Discover millions of ebooks, audiobooks, and so much more with a free trial

Only $11.99/month after trial. Cancel anytime.

A Greater Foundation for Machine Learning Engineering: The Hallmarks of the Great Beyond in Pytorch, R, Tensorflow, and Python
A Greater Foundation for Machine Learning Engineering: The Hallmarks of the Great Beyond in Pytorch, R, Tensorflow, and Python
A Greater Foundation for Machine Learning Engineering: The Hallmarks of the Great Beyond in Pytorch, R, Tensorflow, and Python
Ebook609 pages6 hours

A Greater Foundation for Machine Learning Engineering: The Hallmarks of the Great Beyond in Pytorch, R, Tensorflow, and Python

Rating: 0 out of 5 stars

()

Read preview

About this ebook

This research scholarly illustrated book has more than 250 illustrations. The simple models of supervised machine learning with Gaussian Naïve Bayes, Naïve Bayes, decision trees, classification rule learners, linear regression, logistic regression, local polynomial regression, regression trees, model trees, K-nearest neighbors, and support vector machines lay a more excellent foundation for statistics. The author of the book Dr. Ganapathi Pulipaka, a top influencer of machine learning in the US, has created this as a reference book for universities. This book contains an incredible foundation for machine learning and engineering beyond a compact manual. The author goes to extraordinary lengths to make academic machine learning and deep learning literature comprehensible to create a new body of knowledge. The book aims at readership from university students, enterprises, data science beginners, machine learning and deep learning engineers at scale for high-performance computing environments. A Greater Foundation of Machine Learning Engineering covers a broad range of classical linear algebra and calculus with program implementations in PyTorch, TensorFlow, R, and Python with in-depth coverage. The author does not hesitate to go into math equations for each algorithm at length that usually many foundational machine learning books lack leveraging the JupyterLab environment. Newcomers can leverage the book from University or people from all walks of data science or software lives to the advanced practitioners of machine learning and deep learning. Though the book title suggests machine learning, there are several implementations of deep learning algorithms, including deep reinforcement learning.

The book's mission is to help build a strong foundation for machine learning and deep learning engineers with all the algorithms, processors to train and deploy into production for enterprise-wide machine learning implementations. This book also introduces all the concepts of natural language processing required for machine learning algorithms in Python. The book covers Bayesian statistics without assuming high-level mathematics or statistics experience from the readers. It delivers the core concepts and implementations required with R code with open datasets. The book also covers unsupervised machine learning algorithms with association rules and k-means clustering, metal-learning algorithms, bagging, boosting, random forests, and ensemble methods.

The book delves into the origins of deep learning in a scholarly way covering neural networks, restricted Boltzmann machines, deep belief networks, autoencoders, deep Boltzmann machines, LSTM, and natural language processing techniques with deep learning algorithms and math equations. It leverages the NLTK library of Python with PyTorch, Python, and TensorFlow's installation steps, then demonstrates how to build neural networks with TensorFlow. Deploying machine learning algorithms require a blend of cloud computing platforms, SQL databases, and NoSQL databases. Any data scientist with a statistics background that looks to transition into a machine learning engineer role requires an in-depth understanding of machine learning project implementations on Amazon, Google, or Microsoft Azure cloud computing platforms. The book provides real-world client projects for understanding the complete implementation of machine learning algorithms.

This book is a marvel that does not leave any application of machine learning and deep learning algorithms. It sets a more excellent foundation for newcomers and expands the horizons for experienced deep learning practitioners. It is almost inevitable that there will be a series of more advanced algorithms follow-up books from the author in some shape or form after setting such a perfect foundation for machine learning engineering.

