SlideShare a Scribd company logo
Optimal Management, LLC
Resident at Skolkovo Innovation Center
Winner of Enterprise Applications & Big Data pitch
session at Startup Village 2013 in Skolkovo
Participant in Platform Development
Accelerator for SAP HANA
Participant in SAP Startup Focus Development Accelerator
Participant in IBM Global Entrepreneur
Participant in IBM PartnerWorld
We use mathematical models and optimization
methods for management of enterprises
2
Problem
We solve a compelling challenge within Enterprise
Management:
• Optimization of internal supply chains for
multinational companies that yields the largest after
tax profit for the enterprise
To solve this problem we use heavy mathematical models,
new computational algorithms, Big Data tools and parallel
computing cluster power.
Our deep optimization can increase the profit of a
multinational enterprise to 5-10% and more.
3
Problem
Optimization of Internal Supply Chains for
Multinational Companies
How to establish the most efficient Flow of Goods and Transfer Prices
if subsidiaries are in multiple countries?
4
• Expansion of globalization leads to complex supply
chains
• Tax authorities increase tax requirements across the
world
• Current optimization techniques use methods of linear
programming and therefore are limited in scope
• Optimization calculations for a mid size company involve
millions of variables and several terabytes of data
Background of the
Problem
5
• Currently, tasks of logistics optimization and tax
optimization are solved sequentially:
- At first Supply Chain planning systems calculate the best
Flow of Goods, providing minimization of costs;
- Later tax planning systems calculate the transfer prices,
providing the maximization of profit for global company;
- In both stages, tasks of linear programming are solved.
• The result of such sequential optimization does not
provide the most optimal solution. Only by optimizing
both - Flow of Goods and Transfer Prices simultaneously a
combination can be found that yields the most profit .
Current practice
6
Our approach
Simultaneous solving of complex problem
Using Hadoop as Low Cost Super Computer
• Use math models of quadratic programing, new numerical
methods of optimization and optimal control theory
• Modeling and Optimization on SAP HANA and Hadoop
• Seamless integration with SAP Business Suite
SAP HANA
SAP ERP
SAP APO
Hadoop
Cluster
7
Supply chain structure is constructed by taking into
account the multistage nature of manufacturing processes.
The Multinational Supply Chain includes:
• Countries (various tax jurisdictions)
• Internal and external suppliers
• Manufacturing plants
• Distribution centers
• Market zones
• Items of goods (including all raw materials, semi-
products, finished products)
• Available transportation routes
Supply chain
structure
8
Adaptation of
mathematical model
The model describes multistage nature of manufacturing process.
The model can be static or dynamic (including time).
9
• Simultaneous optimization of Good Flows and Transfer
Prices can increase the profit of multinational
enterprise up to 5% and more.
• The more advanced the supply chain (more goods
positions and more nodes in chain), the greater the
effect of simultaneous optimization of flow of goods
and transfer prices.
• Additional 2-4% of profit after deeper optimization of
internal supply chains by adapting mathematical
models that are capable of taking into account existing
price forecasts in various markets as well as differing
time-to-market characteristics between various chains.
Customer
Opportunity
10
The following items are determined:
• Total maximum profit of Enterprise after taxation
as well as parameters that led to such result:
• Volume of each good that needs to be transported on
each route between subsidiaries participating in the
supply chain
• Transfer prices that need to be established between the
subsidiaries
• Allocation of transportation costs between seller and
buyer for each pair of participants in transportation
Optimization results
11
• Maximal capacity of each node of supply chain
• Resource consumption of each node of supply chain while producing some product
• Procurement costs (excl. duties) of raw materials shipped from external suppliers
• Fixed and variable costs on each node of supply chain
• Amount of raw material needed on each plant to produce one unit of product
• Inventory cost of process loss and safety stock of each node of supply chain
• Transportation costs per unit of each product on each route
• Forecasted demand on each finished product in each market zone
• Market price of each finished product in each market zone
• Import and export duties
• Corporate tax rate of each country
• Lower and upper bounds of the transfer prices on each product between each pair
of countries
Static model
accounts for:
12
Dynamic model is an extension of static model.
Dynamic model takes into account the following additional
aspects:
• Number of time intervals in common time period of modelling
• Delivery time on each transportation route
• Following parameters depending on time intervals:
– Forecasted prices and demand for each market zone
– Forecasted manufacturing costs
– Forecasted transportation costs
– Forecasted currency exchange rates
Additional results of optimization:
• Time of manufacturing start and shipping on each node of supply chain
• Forecasted sales figures for each market zone depending on time
Dynamic models
13
Results
Type of model Model 1 Model 2
Number of manufacturing stages 1 1
Total number of suppliers 11 50
Number of internal suppliers 3 12
Number of manufacturing plants 3 8
Number of distribution centers 8 10
Number of market zones 20 80
Number of raw materials and components 10 35
Number of finished products 5 12
Effect of optimization 2,08% 4,90%
Results of optimization on test data (static model)
14
Potential customers
Described problem is crucial for to the most industrial
companies that run subsidiary business units and competing
for the customers on global level. Most of the large business
companies as well as the higher level of middle business
companies fit these criteria.
Our potential clients can be from various industries:
• Oil and gas;
• Ferrous and non-ferrous metallurgy;
• Chemistry and petro chemistry;
• Production of building materials;
• Food industry;
• Consumer products industry;
• Pharmaceutics and bioengineering;
• …
15
Team
• Experienced CEO with years of executive experience
• World renowned CSO
• 2 Dr.Sc and 2 Ph.D
• 200+ publications on Optimal Control and Optimization
• SAP guru consultants on EAM and SCM
• Experienced Project Managers and Architects
• International experience
• Combination of silver maturity and enthusiasm of youth
• Attracting most talented students
16
Solution as a
service
While product is developing, we offer solution as a service.
The entire service process consists of following steps:
• Gathering of basic structure of customer’s supply chain
• Estimation of costs on calculation and full data gathering
• Approval for parameters taking into account
• Fitting of the math model to the client
• Gathering all necessary data for the developed model
• Transformation of gathered data into computational model
• Performing the calculation
• Applying of results
By analogy to the tasks of logistics optimization, static model
calculates for 18 months ahead every 6 months.
Dynamic model calculates weekly or monthly.
17
Contacts
Contact persons:
• In USA & Great Britain – Vitaliy Baklikov
phone: +1 240 620 1229
e-mail: vitaliy.baklikov@optimalmngmnt.com
• In Russia & CIS – Andrey Sukhobokov
phone: +7 903 577 9667
e-mail: andrey.sukhobokov@optimalmngmnt.com

