SlideShare a Scribd company logo
1 of 34
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Copyright © 2015 Splunk Inc.
Splunk for Developers
Grigori Melnik
Principal Product Manager
Developer Platform
@gmelnik
Seattle
Grigori Melnik, Principal Product Manager – Splunk Developer Platform2
EMPOWERING DEVELOPERS
Gain
Application
Intelligence
Build Splunk
Apps
Integrate &
Extend
Splunk
Grigori Melnik, Principal Product Manager – Splunk Developer Platform3 3
www.splunk.com/apptitude
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Copyright © 2015 Splunk Inc.
Splunk for Application
Development
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Build
Unit Testing
Code
Check-in Integration
Testing Deploy
Staging
Application Development Challenges
5
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Build
Unit Testing
Code
Check-in Integration
Testing Deploy
Staging
Lack of visibility across the product
development lifecycle
Pressure to increase velocity and
agility with DevOps
Limited insights into behavior and
performance from application logs
Application Development Challenges
6
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Quickly trace and identify errors anywhere
in the codebase with real-time search
and monitoring
Instrument your app logs to gain
application intelligence
Break down dev tool silos with real-time
insights from machine data
GAIN END-TO-END VISIBILITY
ACROSS THE DEV TOOL CHAIN
FIND AND FIX
ISSUES FASTER
PUSH BETTER CODE
USING ANALYTICS
Splunk for Application Lifecycle Intelligence
7
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Real-time dashboards show error rate
in production and impact of pushing
new builds
Developers can search and visualize
web logs, Java logs, eventlogs etc;
trace tx without complex
instrumentation
Alerts notify developers as soon as a
problem arises
Find and Fix Issues Faster
8
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Gain end-to-end visibility to make
informed decisions
Analytics insights without the need for
additional analytics tools
Ask questions while exploring and
collecting data
Push Better Code Using Analytics
9
Grigori Melnik, Principal Product Manager – Splunk Developer Platform10 1
CI / Build
Servers
Project and Issue
Tracking
Code
Repository
QA / Testing
Tools
End-To-End Visibility Across The Dev Tool Chain
Deployment Servers /
Automation
Grigori Melnik, Principal Product Manager – Splunk Developer Platform11
Grigori Melnik, Principal Product Manager – Splunk Developer Platform12
CI / Build
Server
Code
Review
Task
Tracking
What Data Can You Splunk?
Logs – Which code has already been reviewed for this release/sprint? Who has
completed the most code reviews? What code has NOT been reviewed?
Logs/API – Who is changing files? What kinds of files are being changed? What
branches are most active? What types of activities are occurring for a branch?
Version
Control
Logs/API – How many builds completed today/this week/this month? Which
check-in kicked off this build? Which tests ran against this failed build?
Logs – Which tasks are assigned to which developers? What progress is being
made to complete assigned tasks? What tasks remain for this release/sprint?
1
Grigori Melnik, Principal Product Manager – Splunk Developer Platform13
Key Benefits of Application Lifecycle Intelligence
Reduced Time
to Market
Shrink the time it takes
to get code through
dev/test to market
through faster issue
identification and
resolution
Increased
Agility
With real-time visibility
into processes like code
check-ins, builds and
tests to support
DevOps practices like
continuous integration
“Our devs are now able to
find and fix issues five to ten
times faster.”
“We can monitor all the
automation and handoffs it
takes to deploy 5-10 times
a day”
Application
Insights
Instrument customer
application logs to
capture critical
business events and
user behavior
“My code isn’t ready until it’s
Splunk-ready”
1
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Copyright © 2015 Splunk Inc.
Demo:
ADLC
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Copyright © 2015 Splunk Inc.
Touring the Splunk
Development Platform
Grigori Melnik, Principal Product Manager – Splunk Developer Platform16
Evolving the Splunk Platform
Collection
Indexing
Search Processing Language
Core Functions
Inputs, Apps, Other
Content
SDKs & plug-ins
Operational Intelligence Platform
Content
Core Engine
User and Developer Interfaces
Web Framework
REST API
Grigori Melnik, Principal Product Manager – Splunk Developer Platform17
Powerful Platform for Enterprise Developers
1
REST API
Build Splunk Apps Extend and Integrate Splunk
Simple XML
JavaScript/CSS Extensions C#
JavaScript
Python
Ruby
Java
PHP
Data Models
Search Extensibility
Modular Inputs
SDKs
KV Store
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Log directly to
Splunk via TCP,
UDP, HTTP
Integrate search
results with other
applications using
custom
visualizations
Create and run
searches from
other applications
The REST API and SDKs
18
VisualizeSearch Manage
Add/Delete Users
Manage Inputs
Index
Grigori Melnik, Principal Product Manager – Splunk Developer Platform19
The Splunk REST API
Exposes an API method for every feature in the product
– Whatever you can do in the UI – you can do through the API
– Index, Search, Visualize, Manage
API is RESTful
– Endpoints are served by splunkd
– Requests are GET, POST, and DELETE HTTP methods
– Responses are Atom XML & JSON
– Versioning as of Splunk 5.0
– Search results can be output in CSV/JSON/XML
1
Grigori Melnik, Principal Product Manager – Splunk Developer Platform20
SDKs Overview
20
• Stay true to the semantics of the particular language
• E.g. Keep Python “pythonic”
• E.g. C#: Fully async , PCL, support for Rx
• Provide implementation that feels natural to the developer
• E.g. Project, build, IDE (where applicable) support
• Cover REST API endpoints based on use cases of language
• Namespaces
• owner: splunk username (defaults to current user)
• app: app context (defaults to default app)
• sharing: user | app | global | system
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
A Developer’s Smörgåsbord
 Data ingestion
– Input
 Scripted inputs
 Modular inputs
 Custom (trained) source
types
 Custom sources
– Data ingestion pipeline
 Field extractions
 Field transformations
– Indexing
 Custom indexes
 Searching
– Search authoring
 Custom search commands
 Macros (basic, parametrized)
 Saved searches
– Data classification
 Event types
 Transactions
– Data enrichment
 Lookups
 KV store collections
 Workflow actions
– Data normalization
 Tags
 Aliases
– Data mining
 cluster & dedup
 anomalousvalue
 kmeans
 predict commands …
 Processing & reporting
– Search-time mapping
 Data models
– CIM extensions
– Custom UI/visualizations
 Pages, views & dashboards
 JS Extensions
 CSS Extensions
 Custom setup screens
– Scheduled processing
 Scheduled reports
– Alerting
 Scripted alerts
– Branding & navigation
 Custom app navigation &
branding
– Manageability
 Custom splunkweb
controllers
 Custom splunkd endpoints
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Copyright © 2015 Splunk Inc.
Building Splunk Apps
Splunk Developer Guidance


