
Baldeschwieler: Looking at the Future of Hadoop
Hadoop has come a long way, and with projects currently underway it’s got plenty of fuel to drive enterprise innovation for years to come said Hortonworks co-founder and CTO, Eric Baldeschwieler in his recent Hadoop Summit Keynote in Amsterdam, Netherlands.
During his talk, Baldeschwieler discussed the past, present, and future of the project that he has been shepherding since the framework was an infant codebase within the walls of Yahoo! in 2006.
Using Hadoop deployment within Yahoo! as a backdrop to demonstrate the framework’s growth, he discussed how Hadoop had grown from zero installations in 2006, to 42,000 unique computers within the company – a microcosm of what has happened around the world in that time.
With such explosive growth, a lot is hinging on the innovative framework, and Baldeschwieler was eager to discuss the growth that is happening as Hadoop moves into the future.
“You can’t talk about the future of Apache Hadoop without talking about Hadoop 2.0,” Baldeschwieler mused about the refactoring of the platform that’s been in progress since 2009. “It’s now in alpha and we’re very excited because we believe that it’s going to move from a place where it’s still sort of cutting edge early work, to beta this year, and then within the year we think it’s going to move GA.”
The goal with Hadoop 2.0, says Baldeschwieler, is to expand the framework to handle 10,000 of “next year’s nodes,” noting that computers keep getting bigger every year. However, beyond that scalability, the Hortonworks CTO said that extensibility is a chief focus of the Hadoop 2.0 initiative, referring to YARN.
“In Hadoop 2.0, we’ve separated out the sort of core resource management – the ability to allocate a certain fraction of your cluster to a particular set of work from MapReduce,” explained Baldeschwieler. “So now MapReduce just becomes one of a number of programming models that you can use with your Hadoop cluster.”
Baldeschwieler says that many of these new frameworks are becoming available. “We’re seeing people develop frameworks to do streaming, to support lower latency SQL queries, and more generally to provide new kinds of services.”
Baldeschwieler talked about many different initiatives happening within the Hadoop community that he believes will have a significant impact on the future, including:
- HCatalog –“This takes the table level abstraction of hive and opens them up so that all of the data tools and Hadoop can work at this higher level of abstraction. Now you can take a table and you can write it with map reduce or ETL it with Pig, store it in Hive format, use it directly – just interoperate between all of those tools.” Baldeschwieler also noted that HCatalog opens up the data to third party SQL tools to access from outside the cluster, enabling many more use cases for Hadoop.
- Ambari –“Ambari is an apache incubator project, the focus of which is to bring provisioning management and monitoring of Apache Hadoop to everybody as an open source project. Everything that Ambari does, it does through RESTful APIs, and that means that it’s very easy to integrate it into existing management suites.” Other highlights include job diagnosticsand cluster history.
- Tez – “The focus of Tez is on providing a much better programming framework in Apache 2.0 for low latency queries. That breaks down into two pieces. One is a real focus on the inner loop – how do we more efficiently process lots and lots and lots of rows of data.” The other focus, said Baldeschwieler is on prepping the cluster so that computation is done much more quickly.
- Stinger Initiative –“We think that there’s an opportunity for 100x improvement that can be delivered incrementally in a stable Hadoop-scale way that will not only address the interactive use case, but will also continue to be the best framework for very large queries, and very large workloads.” Already, the initiative has demonstrated a 45x performance increase for Hive.
- Falcon Project – “The Falcon Project is focused on automating the management of data in Hadoop. There are two sets of problems there; one is data lifecycle management – how do you get data into the cluster and how do you move it between clusters and make sure that you keep the data in the right place for the right amount of time. The other is how do you automate ETL flows in a much simpler, more declarative fashion.”
Embedding of the video was disabled by request (which seems out of character for such an open company), however you can view the entire keynote here.