LanguageEnglish
PublisherXlibris US
Release dateOct 1, 2021
ISBN9781664151277
A Greater Foundation for Machine Learning Engineering: The Hallmarks of the Great Beyond in Pytorch, R, Tensorflow, and Python
Author

Dr. Ganapathi Pulipaka

Dr. Ganapathi Pulipaka, the Chief AI Scientist and Chief Data Scientist of DeepSingularity, is distinguished in his field of machine learning and mathematics with many accolades and experience to his credit, and was born on August 20th, 1974. Dr. GP is an American premier speaker on machine learning, deep learning, robotics, IoT, and data science, and has been a keynote speaker in many North American top AI events. Top-ranked machine learning expert and best-selling author of two books on Amazon. Top 50 Tech Leaders Award in Mathematics, Machine Learning, Data Science, and Big Data Analytics 2019, by InterCon World located in Santa Monica, California, a leading global technology conference that brings the brightest minds in technology by recognizing the data scientists and thought leaders in this area who empower hundreds and thousands of data science enthusiasts around the world with latest advancements. Top 50 Tech Visionaries Award in Mathematics, Machine Learning, Data Science, and Big Data Analytics 2020 by InterCon World located in Santa Monica, California, a leading global technology conference that brings the brightest minds in technology by recognizing the data scientists and thought leaders in this area who empower hundreds and thousands of data science enthusiasts around the world with latest advancements. Marquis Who's Who in America 2020, a biographical volume award received by top 1 percent in America, inducted by Marquis Who’s Who since 1898 for Dr. GP’s noteworthy accomplishments, visibility, and prominence in his field of machine learning. Number #1 in the following fields in 2020: Machine Learning Authority in the World by Agilience Analytics Authority in the World by Agilience Data Management in the World by Agilience Information Management in the World by Agilience Top Machine Learning Influencer for 2020 by Verdict UK Top Big Data Influencer for 2020 by Verdict UK 2020 Top Machine Learning Researcher by Mirror Review Magazine Top Data Science Influencer by Data Science Salon Magazine in 2020 Premier Speaker on many conferences for 2020 on machine learning

Related to A Greater Foundation for Machine Learning Engineering

Related ebooks

Intelligence (AI) & Semantics For You

View More

Related articles

Reviews for A Greater Foundation for Machine Learning Engineering

Rating: 0 out of 5 stars
0 ratings

0 ratings0 reviews

What did you think?