Splunk Reference Apps
Complete, working real-world Splunk solutions
built together with partners (Conducive; Auth0)
̶ 2 (pseudo-) production releases
̶ entire code & test repos on GitHub
̶ under Apache 2.0
Associated Guidance
I. Start-to-Finish Journey Documentary
II. Essentials
dev.splunk.com/goto/devguide
1. Started with a Questions BacklogArchitecture
– What does a typical Splunk application reference architecture look like?
– What common paradigms are applicable to Splunk app development?
– What are the typical deployment topologies? Why should I choose a specific one? What are the confounding factors
on the choice of my topology?
– How do I partition my Splunk solutions?
– What are the tradeoffs of various types of inputs?
– How do I architect my Splunk solution and deployment for a very large scale?
– How do I architect my Splunk solution for the cloud? What are specific considerations for deploying to AWS or Azure?
– What’s the landscape of Splunk extension points?
– How do I integrate data from Splunk into existing applications and systems?
– How do I plan and design a robust alerting and monitoring subsystem on top of Splunk?
– What should I consider for my sizing requirements?
– What are recommended configurations of Splunk deployment to meet my sizing requirements?
– Should I architect my solution to index my data in local data center (zone) or centrally?
– What are things we can automatically degrade so we can make sure our core experience is working?
– When something happens, how do I effectively propagate the info and react to it?
– How are other solutions on Splunk built? What were the challenges? How have they been addressed?
Packaging and Deployment
– How do I piece together various parts of a Splunk app (custom search commands, mod inputs etc.)?
– How do I package a Splunk solution with a single install that automatically rolls out all the necessary dependencies?
– How do I manage my Splunk solution versioning, backward and future compat?
– What's the best way to split up custom apps for deployment?
Development
– How should I set up my development environment to be productive with Splunk?
– What are different ways of how I develop my Splunk app ? Pros and cons of using specific SDK vs REST APIs?
Pros and cons of using SimpleXML vs Advanced XML vs Web Framework …
– How do I analyze a data source for a TA?
– What are the different ways of enriching the data in Splunk? What are their tradeoffs?
– When should I use event types and transactions for data classification?
– How do I extend Splunk to define a custom input capability?
– When should I use modular inputs vs scripted inputs vs..?
– What are streaming vs non-streaming outputs considerations?
– How do I deal with long-running scripts? Handling shutdown/restart of Splunk? Concurrency? State persistence etc.
– Why should I not use transactions?
– When should I use pivot vs tstats?
– Why should I use data models?
– When my data source touches on many data models, should I assume complete separation or heavy inheritance?
– How do I extend an existing data model?
– What does CIM offer and why should I build CIM-compliant apps?
– In the context of CIM, what are the tradeoffs of using my props.conf and transforms.conf and rewriting them on
indexing, completely discarding the vendor supplied field names? How do I reconcile the advantages of a clean
interface & normalisation, but at the cost of losing alignment with published vendor documentation, and a learning
curve for existing users?
– How do I manage my solution declarative configuration? How do I detect/troubleshoot bad config?
– How do I log and analyze data that is not event driven (certain web feeds, html parsing, image meta data)?
– Compare and contrast ad-hoc searching vs background searching
– How do I handle transient faults?
– How do I effectively manage credentials?
– What’s the effect of search head location on my app and the overall user experience?
– How do I develop an integrated mechanism to let me connect Splunk to my MOM (messaging middleware) and index
my messages?
– How do I handle the requirement that app configs must be different across different server types in a distributed
environment (e.g. apps on search heads shouldn't have inputs enabled)?
Quality/Compliance
– What quality gates should I consider? What kind of para-functional characteristics are important to consider?
– What heuristics do I use to bless/block a release?
– How do I test a data model?
– How do I prepare event generation when building/testing an app?
– What kind of perf testing should I do and how?
– How do I test UI?
– How do I security certify my solution?
– How do I design to satisfy my retention and compliance policies?
– How do I architect to design my availability requirements?
– How do I handle geographic disaster recovery / fault tolerance?
– How do I properly instrument my solution so that I know what’s happening?
Sustained Engineering
– How do I maintain/service/support Splunk apps?
– How do my customers handle updating their customized configs once new versions of my app come out?
Business
– Why should I build on Splunk?
– What kind of skill do I need my devs to have to build a Splunk solution?
– What is the community building? How are current devs creating unique experiences using Splunk – I typically want to
see some marketplace success
– Cost and pricing are very important to me as a entrepreneur developer. If I am coming in to build a tool that will be
commercialized I need to know that the cost structure of Splunk won’t cause my service to be economically
unprofitable.
What does a typical Splunk application architecture look like?
How should I set up my dev environment to be productive with
Splunk?
How do I integrate Splunk into existing systems?
How do I prepare my event generation when developing &
testing an app?
How do I package an app? deal with app versioning and updates?
2. Mined business requirements with partner
3. Formulated learning objectives
4. Reconciled 2 & 3 with our designs
…
 Data
 Search language
 Aggregating siloed metrics into
meaningful KPIs
 Data manipulation
 Data normalization
 Sub-searches
 Config-driven
 Persistence with KV store
 Macros
 Viz:
 Dynamic scaling
 Customizing in-the box viz
controls
 General search patterns
 Search optimizations
 Ux Prototyping
 Adapting 3rd party viz library
 Composite charts with interactions
 Dealing with high-volume data sets
 Troubleshooting perf issues
 Post-process or not-post-process –
deployment implications
 Automated UI testing (w.Selenium)
 Setting the stage
 Overall Splunk app structure
 UI technology selection:
Simple XML vs SplunkJS
 Modularity
 Dev & test env
 Dev workflow
 Modularity
 Data onboarding
 CIM compliance
 Tools
 Post-processing
 Integrating with 3rd party
component
 Unit testing (w.Mocha)
 Persisting state (per user)
 Data modeling
 Using lookups
 Building a baseline lookup table
 Windows of time/Custom time ranges
 Overlaying time data
 Using sub-searches to correlate data
 Troubleshooting searches
 Custom nav
 Ux activities permeating all dev
 Data mining:
 Exploration
 Preparation: filtering/deduping/
bucketing
 Using advanced statistics functions
 Threshold-based anomaly detection
 Evaluating goodness /accuracy
Plus non-functional topics:  App versioning
 Packaging Installation
 Security review
 Deployment
 Publishing to splunkbase
 App certification
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Copyright © 2015 Splunk Inc.
Demo:
Building solutions with
Splunk Reference App
Copyright © 2015 Splunk Inc.28
Splunk Reference App comes preinstalled in the Cloud
Sandbox - www.splunk.com/goto/cloud
Grigori Melnik, Principal Product Manager – Splunk Developer Platform
Copyright © 2015 Splunk Inc.
Resources
Grigori Melnik, Principal Product Manager – Splunk Developer Platform30
Splunk Developer License
3
Grigori Melnik, Principal Product Manager – Splunk Developer Platform31
Where to go for more Info
• Tutorials, Code Samples, Getting Started, Downloads
– http://dev.splunk.com
• Splunk Developer Guidance
– http://dev.splunk.com/goto/devguide
• Splunk Base (Apps)
– https://splunkbase.splunk.com
• GitHub
– https://github.com/splunk
• Twitter
– https://twitter.com/splunkdev
• Blogs
– http://blogs.splunk.com/dev
31
Copyright © 2015 Splunk Inc.32
Takeaways
Application development intelligence
Platform, not just an engine
Open & extensible
On-prem and cloud
Developer Guidance : learn and reuse for the win!
Reach out to my team (devinfo@splunk.com) and tell us
about your experience
@gmelnik / gmelnik@splunk.com
33
The 6th Annual Splunk Worldwide Users’ Conference
• September 21-24, 2015
• The MGM Grand Hotel, Las Vegas
• 4000 IT & Business Professionals
• 2 Keynote Sessions
• 3 days of technical content
– 165+ sessions
• 3 days of Splunk University
– Sept 19-21, 2015
– Get Splunk Certified for FREE!
– Get CPE credits for CISSP, CAP, SSCP, etc.
– Save thousands on Splunk education!
• 80 Customer Speakers
• 80 Splunk Speakers
• 35+ Apps in Splunk Apps Showcase
• 65 Technology Partners
• Ask The Experts and Security Experts,
Birds of a Feather, Chalk Talks and a new
& improved Partner Pavilion!
• Register at conf.splunk.com
34
We Want to Hear your Feedback!
After the Breakout Sessions conclude
Text Splunk to 878787
And be entered for a chance to win a $100 AMEX gift card!

