#datastreaming
Explore tagged Tumblr posts
Text
Real-Time Data Streaming Solutions: Transforming Business Intelligence Through Continuous Data Processing
The Imperative for Real-Time Data Processing
The business landscape has fundamentally shifted toward real-time decision-making, driven by the need for immediate insights and rapid response capabilities. Organizations can no longer afford to wait hours or days for data processing, as competitive advantages increasingly depend on the ability to process and act on information within seconds. This transformation has made real-time big data ingestion a critical component of modern business intelligence architectures.

Real-time analytics enables organizations to predict device failures, detect fraudulent transactions, and deliver personalized customer experiences based on immediate data insights. The technology has evolved from a luxury feature to an essential capability that drives operational efficiency and business growth.
Streaming Technology Architecture
Modern streaming architectures rely on sophisticated publish-subscribe systems that decouple data producers from consumers, enabling scalable, fault-tolerant data processing. Apache Kafka serves as the foundation for many streaming implementations, providing a distributed event streaming platform that can handle high-throughput data feeds with minimal latency.
The architecture typically includes multiple layers: data ingestion, stream processing, storage, and consumption. Apache Flink and Apache Storm complement Kafka by providing stream processing capabilities that can handle complex event processing and real-time analytics. These frameworks support both event-time and processing-time semantics, ensuring accurate results even when data arrives out of order.
Stream processing engines organize data events into short batches and process them continuously as they arrive. This approach enables applications to receive results as continuous feeds rather than waiting for complete batch processing cycles. The engines can perform various operations on streaming data, including filtering, transformation, aggregation, and enrichment.
Business Intelligence Integration
Real-time streaming solutions have revolutionized business intelligence by enabling immediate insight generation and dashboard updates. Organizations can now monitor key performance indicators in real-time, allowing for proactive decision-making rather than reactive responses to historical data. This capability proves particularly valuable in scenarios such as fraud detection, where immediate action can prevent significant financial losses.
The integration of streaming data with traditional BI tools requires careful consideration of data formats and processing requirements. Modern solutions often incorporate specialized databases optimized for time-series data, such as InfluxDB and TimescaleDB, which can efficiently store and retrieve real-time data points.
Industry Applications and Use Cases
Financial services organizations have embraced real-time streaming for algorithmic trading, where microsecond-level latency can determine profitability. High-frequency trading systems process millions of market events per second, requiring sophisticated streaming architectures that can maintain consistent performance under extreme load conditions.
E-commerce platforms leverage real-time streaming to deliver personalized product recommendations and dynamic pricing based on current market conditions and customer behavior. These systems can process clickstream data, inventory updates, and customer interactions simultaneously to optimize the shopping experience.
Healthcare organizations utilize streaming solutions for patient monitoring systems that can detect critical changes in vital signs and alert medical staff immediately. The ability to process continuous data streams from medical devices enables proactive healthcare interventions that can save lives.
Performance Optimization for Streaming Systems
Optimizing streaming system performance requires addressing several technical challenges, including latency minimization, throughput maximization, and fault tolerance. In-memory processing techniques, such as those employed by Apache Spark Streaming, significantly reduce processing latency by eliminating disk I/O operations.
Backpressure mechanisms play a crucial role in maintaining system stability under varying load conditions. These systems allow downstream consumers to signal when they become overwhelmed, preventing cascade failures that could impact entire streaming pipelines.
Data partitioning strategies become critical for streaming systems, as they determine how data is distributed across processing nodes. Effective partitioning ensures that processing load is balanced while maintaining data locality for optimal performance.
Cloud-Native Streaming Solutions
Cloud platforms have democratized access to sophisticated streaming technologies through managed services that eliminate infrastructure complexity. Amazon Kinesis provides fully managed streaming capabilities with sub-second processing latency, making it accessible to organizations without specialized streaming expertise.