More Related Content

What's hot

Planning building & operating 3rd party warehousing
Planning building & operating 3rd party warehousingPlanning building & operating 3rd party warehousing
Planning building & operating 3rd party warehousing
Imdad Logistics
 
Sap at co operative bulk handling ltd
Sap at co operative bulk handling ltdSap at co operative bulk handling ltd
Sap at co operative bulk handling ltd
Anjali Gupta
 
Global Supply Chain
Global Supply ChainGlobal Supply Chain
Global Supply Chain
tombryant
 
The Solution For Today’s Supply Chain Challenges: Demand Driven MRP (DDMRP)
The Solution For Today’s Supply Chain Challenges: Demand Driven MRP (DDMRP)The Solution For Today’s Supply Chain Challenges: Demand Driven MRP (DDMRP)
The Solution For Today’s Supply Chain Challenges: Demand Driven MRP (DDMRP)
SYSPRO
 
Chapter 1 The Progression to Professional Supply Management
Chapter 1 The Progression to Professional Supply ManagementChapter 1 The Progression to Professional Supply Management
Chapter 1 The Progression to Professional Supply Management
Tran Thang
 
BatchMaster ERP for Personal Care & Cosmetics
BatchMaster ERP for Personal Care & CosmeticsBatchMaster ERP for Personal Care & Cosmetics
BatchMaster ERP for Personal Care & Cosmetics
BatchMaster Software Pvt. Ltd.
 
Ch 7 manu-service-technolgy-latest
Ch 7  manu-service-technolgy-latestCh 7  manu-service-technolgy-latest
Ch 7 manu-service-technolgy-latest
Engr Razaque
 
Customer site visit to Manchester
Customer site visit to ManchesterCustomer site visit to Manchester
Customer site visit to Manchester
Valmet Oyj
 
7. 21.10.11-t. zielinski-processes or costs
7. 21.10.11-t. zielinski-processes or costs7. 21.10.11-t. zielinski-processes or costs
7. 21.10.11-t. zielinski-processes or costs
ICV_eV
 
7. 21.10.11-t. zielinski-processes or costs
7. 21.10.11-t. zielinski-processes or costs7. 21.10.11-t. zielinski-processes or costs
7. 21.10.11-t. zielinski-processes or costs
ICV_eV
 
Joel Marusiak, Neovia Logistics presenatation at Spare Parts 2013
Joel Marusiak, Neovia Logistics presenatation at Spare Parts 2013Joel Marusiak, Neovia Logistics presenatation at Spare Parts 2013
Joel Marusiak, Neovia Logistics presenatation at Spare Parts 2013
Copperberg
 
Supply chain management & case study
Supply chain management & case studySupply chain management & case study
Supply chain management & case study
Dhruv Patel
 
Lecture 8 supply chain
Lecture 8   supply chainLecture 8   supply chain
Lecture 8 supply chain
Nouman Zahoor
 
Mfg summary l1 l3
Mfg summary l1 l3Mfg summary l1 l3
Mfg summary l1 l3
Aakanksha Lilhare
 
9-supply Chain Design. OPerations Management
9-supply Chain Design. OPerations Management9-supply Chain Design. OPerations Management
9-supply Chain Design. OPerations Management
AaDi Malik
 
Prw
PrwPrw
A.I. Powered Optimization for Distribution Centers. Next Generation Optimizat...
A.I. Powered Optimization for Distribution Centers. Next Generation Optimizat...A.I. Powered Optimization for Distribution Centers. Next Generation Optimizat...
A.I. Powered Optimization for Distribution Centers. Next Generation Optimizat...
ACTOR
 
