \u043e\u043f\u0440\u0435\u0434\u0435\u043b\u0435\u043d\u0438\u044f \u043e\u0431\u044a\u0435\u043a\u0442\u0430 \u0438 \u043c\u0435\u0441\u0442\u0430 \u0441\u044a\u0435\u043c\u043a\u0438 \u0438 \u0430\u0432\u0442\u043e\u043c\u0430\u0442\u0438\u0447\u0435\u0441\u043a\u0438 \u0440\u0435\u0433\u0443\u043b\u0438\u0440\u0443\u0435\u0442 \u043f\u0430\u0440\u0430\u043c\u0435\u0442\u0440\u044b \u0444\u043e\u0442\u043e\u0433\u0440\u0430\u0444\u0438\u0438 \u0434\u043b\u044f \u043f\u043e\u0432\u044b\u0448\u0435\u043d\u0438\u044f \u043a\u0430\u0447\u0435\u0441\u0442\u0432\u0430 \u0441\u043d\u0438\u043c\u043a\u043e\u0432.<\/p>\n<\/div><\/div>\n<\/div>\n<p>The traditional approach to adding two values together is to include the exact way the data should be treated within the system\u2019s configuration. Our latest industry leader interview is with Pascale Charbonnel, who tells us about how SCTbio supports customers through the cell therapy manufacturing chain. We work on a range of projects and programs at Scimcon, but we know that identifying the correct leadership methods for each can be difficult for many organisations. Here, we discuss the differences and how to ensure success in both projects and programs. According to Kydd, \u201cin my experience, we should focus on the value of the result and how that value can become material for our customers instead of relying on labelling something as AI\/ML\/LLM and hoping to gain success\u201d.<\/p>\n\n<p>The development of artificial neural networks (ANN) was key to helping computers think and understand similarly to how humans do. Essentially, ANNs operate from a system of probability\u2014based on the data that is fed into it, it can make decisions and predictions with a certain degree of certainty. A feedback loop helps the system understand if the actions it took were right or wrong.<\/p>\n\n<div style=\"border: black dashed 1px;padding: 13px;\">\n<h3>Statsig Founder Vijaye Raji on Product Building, Launching a \u2026 \u2013 Madrona Venture Group<\/h3>\n<p>Statsig Founder Vijaye Raji on Product Building, Launching a \u2026.<\/p>\n<p>Posted: Tue, 19 Sep 2023 23:29:21 GMT [<a href=\"https:\/\/news.google.com\/rss\/articles\/CBMiXGh0dHBzOi8vd3d3Lm1hZHJvbmEuY29tL3N0YXRzaWctZm91bmRlci12aWpheWUtcmFqaS1wcm9kdWN0LWJ1aWxkaW5nLWxhdW5jaGluZy1hLXN0YXJ0dXAtYWkv0gEA?oc=5\" rel=\"nofollow noopener\" target=\"_blank\">source<\/a>]<\/p>\n<\/div>\n<p>The job market is booming, we read about it in the news, take courses, and watch edu videos on YouTube.Now, what do they stand for? We  could say they are interconnected, but they don\u2019t share the same meaning. In this beginner\u2019s guide, we will look at the primary difference between data science, AI, and ML. But while data sets involving clear alphanumeric characters, data formats, and syntax could help the algorithm involved, other less tangible tasks such as identifying faces on a picture created problems. Machine learning was introduced in the 1980s with the idea that an algorithm could process large volumes of data, then begin to determine conclusions based on the results it was getting.<\/p>\n\n<h2>Key Differences between AI and ML<\/h2>\n\n<p>In this dynamic landscape, embracing real-time analytics isn\u2019t just a choice; it\u2019s necessary to unlock the true potential of AI and ML, ensuring agility, efficiency, and staying ahead in an ever-evolving data-driven world. Our machine learning-based solutions ensure swift, efficient, and effective platform development by integrating the most advanced algorithms with result-oriented data mining methodologies. We support businesses to run their operations seamlessly by enhancing the <a href=\"https:\/\/www.metadialog.com\/blog\/ai-vs-ml\/\" target=\"_blank\" rel=\"noopener\">ai vs. ml<\/a> accuracy of financial rules and models. \u201cIt is key that all of these opportunities have the caveat that we must understand the algorithms and methods in order to ensure that they produce results of value. For example, the heart of ChatGPT is deep learning in large language models, which is similar to a human brain with multi-layered neural networks that must be trained and curated. A small perturbation in training can result in biases that drive strange behaviour,\u201d he says.<\/p>\n<p><img decoding=\"async\" class=\"aligncenter\" style=\"display: block;margin-left:auto;margin-right:auto;\" 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width=\"305px\" alt=\"ai vs. ml\" loading=\"lazy\"><\/p>\n\n<p>AI\/ML monitoring can be seen as a superset of data engineering, but it should not be treated as a subset. In this way, AI\/ML monitoring solutions can help bridge the gap between data toolkits and MLOps use cases, as long as they do not remove the ability to integrate their metrics with other systems. While the temptation and constraints to adopt the best solutions on the market can be high, I encourage you to consider whether the value proposition meets both your needs AND your software principles.