AI Use Cases

synvert Accel­er­at­ors

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MLOps Accelerator


Machine Learn­ing Oper­a­tions (MLOps) is a plat­form-defin­ing solu­tion that cov­ers the entire ML life­cycle – from explor­a­tion, data import, pre-pro­cessing, train­ing and pre­dic­tion to post-pro­cessing and export. It enables scen­ario sim­u­la­tions, the com­bin­a­tion of ML mod­els, auto­mated re-train­ing, mon­it­or­ing and alert­ing and offers a flex­ible, stand­ard­ised envir­on­ment for devel­op­ment and oper­a­tion with sup­port for all ML libraries.


Accel­er­at­ors overview


MLOps Accelerator


Machine Learn­ing Oper­a­tions (MLOps) is a plat­form-defin­ing solu­tion that cov­ers the entire ML life­cycle – from explor­a­tion, data import, pre-pro­cessing, train­ing and pre­dic­tion to post-pro­cessing and export. It enables scen­ario sim­u­la­tions, the com­bin­a­tion of ML mod­els, auto­mated re-train­ing, mon­it­or­ing and alert­ing and offers a flex­ible, stand­ard­ised envir­on­ment for devel­op­ment and oper­a­tion with sup­port for all ML libraries.



Machine Learn­ing Oper­a­tions (MLOps) is a plat­form-defin­ing solu­tion that cov­ers the entire ML life­cycle – from explor­a­tion, data import, pre-pro­cessing, train­ing and pre­dic­tion to post-pro­cessing and export. It enables scen­ario sim­u­la­tions, the com­bin­a­tion of ML mod­els, auto­mated re-train­ing, mon­it­or­ing and alert­ing and offers a flex­ible, stand­ard­ised envir­on­ment for devel­op­ment and oper­a­tion with sup­port for all ML libraries.


Effi­cient end-to-end plat­form for the entire ML lifecycle




Machine learn­ing and arti­fi­cial intel­li­gence are chan­ging the way com­pan­ies make decisions – just as the inter­net revolu­tion­ised com­mu­nic­a­tion. While ini­tial invest­ments in ML pro­jects are already show­ing signs of suc­cess, new use cases and oppor­tun­it­ies are con­stantly emer­ging. How­ever, scal­ing ML remains a chal­lenge: the path from explor­a­tion to pro­duct­ive use is long, and as the num­ber of use cases increases, so does the tech­no­lo­gical diversity and the com­plex­ity of the infra­struc­ture. Com­pan­ies are strug­gling with trace­ab­il­ity, qual­ity assur­ance and the chal­lenge of integ­rat­ing mul­tiple ML mod­els into con­sol­id­ated pre­dic­tions. In addi­tion, main­ten­ance requires highly spe­cial­ised per­son­nel who are not avail­able for more stra­tegic tasks.


The solu­tion lies in Machine Learn­ing Oper­a­tions (MLOps) and Pro­cess Sim­u­la­tion Infra­struc­ture. MLOps ensures auto­ma­tion, stand­ard­isa­tion and ver­sion­ing of ML pro­cesses – sim­ilar to DevOps for soft­ware devel­op­ment. A pro­cess sim­u­la­tion infra­struc­ture also enables the optim­isa­tion of ML pipelines before they go live, thereby redu­cing risks and costs. Our MLOps Accelerator sup­ports com­pan­ies in scal­ing ML applic­a­tions more effi­ciently and sus­tain­ably so that they can not only imple­ment indi­vidual pilot pro­jects, but also estab­lish machine learn­ing as a stra­tegic suc­cess factor.


The biggest advant­ages at a glance




Stand­ard­iz­a­tion


Defin­ing stand­ards for pro­cesses, devel­op­ment, code, data, arti­facts and metadata information


Auto­ma­tion


Stand­ard­ized inter­faces and struc­tures allow for an auto­mat­isa­tion of most pro­cesses and the cre­ation of gen­eric pat­terns and mod­ules that are reuseable


Trans­par­ency


An auto­mated pro­cess is easy to use, doesn‘t for­get any­thing and can also be auto­mat­ic­ally doc­u­mented and well under­stood by new-comers


Qual­ity


If pro­cesses are trans­par­ent, it becomes easy to define qual­ity gate­ways, mon­it­or­ing, alarm­ing and auto­mated retrainings/executions to ensure con­sist­ent quality


Delivering functionality for your ML-Cases




Our MLOps Accelerator offers a com­plete devel­op­ment, test and deploy­ment envir­on­ment for the entire ML pro­cess. It sup­ports optim­ised model train­ing with hyper­para­meter tun­ing, vari­ous ML frame­works and com­plex scen­ario simulations. Auto­mat­ic­ally col­lec­ted metadata from the train­ing phase is used for pre­dic­tions, while integ­rated schedul­ing auto­mates (re)training and pre­dic­tions. Struc­tured log­ging and mon­it­or­ing at use case level ensure trans­par­ency and reli­able pro­cess monitoring


Workflow management and user-friendliness




Our plat­form makes it easy to con­trol, mon­itor and ana­lyse work­flows and cre­ate work­flows with build­ing blocks based on the LEGO prin­ciple. Pro­gram­ming skills are largely not required for end users. Func­tion­al­ity and imple­ment­a­tion are sep­ar­ate, which enables simple updates and cus­tom­isa­tions. Back-end devel­op­ment is handled by the plat­form team, while users only need to fill in tem­plates for import, export, pre­dic­tion and train­ing tasks.


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