Ops571week5inclass presentation
Ops571week5inclass presentationOps571week5inclass presentation
Ops571week5inclass presentation
CadleCollins
 
Ewm training ppt
Ewm training pptEwm training ppt
Ewm training ppt
babloo6
 
Valmet's Interim Review January-September 2015
Valmet's Interim Review January-September 2015Valmet's Interim Review January-September 2015
Valmet's Interim Review January-September 2015
Valmet Oyj
 

What's hot (20)

Planning building & operating 3rd party warehousing
Planning building & operating 3rd party warehousingPlanning building & operating 3rd party warehousing
Planning building & operating 3rd party warehousing
 
Sap at co operative bulk handling ltd
Sap at co operative bulk handling ltdSap at co operative bulk handling ltd
Sap at co operative bulk handling ltd
 
Global Supply Chain
Global Supply ChainGlobal Supply Chain
Global Supply Chain
 
The Solution For Today’s Supply Chain Challenges: Demand Driven MRP (DDMRP)
The Solution For Today’s Supply Chain Challenges: Demand Driven MRP (DDMRP)The Solution For Today’s Supply Chain Challenges: Demand Driven MRP (DDMRP)
The Solution For Today’s Supply Chain Challenges: Demand Driven MRP (DDMRP)
 
Chapter 1 The Progression to Professional Supply Management
Chapter 1 The Progression to Professional Supply ManagementChapter 1 The Progression to Professional Supply Management
Chapter 1 The Progression to Professional Supply Management
 
BatchMaster ERP for Personal Care & Cosmetics
BatchMaster ERP for Personal Care & CosmeticsBatchMaster ERP for Personal Care & Cosmetics
BatchMaster ERP for Personal Care & Cosmetics
 
Ch 7 manu-service-technolgy-latest
Ch 7  manu-service-technolgy-latestCh 7  manu-service-technolgy-latest
Ch 7 manu-service-technolgy-latest
 
Customer site visit to Manchester
Customer site visit to ManchesterCustomer site visit to Manchester
Customer site visit to Manchester
 
7. 21.10.11-t. zielinski-processes or costs
7. 21.10.11-t. zielinski-processes or costs7. 21.10.11-t. zielinski-processes or costs
7. 21.10.11-t. zielinski-processes or costs
 
7. 21.10.11-t. zielinski-processes or costs
7. 21.10.11-t. zielinski-processes or costs7. 21.10.11-t. zielinski-processes or costs
7. 21.10.11-t. zielinski-processes or costs
 
Joel Marusiak, Neovia Logistics presenatation at Spare Parts 2013
Joel Marusiak, Neovia Logistics presenatation at Spare Parts 2013Joel Marusiak, Neovia Logistics presenatation at Spare Parts 2013
Joel Marusiak, Neovia Logistics presenatation at Spare Parts 2013
 
Supply chain management & case study
Supply chain management & case studySupply chain management & case study
Supply chain management & case study
 
Lecture 8 supply chain
Lecture 8   supply chainLecture 8   supply chain
Lecture 8 supply chain
 
Mfg summary l1 l3
Mfg summary l1 l3Mfg summary l1 l3
Mfg summary l1 l3
 
9-supply Chain Design. OPerations Management
9-supply Chain Design. OPerations Management9-supply Chain Design. OPerations Management
9-supply Chain Design. OPerations Management
 
Prw
PrwPrw
Prw
 
A.I. Powered Optimization for Distribution Centers. Next Generation Optimizat...
A.I. Powered Optimization for Distribution Centers. Next Generation Optimizat...A.I. Powered Optimization for Distribution Centers. Next Generation Optimizat...
A.I. Powered Optimization for Distribution Centers. Next Generation Optimizat...
 
Ops571week5inclass presentation
Ops571week5inclass presentationOps571week5inclass presentation
Ops571week5inclass presentation
 
Ewm training ppt
Ewm training pptEwm training ppt
Ewm training ppt
 
Valmet's Interim Review January-September 2015
Valmet's Interim Review January-September 2015Valmet's Interim Review January-September 2015
Valmet's Interim Review January-September 2015
 

Viewers also liked

Job roles
Job roles Job roles
Job roles
connor-sherwin
 
Krzhizhanovsky 2008 by Professor Caryl Emerson
Krzhizhanovsky 2008 by Professor Caryl EmersonKrzhizhanovsky 2008 by Professor Caryl Emerson
Krzhizhanovsky 2008 by Professor Caryl Emerson
lpendse
 
No sql for sql professionals
No sql for sql professionalsNo sql for sql professionals
No sql for sql professionals
Ric Centre
 
Model day
Model dayModel day
Model day
Johnson Barros
 
Hist 141 california and the civil war
Hist 141   california and the civil warHist 141   california and the civil war
Hist 141 california and the civil war
flip7rider
 
Heroku shdh
Heroku   shdhHeroku   shdh
Heroku shdh
Sandra_Daniela
 
関デジセミナー20130710
関デジセミナー20130710関デジセミナー20130710
関デジセミナー20130710Masayuki Abe
 
Hist 140 hoover dam
Hist 140   hoover damHist 140   hoover dam
Hist 140 hoover dam
flip7rider
 