More Related Content

What's hot

mlflow: Accelerating the End-to-End ML lifecycle
mlflow: Accelerating the End-to-End ML lifecyclemlflow: Accelerating the End-to-End ML lifecycle
mlflow: Accelerating the End-to-End ML lifecycleDatabricks
 
How to use Apache TVM to optimize your ML models
How to use Apache TVM to optimize your ML modelsHow to use Apache TVM to optimize your ML models
How to use Apache TVM to optimize your ML modelsDatabricks
 
Unifying State-of-the-Art AI and Big Data in Apache Spark with Reynold Xin
Unifying State-of-the-Art AI and Big Data in Apache Spark with Reynold XinUnifying State-of-the-Art AI and Big Data in Apache Spark with Reynold Xin
Unifying State-of-the-Art AI and Big Data in Apache Spark with Reynold XinDatabricks
 
Whats new in_mlflow
Whats new in_mlflowWhats new in_mlflow
Whats new in_mlflowDatabricks
 
Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)
Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)
Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)Jason Dai
 
MLflow: Infrastructure for a Complete Machine Learning Life Cycle with Mani ...
 MLflow: Infrastructure for a Complete Machine Learning Life Cycle with Mani ... MLflow: Infrastructure for a Complete Machine Learning Life Cycle with Mani ...
MLflow: Infrastructure for a Complete Machine Learning Life Cycle with Mani ...Databricks
 
MLOps with a Feature Store: Filling the Gap in ML Infrastructure
MLOps with a Feature Store: Filling the Gap in ML InfrastructureMLOps with a Feature Store: Filling the Gap in ML Infrastructure
MLOps with a Feature Store: Filling the Gap in ML InfrastructureData Science Milan
 
Auto-Pilot for Apache Spark Using Machine Learning
Auto-Pilot for Apache Spark Using Machine LearningAuto-Pilot for Apache Spark Using Machine Learning
Auto-Pilot for Apache Spark Using Machine LearningDatabricks
 
How to Utilize MLflow and Kubernetes to Build an Enterprise ML Platform
How to Utilize MLflow and Kubernetes to Build an Enterprise ML PlatformHow to Utilize MLflow and Kubernetes to Build an Enterprise ML Platform
How to Utilize MLflow and Kubernetes to Build an Enterprise ML PlatformDatabricks
 
Kaz Sato, Evangelist, Google at MLconf ATL 2016
Kaz Sato, Evangelist, Google at MLconf ATL 2016Kaz Sato, Evangelist, Google at MLconf ATL 2016
Kaz Sato, Evangelist, Google at MLconf ATL 2016MLconf
 
Automated Production Ready ML at Scale
Automated Production Ready ML at ScaleAutomated Production Ready ML at Scale
Automated Production Ready ML at ScaleDatabricks
 
MLOps - Build pipelines with Tensor Flow Extended & Kubeflow
MLOps - Build pipelines with Tensor Flow Extended & KubeflowMLOps - Build pipelines with Tensor Flow Extended & Kubeflow
MLOps - Build pipelines with Tensor Flow Extended & KubeflowJan Kirenz
 
Moving a Fraud-Fighting Random Forest from scikit-learn to Spark with MLlib, ...
Moving a Fraud-Fighting Random Forest from scikit-learn to Spark with MLlib, ...Moving a Fraud-Fighting Random Forest from scikit-learn to Spark with MLlib, ...
Moving a Fraud-Fighting Random Forest from scikit-learn to Spark with MLlib, ...Databricks
 
Advanced MLflow: Multi-Step Workflows, Hyperparameter Tuning and Integrating ...
Advanced MLflow: Multi-Step Workflows, Hyperparameter Tuning and Integrating ...Advanced MLflow: Multi-Step Workflows, Hyperparameter Tuning and Integrating ...
Advanced MLflow: Multi-Step Workflows, Hyperparameter Tuning and Integrating ...Databricks
 