Google Cloud Dataflow offers unified batch and stream processing capabilities based on Apache Beam, enabling organizations to implement hybrid processing models that can handle both real-time and batch requirements. This flexibility proves valuable for organizations with diverse data processing needs.
Microsoft Azure Stream Analytics provides SQL-like query capabilities for real-time data processing, making streaming technology accessible to analysts and developers familiar with traditional database operations. This approach reduces the learning curve for implementing streaming solutions.
Data Quality in Streaming Environments
Maintaining data quality in streaming environments presents unique challenges due to the continuous nature of data flow and the need for immediate processing. Traditional batch-based quality checks must be redesigned for streaming scenarios, requiring real-time validation and error handling capabilities.
Stream processing frameworks now incorporate built-in data quality features, including schema validation, duplicate detection, and anomaly identification. These systems can quarantine problematic data while allowing clean data to continue processing, ensuring that quality issues don't disrupt entire pipelines.
Security and Compliance for Streaming Data
Streaming systems must address complex security requirements, particularly when handling sensitive data in real-time. Encryption in transit becomes more challenging in streaming environments due to the need to maintain low latency while ensuring data protection.
Access control mechanisms must be designed to handle high-velocity data streams while maintaining security standards. This often requires implementing fine-grained permissions that can be enforced at the stream level rather than traditional file-based access controls.
Future Trends in Streaming Technology
The convergence of artificial intelligence and streaming technology is creating new opportunities for intelligent data processing. Machine learning models can now be integrated directly into streaming pipelines, enabling real-time predictions and automated decision-making.
Edge computing integration is driving the development of distributed streaming architectures that can process data closer to its source. This trend is particularly relevant for IoT applications where bandwidth limitations and latency requirements make centralized processing impractical.
The success of real-time streaming implementations depends on careful architectural planning, appropriate technology selection, and comprehensive performance optimization. Organizations that successfully implement these solutions gain significant competitive advantages through improved operational efficiency, enhanced customer experiences, and more agile decision-making capabilities.
#RealTimeData#DataStreaming#BusinessIntelligence#DataAnalytics#machinelearning#DigitalTransformation#FraudDetection#aiapplications#artificialintelligence#aiinnovation
0 notes
Text
🎛️ Getting to Know the Event Stream Editor in Microsoft Fabric
Q: What’s the main editor in Event Stream used for?
✅ A: It’s your control center for real-time data! You can: 🔹 Establish sources (like IoT or logs) and destinations (Lakehouse, KQL, Power BI) 🔹 View data in-flight as it streams 🔹 Capture, transform, and route events using a no-code interface
⚡ Whether you're building real-time dashboards or automated responses, this editor makes streaming data pipelines visual and intuitive.
💬 What’s your first impression of the Event Stream experience in Fabric? Share your use case or feedback below!