<\/p>\n\n<h2>Public Services<\/h2>\n\n<p>In traditional AI systems, the knowledge and decision-making rules are usually pre-defined by human experts, and the system\u2019s intelligence is limited to the knowledge encoded in these rules. That leads us to machine learning, which may essentially be explained as where we currently stand in our quest towards achieving actual artificial intelligence. Unlike machine learning, the definition of artificial intelligence changes as new technological advances come into our lives. It\u2019s likely that in just a few years, what we consider to be AI today will look as simple as a pocket calculator.<\/p>\n<p><img decoding=\"async\" class=\"aligncenter\" style=\"display: block;margin-left:auto;margin-right:auto;\" 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\" width=\"308px\" alt=\"ai vs. ml\" loading=\"lazy\"><\/p>\n\n<p>From predictive modeling to report generation to process automation, artificial intelligence can transform how an organization operates, creating improvements in efficiency and accuracy. Oracle Cloud Infrastructure (OCI) provides the foundation for cloud-based data management powered by AI and ML. Machine learning is a form of artificial intelligence where machines are given data and then allowed to make sense of it.<\/p>\n<p><a href=\"https:\/\/www.metadialog.com\/\" target=\"_blank\" rel=\"noopener\"><\/a><\/p>\n<figure><img decoding=\"async\" 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\" alt=\"https:\/\/www.metadialog.com\/\" class=\"aligncenter\" style=\"display:block;margin-left:auto;margin-right:auto;\" width=\"400px\" loading=\"lazy\"><\/figure>\n<p><\/p>\n\n<p>Although formal definitions are widely available and accessible, it is sometimes difficult to relate each definition to an example. So, I thought long and hard for a simple example that my 10-year-old could read and understand. The image below shows concentric circles demonstrating how AI, ML and DL relate to each other. The three technologies are connected in the same way that Russian Dolls are nested; each technology is essentially a subset of the preceding technology. In addition, I have realised that these terms are frequently used interchangeably in social media when, in fact, they are all very different things.<\/p>\n\n<p>AI and machine learning are hugely prevalent in the financial services industry. It\u2019s used to look out for fraudulent transactions so that providers can put a stop to the transactions as quickly <a href=\"https:\/\/www.metadialog.com\/\" target=\"_blank\" rel=\"noopener\">https:\/\/www.metadialog.com\/<\/a> as possible. AI and machine learning also typically power analysis software and provide insights into different ways that the manufacturing process can be streamlined and made more efficient.<\/p>\n<p><img decoding=\"async\" class=\"aligncenter\" style=\"display: block;margin-left:auto;margin-right:auto;\" 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\u0438\u0441\u043f\u043e\u043b\u044c\u0437\u0443\u044e\u0442\u0441\u044f \u0432 \u0441\u0430\u043c\u044b\u0445 \u0440\u0430\u0437\u043d\u044b\u0445 \u0432\u0438\u0434\u0430\u0445 \u0434\u0435\u044f\u0442\u0435\u043b\u044c\u043d\u043e\u0441\u0442\u0438 \u2013 \u043e\u043d\u043b\u0430\u0439\u043d-\u0442\u043e\u0440\u0433\u043e\u0432\u043b\u0435, \u043c\u0435\u0434\u0438\u0446\u0438\u043d\u0435, \u0444\u0438\u043d\u0430\u043d\u0441\u0430\u0445, \u0438\u043d\u0442\u0435\u0440\u043d\u0435\u0442\u0435 \u0438 \u0442. \u0434.<\/p>\n<\/div><\/div>\n<\/div>\n<p><\/p>\n<\/body>","protected":false},"excerpt":{"rendered":"<p>How AI and ML can drive resiliency for banks and customers In retail, artificial intelligence improves experiences, provides more precise forecasting, and automated inventory management. DevOps uses machine learning-based personalisation and recommendation systems to provide your consumers with innovative products. By eliminating the aspects that make your operations inefficient, our artificial intelligence and machine learning [&hellip;]<\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"om_disable_all_campaigns":false,"footnotes":""},"categories":[72],"tags":[],"class_list":["post-521","post","type-post","status-publish","format-standard","hentry","category-generative-ai"],"_links":{"self":[{"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/posts\/521","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/comments?post=521"}],"version-history":[{"count":1,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/posts\/521\/revisions"}],"predecessor-version":[{"id":522,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/posts\/521\/revisions\/522"}],"wp:attachment":[{"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/media?parent=521"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/categories?post=521"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/tags?post=521"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}