Simultaneous optimization of Transfer Prices and Flows of Goods in comparison...
Simultaneous optimization of Transfer Prices and Flows of Goods in comparison...Simultaneous optimization of Transfer Prices and Flows of Goods in comparison...
Simultaneous optimization of Transfer Prices and Flows of Goods in comparison...
Andrey Sukhobokov
 
Veterans & Military Families Focus Area
Veterans & Military Families Focus AreaVeterans & Military Families Focus Area
Veterans & Military Families Focus Area
serviceresources
 
My Life Project
My Life Project My Life Project
My Life Project
yessicavd
 
Shim Graphics
Shim GraphicsShim Graphics
Shim Graphics
ShimGraphics
 
PRESENTATION BEPLAN 2016 hi-res
PRESENTATION BEPLAN 2016 hi-resPRESENTATION BEPLAN 2016 hi-res
PRESENTATION BEPLAN 2016 hi-res
imolnar72
 
WordBench ISHIKAWA
WordBench ISHIKAWAWordBench ISHIKAWA
WordBench ISHIKAWA
Masayuki Abe
 
My Favorite Movie
My Favorite MovieMy Favorite Movie
My Favorite Movie
cecil52
 
My life project
My life projectMy life project
My life project
yessicavd
 
Impressie Wittenberg
Impressie WittenbergImpressie Wittenberg
Impressie Wittenbergdewittenberg
 
Shim Graphics
Shim GraphicsShim Graphics
Shim Graphics
ShimGraphics
 

Viewers also liked (20)

Job roles
Job roles Job roles
Job roles
 
Krzhizhanovsky 2008 by Professor Caryl Emerson
Krzhizhanovsky 2008 by Professor Caryl EmersonKrzhizhanovsky 2008 by Professor Caryl Emerson
Krzhizhanovsky 2008 by Professor Caryl Emerson
 
Ushk 4
Ushk 4Ushk 4
Ushk 4
 
No sql for sql professionals
No sql for sql professionalsNo sql for sql professionals
No sql for sql professionals
 
Model day
Model dayModel day
Model day
 
Hist 141 california and the civil war
Hist 141   california and the civil warHist 141   california and the civil war
Hist 141 california and the civil war
 
Heroku shdh
Heroku   shdhHeroku   shdh
Heroku shdh
 
関デジセミナー20130710
関デジセミナー20130710関デジセミナー20130710
関デジセミナー20130710
 
Hist 140 hoover dam
Hist 140   hoover damHist 140   hoover dam
Hist 140 hoover dam
 
Simultaneous optimization of Transfer Prices and Flows of Goods in comparison...
Simultaneous optimization of Transfer Prices and Flows of Goods in comparison...Simultaneous optimization of Transfer Prices and Flows of Goods in comparison...
Simultaneous optimization of Transfer Prices and Flows of Goods in comparison...
 
Veterans & Military Families Focus Area
Veterans & Military Families Focus AreaVeterans & Military Families Focus Area
Veterans & Military Families Focus Area
 
My Life Project
My Life Project My Life Project
My Life Project
 
Shim Graphics
Shim GraphicsShim Graphics
Shim Graphics
 
PRESENTATION BEPLAN 2016 hi-res
PRESENTATION BEPLAN 2016 hi-resPRESENTATION BEPLAN 2016 hi-res
PRESENTATION BEPLAN 2016 hi-res
 
WordBench ISHIKAWA
WordBench ISHIKAWAWordBench ISHIKAWA
WordBench ISHIKAWA
 
My Favorite Movie
My Favorite MovieMy Favorite Movie
My Favorite Movie
 
My life project
My life projectMy life project
My life project
 
Hool
HoolHool
Hool
 
Impressie Wittenberg
Impressie WittenbergImpressie Wittenberg
Impressie Wittenberg
 
Shim Graphics
Shim GraphicsShim Graphics
Shim Graphics
 

Similar to Services & Products of Optimal Management

Optimal management presentation for investors about supply chains optimization
Optimal management presentation for investors about supply chains optimizationOptimal management presentation for investors about supply chains optimization
Optimal management presentation for investors about supply chains optimization
Andrey Sukhobokov
 
Giacomo Squintani, PTC presenation at Spare Parts 2013
Giacomo Squintani, PTC presenation at Spare Parts 2013Giacomo Squintani, PTC presenation at Spare Parts 2013
Giacomo Squintani, PTC presenation at Spare Parts 2013
Copperberg
 
Transforming supply chain Harish Bawari - Hero MotoCorp May 2016
Transforming supply chain Harish Bawari - Hero MotoCorp May 2016Transforming supply chain Harish Bawari - Hero MotoCorp May 2016
Transforming supply chain Harish Bawari - Hero MotoCorp May 2016
INDUSCommunity
 