#MicrosoftFabric#EventStream#RealTimeData#StreamingAnalytics#DataEngineering#PowerBI#IoT#OneLake#DataPlatform#LowCode#NoCode#FabricCommunity#DataStreaming#Lakehouse#StreamProcessing
0 notes
Text
📌Project Title: Real-Time IoT Sensor Data Stream Aggregation and Smart City Mobility Analytics.⭕
ai-ml-ds-iot-smartcity-mobility-015 Filename: iot_stream_smart_city_analytics.py Timestamp: Mon Jun 02 2025 19:33:09 GMT+0000 (Coordinated Universal Time) Problem Domain:Smart Cities, Internet of Things (IoT), Data Streaming, Real-Time Analytics, Urban Mobility, Geospatial Data Analysis. Project Description:This project focuses on building a system to ingest, aggregate, and analyze real-time…
#DataScience#DataStreaming#GeoSpatial#iot#MQTT#pandas#python#RealTimeAnalytics#ScikitMobility#SmartCity#UrbanMobility
0 notes
Text
📌Project Title: Real-Time IoT Sensor Data Stream Aggregation and Smart City Mobility Analytics.⭕
ai-ml-ds-iot-smartcity-mobility-015 Filename: iot_stream_smart_city_analytics.py Timestamp: Mon Jun 02 2025 19:33:09 GMT+0000 (Coordinated Universal Time) Problem Domain:Smart Cities, Internet of Things (IoT), Data Streaming, Real-Time Analytics, Urban Mobility, Geospatial Data Analysis. Project Description:This project focuses on building a system to ingest, aggregate, and analyze real-time…
#DataScience#DataStreaming#GeoSpatial#iot#MQTT#pandas#python#RealTimeAnalytics#ScikitMobility#SmartCity#UrbanMobility
0 notes
Text
📌Project Title: Real-Time IoT Sensor Data Stream Aggregation and Smart City Mobility Analytics.⭕
ai-ml-ds-iot-smartcity-mobility-015 Filename: iot_stream_smart_city_analytics.py Timestamp: Mon Jun 02 2025 19:33:09 GMT+0000 (Coordinated Universal Time) Problem Domain:Smart Cities, Internet of Things (IoT), Data Streaming, Real-Time Analytics, Urban Mobility, Geospatial Data Analysis. Project Description:This project focuses on building a system to ingest, aggregate, and analyze real-time…
#DataScience#DataStreaming#GeoSpatial#iot#MQTT#pandas#python#RealTimeAnalytics#ScikitMobility#SmartCity#UrbanMobility
0 notes
Text
📌Project Title: Real-Time IoT Sensor Data Stream Aggregation and Smart City Mobility Analytics.⭕
ai-ml-ds-iot-smartcity-mobility-015 Filename: iot_stream_smart_city_analytics.py Timestamp: Mon Jun 02 2025 19:33:09 GMT+0000 (Coordinated Universal Time) Problem Domain:Smart Cities, Internet of Things (IoT), Data Streaming, Real-Time Analytics, Urban Mobility, Geospatial Data Analysis. Project Description:This project focuses on building a system to ingest, aggregate, and analyze real-time…
#DataScience#DataStreaming#GeoSpatial#iot#MQTT#pandas#python#RealTimeAnalytics#ScikitMobility#SmartCity#UrbanMobility
0 notes
Text
📌Project Title: Real-Time IoT Sensor Data Stream Aggregation and Smart City Mobility Analytics.⭕
ai-ml-ds-iot-smartcity-mobility-015 Filename: iot_stream_smart_city_analytics.py Timestamp: Mon Jun 02 2025 19:33:09 GMT+0000 (Coordinated Universal Time) Problem Domain:Smart Cities, Internet of Things (IoT), Data Streaming, Real-Time Analytics, Urban Mobility, Geospatial Data Analysis. Project Description:This project focuses on building a system to ingest, aggregate, and analyze real-time…
#DataScience#DataStreaming#GeoSpatial#iot#MQTT#pandas#python#RealTimeAnalytics#ScikitMobility#SmartCity#UrbanMobility
0 notes
Text
Apache Kafka Developers & Consulting Partner | Powering Real-Time Data Streams
In today's fast-paced digital landscape, the ability to process and analyze data in real-time is crucial for businesses seeking to gain a competitive edge. Apache Kafka, an open-source stream-processing platform, has emerged as a leading solution for handling real-time data feeds, enabling organizations to build robust, scalable, and high-throughput systems. Whether you're a startup looking to manage massive data streams or an enterprise aiming to enhance your data processing capabilities, partnering with experienced Apache Kafka developers and consulting experts can make all the difference.
Why Apache Kafka?
Apache Kafka is designed to handle large volumes of data in real-time. It acts as a central hub that streams data between various systems, ensuring that information flows seamlessly and efficiently across an organization. With its distributed architecture, Kafka provides fault-tolerance, scalability, and durability, making it an ideal choice for mission-critical applications.
