Title: Pharma Business Solutions
1Pharma Business Solutions
2Competition in Pharma
- To stay competitive and increase profitability,
manufacturers need to address complex challenges - Regulatory compliance
- Top product quality
- Time to Market
- Global manufacturing competition
- Optimization of Supply Chain
- Satisfaction of local requirements
- Optimized ROI of equipment systems
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13Process Analytical Technology (PAT)
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19MANUFACTURING
20Data Collection
- Data feed through forms
- Data feed through interfaces
- Data cleaning
- Data formatting
- Data Storage
- Past Data Storage and integration
21Defining Business Requirements
- Reports Definition
- Frequency of Reports Definition
- Login Control
- Information Control
- Reporting formats definition
- Software and hardware available
- Software and hardware required
- Gap Analysis
22Designing System Architecture
- Creating Draft System Architecture
- Customer Presentation
- Customer Feedback
- Designing Solution Architecture
- Solution Variants
- Generating Requirement Compliance
- Gap Analysis
23Agreement Document
- Agreement Document Definition
- Non-Disclosure Agreement
- Pricing of Services and Payment Schedule
- Inclusion of Service Tax and VAT/Sales Tax
- Change Management
- Change Pricing Mechanism
- Commercial terms and conditions
- Jurisdiction decision
24Detailed Block Design
- Detailed Block Diagram design taking all customer
requirements - Creating Systems Modules
- Creating Operating Systems Requirements
- Operating System License Definition and pricing
- Data Base Server Definition and User Licensing
- Database Server Pricing
- Hardware Requirements and hardware Pricing
- Networking Requirements and Network Pricing
25Data Base Design
- Architecture of Database
- Tables Design
- Stored Procedures Design
- Triggers Design
- Interfaces Design
- Design of Data Integration Applications
- Design of Reporting Applications
- Security of Database
- Logins and passwords management
- Web interfaces and applications design
- Data Downloading from web database
26Business Intelligence Applications
- Generating Multi Dimensional Cubes
- Generating Multiple Dimensions
- Dimensional Analysis
- KPIs
- Business Intelligence Analyzing Algorithms
- Formula Storage
- Reports Generation
27Systems Deployment
- Lab tested systems are deployed on customers
servers - Integration Customers existing systems
- Total System Integration
- System Beta Testing
- Gap analysis
- Design Modifications and Application Tuning
- Re-deployment of applications
28Customer Training
- Training of Customer staff
- Training of Customer Information Technology Staff
- Handover of Complete Systems
29Warranty and After Sales support
- Warranty of applications
- After sales support for 1 year
- Annual Maintenance Contract
30Information required at different management
levels
31Levels of Management Decision Making
- Strategic management
- Executives develop organizational goals,
strategies, policies, and objectives - As part of a strategic planning process
- Tactical management
- Managers and business professionals in
self-directed teams - Develop short- and medium-range plans, schedules
and budgets - Specify the policies, procedures and business
objectives for their subunits
32Levels of Management Decision Making
- Operational management
- Managers or members of self-directed teams
- Develop short-range plans such as weekly
production schedules
33Information Quality
- Information products whose characteristics,
attributes, or qualities make the information
more value - Information has 3 dimensions
- Time
- Content
- Form
34Attributes of Information Quality
35Decision Structure
- Structured situations where the procedures to
follow when a decision is needed can be specified
in advance - Unstructured decision situations where it is
not possible to specify in advance most of the
decision procedures to follow - Semistructured - decision procedures that can be
prespecified, but not enough to lead to a
definite recommended decision
36Information Systems to support decisions
37Decision Support Trends
- Personalized proactive decision analytics
- Web-Based applications
- Decisions at lower levels of management and by
teams and individuals - Business intelligence applications
38Business Intelligence Applications
39Decision Support Systems
- DSS
- Provide interactive information support to
managers and business professionals during the
decision-making process - Use
- Analytical models
- Specialized databases
- A decision makers own insights and judgments
- Interactive computer-based modeling
- To support semistructured business decisions
40DSS components
41DSS Model base
- Model base
- A software component that consists of models used
in computational and analytical routines that
mathematically express relations among variables - Examples
- Linear programming models,
- Multiple regression forecasting models
- Capital budgeting present value models
42Management Information Systems
- MIS
