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AIAACME

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We Are The Data Analytics Service Providers That Open Up Faster Through Data And AI To Help You Scale And Transform Your Advanced Business.

Data Analytics

OVERVIEW

We Provide Data And Analytics Services, Implementation Assistance, And Ongoing Support For The Life Cycle Of Information And Insights. Organisations Can Use Our Data And Analytics Services Independently To Improve Their "Data-to-value" Cycle. This Ensures That The Digital Transformation Strategies We Develop For Our Clients Properly Leverage The Potential Of Data And Analytics Consulting Services.

Any Business Can Benefit From Our Data And Analytics Services And Solutions To Expand And Differentiate. We Identify Use Cases That Can Help You Achieve Your Business Goals And Develop Analytics Solutions With The Right Expertise And Tools. Over Many Years, Your Data Will Be Used To Improve Performance, Resilience And Growth.

Our service offer

Business Intelligence
Business intelligence

Our Mission Is To Provide Practical Solutions To Grow Your Business. We Provide End-to-end Services, From Data Development In The Cloud To Data Processing, Advanced Analytics, Deep-learning Model Building, And Data Visualisation To Help Businesses Spot Trends, Identify Vulnerabilities, And Envision The Future.

Data Technology
Data technology

In Data Management, Analysis, And Research Combines Context With Data To Deliver Valuable Business Insights. We Use NLP - Based Algorithms To Manage Both Structured And Unstructured Data. We Implement Appropriate End-to-end Processes For Data Collection And Management Across All Business Units.

Contextual intelligence
Contextual intelligence

We Provide Companies With Insights That Enable Better Decision Making, And By Examining Social Media Interactions Across Multiple Platforms, We Provide Customer Insights. To Increase Customer Acquisition And Conversion Rates, We Use Ml To Research New Customers And Create Personas That Meet Their Needs.

Analytics Path
Analytics Paths

AI ACME 's Experienced Data Analytics Consulting Services Help You Turn Data Into Actionable Intelligence, Ensure Operational Excellence, And Give You A Competitive Advantage. Our Strategic Data Analytics Consultants Can Help You Solve Your Business Problems In A Matter Of Weeks Because They Have Acknowledged Expertise Across The Data Stack.

Analytics for Supply chain
Analytics for supply chain

AI ACME Supply Chain Analytics Services Help You Optimise Your Supply Chain To Increase Profits And Reduce Costs. Our Knowledgeable Experts Leverage The Full Range Of Supply Chain Data Analytics Technologies And Implement Purpose-built Solutions To Address Supply Chain Issues Specific To Your Business.

Database Management
Database management

Whether Your Data Warehouse Is On-premise or In The Cloud. To Create A Custom Data Warehouse With A Strong Bi Framework, Data Model, Data Integration Architecture, And Intelligent Database That Enables Faster Decision Making And Competitive Advantage, AI ACME Assesses Your Business Needs & Management.

Advantages

Simplification of processes

With The Help Of Our Data And Analytics Service Providers, We Can Improve Operational Efficiency. Supply Chain Data Can Be Collected And Analysed To Identify Bottlenecks Or Delays In Production And Predict Potential Future Issues. If A Demand Forecast Indicates That This Supplier Will Not Be Able To Handle The Volume Needed For The Holiday Season, A Company May Decide To Supplement Or Replace It.

Advantages

Personalise the customer experience

We Are The Data And Analytics Service Providers Who Help Companies To Collect Customer Information From A Variety Of Sources, Including Social Media, Traditional Retail And E-commerce. Companies Can Learn About Consumer Behaviour To Provide More Personalised Experience By Using Data Analytics And Create Comprehensive Customer Profiles From That Data.

Advantages

Promoting sound business decisions

Businesses Can Use Our Data And Analytics Services To Make Decisions And Reduce Financial Losses. Our Prescriptive Analytics Can Suggest How The Business Should Respond To These Changes, While Predictive Analytics Can Predict What Might Happen As A Result Of These Changes.

Advantages

Strengthening security

We Provide Data Security For All Enterprises. By Analysing And Visualising Relevant Data, Our Organisations Can Use Data Analytics To Identify The Root Causes Of Past Data Breaches. For Example, The IT Department Can Use Data Analytics Tools To Analyse, Process, And Display Their Audit Logs To Trace The Path And Source Of An Attack. It Can Use This Information To Find And Fix Vulnerabilities.

Approach

Data Analysis Strategies And Techniques Must Be Used In Order To Uncover Insights From Data, Including Measurements, Facts, And Statistics. The Two Primary Methods For Data Analysis Are Qualitative And Quantitative Techniques.