Business Intelligence in Upstream-Downstream
Business Intelligence in Upstream-DownstreamBusiness Intelligence in Upstream-Downstream
Business Intelligence in Upstream-Downstream
Nirav Modh
 
how_rockwell_automation_optimized_its_product_costing_process
how_rockwell_automation_optimized_its_product_costing_processhow_rockwell_automation_optimized_its_product_costing_process
how_rockwell_automation_optimized_its_product_costing_process
John Jordan
 
Optimal Management on Startup Village
Optimal Management on Startup VillageOptimal Management on Startup Village
Optimal Management on Startup Village
Andrey Sukhobokov
 
Genpact Logistics Analytics - Unlock hidden value from your logistics operati...
Genpact Logistics Analytics - Unlock hidden value from your logistics operati...Genpact Logistics Analytics - Unlock hidden value from your logistics operati...
Genpact Logistics Analytics - Unlock hidden value from your logistics operati...
Genpact Ltd
 
Acando scm seminarium 19 april
Acando scm seminarium 19 aprilAcando scm seminarium 19 april
Acando scm seminarium 19 april
Acando Sweden
 
International Business- Global production slides
International Business- Global production slidesInternational Business- Global production slides
International Business- Global production slides
americaninternationa5
 
RowanDay3.pptx
RowanDay3.pptxRowanDay3.pptx
RowanDay3.pptx
MattMarino13
 
Magento B2B e-Commerce
Magento B2B e-CommerceMagento B2B e-Commerce
Magento B2B e-Commerce
Divante
 
Paolo Gallibci, Electrolux presentation at Spare Parts 2013
Paolo Gallibci, Electrolux presentation at Spare Parts 2013Paolo Gallibci, Electrolux presentation at Spare Parts 2013
Paolo Gallibci, Electrolux presentation at Spare Parts 2013
Copperberg
 
1) Question Add Targets to Balanced score Card
1) Question  Add Targets to Balanced score Card1) Question  Add Targets to Balanced score Card
1) Question Add Targets to Balanced score Card
MartineMccracken314
 
1) Question Add Targets to Balanced score Card
1) Question  Add Targets to Balanced score Card1) Question  Add Targets to Balanced score Card
1) Question Add Targets to Balanced score Card
AbbyWhyte974
 
1) question add targets to balanced score card
1) question  add targets to balanced score card1) question  add targets to balanced score card
1) question add targets to balanced score card
smile790243
 
Unit v
Unit vUnit v
Créer la valeur dans l'économie digitale - Industrie du futur
Créer la valeur dans l'économie digitale - Industrie du futurCréer la valeur dans l'économie digitale - Industrie du futur
Créer la valeur dans l'économie digitale - Industrie du futur
Philippe Geoffroy
 
ITMAGINATION - competences, facts, technologies, clients
ITMAGINATION - competences, facts, technologies, clientsITMAGINATION - competences, facts, technologies, clients
ITMAGINATION - competences, facts, technologies, clients
ITMAGINATION
 
Big Data Benchmarking, Tomas Pariente Lobo, Open Expo Europe, 20/06/2019
Big Data Benchmarking, Tomas Pariente Lobo, Open Expo Europe, 20/06/2019Big Data Benchmarking, Tomas Pariente Lobo, Open Expo Europe, 20/06/2019
Big Data Benchmarking, Tomas Pariente Lobo, Open Expo Europe, 20/06/2019
DataBench
 
Jk cements case study
Jk cements case studyJk cements case study
Jk cements case study
jktmktg
 

Similar to Services & Products of Optimal Management (20)

Optimal management presentation for investors about supply chains optimization
Optimal management presentation for investors about supply chains optimizationOptimal management presentation for investors about supply chains optimization
Optimal management presentation for investors about supply chains optimization
 
Giacomo Squintani, PTC presenation at Spare Parts 2013
Giacomo Squintani, PTC presenation at Spare Parts 2013Giacomo Squintani, PTC presenation at Spare Parts 2013
Giacomo Squintani, PTC presenation at Spare Parts 2013
 
Transforming supply chain Harish Bawari - Hero MotoCorp May 2016
Transforming supply chain Harish Bawari - Hero MotoCorp May 2016Transforming supply chain Harish Bawari - Hero MotoCorp May 2016
Transforming supply chain Harish Bawari - Hero MotoCorp May 2016
 
Business Intelligence in Upstream-Downstream
Business Intelligence in Upstream-DownstreamBusiness Intelligence in Upstream-Downstream
Business Intelligence in Upstream-Downstream
 
how_rockwell_automation_optimized_its_product_costing_process
how_rockwell_automation_optimized_its_product_costing_processhow_rockwell_automation_optimized_its_product_costing_process
how_rockwell_automation_optimized_its_product_costing_process
 
Optimal Management on Startup Village
Optimal Management on Startup VillageOptimal Management on Startup Village
Optimal Management on Startup Village
 
Genpact Logistics Analytics - Unlock hidden value from your logistics operati...
Genpact Logistics Analytics - Unlock hidden value from your logistics operati...Genpact Logistics Analytics - Unlock hidden value from your logistics operati...
Genpact Logistics Analytics - Unlock hidden value from your logistics operati...
 