- Produces information products that support many
of the day-to-day decision-making needs of
managers and business professionals - Prespecified reports, displays and responses
- Support more structured decisions
43MIS Reporting Alternatives
- Periodic Scheduled Reports
- Prespecified format on a regular basis
- Exception Reports
- Reports about exceptional conditions
- May be produced regularly or when exception
occurs - Demand Reports and Responses
- Information available when demanded
- Push Reporting
- Information pushed to manager
44Online Analytical Processing
- OLAP
- Enables mangers and analysts to examine and
manipulate large amounts of detailed and
consolidated data from many perspectives - Done interactively in real time with rapid
response
45OLAP Analytical Operations
- Consolidation
- Aggregation of data
- Drill-down
- Display detail data that comprise consolidated
data - Slicing and Dicing
- Ability to look at the database from different
viewpoints
46OLAP Technology
47Geographic Information Systems
- GIS
- DSS that uses geographic databases to construct
and display maps and other graphics displays - That support decisions affecting the geographic
distribution of people and other resources - Often used with Global Position Systems (GPS)
devices
48Data Visualization Systems
- DVS
- DSS that represents complex data using
interactive three-dimensional graphical forms
such as charts, graphs, and maps - DVS tools help users to interactively sort,
subdivide, combine, and organize data while it is
in its graphical form.
49Using DSS
- What-if Analysis
- End user makes changes to variables, or
relationships among variables, and observes the
resulting changes in the values of other
variables - Sensitivity Analysis
- Value of only one variable is changed repeatedly
and the resulting changes in other variables are
observed
50Using DSS
- Goal-Seeking
- Set a target value for a variable and then
repeatedly change other variables until the
target value is achieved - How can analysis
- Optimization
- Goal is to find the optimum value for one or more
target variables given certain constraints - One or more other variables are changed
repeatedly until the best values for the target
variables are discovered
51Data Mining
- Main purpose is to provide decision support to
managers and business professionals through
knowledge discovery - Analyzes vast store of historical business data
- Tries to discover patterns, trends, and
correlations hidden in the data that can help a
company improve its business performance - Use regression, decision tree, neural network,
cluster analysis, or market basket analysis
52Market Basket Analysis
- One of most common data mining for marketing
- The purpose is to determine what products
customers purchase together with other products
53Executive Information Systems
- EIS
- Combine many features of MIS and DSS
- Provide top executives with immediate and easy
access to information - About the factors that are critical to
accomplishing an organizations strategic
objectives (Critical success factors) - So popular, expanded to managers, analysts and
other knowledge workers
54Features of an EIS
- Information presented in forms tailored to the
preferences of the executives using the system - Customizable graphical user interfaces
- Exception reporting
- Trend analysis
- Drill down capability
55Enterprise Interface Portals
- EIP
- Web-based interface
- Integration of MIS, DSS, EIS, and other
technologies - Gives all intranet users and selected extranet
users access - To a variety of internal and external business
applications and services - Typically tailored to the user giving them a
personalized digital dashboard
56Enterprise Information Portal Components
57Knowledge Management Systems
- The use of information technology to help gather,
organize, and share business knowledge within an
organization - Enterprise Knowledge Portals
- EIPs that are the entry to corporate intranets
that serve as knowledge management systems
58Enterprise Knowledge Portals
59Case 2 Artificial IntelligenceThe Dawn of the
Digital Brain
- Numenta will translate the way the brain works
into an algorithm that can run on a new type of
computer - The human brain does not work like a computer
- Intelligence, according to Hawkins, is pattern
recognition
60Artificial Intelligence (AI)
- A field of science and technology based on
disciplines such as computer science, biology,
psychology, linguistics, mathematics, and
engineering - Goal is to develop computers that can simulate
the ability to think, as well as see, hear, walk,
talk, and feel
61Attributes of Intelligent Behavior
- Think and reason
- Use reason to solve problems
- Learn or understand from experience
- Acquire and apply knowledge
- Exhibit creativity and imagination
- Deal with complex or perplexing situations
- Respond quickly and successfully to new
situations - Recognize the relative importance of elements in
a situation - Handle ambiguous, incomplete, or erroneous
information
62Domains of Artificial Intelligence
63Cognitive Science
- Based in biology, neurology, psychology, etc.