Advanced Hyperparameter Optimization for Deep Learning with MLflow
Advanced Hyperparameter Optimization for Deep Learning with MLflowAdvanced Hyperparameter Optimization for Deep Learning with MLflow
Advanced Hyperparameter Optimization for Deep Learning with MLflowDatabricks
 
MLOps Virtual Event | Building Machine Learning Platforms for the Full Lifecycle
MLOps Virtual Event | Building Machine Learning Platforms for the Full LifecycleMLOps Virtual Event | Building Machine Learning Platforms for the Full Lifecycle
MLOps Virtual Event | Building Machine Learning Platforms for the Full LifecycleDatabricks
 
Distributed Inference on Large Datasets Using Apache MXNet and Apache Spark ...
 Distributed Inference on Large Datasets Using Apache MXNet and Apache Spark ... Distributed Inference on Large Datasets Using Apache MXNet and Apache Spark ...
Distributed Inference on Large Datasets Using Apache MXNet and Apache Spark ...Databricks
 
AutoML for Data Science Productivity and Toward Better Digital Decisions
AutoML for Data Science Productivity and Toward Better Digital DecisionsAutoML for Data Science Productivity and Toward Better Digital Decisions
AutoML for Data Science Productivity and Toward Better Digital DecisionsSteven Gustafson
 
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning Models
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning ModelsApache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning Models
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning ModelsAnyscale
 
A Microservices Framework for Real-Time Model Scoring Using Structured Stream...
A Microservices Framework for Real-Time Model Scoring Using Structured Stream...A Microservices Framework for Real-Time Model Scoring Using Structured Stream...
A Microservices Framework for Real-Time Model Scoring Using Structured Stream...Databricks
 

What's hot (20)

mlflow: Accelerating the End-to-End ML lifecycle
mlflow: Accelerating the End-to-End ML lifecyclemlflow: Accelerating the End-to-End ML lifecycle
mlflow: Accelerating the End-to-End ML lifecycle
 
How to use Apache TVM to optimize your ML models
How to use Apache TVM to optimize your ML modelsHow to use Apache TVM to optimize your ML models
How to use Apache TVM to optimize your ML models
 
Unifying State-of-the-Art AI and Big Data in Apache Spark with Reynold Xin
Unifying State-of-the-Art AI and Big Data in Apache Spark with Reynold XinUnifying State-of-the-Art AI and Big Data in Apache Spark with Reynold Xin
Unifying State-of-the-Art AI and Big Data in Apache Spark with Reynold Xin
 
Whats new in_mlflow
Whats new in_mlflowWhats new in_mlflow
Whats new in_mlflow
 
Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)
Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)
Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)
 
MLflow: Infrastructure for a Complete Machine Learning Life Cycle with Mani ...
 MLflow: Infrastructure for a Complete Machine Learning Life Cycle with Mani ... MLflow: Infrastructure for a Complete Machine Learning Life Cycle with Mani ...
MLflow: Infrastructure for a Complete Machine Learning Life Cycle with Mani ...
 
MLOps with a Feature Store: Filling the Gap in ML Infrastructure
MLOps with a Feature Store: Filling the Gap in ML InfrastructureMLOps with a Feature Store: Filling the Gap in ML Infrastructure
MLOps with a Feature Store: Filling the Gap in ML Infrastructure
 
Auto-Pilot for Apache Spark Using Machine Learning
Auto-Pilot for Apache Spark Using Machine LearningAuto-Pilot for Apache Spark Using Machine Learning
Auto-Pilot for Apache Spark Using Machine Learning
 
How to Utilize MLflow and Kubernetes to Build an Enterprise ML Platform
How to Utilize MLflow and Kubernetes to Build an Enterprise ML PlatformHow to Utilize MLflow and Kubernetes to Build an Enterprise ML Platform
How to Utilize MLflow and Kubernetes to Build an Enterprise ML Platform
 
Kaz Sato, Evangelist, Google at MLconf ATL 2016
Kaz Sato, Evangelist, Google at MLconf ATL 2016Kaz Sato, Evangelist, Google at MLconf ATL 2016
Kaz Sato, Evangelist, Google at MLconf ATL 2016
 
Automated Production Ready ML at Scale
Automated Production Ready ML at ScaleAutomated Production Ready ML at Scale
Automated Production Ready ML at Scale
 
MLOps - Build pipelines with Tensor Flow Extended & Kubeflow
MLOps - Build pipelines with Tensor Flow Extended & KubeflowMLOps - Build pipelines with Tensor Flow Extended & Kubeflow
MLOps - Build pipelines with Tensor Flow Extended & Kubeflow
 
Moving a Fraud-Fighting Random Forest from scikit-learn to Spark with MLlib, ...
Moving a Fraud-Fighting Random Forest from scikit-learn to Spark with MLlib, ...Moving a Fraud-Fighting Random Forest from scikit-learn to Spark with MLlib, ...
Moving a Fraud-Fighting Random Forest from scikit-learn to Spark with MLlib, ...
 
Advanced MLflow: Multi-Step Workflows, Hyperparameter Tuning and Integrating ...
Advanced MLflow: Multi-Step Workflows, Hyperparameter Tuning and Integrating ...Advanced MLflow: Multi-Step Workflows, Hyperparameter Tuning and Integrating ...
Advanced MLflow: Multi-Step Workflows, Hyperparameter Tuning and Integrating ...
 
Advanced Hyperparameter Optimization for Deep Learning with MLflow
Advanced Hyperparameter Optimization for Deep Learning with MLflowAdvanced Hyperparameter Optimization for Deep Learning with MLflow
Advanced Hyperparameter Optimization for Deep Learning with MLflow
 
MLOps Virtual Event | Building Machine Learning Platforms for the Full Lifecycle
MLOps Virtual Event | Building Machine Learning Platforms for the Full LifecycleMLOps Virtual Event | Building Machine Learning Platforms for the Full Lifecycle
MLOps Virtual Event | Building Machine Learning Platforms for the Full Lifecycle
 
Distributed Inference on Large Datasets Using Apache MXNet and Apache Spark ...
 Distributed Inference on Large Datasets Using Apache MXNet and Apache Spark ... Distributed Inference on Large Datasets Using Apache MXNet and Apache Spark ...
Distributed Inference on Large Datasets Using Apache MXNet and Apache Spark ...
 