Acando scm seminarium 19 april
Acando scm seminarium 19 aprilAcando scm seminarium 19 april
Acando scm seminarium 19 april
 
International Business- Global production slides
International Business- Global production slidesInternational Business- Global production slides
International Business- Global production slides
 
RowanDay3.pptx
RowanDay3.pptxRowanDay3.pptx
RowanDay3.pptx
 
Magento B2B e-Commerce
Magento B2B e-CommerceMagento B2B e-Commerce
Magento B2B e-Commerce
 
Paolo Gallibci, Electrolux presentation at Spare Parts 2013
Paolo Gallibci, Electrolux presentation at Spare Parts 2013Paolo Gallibci, Electrolux presentation at Spare Parts 2013
Paolo Gallibci, Electrolux presentation at Spare Parts 2013
 
1) Question Add Targets to Balanced score Card
1) Question  Add Targets to Balanced score Card1) Question  Add Targets to Balanced score Card
1) Question Add Targets to Balanced score Card
 
1) Question Add Targets to Balanced score Card
1) Question  Add Targets to Balanced score Card1) Question  Add Targets to Balanced score Card
1) Question Add Targets to Balanced score Card
 
1) question add targets to balanced score card
1) question  add targets to balanced score card1) question  add targets to balanced score card
1) question add targets to balanced score card
 
Unit v
Unit vUnit v
Unit v
 
Créer la valeur dans l'économie digitale - Industrie du futur
Créer la valeur dans l'économie digitale - Industrie du futurCréer la valeur dans l'économie digitale - Industrie du futur
Créer la valeur dans l'économie digitale - Industrie du futur
 
ITMAGINATION - competences, facts, technologies, clients
ITMAGINATION - competences, facts, technologies, clientsITMAGINATION - competences, facts, technologies, clients
ITMAGINATION - competences, facts, technologies, clients
 
Big Data Benchmarking, Tomas Pariente Lobo, Open Expo Europe, 20/06/2019
Big Data Benchmarking, Tomas Pariente Lobo, Open Expo Europe, 20/06/2019Big Data Benchmarking, Tomas Pariente Lobo, Open Expo Europe, 20/06/2019
Big Data Benchmarking, Tomas Pariente Lobo, Open Expo Europe, 20/06/2019
 
Jk cements case study
Jk cements case studyJk cements case study
Jk cements case study
 

Recently uploaded

Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)
Jakub Marek
 
Mutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented ChatbotsMutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented Chatbots
Pablo Gómez Abajo
 
Y-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PPY-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PP
c5vrf27qcz
 
"$10 thousand per minute of downtime: architecture, queues, streaming and fin...
"$10 thousand per minute of downtime: architecture, queues, streaming and fin..."$10 thousand per minute of downtime: architecture, queues, streaming and fin...
"$10 thousand per minute of downtime: architecture, queues, streaming and fin...
Fwdays
 
Introduction of Cybersecurity with OSS at Code Europe 2024
Introduction of Cybersecurity with OSS  at Code Europe 2024Introduction of Cybersecurity with OSS  at Code Europe 2024
Introduction of Cybersecurity with OSS at Code Europe 2024
Hiroshi SHIBATA
 
How to Interpret Trends in the Kalyan Rajdhani Mix Chart.pdf
How to Interpret Trends in the Kalyan Rajdhani Mix Chart.pdfHow to Interpret Trends in the Kalyan Rajdhani Mix Chart.pdf
How to Interpret Trends in the Kalyan Rajdhani Mix Chart.pdf
Chart Kalyan
 
Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
Biomedical Knowledge Graphs for Data Scientists and BioinformaticiansBiomedical Knowledge Graphs for Data Scientists and Bioinformaticians
Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
Neo4j
 
QA or the Highway - Component Testing: Bridging the gap between frontend appl...
QA or the Highway - Component Testing: Bridging the gap between frontend appl...QA or the Highway - Component Testing: Bridging the gap between frontend appl...
QA or the Highway - Component Testing: Bridging the gap between frontend appl...
zjhamm304
 
Apps Break Data
Apps Break DataApps Break Data
Apps Break Data
Ivo Velitchkov
 
Christine's Supplier Sourcing Presentaion.pptx
Christine's Supplier Sourcing Presentaion.pptxChristine's Supplier Sourcing Presentaion.pptx
Christine's Supplier Sourcing Presentaion.pptx
christinelarrosa
 
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
Edge AI and Vision Alliance
 
Session 1 - Intro to Robotic Process Automation.pdf
Session 1 - Intro to Robotic Process Automation.pdfSession 1 - Intro to Robotic Process Automation.pdf
Session 1 - Intro to Robotic Process Automation.pdf
UiPathCommunity
 
JavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green MasterplanJavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green Masterplan
Miro Wengner
 
Poznań ACE event - 19.06.2024 Team 24 Wrapup slidedeck
Poznań ACE event - 19.06.2024 Team 24 Wrapup slidedeckPoznań ACE event - 19.06.2024 Team 24 Wrapup slidedeck
Poznań ACE event - 19.06.2024 Team 24 Wrapup slidedeck
FilipTomaszewski5
 
Leveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and StandardsLeveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and Standards
Neo4j
 
Principle of conventional tomography-Bibash Shahi ppt..pptx
Principle of conventional tomography-Bibash Shahi ppt..pptxPrinciple of conventional tomography-Bibash Shahi ppt..pptx
Principle of conventional tomography-Bibash Shahi ppt..pptx
BibashShahi
 
Demystifying Knowledge Management through Storytelling
Demystifying Knowledge Management through StorytellingDemystifying Knowledge Management through Storytelling
Demystifying Knowledge Management through Storytelling
Enterprise Knowledge
 
GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)
Javier Junquera
 
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptxPRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
christinelarrosa
 
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
Fwdays
 

Recently uploaded (20)

Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)
 
Mutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented ChatbotsMutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented Chatbots
 
Y-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PPY-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PP
 
"$10 thousand per minute of downtime: architecture, queues, streaming and fin...
"$10 thousand per minute of downtime: architecture, queues, streaming and fin..."$10 thousand per minute of downtime: architecture, queues, streaming and fin...
"$10 thousand per minute of downtime: architecture, queues, streaming and fin...
 
Introduction of Cybersecurity with OSS at Code Europe 2024
Introduction of Cybersecurity with OSS  at Code Europe 2024Introduction of Cybersecurity with OSS  at Code Europe 2024
Introduction of Cybersecurity with OSS at Code Europe 2024
 
How to Interpret Trends in the Kalyan Rajdhani Mix Chart.pdf
How to Interpret Trends in the Kalyan Rajdhani Mix Chart.pdfHow to Interpret Trends in the Kalyan Rajdhani Mix Chart.pdf
How to Interpret Trends in the Kalyan Rajdhani Mix Chart.pdf
 
Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
Biomedical Knowledge Graphs for Data Scientists and BioinformaticiansBiomedical Knowledge Graphs for Data Scientists and Bioinformaticians
Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
 
QA or the Highway - Component Testing: Bridging the gap between frontend appl...
QA or the Highway - Component Testing: Bridging the gap between frontend appl...QA or the Highway - Component Testing: Bridging the gap between frontend appl...
QA or the Highway - Component Testing: Bridging the gap between frontend appl...
 
Apps Break Data
Apps Break DataApps Break Data
Apps Break Data
 
Christine's Supplier Sourcing Presentaion.pptx
Christine's Supplier Sourcing Presentaion.pptxChristine's Supplier Sourcing Presentaion.pptx
Christine's Supplier Sourcing Presentaion.pptx
 
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
 
Session 1 - Intro to Robotic Process Automation.pdf
Session 1 - Intro to Robotic Process Automation.pdfSession 1 - Intro to Robotic Process Automation.pdf
Session 1 - Intro to Robotic Process Automation.pdf
 
JavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green MasterplanJavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green Masterplan
 
Poznań ACE event - 19.06.2024 Team 24 Wrapup slidedeck
Poznań ACE event - 19.06.2024 Team 24 Wrapup slidedeckPoznań ACE event - 19.06.2024 Team 24 Wrapup slidedeck
Poznań ACE event - 19.06.2024 Team 24 Wrapup slidedeck
 
Leveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and StandardsLeveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and Standards
 
Principle of conventional tomography-Bibash Shahi ppt..pptx
Principle of conventional tomography-Bibash Shahi ppt..pptxPrinciple of conventional tomography-Bibash Shahi ppt..pptx
Principle of conventional tomography-Bibash Shahi ppt..pptx
 
Demystifying Knowledge Management through Storytelling
Demystifying Knowledge Management through StorytellingDemystifying Knowledge Management through Storytelling
Demystifying Knowledge Management through Storytelling
 
GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)
 
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptxPRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
 