Businesses across industries are leveraging Kafka for use cases such as:
Real-Time Analytics: By capturing and processing data as it arrives, businesses can gain insights and make decisions on the fly, enhancing their responsiveness and competitiveness.
Event-Driven Architectures: Kafka enables the creation of event-driven systems where data-driven events trigger specific actions, automating processes and reducing latency.
Data Integration: Kafka serves as a bridge between different data systems, ensuring seamless data flow and integration across the enterprise.
The Role of Apache Kafka Developers
Expert Apache Kafka developers bring a wealth of experience in building and optimizing Kafka-based systems. They possess deep knowledge of Kafka's core components, such as producers, consumers, and brokers, and understand how to configure and tune these elements for maximum performance. Whether you're setting up a new Kafka cluster, integrating Kafka with other systems, or optimizing an existing setup, skilled developers can ensure that your Kafka deployment meets your business objectives.
Key responsibilities of Apache Kafka developers include:
Kafka Cluster Setup and Management: Designing and deploying Kafka clusters tailored to your specific needs, ensuring scalability, fault-tolerance, and optimal performance.
Data Pipeline Development: Building robust data pipelines that efficiently stream data from various sources into Kafka, ensuring data integrity and consistency.
Performance Optimization: Fine-tuning Kafka configurations to achieve high throughput, low latency, and efficient resource utilization.
Monitoring and Troubleshooting: Implementing monitoring solutions to track Kafka's performance and swiftly addressing any issues that arise.
Why Partner with an Apache Kafka Consulting Expert?
While Apache Kafka is a powerful tool, its complexity can pose challenges for organizations lacking in-house expertise. This is where partnering with an Apache Kafka consulting expert, like Feathersoft Inc Solution, can be invaluable. A consulting partner brings a deep understanding of Kafka's intricacies and can provide tailored solutions that align with your business goals.
By working with a consulting partner, you can benefit from:
Custom Solutions: Consulting experts analyze your specific requirements and design Kafka solutions that are tailored to your unique business needs.
Best Practices: Leverage industry best practices to ensure your Kafka deployment is secure, scalable, and efficient.
Training and Support: Empower your team with the knowledge and skills needed to manage and maintain Kafka systems through comprehensive training and ongoing support.
Cost Efficiency: Optimize your Kafka investment by avoiding common pitfalls and ensuring that your deployment is cost-effective and aligned with your budget.
Conclusion
Apache Kafka has revolutionized the way businesses handle real-time data, offering unparalleled scalability, reliability, and speed. However, unlocking the full potential of Kafka requires specialized expertise. Whether you're just starting with Kafka or looking to optimize an existing deployment, partnering with experienced Apache Kafka developers and a consulting partner like Feathersoft Inc Solution can help you achieve your goals. With the right guidance and support, you can harness the power of Kafka to drive innovation, streamline operations, and stay ahead of the competition.
#ApacheKafka#RealTimeData#DataStreaming#KafkaDevelopment#BigData#DataIntegration#EventDrivenArchitecture#DataEngineering#ConsultingServices#TechInnovation#DataSolutions#feathersoft
1 note
·
View note
Text
Redpanda Serverless Delivers Powerful Streaming Data Platform As A Fully Managed Pay-as-you-go Service

During the Kafka Summit London event, Redpanda introduced Redpanda Serverless, a version of its streaming data platform that is fully managed and operates on a pay-as-you-go basis. This exciting new offering enables developers to quickly dive into working with streaming data and automatically adjusts its scalability based on the amount of data being processed. The best part is that Redpanda Serverless seamlessly integrates with the Apache Kafka® API, allowing for easy integration with the Kafka ecosystem without requiring any changes to the application code.
Redpanda Serverless brings forth the remarkable ability to create a globally accessible cluster instantly, making it an excellent choice for developers who are just starting with streaming data or for large enterprises that experience sudden spikes in data usage. According to Alex Gallego, the CEO and founder of Redpanda, this platform has been engineered to handle massive multi-tenancy, ensuring high speed and exceptional performance while remaining cost-effective and user-friendly.