AutoML for Data Science Productivity and Toward Better Digital Decisions
AutoML for Data Science Productivity and Toward Better Digital DecisionsAutoML for Data Science Productivity and Toward Better Digital Decisions
AutoML for Data Science Productivity and Toward Better Digital Decisions
 
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning Models
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning ModelsApache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning Models
Apache ® Spark™ MLlib 2.x: How to Productionize your Machine Learning Models
 
A Microservices Framework for Real-Time Model Scoring Using Structured Stream...
A Microservices Framework for Real-Time Model Scoring Using Structured Stream...A Microservices Framework for Real-Time Model Scoring Using Structured Stream...
A Microservices Framework for Real-Time Model Scoring Using Structured Stream...
 

Similar to SplunkLive! Seattle - Splunk for Developers

Splunk for Developers Breakout Session
Splunk for Developers Breakout SessionSplunk for Developers Breakout Session
Splunk for Developers Breakout SessionSplunk
 
Splunk for Developers
Splunk for DevelopersSplunk for Developers
Splunk for DevelopersSplunk
 
Splunk for Developers
Splunk for DevelopersSplunk for Developers
Splunk for DevelopersSplunk
 
Splunk for Developers
Splunk for DevelopersSplunk for Developers
Splunk for DevelopersSplunk
 
SplunkLive! Developer Session
SplunkLive! Developer SessionSplunkLive! Developer Session
SplunkLive! Developer SessionSplunk
 
A Lap Around Developer Awesomeness in Splunk 6.3
A Lap Around Developer Awesomeness in Splunk 6.3A Lap Around Developer Awesomeness in Splunk 6.3
A Lap Around Developer Awesomeness in Splunk 6.3Glenn Block
 
SplunkLive! London 2015 - DevOps Breakout
SplunkLive! London 2015 - DevOps BreakoutSplunkLive! London 2015 - DevOps Breakout
SplunkLive! London 2015 - DevOps BreakoutSplunk
 
Brisbane MuleSoft Meetup 2023-03-22 - Anypoint Code Builder and Splunk Loggin...
Brisbane MuleSoft Meetup 2023-03-22 - Anypoint Code Builder and Splunk Loggin...Brisbane MuleSoft Meetup 2023-03-22 - Anypoint Code Builder and Splunk Loggin...
Brisbane MuleSoft Meetup 2023-03-22 - Anypoint Code Builder and Splunk Loggin...BrianFraser29
 
Devops Powered by Splunk
Devops Powered by SplunkDevops Powered by Splunk
Devops Powered by SplunkSplunk
 
SplunkLive Brisbane Splunk for Developers
SplunkLive Brisbane Splunk for DevelopersSplunkLive Brisbane Splunk for Developers
SplunkLive Brisbane Splunk for DevelopersGabrielle Knowles
 
SplunkLive Melbourne Splunk for Developers
SplunkLive Melbourne Splunk for DevelopersSplunkLive Melbourne Splunk for Developers
SplunkLive Melbourne Splunk for DevelopersGabrielle Knowles
 
SplunkLive Brisbane Splunk for Developers
SplunkLive Brisbane Splunk for DevelopersSplunkLive Brisbane Splunk for Developers
SplunkLive Brisbane Splunk for DevelopersSplunk
 
Innovate Better Through Machine data Analytics
Innovate Better Through Machine data AnalyticsInnovate Better Through Machine data Analytics
Innovate Better Through Machine data AnalyticsHal Rottenberg
 
SplunkLive! Introduction to the Splunk Developer Platform
SplunkLive! Introduction to the Splunk Developer PlatformSplunkLive! Introduction to the Splunk Developer Platform
SplunkLive! Introduction to the Splunk Developer PlatformSplunk
 
Dublin Unity User Group Meetup Sept 2015
Dublin Unity User Group Meetup Sept 2015Dublin Unity User Group Meetup Sept 2015
Dublin Unity User Group Meetup Sept 2015Dominique Boutin
 
Splunk All the Things: Our First 3 Months Monitoring Web Service APIs - Splun...
Splunk All the Things: Our First 3 Months Monitoring Web Service APIs - Splun...Splunk All the Things: Our First 3 Months Monitoring Web Service APIs - Splun...
Splunk All the Things: Our First 3 Months Monitoring Web Service APIs - Splun...Dan Cundiff
 
Splunk in Nordstrom: IT Operations
Splunk in Nordstrom: IT OperationsSplunk in Nordstrom: IT Operations
Splunk in Nordstrom: IT OperationsTimur Bagirov
 
DevOps Powered by Splunk
DevOps Powered by SplunkDevOps Powered by Splunk
DevOps Powered by SplunkSplunk
 
How to feature flag and run experiments in iOS and Android
How to feature flag and run experiments in iOS and AndroidHow to feature flag and run experiments in iOS and Android
How to feature flag and run experiments in iOS and AndroidOptimizely
 

Similar to SplunkLive! Seattle - Splunk for Developers (20)

Splunk for Developers Breakout Session
Splunk for Developers Breakout SessionSplunk for Developers Breakout Session
Splunk for Developers Breakout Session
 
Splunk for Developers
Splunk for DevelopersSplunk for Developers
Splunk for Developers
 
Splunk for Developers
Splunk for DevelopersSplunk for Developers
Splunk for Developers
 
Splunk for Developers
Splunk for DevelopersSplunk for Developers
Splunk for Developers
 
SplunkLive! Developer Session
SplunkLive! Developer SessionSplunkLive! Developer Session
SplunkLive! Developer Session
 
A Lap Around Developer Awesomeness in Splunk 6.3
A Lap Around Developer Awesomeness in Splunk 6.3A Lap Around Developer Awesomeness in Splunk 6.3
A Lap Around Developer Awesomeness in Splunk 6.3
 
SplunkLive! London 2015 - DevOps Breakout
SplunkLive! London 2015 - DevOps BreakoutSplunkLive! London 2015 - DevOps Breakout
SplunkLive! London 2015 - DevOps Breakout
 
Brisbane MuleSoft Meetup 2023-03-22 - Anypoint Code Builder and Splunk Loggin...
Brisbane MuleSoft Meetup 2023-03-22 - Anypoint Code Builder and Splunk Loggin...Brisbane MuleSoft Meetup 2023-03-22 - Anypoint Code Builder and Splunk Loggin...
Brisbane MuleSoft Meetup 2023-03-22 - Anypoint Code Builder and Splunk Loggin...
 