Tap to rate

Review must be at least 10 words

    Book preview

    A Greater Foundation for Machine Learning Engineering - Dr. Ganapathi Pulipaka

    ˅bbook_preview_excerpt.html}[sH_pǐ(YE]̱n#J>rI@dt^m%_fU33'6[& *++x_|ŪLZjRg垺ԙ.tH]&~{0M?ST|6UZ3EUjOjWjj订&2KU:I]$S:[Y^.qץ;zʤ&8|`/&Ӓv~=yFfiZCC=zkʼ@vu7oN=H,[:[ezIrNĵĘ9 sM:ܛ)H^I^owÇc+ǫӰ2:7%BPD̳dFz@ͳIVvl?i dEIՐ":^5':M~Dm⹞u$m,J|Jd{Ӫ#eiji^ʴ @$=8&B+A7uKLlI! Bh}bK&{NӜ&*"A (ψINH?V ZPerJ!0),Rve."=F2l"̛q 9T:%S/؋ZC-vlg1kaL8IQ+IO& ݶ}Wk2(,RXeF+:eNЀdxPASJAabٌ7L* PV_>k1,#iǘibA`E2"p*3/&K6K~k,5K-Pf >H`lHȯ, k nk:J |#gb +bلR[~L!R:kLU͔lbVbGt %!4d XD+UVjk`y7Rb|Emn]GXrfę \Gh//@NjMac3m`sxugܣD ގa 6#5MAFkEڏ&&E= 1,ͭ_FOs#) XqYIWj{If+d\,v:௯J D,0Tr="/_F _P m(n%"t_ K~X̚7)dqI8GLEV;nJ@dCsm0rky,w ]i*5QRZ:t^22 2S a$nYw(D6pTW^/lNU]y˪IxSVU6-6[ҳ"5s ɎuZOwa4 '氞7DX^7 | v8󌹘X!8JA'KrRqO,)I֐f҈{"!W&˾2xrIGa7Թ8T *&*&!pђN@+-0u<}yxn\̢ROd- ^&劯KhO8oꋉ)}X#/XN?ϚD<-2aEX𛣵G~-9Y98٧[YB~=!2hꖑWO~8ss58%"֓{Ĭbm H;mX9uY*sL*6تS$'+mC<ϥp_I 9~e/W7v49xuܐ5(2^5ae;«>ȜcE6P3 LB7?Cu /`Tn y|͈K6v Z(D. 5#df_]D<&q%|~s3.BTK|RJ!b['/ys< Y7SR FC!5! m$X71L ̾" 3]zmvm"lxNM18>ڲd8rNEW؆Zq_Y[^]?>x9 Gטɋ] R<PtjQkI?[~W/d r B 2!1R=%DB]1R'O"Bis0WNK`@'<蠈nE ֳ6kTW C{N[aq/$͒A-UW5FQu) `mQ[zl0ADٵΚƆ.=sӯ"MlN"aO^9&A.8oeL Ky| WmQA kٍG@xp- ilY=, W\H 3¡NIņi\Q* Y2_ np x5뚞,|୼'$IsXńo' 9ɋpjXB#tWHnՔ ^r>@>8wWu:O+̋ezR0dȢUY/{Np򷼺^0}cO<GF r) 3b*ٲy; W۴7x<0b?:ի W]lYf`M׳3w5YO.Jf1}rmNyFy[&%pAL1Mvq@Ty LKs -?"ݐ)D^5kۍeZdŹuYH!型)7~8 v]@,=HHY;I4 tl+V.t Y' .)ߛ%;=ZڴIZV]-p mxfHt"r yPlo 3T٦ZϬ?*\lrAl]x_KeoGߐ.[J hp,q"GB|qpMKBem(ӠhņD:_z$e콌C`7~\[GTBv-eE[ڐu54]G#H=1. /oXYr NZ ϐ.E薯y!lK |O.:,'tD8vMz`㫫RC&=N=u{6]2% 4(sB(NZT0<];Y=yKRxXFˀҳRN d=p+*R7Ӈ яK =gl|`]oⱭp^b fהoiHdE_CI߱#L K0Z82*: lt׺!?/rfxW N޽SC;vU0!V HR18éDl-kK$nhY:b1Lr(\MvXXqm/QR9I,9(s!) fKX [؆ HsDHN!{08H58RK ־H|jS8q1:66۰v]o5ȋ8eoωy±J 5RpGơEçiHe~M0Pcj[r[}1Q0*ك8ħ\Xn ) 5Ĩy\N(L͔y/o_ s< wEӿ :l8!i+psknK?d/mĤ|x?A ~[K #|flp^5L >GzDMb5$zy5l5xA0 e\/$͗a}S%=qѝnI`Y޾Nʒ.ޛg|5v$]_W ;%P]kY#CD=$~w~0F2t˭5:+~gY,Xa`_1#tV$ Gprɧft]nfl Z 8kuHܷ6mq31֪zapD5$*n.Omk 6嫫Z JLR4@gXMn ּu7\jb;lc=9Zj_js~Q ʠ4lZ1KGڮ;58 d)Loomx6)֓ޚ:,PY>8 =imBvS& @4=u?