02 connecting your business with ai and big...

Post on 05-Jul-2020

1 Views

Category:

Documents

0 Downloads

Preview:

Click to see full reader

TRANSCRIPT

© 2015, Amazon Web Services, Inc. or its Affiliates. All rights reserved.

Connecting your Business with AI and Big Data

Thomas Reske, treske@amazon.de

Why?

Machine Learning &

Artificial Intelligence

Big Data

More Users Better Products

More Data Better Analytics

A Flywheel For Data

How?

Who are internal stakeholders?

Interests

Data Architect Data Scientist Data Engineer

• Data quality• Structure• Governance• Data discovery• Security• Compliance• Long-term platform• …

• Data discovery• Data quality• Exploratory Analysis• Visualization• Building models• Scalability• Model discovery• …

• Integration• ETL• Scalability• Robustness• Delivery + Pipeline• Data platform• SDKs + APIs• Service endpoints• …

Interests

Analyst Product/Program Owner Executive Management

• Discovery• Business models• Processes• Metrics + KPI• Monitoring• Reporting• Visualisation• …

• Cycle times• Flow and delivery• Roadmap• Learning• Costs• Friction• …

• Vision• Strategy• Innovation + Ideation• Time to Value• (R)Evolution• HRM + Talent• Collaboration• Costs• ...

Challenges and Goals

Executive Management Harness artificial intelligence and machine learning to take and gain

(competitive) advantage

Data Architect Shape a compliant, secure data solution from which the firm benefits over the long term

Data Scientist Minimize plumbing and clean-up work and maximize value creationvia analyzing, building and evaluating models

Data Engineer Provide secure access to clean, easy-to-use data for a variety of consumers and building robust, scalable data pipelines

Analyst Dissect complex business problems and creatively identify use cases

for machine learning and artificial intelligence

Product/Program Owner Describe requirements and vision of the product and manage its complete lifecycle from inception to operations

Process

Business

Understanding

Data

Preparation

ModelingDeployment

Evaluation

Data

Understanding

Process

Business

Understanding

Data

Preparation

ModelingDeployment

Evaluation

Data

Understanding

Key Activities

• ingestion and/or acquisition of data

• manage data storage, e.g. lifecycle policies

• data governance, e.g. ACLs or licensing

• …

Process

Business

Understanding

Data

Preparation

ModelingDeployment

Evaluation

Data

Understanding

Key Activities

• scenario definition and problem formulation

• cast business problem as data science problem

• identify key metrics • discovery of data sources• …

Process

Business

Understanding

Data

Preparation

ModelingDeployment

Evaluation

Data

Understanding

Key Activities

• assess strengths and limitations, e.g. reliability

• estimate “cost” of data• arrange data collection and

acquisition• initial cleaning and

matching data sources• surface and uncover

relation of data to business problem

• …

Process

Business

Understanding

Data

Preparation

ModelingDeployment

Evaluation

Data

Understanding

Key Activities

• data manipulation and conversion, e.g. formatting

• infer missing values• normalization of data• addressing leakage issues• …

Process

Business

Understanding

Data

Preparation

ModelingDeployment

Evaluation

Data

Understanding

Key Activities

• formulate, create and build model

• apply machine learning and data mining techniques and algorithms

• …

Process

Business

Understanding

Data

Preparation

ModelingDeployment

Evaluation

Data

Understanding

Key Activities

• assessment of results and practicability

• test model and gain confidence

• review match with business needs

• “in vivo” evaluation and experiments

• sign-off• …

Process

Business

Understanding

Data

Preparation

ModelingDeployment

Evaluation

Data

Understanding

Key Activities

• re-code for production• deployment of systems,

processes or procedures• monitor KPIs• ...

Process

Business

Understanding

Data

Preparation

ModelingDeployment

Evaluation

Data

Understanding

Key Activities

• manage and optimize process lifecycle, e.g. reduce friction, cycle times and facilitate collaboration

Key Points

• focus on common understanding of end-to-end

process, adjust appropriately• use model to gauge and assess maturity

• model serves well to describe vision (not mature) or to structure concerns and issues (very mature)

• not (necessarily) those that have the “smartest” people or algorithm succeed, but those that master the cycle

and process flow

Technology

https://www.slideshare.net/AmazonWebServices/big-ddata-architectural-patterns-and-best-practices-on-aws

What will you build?

Thank You

Thomas Reske, treske@amazon.de

top related