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
 

Services & Products of Optimal Management

  • 1. Optimal Management, LLC Resident at Skolkovo Innovation Center Winner of Enterprise Applications & Big Data pitch session at Startup Village 2013 in Skolkovo Participant in Platform Development Accelerator for SAP HANA Participant in SAP Startup Focus Development Accelerator Participant in IBM Global Entrepreneur Participant in IBM PartnerWorld We use mathematical models and optimization methods for management of enterprises
  • 2. 2 Problem We solve a compelling challenge within Enterprise Management: • Optimization of internal supply chains for multinational companies that yields the largest after tax profit for the enterprise To solve this problem we use heavy mathematical models, new computational algorithms, Big Data tools and parallel computing cluster power. Our deep optimization can increase the profit of a multinational enterprise to 5-10% and more.
  • 3. 3 Problem Optimization of Internal Supply Chains for Multinational Companies How to establish the most efficient Flow of Goods and Transfer Prices if subsidiaries are in multiple countries?
  • 4. 4 • Expansion of globalization leads to complex supply chains • Tax authorities increase tax requirements across the world • Current optimization techniques use methods of linear programming and therefore are limited in scope • Optimization calculations for a mid size company involve millions of variables and several terabytes of data Background of the Problem
  • 5. 5 • Currently, tasks of logistics optimization and tax optimization are solved sequentially: - At first Supply Chain planning systems calculate the best Flow of Goods, providing minimization of costs; - Later tax planning systems calculate the transfer prices, providing the maximization of profit for global company; - In both stages, tasks of linear programming are solved. • The result of such sequential optimization does not provide the most optimal solution. Only by optimizing both - Flow of Goods and Transfer Prices simultaneously a combination can be found that yields the most profit . Current practice
  • 6. 6 Our approach Simultaneous solving of complex problem Using Hadoop as Low Cost Super Computer • Use math models of quadratic programing, new numerical methods of optimization and optimal control theory • Modeling and Optimization on SAP HANA and Hadoop • Seamless integration with SAP Business Suite SAP HANA SAP ERP SAP APO Hadoop Cluster
  • 7. 7 Supply chain structure is constructed by taking into account the multistage nature of manufacturing processes. The Multinational Supply Chain includes: • Countries (various tax jurisdictions) • Internal and external suppliers • Manufacturing plants • Distribution centers • Market zones • Items of goods (including all raw materials, semi- products, finished products) • Available transportation routes Supply chain structure
  • 8. 8 Adaptation of mathematical model The model describes multistage nature of manufacturing process. The model can be static or dynamic (including time).
  • 9. 9 • Simultaneous optimization of Good Flows and Transfer Prices can increase the profit of multinational enterprise up to 5% and more. • The more advanced the supply chain (more goods positions and more nodes in chain), the greater the effect of simultaneous optimization of flow of goods and transfer prices. • Additional 2-4% of profit after deeper optimization of internal supply chains by adapting mathematical models that are capable of taking into account existing price forecasts in various markets as well as differing time-to-market characteristics between various chains. Customer Opportunity
  • 10. 10 The following items are determined: • Total maximum profit of Enterprise after taxation as well as parameters that led to such result: • Volume of each good that needs to be transported on each route between subsidiaries participating in the supply chain • Transfer prices that need to be established between the subsidiaries • Allocation of transportation costs between seller and buyer for each pair of participants in transportation Optimization results
  • 11. 11 • Maximal capacity of each node of supply chain • Resource consumption of each node of supply chain while producing some product • Procurement costs (excl. duties) of raw materials shipped from external suppliers • Fixed and variable costs on each node of supply chain • Amount of raw material needed on each plant to produce one unit of product • Inventory cost of process loss and safety stock of each node of supply chain • Transportation costs per unit of each product on each route • Forecasted demand on each finished product in each market zone • Market price of each finished product in each market zone • Import and export duties • Corporate tax rate of each country • Lower and upper bounds of the transfer prices on each product between each pair of countries Static model accounts for:
  • 12. 12 Dynamic model is an extension of static model. Dynamic model takes into account the following additional aspects: • Number of time intervals in common time period of modelling • Delivery time on each transportation route • Following parameters depending on time intervals: – Forecasted prices and demand for each market zone – Forecasted manufacturing costs – Forecasted transportation costs – Forecasted currency exchange rates Additional results of optimization: • Time of manufacturing start and shipping on each node of supply chain • Forecasted sales figures for each market zone depending on time Dynamic models
  • 13. 13 Results Type of model Model 1 Model 2 Number of manufacturing stages 1 1 Total number of suppliers 11 50 Number of internal suppliers 3 12 Number of manufacturing plants 3 8 Number of distribution centers 8 10 Number of market zones 20 80 Number of raw materials and components 10 35 Number of finished products 5 12 Effect of optimization 2,08% 4,90% Results of optimization on test data (static model)
  • 14. 14 Potential customers Described problem is crucial for to the most industrial companies that run subsidiary business units and competing for the customers on global level. Most of the large business companies as well as the higher level of middle business companies fit these criteria. Our potential clients can be from various industries: • Oil and gas; • Ferrous and non-ferrous metallurgy; • Chemistry and petro chemistry; • Production of building materials; • Food industry; • Consumer products industry; • Pharmaceutics and bioengineering; • …
  • 15. 15 Team • Experienced CEO with years of executive experience • World renowned CSO • 2 Dr.Sc and 2 Ph.D • 200+ publications on Optimal Control and Optimization • SAP guru consultants on EAM and SCM • Experienced Project Managers and Architects • International experience • Combination of silver maturity and enthusiasm of youth • Attracting most talented students
  • 16. 16 Solution as a service While product is developing, we offer solution as a service. The entire service process consists of following steps: • Gathering of basic structure of customer’s supply chain • Estimation of costs on calculation and full data gathering • Approval for parameters taking into account • Fitting of the math model to the client • Gathering all necessary data for the developed model • Transformation of gathered data into computational model • Performing the calculation • Applying of results By analogy to the tasks of logistics optimization, static model calculates for 18 months ahead every 6 months. Dynamic model calculates weekly or monthly.
  • 17. 17 Contacts Contact persons: • In USA & Great Britain – Vitaliy Baklikov phone: +1 240 620 1229 e-mail: vitaliy.baklikov@optimalmngmnt.com • In Russia & CIS – Andrey Sukhobokov phone: +7 903 577 9667 e-mail: andrey.sukhobokov@optimalmngmnt.com