Related Items:
Putting Some Real Time Sting into Hive
Hortonworks Proposes New Hadoop Incubation Projects
How Facebook Fed Big Data Continuuity
April 30, 2025
- LogicMonitor Expands AI Observability Platform with Agentic AIOps and New Partnerships
- KNIME Turns Enterprise Data into Action, Demonstrates Custom AI Agents
- Pythian Boosts Global Data and AI Services with Rittman Mead Integration
- Collibra Harris Poll Finds 86% of Data Leaders Cite Privacy as Top Concern Amid AI Adoption
- StarTree Adds AI-Native MCP and Vector Embedding to Power Real-Time RAG and Agentic Apps
- DDN and Nebius Partner to Deliver Scalable AI Infrastructure for Enterprise Applications
- Backblaze Introduces High-Performance B2 Overdrive Cloud Storage for Data-Intensive Workloads
- Acceldata Unveils AI-Driven Anomaly Detection Engine to Automate Data Quality
- BigID Launches AI Data Lineage to Enhance AI Transparency and Governance
- Quobyte Launches Version 4 to Support AI Training and Scale-Out Workloads Across Hybrid Environments
April 29, 2025
- DataOps.live Named Data Breakthrough Awards’ DataOps Company of the Year
- Akamai Firewall for AI Enables Secure AI Applications with Advanced Threat Protection
- Denodo Launches Platform 9.2 with Enhanced Data Marketplace and GenAI Features
- NetApp Adds Quantum-Safe Encryption and AI Ransomware Detection to ONTAP
- Elastic Launches Automatic Migration to Simplify SIEM Migration
- Argonne Examines Opportunities and Risks of GenAI Tools
- GigaIO Demonstrates Power and Cost Savings with New AI Interconnect Benchmarks
- RWS TrainAI Study Finds Claude Sonnet, GPT and Gemini Pro Lead in Synthetic Data Generation
- Open Compute Project Foundation and UALink Consortium Announce a New Collaboration
April 28, 2025
- PayPal Feeds the DL Beast with Huge Vault of Fraud Data
- OpenTelemetry Is Too Complicated, VictoriaMetrics Says
- Thriving in the Second Wave of Big Data Modernization
- Google Cloud Preps for Agentic AI Era with ‘Ironwood’ TPU, New Models and Software
- Google Cloud Fleshes Out its Databases at Next 2025, with an Eye to AI
- Can We Learn to Live with AI Hallucinations?
- Monte Carlo Brings AI Agents Into the Data Observability Fold
- AI Today and Tomorrow Series #3: HPC and AI—When Worlds Converge/Collide
- The Active Data Architecture Era Is Here, Dresner Says
- Slash Your Cloud Bill with Deloitte’s Three Stages of FinOps
- More Features…
- Google Cloud Cranks Up the Analytics at Next 2025
- New Intel CEO Lip-Bu Tan Promises Return to Engineering Innovation in Major Address
- AI One Emerges from Stealth to “End the Data Lake Era”
- GigaOM Report Highlights Top Performers in Unstructured Data Management for 2025
- SnapLogic Connects the Dots Between Agents, APIs, and Work AI
- Supabase’s $200M Raise Signals Big Ambitions
- Snowflake Bolsters Support for Apache Iceberg Tables
- Dataminr Bets Big on Agentic AI for the Future of Real-Time Data Intelligence
- GenAI Investments Accelerating, IDC and Gartner Say
- Dremio Speeds AI and BI Workloads with Spring Lakehouse Release
- More News In Brief…
- Gartner Predicts 40% of Generative AI Solutions Will Be Multimodal By 2027
- Dataiku Achieves AWS Generative AI Competency
- AMD Powers New Google Cloud C4D and H4D VMs with 5th Gen EPYC CPUs
- MLCommons Releases New MLPerf Inference v5.0 Benchmark Results
- Opsera Raises $20M to Expand AI-Driven DevOps Platform
- GitLab Announces the General Availability of GitLab Duo with Amazon Q
- Dataminr Raises $100M to Accelerate Global Push for Real-Time AI Intelligence
- Intel and IBM Announce Availability of Intel Gaudi 3 AI Accelerators on IBM Cloud
- Kinaxis Partners with Databricks to Accelerate AI-Powered Supply Chain Orchestration
- SAS Partners with Kansas State to Advance AI-Driven Water Management
- More This Just In…