( SPdh>-LÍϯ{HXHW7l4Kn"ח_?kuGч7=s?3gLrt]_D`GOfǘ@#A-xh p0p~6co |دOo^_ߌ^3N- rKH (s÷' '(݊Pw2tTO\5G@^L2biztrWJ_eiIFxD3f/$*bgllo>Www~W岥~y 2Y.DP̪5L` ).dgN*}>E0Rc=zABsX7\?oѿEt㙏V}300я,3i̅BXQEh$Cu5Go 0nmΈƃ͋wχyL-sI?˻ #`Oby{0تv$O+p@b8:}n*>ܠ&<(Hx% ޲r[`U$fwʐ9<;')&,HJ箹K%cWbs*]ɹZY )vpIYGDKt} J3i5$Un, 2Yt |®sQQ鹾nxSڄ#${A +q뜄/7lIR.Oq\"FYG0@p.fwp֩Fi'~2]1h󏂆6}dʄ(ev8wlۯ'Yd8gI]acS" MTH2H18yy6Cgu;tˎ% ;mE&\ƽ&,s3 їg\]rW~v'|ˌQޤR>`m*Q_!b-*|hGAD-3Wz:EN3\KbxK9.=Uw]+?FjfȱaX/UVĵ{kb[0L0SC> Ʒ7LU^I;skxo|p{8“;|p~.noxϷkS͹:ߌo.%}?V E*r`G(y BKm(L!⠟Z[- bIm԰g֏s^D0nP4-Ң]Y D \V8rX=yۄ vӏr,*fmmMOw!s[{"%2--XN =f`@g_CH핊MqoذbK^  i{V7rRZ98x-[#?N|#L bF',VvS2|xx 3Q{ؑw\0呟BnmGvۡ9^.b‚%hv[8\٭{F(Qϝ9 3+]o5u;$>KzXD=4[^UO`À[iIRڱ=u٭FYcJ&lS)#:A Mmq9" {ZwIg%,h@,LWHvsSn>SOYԖO 98|2xrcAQX_!\MpAt򴈛y⏥Vwo"/ϛl ZDnpLDR^ -pdz19bkGN~"4d5LLtOWE97) ?ET{Ҡِ%,*C{ڸ_K?,COqi{v W)lJ uYl'DV|{*2Z~KIpSD>'/DJ}rX5ޘE}b<8zJi&30k L2 7!\E\Bc:8-}X :4MwQ +r7wՑ6r&wGrg^.`Oq|) 5ro~\?f-_^jIz(+mVq(JJ5dw#.M\!`E,x%GLly r7;U | jE훃^{.3.(.F$]}mG{`zV"9II.I%SBI;\hvc% ཉr~˃80p@ V23o ^ U.Q\N6E`š3gۊ`_q6M:0cv\J&uVoD嵞<]44mNʹ"ә"/\ M)!ye|-0Z# vV )&8fM-S\g/6J,<PN/|4X⤓_h$S7 @kowؐFKtV/ ډk` wTވp]C0h#|N*F֚ʳ؞rL>f?b40W\ǤRZa oC u;P(_VÓgd[":hSSH²ֻ7L0֒3,.CQFlnvH Rm32,4~n6Zf"2R"d7h %fi$ Md,l$VIu}%4{/&U+ɦiCʳGRmZBC*}gOZ|YA-:ɐWM W#Y"Z] ZO%0: hJKn7 Ǭn"hq۷ edq_OZ+fӋPҋ=<0YFk,G]x)s'DwQ׆FA0?%$\ +;H')iEu'[}yi`A-t\̋n3,G+֘hNd{uDy̟C}1| lhs@g5Yu^к ,I$,2.hYKm又4 uR J,1ϻ}݄Y|NgLJ4t-b\̓'6*gtq0hH]Gl!蹲+-4I#4mOk6cw[d q=u}fFlw\.ȝ\^x6ՕGVH~yؾ 'G ۘdGqԈh3}7BthK݄HTmow3% 0CpҐD*ڝ aQPlJ'j~tؘ3vP?{Ig4^: pz7oCDu{lsay g9&YU˱z5zsv#h.9빿_ZT( Ij"#2;S_MA=fƉg2:!}CQ[D8hftmֺ}|әhftdƐrO )]}~)QqȶJ35qFj{r2Pp˾٨j;GqBfֶ{!&*b-0' lû8YJ{).CuԽp%^(Zg06D#ۘcDx  xNmm;IlaܘLnjMf wZNVجSjIn*/"~Eyk6a Q8.qwuTuk\]g1 ȥam+M* C܋ [R1Cv1쫒UrVF<8ja 5b^8nyYI"ڿfk>ڋP%*4{gK QKӑ i3 jjEn~,!rꄽjpΞJ[ ~e7^,GԀ e?6_4!`=$kۧڝ D3Bؔx*a㵏g)֌\tbƻ7\|=ǬJB0Fo p攟 g@ΑQ"Q2߯֐HK`7lԶS2 ]쭠e^Cs/n pQ IOͦyƝk`uE7>WX?}BTk,0boE؊mgi|E(B{q~
    Enjoying the preview?
    Page 1 of 1