- Focuses on researching how the human brain works
and how humans think and learn
64Robotics
- Based in AI, engineering and physiology
- Robot machines with computer intelligence and
computer controlled, humanlike physical
capabilities
65Natural Interfaces
- Based in linguistics, psychology, computer
science, etc. - Includes natural language and speech recognition
- Development of multisensory devices that use a
variety of body movements to operate computers - Virtual reality
- Using multisensory human-computer interfaces that
enable human users to experience
computer-simulated objects, spaces and worlds
as if they actually exist
66Expert Systems
- ES
- A knowledge-based information system (KBIS) that
uses its knowledge about a specific, complex
application to act as an expert consultant to end
users - KBIS is a system that adds a knowledge base to
the other components on an IS
67Expert System Components
- Knowledge Base
- Facts about specific subject area
- Heuristics that express the reasoning procedures
of an expert (rules of thumb) - Software Resources
- Inference engine processes the knowledge and
makes inferences to make recommend course of
action - User interface programs to communicate with end
user - Explanation programs to explain the reasoning
process to end user
68Expert System Components
69Methods of Knowledge Representation
- Case-Based knowledge organized in form of cases
- Cases examples of past performance, occurrences
and experiences - Frame-Based knowledge organized in a hierarchy
or network of frames - Frames entities consisting of a complex package
of data values
70Methods of Knowledge Representation
- Object-Based knowledge organized in network of
objects - Objects data elements and the methods or
processes that act on those data - Rule-Based knowledge represented in rules and
statements of fact - Rules statements that typically take the form
of a premise and a conclusion - Such as, If (condition) then (conclusion)
71Expert System Benefits
- Faster and more consistent than an expert
- Can have the knowledge of several experts
- Does not get tired or distracted by overwork or
stress - Helps preserve and reproduce the knowledge of
experts
72Expert System Limitations
- Limited focus
- Inability to learn
- Maintenance problems
- Developmental costs
- Can only solve specific types of problems in a
limited domain of knowledge
73Suitability Criteria for Expert Systems
- Domain subject area relatively small and
limited to well-defined area - Expertise solutions require the efforts of an
expert - Complexity solution of the problem is a complex
task that requires logical inference processing
(not possible in conventional information
processing) - Structure solution process must be able to cope
with ill-structured, uncertain, missing and
conflicting data - Availability an expert exists who is articulate
and cooperative
74Development Tool
- Expert System Shell
- Software package consisting of an expert system
without its knowledge base - Has inference engine and user interface programs
75Knowledge Engineer
- A professional who works with experts to capture
the knowledge they possess - Builds the knowledge base using an iterative,
prototyping process
76Neural Networks
- Computing systems modeled after the brains
mesh-like network of interconnected processing
elements, called neurons - Interconnected processors operate in parallel and
interact with each other - Allows network to learn from data it processes
77Fuzzy Logic
- Method of reasoning that resembles human
reasoning - Allows for approximate values and inferences and
incomplete or ambiguous data instead of relying
only on crisp data - Uses terms such as very high rather than
precise measures
78Genetic Algorithms
- Software that uses
- Darwinian (survival of the fittest), randomizing,
