SageMaker ãæŽ»çšãã AWS ããŒã¿ãšã³ãžãã¢ãªã³ã°ããã³ AI/ML ãµãŒãã¹ãAWS ãã€ãã£ãã®ããŒã¿ããã³ AI ãµãŒãã¹ã§ãããŒã¿ãã€ãã©ã€ã³ã®æ§ç¯ãã¢ãã«ã®ãã¬ãŒãã³ã°ãML ã®å€§èŠæš¡å±éãå®çŸããŸãã
å§ãã
AWS ã¯æãå¹ åºãããŒã¿ããã³ ML ãµãŒãã¹ãæäŸããŠããŸãããé©åãªãã®ãéžæãã广çã«é£æºãããã«ã¯æ·±ãå°éç¥èãå¿ èŠã§ããåœç€Ÿã¯ãAWS äžã§ãšã³ãããŒãšã³ãã®ããŒã¿ãã©ãããã©ãŒã ãèšèšããŸããããŒã¿åã蟌ã¿ãã€ãã©ã€ã³ãããŒã¿ã¬ã€ã¯ãããSageMaker ã䜿çšããã¢ãã«ãã¬ãŒãã³ã°ããªã¢ã«ã¿ã€ã æšè«ãšã³ããã€ã³ããŸã§ãé©åãªã¬ããã³ã¹ãšã³ã¹ã管çããã¹ãŠè¡ããŸãã
åœç€Ÿã¯ãAWS ã®ããŒã¿ãšã³ã·ã¹ãã äžã«æ§ç¯ããŸããã¹ãã¬ãŒãžã«ã¯ S3 ãš Lake FormationãåŠçã«ã¯ Glue ãš Kinesisãåæã«ã¯ Redshift ãš AthenaãML ã«ã¯ SageMakerãçæ AI ã«ã¯ Bedrock ã䜿çšããããããã¹ãŠã Step Functions ã§ãªãŒã±ã¹ãã¬ãŒã·ã§ã³ããCloudWatch ãš SageMaker Model Monitor ã§ç£èŠããŸãã
AWS äžã§åæãã©ãããã©ãŒã ãML ãã€ãã©ã€ã³ããŸã㯠GenAI æ©èœãæ§ç¯ããããšããŠããããŒã¿é§ååäŒæ¥ã察象ã§ããããŒã¿ãžã£ãŒããŒãéå§ããå Žåã§ããæ¢åã® ML éçšãæ¡åŒµããå Žåã§ããããŒã¿æè³ããã® ROI ãæå€§åããããã®ã¢ãŒããã¯ãã£å°éç¥èãæäŸããŸãã
ããŒã¿ãœãŒã¹ãæ£åžããå質ãè©äŸ¡ããåæèŠä»¶ãå®çŸ©ããML ã®æ©äŒãç¹å®ããŸãã
ããŒã¿ã¬ã€ã¯ã¢ãŒããã¯ãã£ããã€ãã©ã€ã³ã®ããããžãŒãML ã¯ãŒã¯ãããŒãã¬ããã³ã¹ãã¬ãŒã ã¯ãŒã¯ãèšèšããŸãã
ããŒã¿åã蟌ã¿ãã€ãã©ã€ã³ã倿ãžã§ããããŒã¿å質ãã§ãã¯ãã«ã¿ãã°ç®¡çãæ§ç¯ããŸãã
ã¢ãã«ããã¬ãŒãã³ã°ãããã€ããŒãã©ã¡ãŒã¿ãæé©åããæšè«ãšã³ããã€ã³ããå±éããç£èŠãå®è£ ããŸãã
MLOps ãã©ã¯ãã£ã¹ãããŒã¿ãã€ãã©ã€ã³ç£èŠãã¢ãã«åãã¬ãŒãã³ã°ããªã¬ãŒãã³ã¹ãã¬ããã³ã¹ã確ç«ããŸãã
AWS äžã§ãçã®ããŒã¿ããæ¬çªã¢ãã«ãŸã§ãããŒã¿ãã©ãããã©ãŒã ãš ML ãã€ãã©ã€ã³ãèšèšããŸãããã
MicrocosmWorks specializes in SageMaker for model training and deployment, Glue and EMR for ETL, Redshift and Athena for analytics, Kinesis for streaming, and Step Functions for ML pipeline orchestration across the full data engineering lifecycle.
AWS SageMaker and data engineering consulting is available at $30-$50/hour, covering model training pipeline setup, endpoint deployment, feature stores, and integration with your existing data infrastructure.
Yes, we build production ML pipelines using SageMaker Pipelines with automated data preprocessing, distributed training, hyperparameter tuning, model evaluation, model registry, and A/B testing deployment with real-time and batch inference endpoints.
Absolutely. MicrocosmWorks designs S3-based data lakes with Glue crawlers, ETL jobs, and Data Catalog, implements Lake Formation for governance, and builds feature engineering pipelines that feed directly into SageMaker training jobs.
Yes, we deploy custom and open-source LLMs on SageMaker using Deep Learning Containers, configure inference endpoints with model parallelism for large models, and integrate with AWS Bedrock for hybrid architectures combining proprietary and foundation models.