Telcos Hold the Most Underused Dataset for Real-World AI.. But they are not allowed to use it. While most foundation models today are trained on text scraped from the internet, telcos capture real-world behavioral signals at scale: data that reflects how people move, communicate, and interact with infrastructure and services in a physical space. This is not a language. It is timestamped, geospatial, structured behavioral data that can be used to model reality, not just simulate language. A typical mobile operator with 10 to 20 million subscribers collects billions of data points daily. These include cell tower transitions every few seconds per active device, app session patterns by time of day, call initiation and duration, SIM swaps, device changes, recharge frequency for prepaid users, and signal quality metrics across geography. Unlike text scraped online, this data is structured, time-series based, and anchored to physical behavior. What makes it unique is its ability to infer latent variables that language cannot see. In multiple research studies, airtime purchase history has outperformed credit bureau scores in predicting loan repayment. During COVID-19, aggregated mobility data from operators in Spain, France, and Italy was used to model lockdown effectiveness with a higher resolution than official transportation metrics. In countries like Bangladesh and Indonesia, telco data has been used to track population displacement during floods, and to measure recovery by analyzing the reappearance of device activity in disaster zones. If telcos had regulatory parity with digital platforms, they could use this data to train behavior models at a national scale. These models can predict urban demand, simulate epidemiological spread, forecast economic stress based on collective movement patterns, and enable real-time adaptive systems for energy, transportation, and public services. Language models simulate what humans say. Telco-derived models can simulate what humans do. The bottleneck is not technical. It is regulatory. While OTTs collect deep behavioral data through app SDKs and web tracking, telcos are prohibited from using even aggregated data for secondary AI applications even when anonymized. This asymmetry prevents the development of AI systems that reflect the physical world. If we want foundation models that are grounded in reality, the telco dataset must be part of the equation.
Telecommunication Data Analytics
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Summary
Telecommunication data analytics refers to the process of collecting, analyzing, and interpreting massive datasets generated by telecom networks to improve service quality, customer experience, and operational efficiency. By using advanced analytics and AI, telecom companies can gain deeper insights into network performance, customer behavior, and emerging trends across the industry.
- Explore real-world impact: Telecom data can help track population movements during disasters and predict loan repayment more accurately than traditional credit scores.
- Harness diverse data types: Understanding key telecom data like network logs, signal strength, and call records allows AI models to diagnose issues and anticipate user needs.
- Adopt AI-powered solutions: AI models in telecom can forecast demand, detect anomalies, and automate network management, paving the way for smarter, self-monitoring infrastructure.
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Standard classification models tell you if a customer will leave, but Survival Analysis tells you <<when>>. I just published a new deep dive into Survival Analysis using Python and the lifelines library. Using telco churn data, I explore: ✅ The Kaplan-Meier Estimator: Visualizing the "survival" journey of a subscriber. ✅ Cox Proportional Hazards: Identifying exactly which behaviors (like high charges or complaints) accelerate the risk of churn. ✅ Censoring: How to handle customers who haven't churned yet without biasing your data. Treating churn like a timeline. Check out the full article and breakdown at Towards Data Science: https://lnkd.in/evH9Fk2R #DataScience #MachineLearning #SurvivalAnalysis #Python #ChurnPrediction #Analytics
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𝐃𝐢𝐝 𝐲𝐨𝐮 𝐤𝐧𝐨𝐰 𝐭𝐡𝐚𝐭 𝐠𝐥𝐨𝐛𝐚𝐥 𝐦𝐨𝐛𝐢𝐥𝐞 𝐝𝐚𝐭𝐚 𝐭𝐫𝐚𝐟𝐟𝐢𝐜 𝐢𝐬 𝐞𝐱𝐩𝐞𝐜𝐭𝐞𝐝 𝐭𝐨 𝐫𝐞𝐚𝐜𝐡 𝐚 𝐬𝐭𝐚𝐠𝐠𝐞𝐫𝐢𝐧𝐠 77.5 𝐞𝐱𝐚𝐛𝐲𝐭𝐞𝐬 𝐩𝐞𝐫 𝐦𝐨𝐧𝐭𝐡 𝐛𝐲 2027? This explosion of data presents both a challenge and a massive opportunity for telecommunication companies. But are they equipped to handle it? The telecommunications industry is undergoing a seismic shift. Why should you care? Because this transformation impacts how we connect, communicate, and experience the digital world. A recent study showed that poor network performance can lead to a 30% increase in customer churn. 👉 In today's hyper-connected world, customer expectations are higher than ever, and telcos need to leverage data to stay ahead of the curve. 👉 Traditional data management systems struggle to keep pace with the sheer volume, velocity, and variety of data generated by modern telecom networks. Sifting through massive datasets to gain actionable insights is like finding a needle in a haystack. 👉 This makes it difficult to optimize network performance, personalize customer experiences, and develop innovative new services. Telcos need a new approach to data management to unlock the true potential of their data. 𝐓𝐡𝐞 𝐬𝐨𝐥𝐮𝐭𝐢𝐨𝐧? 