Juxhin Dyrmishi Brigjaj, the Head of Engineering at Exein, has praised Redpanda Serverless for its efficiency and performance in IoT environments. He mentioned that this platform has allowed Exein to run its services in a cost-effective manner, easily scaling with usage spikes. This has enabled the company to focus on enforcing compliance and enhancing security for their customers' IoT fleets.
Redpanda Serverless is now part of Redpanda's comprehensive range of fully managed cloud deployment options, which includes Redpanda Cloud and Bring Your Own Cloud (BYOC). Redpanda BYOC ensures that user data and security credentials are kept within the user's own cloud infrastructure, addressing any concerns regarding data sovereignty. Additionally, Redpanda offers the self-hosted Redpanda Enterprise and a free Redpanda Community edition for users to choose from.
Read More - https://www.techdogs.com/tech-news/business-wire/redpanda-serverless-delivers-powerful-streaming-data-platform-as-a-fully-managed-pay-as-you-go-service
0 notes
Text
Realtime Data Streaming
Dive into the future of data management with 3 Forge! 🚀 Experience seamless real-time data streaming that transforms the way you engage with information. Explore the cutting-edge technology powering our solutions and discover a new era of efficiency and responsiveness.
0 notes
Text
Datastream defender mini comic!! :D
2K notes
·
View notes
Text
WHAT IS STREAMING ANALYSIS
While conventional analytics tools use data at rest, streaming analytics pulls economic value from data that is in motion. Streaming data is a resource that is accessible to businesses in every sector. Data can come from a variety of places, such as websites, social media, sensors, gadgets, and more. For this data to be usable, flexible instruments and procedures are required.
What is Streaming Analysis?
Analytics that can constantly use process and analyses real-time streaming data is known as streaming analytics. Various real-time sources can continuously provide data. You are then able to respond quickly while things are still happening. Large amounts of data arriving from constantly-on sources can be gathered and analyzed by streaming analytics systems. These include location data, sensor data, telemetry data, machine logs, social media streams, and change data capture (CDC) data from conventional and relational databases & data stores.
Role of streaming analysis in data science
Data Analytics are used to identify new information and detect significant patterns in data. Both streaming analytics and conventional analytics support that. But in the modern world, "finding meaningful patterns in data" has a different meaning because data itself has shifted. Data kinds, volumes, and velocities have all skyrocketed.
Each day, Twitter generates over 500 million messages. IDC predicts that 79.4 zettabytes (ZB) of data will be produced by internet of things (IoT) devices by 2025. Furthermore, these patterns don't seem to be slowing down. Given the freshness of data, streaming analytics' main advantage is that it aids organizations in discovering new knowledge in real-time or very close to it.
Other use cases and examples
Managing data from sites that constantly produce small amounts of data is best done using streaming analytics. Here are a few illustrations:
Tracking of credit card fraud: In 2019, a total of 440.99 billion purchases of products and services were made using six different card brands. Card associations like Visa and MasterCard must analyses billions of transactions and set off alerts based on specific criteria in order to identify and avoid fraud. A correctly configured streaming analytics system can make fraud detection more automated. It accomplishes this essentially by first determining whether any aspects of the payment authorization request match any of the business's standards for what qualifies as suspicious behavior. The system can automatically text the cardholder requesting them to authorize the transaction if it determines the request to be suspicious.
Tailored customer experiences: If you've ever walked away from a discussion only to later plan the ideal rejoinder, you can see the value of streaming analytics. Certain revelations must be experienced at a specific time; otherwise, they lose their value. A great example of the need for the quick insights offered by streaming analytics is the personalized customer experience. Marketing professionals can use streaming analytics to streamline highly targeted product suggestions, use machine learning to personalize web experiences, optimize pricing, and more.