Devops Powered by Splunk
Devops Powered by SplunkDevops Powered by Splunk
Devops Powered by Splunk
 
SplunkLive Brisbane Splunk for Developers
SplunkLive Brisbane Splunk for DevelopersSplunkLive Brisbane Splunk for Developers
SplunkLive Brisbane Splunk for Developers
 
SplunkLive Melbourne Splunk for Developers
SplunkLive Melbourne Splunk for DevelopersSplunkLive Melbourne Splunk for Developers
SplunkLive Melbourne Splunk for Developers
 
SplunkLive Brisbane Splunk for Developers
SplunkLive Brisbane Splunk for DevelopersSplunkLive Brisbane Splunk for Developers
SplunkLive Brisbane Splunk for Developers
 
Innovate Better Through Machine data Analytics
Innovate Better Through Machine data AnalyticsInnovate Better Through Machine data Analytics
Innovate Better Through Machine data Analytics
 
SplunkLive! Introduction to the Splunk Developer Platform
SplunkLive! Introduction to the Splunk Developer PlatformSplunkLive! Introduction to the Splunk Developer Platform
SplunkLive! Introduction to the Splunk Developer Platform
 
Dublin Unity User Group Meetup Sept 2015
Dublin Unity User Group Meetup Sept 2015Dublin Unity User Group Meetup Sept 2015
Dublin Unity User Group Meetup Sept 2015
 
Splunk All the Things: Our First 3 Months Monitoring Web Service APIs - Splun...
Splunk All the Things: Our First 3 Months Monitoring Web Service APIs - Splun...Splunk All the Things: Our First 3 Months Monitoring Web Service APIs - Splun...
Splunk All the Things: Our First 3 Months Monitoring Web Service APIs - Splun...
 
Splunk in Nordstrom: IT Operations
Splunk in Nordstrom: IT OperationsSplunk in Nordstrom: IT Operations
Splunk in Nordstrom: IT Operations
 
DevOps Powered by Splunk
DevOps Powered by SplunkDevOps Powered by Splunk
DevOps Powered by Splunk
 
How to feature flag and run experiments in iOS and Android
How to feature flag and run experiments in iOS and AndroidHow to feature flag and run experiments in iOS and Android
How to feature flag and run experiments in iOS and Android
 
DevOps and Splunk
DevOps and SplunkDevOps and Splunk
DevOps and Splunk
 

Recently uploaded

IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsEnterprise Knowledge
 
Maximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptxMaximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptxOnBoard
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking MenDelhi Call girls
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Servicegiselly40
 
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...gurkirankumar98700
 
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 3652toLead Limited
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Drew Madelung
 
Understanding the Laravel MVC Architecture
Understanding the Laravel MVC ArchitectureUnderstanding the Laravel MVC Architecture
Understanding the Laravel MVC ArchitecturePixlogix Infotech
 
SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024Scott Keck-Warren
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking MenDelhi Call girls
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking MenDelhi Call girls
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityPrincipled Technologies
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesSinan KOZAK
 
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Alan Dix
 
Enhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for PartnersEnhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for PartnersThousandEyes
 
Google AI Hackathon: LLM based Evaluator for RAG
Google AI Hackathon: LLM based Evaluator for RAGGoogle AI Hackathon: LLM based Evaluator for RAG
Google AI Hackathon: LLM based Evaluator for RAGSujit Pal
 
Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Paola De la Torre
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Miguel Araújo
 
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | DelhiFULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhisoniya singh
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationSafe Software
 

Recently uploaded (20)

IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
Maximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptxMaximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptx
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
 
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
 
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Understanding the Laravel MVC Architecture
Understanding the Laravel MVC ArchitectureUnderstanding the Laravel MVC Architecture
Understanding the Laravel MVC Architecture
 
SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen Frames
 
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
 
Enhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for PartnersEnhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for Partners
 
Google AI Hackathon: LLM based Evaluator for RAG
Google AI Hackathon: LLM based Evaluator for RAGGoogle AI Hackathon: LLM based Evaluator for RAG
Google AI Hackathon: LLM based Evaluator for RAG
 
Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | DelhiFULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 