Process

number-1

Consultation

We Start With An Analysis Of Your Company's Needs. After A Few Meetings, Our Staff Will Review Your Data, Ask The Necessary Questions And Define The Project Goals

number-1

Maintenance

Our Support Doesn't Stop With Deployment. We Make Sure That You Obtain Model Runs That Are Successful And That You Receive Ongoing Technical Assistance As Part Of Our Post-deployment Services.

number-1

Data Preparation and Analysis

Our Team Of Data Engineers Examines The Data Sets You Have Provided After The Goals Have Been Established. Data Mining And Analysis Are Done By Our Team Using The Agile Methodology.

number-1

Instalation and Integration

The Model Is Deployed By The Team On A Test Server, Where It Begins To Operate With Actual Data And We Can Track Outcomes. We Deploy The Model To The Production Server If It Functions Properly On The Test Server.

number-1

Data Modelling

Using The Processed Data, Our Team Now Starts Developing And Training Models. The Team Ensures That The Data Analysis Models Are As Accurate As Possible And Meet Your Business Objectives.

number-1

Evaluation and changes

Our Data Scientists And Engineers Continue To Optimise The Selected Analytics Model After The Initial Modelling Of The Raw Data. Our Team Evaluates The Values Of Each Metric As Well As The Performance Of The Model To Ensure That Overall Accuracy Has Been Significantly Increased.

number-1

Consultation

We Start With An Analysis Of Your Company's Needs. After A Few Meetings, Our Staff Will Review Your Data, Ask The Necessary Questions And Define The Project Goals.

number-1

Data Preparation and Analysis

Our Team Of Data Engineers Examines The Data Sets You Have Provided After The Goals Have Been Established. Data Mining And Analysis Are Done By Our Team Using The Agile Methodology.

number-1

Data Modelling

Using The Processed Data, Our Team Now Starts Developing And Training Models. The Team Ensures That The Data Analysis Models Are As Accurate As Possible And Meet Your Business Objectives.

number-1

Evaluation and Changes

Our Data Scientists And Engineers Continue To Optimise The Selected Analytics Model After The Initial Modelling Of The Raw Data. Our Team Evaluates The Values Of Each Metric As Well As The Performance Of The Model To Ensure That Overall Accuracy Has Been Significantly Increased.

number-1

Instalation and Integration

The Model Is Deployed By The Team On A Test Server, Where It Begins To Operate With Actual Data And We Can Track Outcomes. We Deploy The Model To The Production Server If It Functions Properly On The Test Server.

number-1

Maintenance

Our Support Doesn't Stop With Deployment. We Make Sure That You Obtain Model Runs That Are Successful And That You Receive Ongoing Technical Assistance As Part Of Our Post-deployment Services.

TECHNICAL STRUCTURE FOR SOLUTIONS

MACHINE
LEARNING

Machine
Learning

ARTIFICIAL
INTELLIGENCE

ARTIFICIAL
INTELLIGENCE

NATURAL LANGUAGE
PROCESS

Natural Language
Process

OUR TECH STACK

AI / ML FRAMEWORK

PYTORCH

TENSOR FLOW

TENSOR FLOW

KERAS

KERAS

SCIKIT LEARN

SCIKIT LEARN

DATA MANAGEMENT

GIT

GIT

DATA LED

DATA LED

MARIA DB

MARIA DB

MONGO DB

MONGO DB

REDIS

REDIS

CLUSTER ORCHESTRATION

KUBE FLOW

KUBE FLOW

SLURM

SLURM

BACK END

NODE

NODE

PYTHON

PYTHON

GOLANG

GOLANG

FRONT END

REACT NATIVE

REACT NATIVE

JS

JS

REACT NATIVE

REACT

SYSTEM ENVIRONMENT

DEBIAN

DEBIAN

AZURE

AZURE

CENTOS

CENTOS

KUBERNET

KUBERNET

DOCKER

DOCKER

Case Study

See How We've Helped Clients

FAQ

Data analytics is the process of analyzing raw data in order to draw out meaningful, actionable insights. Data analytics uses technology-based processes and algorithms to prepare data for human use and understanding. It helps organisations to maximise their capabilities.

Data analysts typically analyze raw data for insights and trends by Using techniques from a range of disciplines, mathematics and statistics, data analysts create forecasts that are then followed by conclusions that provide insight into potential future outcomes to improve the business.

Descriptive, diagnostic, predictive, prescriptive and cyber analytics are the five main categories of data analytics.

The method mainly consists of four steps
  • Data classification
  • Collecting data
  • Organising data
  • Cleaning the data

Analytics is an ongoing activity and not a one-time or one-off event. Organisations should not neglect analytics and prepare to use it frequently. As companies become aware of how analytics can be used to solve problems, they begin to make all kinds of strategic and general business decisions.

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