Transportation truck effectiveness: For logistics businesses, truck efficiency is the core of their operations. However, factors like traffic congestion and weather forecasts—which are constantly changing—determine the most practical path from point A to point B. Additionally, trucks are occasionally used to transport supplies like pharmaceuticals that are temperature-sensitive. Weather forecasts, traffic patterns, and temperature sensors are all valuable sources of data in streaming format that logistics businesses can use to improve operational choices. However, if you want to analyze the data fast enough for it to be useful, you'll need streaming analytics. After all, if the driver receives the warning for a heated truck too late to take action, the cargo may become totally unusable.
Conclusion
The collection of data is just one aspect of the problem. Enterprise companies of today simply don't have time for batch data processing. Instead, real-time event streams are used by everything from e-commerce websites to ride-sharing applications and stock market platforms.
In summary, continuous, immediate time event stream systems for processing can be advantageous for any sector of business that handles sizable amounts of real-time data.
About Rang Technologies: Headquartered in New Jersey, Rang Technologies has dedicated over a decade delivering innovative solutions and best talent to help businesses get the most out of the latest technologies in their digital transformation journey. Read More...
1 note
·
View note
Text
a contrapuntal poem of martyn and ren throughout the seasons (and the lack thereof)
#renthedog#inthelittlewood#martyn littlewood#bluerabb’s writing#<- that’s a new one#rendog#martyn inthelittlewood#treebark#trafficshipping#trafficblr#traffic smp#life series#third life#limited life#datastream defender#<- datastream reference is small but i reckoned i better add it in#secret life#wild life#original poem#poems on tumblr#original poetry#contrapuntal poem
662 notes
·
View notes
Text
It is a confession booth with an “npc” who don’t understand what he saying after all :]



The smp not even start but I want to cause a problem
#cowboy smp#martyn inthelittlewood#rendog#renchanting#treebark#datastream defender#no one talk about what happen on twitter-#yes this is count as#consequence of abandon#lythecreatorart#my art#ly’s scribble
379 notes
·
View notes
Note
[it was so awesome to have a communicator again. It was strange to see the case so clean though, very different from his original one which had been dirty and covered in stickers. He just hangs a charm off the new one for now, it’ll get more decorated over time.]
[he looks over it a bit, making sure it still has everything his old one had. All his messages had transferred over thankfully, meaning all his conversations were her- oh that’s martyn’s contact. Oh he was supposed to message the other once he was out of exile-]
RENDOG: martyn
RENDOG: marty
RENDOG: dude :D
RENDOG: new comm!!! and no more exile!!
RENDOG: you still fine with maybe hanging out soon now that im out??
@rendogs-mailbox
[His communicator buzzed- Ren? Okay, this was- yes! Martyn was both ecstatic and incredibly apprehensive. If Ren was back, that likely meant Doc was back too, which in turn meant communication, and likely a few more of his visions before they got it all worked out, basically, it was Martyn’s hell.]
[On the other hand, he got to see his not quite boyfriend, which would be nice. His communicator buzzed a few more times, and maybe he was hopeful thinking it’d just be Ren again.]
Doc(tor): you’re about to go back
Doc(tor): make an effort to stay in my sight this time
Doc(tor): and stop trusting people so freely
Doc(tor): doubt your ren is a C.H.E.S.T agent, he’s had plenty of chances to kill you, but doc? Watch your back
Doc(tor): everyone is either an npc or a C.H.E.S.T agent, don’t be fooled.
Doc(tor): I’ll be in touch
[Out of spite, Martyn didn’t even offer a reply to the man, he could shove his npcs and agents where the-]
[Reply to Ren, got it.]
InTheLittleWood: glad to have ya back bud
InTheLittleWood: I’ll be right there
[Without a moment more of hesitation, he tore back through the datastream, and into the hermitcraft server. Convenient. He began his search for Ren, slipping momentarily into code when any other hermit came into sight, not up for any conversations yet.]