and other mathematical functions - To simulate an evolutionary process that can
yield increasingly better solutions to a problem
79Virtual Reality (VR)
- Computer-simulated reality
- Relies on multisensory input/output devices such
as - a tracking headset with video goggles and stereo
earphones, - a data glove or jumpsuit with fiber-optic sensors
that track your body movements, and - a walker that monitors the movement of your feet
80Intelligent Agents
- A software surrogate for an end user or a process
that fulfills a stated need or activity - Uses its built-in and learned knowledge base
- To make decisions and accomplish tasks in a way
that fulfills the intentions of a user - Also called software robots or bots
81User Interface Agents
- Interface Tutors observe user computer
operations, correct user mistakes, and provide
hints and advice on efficient software use - Presentation show information in a variety of
forms and media based on user preferences - Network Navigation discover paths to
information and provide ways to view information
based on user preferences - Role-Playing play what-if games and other roles
to help users understand information and make
better decisions
82Information Management Agents
- Search Agents help users find files and
databases, search for desired information, and
suggest and find new types of information
products, media, and resources - Information Brokers provide commercial services
to discover and develop information resources
that fit the business or personal needs of a user - Information Filters receive, find, filter,
discard, save, forward, and notify users about
products received or desired
83Data Mining as an Application Platform
84What is Data Mining Anyway?
- Machine learning of patterns in data
- Application of patterns to new data
85What is Data Mining Anyway?
- Machine learning of patterns in data
- Application of patterns to new data
86Comparative BenefitsPredictive Projects versus
Nonpredictive Projects
87What Does Data Mining Do?
Explores Your Data
Finds Patterns
Performs Predictions
88What does Data Mining do?Illustrated
DB data Client data Application data
DB data Client data Application data Just one
row
DM Engine
DM Engine
Predicted Data
89Data Mining Extensions to SQL (DMX)
CREATE MINING MODEL CreditRisk (CustID LONG
KEY, Gender TEXT DISCRETE, Income
LONG CONTINUOUS, Profession TEXT
DISCRETE, Risk TEXT DISCRETE PREDICT) USING
Microsoft_Decision_Trees
INSERT INTO CreditRisk (CustId, Gender, Income,
Profession, Risk) Select CustomerID, Gender,
Income, Profession,Risk From Customers
Select NewCustomers.CustomerID, CreditRisk.Risk,
PredictProbability(CreditRisk.Risk) FROM
CreditRisk PREDICTION JOIN NewCustomers ON
CreditRisk.GenderNewCustomer.Gender AND
CreditRisk.IncomeNewCustomer.Income AND
CreditRisk.ProfessionNewCustomer.Profession
90Server Mining Architecture
Analysis Services Server
Mining Model
Data Mining Algorithm
91Data Mining ProcessCRISP-DM
Doing Data Mining
Data
Putting Data Mining to Work
www.crisp-dm.org
92Data Mining Process in SQLCRISP-DM
SSAS (OLAP) DSV
SSIS SSAS (OLAP)
Data
Data
SSIS SSAS(OLAP) SSRS Flexible APIs
SSAS (Data Mining)
www.crisp-dm.org
93What Do Data Mining Applications Do?
Finds Patterns
Performs Predictions
94Data Mining Interfaces
C App
VB App
.Net App
Any App
OLEDB for OLAP/DM
ADO/DSO
Any Platform, Any Device
AMO
ADOMD.NET
WAN
XMLA Over TCP/IP
XMLA Over HTTP
Analysis Server (msmdsrv.exe)
OLAP
Data Mining
DM Interfaces
Server ADOMD.NET
.Net Stored Procedures
Microsoft Algorithms
Third Party Algorithms
95Algorithm Training
Algorithm Module
Case Processor (generates and prepares all
training cases)
StartCases
Process One Case
No
Yes
Converged/complete?
Done!
Persist patterns
96DM data flow
New Dataset
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