SplunkLive! Seattle - Splunk for Developers

  • 1. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Copyright © 2015 Splunk Inc. Splunk for Developers Grigori Melnik Principal Product Manager Developer Platform @gmelnik Seattle
  • 2. Grigori Melnik, Principal Product Manager – Splunk Developer Platform2 EMPOWERING DEVELOPERS Gain Application Intelligence Build Splunk Apps Integrate & Extend Splunk
  • 3. Grigori Melnik, Principal Product Manager – Splunk Developer Platform3 3 www.splunk.com/apptitude
  • 4. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Copyright © 2015 Splunk Inc. Splunk for Application Development
  • 5. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Build Unit Testing Code Check-in Integration Testing Deploy Staging Application Development Challenges 5
  • 6. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Build Unit Testing Code Check-in Integration Testing Deploy Staging Lack of visibility across the product development lifecycle Pressure to increase velocity and agility with DevOps Limited insights into behavior and performance from application logs Application Development Challenges 6
  • 7. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Quickly trace and identify errors anywhere in the codebase with real-time search and monitoring Instrument your app logs to gain application intelligence Break down dev tool silos with real-time insights from machine data GAIN END-TO-END VISIBILITY ACROSS THE DEV TOOL CHAIN FIND AND FIX ISSUES FASTER PUSH BETTER CODE USING ANALYTICS Splunk for Application Lifecycle Intelligence 7
  • 8. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Real-time dashboards show error rate in production and impact of pushing new builds Developers can search and visualize web logs, Java logs, eventlogs etc; trace tx without complex instrumentation Alerts notify developers as soon as a problem arises Find and Fix Issues Faster 8
  • 9. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Gain end-to-end visibility to make informed decisions Analytics insights without the need for additional analytics tools Ask questions while exploring and collecting data Push Better Code Using Analytics 9
  • 10. Grigori Melnik, Principal Product Manager – Splunk Developer Platform10 1 CI / Build Servers Project and Issue Tracking Code Repository QA / Testing Tools End-To-End Visibility Across The Dev Tool Chain Deployment Servers / Automation
  • 11. Grigori Melnik, Principal Product Manager – Splunk Developer Platform11
  • 12. Grigori Melnik, Principal Product Manager – Splunk Developer Platform12 CI / Build Server Code Review Task Tracking What Data Can You Splunk? Logs – Which code has already been reviewed for this release/sprint? Who has completed the most code reviews? What code has NOT been reviewed? Logs/API – Who is changing files? What kinds of files are being changed? What branches are most active? What types of activities are occurring for a branch? Version Control Logs/API – How many builds completed today/this week/this month? Which check-in kicked off this build? Which tests ran against this failed build? Logs – Which tasks are assigned to which developers? What progress is being made to complete assigned tasks? What tasks remain for this release/sprint? 1
  • 13. Grigori Melnik, Principal Product Manager – Splunk Developer Platform13 Key Benefits of Application Lifecycle Intelligence Reduced Time to Market Shrink the time it takes to get code through dev/test to market through faster issue identification and resolution Increased Agility With real-time visibility into processes like code check-ins, builds and tests to support DevOps practices like continuous integration “Our devs are now able to find and fix issues five to ten times faster.” “We can monitor all the automation and handoffs it takes to deploy 5-10 times a day” Application Insights Instrument customer application logs to capture critical business events and user behavior “My code isn’t ready until it’s Splunk-ready” 1
  • 14. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Copyright © 2015 Splunk Inc. Demo: ADLC
  • 15. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Copyright © 2015 Splunk Inc. Touring the Splunk Development Platform
  • 16. Grigori Melnik, Principal Product Manager – Splunk Developer Platform16 Evolving the Splunk Platform Collection Indexing Search Processing Language Core Functions Inputs, Apps, Other Content SDKs & plug-ins Operational Intelligence Platform Content Core Engine User and Developer Interfaces Web Framework REST API
  • 17. Grigori Melnik, Principal Product Manager – Splunk Developer Platform17 Powerful Platform for Enterprise Developers 1 REST API Build Splunk Apps Extend and Integrate Splunk Simple XML JavaScript/CSS Extensions C# JavaScript Python Ruby Java PHP Data Models Search Extensibility Modular Inputs SDKs KV Store
  • 18. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Log directly to Splunk via TCP, UDP, HTTP Integrate search results with other applications using custom visualizations Create and run searches from other applications The REST API and SDKs 18 VisualizeSearch Manage Add/Delete Users Manage Inputs Index
  • 19. Grigori Melnik, Principal Product Manager – Splunk Developer Platform19 The Splunk REST API Exposes an API method for every feature in the product – Whatever you can do in the UI – you can do through the API – Index, Search, Visualize, Manage API is RESTful – Endpoints are served by splunkd – Requests are GET, POST, and DELETE HTTP methods – Responses are Atom XML & JSON – Versioning as of Splunk 5.0 – Search results can be output in CSV/JSON/XML 1
  • 20. Grigori Melnik, Principal Product Manager – Splunk Developer Platform20 SDKs Overview 20 • Stay true to the semantics of the particular language • E.g. Keep Python “pythonic” • E.g. C#: Fully async , PCL, support for Rx • Provide implementation that feels natural to the developer • E.g. Project, build, IDE (where applicable) support • Cover REST API endpoints based on use cases of language • Namespaces • owner: splunk username (defaults to current user) • app: app context (defaults to default app) • sharing: user | app | global | system
  • 21. Grigori Melnik, Principal Product Manager – Splunk Developer Platform A Developer’s Smörgåsbord  Data ingestion – Input  Scripted inputs  Modular inputs  Custom (trained) source types  Custom sources – Data ingestion pipeline  Field extractions  Field transformations – Indexing  Custom indexes  Searching – Search authoring  Custom search commands  Macros (basic, parametrized)  Saved searches – Data classification  Event types  Transactions – Data enrichment  Lookups  KV store collections  Workflow actions – Data normalization  Tags  Aliases – Data mining  cluster & dedup  anomalousvalue  kmeans  predict commands …  Processing & reporting – Search-time mapping  Data models – CIM extensions – Custom UI/visualizations  Pages, views & dashboards  JS Extensions  CSS Extensions  Custom setup screens – Scheduled processing  Scheduled reports – Alerting  Scripted alerts – Branding & navigation  Custom app navigation & branding – Manageability  Custom splunkweb controllers  Custom splunkd endpoints
  • 22. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Copyright © 2015 Splunk Inc. Building Splunk Apps
  • 23. Splunk Developer Guidance   Splunk Reference Apps Complete, working real-world Splunk solutions built together with partners (Conducive; Auth0) ̶ 2 (pseudo-) production releases ̶ entire code & test repos on GitHub ̶ under Apache 2.0 Associated Guidance I. Start-to-Finish Journey Documentary II. Essentials dev.splunk.com/goto/devguide