84 notes
·
View notes
Text
"The Search" - a webweave for Room 3 of @mcytblrescape !!
Wild Life sources: clock, "Ohne Titel (Geldig)" by Kurt Schwitters, "Aucassin Seeks for Nicolette" by Maxfield Parrish, "Tamarisk Trees in Early Sunlight" by Guy Rose, window, blue flower, green flower, pink flower, pink flowers, camera, "Starting Fires" by Bears in Trees, "Like Real People Do" by Hozier, "Puppet Loosely Strung" by the Correspondents
Pirates & Rats 2 sources: clock, "Merzzeichnung in Merzzeichnung" by Kurt Schwitters, stamps, books, trinket tin, crystal skull, "14 Verses" by Declan Bennett, "Farewell Wanderlust" by the Amazing Devil, "Gods & Monsters" by Lana del Rey
New Life sources: clock, "20 Ore mit Koranseiten" by Kurt Schwitters, "Snow-Covered Landscape" by Guillaume Vogels, tamagotchi, camera, hat, backpack, "I Could Never Be" from Steven Universe, "Tread on Me" by Matt Maeson
Ultimate Survival SMP sources: clock, "C 50 Last Birds and Flowers" by Kurt Schwitters, "Ceylonese Jungle" by Hermann von Konigsbrunn, bear, beetle, moth, crown, gloves, vined hand, "King" by Lauren Aquilina, "I Just Don't Care That Much" by Matt Maeson
Limited & Secret Life sources: clock, "Spitzbergen Merzzeichnung" by Kurt Schwitters, "She came to the blue sea-ocean" by Ivan Bilibin, bird, letter, fish, cassette, "Queen of Nothing" by the Crane Wives, "What's a Devil to Do" by Harley Poe, "14 Verses" by Declan Bennett, "Bullet" by Saint Motel
Rats sources: clock, "Zeichnung I 9 Hebel 2" by Kurt Schwitters, "Candles" by Gerhard Richter, "Sunflower Seeds" by Ai Weiwei, band-aid tin, bazooka gum, amethyst geode, amethyst crystal, socks, tag, knife, "Puppet Loosely Strung" by the Correspondents, "What's a Devil to Do" by Harley Poe
Double Life sources: clock, "Mz x 21 Street" by Kurt Schwitters, "Loup Scar, Wharfdale" by Richard Jack, coin, coffin, cat in moon, bottle cap, receipt, "Honeybee" by Steam Powered Giraffe, "the broken hearts club" by gnash
Last Life sources: clock, "Merz 30, 42" by Kurt Schwitters, "Trees and Church Tower" by Raymond McIntyre, mask, locket, clover, scarecrow and rabbit, "Whispering Grass" by the Ink Spots, "How to Rest" by the Crane Wives
3rd Life sources: clock, "Sans Titre" by Kurt Schwitters, "Forest and Dove" by Max Ernst, window, heart, pomegranate, stamp, fox, "14 Verses" by Declan Bennett, "Honeybee" by Steam Powered Giraffe
Evo sources: clock, "Ohne Titel" by Kurt Schwitters, "The man with the cart" by Ivan Grohar, pearls, stars, window, feather, dog, "Rule #9 - Child of the Stars" by Fish in a Birdcage, "Dancing After Death" by Matt Maeson
Finale-unique sources: tv, warning window, video player, error tabs, handheld game console, progress bar, axe, "The Circle Maker" by Sparkbird, "The Mask" by Matt Maeson
All skins from namemc; all stereo pngs from this post. As I'm sure you can tell, this is a hell of a source list, so I apologize if I linked anything incorrectly or managed to forget something!
#martyn inthelittlewood#inthelittlewood#webweave#no thoughts tags empty#life series#new life smp#trafficblr#evolution smp#rats smp#rats in paris#pirates smp#ultimate survival smp#datastream defender lore
56 notes
·
View notes