👉 Deutsche Telekom, one of the world's leading telecommunications providers, is leading the charge by designing the telco of tomorrow with BigQuery. 👉 By leveraging BigQuery's powerful data warehousing and analytics capabilities, Deutsche Telekom is able to ingest and analyze massive datasets in real time. This enables them to gain valuable insights into network performance, customer behavior, and market trends. 👉 They can now proactively identify and resolve network issues, personalize offers and services for individual customers, and develop new revenue streams. 𝐊𝐞𝐲 𝐓𝐚𝐤𝐞𝐚𝐰𝐚𝐲𝐬: 👉 Real-time Insights: BigQuery enables real-time analysis of massive datasets, allowing telcos to react quickly to changing network conditions & customer needs. 👉 Improved Customer Experience: By understanding customer behavior and preferences, telcos can personalize services and offers, leading to increased customer satisfaction and loyalty. 👉 Innovation & Growth: Access to rich data insights empowers telcos to develop innovative new services & explore new business models. 👉 Scalability & Flexibility: Cloud-based solutions like BigQuery offer the scalability and flexibility needed to handle the ever-growing data demands of the telecommunications industry. This journey highlights the transformative power of data in the telecommunications industry. By embracing cloud-based data solutions, telcos can unlock valuable insights, improve customer experiences & drive innovation. The future of telecom is data-driven, and companies that embrace this reality will be the leaders of tomorrow. Follow Omkar Sawant for more. #telecommunications #bigdata #cloud #digitaltransformation #datanalytics
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📡 Day 3 – Telecom Data Types You Must Know for AI/ML in 5G Welcome to the 21-Day AI/ML for 5G Learning Series 💡 Before building AI models, you need to understand the fuel that powers them: TELECOM DATA 📊 5G Physical Layer Course link : https://lnkd.in/gnj4PtAZ Here are the most critical data types used in ML-driven telecom systems: 🔹 1️⃣ RSRP (Reference Signal Received Power) • Measures received power of reference signals. • Used for coverage estimation and handover decisions. 🧠 ML Use: Predicting poor coverage zones, user handover failures. 🔹 2️⃣ CQI (Channel Quality Indicator) • UE reports channel conditions (0–15 scale). • Helps gNB determine MCS (modulation & coding scheme). 🧠 ML Use: Adaptive bitrate control, link adaptation prediction. 🔹 3️⃣ Call Traces & CDRs (Call Detail Records) • Includes session start/end time, IMSI, cell ID, QoS parameters. • Great for user behavior modeling and mobility prediction. 🧠 ML Use: Clustering, anomaly detection, churn analysis. 🔹 4️⃣ Logs (Layer 1–3 Protocol Logs) • Includes MAC, RLC, PDCP, RRC, NAS events. • Used for root cause analysis and failure pattern mining. 🧠 ML Use: Auto-classification of failures, RCA automation, testing. 🎯 These data types are the foundation for AI/ML success in telecom. You can’t optimize what you don’t measure — and this is where data becomes power. #5G
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🧠 Top AI Models Powering Next-Gen Telecom Networks Telecom networks generate more data every second than any human team could ever analyze. That’s exactly why AI models have become the intelligence layer of modern networks. From RAN KPIs and core logs to transport traces and real-time QoE indicators, AI is turning overwhelming telemetry into predictive signals, autonomous decisions, and self-optimizing operations. Here are the key AI models shaping the future of telecom 👇 🔹 Large Language Models (LLMs) Your new AI copilots, reading logs, summarizing alarm storms, validating configurations, generating scripts, and recommending likely fixes in natural language. 🔹 Anomaly Detection Models They learn the network’s “normal” and instantly flag micro-deviations like: fronthaul timing drifts, congestion fingerprints, packet-loss signatures, and early security threats. 🔹 Root Cause Analysis (RCA) Models These models correlate KPIs, topology dependencies, logs, and historical patterns to deliver instant root-cause hypotheses with recommended actions. 🔹 Reinforcement Learning (RL) The engine of true autonomy, optimizing spectrum allocation, beamforming, interference control, handovers, and UE mobility dynamically. 🔹 Forecasting & Predictive Analytics Models They predict demand surges, congestion zones, attenuation trends, power usage, and QoS degradation, enabling proactive network planning. 🔹 Graph Neural Networks (GNNs) They understand topology like a living map, modeling failure propagation, identifying bottlenecks, optimizing routing, and simulating RAN/CU/DU changes. 🔹 Computer Vision (CV) Models Powering autonomous field operations: drone inspections, fiber trench scoring, equipment labeling, improper installation detection, and RF heatmap analysis. 🌐 The Big Shift The future of telecom won’t be defined by bigger hardware, it will be defined by smarter networks. AI models are becoming the brain of telecom infrastructure, enabling networks that can: ✅ monitor themselves ✅ diagnose themselves ✅ optimize themselves ✅ and ultimately… heal themselves 🌍 Follow Abhishek Singh for visionary insights on how AI, automation, and next-gen networks are redefining global connectivity. #AI #Telecom #AIOps #NetworkAutomation #5G #6G #LLM #MachineLearning #DigitalTransformation #NetworkIntelligence #OpenRAN #EdgeComputing #SelfHealingNetworks #FutureOfNetworks #GenAI
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