  • 24. 1. Started with a Questions BacklogArchitecture – What does a typical Splunk application reference architecture look like? – What common paradigms are applicable to Splunk app development? – What are the typical deployment topologies? Why should I choose a specific one? What are the confounding factors on the choice of my topology? – How do I partition my Splunk solutions? – What are the tradeoffs of various types of inputs? – How do I architect my Splunk solution and deployment for a very large scale? – How do I architect my Splunk solution for the cloud? What are specific considerations for deploying to AWS or Azure? – What’s the landscape of Splunk extension points? – How do I integrate data from Splunk into existing applications and systems? – How do I plan and design a robust alerting and monitoring subsystem on top of Splunk? – What should I consider for my sizing requirements? – What are recommended configurations of Splunk deployment to meet my sizing requirements? – Should I architect my solution to index my data in local data center (zone) or centrally? – What are things we can automatically degrade so we can make sure our core experience is working? – When something happens, how do I effectively propagate the info and react to it? – How are other solutions on Splunk built? What were the challenges? How have they been addressed? Packaging and Deployment – How do I piece together various parts of a Splunk app (custom search commands, mod inputs etc.)? – How do I package a Splunk solution with a single install that automatically rolls out all the necessary dependencies? – How do I manage my Splunk solution versioning, backward and future compat? – What's the best way to split up custom apps for deployment? Development – How should I set up my development environment to be productive with Splunk? – What are different ways of how I develop my Splunk app ? Pros and cons of using specific SDK vs REST APIs? Pros and cons of using SimpleXML vs Advanced XML vs Web Framework … – How do I analyze a data source for a TA? – What are the different ways of enriching the data in Splunk? What are their tradeoffs? – When should I use event types and transactions for data classification? – How do I extend Splunk to define a custom input capability? – When should I use modular inputs vs scripted inputs vs..? – What are streaming vs non-streaming outputs considerations? – How do I deal with long-running scripts? Handling shutdown/restart of Splunk? Concurrency? State persistence etc. – Why should I not use transactions? – When should I use pivot vs tstats? – Why should I use data models? – When my data source touches on many data models, should I assume complete separation or heavy inheritance? – How do I extend an existing data model? – What does CIM offer and why should I build CIM-compliant apps? – In the context of CIM, what are the tradeoffs of using my props.conf and transforms.conf and rewriting them on indexing, completely discarding the vendor supplied field names? How do I reconcile the advantages of a clean interface & normalisation, but at the cost of losing alignment with published vendor documentation, and a learning curve for existing users? – How do I manage my solution declarative configuration? How do I detect/troubleshoot bad config? – How do I log and analyze data that is not event driven (certain web feeds, html parsing, image meta data)? – Compare and contrast ad-hoc searching vs background searching – How do I handle transient faults? – How do I effectively manage credentials? – What’s the effect of search head location on my app and the overall user experience? – How do I develop an integrated mechanism to let me connect Splunk to my MOM (messaging middleware) and index my messages? – How do I handle the requirement that app configs must be different across different server types in a distributed environment (e.g. apps on search heads shouldn't have inputs enabled)? Quality/Compliance – What quality gates should I consider? What kind of para-functional characteristics are important to consider? – What heuristics do I use to bless/block a release? – How do I test a data model? – How do I prepare event generation when building/testing an app? – What kind of perf testing should I do and how? – How do I test UI? – How do I security certify my solution? – How do I design to satisfy my retention and compliance policies? – How do I architect to design my availability requirements? – How do I handle geographic disaster recovery / fault tolerance? – How do I properly instrument my solution so that I know what’s happening? Sustained Engineering – How do I maintain/service/support Splunk apps? – How do my customers handle updating their customized configs once new versions of my app come out? Business – Why should I build on Splunk? – What kind of skill do I need my devs to have to build a Splunk solution? – What is the community building? How are current devs creating unique experiences using Splunk – I typically want to see some marketplace success – Cost and pricing are very important to me as a entrepreneur developer. If I am coming in to build a tool that will be commercialized I need to know that the cost structure of Splunk won’t cause my service to be economically unprofitable. What does a typical Splunk application architecture look like? How should I set up my dev environment to be productive with Splunk? How do I integrate Splunk into existing systems? How do I prepare my event generation when developing & testing an app? How do I package an app? deal with app versioning and updates?
  • 25. 2. Mined business requirements with partner 3. Formulated learning objectives 4. Reconciled 2 & 3 with our designs …
  • 26.  Data  Search language  Aggregating siloed metrics into meaningful KPIs  Data manipulation  Data normalization  Sub-searches  Config-driven  Persistence with KV store  Macros  Viz:  Dynamic scaling  Customizing in-the box viz controls  General search patterns  Search optimizations  Ux Prototyping  Adapting 3rd party viz library  Composite charts with interactions  Dealing with high-volume data sets  Troubleshooting perf issues  Post-process or not-post-process – deployment implications  Automated UI testing (w.Selenium)  Setting the stage  Overall Splunk app structure  UI technology selection: Simple XML vs SplunkJS  Modularity  Dev & test env  Dev workflow  Modularity  Data onboarding  CIM compliance  Tools  Post-processing  Integrating with 3rd party component  Unit testing (w.Mocha)  Persisting state (per user)  Data modeling  Using lookups  Building a baseline lookup table  Windows of time/Custom time ranges  Overlaying time data  Using sub-searches to correlate data  Troubleshooting searches  Custom nav  Ux activities permeating all dev  Data mining:  Exploration  Preparation: filtering/deduping/ bucketing  Using advanced statistics functions  Threshold-based anomaly detection  Evaluating goodness /accuracy Plus non-functional topics:  App versioning  Packaging Installation  Security review  Deployment  Publishing to splunkbase  App certification
  • 27. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Copyright © 2015 Splunk Inc. Demo: Building solutions with Splunk Reference App
  • 28. Copyright © 2015 Splunk Inc.28 Splunk Reference App comes preinstalled in the Cloud Sandbox - www.splunk.com/goto/cloud
  • 29. Grigori Melnik, Principal Product Manager – Splunk Developer Platform Copyright © 2015 Splunk Inc. Resources
  • 30. Grigori Melnik, Principal Product Manager – Splunk Developer Platform30 Splunk Developer License 3
  • 31. Grigori Melnik, Principal Product Manager – Splunk Developer Platform31 Where to go for more Info • Tutorials, Code Samples, Getting Started, Downloads – http://dev.splunk.com • Splunk Developer Guidance – http://dev.splunk.com/goto/devguide • Splunk Base (Apps) – https://splunkbase.splunk.com • GitHub – https://github.com/splunk • Twitter – https://twitter.com/splunkdev • Blogs – http://blogs.splunk.com/dev 31
  • 32. Copyright © 2015 Splunk Inc.32 Takeaways Application development intelligence Platform, not just an engine Open & extensible On-prem and cloud Developer Guidance : learn and reuse for the win! Reach out to my team (devinfo@splunk.com) and tell us about your experience @gmelnik / gmelnik@splunk.com
  • 33. 33 The 6th Annual Splunk Worldwide Users’ Conference • September 21-24, 2015 • The MGM Grand Hotel, Las Vegas • 4000 IT & Business Professionals • 2 Keynote Sessions • 3 days of technical content – 165+ sessions • 3 days of Splunk University – Sept 19-21, 2015 – Get Splunk Certified for FREE! – Get CPE credits for CISSP, CAP, SSCP, etc. – Save thousands on Splunk education! • 80 Customer Speakers • 80 Splunk Speakers • 35+ Apps in Splunk Apps Showcase • 65 Technology Partners • Ask The Experts and Security Experts, Birds of a Feather, Chalk Talks and a new & improved Partner Pavilion! • Register at conf.splunk.com
  • 34. 34 We Want to Hear your Feedback! After the Breakout Sessions conclude Text Splunk to 878787 And be entered for a chance to win a $100 AMEX gift card!

Editor's Notes

  1. Roll Ubisoft Video